A novel approach for tuberculosis diagnosis using exosomal DNA and droplet digital PCR

A novel approach for tuberculosis diagnosis using exosomal DNA and droplet digital PCR

Journal Pre-proof A novel approach for tuberculosis diagnosis using exosomal DNA and droplet digital PCR Sun-Mi Cho, Saeam Shin, Yoonjung Kim, Wonkeun...

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Journal Pre-proof A novel approach for tuberculosis diagnosis using exosomal DNA and droplet digital PCR Sun-Mi Cho, Saeam Shin, Yoonjung Kim, Wonkeun Song, Seong Geun Hong, Seok Hoon Jeong, Myung Seo Kang, Kyung-A. Lee PII:

S1198-743X(19)30611-1

DOI:

https://doi.org/10.1016/j.cmi.2019.11.012

Reference:

CMI 1846

To appear in:

Clinical Microbiology and Infection

Received Date: 26 August 2019 Revised Date:

7 November 2019

Accepted Date: 9 November 2019

Please cite this article as: Cho S-M, Shin S, Kim Y, Song W, Hong SG, Jeong SH, Kang MS, Lee KA, A novel approach for tuberculosis diagnosis using exosomal DNA and droplet digital PCR, Clinical Microbiology and Infection, https://doi.org/10.1016/j.cmi.2019.11.012. 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. © 2019 Published by Elsevier Ltd on behalf of European Society of Clinical Microbiology and Infectious Diseases.

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Original article

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A novel approach for tuberculosis diagnosis using exosomal DNA and droplet digital

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PCR

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Sun-Mi Choa*, Saeam Shinb*, Yoonjung Kimb*, Wonkeun Songc, Seong Geun Honga, Seok

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Hoon Jeongb, Myung Seo Kanga†, Kyung-A Leeb†

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a

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Seongnam, Republic of Korea

Department of Laboratory Medicine, CHA Bundang Medical Center, CHA University,

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b

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Republic of Korea

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c

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Republic of Korea

Department of Laboratory Medicine, Yonsei University College of Medicine, Seoul,

Department of Laboratory Medicine, Hallym University College of Medicine, Seoul,

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*

These authors contributed equally to this work.

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Kyung-A Lee

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Department of Laboratory Medicine, Yonsei University College of Medicine, 211, Eonju-ro,

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Gangnam-gu, Seoul, 06273, Republic of Korea

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Tel: +82-2-2019-3531

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Fax: +82-2-2019-4822

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E-mail: [email protected]

Corresponding authors

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Myung Seo Kang

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Department of Laboratory Medicine, CHA Bundang Medical Center, CHA University, 59,

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Yatap-ro, Bundang-gu, Seongnam, 13496, Republic of Korea

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Tel: +82-31-780-5384

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Fax: +82-31-780-5476

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E-mail: [email protected]

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ABSTRACT

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Objectives: The rapid diagnosis of tuberculosis (TB) is important for patient treatment and

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infection control. Current molecular diagnostic techniques for TB have insufficient sensitivity

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to detect samples with low bacterial loads. The sensitivity of molecular testing depends on

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not only performance of assay technique but also nucleic acid extraction method. Here, we

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have presented a novel approach using exosomal DNA (exoDNA) and droplet digital PCR

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(ddPCR) platform to detect Mycobacterium tuberculosis DNA in clinical samples.

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Methods: The ddPCR platform targeting IS6110 was evaluated in parallel using total DNA

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and exoDNA. The clinical performance of ddPCR method was assessed with 190 respiratory

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samples from patients with suspected pulmonary TB.

