caopornx在线超碰免费-欧美亚洲性色影视在线-人妻无码AV一区二区三区-欧美日韩国产一区二区三区播放-青青草原精品国产亚洲AV-日本黄A级A片国产免费-亚洲精品一区久久久久久-成人18禁在线WWW免费视频

論文
您當(dāng)前的位置 :
Interpretable deep learning of single-cell and epigenetic data reveals novel molecular insights in aging
論文作者 Li, ZP; Du, ZZ; Huang, DS; Teschendorff, AE
期刊/會議名稱 SCIENTIFIC REPORTS
論文年度 2025
論文類別
摘要 Deep learning (DL) and explainable artificial intelligence (XAI) have emerged as powerful machine-learning tools to identify complex predictive data patterns in a spatial or temporal domain. Here, we consider the application of DL and XAI to large omic datasets, in order to study biological aging at the molecular level. We develop an advanced multi-view graph-level representation learning (MGRL) framework that integrates prior biological network information, to build molecular aging clocks at cell-type resolution, which we subsequently interpret using XAI. We apply this framework to one of the largest single-cell transcriptomic datasets encompassing over a million immune cells from 981 donors, revealing a ribosomal gene subnetwork, whose expression correlates with age independently of cell-type. Application of the same DL-XAI framework to DNA methylation data of sorted monocytes reveals an epigenetically deregulated inflammatory response pathway whose activity increases with age. We show that the ribosomal module and inflammatory pathways would not have been discovered had we used more standard machine-learning methods. In summary, the computational deep learning framework presented here illustrates how deep learning when combined with explainable AI tools, can reveal novel biological insights into the complex process of aging.
15
影響因子 3.9
欧美黄色一区二区三区精品| 激情国产 欧美精品| 91国际精品人人爽| 欧美巨大性爽欧美精品二| 水多多久久久精品| 日韩精品视频射精| 欧美 国产 日韩 精品| 国产精品伊人日日| 久久精品青青操| 成人精品大鸡巴| 欧洲精品毛片网| 熟女久久精品一区二区| 日韩精品一区二区东京热 | 欧美精品黄色电影在线观看 | 9久久精品| 国产精品色婷婷| 亚洲天堂国产精品| 亚洲乱码中文字幕专区| 国产精品剧情一区| 欧美·日韩精品.婷婷美穴| 精品成人一道|