Journal Pre-proof Association between trace elements in serum from bipolar disorder and schizophrenia patients considering treatment effects Elisa C. Santa Cruz, Katherine C. Madrid, Marco A.Z. Arruda, Alessandra Sussulini
PII:
S0946-672X(19)30689-3
DOI:
https://doi.org/10.1016/j.jtemb.2020.126467
Reference:
JTEMB 126467
To appear in:
Journal of Trace Elements in Medicine and Biology
Received Date:
30 October 2019
Revised Date:
3 January 2020
Accepted Date:
10 January 2020
Please cite this article as: Santa Cruz EC, Madrid KC, Arruda MAZ, Sussulini A, Association between trace elements in serum from bipolar disorder and schizophrenia patients considering treatment effects, Journal of Trace Elements in Medicine and Biology (2020), doi: https://doi.org/10.1016/j.jtemb.2020.126467
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.
Association between trace elements in serum from bipolar disorder and schizophrenia patients considering treatment effects
Elisa C. Santa Cruz1, Katherine C. Madrid2, Marco A. Z. Arruda2,3, Alessandra Sussulini1,3*
1
Laboratory of Bioanalytics and Integrated Omics (LaBIOmics), Department of
P.O. Box 6154, 13083-970, Campinas, SP, Brazil 2
ro of
Analytical Chemistry, Institute of Chemistry, University of Campinas (UNICAMP),
Spectrometry, Sample Preparation and Mechanization Group (GEPAM),
Department of Analytical Chemistry, Institute of Chemistry, University of Campinas (UNICAMP), P.O. Box 6154, 13083-970, Campinas, SP, Brazil
National Institute of Science and Technology for Bioanalytics – INCTBio,
-p
3
13083-970, Campinas, SP, Brazil
lP
* Corresponding author
re
Institute of Chemistry, University of Campinas (UNICAMP), P.O. Box 6154,
E-mail:
[email protected]
Highlights
Elemental determination in blood serum from schizophrenia (SCZ) and
ur
na
Phone: +55 19 35213060
bipolar disorder (BD) patients. Lowest Se concentration determined for BD patients treated with Li.
Jo
Lower Zn concentrations for SCZ and BD patients against healthy controls.
Higher Fe concentrations in SCZ and BD not treated with Li patients against healthy controls.
Copper: zinc ratio was significantly enhanced in SCZ patients compared to healthy individuals.
1
Abstract
BACKGROUND: Imbalances in metal concentrations have been suggested to contribute to the pathophysiology of different brain disorders, such as bipolar disorder (BD) and schizophrenia (SCZ). OBJECTIVES: The aim of this exploratory study is to evaluate the association between the concentrations of macro/trace elements in serum from BD and SCZ patients considering the effects from different treatments. METHODS: Eleven subjects with SCZ, seven with BD treated with lithium (BDL)
ro of
and eight subjects with BD treated with other medications except lithium (BDN) were recruited for the study, as well as eleven healthy controls (HC). Serum
concentrations of eleven macro/trace elements (Se, Zn, Fe, K, Ca, Mg, P, Al, Cu, Mn, and Ni) were determined using inductively coupled plasma mass spectrometry (ICP-MS).
-p
RESULTS: Se and Zn concentrations were significantly lower for patients with
SCZ and BD in comparison to HC by one-way ANOVA test. Moreover, serum 1)
re
concentrations for Fe were significantly higher (p < 0.05) in BDN (548 ± 92 μg Land SCZ (632 ± 279 μg L-1) in comparison to HC (421 ± 121 μg L-1). A significant
lP
negative correlation was reported between Se and Fe in BDL group (r = -0.935, p < 0.05). In addition, a significantly higher Cu/Zn ratio was determined in SCZ group against HC (ratio = 2.4, p = 0.028).
na
CONCLUSIONS: The obtained results suggest that the imbalance in Fe concentrations is an effect of BD treatment. Lithium is supposed to have an antagonist effect for Se in BDL patients. A negative correlation reported between
ur
Fe and BMI in SCZ group could be related to antipsychotic treatment and the Cu/Zn ratio reported could be considered as a suggesting parameter to relate
Jo
oxidative stress to SCZ. Future studies including larger number of patients with SCZ and BD before and after treatment are necessary to confirm the investigative results presented herein.
Keywords: bipolar disorder; schizophrenia; ICP-MS; iron; selenium; zinc.
2
1. Introduction
Bipolar disorder (BD) and schizophrenia (SCZ) are mental illnesses that affect approximately 1 % of the worldwide population and can be a burden to society in both social and economic aspects [1, 2]. According to the Diagnostic and Statistical Manual of Mental Disorders (DSM-5), these diseases are separately classified in diagnostic systems. Nevertheless, there is evidence for shared genetic factors and several medications are commonly used in the treatment of both disorders, especially atypical antipsychotics [3]. This drug class
ro of
is particularly studied for SCZ patients and side effects, such as weight gain and glucose dysregulation, are reported [4].
Essential elements are indispensable for the appropriate functioning of
living organisms and are thus classified for being required for specific biochemical
functions. An insufficiency in these metals may result in alterations in cognition,
-p
immune function and development [5]. Imbalances in metal levels have been
suggested to contribute to the pathophysiology of different brain disorders [6, 7],
re
including BD and SCZ [8, 9]. Five micro-trace nutrients in particular, Cu, Fe, Zn, Al, and Mg, have been studied for a variety of mental disorders, particularly SCZ
lP
[10]. Nevertheless, other elements such as Se, Ni, P, and Mn have not been previously or deeply investigated.