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Results: Compared with mycobacterial culture, sensitivity and specificity of ddPCR were

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61.5% (95% CI, 44.6%-76.6%) and 98.0% (95% CI, 94.3%-99.6%) using total DNA, and

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76.9% (95% CI, 60.7%-88.9%) and 98.0% (95% CI, 94.3%-99.6%) using exoDNA

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respectively. Among 15 culture-positive specimens with low concentrations of target

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molecules (2~99 positive droplets with exoDNA), only 53.3% (8/15), 46.7% (7/15), and 26.7%

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(4/15) of cases were detected using ddPCR with total DNA, real-time PCR with exoDNA, or

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real-time PCR with total DNA.

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Conclusions: Our platform using ddPCR and exoDNA has the potential to provide sensitive

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and accurate methodology for TB diagnosis.

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Introduction

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Tuberculosis (TB), which is caused by Mycobacterium tuberculosis (MTB) infection,

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is a critical health problem with high infectivity, morbidity and mortality. Mycobacterial

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culture is time-consuming and acid-fast bacilli (AFB) smear has low sensitivity. Because of

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the limitations of conventional diagnostic methods, nucleic acid amplification tests (NAATs)

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have been usefully applied in rapid diagnosis of TB. To improve sensitivity, several

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platforms adopt sensitive molecular techniques such as real-time polymerase chain reaction

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(PCR), nested PCR, and isothermal transcription-mediated amplification. However, the

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sensitivity of NAATs is still insufficient compared with conventional mycobacterial

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culture [1].

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Droplet digital PCR (ddPCR) is an emerging technology capable of absolute nucleic

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acid quantification without using standard curves [2]. ddPCR technology uses a combination

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of microfluidics and proprietary surfactant chemistries to divide PCR samples into water-in-

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oil droplets [3]. These droplets support PCR amplification of single template molecules

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using reagents and workflows similar to those widely used for real-time PCR applications [3].

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Following PCR, each droplet is analyzed to assign positivity or negativity based on their

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fluorescence amplitude, after which the concentration of target DNA in the original sample is

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calculated [3]. These principles offer the advantages of precise and reproducible data without

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being affected by PCR inhibitors in samples over real-time PCR [4]. Since 20,000 droplets

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are generated for a sample, the theoretical detection limit of ddPCR is 0.005% (1/20,000) and

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reported detection limits are 0.01~0.001% [3,5,6]. With low detection limits for ddPCR,

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many applications have been developed for analyzing pathogens or cancer-derived mutations

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present at low levels in clinical samples. Accordingly, we sought to evaluate the clinical 4

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performance of ddPCR in detecting MTB in clinical samples.

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Exosomes are small membrane vesicles (30–100 nm) secreted by many cell types

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during physiological and pathological conditions [7]. They contain a variety of molecules

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derived from the original cell, including DNA, RNA, proteins, and lipids [8]. Recent

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evidence has indicated that the exosomal nucleic acids are more stable than other forms of

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nucleic acids, probably by the protective effect of lipid bilayer coating [9]. Exosomes are

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isolated in most biological fluids, such as serum, urine, and bronchoalveolar lavage (BAL)

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fluid [10]. Such ubiquitous nature of exosomes in body fluids makes them ideal for use as

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diagnostic biomarkers. Previous reports indicated that exosomes isolated from the BAL fluid

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of MTB-infected mice or sera TB patients contain mycobacterial proteins [11].

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In this study, we attempted a novel approach for TB diagnosis targeting exosomal DNA (exoDNA), using ddPCR.

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Methods

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Clinical specimens

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The study protocol was approved by the Institutional Review Boards (IRBs) of the

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participating institutions (Hallym University Kangnam Sacred Heart Hospital, Yonsei

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University Gangnam Severance Hospital, and Bundang CHA General Hospital). Between

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August 2018 to October 2019, a total of 174 consecutive subjects undergoing evaluation for

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pulmonary TB were included in the study. In 174 consecutive samples, mycobacterial

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culture-positive sample was 13% (n=23). Therefore, we selectively added 16 culture-positive

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specimens to evaluate the efficiency of exoDNA and ddPCR for detecting MTB. The final 5

