Journal Pre-proof Ecological clusters based on responses of soil microbial phylotypes to precipitation explain ecosystem functions Ying Wu, Jianping Wu, Muhammad Saleem, Bing Wang, Shuijin Hu, Yongfei Bai, Qingmin Pan, Dima Chen PII:
S0038-0717(20)30014-6
DOI:
https://doi.org/10.1016/j.soilbio.2020.107717
Reference:
SBB 107717
To appear in:
Soil Biology and Biochemistry
Received Date: 27 September 2019 Revised Date:
26 December 2019
Accepted Date: 9 January 2020
Please cite this article as: Wu, Y., Wu, J., Saleem, M., Wang, B., Hu, S., Bai, Y., Pan, Q., Chen, D., Ecological clusters based on responses of soil microbial phylotypes to precipitation explain ecosystem functions, Soil Biology and Biochemistry (2020), doi: https://doi.org/10.1016/j.soilbio.2020.107717. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2020 Published by Elsevier Ltd.
Graphical Abstract
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Ecological clusters based on responses of soil microbial phylotypes to precipitation explain
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ecosystem functions
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We constructed a 3-year experiment with nine levels of artificial precipitation (100-500 mm) in a
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typical semi-arid steppe. Ecological clusters based on the relationships between the relative
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abundance of phylotypes and dry and wet gradients were correlated with soil C or N mineralization
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rates; these ecological clusters explained 15-24% of the total variance in soil C and N mineralization
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rates. In contrast, soil C or N mineralization rates were not correlated with the commonly measured
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properties (e.g., biomass and diversity) of plant, soil bacterial, and soil fungal communities. Our
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findings indicate that the grouping of soil microorganisms into ecological clusters based on responses
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to precipitation gradients can provide insights into the relationships between soil organisms and
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ecosystem functions.
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Type of paper: Research Paper
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Running Title: Microbial phylotypes and functions
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Ecological clusters based on responses of soil microbial phylotypes to precipitation explain ecosystem
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functions
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Ying Wu1,2,3, Jianping Wu1, Muhammad Saleem4, Bing Wang3,5, Shuijin Hu6, Yongfei Bai3,5, Qingmin
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Pan3*, and Dima Chen2,3*
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Complete affiliations:
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China
State key Laboratory for Conservation and Utilization of Bio-Resources, Yunnan University, Kunming,
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of Sciences, Beijing, China
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*Corresponding author:
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Prof. Dima Chen
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College of Biological and Pharmaceutical Sciences, China Three Gorges University, Yichang, China
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Tel: (+86)-10-6283-6923; Fax: (+86)-10-8259-5771; E-mail:
[email protected]
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or Prof. Qingmin Pan
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State Key Laboratory of Vegetation and Environmental Change, Institute of Botany, Chinese Academy of
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Sciences, Beijing, China
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Tel: (+86)-10-6283-6977; Fax: (+86)-10-8259-5771; E-mail:
[email protected]
College of Biological and Pharmaceutical Sciences, China Three Gorges University, Yichang, China State Key Laboratory of Vegetation and Environmental Change, Institute of Botany, Chinese Academy
Department of Biological Sciences, Alabama State University, Montgomery, Alabama University of Chinese Academy of Sciences, Beijing, China Department of Entomology & Plant Pathology, North Carolina State University, Raleigh, NC, USA
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Abstract
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Ecological classification has been proposed as a way to more tightly link microbial communities and
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ecosystem functions, but few studies have attempted to relate ecological classifications of microbial
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communities with specific ecosystem functions. Here, we conducted a 3-year experiment with nine
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levels of artificial precipitation (100-500 mm) in a typical semi-arid steppe. The first five levels (≤ 300
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mm) were considered a “dry” gradient, and the last five (≥ 300 mm) were considered a “wet”
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gradient. Increases in precipitation under dry and wet gradients did not alter the alpha diversities of
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soil bacterial, soil fungal, or plant communities, except that increases in precipitation under the dry
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gradient decreased bacterial alpha diversity. Increases in precipitation under the dry and wet
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gradients altered the composition of the soil bacterial community but did not alter the composition
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of the fungal or plant communities. Ecological clusters (ECs) based on the relationships between the
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relative abundance of phylotypes and dry and wet gradients were correlated with soil C or N
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mineralization rates; these ECs explained 14-28% of the total variance in soil C and N mineralization
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rates. In contrast, soil C or N mineralization rates were not correlated with the commonly measured
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properties (e.g., biomass and diversity) of plant, soil bacterial, and soil fungal communities. Our
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findings indicate that the grouping of soil microorganisms into ECs based on responses to
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precipitation gradients can provide insights into the relationships between soil organisms and
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ecosystem functions.
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Keywords: alpha diversity, asymmetrical pattern, beta diversity, precipitation change, precipitation
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gradient, soil function
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Introduction In many terrestrial biomes, precipitation is the primary constraint of soil C and nutrient cycling
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and other ecosystem functions (Knapp and Smith, 2001; Bell et al., 2014; Liu et al., 2016). This is
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especially true for semi-arid ecosystems, which cover 17.7% of Earth's terrestrial surface (Ahlström et
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al., 2015). However, the responses of these ecosystems to shifts in precipitation regimes are difficult
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to predict because climate models suggest that most semi-arid regions will experience highly variable
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precipitation patterns and frequent extreme precipitation and drought events (Savo et al., 2016). It is
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well documented that alterations in precipitation may greatly affect aboveground net primary
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productivity (ANPP), plant diversity, and ecosystem C and N cycling in semi-arid regions (Knapp and
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Smith, 2001; Huxman et al., 2004). Furthermore, soils harbor highly diverse microbial communities
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that are crucial for regulating multiple ecosystem processes (Delgado-Baquerizo et al., 2018;
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Glassman et al., 2018; Saleem et al., 2019). Although past studied have increased our understanding
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of how alterations in precipitation affect soil microbial communities and thereby affect ecosystem
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processes (Bell et al., 2014; Zhou et al., 2018; Chen et al., 2019a), these past studies have seldom
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investigated the effects of precipitation on ecosystem processes based on ecological clusters (ECs) of
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soil microbial phylotypes (Singh et al., 2010; Fierer et al., 2012). The ECs have recently been used to
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reveal how environmental conditions influence the ecological properties of soil microorganisms
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(Philippot et al., 2010; Evans and Wallenstein, 2014; Delgado-Baquerizo et al., 2018). It may therefore
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be useful to determine whether assessment of ECs can increase our understanding of the responses
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of soil microbial communities to climate change and to the relationships between soil microbial
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communities and ecosystem processes (Fierer et al., 2007; Delgado-Baquerizo et al., 2018).
