MCMVDRP: a multi-channel multi-view deep learning framework for cancer drug response prediction

Author:

Li Xiangyu1,Shi Xiumin1ORCID,Li Yuxuan1,Wang Lu2ORCID

Affiliation:

1. School of Information and Electronics , 47833 Beijing Institute of Technology , Beijing , China

2. Department of Critical Care Medicine , Renmin Hospital of Wuhan University , Wuhan , Hubei , China

Abstract

Abstract Drug therapy remains the primary approach to treating tumours. Variability among cancer patients, including variations in genomic profiles, often results in divergent therapeutic responses to analogous anti-cancer drug treatments within the same cohort of cancer patients. Hence, predicting the drug response by analysing the genomic profile characteristics of individual patients holds significant research importance. With the notable progress in machine learning and deep learning, many effective methods have emerged for predicting drug responses utilizing features from both drugs and cell lines. However, these methods are inadequate in capturing a sufficient number of features inherent to drugs. Consequently, we propose a representational approach for drugs that incorporates three distinct types of features: the molecular graph, the SMILE strings, and the molecular fingerprints. In this study, a novel deep learning model, named MCMVDRP, is introduced for the prediction of cancer drug responses. In our proposed model, an amalgamation of these extracted features is performed, followed by the utilization of fully connected layers to predict the drug response based on the IC50 values. Experimental results demonstrate that the presented model outperforms current state-of-the-art models in performance.

Funder

This research was partially supported by the Beijing Institute of Technology Innovation and Entrepreneurship Training Program

Publisher

Walter de Gruyter GmbH

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