In the present study, the focus is the analysis of blood serum samples from
na
healthy controls and treated BD and SCZ patients by determining Se, Zn, Fe, K, Ca, Mg, P, Al, Cu, Mn, and Ni using ICP-MS, in order to measure the alterations in their concentrations and point out differences between the disorders. The set
ur
of macro/trace elements was selected based on previous studies related with BD and SCZ [8, 9], [11-14]. The results herein presented are expected to
Jo
complement metabolomics and proteomics data, thus offering a complete potential biomarker panel that can be employed for the diagnosis of these disorders in the future. To the best of our knowledge, this is the first study that compares the concentration of multiple elements in these two psychiatric disorders with healthy individuals and contemplates treatment effects.
3
2. Material and methods
2.1. Study subjects Clinical diagnoses for both disorders, bipolar disorder (BD) and schizophrenia (SCZ), fulfilled the DSM-IV criteria, according to the Structured Clinical Interview for DSM-IV Axis I Disorders (SCID-I). Euthymia was defined as not satisfying the criteria for any current mood episode and presenting, at the same time, Young Mania Rating Scale (YMRS) and 17-items Hamilton Depression Rating Scale (HDRS-17) scores below 8. Only patients who used
ro of
lithium for at least 6 months were included in bipolar disorder treated with lithium
(BDL) group. The studied cohort consisted of 37 serum samples: healthy controls (n = 11), patients diagnosed with schizophrenia (n = 11), and bipolar disorder patients treated with lithium (n = 7) and with other medications except lithium (n
-p
= 8). Blood samples were collected at the Hospital das Clínicas (University of Campinas, Brazil). Controls were individuals without any known psychiatric
re
disorder. All subjects have no diabetes, kidney failure, or other diseases. The study protocol was reviewed and approved by the Ethics Committee of the
lP
University of Campinas (protocol 775/2010). The study subjects were informed about the purpose of the study and written consent was obtained from each of
na
them.
ur
2.2. Samples collection and storage
Blood was drawn into vacutainer tubes, immediately placed on ice, allowed to clot for at least 30 min, and centrifuged at 3500 g for 15 min at 4 °C. The
Jo
obtained serum was aliquoted, transferred into polypropylene tubes containing 0.01 % (m/v) sodium azide, and stored at -80 °C until assayed. As presented in Table 1, patients were under medications such as valproate, carbamazepine, and lithium as mood stabilizers, venlafaxine and sertraline as antidepressants, olanzapine, quetiapine, aripiprazole, risperidone and clozapine as antipsychotics, and clonazepam as anxiolytic.
4
2.3. Instrumentation and multi-elemental analysis
An inductively coupled plasma quadrupole mass spectrometer ICP-MS 2030 (Shimadzu, Japan), a DGT100 Plus microwave oven (Provecto Analitica, Brazil), and a certified reference solution of yttrium (89Y) as internal standard were employed in this study. Ultrapure water (18.2 MΩ cm resistivity) obtained from a Milli-Q Advanced A 10 purification system (Millipore, USA) was used for the preparation of all aqueous solutions for the experiments. Sample preparation and operational ICP-MS conditions were selected
ro of
from the adaptation of a methodology previously developed by our group [11]. Optimization was achieved using spiked serum pool of control samples and
calculated recovery percentages of the different analytes, as presented in Supplemental Table 1. For quantification, two calibration curves were prepared,
each one composed by 7 points shown in Supplemental Table 2. The first
-p
calibration curve, which contained a mixture of Al, Cu, Fe, Zn, Mn, Ni, Se and Mg, was used for the quantification of samples after decomposition. The other curve
re
(containing P, Ca and K) was used for the quantification of samples diluted 20 times. Each point used the respective 1000 μg L -1 standard solution. Serum
lP
samples were decomposed using a closed vessel DGT100 Plus microwave oven in a 1.8 mL cryogenic tubes system. 125 µL of sub-boiled distilled HNO3 and 84 µL of H2O2 (Merck) were added to 40 µL of serum. After 15 min of reaction at
na
room temperature, the following program was applied: (1) 60 s at 300 W, (2) 120 s at 500 W, (3) 120 s at 800 W, and (4) 60 s at 500 W. Additionally, 10 µg L-1 of a yttrium (89Y) solution was added before decomposition as internal standard.
ur
After decomposition, samples were diluted to 2.0 mL with Milli Q purified water. Each sample was treated in triplicate and five technical replicates were
Jo
measured. For K, P, and Ca quantification, samples were diluted 20 times. All ICP-MS parameters are presented in Table 2. For ICP-MS analysis, a broad m/z range was selected to cover the highest number of elements possible for the quantitative multi-elemental analysis. Limits of detection (LOD) and limits of quantification (LOQ) were calculated as: LOD = (3*SD)/m and LOQ = (10*SD)/m, where SD is the standard deviation of independent measurements of a blank sample and “m” is the slope of the calibration curve.
5
2.4. Statistical analysis
The acquired data were normalized with respect to the internal standard peak intensity. Data were analysed using univariate statistic tools such as Welch’s t-test and one-way analysis of variance – ANOVA. Before correlation analysis, normalization to sample median and autoscaling was performed. Finally, Pearson’s correlation was used to calculate the correlation coefficient of macro/trace elements levels between the disorders and healthy control groups. All results were evaluated using a confidence level of 95 % and a statistical
ro of
significance of p < 0.05.