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The responses of soil microbial communities to precipitation change remain highly uncertain.
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Several studies have shown that increased or decreased precipitation does not affect soil microbial
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communities (Angel et al., 2010; Santonja et al., 2017), but other studies indicate that soil microbial
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composition and structure are responsive to altered precipitation (Castro et al., 2010; Hawkes et al., 3
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2011; De Vries et al., 2018). There are several reasons for this inconsistency. First, the response of soil
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microbial communities to environmental changes may be over- or underestimated depending on
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which method is used to assess the microbial communities (Lok, 2015; Delgado-Baquerizo et al.,
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2018). Second, understanding soil microbial responses to precipitation change is often difficult, in
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part because the effects of precipitation change on the microbial taxa can be taxon-specific and
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difficult to interpret when microorganisms are assessed only at the community level (Fierer et al.,
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2007; Singh et al., 2010; Lennon and Jones, 2011). Third, most previous research concerning the
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effects of precipitation on soil microbial communities has been conducted at a regional or continental
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scale along precipitation gradients (e.g., Angel et al., 2010; Hawkes et al., 2011; Maestre et al., 2015),
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which makes it difficult to tease apart the direct effect of precipitation from other coupled
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environmental variables. Fourth, most previous precipitation manipulation experiments have
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included only a few levels of precipitation; manipulation experiments that include multiple levels of
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precipitation (i.e., gradients) are needed to discern the effects of precipitation on soil biodiversity and
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ecosystem functioning (Kreyling et al., 2018).
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The ecological responses to alteration in precipitation can be “symmetrical” (with similar
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responses to the precipitation gradient under drier and wetter conditions) or “asymmetrical” (with
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different responses to the precipitation gradient under drier and wetter conditions) (Kreyling et al.,
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2018; Zhou et al., 2018). Observational studies or manipulation experiments have indicated that the
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ANPP in semi-arid grasslands is more sensitive to increases in precipitation in wet years than dry
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years (Knapp and Smith, 2001) or under wet treatments than dry treatments (Wilcox et al., 2017), i.e.,
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the responses are asymmetrical. Another study found an asymmetrical response, i.e., soil respiration
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was more sensitive to increases in precipitation at wet sites than at dry sites (Liu et al., 2016).
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Although ecologists have proposed that the sensitivities of ecosystem functions to changes in
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precipitation may be quite different under dry vs. wet conditions, whether the responses of soil
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microbial communities to precipitation are symmetrical or asymmetrical under dry vs. wet conditions 4
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has seldom been assessed (Castro et al., 2010; Zhou et al., 2018). Limited reports showed that the
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responses of soil microbial composition to altered precipitation are asymmetrical (Hawkes et al.,
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2011; Zhou et al., 2018). These asymmetrical changes in the compositions of soil fungal and bacterial
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communities may have strong effects on ecosystem functions (e.g., C and N cycling) (Fierer, 2017).
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Understanding the ecological attributes of microbial phylotypes by identifying ECs could increase
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our ability to predict how soil processes will respond to precipitation change (Singh et al., 2010; Evans
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and Wallenstein, 2014; Delgado-Baquerizo et al., 2018). Bacterial taxa were divided into three life
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strategies after a dry-rewetting experiment (Evans and Wallenstein, 2014), and the possibility of
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predicting bacterial distribution at a global scale was verified by associating soil environment
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characteristics with bacterial taxa and by grouping these taxa into ECs (Fierer et al., 2007; Fierer et al.,
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2012; Delgado-Baquerizo et al., 2018). The identification of ECs was recently proposed as a way to
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more tightly link microbial communities to ecosystem functions (Fierer et al., 2007;
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Delgado-Baquerizo et al., 2018). The consideration of such ECs can increase our understanding of the
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relationships of microorganisms with soil and plant attributes (Fierer et al., 2007; Singh et al., 2010).
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The linking of microbial ECs to important soil functions such as soil C and N mineralization could be
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especially useful because microbial communities associated with soil mineralization are variable
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(Barnard et al., 2015; Chen et al., 2019a). Moreover, some studies that have linked microbial
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communities with soil mineralization suggest that only a subset of microbial taxa are correlated with
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or respond to substrate mineralization (Philippot et al., 2013; Banerjee et al., 2018), which once again
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suggests that the identification of soil microbial ECs could be useful for understanding the effects of
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soil microorganisms on soil ecosystem functions.
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Here, we determined how soil bacterial and fungal communities responded to increases in
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precipitation under dry conditions (≤ 300 mm of precipitation per growing season) and wet
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conditions (≥ 300 mm of precipitation per growing season) and whether the responses are associated
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with ecosystem functions in a typical semi-arid steppe. We attempted to answer three questions: 1) 5
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How do the composition and structure of soil bacterial and fungal communities at different taxa
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levels respond to increases in precipitation under dry and wet conditions? 2) How is soil microbial
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community composition related to plant community composition under dry and wet conditions? and
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3) If soil microorganisms are assigned to ECs based on their responses to increasing levels of
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precipitation under dry vs. wet conditions, are the clusters related to ecosystem functions (i.e., C or N
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mineralization rates)?
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Materials and methods
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Study site and experimental design
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A precipitation manipulation experiment was initiated at the Inner Mongolian Grassland
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Ecosystem Research Station (IMGERS, 43°38′N, 116°42′E, 1200 m a.s.l) in 2013. The station is located
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in a region with a typical semi-arid continental climate; over the last 40 years in the region, the mean
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annual precipitation (MAP) has been 334 mm, and the mean annual temperature (MAT) has been 0.9
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o
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indicated that the mean precipitation was 292 mm, the maximum precipitation was 455 mm, and the
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minimum precipitation was 146 mm (Fig. 1). Based on this pattern of natural precipitation over a
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recent 31-year period, we simulated nine levels of precipitation during the growing season: 100, 150,
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200, 275, 300, 350, 400, 450, and 500 mm. We defined the five levels (≤ 300 mm) as a “dry gradient”
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and the last five levels (≥ 300 mm) as a “wet gradient”. We selected 300 mm as the level that
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separated the two gradients because 300 mm is near the mean of growing-season precipitation (292
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mm) at the site.
