Abstract

Consistent medical care among people living with HIV is essential for both individual and public health. HIV-positive individuals who are ‘retained in care’ are more likely to be prescribed antiretroviral medication and achieve HIV viral suppression, effectively eliminating the risk of transmitting HIV to others. However, in the United States, less than half of HIV-positive individuals are retained in care. Interventions to improve retention in care are resource intensive, and there is currently no systematic way to identify patients at risk for falling out of care who would benefit from these interventions. We developed a machine learning model to identify patients at risk for dropping out of care in an urban HIV care clinic using electronic medical records and geospatial data. The machine learning model has a mean positive predictive value of 34.6% [SD: 0.15] for flagging the top 10% highest risk patients as needing interventions, performing better than the previous state-of-the-art logistic regression model (PPV of 17% [SD: 0.06]) and the baseline rate of 11.1% [SD: 0.02]. Machine learning methods can improve the prediction ability in HIV care clinics to proactively identify patients at risk for not returning to medical care.

Highlights

  • Consistent medical care among people living with HIV is essential for both individual and public health

  • The previous-state-of-the-art model had an average positive predictive value (PPV) of 14.1% [SD: 0.04] throughout the study period for the top 10% of predicted risk individuals, an improvement of 100%

  • This study demonstrates the potential of machine learning models to identify individual patients at the highest risk for falling out of HIV care, allowing busy HIV care clinics to direct limited resources toward patients who need them the most

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Summary

Introduction

Consistent medical care among people living with HIV is essential for both individual and public health. For patients who lack health insurance, state and federal programs such as the Ryan White HIV/AIDS Program provide funding to pay for HIV care visits and antiretroviral medications. Despite these programs, many patients living with HIV still do not regularly attend medical appointments. Methods are needed to identify and prioritize HIV-positive patients at highest risk for falling out of medical care Existing work on this problem has focused on two aspects: (1) using retrospective analysis to identify population level subgroups at risk for dropping out of care, such as African-American men who have sex with other men[26], and (2) understanding root causes and barriers to retention in care. Prioritizing interventions using group level risk factors (e.g., men who have sex with men) can waste already scarce resources because it presumes that all members have uniform risk, neglecting individual circumstances edu www.nature.com/scientificreports/

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