Personal transcriptome variation is poorly explained by current genomic deep learning models
Connie Huang(University of California, Berkeley), Nilah M. Ioannidis(University of California, Berkeley), Pooja Kathail(University of California, Berkeley), Richard W. Shuai(Stanford University), Parth Baokar(University of California, Berkeley), Ruchir Rastogi(University of California, Berkeley), Ryan Chung(University of California, Berkeley)
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