使用可解释的机器学习确定的局部硬皮病发病机制的独特和共享的转录组特征。

IF 6.3 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Aaron Bi Rosen, Anwesha Sanyal, Theresa Hutchins, Giffin Werner, Jacob S Berkowitz, Tracy Tabib, Robert Lafyatis, Heidi Jacobe, Jishnu Das, Kathryn S Torok
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引用次数: 0

摘要

利用单细胞分辨率的转录组学分析,我们研究了成人和儿童局限性硬皮病(LS)患者中与发病机制和炎症驱动纤维化相关的细胞内在和细胞外在特征。我们对成人和儿童LS患者以及健康对照进行了单细胞rna测序。然后,我们使用可解释因子分析机器学习框架,重要潜在因子相互作用发现和探索(SLIDE)分析单细胞RNA-Seq数据,该框架超越预测性生物标志物,推断LS病理生理的潜在因素。SLIDE是最近开发的一种基于潜在因素回归的框架,它对潜在因素的可识别性、相应的推断和FDR控制具有严格的统计保证。我们发现成人和儿童LS在分子特征和复杂性上存在明显差异。SLIDE发现了与年龄和严重程度相关的LS的细胞类型特异性决定因素,揭示了LS和系统性硬化症(SSc)之间共享的信号机制,以及儿童与成人人群发病的差异。我们的分析总结了LS病理的已知驱动因素,并确定了LS亚型分层的细胞信号模块,并定义了与SSc共享的信号轴。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unique and shared transcriptomic signatures underlying localized scleroderma pathogenesis identified using interpretable machine learning.

Using transcriptomic profiling at single-cell resolution, we investigated cell-intrinsic and cell-extrinsic signatures associated with pathogenesis and inflammation-driven fibrosis in both adult and pediatric patients with localized scleroderma (LS). We performed single-cell RNA-Seq on adult and pediatric patients with LS and healthy controls. We then analyzed the single-cell RNA-Seq data using an interpretable factor analysis machine learning framework, significant latent factor interaction discovery and exploration (SLIDE), which moves beyond predictive biomarkers to infer latent factors underlying LS pathophysiology. SLIDE is a recently developed latent factor regression-based framework that comes with rigorous statistical guarantees regarding identifiability of the latent factors, corresponding inference, and FDR control. We found distinct differences in the characteristics and complexity in the molecular signatures between adult and pediatric LS. SLIDE identified cell type-specific determinants of LS associated with age and severity and revealed insights into signaling mechanisms shared between LS and systemic sclerosis (SSc), as well as differences in onset of the disease in the pediatric compared with adult population. Our analyses recapitulate known drivers of LS pathology and identify cellular signaling modules that stratify LS subtypes and define a shared signaling axis with SSc.

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来源期刊
JCI insight
JCI insight Medicine-General Medicine
CiteScore
13.70
自引率
1.20%
发文量
543
审稿时长
6 weeks
期刊介绍: JCI Insight is a Gold Open Access journal with a 2022 Impact Factor of 8.0. It publishes high-quality studies in various biomedical specialties, such as autoimmunity, gastroenterology, immunology, metabolism, nephrology, neuroscience, oncology, pulmonology, and vascular biology. The journal focuses on clinically relevant basic and translational research that contributes to the understanding of disease biology and treatment. JCI Insight is self-published by the American Society for Clinical Investigation (ASCI), a nonprofit honor organization of physician-scientists founded in 1908, and it helps fulfill the ASCI's mission to advance medical science through the publication of clinically relevant research reports.
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