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clinical diagnosis of TB was made by infectious physicians or respiratory physicians based

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on integration of patients’ medical history, radiologic findings, and laboratory findings

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(microbiological, molecular and immunological tests). The researchers retrospectively

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reviewed the participant's medical records, including the final clinical diagnosis. All samples

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were tested using AFB smear, mycobacterial culture, real-time PCR, and ddPCR. For non-

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sterile specimens, an equal volume of 4% NaOH was added for emulsification and

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decontamination. Then the mixture was transferred to a sterile tube and centrifuged for 20

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minutes at 3,000 g. After performing the AFB smear procedure with an auramine-rhodamine

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fluorescent stain, it was confirmed by Ziehl-Neelsen staining. For mycobacterial culture, all

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decontaminated samples were inoculated into a mycobacterial growth indicator tube (MGIT

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960 system; Becton Dickinson, Sparks, MD) and on 3% Ogawa agar (Shinyang, Seoul,

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Republic of Korea) and cultured for 6 weeks.

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DNA extraction

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For analysis of total DNA, 100 µL aliquots of the decontaminated specimens were

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re-suspended in DNA extraction buffer. Total DNA was extracted using QIAamp DNA mini

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kit (QIAGEN, Hilden, Germany) following manufacturer’s instructions. For analysis of

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exoDNA, we isolated exosomal fractions from 1 mL of respiratory specimen using

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ExoQuick™

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recommendations (System Biosciences Inc., Mountain View, CA, USA). Submitted

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specimens were centrifuged at 3000 x g for 15 minutes to remove cells and cell debris.

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Briefly, 1/4 volume of ExoQuick Solution was added to respiratory specimen, and samples

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were refrigerated at 4 °C overnight. The mixture was centrifuged at 1500 × g for 30 min, and

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supernatant was removed by aspiration. Pelleted fractions were re-suspended in nuclease-free

Exosome

Precipitation

Solution

6

according

to

the

manufacturer's

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water. Subsequently, exosome-derived DNA was extracted using QIAamp DNA mini kits as

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described above.

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Real-time PCR

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Real-time PCR was performed using the PowerCheck MTB/NTM Real-time PCR

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assay (Kogene Biotech, Seoul, Korea), targeting the MTB-specific IS6110, following

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manufacturer’s instructions. The 20 µL PCR mix was composed of 10 µL 2X Real-time PCR

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Master Mix, 5 µL of primer/probe mix, and 5 µL total DNA. The analysis was done with

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CFX96 real-time PCR detection system (Bio-Rad Laboratories, Hercules, CA, USA).

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ddPCR

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Digital PCR reactions were performed with a QX200 Droplet Digital PCR System

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(Bio-Rad Laboratories, Hercules, CA, USA). The reactions were carried out using the

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previously described primers and probes, targeting IS6110, and thermal cycling

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conditions[12]. A no-template control was used in every ddPCR batch. The 20 µL PCR mix

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was composed of 10 µL Bio-Rad Super mix TaqMan, 1 µL of each amplification

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primer/probe mix, 5 µL DNA and 4 µL nuclease-free water. Results were analyzed with

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QuantaSoft v.1.7.2 software (Bio-Rad Laboratories). This provided the number of positive

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and negative droplets, as well as quantification of IS6110 of MTB, expressed as copies/mL of

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ddPCR reaction. At least two positive droplets were required for a positive test result of the

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ddPCR assay [12].

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Limit of detection of real-time PCR and ddPCR assay

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The analytical sensitivities of real-time PCR and the ddPCR assay were evaluated

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using spiked samples with ATCC 25177. The limits of detection (LODs) for both PCR assays 7

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were measured using five dilutions around LOD. For all concentrations, repetitive tests were

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performed with 10 replicates in three different runs at each concentration, and LODs were

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calculated by probit analysis for a 95% positive result.

