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. 2021 Feb 12;11:3780. doi: 10.1038/s41598-021-83338-2

Table 2.

Model performance for baseline features predicting treatment outcome.

Model AUC (95% CI) Accuracy % Sensitivity Specificity R2
Clinical predictors .659 (.629, .689) .615 .623 .607 .057
Clinical predictors + a priori SNPs .662 (.632, .692) .628 .642 .613 .059
Clinical predictors + elastic net SNPs .655 (.625, .685) .609 .623 .594 .049

Clinical predictors model includes sociodemographic and pre-treatment symptom variables only. The model in the second row adds SNPs selected a priori based on work by10 to the clinical predictors model. The model in the third row adds the SNPs identified by the elastic net feature selection to the clinical predictors model. For threshold-dependent metrics (accuracy, sensitivity, specificity), a probability threshold of 0.5 was used for classification.