Standard machine learning approaches outperform deep representation learning on phenotype prediction from transcriptomics data.
Aaron M SmithJonathan R WalshJohn LongCraig B DavisPeter HenstockMartin R HodgeMateusz MaciejewskiXinmeng Jasmine MuStephen RaShanrong ZhaoDaniel ZiemekCharles K FisherPublished in: BMC bioinformatics (2020)
Transcriptomics-based phenotype prediction benefits from proper normalization techniques and state-of-the-art regularized regression approaches. In our view, breakthrough performance is likely contingent on factors which are independent of normalization and general modeling techniques; these factors might include reduction of systematic errors in sequencing data, incorporation of other data types such as single-cell sequencing and proteomics, and improved use of prior knowledge.