Matthew E Levine
Overview
Explore the profile of Matthew E Levine including associated specialties, affiliations and a list of published articles.
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Snapshot
Articles
15
Citations
131
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0
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Recent Articles
11.
Albers D, Levine M, Stuart A, Mamykina L, Gluckman B, Hripcsak G
J Am Med Inform Assoc
. 2018 Oct;
25(10):1392-1401.
PMID: 30312445
We introduce data assimilation as a computational method that uses machine learning to combine data with human knowledge in the form of mechanistic models in order to forecast future states,...
12.
Levine M, Albers D, Hripcsak G
J Biomed Inform
. 2018 Sep;
86:149-159.
PMID: 30172760
We studied how lagged linear regression can be used to detect the physiologic effects of drugs from data in the electronic health record (EHR). We systematically examined the effect of...
13.
Feller D, Burgermaster M, Levine M, Smaldone A, Davidson P, Albers D, et al.
J Am Med Inform Assoc
. 2018 Jun;
25(10):1366-1374.
PMID: 29905826
Objective: To develop and test a visual analytics tool to help clinicians identify systematic and clinically meaningful patterns in patient-generated data (PGD) while decreasing perceived information overload. Methods: Participatory design...
14.
Levine M, Albers D, Hripcsak G
AMIA Annu Symp Proc
. 2017 Mar;
2016:779-788.
PMID: 28269874
Time series analysis methods have been shown to reveal clinical and biological associations in data collected in the electronic health record. We wish to develop reliable high-throughput methods for identifying...
15.
Mamykina L, Levine M, Davidson P, Smaldone A, Elhadad N, Albers D
J Am Med Inform Assoc
. 2016 Mar;
23(3):526-31.
PMID: 26984049
Objective: To investigate how individuals with diabetes and diabetes educators reason about data collected through self-monitoring and to draw implications for the design of data-driven self-management technologies. Materials And Methods:...