Integration of Computational Docking into Anti-Cancer Drug Response Prediction Models.
Oleksandr NarykovYitan ZhuThomas BrettinYvonne A EvrardAlexander PartinMaulik ShuklaFangfang XiaAustin ClydePriyanka VasanthakumariJames H DoroshowRick L StevensPublished in: Cancers (2023)
Cancer is a heterogeneous disease in that tumors of the same histology type can respond differently to a treatment. Anti-cancer drug response prediction is of paramount importance for both drug development and patient treatment design. Although various computational methods and data have been used to develop drug response prediction models, it remains a challenging problem due to the complexities of cancer mechanisms and cancer-drug interactions. To better characterize the interaction between cancer and drugs, we investigate the feasibility of integrating computationally derived features of molecular mechanisms of action into prediction models. Specifically, we add docking scores of drug molecules and target proteins in combination with cancer gene expressions and molecular drug descriptors for building response models. The results demonstrate a marginal improvement in drug response prediction performance when adding docking scores as additional features, through tests on large drug screening data. We discuss the limitations of the current approach and provide the research community with a baseline dataset of the large-scale computational docking for anti-cancer drugs.
Keyphrases
- papillary thyroid
- squamous cell
- molecular dynamics
- adverse drug
- molecular dynamics simulations
- drug induced
- healthcare
- emergency department
- squamous cell carcinoma
- mental health
- machine learning
- gene expression
- electronic health record
- childhood cancer
- transcription factor
- replacement therapy
- copy number
- single molecule