Translational Psychiatry (May 2022)

A game changer for bipolar disorder diagnosis using RNA editing-based biomarkers

  • Nicolas Salvetat,
  • Francisco Jesus Checa-Robles,
  • Vipul Patel,
  • Christopher Cayzac,
  • Benjamin Dubuc,
  • Fabrice Chimienti,
  • Jean-Daniel Abraham,
  • Pierrick Dupré,
  • Diana Vetter,
  • Sandie Méreuze,
  • Jean-Philippe Lang,
  • David J. Kupfer,
  • Philippe Courtet,
  • Dinah Weissmann

DOI
https://doi.org/10.1038/s41398-022-01938-6
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 10

Abstract

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Abstract In clinical practice, differentiating Bipolar Disorder (BD) from unipolar depression is a challenge due to the depressive symptoms, which are the core presentations of both disorders. This misdiagnosis during depressive episodes results in a delay in proper treatment and a poor management of their condition. In a first step, using A-to-I RNA editome analysis, we discovered 646 variants (366 genes) differentially edited between depressed patients and healthy volunteers in a discovery cohort of 57 participants. After using stringent criteria and biological pathway analysis, candidate biomarkers from 8 genes were singled out and tested in a validation cohort of 410 participants. Combining the selected biomarkers with a machine learning approach achieved to discriminate depressed patients (n = 267) versus controls (n = 143) with an AUC of 0.930 (CI 95% [0.879–0.982]), a sensitivity of 84.0% and a specificity of 87.1%. In a second step by selecting among the depressed patients those with unipolar depression (n = 160) or BD (n = 95), we identified a combination of 6 biomarkers which allowed a differential diagnosis of bipolar disorder with an AUC of 0.935 and high specificity (Sp = 84.6%) and sensitivity (Se = 90.9%). The association of RNA editing variants modifications with depression subtypes and the use of artificial intelligence allowed developing a new tool to identify, among depressed patients, those suffering from BD. This test will help to reduce the misdiagnosis delay of bipolar patients, leading to an earlier implementation of a proper treatment.