Background: A significant problem in precision medicine is the prediction of drug sensitivity for individual cancer cell lines. Predictive models such as Random Forests have shown promising performance while predicting from individual genomic features such as gene expressions. However, accessibility of various other forms of data types including information on multiple tested drugs necessitates the examination of designing predictive models incorporating the various data types. Results: We explore the predictive performance of model stacking and the effect of stacking on the predictive bias and squarred error. In addition we discuss the analytical underpinnings supporting the advantages of stacking in reducing squared error and inherent bia...
Predicting the best treatment strategy from genomic information is a core goal of precision medicine...
Samples collected in pharmacogenomics databases typically belong to various cancer types. For design...
Changes in performance with prior feature selection Random forest (RF) is designed to create uncorre...
Abstract Background A significant problem in precision medicine is the prediction of drug sensitivit...
International audienceBackground: Selected gene mutations are routinely used to guide the selection ...
Modeling sensitivity to drugs based on genetic characterizations is a significant challenge in the a...
Computational drug sensitivity models have the potential to improve therapeutic outcomes by identify...
Machine learning methods trained on cancer cell line panels are intensively studied for the predicti...
Predicting the best treatment strategy from genomic information is a core goal of precision medicine...
Background: Selected gene mutations are routinely used to guide the selection of cancer drugs for a ...
Background: Selected gene mutations are routinely used to guide the selection of cancer drugs for a ...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
Background: In precision medicine, scarcity of suitable biological data often hinders the design of ...
We consider the problem of predicting sensitivity of cancer cell lines to new drugs based on supervi...
Predicting the best treatment strategy from genomic information is a core goal of precision medicine...
Samples collected in pharmacogenomics databases typically belong to various cancer types. For design...
Changes in performance with prior feature selection Random forest (RF) is designed to create uncorre...
Abstract Background A significant problem in precision medicine is the prediction of drug sensitivit...
International audienceBackground: Selected gene mutations are routinely used to guide the selection ...
Modeling sensitivity to drugs based on genetic characterizations is a significant challenge in the a...
Computational drug sensitivity models have the potential to improve therapeutic outcomes by identify...
Machine learning methods trained on cancer cell line panels are intensively studied for the predicti...
Predicting the best treatment strategy from genomic information is a core goal of precision medicine...
Background: Selected gene mutations are routinely used to guide the selection of cancer drugs for a ...
Background: Selected gene mutations are routinely used to guide the selection of cancer drugs for a ...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
Model-based prediction is dependent on many choices ranging from the sample collection and predictio...
Background: In precision medicine, scarcity of suitable biological data often hinders the design of ...
We consider the problem of predicting sensitivity of cancer cell lines to new drugs based on supervi...
Predicting the best treatment strategy from genomic information is a core goal of precision medicine...
Samples collected in pharmacogenomics databases typically belong to various cancer types. For design...
Changes in performance with prior feature selection Random forest (RF) is designed to create uncorre...