3. Results
-p
3.1. Determination of macro/trace elements in serum samples
Table 3 presents the obtained mean and standard deviation (SD) for the
re
determined concentrations of the 37 analyzed samples of BD and SCZ patients and HC.
lP
Trace elements such as Al, Ni, and Mn were not considered further because the concentrations were below the LOQ (data not shown).
na
3.2. Statistical analysis
According to Table 4, one-way ANOVA indicated two elements were
ur
statistically different amongst the four groups and p-values from Welch’s t-test between combinations of two groups. The first two elements, Se and Zn,
Jo
presented the lowest p-values by ANOVA. Another element that presented pvalue < 0.05 was Fe, when comparing SCZ and BDN groups against HC group. Figure 1 presents the box plot of these differential elements for a visual representation of their determined concentrations in the studied groups. In Figure 1.a, BDL, BDN and SCZ groups presented differentially lower Se concentrations than HC and, considering the patient groups, Se concentration was lower for BDL than BDN and SCZ, although there is no statistical differentiation between SCZ and BDN. In Figure 1.b, it is observed that the concentration of Zn in BDL, BDN 6
and SCZ groups are lower than in HC, but did not present statistical differentiation amongst them. Finally, in Figure 1.c, Fe shows higher concentrations for BDN and SCZ groups when comparing with HC group. Serum Cu was elevated in BDN and SCZ groups compared with the HC group; however, the difference was not statistically significant. Macro elements such as K, P, Mg, and Ca were not discriminative in the statistical analysis since they showed similar concentrations between patients and healthy individuals (Supplemental Figure 1).
3.3. Correlation of serum macro/trace element concentrations between
ro of
patients and controls Pearson’s correlation analyses were performed to determine the
correlation of macro/trace element concentrations between patients and healthy individuals. Besides, the body mass index (BMI) of the participants was included
-p
as a variable. For better understanding, BDL and SCZ groups were plotted together for comparison, since BDN and HC groups presented higher similarity
re
between them. Therefore, Figure 2 presents elemental concentration correlations between BDL and SCZ groups. For BDL group, all the variables
lP
except Fe presented positive correlation with each other and a significant negative correlation was observed between Se and Fe (r = -0.935). Whereas for SCZ group all the variables (except Cu) exhibited positive correlations with each
na
other. Furthermore, a significant negative correlation was determined between Fe and Cu (r = -0.745). Figure 3 displays variable correlations between BDN and HC groups. Most of the variables (except Cu) were positively correlated with each
ur
other for both of the disorders. A significant negative correlation was only found between Fe and Cu in HC (r = -0.830) and BDN (r = -0.786) groups. Detailed
Jo
results of these analyses are described in Supplemental Tables 3 and 4. Correlations related with BMI will be discussed in the following section.
4. Discussion and Conclusion
In the literature, there is no consensus regarding altered Fe, Cu and Zn concentrations in serum for recently diagnosed SCZ patients compared with HC. However, there is evidence that lower serum Se concentrations are found in SCZ 7
patients against HC [9, 15], regardless of the antipsychotic treatment [12, 13]. Since our results showed lower concentrations of Se for the treated SCZ than HC group, we support that the SCZ medication does not affect significantly Se concentration in serum. Nevertheless, antipsychotic treatment possibly has effects on pathways that involve Cu, since the concentration of this metal in our study did not differ between patients and healthy individuals, independently of the imbalance before treatment. Kaya et al. reported a trace element study comparing SCZ patients under treatment against HC and determined higher serum levels of Fe, Cu, Mg, and Al
ro of
and lower levels of Zn and Mn [16]. These results were confirmed in the present study for Fe and Zn, but other trace elements could not be compared because
either the determined concentration was below the LOQ or the patients used a different type of medication.
In a previous study of our group, plasma samples were used to compare
-p
element levels in SCZ patients before and after antipsychotic treatment [11] and
Fe was reported in higher levels after six weeks of treatment. Even though the
re
latter is a study using plasma samples, according to our findings, an increase of serum Fe levels in treated SCZ patients is also significant in this blood fraction.
lP
In another study, there are elements such as Se and Zn that presented no significant difference and higher levels of Cu in plasma were determined for treated SCZ patients versus HC [17]. Comparing these results to our findings
na
(Figure 1), we may deduce that the choice of the blood fraction is relevant for the determination of these elements, since divergent results were obtained. For untreated BD patients in comparison with HC, elevated serum
ur
concentrations of K, P, Cu, Al, and Mn and lower Fe and Zn concentrations were reported [18]. Considering that our study involved treated BD patients, the
Jo
medication might be associated with pathways that involve K, P, Cu, Al, and Mn, because their concentrations were not statistically different to the ones determined in the HC group. There is also evidence for lower serum Zn concentration for treated BD patients in depression phase compared to healthy volunteers [19, 20]. In our study, we determined decreased Zn concentrations for treated BD patients in comparison to HC and increased Fe concentrations. We can hypothesize that the treatment without Li somehow affected pathways related to Fe, since its concentration was increased for BDN patients. Moreover, 8
treatment with or without Li did not affect Zn serum levels since its concentration remains lower than for HC after treatment. In a previous study of our group, elevated serum levels for Fe, K, Mg, Se, and Zn for BD patients, treated with Li and other medication except Li, against HC were reported [8]. In the current study, we confirmed higher Fe concentrations in both groups of treated BD patients than HC and thus we can conclude that the medication is involved in the increase on Fe concentration. An explanation about the divergent responses for the other elements could be related to the combination of medications, including the patients treated with Li.
ro of
The association between Se and BD has been less explored than Se and SCZ, as described before. However, for BD patients treated with Li, we reported
the lowest serum Se levels between the two groups of BD patients and this could mean that Li somehow has an antagonist effect with Se, since a significant
difference was found between BD treatments for this trace element. We have no
-p
extra information about studies correlating BD and low Se concentration in serum.
be interesting to confirm our results.
re
A further study comparing HC with BD patients before and after treatment would
The main functions of Fe in biology are associated with its cofactor role in
lP
several proteins, such as oxygen transport and cellular metabolism. Commonly, Fe concentration increases with aging in different parts of the brain. Oxidative stress can play a part in a wide range of neuropsychiatric disorders, including
na
SCZ and BD [21]. Moreover, there is evidence that higher levels of Fe in neurodegenerative diseases may lead to an increase in the oxidative stress due to its action with H2O2 in the Fenton reaction, which increases the production of
ur
·OH in the brain [22, 23]. Therefore, the higher serum Fe concentrations reported in BDN and SCZ groups might be associated with oxidative stress.
