A Topic Modeling Analysis of Stigma Dimensions, Social, and Related Behavioral Circumstances in Clinical Notes Among Patients with HIV
Ziyi Chen, Yiyang Liu, Mattia Prosperi, Krishna Vaddiparti, Robert L Cook, Jiang Bian, Yi Guo, Yonghui Wu

TL;DR
This study uses NLP and topic modeling on clinical notes to analyze HIV-related stigma and social factors, revealing diverse themes and demographic differences to improve patient care and interventions.
Contribution
It introduces a novel NLP-based approach to characterize HIV-related stigma and social contexts from large-scale clinical notes, surpassing traditional questionnaire methods.
Findings
Identified 91 stigma-related keywords from clinical notes.
Uncovered diverse stigma and social themes through topic modeling.
Detected demographic differences in stigma-related topics.
Abstract
Objective: To characterize stigma dimensions, social, and related behavioral circumstances in people living with HIV(PLWHs) seeking care, using NLP methods applied to a large collection of EHR clinical notes from a large integrated health system in the southeast United States. Methods: We identified a cohort of PLWHs from the UF Health IDR and performed topic modeling analysis using Latent Dirichlet Allocation to uncover stigma-related dimensions and related social and behavioral contexts. Domain experts created a seed list of HIV-related stigma keywords, then applied a snowball strategy to review notes for additional terms until saturation was reached iteratively. To identify more target topics, we tested three keyword-based filtering strategies. The detected topics were evaluated using three widely used metrics and manually reviewed by specialists. In addition, we conducted word…
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Taxonomy
TopicsHIV/AIDS Research and Interventions · Mental Health via Writing · Computational and Text Analysis Methods
