4.6 Article

A Comparison of Different Approaches to Clinical Phenotyping of Lithium Response: A Proof of Principle Study Employing Genetic Variants of Three Candidate Circadian Genes

Journal

PHARMACEUTICALS
Volume 14, Issue 11, Pages -

Publisher

MDPI
DOI: 10.3390/ph14111072

Keywords

bipolar disorder; lithium; response; phenotype; genetics; circadian genes; machine learning

Funding

  1. INSERM [C0829]
  2. Assistance Publique des Hopitaux de Paris [GAN12]
  3. Agence Nationale pour la Recherche [ANR NEURO2006-Project MANAGE_BPAD]
  4. Centre National de Genotypage (Evry, France)

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This study compared different approaches to phenotyping the response to lithium in bipolar disorder patients, finding that machine learning methods were more effective in identifying potential signals of the lithium response compared to established approaches.
Optimal classification of the response to lithium (Li) is crucial in genetic and biomarker research. This proof of concept study aims at exploring whether different approaches to phenotyping the response to Li may influence the likelihood of detecting associations between the response and genetic markers. We operationalized Li response phenotypes using the Retrospective Assessment of Response to Lithium Scale (i.e., the Alda scale) in a sample of 164 cases with bipolar disorder (BD). Three phenotypes were defined using the established approaches, whilst two phenotypes were generated by machine learning algorithms. We examined whether these five different Li response phenotypes showed different levels of statistically significant associations with polymorphisms of three candidate circadian genes (RORA, TIMELESS and PPARGC1A), which were selected for this study because they were plausibly linked with the response to Li. The three original and two revised Alda ratings showed low levels of discordance (misclassification rates: 8-12%). However, the significance of associations with circadian genes differed when examining previously recommended categorical and continuous phenotypes versus machine-learning derived phenotypes. Findings using machine learning approaches identified more putative signals of the Li response. Established approaches to Li response phenotyping are easy to use but may lead to a significant loss of data (excluding partial responders) due to recent attempts to improve the reliability of the original rating system. While machine learning approaches require additional modeling to generate Li response phenotypes, they may offer a more nuanced approach, which, in turn, would enhance the probability of identifying significant signals in genetic studies.

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