PANCDR: precise medicine prediction using an adversarial network for cancer drug response

Author:

Kim Juyeon1,Park Sung-Hye23,Lee Hyunju14ORCID

Affiliation:

1. School of Electrical Engineering and Computer Science, Gwangju Institute of Science and Technology , 61005, Gwangju , South Korea

2. Department of Pathology, Seoul National University Hospital, Seoul National University College of Medicine , 03080, Seoul , South Korea

3. Neuroscience Research Institute, Seoul National University College of Medicine , 03080, Seoul , South Korea

4. Artificial Intelligence Graduate School, Gwangju Institute of Science and Technology , 61005, Gwangju , South Korea

Abstract

Abstract Pharmacogenomics aims to provide personalized therapy to patients based on their genetic variability. However, accurate prediction of cancer drug response (CDR) is challenging due to genetic heterogeneity. Since clinical data are limited, most studies predicting drug response use preclinical data to train models. However, such models might not be generalizable to external clinical data due to differences between the preclinical and clinical datasets. In this study, a Precision Medicine Prediction using an Adversarial Network for Cancer Drug Response (PANCDR) model is proposed. PANCDR consists of two sub-models, an adversarial model and a CDR prediction model. The adversarial model reduces the gap between the preclinical and clinical datasets, while the CDR prediction model extracts features and predicts responses. PANCDR was trained using both preclinical data and unlabeled clinical data. Subsequently, it was tested on external clinical data, including The Cancer Genome Atlas and brain tumor patients. PANCDR outperformed other machine learning models in predicting external test data. Our results demonstrate the robustness of PANCDR and its potential in precision medicine by recommending patient-specific drug candidates. The PANCDR codes and data are available at https://github.com/DMCB-GIST/PANCDR.

Funder

Institute of Information & Communications Technology Planning & Evaluation

MSIT

Development of Intelligent SW Systems for Uncovering Genetic Variation and Developing Personalized Medicine for Cancer Patients with Unknown Molecular Genetic Mechanisms

Artificial Intelligence Graduate School Program

Human Biobank of Seoul National University Hospital

Korea Biobank Network

Seoul National University Hospital Cancer Tissue Bank

Publisher

Oxford University Press (OUP)

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