C. Data collected during the growing season at the IMGERS for a recent 31-year period (1982-2013)
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To attain these levels of precipitation, we constructed six rainout shelters with arched, steel
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frames (Fig. 1). Each shelter was 40 m long and 10 m wide, and included a high strength, transparent
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polyethylene film that was raised to cover the shelter in the presence of natural precipitation and
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that was lowered in the absence of natural precipitation. Each shelter functioned as a block in the
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experimental design and contained nine 4-m × 4-m plots, i.e., one randomly assigned plot per 6
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precipitation level. This yielded a total of 54 plots (nine levels × six randomized blocks). The nine plots
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in a shelter were separated by 1-m walkways, and each plot was surrounded by a galvanized sheet
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that extended 100 cm into the soil and 5 cm above the soil. The plant community was natural and
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uniform among all 54 plots and consisted of the following species: Leymus chinensis (Trin.) Tzvel.,
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Stipa grandis P. Smirn., Agropyron cristatum (L.) Gaertn., Achnatherum sibiricum (L.) Keng,
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Cleistogenes squarrosa (Trin.) Keng, Carex korshinskyi Kom., Chenopodium aristatum L., Salsola
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collina Pall., and Chenopodium glaucum L.
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The experiment began at the start of the growing season in 2013 and ended at the end of the
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growing season in 2015, i.e., the experiment was conducted for three consecutive growing seasons.
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Water was added throughout each growing season to each plot to attain the desired total level of
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precipitation. To simulate the natural precipitation, the timing of each artificial precipitation was
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based on the growing-season precipitation pattern for 30 years (Fig. 2). Specifically, water was added
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to each plot 23 times (eight times during May-June, 10 times during July-August, and five times
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during September-October) using mobile water spray systems. From May to October in 2015,
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volumetric soil water content at 10 cm depth was recorded about every 10 days with a portable soil
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moisture probe (Diviner 2000, Sentek Pty Ltd., Balmain, Australia). The results showed that the
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average soil moisture content for the entire growing season significantly increased with the increases
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in precipitation under both dry or wet gradients (Fig. 1).
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Plant and soil measurements
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In late August of 2015 (at the end of the third growing season), the aboveground biomass of
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plants was sampled in a 1.0-m × 0.5-m quadrat in each plot. These samples were separated by
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species, oven-dried at 65 oC for 48 h, and weighed. Four soil cores (2 cm in diameter and 15 cm in
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depth) were randomly collected from each plot and combined to form one composite soil sample per
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plot. All soil samples were gently mixed and passed through a 2-mm-mesh sieve. One subsample of
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soil was air-dried and used to determine soil organic C (SOC) by the Walkley-Black modified 7
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acid-dichromate FeSO4 titration method and to determine total soil N based on colorimetric
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determination with a 2300 Kjeltec Analyzer Unit (Chen et al., 2019b). One subsample of moist soil
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was incubated for 21 days to determine C and N mineralization rates as indicated in the next
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paragraph. A 50-g moist subsample of each soil sample was stored at -80 °C and was used for
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molecular analysis as described in the next section.
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Soil C and N mineralization rates were determined using the aerobic incubation method (Chen
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et al., 2019b). In brief, a 20-g subsample of fresh soil from each sample was incubated in a 250-ml jar
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with a lid at 25°C for 21 days in the dark. Before incubation, an acclimatization period of 1 week
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reduced the microbial activity resulting from changes in temperature and moisture contents during
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soil mixing. Thereafter, soil moisture in each jar was maintained at 60% of field capacity by weighing
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and watering daily. CO2 released from the soil was measured after 1, 2, 3, 7, 10, 15, and 21 days of
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incubation by gas chromatography (Agilent HP 5890 SERIES II, USA). The C mineralization rate was
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the average CO2 released during the whole incubation period. NH4+-N and NO3−-N were extracted
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from the soil before and after incubation with 50 ml of 2 mol L-1 KCl; their concentrations were
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measured with a 2300 Kjeltec Analyzer Unit (FOSS, Höganäs, Sweden). The soil N mineralization rate
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was the difference in total inorganic N concentration between the start and the end of the incubation.
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Because soil mineralization rates are strongly affected by SOC content, the rates were standardized to
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SOC, i.e., the rates were expressed as mg g-1 dry SOC day-1 (Wang et al., 2014).
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Soil DNA extraction, amplification, and sequencing
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Microbial DNA was extracted from 0.5-g soil subsamples using the FastDNA® Spin Kit for Soil
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(MP Biomedical, Solon, OH). A NanoDrop 2000 UV-vis spectrophotometer (Thermo Scientific,
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Wilmington, USA) was used to measure the DNA concentration and purity, and 1% agarose gel
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electrophoresis was used to check DNA quality. The V3-V4 region of the bacterial 16S rRNA gene was
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amplified by PCR using primers 338F and 806R, and the fungal ITS sequence of the 18S rRNA gene
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(O'Dwyer et al., 2012) was amplified using primers ITS1F and ITS2 and a themocycler PCR system 8
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(GeneAmp 9700, ABI, USA). PCR reactions were conducted as follows: 3 min of denaturation at 95 °C,
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27 cycles for bacteria and 35 cycles for fungi of 30 s at 95 °C, 30 s at 55 °C, and 45 s at 72 °C, with a
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final extension at 72 °C for 10 min.
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Purified amplicons were sequenced by Shanghai Majorbio Bio-pharm Technology (Shanghai,
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China) using an Illumina MiSeq platform (San Diego, CA, USA). Raw fastq files were demultiplexed,
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quality-filtered by Trimmomatic, and merged by FLASH with the following criteria: i) Reads were
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truncated at any site receiving an average quality score <20 over a 50-bp sliding window; ii) Primers
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were exactly matched allowing 2-nucleotide mismatching, and reads containing ambiguous bases
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were removed; and iii) Sequences with overlaps longer than 10 bp were merged according to their
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overlap sequence.
