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AITL: Adversarial Inductive Transfer Learning with Input and Output Space Adaptation for Pharmacogenomics - 2020

Aitl: Adversarial Inductive Transfer Learning With Input And Output Space Adaptation For Pharmacogenomics

Research Area:  Machine Learning

Abstract:

The goal of pharmacogenomics is to predict drug response in patients using their single- or multi-omics data. A major challenge is that clinical data (i.e. patients) with drug response outcome is very limited, creating a need for transfer learning to bridge the gap between large pre-clinical pharmacogenomics datasets (e.g. cancer cell lines), as a source domain, and clinical datasets as a target domain. Two major discrepancies exist between pre-clinical and clinical datasets: (i) in the input space, the gene expression data due to difference in the basic biology, and (ii) in the output space, the different measures of the drug response. Therefore, training a computational model on cell lines and testing it on patients violates the i.i.d assumption that train and test data are from the same distribution.We propose Adversarial Inductive Transfer Learning (AITL), a deep neural network method for addressing discrepancies in input and output space between the pre-clinical and clinical datasets. AITL takes gene expression of patients and cell lines as the input, employs adversarial domain adaptation and multi-task learning to address these discrepancies, and predicts the drug response as the output. To the best of our knowledge, AITL is the first adversarial inductive transfer learning method to address both input and output discrepancies. Experimental results indicate that AITL outperforms state-of-the-art pharmacogenomics and transfer learning baselines and may guide precision oncology more accurately.

Keywords:  

Author(s) Name:  Hossein Sharifi-Noghabi, Shuman Peng, Olga Zolotareva, Colin C Collins, Martin Ester

Journal name:  Bioinformatics

Conferrence name:  

Publisher name:  Oxford University Press

DOI:  10.1093/bioinformatics/btaa442

Volume Information:  Volume 36, Issue Supplement_1, July 2020, Pages i380–i388