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Predictive Modeling of Lapses in Care for People Living with HIV in Chicago: Algorithm Development and Interpretation.

Joseph A MasonEleanor E FriedmanSamantha A DevlinJohn Alexis SchneiderJessica P Ridgway
Published in: JMIR public health and surveillance (2023)
We used a real-world approach to leverage the full scope of data available in modern EHRs to predict HIV care lapses. Our findings reinforce previously known factors, such as the history of prior care lapses, while also showing the importance of laboratory testing, chronic comorbidities, sociodemographic characteristics, and clinic-specific factors for predicting care lapses for people living with HIV in Chicago. We provide a framework for others to use data from multiple different health care systems within a single city to examine lapses in care using EHR data, which will aid in jurisdictional efforts to improve retention in HIV care.
Keyphrases
  • healthcare
  • quality improvement
  • palliative care
  • electronic health record
  • pain management
  • affordable care act
  • big data
  • machine learning
  • artificial intelligence
  • drug induced
  • health information