Data-lndependent Acquisition-Based Quantitative Proteomic Analysis Reveals Potential Salivary Biomarkers of Primary Sjogren's Syndrome

Q2 Medicine
Yi-Chao Tian , Chun-Lan Guo , Zhen Li , Xin You , Xiao-Yan Liu , Jin-Mei Su , Si-Jia Zhao , Yue Mu , Wei Sun , Qian Li
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引用次数: 0

Abstract

Objective

As primary Sjogren's syndrome (pSS) primarily affects the salivary glands, saliva can serve as an indicator of the glands’ pathophysiology and the disease's status. This study aims to illustrate the salivary proteomic profiles of pSS patients and identify potential candidate biomarkers for diagnosis.

Methods

The discovery set contained 49 samples (24 from pSS and 25 from age- and gender-matched healthy controls [HCs]) and the validation set included 25 samples (12 from pSS and 13 from HCs). Totally 36 pSS patients and 38 HCs were centrally randomized into the discovery set or to the validation set at a 2:1 ratio. Unstimulated whole saliva samples from pSS patients and HCs were analyzed using a data-independent acquisition (DIA) strategy on a 2D LC–HRMS/MS platform to reveal differential proteins. The crucial proteins were verified using DIA analysis and annotated using gene ontology (GO) and International Pharmaceutical Abstracts (IPA) analysis. A prediction model for SS was established using random forests.

Results

A total of 1,963 proteins were discovered, and 136 proteins exhibited differential representation in pSS patients. The bioinformatic research indicated that these proteins were primarily linked to immunological functions, metabolism, and inflammation. A panel of 19 protein biomarkers was identified by ranking order based on P-value and random forest algorichm, and was validated as the predictive biomarkers exhibiting good performance with area under the curve (AUC) of 0.817 for discovery set and 0.882 for validation set.

Conclusions

The candidate protein panel discovered may aid in pSS diagnosis. Salivary proteomic analysis is a promising non-invasive method for prognostic evaluation and early and precise treatments for pSS patients. DIA offers the best time efficiency and data dependability and may be a suitable option for future research on the salivary proteome.

基于数据采集的定量蛋白质组分析揭示了原发性 Sjogren's 综合征的潜在唾液生物标志物
目的 由于原发性斯约格伦综合征(pSS)主要影响唾液腺,唾液可作为唾液腺病理生理学和疾病状态的指标。本研究旨在说明 pSS 患者的唾液蛋白质组图谱,并确定潜在的候选诊断生物标志物。方法发现集包括 49 个样本(24 个来自 pSS,25 个来自年龄和性别匹配的健康对照组 [HCs]),验证集包括 25 个样本(12 个来自 pSS,13 个来自 HCs)。共有 36 名 pSS 患者和 38 名 HC 按 2:1 的比例被集中随机分配到发现集或验证集。在二维LC-HRMS/MS平台上采用数据无关采集(DIA)策略分析了pSS患者和HC患者未刺激的全唾液样本,以揭示差异蛋白质。利用 DIA 分析验证了关键蛋白,并利用基因本体(GO)和国际药学文摘(IPA)分析进行了注释。结果共发现了 1,963 个蛋白质,其中 136 个蛋白质在 pSS 患者中表现出不同的代表性。生物信息学研究表明,这些蛋白质主要与免疫功能、新陈代谢和炎症有关。通过基于 P 值和随机森林算法的排序确定了 19 个蛋白质生物标志物,并验证了这些蛋白质作为预测性生物标志物的性能,发现集的曲线下面积(AUC)为 0.817,验证集的曲线下面积(AUC)为 0.882。唾液蛋白质组分析是一种很有前途的非侵入性方法,可用于 pSS 患者的预后评估和早期精确治疗。DIA具有最佳的时间效率和数据可靠性,可能是未来唾液蛋白质组研究的合适选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chinese Medical Sciences Journal
Chinese Medical Sciences Journal Medicine-Medicine (all)
CiteScore
2.40
自引率
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发文量
1275
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