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Statistical analysis

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SPSS version 24.0 software (SPSS Inc., Chicago, IL, USA) and MedCalc version

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19.1 (MedCalc software, Mariakerke, Belgium) was used for statistical analyses. The chi-

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squared test was used to analyze tabular data. A correlation study was performed with the

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Spearman’s rank correlation procedure (r). All p-values were two-sided, and values less than

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0.05 were considered statistically significant.

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Results

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Patient characteristics

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A total of 190 respiratory specimens, including 151 (79.5%) sputa, 31 (16.3%)

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bronchial washings, and 8 (4.2%) bronchoalveolar lavage (BAL) fluids, were included in this

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study. The demographic data for 190 subjects are listed in Table 1. Forty four patients (23.2%)

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were finally diagnosed with pulmonary tuberculosis.

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Considering mycobacterial culture as a reference method, sensitivity and specificity

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were 35.9% (95% CI, 21.2%-52.8%) and 98.0% (95% CI, 94.3%-99.6%) for AFB smear

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(Table S1) Compared with final clinical diagnosis, sensitivity and specificity were 34.1% (95%

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CI, 20.5%-49.9%) and 98.6% (95% CI, 95.1%-99.8%) for AFB smear and 88.6% (95% CI,

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75.4%-96.2%) and 100% (95% CI, 97.5%-100.0%) for mycobacterial culture, respectively 8

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(Table 3).

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Results of real-time PCR using exosomal DNA (exoDNA) and total DNA

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Probit analysis of 95% positivity in 10 replicates in three different runs at five

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concentrations showed MTB had a LOD of 13.8 copies/reaction (Table S2). Real-time PCR

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using exoDNA and total DNA yielded 24 positive suspects and 21 positive suspects,

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respectively, and three of each were culture negative (Table 2). All three of these subjects

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also showed positive results in all other PCR assays, and 1 patient had a positive result by

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AFB smear. Based on culture results, the sensitivities of the real-time PCR assays with both

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exoDNA and total DNA were 53.9% (95% CI, 37.2-69.9) and 46.2% (95% CI, 30.1%-

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62.8%), respectively (Table 2). Compared with final clinical diagnosis, the sensitivities of

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both exoDNA and total DNA were 54.6% (95% CI, 38.9%–69.6%) and 47.7% (95% CI,

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32.5%-63.3%), respectively (Table 3). The specificities of exoDNA and total DNA according

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to culture results were both 98.0% (95% CI, 94.3%-99.6%) and according to the final clinical

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diagnosis were both 100% (95% CI, 97.5%-100.0%) (Table 2, 3).

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Results of ddPCR using total DNA

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We found that the MTB LOD with ddPCR was 2.3 copies/reaction (Table S3). The

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ddPCR yielded 27 positive suspects, 3 of which were culture negative (Table 2). Of these 3

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suspects, 2 had real-time PCR positive results; only 1 patient had a positive result by AFB

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smear. Of the 163 ddPCR negative suspects, 15 were culture positive. Based on culture

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results, the sensitivity and specificity of the ddPCR assays with total DNA were 61.5% (95%

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CI, 44.6-76.6) and 98.0% (95% CI, 94.2–99.6), respectively (Table 2). Compared with final

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clinical diagnosis, the sensitivity and specificity of the ddPCR with total DNA were 61.4% 9

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(95% CI, 45.5-75.6), and 100% (95% CI, 97.5%–100%), respectively (Table 3).

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Results of ddPCR using exosomal DNA (exoDNA)

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The ddPCR with exoDNA yielded 33 positive suspects, 3 of whom were culture

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negative (Table 2). Of these 3 suspects, all 3 had real-time PCR positive results; only 1

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patient had a positive result by AFB smear. Of the 157 ddPCR negative suspects, 9 were

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culture positive. Based on culture results, the sensitivity and specificity of the ddPCR with

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exoDNA for detecting MTB were 76.9% (95% CI, 60.7-88.9) and 98.0% (95% CI, 90.2–

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97.6), respectively (Table 2). Compared with final clinical diagnosis, the sensitivity and

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specificity of the ddPCR with exoDNA were 75.0% (95% CI, 59.7-86.8) and 100% (95% CI,

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97.5–100), respectively (Table 3).