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Operational taxonomic units (OTUs) or phylotypes were clustered with 97% similarity cutoff
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using UPARSE (version 7.1, http://drive5.com/uparse/), and chimeric sequences were identified and
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removed using UCHIME. The taxonomy of each gene sequence was analyzed by the RDP Classifier
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algorithm (http://rdp.cme.msu.edu/) against the Silva database (Silva 128) for bacteria and the Unite
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database (Unite 7.0) for fungi using a confidence threshold of 70%.
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Alpha and beta diversity analysis for microbial and plant communities
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All of the pre-processes for the alpha and beta diversity of soil bacterial and fungal communities
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were calculated by using the script in QIIME (http://qiime.org/scripts/). We excluded rare OTUs by
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filtering the phylotypes with relative abundance lower than 0.01% within each sample, and the new
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filtered OTU tables were used for diversity analysis (Galand et al., 2009). First, the filtered OTU table
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was rarefied by using the single_rarefaction.py script (Weiss et al., 2015). Values of the
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Shannon-Wiener index (an indicator of alpha diversity) of soil bacterial and fungal communities were
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calculated using the alpha_diversity.py script. Second, values for Bray-Curtis similarity (used as an
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indicator of beta diversity) of soil bacterial and fungal communities were calculated from cumulative
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sum scaling transformed OTU abundances using the normalize_table.py script and beta_diversity.py 9
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script (Paulson et al., 2013). In addition, values for the Shannon-Wiener index and Bray-Curtis
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similarity of plants were calculated with the vegan 2.4-6 package in R version 3.3.2 (R Development
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Core Team, 2016). The beta diversities of microbial and plant communities along precipitation
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gradients were visualized by principal coordinate analysis (PCoA) using the cmdscale function. We
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used permutational analyses of variance (PERMANOVA) based on Bray-Curtis similarity to determine
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the difference in beta diversity between dry and wet gradients. Before conducting the PERMANOVA,
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we tested the data for homogeneity by multivariate dispersions (PERMDISP). The PERMANOVA and
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PERMDISP were performed using vegan package (Oksanen et al., 2010). We found no significant
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PERMDISP differences within the dry or wet gradients (Supporting Information, Table S1), indicating
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that the results were not affected by dispersion differences within the gradients.
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Classification of ecological clusters
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The relationships between the relative abundance of microorganisms at the OTU level under dry
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and wet gradients were analyzed by linear mixed-effect models, separately. Possible relationships
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between the abundance of each OTU under dry gradients vs. wet gradients are illustrated in the
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hypothetical plots (Fig. 2). Using these plots, we defined hypothetical symmetrical and asymmetrical
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ECs in the following way. If the responses (in terms of change in relative abundance) of a specific
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microbial taxon to the dry and wet precipitation gradients are similar, i.e., both are significantly (P <
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0.05) positive (+/+) or negative (-/-) or non-significant (0/0), then that taxon and similarly responding
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taxon are grouped into a symmetrical EC. If, however, the responses of a specific microbial taxon to
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dry and wet precipitation gradients are different, then that taxon and similarly responding taxon are
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grouped into an asymmetrical EC (Fig 2). Using this approach, we defined nine hypothetical ECs
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representing distinct responses (based on relative abundance) of microbial taxa (OTUs) to the
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simulated precipitation gradients. Three of the ECs were symmetrical, and six were asymmetrical (Fig.
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2). Each EC was further divided into groups based on taxonomic level (phylum, class, order, family,
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genus, and species). We also constructed phylogenetic trees of soil bacteria and fungi (Guindon et al., 10
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2010) and visualized ECs at the OTU level using the interactive Tree Of Life (iTOL) (Letunic and Bork,
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2016).
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Statistical analyses
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All statistical analyses were performed using R version 3.3.2 (R Development Core Team, 2016).
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The effects of the dry and wet gradients on the alpha and beta diversity (first principal coordination
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of PCoA) of soil microbial and plant communities were analyzed by linear mixed-effect models. The
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relationships in Bray-Curtis matrices between soil microbial and plant communities were modeled
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using the Mantel test in vegan (Oksanen et al., 2010). We also used linear mixed-effect models to test
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the relationships between soil mineralization rates and the relative abundance of ECs of soil microbial
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communities under the dry and wet gradients. Linear mixed-effect models were also used to test the
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relationship between the biomass, relative abundance, alpha diversity, and beta diversity of plant and
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soil microbial communities under the dry and wet gradients. Finally, we used variation partitioning
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analyses to determine how soil C or N mineralization rates were affected by variables that were found
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to be significant by linear mixed-effect models; this was done with the calc.relimp function in the
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“relaimpo” package (Grömping, 2006).
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Results
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Effects of dry and wet gradients on the diversity of the soil microbial community
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After extremely rare OTUs were filtered, the data set included 1565 bacterial and 774 fungal
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OTUs. The soil bacterial communities were dominated by the phyla Actinobacteria, Acidobacteria,
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Proteobacteria, Chloroflexi, and Bacteroidetes (Table S2). The soil fungal communities were
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dominated by the classes Sordariomycetes, Agaricomycetes, Dothideomycetes, and Eurotiomycetes
267
(Table S2). The alpha diversity (indicated by the Shannon-Wiener index) of the soil bacterial
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community decreased as precipitation increased in the dry gradient (precipitation levels ≤ 300 mm)
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but was not significantly altered by precipitation in the wet gradient (precipitation levels ≥ 300 mm)
270
(Fig. 3a). The alpha diversities of the soil fungal and plant communities were not changed by 11
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precipitation in the dry or wet gradient, although the alpha diversity of the plant community
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increased with precipitation across all nine precipitation levels (r=0.381, P<0.01) (Fig. 3b-c). Under
273
the wet but not the dry gradient, the plant alpha diversity was positively related to soil bacterial
274
alpha diversity and to soil fungal alpha diversity (Fig. S1).