Jo
Selenium is a component for a number of selenoproteins. In particular,
glutathione peroxidase (GPx), which has essential enzymatic functions including protection from oxidative stress and inflammation [24, 25]. Thereby, since the obtained results revealed that BD and SCZ groups have a deficiency in Se, we may relate them with a decrease of antioxidant levels, thus oxidative stress processes may be related to these disorders. A deficiency of this trace element has been involved in a variety of illnesses, such as renal disease and obesity and, as a neuromodulator role in brain, related with depression [26]. Evidence 9
reveals that Se intake in SCZ patients elevates Cu and Zn serum levels [27], which presented increasing of appetite and memory capability. Zinc deficiency is characterized by growth retardation, loss of appetite, and impaired immune function. When Zn deficiency does occur, it is usually due to insufficient Zn intake or absorption, augmented losses of Zn from the body, or increased requirements for Zn [28]. Zinc deficit can lead to various conditions, including psychiatric disturbances such as depression and anxiety [29]. Therefore, the reduction in the concentration of this trace element in our study may indicate that patients are prone to have these disturbances. Furthermore, it
ro of
is known that Zn acts as a cofactor involved in the antioxidant defence system and has a protective role against oxidative stress in diseases, such as diabetes and chronic kidney disease [30-32]. In contrast to our findings, the low level of
this element may imply that BD and SCZ patients are undergoing oxidative stress processes in spite of the treatment.
-p
Copper has a role in a wide number of bodily physiological processes, such as myocardial contractility, myelination of the central nervous system,
re
cholesterol and glucose metabolism, hormone synthesis, and immune function [33]. Additionally, it is also related with the etiology of mental disorders [34]. Even
lP
though the increased serum Cu concentration was not significant in SCZ patients, there is evidence which pinpoints a prejudicial effect of elevated levels of Cu in SCZ patients by magnifying or maintaining dopaminergic dysregulation [35].
na
Trace element ratio Cu/Zn has been used as an index related to imbalance inflammation and oxidative stress in the development or progression of the disease activities [36-38]. Among the free radicals produced during oxidative
ur
stress, reactive oxygen species (ROS) and reactive nitrogen species (RNS) are the most related in psychiatric disorders such as SCZ and BD [39, 40].
Jo
Guo et al. presented in a study a positive correlation between superoxide
dismutase (SOD) enzyme activity and Cu/Zn ratio [37]. SOD is one of the antioxidant enzymes that protects the cell mitigating the harmful effects of ROS. For the correct activation of this enzyme, Cu has to work together with Zn, and it is actually the ratio of these elements, rather than the absolute amount of Cu or Zn by oneself, which helps the enzyme function properly [41]. Therefore, we determined serum Cu/Zn ratios for each condition. Table 5 shows that Cu/Zn ratio is significantly higher in SCZ than HC group with p-value < 0.05 and no 10
significant differentiation between SCZ and BD groups (complete results in Supplemental Table 5). Even though the differentiation between BDL and SCZ did not shown statistical significance in this study, a greater number of subjects could disclose whether the differentiation is significant or not. Kunz et al. determined higher levels of SOD in treated SCZ patients against HC, whereas no significant difference was found when comparing control with euthymic BD patients [42]. Furthermore, Hendouei et al. reported increased SOD activity in patients treated with clozapine compared with those treated with other antipsychotics [43]. Altogether, our SCZ group were under antipsychotic
ro of
treatment, mostly with clozapine, and with the literature mentioned, there is a positive correlation between Cu/Zn ratio and SOD. This imbalance may occur as a result of a protective and adapted mechanism development during the
treatment, and/or may be an indication of the elevated generation of ROS in SCZ patients. Hence, Cu/Zn ratio may be considered as a biomarker of oxidative
-p
stress. However, it is of interest to perform the evaluation of SOD and these two
elements in a further assay in order to validate the correlation. The present study
re
has its limitations and does not allow us to conclude a direct association between the impaired Cu and Zn concentrations and the presence of oxidative stress in
lP
SCZ.
Besides the importance in evaluating the homeostasis of the elements, body mass index (BMI) may also indicate some correlations with metals [44, 45].
na
Then, BMI was evaluated in such context, exhibiting positive correlation for all elements, except for Fe in SCZ and BDL groups (Figure 2), whereas for HC and BDN, presented positive correlation for all elements except for Cu. In view of
ur
evidence of weight gain after antipsychotic treatment [4], such as clozapine and olanzapine [46], and SCZ group has significant elevated BMI (p-value = 0.036,
Jo
compared with HC group, Table 1). Thus, we can relate the negative correlation of Fe with antipsychotic treatment in SCZ. On the other hand, it is easy to notice in Figure 2 and Figure 3 the same
element correlation behavior among HC, BDN, and SCZ groups, although lower for the latter. However, in comparison with the other groups, BDL seems to display the inverse correlations in Cu and Fe, which might be due to Li effect in the combined treatment.
