Circulating Proteomic Panels for Noninvasive Diagnosis and Prognostication of Thromboangiitis Obliterans.

IF 3.6 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
Gang Fang, Yuan Fang, Lutong Yan, Bichen Ren, Jingyang Luan, Ziang Zuo, Lingwei Zou, Yuning Wang, Shiyang Gu, Tianyue Pan, Hao Liu, Xiaolang Jiang, Yige Lu, Lu Yu, Chenke Ding, Zheng Wei, Peng Liu, Weiguo Fu, Zhihui Dong
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Abstract

Thromboangiitis obliterans (TAO) is often diagnosed late and characterized by high amputation rates. TAO-specific early diagnostic and disease-staging biomarkers are urgently needed. A staged mass spectrometry (MS)-based discovery-verification-validation workflow was utilized in this study. Ten healthy controls (HCs) and 20 TAOs were included for data-independent acquisition (DIA)-MS quantitative proteomic analysis for the discovery cohort. The DIA-MS analysis acquired 842 identified proteins and 470 quantifiable proteins. Twenty-three candidate biomarkers were further quantified using targeted proteomics based on parallel monitoring reaction (PRM) analysis in the verification stage. A 9-protein and a 7-protein serum biomarker panels were built by machine learning to accurately distinguish TAOs from HCs and active TAOs (A-TAOs) from inactive TAOs. A combined prognostic panel consisting of serum proteins and clinical indicators was established, allowing for risk stratification of A-TAOs. During the validation stage, an independent prospective validation cohort was recruited to validate the proteomic panels based on the enzyme-linked immunosorbent assay analysis, demonstrating the stability and robustness of the predictive models. This study presented the serum proteomic landscape of a TAO cohort and provided novel insights into further biological research. Meanwhile, serum protein signatures have a great potential to improve the early diagnosis and risk stratification in TAOs.

循环蛋白质组学检测对血栓闭塞性脉管炎的无创诊断和预后。
血栓闭塞性脉管炎(TAO)通常诊断较晚,其特点是截肢率高。目前迫切需要特异性的tao早期诊断和疾病分期生物标志物。本研究采用了基于阶段质谱(MS)的发现-验证-验证工作流程。纳入10名健康对照(hc)和20名TAOs,进行数据独立获取(DIA)-MS定量蛋白质组学分析。DIA-MS分析获得842个鉴定蛋白和470个可量化蛋白。在验证阶段,利用基于平行监测反应(PRM)分析的靶向蛋白质组学进一步量化了23个候选生物标志物。通过机器学习建立了9蛋白和7蛋白血清生物标志物面板,以准确区分TAOs与hc和活性TAOs (A-TAOs)与非活性TAOs。建立了一个由血清蛋白和临床指标组成的联合预后小组,允许对A- taos进行风险分层。在验证阶段,招募了一个独立的前瞻性验证队列来验证基于酶联免疫吸附分析的蛋白质组学面板,证明了预测模型的稳定性和稳健性。这项研究展示了TAO队列的血清蛋白质组学景观,并为进一步的生物学研究提供了新的见解。同时,血清蛋白特征在TAOs的早期诊断和风险分层方面具有很大的潜力。
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来源期刊
Journal of Proteome Research
Journal of Proteome Research 生物-生化研究方法
CiteScore
9.00
自引率
4.50%
发文量
251
审稿时长
3 months
期刊介绍: Journal of Proteome Research publishes content encompassing all aspects of global protein analysis and function, including the dynamic aspects of genomics, spatio-temporal proteomics, metabonomics and metabolomics, clinical and agricultural proteomics, as well as advances in methodology including bioinformatics. The theme and emphasis is on a multidisciplinary approach to the life sciences through the synergy between the different types of "omics".
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