275
The effects of dry and wet gradients on the beta diversities of soil bacterial and fungal
276
communities were investigated by principal coordinate analysis (PCoA) based on Bray-Curtis
277
dissimilarity at the OTU level (Fig. 4). The PCoA1 of the bacterial community was significantly altered
278
by precipitation under both gradients (Fig. 4a-b). The PCoA1 of the soil fungal community, in contrast,
279
was not significantly associated with precipitation under the dry or wet gradient, but was significantly
280
associated with precipitation across all nine precipitation levels (r=-0.484, P<0.001) (Fig. 4c-d).
281
Surprisingly, the composition of the plant community was not altered by precipitation in the dry or
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wet gradient (Fig. 4e-f), although precipitation increased ANPP under both the dry and wet gradients
283
(Fig. S2). In addition, the Mantel test showed that there was no relationship in beta diversity between
284
plant and soil bacterial communities or between plant and soil fungal communities under the dry or
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wet gradient, except for a positive relationship between plant and fungal communities under the wet
286
gradient (Fig. S3).
287
Ecological clusters of soil microbial communities at different taxon levels
288
As indicated earlier, the OTUs were classified into nine ECs based on the relationships between
289
the relative abundance of OTUs and precipitation gradients under the dry vs. the wet gradient. The
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percentages of OTUs represented by the nine ECs differed among bacterial phyla and fungal classes
291
(Fig. 5). A very large percentage of the OTUs (1146 bacterial OTUs and 635 fungal OTUs) belonged to
292
symmetrical EC2, for which relative abundance was unrelated to the precipitation level under either
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the dry or wet gradient (Fig. 5). The total percentage of OTUs that belonged to other symmetrical ECs
294
(EC6 and EC7) was 2.66% for bacteria and 5.46% for fungi (Fig. 5). The total percentage of OTUs that
295
belonged to asymmetrical ECs (EC1, EC3, EC4, EC5, EC8, and EC9) was 25% for bacteria and 22% for 12
296
fungi (Fig. 5).
297
The percentages of each EC differed among taxon levels (Fig. S4). For example, at the bacterial
298
phylum level, 5 of 21 phyla belonged to asymmetrical clusters. Among these 5 asymmetrical phyla,
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the relative abundances of Bacteroidetes, Proteobacteria, and Parcubacteria showed no response to
300
increases in precipitation under the dry gradient but increased in response to precipitation under the
301
wet gradient (EC1; Table S2). The relative abundance of other asymmetrical phyla (Actinobacteria and
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Nitrospirae) increased in response to increased precipitation under the dry gradient but showed no
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response to increased precipitation under the wet gradient (EC5; Table S2). At the fungal class level, 3
304
in 16 classes were asymmetrical, i.e., their responses to precipitation differed across the dry vs. the
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wet gradient. Among the 3 asymmetrical classes, the relative abundance of Agaricostilbomycetes and
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Microbotryomycetes showed no response to increases in precipitation under the dry gradient but
307
decreased in response to increased precipitation under the gradient (EC3; Table S2). The relative
308
abundance of the asymmetrical class Leotiomycetes increased in response to increased precipitation
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under the dry gradient conditions but showed no response to increases in precipitation under the
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wet gradient (EC5; Table S2).
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Linking ecological clusters with ecological functions
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The linear mixed regression model showed that the soil C and N mineralization rates were not
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associated with the increases in precipitation in the dry or wet gradient (Fig. S2). The linear mixed
314
regression model also showed that commonly measured properties for plant communities (biomass,
315
alpha diversity, and beta diversity) or soil microbial communities (alpha diversity, beta diversity, and
316
relative abundance at the phylum or class level) were not associated with soil C or N mineralization
317
rates (Table 1 and Table S3). Moreover, although ANPP increased, neither the C nor the N
318
mineralization rate changed across the precipitation gradients (Table 1). However, the relative
319
abundance of five ECs were correlated with soil C or N mineralization rates (Fig. 6). Soil C
320
mineralization rates increased as the relative abundance of the EC2 cluster of fungi increased but 13
321
decreased as the relative abundance of the EC8 cluster of fungi increased (Fig. 6a-b); these two
322
fungal ECs explained 14% of the total variance in the soil C mineralization rate (Fig. 6g). The relative
323
abundance of bacterial EC4 was positively correlated with the soil N mineralization rate, and the
324
relative abundances of bacterial EC8 and fungal EC7 and EC8 were negatively correlated with the soil
325
N mineralization rate (Fig. 6c-f); these four bacterial and fungal ECs explained 28% of the total
326
variance in the soil C mineralization rate (Fig. 6g).
327
Discussion
328
Effects of simulated precipitation on the alpha diversity of soil microbial communities
329
Previous reports have documented that the effects of simulated precipitation on ANPP, net
330
ecosystem exchange, and soil respiration were "asymmetrical" in that the effects differed under wet
331
conditions vs. dry conditions; more specifically, the effects were greater under wet than dry
332
conditions (Liu et al., 2016; Wilcox et al., 2017). The effects of simulated precipitation on soil bacterial
333
and fungal communities, however, have not been previously compared under wet and dry conditions
334
in a semi-arid steppe. Consistent with a study concerning the response of a microbial community to
335
drought (Carson et al., 2010), the current results indicate that the alpha diversity of bacteria was
336
positively related to increases in precipitation under dry conditions, suggesting that increased
337
precipitation under drought could enhance the diversity of soil bacteria.
338
A lack of response of bacterial or fungal alpha diversity to increased precipitation under wet
339
conditions, as found in the current study, was also reported in other studies (Hartmann et al., 2017; Li
340
et al., 2018). Although the failure of microbial communities to respond to increased precipitation
341
under wet conditions was based on data from only three growing seasons in the current study, this
342
may reflect the conditions on the Mongolia steppe, because such extreme precipitation events (dry
343
to 100 mm or wet to 500 mm) have not lasted for three consecutive years based on precipitation
344
data during the past 30 years (Fig. 1). Our results also indicated a lack of robust relationships in alpha
345
diversity between plant communities and soil bacterial communities or fungal communities under 14
346
the dry gradient (Fig. S1), which is consistent with a previous report (Prober et al., 2015) but is
347
inconsistent with several recent studies at local and global scales (Yang et al., 2017; Guo et al., 2019).
