SIGNIFICANCE: A novel machine learning approach predicts the impact of tumor mutations on cellular phenotypes, overcomes limited training data, minimizes costly functional validation, and advances efforts to implement cancer precision medicine.
%0 Journal Article
%1 Blee2022-bs
%A Blee, Alexandra M
%A Li, Bian
%A Pecen, Turner
%A Meiler, Jens
%A Nagel, Zachary D
%A Capra, John A
%A Chazin, Walter J
%D 2022
%J Cancer Res.
%K imported
%N 15
%P 2704--2715
%T An active learning framework improves tumor variant interpretation
%V 82
%X SIGNIFICANCE: A novel machine learning approach predicts the impact of tumor mutations on cellular phenotypes, overcomes limited training data, minimizes costly functional validation, and advances efforts to implement cancer precision medicine.
@article{Blee2022-bs,
abstract = {SIGNIFICANCE: A novel machine learning approach predicts the impact of tumor mutations on cellular phenotypes, overcomes limited training data, minimizes costly functional validation, and advances efforts to implement cancer precision medicine.},
added-at = {2024-10-02T10:38:17.000+0200},
author = {Blee, Alexandra M and Li, Bian and Pecen, Turner and Meiler, Jens and Nagel, Zachary D and Capra, John A and Chazin, Walter J},
biburl = {https://puma.scadsai.uni-leipzig.de/bibtex/2e4c8afdeece06eba3a1e0c45ed676037/scadsfct},
interhash = {62f887c733caba5201245fa10c88d63a},
intrahash = {e4c8afdeece06eba3a1e0c45ed676037},
journal = {Cancer Res.},
keywords = {imported},
language = {en},
month = aug,
number = 15,
pages = {2704--2715},
timestamp = {2024-10-02T10:38:17.000+0200},
title = {An active learning framework improves tumor variant interpretation},
volume = 82,
year = 2022
}