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Receptor operating characteristics (ROC) curve analysis was performed to evaluate

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diagnostic accuracy of ddPCR to predict MTB culture positivity. The area under the ROC

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curve was 0.80 (95% CI, 0.70-0.89) and 0.88 (95% CI, 0.79-0.96) with the total DNA and

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exoDNA, respectively (Fig. S1).

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Measured IS6110 copy numbers of exoDNA using ddPCR were correlated with those

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of total DNA (p<0.01, r=0.827, Spearman correlation) (Fig. 1A). The Bland-Altman analysis

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of ddPCR results using total DNA and exoDNA showed the mean difference of 0.2 ± 0.94

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log10 with 95% Limits of Agreement (LoA) ranging from -1.7 to 2.0 in TB culture-positive

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samples. (Fig.1B). Notably, in low concentration samples (< 100 positive droplets in

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exoDNA) with positive culture results, assays with exoDNA showed improved sensitivity

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over assays with total DNA (Table 4, Fig. S2). The Bland-Altman analysis indicated that the

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difference of measured TB copies between exoDNA and total DNA was 0.45 ± 0.91 log10 10

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(LoA: -1.3 to 2.2), and TB copies were 79% higher on average in exoDNA than in total DNA

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(Fig. S2). And, the detection rates of ddPCR with total DNA, real-time PCR with exoDNA,

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real-time PCR with total DNA were 53.3%, 46.7%, and 26.7% of cases, respectively,

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compared with ddPCR with exoDNA (Table 4).

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Discussion

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The ddPCR assay using exoDNA had higher sensitivity than ddPCR using total DNA

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in our study. Therefore, exosomes may serve as a feasible target for detection of pathogen-

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derived nucleic acid. To our knowledge, this is the first study reporting detection of MTB

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DNA from exosomes using clinical specimens isolated from TB patients. The detection rate

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in low concentration samples was significantly higher when using exoDNA than total DNA

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in PCR-based assays (Table 4). The results could be explained by stability and abundance of

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exoDNA in clinical samples. The stability is accomplished by the lipid bilayers which protect

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exosomal nucleic acids from the extracellular environment [13]. The number of exosome

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reported by the previous study is approximately 1.15 × 1010 in 10 million Tb infected cells,

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which cultured for three days [14].

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In this study, three culture negative specimens showed positive results with ddPCR

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using exoDNA. These cases were confirmed pulmonary tuberculosis based on radiologic

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findings and/or real-time PCR, and treated with anti-TB medication. Although mycobacterial

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culture has long been the conventional gold standard test for TB diagnosis, culture results can

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be negative in mild TB infection [15], latent TB infection and early sub-clinical disease [16].

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In addition, the decontamination procedure of sputum prior to culture dilutes the sample and 11

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leads to the loss of viability [17]. Because identification of these groups is important for

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infection control, ddPCR could provide fast and more accurate results.

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In this study, the false negative results both in ddPCR and real-time PCR might have

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been due to IS6110 copy number variation [18]. Factors that affect NAAT sensitivity include

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the quality of sputum [19] and clinician bias with regard to diagnostic approaches.

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There are several limitations in this study that could be addressed in future studies.

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First, we have the potential to study fluctuation in exosome concentration of TB infection.

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The biogenesis and release of exosomes are affected by various activating signals and cellular

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stress that reflect changes in the environmental conditions [20]. Previous study has suggested

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that infection induces exosome secretion and that this is correlated with bacterial burden [14].

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However, the mechanisms regulating exosome release have not been well elucidated to date.

