Performance estimates for other state-of-the-art models and phenotypic multi-task multi-kernel learning (MKL).
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For internal validation, each model was assessed by nested k-fold cross-validation. For external validation on a set of novel missense variants, the web-based tools for the Gradient boosting and decision rule method were used (see ‘Validation’). Note that AU-PRC and AU-ROC are not available for the decision rule as it is not a probabilistic classifier. Phenotypic learning outperforms other models across all metrics and is shown in bold. Abbreviations: ACC–accuracy; AU-PRC–area under the precision recall curve; AU-ROC–area under the receiver operator characteristics curve.
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2023-03-06



