Abstract
A promise of genomics in precision medicine is to provide individualized genetic risk predictions. Polygenic risk scores (PRS), computed by aggregating effects from many genomic variants, have been developed as a useful tool in complex disease research. However, the application of PRS as a tool for predicting an individual’s disease susceptibility in a clinical setting is challenging because PRS typically provide a relative measure of risk evaluated at the level of a group of people but not at individual level. Here, we introduce a machine-learning technique, Mondrian Cross-Conformal Prediction (MCCP), to estimate the confidence bounds of PRS-to-disease-risk prediction. MCCP can report disease status conditional probability value for each individual and give a prediction at a desired error level. Moreover, with a user-defined prediction error rate, MCCP can estimate the proportion of sample (coverage) with a correct prediction.
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CITATION STYLE
Sun, J., Wang, Y., Folkersen, L., Borné, Y., Amlien, I., Buil, A., … Lage, K. (2021). Translating polygenic risk scores for clinical use by estimating the confidence bounds of risk prediction. Nature Communications, 12(1). https://doi.org/10.1038/s41467-021-25014-7
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