The Application of Intelligent Data Models for Dementia Classification.
Abstract: Background and Objective: Dementia is a broad term for a complex range of conditions
that affect the brain, such as Alzheimer?s disease (AD). Dementia affects a lot of people in the
elderly community, hence there is a huge demand to better understand this condition by using
cost effective and quick methods, such as neuropsychological tests, since pathological assessments
are invasive and demand expensive resources. One of the promising initiatives that deals with
dementia and Mild Cognitive Impairment (MCI) is the Alzheimer?s Disease Neuroimaging Initiative
(ADNI), which includes cognitive tests, such as Clinical Dementia Rating (CDR) scores. The aim
of this research is to investigate non-invasive dementia indicators, such as cognitive features, that
are typically diagnosed by clinical assessment within ADNI?s data to understand their effect on
dementia. Methods: To achieve the aim, machine learning techniques have been utilized to classify
patients into Cognitively Normal (CN), MCI, or having dementia, based on the sum of CDR scores
(CDR-SB) besides demographic variables. Particularly, the performance of Support Vector Machine
(SVM), K-nearest neighbors (KNN), Decision Trees (C4.5), Probabilistic Na?ve Bayes (NB), and Rule
Induction (RIPPER) is measured with respect to different evaluation measures, including specificity,
sensitivity, and harmonic mean (F-measure), among others, on a large number of cases and controls
from the ADNI dataset. Results: The results indicate competitive performance when classifying
subjects from the baseline selected variables using machine learning technology. Though we observed
fairly good results across all machine learning algorithms utilized, there was still variation in the
performance ability, indicating that some algorithms, such as NB and C4.5, are better suited to the
task of classifying dementia status based on our baseline data. Conclusions: Using cognitive tests,
such as CDR-SB scores, with demographic attributes to pinpoint to dementia using machine learning
can be seen a less invasive approach that could be good for clinical use to aid in the diagnosis of
dementia. This study gives an indication that a comprehensive assessment tool, such as CDR, may be
adequate in assessing and assigning a dementia class to patients, upon their visit, in order to speed
further clinical procedures.