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UBC Theses and Dissertations
Application of physician claims and hospital discharge data to the classification of carotid endarterectomy symptomatic status and to the analysis of the symptom to surgery process van Gaal, Stephen
Abstract
Background and purpose. The discipline of quality improvement emphasizes the use of data to improve specific and measurable attributes of performance. Using the example of carotid artery endarterectomy (CEA) for carotid artery stenosis, this thesis examined the use of hospital discharge and physician claims data for two quality improvement use cases. In Study 1, claims data were used to assemble patient cohorts based on symptomatic status at time of CEA. In Study 2, claims data were used to identify process-related causes of delayed symptomatic CEA. Methods. A single hospital’s administrative database was used to assemble a retrospective cohort of participants who had undergone CEA. Chart review data were linked with physician claims and hospital discharge data. In Study 1, a standard method of classification by hospital discharge diagnosis was compared to classification using physician claims and hospital discharge data. In Study 2, delays related to the selection of medical care activities, such as physician visits and diagnostic tests, were investigated using linear regression models of waiting time for surgery and K-means clustering for patterns of activity co-occurrence. Results. We identified 971 participants undergoing CEA at the Vancouver General Hospital (Vancouver, Canada) between January 1, 2008, and December 31, 2016. For Study 1, 729 people met inclusion/exclusion criteria and were included in diagnostic classification models (615 training, 114 test). Classification of symptomatic status using hospital discharge diagnosis codes was 32.8% (95% CI 29% – 37%) sensitive and 98.6% specific (96% – 100%). At matched 98.6% specificity, models that incorporated physician claims data were significantly more sensitive: elastic net 69.4% (59% – 82%) and random forest 78.8% (69% – 88%). In Study 2, K means clustering and linear regression analyses of process delay yielded similar results: early evaluation by emergency physicians or neurologists was associated with reduced delay, whereas carotid ultrasonography and post-imaging follow up with general practitioners or eye specialists was associated with greater delay. Conclusion. Physician claims data can be used within quality improvement projects for cohort definition and process analysis use cases.
Item Metadata
Title |
Application of physician claims and hospital discharge data to the classification of carotid endarterectomy symptomatic status and to the analysis of the symptom to surgery process
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Creator | |
Supervisor | |
Publisher |
University of British Columbia
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Date Issued |
2024
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Description |
Background and purpose. The discipline of quality improvement emphasizes the use of data to improve specific and measurable attributes of performance. Using the example of carotid artery endarterectomy (CEA) for carotid artery stenosis, this thesis examined the use of hospital discharge and physician claims data for two quality improvement use cases. In Study 1, claims data were used to assemble patient cohorts based on symptomatic status at time of CEA. In Study 2, claims data were used to identify process-related causes of delayed symptomatic CEA.
Methods. A single hospital’s administrative database was used to assemble a retrospective cohort of participants who had undergone CEA. Chart review data were linked with physician claims and hospital discharge data. In Study 1, a standard method of classification by hospital discharge diagnosis was compared to classification using physician claims and hospital discharge data. In Study 2, delays related to the selection of medical care activities, such as physician visits and diagnostic tests, were investigated using linear regression models of waiting time for surgery and K-means clustering for patterns of activity co-occurrence.
Results. We identified 971 participants undergoing CEA at the Vancouver General Hospital (Vancouver, Canada) between January 1, 2008, and December 31, 2016. For Study 1, 729 people met inclusion/exclusion criteria and were included in diagnostic classification models (615 training, 114 test). Classification of symptomatic status using hospital discharge diagnosis codes was 32.8% (95% CI 29% – 37%) sensitive and 98.6% specific (96% – 100%). At matched 98.6% specificity, models that incorporated physician claims data were significantly more sensitive: elastic net 69.4% (59% – 82%) and random forest 78.8% (69% – 88%). In Study 2, K means clustering and linear regression analyses of process delay yielded similar results: early evaluation by emergency physicians or neurologists was associated with reduced delay, whereas carotid ultrasonography and post-imaging follow up with general practitioners or eye specialists was associated with greater delay.
Conclusion. Physician claims data can be used within quality improvement projects for cohort definition and process analysis use cases.
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Genre | |
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Language |
eng
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Date Available |
2025-01-10
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Provider |
Vancouver : University of British Columbia Library
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Rights |
Attribution-NonCommercial-NoDerivatives 4.0 International
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DOI |
10.14288/1.0447730
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Affiliation | |
Degree Grantor |
University of British Columbia
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Graduation Date |
2025-05
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Scholarly Level |
Graduate
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Rights
Attribution-NonCommercial-NoDerivatives 4.0 International