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Predicting Conversion Time from Mild Cognitive Impairment to Dementia with Interval-Censored Models

Yahui Zhang, Yulin Li, Shangchen Song, Zhigang Li, Minggen Lu, Guogen Shan

2024Journal of Alzheimer s Disease12 citationsDOIOpen Access PDF

Abstract

Background: Mild cognitive impairment (MCI) patients are at a high risk of developing Alzheimer's disease and related dementias (ADRD) at an estimated annual rate above 10%. It is clinically and practically important to accurately predict MCI-to-dementia conversion time. Objective: It is clinically and practically important to accurately predict MCI-to-dementia conversion time by using easily available clinical data. Methods: The dementia diagnosis often falls between two clinical visits, and such survival outcome is known as interval-censored data. We utilized the semi-parametric model and the random forest model for interval-censored data in conjunction with a variable selection approach to select important measures for predicting the conversion time from MCI to dementia. Two large AD cohort data sets were used to build, validate, and test the predictive model. Results: We found that the semi-parametric model can improve the prediction of the conversion time for patients with MCI-to-dementia conversion, and it also has good predictive performance for all patients. Conclusions: Interval-censored data should be analyzed by using the models that were developed for interval- censored data to improve the model performance.

Topics & Concepts

DementiaCognitive impairmentInterval (graph theory)CognitionPsychologyMedicineCognitive psychologyPsychiatryMathematicsDiseaseInternal medicineCombinatoricsDementia and Cognitive Impairment ResearchMachine Learning in HealthcareStatistical Methods and Bayesian Inference
Predicting Conversion Time from Mild Cognitive Impairment to Dementia with Interval-Censored Models | Litcius