Deep learning approaches for non-coding genetic variant effect prediction: current progress and future prospects
Xiaoyu Wang(Monash University), Jiangning Song(Australian Regenerative Medicine Institute), Seiya Imoto(The University of Tokyo), Hsin‐Hui Shen(Division of Materials Science and Engineering), Fuyi Li(Australian Regenerative Medicine Institute), Shanshan Li(Wuxi People's Hospital), Yiwen Zhang(Harvard University), Yuming Guo(Chinese Academy of Sciences), Jian Yang(Westlake University)
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