11
The incorporation of mineral supplementation in the treatment might be good practice to counteract Zn and Se insufficiencies in both disorder groups, since a positive income for Se intake in SCZ patients has been reported [27]. However, we should emphasize that this is a supposition, given the limitations of the current study, which include the relatively small number of samples from local subjects and hence it does not allow us to generalize the results to the entire population. To the best of our knowledge, this is the first study that compares the concentration of multiple elements in these two psychiatric disorders with healthy
ro of
individuals and, besides, considers treatment effects. The evaluation of patients with BD and SCZ, phenotypically different disorders, was performed in order to
explore potential elemental biomarkers for each disorder, which would be helpful to improve their diagnosis. Since there is evidence for shared genetic factors for
BD and SCZ, finding differential markers enhance the understanding of the
-p
pathophysiological mechanisms of both disorders and lead to advances in
translational research with the discovery of new trans-diagnostic treatments and
re
drug discovery [47]. In summary, our results suggest that serum Fe, Zn, and Se concentrations are affected in treated patients diagnosed with BD and SCZ
lP
compared against HC. The obtained results suggest that higher serum Fe concentration is an effect of treatment for BDN group and might be associated with oxidative stress for BDN and SCZ groups. It was not possible to conclude
na
whether the low concentration of Se is an effect of treatment or due to oxidative stress. However, it seems that Li has an antagonist effect to Se, as exhibited in BDL group. The lower concentration of Zn in BD and SCZ patients might denote
ur
an undergoing oxidative stress in spite of the treatment. Only BDL patients reported a significant negative correlation between Se and Fe. Furthermore, the
Jo
negative correlation reported between Fe and BMI in SCZ group could be related to antipsychotic treatment. The switch of correlation patterns for Cu and Fe within BDL group, compared with the others, might be due to Li effect of the combined treatment. Moreover, we demonstrated for the first time the Cu/Zn ratio for two psychiatric disorders, which a significantly higher ratio was found in SCZ group against HC (ratio = 2.40, p = 0.028). Together with the association with ROS, it could be considered as a suggesting parameter for oxidative stress. Future
12
studies including a larger number of patients with SCZ and BD before and after treatment are necessary to confirm these exploratory results.
Conflicts of interest
The authors declare that there are no conflicts of interest.
Funding
ro of
This work was supported by the São Paulo Research Foundation (FAPESP, grant number 2018/01525-3), National Council for Scientific and
Technological Development (CNPq) and INCT of Bioanalytics (FAPESP 2014/50867-3 and CNPq 465389/2014-7 grant numbers).
-p
Acknowledgements
re
The authors thank Claudio E. M. Banzato and Luiz F. A. Lima e Silva and other medical staff from Hospital das Clínicas for the supervised screening and
Jo
ur
na
for technical support.
lP
information of study participants. Luana Ferreira da Costa is also acknowledged
13
References
[1]
T. Vos, Global, regional, and national incidence, prevalence, and years lived with disability for 328 diseases and injuries for 195 countries, 19902016: A systematic analysis for the Global Burden of Disease Study 2016, Lancet. 390 (2017) 1211–1259. doi:10.1016/S0140-6736(17)32154-2.
[2]
A.J. Ferrari, E. Stockings, J.P. Khoo, H.E. Erskine, L. Degenhardt, T. Vos, H.A. Whiteford, The prevalence and burden of bipolar disorder: findings from the Global Burden of Disease Study 2013, Bipolar Disord. 18 (2016)
[3]
ro of
440–450. doi:10.1111/bdi.12423. W. Barrettini, Bipolar Disorder and Schizophrenia: Convergent Molecular
Data, NeuroMoleuclar Med. 5 (2004) 109–117. doi:10.1385/NMM:5:1:109. [4]
H. Nasrallah, Atypical antipsychotic-induced metabolic side effects :
insights from receptor-binding profiles, Mol. Psychiatry. 13 (2008) 27–35.
[5]
-p
doi:10.1038/sj.mp.4002066.
P. Chellan, P.J. Sadler, The elements of life and medicines, Philos. Trans.
[6]
re
R. Soc. A. 373 (2015) 1–56. doi:10.1098/rsta.2014.0182. Y. Liu, M. Nguyen, A. Robert, B. Meunier, Metal Ions in Alzheimer’s
lP
Disease: A Key Role or Not?, Acc. Chem. Res. 52 (2019) 2026–2035. doi:10.1021/acs.accounts.9b00248. [7]
C.E. Cicero, G. Mostile, R. Vasta, V. Rapisarda, S.S. Signorelli, M.
A
na
Ferrante, M. Zappia, A. Nicoletti, Metals and neurodegenerative diseases. systematic
review,
Environ.
Res.
159
(2017)
82–94.
doi:10.1016/j.envres.2017.07.048. A. Sussulini, C.E.M. Banzato, M.A.Z. Arruda, Exploratory analysis of the
ur
[8]
serum ionomic profile for bipolar disorder and lithium treatment, Int. J. Mass
Jo
Spectrom. 307 (2011) 182–184. doi:10.1016/j.ijms.2010.11.013.
[9]
B. Cao, L. Yan, J. Ma, M. Jin, C. Park, Y. Nozari, O.P. Kazmierczak, H. Zuckerman, Y. Lee, Z. Pan, E. Brietzke, R.S. McIntyre, L.M.W. Lui, N. Li, J. Wang, Comparison of serum essential trace metals between patients with schizophrenia and healthy controls, J. Trace Elem. Med. Biol. 51 (2019) 79–85. doi:10.1016/j.jtemb.2018.10.009.
[10] A. Sussulini, R.A. Hauser-Davis, Metallomics Applied to the Study of Neurodegenerative and Mental Diseases, Adv. Exp. Med. Biol. 1055 (2018) 14
21–37. doi:10.1007/978-3-319-90143-5_2. [11] A. Sussulini, H.M. Erbolato, G. de S. Pessôa, M.A.Z. Arruda, J. Steiner, D. Martins-de-Souza, Elemental fingerprinting of schizophrenia patient blood plasma before and after treatment with antipsychotics, Eur. Arch. Psychiatry Clin. Neurosci. 268 (2018) 565–570. doi:10.1007/s00406-0170836-4. [12] T. Lin, T. Liu, Y. Lin, L. Yan, Z. Chen, J. Wang, Comparative study on serum levels of macro and trace elements in schizophrenia based on supervised learning methods, J. Trace Elem. Med. Biol. 43 (2017) 202–208.
ro of
doi:10.1016/j.jtemb.2017.03.010. [13] T. Liu, Q. Bin Lu, L. Yan, J. Guo, F. Feng, J. Qiu, J. Wang, Comparative study on serum levels of 10 trace elements in schizophrenia, PLoS One. 10 (2015) 1–8. doi:10.1371/journal.pone.0133622.
