计算机科学
基因调控网络
变压器
Boosting(机器学习)
转录组
人工智能
数据挖掘
机器学习
计算生物学
基因
基因表达
生物
工程类
遗传学
电气工程
电压
作者
Hantao Shu,Fan Ding,Jingtian Zhou,Yexiang Xue,Dan Zhao,Jianyang Zeng,Jianzhu Ma
摘要
Computational recovery of gene regulatory network (GRN) has recently undergone a great shift from bulk-cell towards designing algorithms targeting single-cell data. In this work, we investigate whether the widely available bulk-cell data could be leveraged to assist the GRN predictions for single cells. We infer cell-type-specific GRNs from both the single-cell RNA sequencing data and the generic GRN derived from the bulk cells by constructing a weakly supervised learning framework based on the axial transformer. We verify our assumption that the bulk-cell transcriptomic data are a valuable resource, which could improve the prediction of single-cell GRN by conducting extensive experiments. Our GRN-transformer achieves the state-of-the-art prediction accuracy in comparison to existing supervised and unsupervised approaches. In addition, we show that our method can identify important transcription factors and potential regulations for Alzheimer's disease risk genes by using the predicted GRN. Availability: The implementation of GRN-transformer is available at https://github.com/HantaoShu/GRN-Transformer.
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