Litcius/Paper detail

Cognitive and MRI trajectories for prediction of Alzheimer’s disease

Samaneh Abolpour Mofrad, Astri J. Lundervold, Alexandra Vik, Alexander Selvikvåg Lundervold

2021Scientific Reports78 citationsDOIOpen Access PDF

Abstract

The concept of Mild Cognitive Impairment (MCI) is used to describe the early stages of Alzheimer's disease (AD), and identification and treatment before further decline is an important clinical task. We selected longitudinal data from the ADNI database to investigate how well normal function (HC, n= 134) vs. conversion to MCI (cMCI, n= 134) and stable MCI (sMCI, n=333) vs. conversion to AD (cAD, n= 333) could be predicted from cognitive tests, and whether the predictions improve by adding information from magnetic resonance imaging (MRI) examinations. Features representing trajectories of change in the selected cognitive and MRI measures were derived from mixed effects models and used to train ensemble machine learning models to classify the pairs of subgroups based on a subset of the data set. Evaluation in an independent test set showed that the predictions for HC vs. cMCI improved substantially when MRI features were added, with an increase in [Formula: see text]-score from 60 to 77%. The [Formula: see text]-scores for sMCI vs. cAD were 77% without and 78% with inclusion of MRI features. The results are in-line with findings showing that cognitive changes tend to manifest themselves several years after the Alzheimer's disease is well-established in the brain.

Topics & Concepts

CognitionMagnetic resonance imagingCognitive impairmentNeuroimagingAlzheimer's diseaseDiseaseMedicineCognitive declineCognitive testSet (abstract data type)PsychologyDementiaArtificial intelligenceAudiologyComputer scienceInternal medicineNeuroscienceRadiologyProgramming languageDementia and Cognitive Impairment ResearchMachine Learning in HealthcareFunctional Brain Connectivity Studies
Cognitive and MRI trajectories for prediction of Alzheimer’s disease | Litcius