[14] X. Chen, Y. Li, T. Zhang, Y. Yao, C. Shen, Y. Xue, Association of Serum
-p
Trace Elements with Schizophrenia and Effects of Antipsychotic
Treatment, Biol. Trace Elem. Res. 181 (2018) 22–30. doi:10.1007/s12011-
re
017-1039-6.
[15] L. Cai, T. Chen, J. Yang, K. Zhou, X. Yan, W. Chen, L. Sun, L. Li, S. Qin,
lP
P. Wang, P. Yang, D. Cui, M. Burmeister, L. He, W. Jia, C. Wan, Serum trace element differences between Schizophrenia patients and controls in the
Han
Chinese
population,
Sci.
Rep.
5
(2015)
1–8.
na
doi:10.1038/srep15013.
[16] B. Kaya, N. Akdaǧ, E. Fadillioǧlu, S.E. Taycan, M.H. Emre, S. Unal, A. Sayal, H. Erdoǧan, R. Polat, Elements levels and glucose-6-phosphate
ur
dehydrogenase activity in blood of patients with schizophrenia, Dusunen Adam. 25 (2012) 198–205. doi:10.5350/DAJPN2012250301.
Jo
[17] B. Vidovic, B. Dordevic, S. Milovanovic, S. Skrinaj, Z. Pavlovic, A. Stefanovic, J. Kotur-Stevuljevic, Selenium, Zinc, and Copper Plasma Levels in Patientis with Schizophrenia: Relationship with Metabolic Risk Factors, Biol. Trace Elem. Res. 156 (2013) 22–28. doi:10.1007/s12011013-9842-1. [18] M.S. Mustak, T.S.S. Rao, P. Shanmugavelu, N.M.S. Sundar, R.B. Menon, R. V. Rao, K.S.J. Rao, Assessment of serum macro and trace element homeostasis and the complexity of inter-element relations in bipolar mood 15
disorders,
Clin.
Chim.
Acta.
394
(2008)
47–53.
doi:10.1016/j.cca.2008.04.003. [19] M. Siwek, M. Sowa-Kućma, K. Styczeń, B. Szewczyk, W. Reczyński, P. Misztak, R. Topór-Mądry, G. Nowak, D. Dudek, J.K. Rybakowski, Decreased serum zinc concentration during depressive episode in patients with
bipolar
disorder,
J.
Affect.
Disord.
190
(2016)
272–277.
doi:10.1016/j.jad.2015.10.026. [20] K. Styczeń, M. Sowa-Kućma, M. Siwek, D. Dudek, W. Reczyński, B. Szewczyk, P. Misztak, R. Topór-Mądry, W. Opoka, G. Nowak, The serum
depressive
disorder,
Metab.
Brain
Dis.
doi:10.1007/s11011-016-9888-9.
ro of
zinc concentration as a potential biological marker in patients with major 32
(2016)
97–103.
[21] R.T. de Sousa, C.A. Zarate, M. V. Zanetti, A.C. Costa, L.L. Talib, W.F.
Gattaz, R. Machado-Vieira, Oxidative stress in early stage bipolar disorder
-p
and the association with response to lithium, J. Psychiatr. Res. 50 (2014) 36–41. doi:10.1016/j.jpsychires.2013.11.011.
re
[22] J.L. Liu, Y.G. Fan, Z.S. Yang, Z.Y. Wang, C. Guo, Iron and Alzheimer’s disease: From pathogenesis to therapeutic implications, Front. Neurosci.
lP
12 (2018) 1–14. doi:10.3389/fnins.2018.00632. [23] J.H. Lee, M.S. Lee, Brain iron accumulation in atypical parkinsonian syndromes: In vivo MRI evidences for distinctive patterns, Front. Neurol.
na
10 (2019) 1–9. doi:10.3389/fneur.2019.00074. [24] M.P. Rayman, Selenium and human health, Lancet. 379 (2012) 1256– 1268. doi:10.1016/S0140-6736(11)61452-9.
ur
[25] M. Kieliszek, S. Blazejak, Selenium : Significance, and outlook for supplementation,
Nutrition.
29
(2013)
713–718.
Jo
doi:10.1016/j.nut.2012.11.012.
[26] J. Wang, P. Um, B.A. Dickerman, J. Liu, Zinc, magnesium, selenium and depression: A review of the evidence, potential mechanisms and implications, Nutrients. 10 (2018) 1–19. doi:10.3390/nu10050584. [27] Z. Li, Y. Liu, X. Li, W. Ju, G. Wu, X. Yang, Association of Elements with Schizophrenia and Intervention of Selenium Supplements, Biol. Trace Elem. Res. 183 (2017) 16–21. doi:10.1007/s12011-017-1105-0. [28] A.S. Prasad, Discovery of human zinc deficiency : Its impact on human 16
health
and
disease,
Am.
Soc.
Nutr.
4
(2013)
176–190.
doi:10.3945/an.112.003210.176. [29] O. Grønli, J.M. Kvamme, O. Friborg, R. Wynn, Zinc Deficiency Is Common in
Several
Psychiatric
Disorders,
PLoS
One.
8
(2013)
6–12.
doi:10.1371/journal.pone.0082793. [30] N. Marreiro, K. Jayanne, J. Beatriz, S. Morais, B. Beserra, J.S. Severo, A. Raquel, S. De Oliveira, Zinc and Oxidative Stress : Current Mechanisms, Antioxidants (Basel). 6 (2017) 1–9. doi:10.3390/antiox6020024. [31] V.B. de S. Lima, F. de A. Sampaio, D.L.C. Bezerra, J.M. Moita Neto, D. do
ro of
N. Marreiro, Parameters of glycemic control and their relationship with zinc concentrations in blood and with superoxide dismutase enzyme activity in
type 2 diabetes patients, Arq. Bras. Endocrinol. Metabol. 55 (2011) 701– 707. doi:10.1590/s0004-27302011000900006.