348
Our results, however, indicated that plant alpha diversity was positively related to soil bacterial alpha
349
diversity and to soil fungal alpha diversity under the wet gradient (Fig. S1). This inconsistency
350
between the dry and the wet gradient may be due to scale effects or to specific abiotic and biotic
351
factors affecting the relationships between the alpha diversities of plant and soil microbial
352
communities (Prober et al., 2015; Li et al., 2016; Guo et al., 2019). Our results suggest that drought
353
may decouple the positive relationships between the alpha diversities of plant and soil microbial
354
communities, and that dry conditions might have a longer lasting effect on the soil microbial
355
community than wet conditions in a semi-arid grassland.
356
Effects of simulated precipitation on the beta diversity of soil microbial communities
357
We found that the responses of beta diversity to increases in precipitation under wet or dry
358
condition were greater for the bacterial community than for the fungal community. A strong
359
response of bacterial communities was also observed in several previous studies in which bacterial
360
community composition was significantly altered by changes in precipitation under wet or dry
361
conditions (Castro et al., 2010; Hawkes et al., 2011; De Vries et al., 2018). These
362
precipitation-induced changes in the composition of microbial communities could be due to
363
simulated precipitation directly changing the physiological status of specific microbial taxa and
364
indirectly changing the quality and quantity of plant-derived resources by increasing plant
365
productivity (Castro et al., 2010; Maestre et al., 2015; Li et al., 2016); in the latter case, however,
366
there is an ongoing debate about whether plant community composition is strongly associated with
367
microbial community composition (Prober et al., 2015; Guo et al., 2019). Compared with bacterial
368
communities, fungal communities were more tolerant and resistant to wet or dry conditions in the
369
current study, which was consistent with several previous studies (Barnard et al., 2013). Moreover, a
370
recent experiment showed that recovery of fungi and bacteria from drought was differentially 15
371
governed by plant physiological responses to drought (De Vries et al., 2018).
372
Although the simulated precipitation had only small effects on microbial communities, the
373
observed changes in bacterial and fungal community structure caused by simulated precipitation may
374
be due to different responses among different taxon levels. Some studies have suggested that many
375
high taxonomic levels of bacteria demonstrate “ecological coherence” (Philippot et al., 2010). For
376
example, the relative abundance of Bacteroidetes and Proteobacteria increased as precipitation
377
increased under the wet gradient but not under the dry gradient (an asymmetrical response) in our
378
study (Table S2), and such positive correlations between Bacteroidetes and Proteobacteria and
379
precipitation gradients were also observed in several other studies (Bachar et al., 2010; Barnard et al.,
380
2013). This suggests that these phyla may develop faster than others when sufficient resources are
381
available (Hartmann et al., 2017). In addition, we classified the phylum Actinobacteria as an
382
asymmetrical type because the abundance of this phylum did not respond to increased precipitation
383
across the wet gradients but increased with increased precipitation across the dry gradient in the
384
current study (Table S2). The bacteria in this phylum increased in response to drought in several
385
previous studies (Clark et al., 2009; Schimel, 2018), but in a short-term experiment, the relative
386
abundance of Actinobacteria did not differ between wet and dry conditions (McHugh and Schwartz,
387
2016). At the phylum level, 75% of bacterial phyla showed no response to increases in precipitation
388
under the wet or dry gradient (Table S2). Such a high percentage of symmetrical types (horizontal line
389
in response to dry and wet gradients) could have at least two explanations. First, water availability
390
might not be a limiting factor for these phyla. For instance, the abundance of the phylum
391
Acidobacteria is more tightly correlated with pH and temperature than with water availability (Lauber
392
et al., 2009; Yergeau et al., 2012). Second, although our 3-year experiment simulated natural
393
precipitation, the experiment may have been too short to assess the responses of these phyla to wet
394
or dry conditions.
395
Compared with bacteria, fungi are generally more resistant to changes in moisture conditions 16
396
(Ho et al., 2017). In a recent 15-week study, for instance, 15 of 16 fungal classes were resistant to
397
simulated rapid shifts in moisture conditions (Schmidt et al., 2018). The three fungal classes that
398
were found to be asymmetrical types in the current study (Agaricostilbomycetes, Leotiomycetes, and
399
Microbotryomycetes) are saprophytes (Hartmann et al., 2017), which may be more tightly associated
400
than parasites with simulated precipitation-induced changes in plant biomass and litter. In addition,
401
that a majority of bacterial phyla and fungal classes did not respond to changes in simulated
402
precipitation in the current study may be due to trade-offs between different OTUs (i.e., some were
403
enhanced and others were suppressed by increases in precipitation) within the same phylum or class.
404
This possibility was supported by our finding that the percentage of asymmetrical types was higher at
405
the OTU level than at the phylum or class level (Fig. S4). These findings challenge the previous
406
viewpoint that prokaryotic traits are conserved at higher phylogenetic levels (Philippot et al., 2010;
407
Hartmann et al., 2017) and suggest that classification based on higher taxonomic levels might mask
408
heterogeneous responses at lower taxonomic levels.
409
Linking ecological clusters to ecosystem functions
410
The ECs, which were classified based on responses of phylotypes to simulated precipitation,
411
were significantly related to soil C and N mineralization rates. We found no correlation, however,
412
between commonly measured properties (biomass, relative abundance, and diversity) of plant or soil
413
microbial communities and soil C and N mineralization rates, although it is well established that C and
414
N mineralization rates are tightly related to the diversity or biomass of plant and soil microbial
415
communities (Zak et al., 2003; Delgado-Baquerizo et al., 2016). This lack of significant relationships
416
between these commonly measured properties of plant or soil microbial communities and soil
417
mineralization rates might be due to the short duration and small spatial scale of our experiment.
