转录组
肺
肾
移植
病态的
医学
器官移植
生物信息学
生物
病理
内科学
基因
基因表达
遗传学
作者
Harry Robertson,Hani Jieun Kim,Jennifer Li,Nicholas Robertson,Paul Robertson,Elvira Jimenez‐Vera,Farhan Ameen,Andy Tran,Katie Trinh,Philip J. O’Connell,Jean Yang,Natasha M. Rogers,Ellis Patrick
标识
DOI:10.1038/s41591-024-03030-6
摘要
Abstract The pathogenesis of allograft (dys)function has been increasingly studied using ‘omics’-based technologies, but the focus on individual organs has created knowledge gaps that neither unify nor distinguish pathological mechanisms across allografts. Here we present a comprehensive study of human pan-organ allograft dysfunction, analyzing 150 datasets with more than 12,000 samples across four commonly transplanted solid organs (heart, lung, liver and kidney, n = 1,160, 1,241, 1,216 and 8,853 samples, respectively) that we leveraged to explore transcriptomic differences among allograft dysfunction (delayed graft function, acute rejection and fibrosis), tolerance and stable graft function. We identified genes that correlated robustly with allograft dysfunction across heart, lung, liver and kidney transplantation. Furthermore, we developed a transfer learning omics prediction framework that, by borrowing information across organs, demonstrated superior classifications compared to models trained on single organs. These findings were validated using a single-center prospective kidney transplant cohort study (a collective 329 samples across two timepoints), providing insights supporting the potential clinical utility of our approach. Our study establishes the capacity for machine learning models to learn across organs and presents a transcriptomic transplant resource that can be employed to develop pan-organ biomarkers of allograft dysfunction.
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