For early diagnosis of Alzheimer’s disease, we created and evaluated a prediction method of amyloid β deposition based on multiple regression analysis of quantitative susceptibility mapping. A multiple regression model to predict standard uptake values (SUVs) of amyloid PET was constructed based on susceptibilities in 47 brain regions with the constraint Aβ deposition and susceptibility being positively correlated. The correlation coefficients between true and predicted SUVs were increased by incorporating the constraint, and the area under the receiver operating characteristics curve to predict Aβ positivity was 70%. The results suggest that the model could predict Aβ positivity at moderate accuracy.
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