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Can education be personalised using pupils’ genetic data?

Tim T Morris, Neil M Davies, George Davey Smith

2020eLife54 citationsDOIOpen Access PDF

Abstract

The increasing predictive power of polygenic scores for education has led to their promotion by some as a potential tool for genetically informed policy. How accurately polygenic scores predict an individual pupil's educational performance conditional on other phenotypic data is however not well understood. Using data from a UK cohort study with data linkage to national schooling records, we investigated how accurately polygenic scores for education predicted pupils' test score achievement. We also assessed the performance of polygenic scores over and above phenotypic data that are available to schools. Across our sample, there was high overlap between the polygenic score and achievement distributions, leading to poor predictive accuracy at the individual level. Prediction of educational outcomes from polygenic scores were inferior to those from parental socioeconomic factors. Conditional on prior achievement, polygenic scores failed to accurately predict later achievement. Our results suggest that while polygenic scores can be informative for identifying group level differences, they currently have limited use for accurately predicting individual educational performance or for personalised education.

Topics & Concepts

Predictive powerLinkage (software)Socioeconomic statusCohortMultifactorial InheritancePolygenic risk scorePsychologyPredictive modellingPromotion (chess)PolygeneEducational attainmentComputer sciencePrecision medicineLod scoreTest (biology)Machine learningCohort studyBiologyGenetic Associations and EpidemiologyCognitive Abilities and TestingPsychometric Methodologies and Testing