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Appl Clin Inform 2019; 10(02): 316-325
DOI: 10.1055/s-0039-1688553
Research Article
Georg Thieme Verlag KG Stuttgart · New York

Development and Prospective Validation of a Machine Learning-Based Risk of Readmission Model in a Large Military Hospital

Carly Eckert
1   KenSci Inc., Seattle, Washington, United States
,
Neris Nieves-Robbins
2   Office of the U.S. Army Surgeon General, Defense Health Headquarters (Health Information Technology/CMIO Office), Falls Church, Virginia, United States
,
Elena Spieker
3   Clinical Informatics Division, Madigan Army Medical Center, Joint Base Lewis-McChord, Tacoma, Washington, United States
,
Tom Louwers
1   KenSci Inc., Seattle, Washington, United States
,
David Hazel
1   KenSci Inc., Seattle, Washington, United States
,
James Marquardt
1   KenSci Inc., Seattle, Washington, United States
,
Keith Solveson
3   Clinical Informatics Division, Madigan Army Medical Center, Joint Base Lewis-McChord, Tacoma, Washington, United States
,
Anam Zahid
1   KenSci Inc., Seattle, Washington, United States
,
Muhammad Ahmad
1   KenSci Inc., Seattle, Washington, United States
,
Richard Barnhill
3   Clinical Informatics Division, Madigan Army Medical Center, Joint Base Lewis-McChord, Tacoma, Washington, United States
,
T. Greg McKelvey
1   KenSci Inc., Seattle, Washington, United States
,
Robert Marshall
3   Clinical Informatics Division, Madigan Army Medical Center, Joint Base Lewis-McChord, Tacoma, Washington, United States
,
Eric Shry
3   Clinical Informatics Division, Madigan Army Medical Center, Joint Base Lewis-McChord, Tacoma, Washington, United States
,
Ankur Teredesai
1   KenSci Inc., Seattle, Washington, United States
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