L
Laura K. Wiley
Researcher at Anschutz Medical Campus
Publications - 23
Citations - 1754
Laura K. Wiley is an academic researcher from Anschutz Medical Campus. The author has contributed to research in topics: Computer science & Health informatics. The author has an hindex of 7, co-authored 19 publications receiving 1251 citations. Previous affiliations of Laura K. Wiley include University of Colorado Denver & University of Colorado Boulder.
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Journal ArticleDOI
Opportunities and obstacles for deep learning in biology and medicine.
Travers Ching,Daniel Himmelstein,Brett K. Beaulieu-Jones,Alexandr A. Kalinin,Brian T. Do,Gregory P. Way,Enrico Ferrero,Paul-Michael Agapow,Michael Zietz,Michael M. Hoffman,Michael M. Hoffman,Wei Xie,Gail L. Rosen,Benjamin J. Lengerich,Johnny Israeli,Jack Lanchantin,Stephen Woloszynek,Anne E. Carpenter,Avanti Shrikumar,Jinbo Xu,Evan M. Cofer,Evan M. Cofer,Christopher A. Lavender,Srinivas C. Turaga,Amr Alexandari,Zhiyong Lu,David J. Harris,Dave DeCaprio,Yanjun Qi,Anshul Kundaje,Yifan Peng,Laura K. Wiley,Marwin H. S. Segler,Simina M. Boca,S. Joshua Swamidass,Austin Huang,Anthony Gitter,Anthony Gitter,Casey S. Greene +38 more
TL;DR: It is found that deep learning has yet to revolutionize biomedicine or definitively resolve any of the most pressing challenges in the field, but promising advances have been made on the prior state of the art.
Journal ArticleDOI
ICD-9 tobacco use codes are effective identifiers of smoking status
TL;DR: The results support the use of ICD-9 tobacco use codes for identifying smokers in a clinical population and with some limitations, these codes are suitable for adjustment of smoking status in genetic studies utilizing electronic health records.
Posted ContentDOI
Opportunities And Obstacles For Deep Learning In Biology And Medicine
Travers Ching,Daniel Himmelstein,Brett K. Beaulieu-Jones,Alexandr A. Kalinin,Brian T. Do,Gregory P. Way,Enrico Ferrero,Paul-Michael Agapow,Wei Xie,Gail L. Rosen,Benjamin J. Lengerich,Johnny Israeli,Jack Lanchantin,Stephen Woloszynek,Anne E. Carpenter,Avanti Shrikumar,Jinbo Xu,Evan M. Cofer,David J. Harris,Dave DeCaprio,Yanjun Qi,Anshul Kundaje,Yifan Peng,Laura K. Wiley,Marwin H. S. Segler,Anthony Gitter,Casey S. Greene +26 more
TL;DR: This work examines applications of deep learning to a variety of biomedical problems -- patient classification, fundamental biological processes, and treatment of patients -- to predict whether deep learning will transform these tasks or if the biomedical sphere poses unique challenges.
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Opportunity for Genotype-Guided Prescribing Among Adult Patients in 11 US Health Systems.
J. Kevin Hicks,Nihal El Rouby,Nihal El Rouby,Henry H. Ong,Jonathan S. Schildcrout,Laura B. Ramsey,Yaping Shi,Leigh Anne Tang,Christina L. Aquilante,Amber L. Beitelshees,Kathryn V. Blake,James J. Cimino,Brittney H. Davis,Philip E. Empey,David P. Kao,Daniel L. Lemkin,Nita A. Limdi,Gloria Lipori,Marc B. Rosenman,Marc B. Rosenman,Todd C. Skaar,Evgenia Teal,Sony Tuteja,Laura K. Wiley,Helen Williams,Almut G. Winterstein,Sara L. Van Driest,Larisa H. Cavallari,Josh F. Peterson +28 more
TL;DR: The authors in this article found that a significant portion of adults treated at medical institutions across the United States is exposed to medications for which genetic information, if available, should be used to guide prescribing.
Journal ArticleDOI
Recommendations for patient similarity classes: results of the AMIA 2019 workshop on defining patient similarity.
Nathan D. Seligson,Nathan D. Seligson,Jeremy L. Warner,William S. Dalton,David Martin,Robert S. Miller,Debra A. Patt,Kenneth L. Kehl,Matvey B. Palchuk,Gil Alterovitz,Gil Alterovitz,Laura K. Wiley,Ming Huang,Feichen Shen,Yanshan Wang,Khoa A. Nguyen,Anthony Wong,Funda Meric-Bernstam,Elmer V. Bernstam,James L. Chen +19 more
TL;DR: A workshop at the American Medical Informatics Association 2019 Annual Meeting was convened to provide clarity and a common framework for patient similarity, and drawing from a broad range of backgrounds, workshop participants were able to coalesce around 4 major patient similarity classes.