Publication: A multitask multiple kernel learning algorithm for survival analysis with application to cancer biology
Program
KU-Authors
KU Authors
Co-Authors
Advisor
Publication Date
2019
Language
English
Type
Conference proceeding
Journal Title
Journal ISSN
Volume Title
Abstract
Predictive performance of machine learning algorithms on related problems can be improved using multitask learning approaches. Rather than performing survival analysis on each data set to predict survival times of cancer patients, we developed a novel multitask approach based on multiple kernel learning (MKL). Our multitask MKL algorithm both works on multiple cancer data sets and integrates cancer-related pathways/gene sets into survival analysis. We tested our algorithm, which is named as Path2MSurv, on the Cancer Genome Atlas data sets analyzing gene expression profiles of 7, 655 patients from 20 cancer types together with cancer-specific pathway/gene set collections. Path2MSurv obtained better or comparable predictive performance when bench-marked against random survival forest, survival support vector machine, and single-task variant of our algorithm. Path2MSurv has the ability to identify key pathways/gene sets in predicting survival times of patients from different cancer types.
Description
Source:
36th International Conference on Machine Learning, ICML 2019
Publisher:
International Machine Learning Society (IMLS)
Keywords:
Subject
Computer Science, Artificial intelligence