4.7 Article

RAMP: response-aware multi-task learning with contrastive regularization for cancer drug response prediction

Journal

BRIEFINGS IN BIOINFORMATICS
Volume -, Issue -, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbac504

Keywords

multiomics; network embedding; multitask learning; contrastive learning; Bayesian neural network

Funding

  1. National Research Foundation of Korea (NRF) - Ministry of Science and ICT (MSIT) [NRF-2016M3C4A7952635]
  2. NRF - Ministry of Education [NRF-2018R1A6A1A03025810, NRF-2021R1A6A1A13044830]
  3. NRF - MSIT [NRF-2019M3E5D2A01063819, NRF-2020M3A9B6038849]
  4. ICT Creative Consilience Program supervised by the Institute of Information amp
  5. Communications Technology Planning & Evaluation (IITP) [IITP-2022-2020-0-01819]
  6. IITP - MSIT [2020-0-01373]
  7. Korea Health Industry Development Institute [HI18C0316]
  8. Korea University

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This study proposes a novel multidrug response prediction framework, RAMP, which overcomes the prediction accuracy limitation induced by the imbalance of trained response data and predicts many missing drug responses. RAMP proves to be suitable for high-throughput prediction of cancer drug sensitivity and useful for guiding drug selection processes.
The accurate prediction of cancer drug sensitivity according to the multiomics profiles of individual patients is crucial for precision cancer medicine. However, the development of prediction models has been challenged by the complex crosstalk of input features and the resistance-dominant drug response information contained in public databases. In this study, we propose a novel multidrug response prediction framework, response-aware multitask prediction (RAMP), via a Bayesian neural network and restrict it by soft-supervised contrastive regularization. To utilize network embedding vectors as representation learning features for heterogeneous networks, we harness response-aware negative sampling, which applies cell line-drug response information to the training of network embeddings. RAMP overcomes the prediction accuracy limitation induced by the imbalance of trained response data based on the comprehensive selection and utilization of drug response features. When trained on the Genomics of Drug Sensitivity in Cancer dataset, RAMP achieved an area under the receiver operating characteristic curve > 89%, an area under the precision-recall curve > 59% and an F-1 score > 52% and outperformed previously developed methods on both balanced and imbalanced datasets. Furthermore, RAMP predicted many missing drug responses that were not included in the public databases. Our results showed that RAMP will be suitable for the high-throughput prediction of cancer drug sensitivity and will be useful for guiding cancer drug selection processes. The Python implementation for RAMP is available at https://github.com/hvcl/RAMP.

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