Abstract

Identifying in advance who is unlikely to respond to a specific antidepressant treatment is crucial to precision medicine efforts. The current work leverages genome-wide genetic variation and machine learning to predict response to the antidepressant citalopram using data from the Sequenced Treatment Alternatives to Relieve Depression (STAR*D) trial (n = 1257 with both valid genomic and outcome data). A confirmatory approach selected 11 SNPs previously reported to predict response to escitalopram in a sample different from the current study. A novel exploratory approach selected SNPs from across the genome using nested cross-validation with elastic net logistic regression with a predominantly lasso penalty (alpha = 0.99). SNPs from each approach were combined with baseline clinical predictors and treatment response outcomes were predicted using a stacked ensemble of gradient boosting decision trees. Using pre-treatment clinical and symptom predictors only, out-of-fold prediction of a novel treatment response definition based on STAR*D treatment guidelines was acceptable, AUC = .659, 95% CI [0.629, 0.689]. The inclusion of SNPs using confirmatory or exploratory selection methods did not improve the out-of-fold prediction of treatment response (AUCs were .662, 95% CI [0.632, 0.692] and .655, 95% CI [0.625, 0.685], respectively). A similar pattern of results were observed for the secondary outcomes of the presence or absence of distressing side effects regardless of treatment response and achieving remission or satisfactory partial response, assuming medication tolerance. In the current study, incorporating SNP variation into prognostic models did not enhance the prediction of citalopram response in the STAR*D sample.

Highlights

  • Identifying in advance who is unlikely to respond to a specific antidepressant treatment is crucial to precision medicine efforts

  • The current study examined whether the inclusion of single nucleotide polymorphisms (SNPs) in a machine learning stacked ensemble could improve the prediction of treatment response above and beyond the contribution of more standard clinical predictors in the Sequenced Treatment Alternatives to Relieve Depression (STAR*D) trial

  • The model that included the SNPs selected via elastic net did not improve prediction beyond the clinical predictors model

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Summary

Introduction

Identifying in advance who is unlikely to respond to a specific antidepressant treatment is crucial to precision medicine efforts. The current study examined whether the inclusion of SNPs in a machine learning stacked ensemble could improve the prediction of treatment response above and beyond the contribution of more standard clinical predictors in the STAR*D trial.

Results
Conclusion
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