Benchmarking of deep neural networks for predicting personal gene expression from DNA sequence highlights shortcomings
Alexander Sasse(University of Washington), Sara Mostafavi(University of New Brunswick), Anna Spiro(University of Washington), Maria Chikina(University of Pittsburgh), Philip L. De Jager(Broad Institute), Bernard Ng(Rush University Medical Center), Shinya Tasaki(The University of Tokyo), Chris Gaiteri(Rush University Medical Center), David A. Bennett(Rush University Medical Center)
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