An Evaluation of Computational Methods to Support the Clinical Management of Chronic Disease Populations

Innovative primary care models that deliver comprehensive primary care to address medical and social needs are an established means of improving health outcomes and reducing healthcare costs among persons living with chronic disease. Care management is one such approach that requires providers to mo...

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Main Author: Feller, Daniel
Language:English
Published: 2020
Subjects:
Online Access:https://doi.org/10.7916/d8-60pj-0831
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spelling ndltd-columbia.edu-oai-academiccommons.columbia.edu-10.7916-d8-60pj-08312020-06-23T03:05:01ZAn Evaluation of Computational Methods to Support the Clinical Management of Chronic Disease PopulationsFeller, Daniel2020ThesesHealth services administrationChronically ill--CareIntegrated delivery of health careHIV (Viruses)--Patients--Services forPatients--CareHealth--Information servicesMedical records--Data processingHealth--Social aspectsInnovative primary care models that deliver comprehensive primary care to address medical and social needs are an established means of improving health outcomes and reducing healthcare costs among persons living with chronic disease. Care management is one such approach that requires providers to monitor their respective patient panels and intervene on patients requiring care. Health information technology (IT) has been established as a critical component of care management and similar care models. While there exist a plethora of health IT systems for facilitating primary care, there is limited research on their ability to support care management and its emphasis on monitoring panels of patients with complex needs. In this dissertation, I advance the understanding of how computational methods can better support clinicians delivering care management, and use the management of human immunodeficiency virus (HIV) as an example scenario of use. The research described herein is segmented into 3 aims; the first was to understand the processes and barriers associated with care management and assess whether existing IT can support clinicians in this domain. The second and third aim focused on informing potential solutions to the technological shortcomings identified in the first aim. In the studies of the first aim, I conducted interviews and observations in two HIV primary care programs and analyzed the data generated to create a conceptual framework of population monitoring and identify challenges faced by clinicians in delivering care management. In the studies of the second aim, I used computational methods to advance the science of extracting from the patient record social and behavioral determinants of health (SBDH), which are not easily accessible to clinicians and represent an important barrier to care management. In the third aim, I conducted a controlled experimental evaluation to assess whether data visualization can improve clinician’s ability to maintain awareness of their patient panels.Englishhttps://doi.org/10.7916/d8-60pj-0831
collection NDLTD
language English
sources NDLTD
topic Health services administration
Chronically ill--Care
Integrated delivery of health care
HIV (Viruses)--Patients--Services for
Patients--Care
Health--Information services
Medical records--Data processing
Health--Social aspects
spellingShingle Health services administration
Chronically ill--Care
Integrated delivery of health care
HIV (Viruses)--Patients--Services for
Patients--Care
Health--Information services
Medical records--Data processing
Health--Social aspects
Feller, Daniel
An Evaluation of Computational Methods to Support the Clinical Management of Chronic Disease Populations
description Innovative primary care models that deliver comprehensive primary care to address medical and social needs are an established means of improving health outcomes and reducing healthcare costs among persons living with chronic disease. Care management is one such approach that requires providers to monitor their respective patient panels and intervene on patients requiring care. Health information technology (IT) has been established as a critical component of care management and similar care models. While there exist a plethora of health IT systems for facilitating primary care, there is limited research on their ability to support care management and its emphasis on monitoring panels of patients with complex needs. In this dissertation, I advance the understanding of how computational methods can better support clinicians delivering care management, and use the management of human immunodeficiency virus (HIV) as an example scenario of use. The research described herein is segmented into 3 aims; the first was to understand the processes and barriers associated with care management and assess whether existing IT can support clinicians in this domain. The second and third aim focused on informing potential solutions to the technological shortcomings identified in the first aim. In the studies of the first aim, I conducted interviews and observations in two HIV primary care programs and analyzed the data generated to create a conceptual framework of population monitoring and identify challenges faced by clinicians in delivering care management. In the studies of the second aim, I used computational methods to advance the science of extracting from the patient record social and behavioral determinants of health (SBDH), which are not easily accessible to clinicians and represent an important barrier to care management. In the third aim, I conducted a controlled experimental evaluation to assess whether data visualization can improve clinician’s ability to maintain awareness of their patient panels.
author Feller, Daniel
author_facet Feller, Daniel
author_sort Feller, Daniel
title An Evaluation of Computational Methods to Support the Clinical Management of Chronic Disease Populations
title_short An Evaluation of Computational Methods to Support the Clinical Management of Chronic Disease Populations
title_full An Evaluation of Computational Methods to Support the Clinical Management of Chronic Disease Populations
title_fullStr An Evaluation of Computational Methods to Support the Clinical Management of Chronic Disease Populations
title_full_unstemmed An Evaluation of Computational Methods to Support the Clinical Management of Chronic Disease Populations
title_sort evaluation of computational methods to support the clinical management of chronic disease populations
publishDate 2020
url https://doi.org/10.7916/d8-60pj-0831
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