[32] R.C.N. Magalhaes, C.G. Borges, V. de Sousa Lima, J.M.M.N. Neto, N.N.
-p
Nogueira, D.N. Marreiro, Nutritional status of zinc and activity superoxide
dismutase in chronic renal patients undergoing hemodialysis, Nutr. Hosp.
re
26 (2011) 1456–1461. doi:10.3305/nh.2011.26.6.5400.
[33] M. Schlegel-zawadzka, G. Nowak, Alterations in Serum and Brain Trace
lP
Element Levels After Antidepressant. Part II. Copper, Biol. Trace Elem. Res. 73 (1999) 37–45. doi:10.1385/BTER:73:1:37. [34] M. Siwek, K. Styczeń, M. Sowa-Kućma, D. Dudek, G. Nowak, P. Misztak,
na
B. Szewczyk, J. Rybakowski, W. Opoka, W. Reczyński, R. Topór-Mądry, The serum concentration of copper in bipolar disorder, Psychiatr. Pol. 51 (2017) 469–481. doi:10.12740/pp/onlinefirst/65250.
ur
[35] T.L. Wolf, J. Kotun, J.H. Meador-Woodruff, Plasma copper, iron, ceruloplasmin and ferroxidase activity in schizophrenia, Schizophr. Res. 86
Jo
(2006) 167–171. doi:10.1016/j.schres.2006.05.027.
[36] C. Guo, C. Wang, Effects of Zinc Supplementation on Plasma Copper / Zinc Ratios , Oxidative Stress , and Immunological Status in Hemodialysis Patients, Int. J. Med. Sci. 10 (2013) 79–89. doi:10.7150/ijms.5291. [37] C. Guo, P. Chen, M. Yeh, D. Hsiung, C. Wang, Cu / Zn ratios are associated with nutritional status , oxidative stress , in fl ammation , and immune abnormalities in patients on peritoneal dialysis, Clin. Biochem. 44 (2011) 275–280. doi:10.1016/j.clinbiochem.2010.12.017. 17
[38] M.A. Emokpae, E.B. Fatimehin, Copper-to-Zinc Ratio Correlates with an Inflammatory Marker in Patients with Sickle Cell Disease, Sci. 34 (2019) 1– 6. doi:10.3390/sci020034. [39] S.
Salim,
Oxidative
stress
Neuropharmacol.
and
psychological
12
disorders,
(2014)
Curr. 140–7.
doi:10.2174/1570159X11666131120230309. [40] S. Akarsu, A. Bolu, E. Aydemir, S.B. Zincir, The Relationship between the Number of Manic Episodes and Oxidative Stress Indicators in Bipolar Disorder,
Psychiatry
Investig.
15
(2018)
514–519.
ro of
doi:10.30773/pi.2016.12.31. [41] J. Osredkar, Copper and Zinc, Biological Role and Significance of
Copper/Zinc Imbalance, J. Clin. Toxicol. s3 (2014) 1–18. doi:10.4172/21610495.s3-001.
[42] M. Kunz, C.S. Gama, A.C. Andreazza, M. Salvador, K.M. Ceresér, F.A.
-p
Gomes, P.S. Belmonte-de-Abreu, M. Berk, F. Kapczinski, Elevated serum
superoxide dismutase and thiobarbituric acid reactive substances in
Psychopharmacology
Biol.
re
different phases of bipolar disorder and in schizophrenia, Prog. NeuroPsychiatry.
32
(2008)
1677–1681.
lP
doi:10.1016/j.pnpbp.2008.07.001.
[43] N. Hendouei, S. Farnia, F. Mohseni, A. Salehi, M. Bagheri, Alterations in oxidative stress markers and its correlation with clinical findings in patients
risperidone,
Biomed.
consuming
na
schizophrenic
perphenazine
Pharmacother.
103
,
clozapine
(2018)
and
965–972.
doi:10.1016/j.biopha.2018.04.109.
ur
[44] P. Ozturk, E. Kurutas, A. Ataseven, N. Dokur, Y. Gumusalan, A. Gorur, L. Tamer, S. Inaloz, BMI and levels of zinc, copper in hair, serum and urine of
Jo
Turkish male patients with androgenetic alopecia, J. Trace Elem. Med. Biol. 28 (2014) 266–270. doi:10.1016/j.jtemb.2014.03.003.
[45] M. Zohal, S. Jam-Ashkezari, N. Namiranian, A. Moosavi, A. Ghadiri-Anari, Association between selected trace elements and body mass index and waist circumference: A cross sectional study, Diabetes Metab. Syndr. Clin. Res. Rev. 13 (2019) 1293–1297. doi:10.1016/j.dsx.2019.01.019. [46] M. Dayabandara, R. Hanwella, S. Ratnatunga, S. Seneviratne, C. Suraweera, V.A. de Silva, Antipsychotic-associated weight
gain : 18
management
strategies
Neuropsychiatr.
Dis.
and
impact
Treat.
on 13
treatment
adherence,
(2017)
2231–2241.
doi:10.2147/NDT.S113099. [47] F. Bellivier, P.A. Geoffroy, J. Scott, F. Schurhoff, M. Leboyer, B. Etain, Biomarkers of bipolar disorder: specific or shared with schizophrenia?,
Jo
ur
na
lP
re
-p
ro of
Front. Biosci. 5 (2013) 845-863. doi:10.2741/e665.
