scholarly journals Faculty Opinions recommendation of Genome-wide polygenic scores for common diseases identify individuals with risk equivalent to monogenic mutations.

Author(s):  
Benjamin Neale
2018 ◽  
Vol 50 (9) ◽  
pp. 1219-1224 ◽  
Author(s):  
Amit V. Khera ◽  
Mark Chaffin ◽  
Krishna G. Aragam ◽  
Mary E. Haas ◽  
Carolina Roselli ◽  
...  

Author(s):  
David Curtis

A recent study claimed that genome-wide polygenic scores (GPSs) for five common diseases could identify individuals with risk equivalent to monogenic mutations. Receiver operator curve analyses were reported to have areas under the curve (AUCs) ranging from 0.63 for inflammatory bowel disease up to 0.81 for coronary artery disease (CAD). The GPS for CAD identified 8% of the population at threefold increased risk, which it was claimed was comparable to the excess risk from monogenic mutations. Attempts were made to model the distribution of GPS for CAD to match the information provided. Models were based on the reported distribution of prevalence and GPS and were fitted to the reported results using linear approximations to the distributions and using simulations of a liability-threshold model. It was impossible to produce a compatible model which produced an AUC as high as 0.81 and the most plausible estimate was that the true AUC was only 0.65. The reported distributions in cases and controls largely overlap so that they are not compatible with an AUC of 0.7 or more. The true AUC of the GPS for these diseases is much lower than claimed. Furthermore, the literature robustly demonstrates that true CAD risk associated with monogenic mutations is much higher than the threefold increase which was claimed. Together, these findings cast doubt on the clinical utility of the GPS.


Author(s):  
David Curtis

A recent study claimed that genome-wide polygenic scores (GPSs) for five common diseases could identify individuals with risk equivalent to monogenic mutations. Receiver operator curve analyses were reported to have areas under the curve (AUCs) ranging from 0.63 for inflammatory bowel disease up to 0.81 for coronary artery disease (CAD). The GPS for CAD identified 8% of the population at threefold increased risk, which it was claimed was comparable to the excess risk from monogenic mutations. Attempts were made to model the distribution of GPS for CAD to match the information provided. Models were based on the reported distribution of prevalence and GPS and were fitted to the reported results using linear approximations to the distributions and using simulations of a liability-threshold model. It was impossible to produce a compatible model which produced an AUC as high as 0.81 and the most plausible estimate was that the true AUC was only 0.65. The reported distributions in cases and controls largely overlap so that they are not compatible with an AUC of 0.7 or more. The true AUC of the GPS for these diseases is much lower than claimed. Furthermore, the literature robustly demonstrates that true CAD risk associated with monogenic mutations is much higher than the threefold increase which was claimed. Together, these findings cast doubt on the clinical utility of the GPS.


Author(s):  
David Curtis

A recent study claimed that genome-wide polygenic scores (GPSs) for five common diseases could identify individuals with risk equivalent to monogenic mutations. Receiver operator curve analyses were reported to have areas under the curve (AUCs) ranging from 0.63 for inflammatory bowel disease up to 0.81 for coronary artery disease (CAD) but these models also included age and sex, themselves strong predictors of risk. The GPS for CAD identified 8% of the population at threefold increased risk, which it was claimed was comparable to the excess risk from monogenic mutations. In the present study attempts were made to model the distribution of the GPS for CAD to match the information provided. These models were based on the reported distribution of prevalence by centile of GPS and on the distribution of GPS in controls and cases and were fitted to the reported results using linear approximations to the distributions and using simulations of a liability-threshold model. It was impossible to produce a compatible model in which the GPS produced an AUC as high as 0.81 and the most plausible estimate was that the true AUC was only 0.65. The reported distributions of the GPS in cases and controls overlap so much that they are not compatible with an AUC of 0.7 or higher. The AUC of the GPS for these diseases is modest. Furthermore, the literature robustly demonstrates that true CAD risk associated with monogenic mutations is much higher than the threefold increase which is predicted by the GPS. Together, these findings cast doubt on the clinical utility of the GPS.


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