Predicting the sensitivity of tumors to specific anti-cancer treatments is a challenge of paramount importance for precision medicine. Machine learning(ML) algorithms can be trained on high-throughput screening data to develop models that are able to predict the response of cancer cell lines and patients to novel drugs or drug combinations. Deep learning (DL) refers to a distinct class of ML algorithms that have achieved top-level performance in a variety of fields, including drug discovery. These types of models have unique characteristics that may make them more suitable for the complex task of modeling drug response based on both biological and chemical data, but the application of DL to drug response prediction has been unexplored until...
A major challenge in cancer treatment is predicting clinical response to anti-cancer drugs on a pers...
Motivation: Chemotherapy or targeted therapy are two of the main treatment options for many types of...
This repository contains preprocessed data files and trained model files associated with the manuscr...
Abstract Drug response prediction is important to establish personalized medicine for cancer therapy...
Abstract Background The study of high-throughput genomic profiles from a pharmacogenomics viewpoint ...
In-depth modeling of the complex interplay among multiple omics data measured from cancer cell lines...
Abstract Background The National Cancer Institute drug pair screening effort against 60 well-charact...
Various methods have been developed to build models for predicting drug response in cancer treatment...
Most drugs entering clinical trials fail, often related to an incomplete understanding of the mechan...
In the era of precision medicine, cancer therapy can be tailored to an individual patient based on t...
Cancers are genetically heterogeneous, and therefore the same anti-cancer drug may have varying degr...
Motivation: Accurate and robust drug response prediction is of utmost importance in the realm of pre...
The prediction of the cancer cell lines sensitivity to a specific treatment is one of the current ch...
A major challenge in cancer treatment is predicting clinical response to anti-cancer drugs on a pers...
Motivation: Chemotherapy or targeted therapy are two of the main treatment options for many types of...
This repository contains preprocessed data files and trained model files associated with the manuscr...
Abstract Drug response prediction is important to establish personalized medicine for cancer therapy...
Abstract Background The study of high-throughput genomic profiles from a pharmacogenomics viewpoint ...
In-depth modeling of the complex interplay among multiple omics data measured from cancer cell lines...
Abstract Background The National Cancer Institute drug pair screening effort against 60 well-charact...
Various methods have been developed to build models for predicting drug response in cancer treatment...
Most drugs entering clinical trials fail, often related to an incomplete understanding of the mechan...
In the era of precision medicine, cancer therapy can be tailored to an individual patient based on t...
Cancers are genetically heterogeneous, and therefore the same anti-cancer drug may have varying degr...
Motivation: Accurate and robust drug response prediction is of utmost importance in the realm of pre...
The prediction of the cancer cell lines sensitivity to a specific treatment is one of the current ch...
A major challenge in cancer treatment is predicting clinical response to anti-cancer drugs on a pers...
Motivation: Chemotherapy or targeted therapy are two of the main treatment options for many types of...
This repository contains preprocessed data files and trained model files associated with the manuscr...