19
Figure Caption
Figure 1. Box plot for serum metal concentration levels (mean ± SD; n = 37) and p-value from Welch’s t-test among the four groups in pairs: (a) selenium, (b) zinc, and (c) iron concentrations. BDL: Bipolar disorder patients treated with lithium, BDN: Bipolar disorder patients treated with other medications except lithium, HC: Healthy controls, SCZ: Schizophrenia patients.
Figure 2. Pearson's correlations of macro/trace element concentrations between
ro of
SCZ and BDL groups. The lower-left corner represents the correlations of elements in SCZ group and the upper-right corner represents the correlations in BDL group.
Jo
ur
na
lP
re
-p
Figure 3. Pearson's correlations of macro/trace element concentrations between HC and BDN groups. The lower-left corner represents the correlations of elements in HC group and the upper-right corner represents the correlations in BDN group.
20
ro of
-p
re
lP
na
ur
Jo Fig. 1a
21
ro of
-p
re
lP
na
ur
Jo Fig. 1b
22
ro of
-p
re
lP
na
ur
Jo Fig. 1c
23
ro of
-p
re
lP
na
ur
Jo Fig 2
24
ro of
-p
re
lP
na
ur
Jo Fig 3
25
Table 1. Characteristics of subjects included in the study
Parameter Age (years); mean (SD)
BDL 30 (9.5)
BDN 31 (11.0)
SCZ 33.7 (7.9)
HC 35.9 (7.0)
Gender F/M; n (%)
4/3 (57/43)
6/2 (75/25)
3/8 (27/73)
7/4 (64/36)
BMI; kg/m2; mean (SD)
43.1 (8.9)
41 (5.0)
50 (12.0)
41.8 (4.6)
28.6
25.0
18.2
9.1
Anticonvulsants
2 (28.6)
5 (62.5)
1 (9.1)
--
Mood stabilizers
7 (100)
--
--
--
Anxiolytic
1 (14.3)
--
2 (18.2)
--
Antipsychotics
6 (85.7)
5 (62.5)
--
--
Smoker, %
Antidepressants
ro of
Treatment; n (%)
9 (81.8)
--
3 (27.3)
--
BMI: Body mass index, BDL: Bipolar disorder patients treated with lithium, BDN: Bipolar disorder patients treated with other medication except lithium, SCZ: Schizophrenia
re
-p
patients, HC: Healthy control.
Table 2. Instrumental parameters used in multi-elemental profile evaluation in serum samples by ICP-MS
lP
Plasma Conditions
Radio Frequency power (kW)
Values 1.2 5
Plasma Gas (L min-1)
8
Auxiliary Gas (L min-1)
1.1
Carrier Gas (L min-1)
0.7
Mixed Gas (L min-1)
0
ur
na
Sampling Depth (mm)
Cell Conditions
Jo
Collision Gas
Cell Gas (mL min-1)
He 6
Cell Voltage (V)
-21
Energy Filter (V)
7
26
Table 3. Determined concentrations (µg L-1) for macro and trace elements in 37 human serum samples: BDL (n = 7), BDN (n = 8), HC (n = 11), and SCZ (n = 11)
Fe
66
Zn
24
Mg*
78
Se
39
K*
31
P*
44
Ca*
SCZ
Mean
893
1032
897
1089
SD
106
332
212
338
Mean
700
548
421
632
SD
396
92
121
279
Mean
516
497
589
488
SD
58
34
50
88
Mean
14.0
13.6
13.3
14.3
SD
2.7
1.4
1.6
2.6
Mean
22.1
32.2
37.6
31.8
SD
4.0
5.9
5.5
3.1
Mean
198
176
170
186
SD
30
18
28
15
Mean
112
109
115
118
SD
19
15
17
16
Mean
95
98
95
98
SD
32
23
13
19
ro of
56
HC
-p
Cu
BDN
re
63
BDL
lP
*Concentration in µg mL-1, BDL: Bipolar disorder patients treated with lithium, BDN: Bipolar disorder patients treated with other medications
Jo
ur
na
except lithium, HC: Healthy control, SCZ: Schizophrenia patients.
27
Table 4. Statistical analysis by one-way ANOVA and Welch’s t-test p-value
p-value
p-value
p-value
p-value
p-value
BDL – BDN
HC – BDL
HC – SCZ
BDN – SCZ
HC – BDN
BDL – SCZ
ANOVA
Se
3.2E-03*
5.2E-06*
4.3E-03*
0.860
0.056
2.2E-05*
2.0E-06*
Zn
0.442
0.010*
3.0E-03*
0.785
2.2E-04*
0.464
2.7E-03*
K
0.106
0.056
0.101
0.219
0.556
0.266
0.080
Fe
0.344
0.054
0.037*
0.448
0.019*
0.695
0.120
Cu
0.339
0.963
0.132
0.730
0.306
0.177
0.329
P
0.744
0.748
0.663
0.222
0.470
0.464
0.695
Mg
0.734
0.536
0.312
0.505
0.713
0.815
0.754
Ca
0.815
0.999
0.566
0.966
ro of
p-value
Element
0.681
0.749
0.963
* p-value < 0.05, BDL: Bipolar disorder patients treated with lithium, BDN: Bipolar disorder patients treated
-p
with other medications except lithium, HC: Healthy control, SCZ: Schizophrenia patients.
Table 5. Cu/Zn ratios among BDL, SCZ and HC groups Cu/Zn
re
p-value
p-value
p-value
HC
SCZ
HC-SCZ
BDL-SCZ
HC-BDL
mean
1.76
1.65
2.40
0.028*
0.084
0.669
SD
0.32
0.43
lP
BDL
0.68
* p-value < 0.05, SD: Standard deviation; BDL: Bipolar disorder patients
Jo
ur
na
treated with lithium; HC: Healthy control; SCZ: Schizophrenia patients.
28