418
That soil C and N mineralization rates were significantly correlated with the relative abundance of five
419
ECs suggests that our classification based on OTU response to simulated precipitation is ecologically
420
meaningful in semi-arid grasslands. Although the microorganisms in the ECs that were closely linked 17
421
with ecosystem function were not abundant, these low-abundance ECs may have disproportionately
422
large effects on ecosystem functions and services (Lynch and Neufeld, 2015). Some bacterial phyla
423
with low relative abundance in clusters EC4 and EC8, such as Burkholderiales and Rhizobiles, are
424
dominant members of the rhizosphere microbiota and are considered keystone taxa for ecosystem
425
functioning (Philippot et al., 2013; Banerjee et al., 2018). The abundance of fungi in the order
426
Mortierellales, which had low relative abundances in clusters EC7 and EC8 of the current study,
427
declined with N deposition in a previous study (Dean et al., 2014), and many genera in the
428
Mortierellales have the ability to decompose complex organic substrates (Wagner et al., 2013). We
429
also found that the ECs for fungi explained more of the variation in the mineralization rates of soil C
430
and N than ECs for bacteria, perhaps because fungi are more important than bacteria for the
431
decomposition of non-labile soil organic matter (Boer et al., 2005; Glassman et al., 2018). Our results
432
indicate that bacterial communities might be less functionally redundant than fungal communities
433
with regards to decomposition of soil organic matter. These results differ from those from a recent
434
grassland mesocosm study, which showed that changes in bacterial communities were more closely
435
associated with soil functioning during recovery from drought than changes in fungal communities
436
(De Vries et al., 2018).
437
It is important to note that our approach of linking microbial community structure to specific
438
functions includes some uncertainties. First, regarding the identity of microbial taxa in each EC,
439
different soils may have different types of microbial taxa, and it might therefore be challenging to
440
identify and classify ECs at lower taxonomic levels, i.e., at genus, species, or genotype levels. Second,
441
C and N mineralization rates were measured under standardized in vitro conditions (with constant
442
moisture contents) and therefore may not reflect in situ mineralization rates in response to
443
precipitation gradients. Third, in vitro rates of C and N mineralization may deviate from in situ rates as
444
a result of the indirect effects of precipitation treatments; precipitation, for instance, may affect
445
mineralization rates by affecting plant primary productivity and thus plant-derived inputs to soil. 18
446
Fourth, the recovery of soil taxa by DNA-based methods does not necessarily mean that they
447
contribute to soil functions in part because a large proportion of the soil microbial community is
448
inactive (Lennon and Jones, 2011). Our understanding of structure-function relationships would be
449
increased by the functional metatranscriptomic profiling of microbial communities, for instance,
450
using RNA-SIP (stable isotope probing) or other approaches to dissect the physiological and genetic
451
basis of diversity-functioning relationships. Despite these limitations, our results suggest that it may
452
be time to reevaluate the relative roles of bacterial and fungal communities in soil functioning under
453
climate change. To our knowledge, the current study is the first to classify ECs based on taxon levels
454
under simulated precipitation gradients and to describe the relationships of such clusters with
455
ecosystem functions. The results indicate that the identification of ECs provides useful insights into
456
the relationships between microbial communities and ecosystem functions.
457
Acknowledgements
458
We thank Huasong Chen for his help in soil analysis. We also thank editor and two anonymous
459
reviewers for their valuable comments on the earlier version of this paper. This study was supported
460
by the Chinese National Key Development Program for Basic Research (2016YFC0500804), the
461
National Natural Science Foundation of China (31570450 and 31630010), and the Youth Innovation
462
Promotion Association of the Chinese Academy of Sciences (2015061).
463
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619
synthesis of grassland precipitation manipulation experiments. Global Change Biology 23,
620
4376-4385. 25
621
Yang, T., Adams, J.M., Shi, Y., He, J.s., Jing, X., Chen, L., Tedersoo, L., Chu, H., 2017. Soil fungal diversity
622
in natural grasslands of the Tibetan Plateau: associations with plant diversity and productivity.
623
New Phytologist 215, 756-765.
624
Yergeau, E., Bokhorst, S., Kang, S., Zhou, J., Greer, C.W., Aerts, R., Kowalchuk, G.A., 2012. Shifts in soil
625
microorganisms in response to warming are consistent across a range of Antarctic environments.
626
The ISME Journal 6, 692-702.
627 628 629 630
Zak, D.R., Holmes, W.E., White, D.C., Peacock, A.D., Tilman, D., 2003. Plant diversity, soil microbial communities, and ecosystem function: are there any links? Ecology 84, 2042-2050. Zhou, Z.H., Wang, C.K., Luo, Y.Q., 2018. Response of soil microbial communities to altered precipitation: A global synthesis. Global Ecology and Biogeography 27, 1121-1136.
631
Supporting Information
632
Table S1 PERMDISP for bacterial, fungal, and plant communities within the gradients under dry and
633
wet conditions.
634
Table S2 Classification of ECs at the phylum level for bacteria and at the class level for fungi.
635
Table S3 Relationships between dominant bacterial phyla or fungal classes in soil microbial
636
communities and soil mineralization rates under dry and wet precipitation gradients.
637
Figure S1 Relationships between the alpha diversity of the plant community and the alpha diversity
638
of soil microbial communities under dry and wet precipitation gradients.
639
Figure S2 Effects of dry and wet precipitation gradients on the ANPP and soil mineralization rates.
640
Figure S3 Relationships between the beta diversity of plant communities and the beta diversity of soil
641
microbial communities under dry and wet precipitation gradients.
642
Figure S4 Percentage of bacterial and fungal taxa numbers at different taxonomic levels.
643
26
644
Table 1 Relationships between commonly measured properties of plant and microbial communities
645
and soil C and N mineralization rates under dry and wet precipitation gradients. Regressions were
646
estimated using a mixed-effect model, and regression statistics are indicated (r). Significant
647
regressions (P < 0.05) are in bold. C mineralization rate -1 -1 (mg g SOC d )
Parameter
N mineralization rate -1 -1 (mg g SOC d )
Dry (≤300 mm)
Wet (≥300 mm)
Dry (≤300 mm)
Wet (≥300 mm)
Precipitation gradient (mm)
0.051
0.001
0.031
0.001
Soil water content (v/v%)
0.065
0.061
0.009
0.006
ANPP (g m )
0.017
0.010
0.057
0.000
Plant Shannon-Wiener index
0.001
0.033
0.197*
0.008
Plant PCoA1
0.007
0.000
0.012
0.012
Plant PCoA2
0.062
0.012
0.002
0.037
Bacterial Shannon-Wiener index
0.078
0.029
0.002
0.018
Bacterial PCoA1
0.013
0.068
0.030
0.017
Bacterial PCoA2
0.001
0.006
0.003
0.011
Fungal Shannon-Wiener index
0.002
0.074
0.030
0.001
Fungal PCoA1
0.006
0.074
0.016
0.014
Fungal PCoA2
0.049
0.006
0.004
0.000
-2
648 649
27
650
Figure Legends
651
Figure 1 Background information on the simulated precipitation experiment. The six rainout shelters
652
minus transparent film covering (a), plots in one rainout shelter minus transparent film covering (b),
653
precipitation distribution from 1982 to 2012 (c), and effects of the dry precipitation gradient (≤ 300
654
mm of precipitation per growing season) and the wet precipitation gradient (≥ 300 mm of
655
precipitation per growing season) on soil water content (d). Regressions were estimated using a
656
mixed-effect model, and regression statistics are indicated (***, P < 0.001).
