Ontology highlight
ABSTRACT: Background
Pre-symptomatic prediction of disease and drug response based on genetic testing is a critical component of personalized medicine. Previous work has demonstrated that the predictive capacity of genetic testing is constrained by the heritability and prevalence of the tested trait, although these constraints have only been approximated under the assumption of a normally distributed genetic risk distribution.Results
Here, we mathematically derive the absolute limits that these factors impose on test accuracy in the absence of any distributional assumptions on risk. We present these limits in terms of the best-case receiver-operating characteristic (ROC) curve, consisting of the best-case test sensitivities and specificities, and the AUC (area under the curve) measure of accuracy. We apply our method to genetic prediction of type 2 diabetes and breast cancer, and we additionally show the best possible accuracy that can be obtained from integrated predictors, which can incorporate non-genetic features.Conclusion
Knowledge of such limits is valuable in understanding the implications of genetic testing even before additional associations are identified.
SUBMITTER: Dreyfuss JM
PROVIDER: S-EPMC3534619 | biostudies-literature | 2012 Jul
REPOSITORIES: biostudies-literature
Dreyfuss Jonathan M JM Levner Daniel D Galagan James E JE Church George M GM Ramoni Marco F MF
BMC genomics 20120724
<h4>Background</h4>Pre-symptomatic prediction of disease and drug response based on genetic testing is a critical component of personalized medicine. Previous work has demonstrated that the predictive capacity of genetic testing is constrained by the heritability and prevalence of the tested trait, although these constraints have only been approximated under the assumption of a normally distributed genetic risk distribution.<h4>Results</h4>Here, we mathematically derive the absolute limits that ...[more]