articleScienceFeb 20, 2025HYBRID OA

Disease diagnostics using machine learning of B cell and T cell receptor sequences

Stanford University · Stanford Blood Center · +15 more institutions

PubMed
Indexed incrossrefpubmed

Abstract

Clinical diagnosis typically incorporates physical examination, patient history, various laboratory tests, and imaging studies but makes limited use of the human immune system’s own record of antigen exposures encoded by receptors on B cells and T cells. We analyzed immune receptor datasets from 593 individuals to develop MAchine Learning for Immunological Diagnosis, an interpretive framework to screen for multiple illnesses simultaneously or precisely test for one condition. This approach detects specific infections, autoimmune disorders, vaccine responses, and disease severity differences. Human-interpretable features of the model recapitulate known immune responses to severe acute respiratory syndrome…

Citation impact

72
total citations
FWCI
44.37
Percentile
100%
References
97
Citations per year

Authors

37

Topics & keywords

Keywords
  • Disease
  • Cell
  • Computational biology
  • Receptor
  • Computer science
  • Biology
  • Cell biology
  • Genetics
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