657
Figure 2 Nine potential ecological clusters (ECs) based on the relationships between the relative
658
abundance of specific microbial taxa under dry and wet precipitation gradients. If the responses of a
659
specific microbial taxon to dry and wet precipitation gradients are similar (+/+, both are significantly
660
positive; -/-, both are significantly negative; 0/0, both are non-significant), the response of the taxon
661
is considered to be symmetrical (S). If the responses of a specific microbial taxon to dry and wet
662
precipitation gradients are different, the response of the taxon is considered to be asymmetrical (A).
663
Taxa with similar responses are grouped in one of nine ECs. The regressions were estimated using a
664
linear mixed-effect model.
665
Figure 3 Effects of a dry precipitation gradient and a wet precipitation gradient on the alpha diversity
666
(indicted by the Shannon-Wiener index) of soil bacterial (a), soil fungal (b), and plant (c) communities.
667
Regressions were estimated using a mixed-effect model, and regression statistics are indicated (ns, P >
668
0.05; *, P < 0.05).
669
Figure 4 Effects of dry and wet precipitation gradients on the beta diversity of soil bacterial (a-b), soil
670
fungal (c-d), and plant (e-f) communities. Beta diversity was estimated by principal coordinate
671
analysis (PCoA) based on Bray-Curtis similarities. The Bray-Curtis similarities were based on the
672
relative abundance of OTUs for soil bacterial and fungal communities and on the relative biomass of
673
plant species. Differences in the composition of communities between dry and wet gradients were
674
assessed using permutational analysis of variance (PERMANOVA) (ns, P > 0.05; **, P < 0.01). 28
675
Relationships between the first principal coordination (PCoA1) and precipitation gradients under dry
676
conditions and wet gradients were estimated using a mixed-effect model, and regression statistics are
677
indicated (ns, P > 0.05; *, P < 0.05).
678
Figure 5 Phylogenetic distribution of OTUs and ecological clusters (ECs) in bacterial (a) and fungal (b)
679
communities. The ring indicates ECs for all filtered OTUs (1565 for bacteria and 774 for fungi) based
680
on relationships between relative abundance of taxa and dry and wet precipitation gradients as
681
explained in Figure 2. Phyla or classes are indicated by different branch colors, and pie charts show
682
the percentages represented by the indicated ECs.
683
Figure 6 Relationships between relative abundance of ecological clusters (ECs) and soil C (a-b) and
684
soil N (c-f) mineralization rates in the simulated precipitation experiment. The relative abundance of
685
each EC was the sum of the relative abundances of OTUs. Regressions were estimated using a
686
mixed-effect model, and regression statistics are indicated (*, P < 0.05). Plot (g) indicates the
687
percentage of the variation in mineralization of soil C and N explained by the relative abundance of
688
ECs. Note that the significant relationship in plot (c) was disappeared after removing the four points
689
on right hand side.
29
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Highlights Precipitation under dry and wet gradients did not alter alpha diversities of biotic communities. Precipitation under dry and wet gradients only altered beta diversity of soil bacterial community, but not for soil fungi or plant. Commonly measured properties (e.g., biomass and diversity) of biotic communities were not correlated with ecosystem functions. Ecological clusters based on responses of soil microbial phylotypes to precipitation explain ecosystem functions.
Type of contribution: Research Paper Date of preparation: December 24, 2019 Number of text pages: 35; Number of tables: 1; Number of figures: 6 Title: Ecological clusters based on responses of soil microbial phylotypes to precipitation explain ecosystem functions Names of authors: Ying Wu1,2,3, Jianping Wu1, Muhammad Saleem4, Bing Wang3,5, Shuijin Hu6, Yongfei Bai3,5, Qingmin Pan3*, and Dima Chen2,3* Complete affiliations: 1
State key Laboratory for Conservation and Utilization of Bio-Resources, Yunnan University, Kunming,
China 2
College of Biological and Pharmaceutical Sciences, China Three Gorges University, Yichang, China
3
State Key Laboratory of Vegetation and Environmental Change, Institute of Botany, Chinese Academy
of Sciences, Beijing, China 4
Department of Biological Sciences, Alabama State University, Montgomery, Alabama
5
University of Chinese Academy of Sciences, Beijing, China
6
Department of Entomology & Plant Pathology, North Carolina State University, Raleigh, NC, USA
*Corresponding author: Prof. Dima Chen College of Biological and Pharmaceutical Sciences, China Three Gorges University, Yichang, China Tel: (+86)-10-6283-6923; Fax: (+86)-10-8259-5771; E-mail:
[email protected] or Prof. Qingmin Pan State Key Laboratory of Vegetation and Environmental Change, Institute of Botany, Chinese Academy of Sciences, Beijing, China Tel: (+86)-10-6283-6977; Fax: (+86)-10-8259-5771; E-mail:
[email protected]
Dear Chief Editor Timothy Clough, The authors declare no competing financial interests. All authors have read and approved this version of the manuscript, and due care has been taken to ensure the integrity of the work. The accompanying manuscript constitutes original unpublished work and is not under consideration for publication elsewhere. Thank you for consideration of our manuscript. Please let us know if any further information would be helpful.
Ying Wu, Jianping Wu, Muhammad Saleem, Bing Wang, Shuijin Hu, Yongfei Bai, Qingmin Pan, and Dima Chen