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    Two Essays on Leveraging Analytics to Improve Healthcare

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    Date
    2021-05-01
    Author
    Gopukumar, Deepika
    Department
    Management Science
    Advisor(s)
    Huimin Zhao
    Metadata
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    Abstract
    The healthcare cost has continued to increase over the past few years despite various policies, efforts, and initiatives taken by the government. It is still projected to grow over the next few years by the Centers for Medicare and Medicaid Services (CMS). Readmissions have been a major contributor to the increase in costs and have always been a contributing factor. To get a perspective, considering the fact that at least 9% of individuals who had COVID-19 were likely to get readmitted shortly, according to a study by the Centers for Disease Control and Prevention (CDC) COVID-19 response team, along with their high estimated treatment cost, the problem of high healthcare costs will continue to grow. The implementation of the American Recovery and Reinvestment Act of 2009 has led to massive increase in digital health data facilitating various studies to utilize analytics to improve healthcare. The goal of the two essays in this dissertation is to address the identified research gaps in the literature in readmission analytics.In Essay 1, I deploy the term readmission in two different ways and then focus on building and identifying predictive models that are suitable for costs billed by hospitals for the identified readmission categories. By using a data-driven approach, my initial analysis revealed that 21% of readmitted individuals (regardless of the number of days to readmission) alone contributed to 48% of the healthcare cost. Apart from that, my analysis revealed that the readmission cost (for the identified readmission categories in this study) varied from the previous admission cost at both individual and aggregated levels. Deep learning-based models performed the best for all scenarios. In Essay 2, I focus on creating a multitask learning-based joint model for predicting different outcomes related to readmissions, namely, likelihood, cost, and length of stay. I then evaluate the performance of the joint model and analyze its usefulness. Analysis was done for the identified top three categories of readmission belonging to the same major diagnostic groups from Essay1. Results showed that the joint model performed slightly better than the single-task baseline model for specific scenarios. The joint model was also beneficial in determining predictors that were consistently important to predict all the outcomes related to readmissions regardless of not giving us a universally best model.
    Subject
    Machine Learning
    Predictive Modeling
    Readmission Analytics
    Readmission Costs
    Permanent Link
    http://digital.library.wisc.edu/1793/92632
    Type
    dissertation
    Part of
    • UW Milwaukee Electronic Theses and Dissertations

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