Precision phenotyping for curating research cohorts of patients with unexplained post-acute sequelae of COVID-19

Nov 9, 2024Med (New York, N.Y.)

Detailed patient profiling to select research groups with unexplained long COVID symptoms

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Abstract

The algorithm identified over 24,000 patients with post-acute sequelae of COVID-19 (PASC) at 79.9% precision.

  • A new algorithm improves the accuracy of identifying PASC compared to existing methods.
  • The estimated prevalence of PASC was 22.8%, aligning closely with national estimates.
  • This approach reduces demographic biases in identifying patients with PASC.
  • In-depth analyses were conducted on lingering effects by organ and comorbidity profiles.
  • The findings could enhance future research into the complexities of PASC.

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