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Further investigation is required to determine controlling factors. Second, the pre-analytical

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phase is an important step with impact on results downstream. In clinical settings, most

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requested samples are analyzed by the batch as in this study. So, samples are usually frozen

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and stored until analysis. Exosomes in plasma, urine, and saliva seem stable during a freeze-

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thaw cycle and storage [21]. However, an optimal protocol is needed specific to the type of

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specimens and the downstream analysis. Third, altering the isolation methods of exosome

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from specimen may improve the sensitivity of this assay. Here we used commercial kits

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showing higher extraction efficiency than ultracentrifugation [22] and better performance

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than ddPCR using total DNA. Laboratory clinicians and researchers should be aware of the

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advantages and disadvantages of each method and compare and validate before clinical

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application of exoDNA. In addition, the results of the current study were obtained from a

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small sample size. Thus, further studies with larger sample size in multicenter settings are 12

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required to validate these results.

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The ddPCR using exoDNA could be helpful in clinical conditions where the bacterial

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load in the specimen is low such as in certain patients with extrapulmonary TB [23],

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children [24], and patients with HIV-infection [25]. The increased sensitivity of ddPCR is

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applicable in other areas, such as a method of detection of small numbers of drug resistant TB

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or in determining the therapeutic effect of the treatment of TB. Serum or urine derived

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exosomes have recently emerged as non-invasive diagnostic and prognostic biomarkers in

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cancer [26]. These biological fluids could be alternative specimens for NAAT. This

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supposition requires future verification with minimally invasive samples.

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This is the first study reporting detection of MTB DNA from exosomes using clinical

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specimens isolated from TB patients in combination with ddPCR assay to date. In conclusion,

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ddPCR with exoDNA has the potential to provide a highly sensitive and accurate method for

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diagnosis of MTB infection.

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Acknowledgements

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We thank the dedicated physicians at each hospital where this multicenter study was

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conducted (YS Sim and J Lee from Hallym University Kangnam Sacred Heart Hospital, EK

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Kim and M Kim from CHA Bundang Medical Center, and HJ Park and KH Lee from Yonsei

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University Gangnam Severance Hospital). This study was supported by a grant of the

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National Research Foundation of Korea (NRF-2019R1C1C1010916).

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Transparency declaration

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All authors report no competing interests or patents.

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prognostic biomarkers. Int J Biol Sci 2019;15:1.

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Table 1. The demographic data for 190 subjects Pulmonary tuberculosis

Other diagnosis

(n=44)

(n=146)

Male

21 (47.7)

84 (57.5)

Female

23 (52.3)

62 (42.5)

60 (53-75)

68 (54-79)

7 (15.9)

25 (17.1)

Sputum

32 (72.7)

119 (81.5)

Bronchial washing

7 (15.9)

24 (16.4)

BAL

5 (11.4)

3 (2.1)

Characteristics

Sex (%)

Age, median (IQR) Previous tuberculosis history (%) Referred respiratory specimens (%)

IQR, interquartile range; BAL, bronchoalveolar lavage

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Table 2. Analytical performance of assays for detection of Mycobacterium tuberculosis depending on culture results Samples

