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      Mining Electronic Health Records (EHRs) : A Survey

      1 , 1 , 1 , 1
      ACM Computing Surveys
      Association for Computing Machinery (ACM)

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          Regularization Paths for Cox's Proportional Hazards Model via Coordinate Descent.

          We introduce a pathwise algorithm for the Cox proportional hazards model, regularized by convex combinations of ℓ1 and ℓ2 penalties (elastic net). Our algorithm fits via cyclical coordinate descent, and employs warm starts to find a solution along a regularization path. We demonstrate the efficacy of our algorithm on real and simulated data sets, and find considerable speedup between our algorithm and competing methods.
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            Support vector machines

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              Is Open Access

              Deep Patient: An Unsupervised Representation to Predict the Future of Patients from the Electronic Health Records

              Secondary use of electronic health records (EHRs) promises to advance clinical research and better inform clinical decision making. Challenges in summarizing and representing patient data prevent widespread practice of predictive modeling using EHRs. Here we present a novel unsupervised deep feature learning method to derive a general-purpose patient representation from EHR data that facilitates clinical predictive modeling. In particular, a three-layer stack of denoising autoencoders was used to capture hierarchical regularities and dependencies in the aggregated EHRs of about 700,000 patients from the Mount Sinai data warehouse. The result is a representation we name “deep patient”. We evaluated this representation as broadly predictive of health states by assessing the probability of patients to develop various diseases. We performed evaluation using 76,214 test patients comprising 78 diseases from diverse clinical domains and temporal windows. Our results significantly outperformed those achieved using representations based on raw EHR data and alternative feature learning strategies. Prediction performance for severe diabetes, schizophrenia, and various cancers were among the top performing. These findings indicate that deep learning applied to EHRs can derive patient representations that offer improved clinical predictions, and could provide a machine learning framework for augmenting clinical decision systems.

                Author and article information

                Journal
                ACM Computing Surveys
                ACM Comput. Surv.
                CSUR
                Association for Computing Machinery (ACM)
                03600300
                January 12 2018
                January 03 2018
                : 50
                : 6
                : 1-40
                Affiliations
                [1 ]University of Minnesota - Twin Cities, MN, USA
                Article
                10.1145/3127881
                d4e37276-a76c-44f5-b317-4f82186fba05
                © 2018

                http://www.acm.org/publications/policies/copyright_policy#Background

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