Frontiers in Immunology (Mar 2024)

Identifying antinuclear antibody positive individuals at risk for developing systemic autoimmune disease: development and validation of a real-time risk model

  • April Barnado,
  • April Barnado,
  • Ryan P. Moore,
  • Henry J. Domenico,
  • Sarah Green,
  • Alex Camai,
  • Ashley Suh,
  • Bryan Han,
  • Katherine Walker,
  • Audrey Anderson,
  • Lannawill Caruth,
  • Anish Katta,
  • Allison B. McCoy,
  • Daniel W. Byrne,
  • Daniel W. Byrne

DOI
https://doi.org/10.3389/fimmu.2024.1384229
Journal volume & issue
Vol. 15

Abstract

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ObjectivePositive antinuclear antibodies (ANAs) cause diagnostic dilemmas for clinicians. Currently, no tools exist to help clinicians interpret the significance of a positive ANA in individuals without diagnosed autoimmune diseases. We developed and validated a risk model to predict risk of developing autoimmune disease in positive ANA individuals.MethodsUsing a de-identified electronic health record (EHR), we randomly chart reviewed 2,000 positive ANA individuals to determine if a systemic autoimmune disease was diagnosed by a rheumatologist. A priori, we considered demographics, billing codes for autoimmune disease-related symptoms, and laboratory values as variables for the risk model. We performed logistic regression and machine learning models using training and validation samples.ResultsWe assembled training (n = 1030) and validation (n = 449) sets. Positive ANA individuals who were younger, female, had a higher titer ANA, higher platelet count, disease-specific autoantibodies, and more billing codes related to symptoms of autoimmune diseases were all more likely to develop autoimmune diseases. The most important variables included having a disease-specific autoantibody, number of billing codes for autoimmune disease-related symptoms, and platelet count. In the logistic regression model, AUC was 0.83 (95% CI 0.79-0.86) in the training set and 0.75 (95% CI 0.68-0.81) in the validation set.ConclusionWe developed and validated a risk model that predicts risk for developing systemic autoimmune diseases and can be deployed easily within the EHR. The model can risk stratify positive ANA individuals to ensure high-risk individuals receive urgent rheumatology referrals while reassuring low-risk individuals and reducing unnecessary referrals.

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