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Assays

Culture positive Culture negative Sensitivity (95% CI) Specificity (95% CI) PCR + PCR - PCR + PCR qPCR with total DNA 18 21 3 148 46.2% (30.1%-62.8%) 98.0% (94.3%-99.6%) qPCR with exoDNA 21 18 3 148 53.9% (37.2%-69.9%) 98.0% (94.3%-99.6%) All ddPCR with total DNA 24 15 3 148 61.5% (44.6%-76.6%) 98.0% (94.3%-99.6%) ddPCR with exoDNA 30 9 3 148 76.9% (60.7%-88.9%) 98.0% (94.3%-99.6%) qPCR with total DNA 12 2 1 2 85.7% (57.2%-98.2%) 66.7% (9.4%-99.2%) Smear qPCR with exoDNA 13 1 1 2 92.9% (66.1%-99.8%) 66.7% (9.4%-99.2%) positive ddPCR with total DNA 13 1 1 2 92.9% (66.1%-99.8%) 66.7% (9.4%-99.2%) (n=17) ddPCR with exoDNA 14 0 1 2 100% (76.8%-100.0%) 66.7% (9.4%-99.2%) qPCR with total DNA 6 19 2 146 24.0% (9.4%-45.1%) 98.7% (95.3%-99.8%) Smear qPCR with exoDNA 8 17 2 146 32.0% (15.0%-53.5%) 98.7% (95.3%-99.8%) negative ddPCR with total DNA 11 14 2 146 44.0% (24.4%-65.1%) 98.7% (95.3%-99.8%) (n=173) ddPCR with exoDNA 16 9 2 146 64.0% (42.5%-82.0%) 98.7% (95.3%-99.8%) +, positive; -, negative; CI, confidence intervals; qPCR, real-time PCR; ddPCR, droplet digital PCR; exoDNA, exosomal DNA

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Table 3. Clinical performance of assays for detection of Mycobacterium tuberculosis depending on confirmed diagnosis Method AFB smear qPCR with total DNA qPCR with exoDNA ddPCR with total DNA ddPCR with exoDNA

Results Pos Neg Pos Neg Pos Neg Pos Neg Pos

PTB (n=44) 15 29 21 23 24 20 27 17 33

Non-TB (n=146) 2 144 0 146 0 146 0 146 0

Neg

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146

Sensitivity (95% CI)

Specificity (95% CI)

34.1% (20.5%-49.9%) 98.6% (95.1%-99.8%)

Accuracy (95% CI) 83.7% (77.7%-88.6%)

47.7% (32.5%-63.3%) 100% (97.5%-100.0%) 87.9% (82.4%-92.2%) 54.6% (38.9%-69.6%) 100% (97.5%-100.0%) 89.5% (84.2%-93.5%) 61.4% (45.5%-75.6%) 100% (97.5%-100.0%) 91.1% (86.1%-94.7%) 75.0% (59.7%-86.8%) 100% (97.5%-100.0%) 94.2% (89.9%-97.1%)

5

Pos 39 0 88.6% (75.4%-96.2%) 100% (97.5%-100.0%) 97.4% (94.0%-99.1%) Neg 5 146 PTB, pulmonary tuberculosis; Non-TB, patients diagnosed other than tuberculosis; Pos, positive; Neg, negative; CI, confidence intervals;

6

qPCR, real-time PCR; ddPCR, droplet digital PCR; exoDNA, exosomal DNA.

Culture

7

8

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Table 4. Results of both ddPCR and real-time PCR results using two sources of DNA in low concentration samples ddPCR with qPCR with Mycobacterial exoDNA total DNA culture (No. of positive (No. of positive exoDNA total DNA droplets) droplets) Pos (2) Neg (1) Neg Neg MTB Pos (3) Neg (1) Neg Neg MTB Pos (3) Pos (9) Neg Neg MTB Pos (4) Pos (24) Neg Pos MTB Pos (4) Pos (2) Neg Neg MTB Pos (4) Neg (0) Neg Neg MTB Pos (7) Pos (2) Neg Neg MTB Pos (8) Neg (1) Neg Neg MTB Pos (15) Neg (1) Pos Neg MTB Pos (20) Neg (0) Pos Neg MTB Pos (52) Neg (0) Pos Neg MTB Pos (69) Pos (6) Pos Pos MTB Pos (93) Pos (143) Pos Pos MTB Pos (94) Pos (817) Pos Pos MTB Pos (99) Pos (7) Pos Neg MTB Positive rate (%) 53.3 46.7 26.7 100 Pos, positive; Neg, negative; qPCR, real-time PCR; ddPCR, droplet digital PCR; exoDNA, exosomal DNA. 10

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