自身免疫
自身抗体
β细胞
免疫系统
小岛
免疫学
糖尿病
胰岛
电池类型
1型糖尿病
疾病
细胞
医学
生物
内分泌学
内科学
遗传学
抗体
作者
Abhijeet R. Patil,Jonathan Schug,Chengyang Liu,Deeksha Lahori,Hélène C. Descamps,Ali Naji,Klaus H. Kaestner,Robert B. Faryabi,Golnaz Vahedi
标识
DOI:10.1016/j.xcrm.2024.101535
摘要
Type 1 diabetes (T1D) is a chronic condition in which beta cells are destroyed by immune cells. Despite progress in immunotherapies that could delay T1D onset, early detection of autoimmunity remains challenging. Here, we evaluate the utility of machine learning for early prediction of T1D using single-cell analysis of islets. Using gradient-boosting algorithms, we model changes in gene expression of single cells from pancreatic tissues in T1D and non-diabetic organ donors. We assess if mathematical modeling could predict the likelihood of T1D development in non-diabetic autoantibody-positive donors. While most autoantibody-positive donors are predicted to be non-diabetic, select donors with unique gene signatures are classified as T1D. Our strategy also reveals a shared gene signature in distinct T1D-associated models across cell types, suggesting a common effect of the disease on transcriptional outputs of these cells. Our study establishes a precedent for using machine learning in early detection of T1D.
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