Literature DB >> 32200771

Machine Learning Analysis of Digital Clock Drawing Test Performance for Differential Classification of Mild Cognitive Impairment Subtypes Versus Alzheimer's Disease.

Russell Binaco1, Nicholas Calzaretto1, Jacob Epifano1, Sean McGuire1, Muhammad Umer1, Sheina Emrani2, Victor Wasserman2, David J Libon2,3, Robi Polikar1.   

Abstract

OBJECTIVE: To determine how well machine learning algorithms can classify mild cognitive impairment (MCI) subtypes and Alzheimer's disease (AD) using features obtained from the digital Clock Drawing Test (dCDT).
METHODS: dCDT protocols were administered to 163 patients diagnosed with AD(n = 59), amnestic MCI (aMCI; n = 26), combined mixed/dysexecutive MCI (mixed/dys MCI; n = 43), and patients without MCI (non-MCI; n = 35) using standard clock drawing command and copy procedures, that is, draw the face of the clock, put in all of the numbers, and set the hands for "10 after 11." A digital pen and custom software recorded patient's drawings. Three hundred and fifty features were evaluated for maximum information/minimum redundancy. The best subset of features was used to train classification models to determine diagnostic accuracy.
RESULTS: Neural network employing information theoretic feature selection approaches achieved the best 2-group classification results with 10-fold cross validation accuracies at or above 83%, that is, AD versus non-MCI = 91.42%; AD versus aMCI = 91.49%; AD versus mixed/dys MCI = 84.05%; aMCI versus mixed/dys MCI = 84.11%; aMCI versus non-MCI = 83.44%; and mixed/dys MCI versus non-MCI = 85.42%. A follow-up two-group non-MCI versus all MCI patients analysis yielded comparable results (83.69%). Two-group classification analyses were achieved with 25-125 dCDT features depending on group classification. Three- and four-group analyses yielded lower but still promising levels of classification accuracy.
CONCLUSION: Early identification of emergent neurodegenerative illness is criterial for better disease management. Applying machine learning to standard neuropsychological tests promises to be an effective first line screening method for classification of non-MCI and MCI subtypes.

Entities:  

Keywords:  Clock drawing; Cognitive assessment; Machine learning; Mild cognitive impairment; The Digital Clock Drawing Test

Year:  2020        PMID: 32200771     DOI: 10.1017/S1355617720000144

Source DB:  PubMed          Journal:  J Int Neuropsychol Soc        ISSN: 1355-6177            Impact factor:   2.892


  7 in total

1.  Variational autoencoder provides proof of concept that compressing CDT to extremely low-dimensional space retains its ability of distinguishing dementia.

Authors:  Catherine Price; Patrick Tighe; Sabyasachi Bandyopadhyay; Catherine Dion; David J Libon; Parisa Rashidi
Journal:  Sci Rep       Date:  2022-05-14       Impact factor: 4.996

2.  Modeling Users' Cognitive Performance Using Digital Pen Features.

Authors:  Alexander Prange; Daniel Sonntag
Journal:  Front Artif Intell       Date:  2022-05-03

3.  Classifying Non-Dementia and Alzheimer's Disease/Vascular Dementia Patients Using Kinematic, Time-Based, and Visuospatial Parameters: The Digital Clock Drawing Test.

Authors:  Anis Davoudi; Catherine Dion; Shawna Amini; Patrick J Tighe; Catherine C Price; David J Libon; Parisa Rashidi
Journal:  J Alzheimers Dis       Date:  2021       Impact factor: 4.472

4.  Automated Evaluation of Conventional Clock-Drawing Test Using Deep Neural Network: Potential as a Mass Screening Tool to Detect Individuals With Cognitive Decline.

Authors:  Kenichiro Sato; Yoshiki Niimi; Tatsuo Mano; Atsushi Iwata; Takeshi Iwatsubo
Journal:  Front Neurol       Date:  2022-05-03       Impact factor: 4.003

Review 5.  Digital Cognitive Biomarker for Mild Cognitive Impairments and Dementia: A Systematic Review.

Authors:  Zihan Ding; Tsz-Lok Lee; Agnes S Chan
Journal:  J Clin Med       Date:  2022-07-19       Impact factor: 4.964

6.  An explainable self-attention deep neural network for detecting mild cognitive impairment using multi-input digital drawing tasks.

Authors:  Natthanan Ruengchaijatuporn; Itthi Chatnuntawech; Thiparat Chotibut; Chaipat Chunharas; Surat Teerapittayanon; Sira Sriswasdi; Sirawaj Itthipuripat; Solaphat Hemrungrojn; Prodpran Bunyabukkana; Aisawan Petchlorlian; Sedthapong Chunamchai
Journal:  Alzheimers Res Ther       Date:  2022-08-09       Impact factor: 8.823

7.  An Artificial Intelligence-Assisted Method for Dementia Detection Using Images from the Clock Drawing Test.

Authors:  Samad Amini; Lifu Zhang; Boran Hao; Aman Gupta; Mengting Song; Cody Karjadi; Honghuang Lin; Vijaya B Kolachalama; Rhoda Au; Ioannis Ch Paschalidis
Journal:  J Alzheimers Dis       Date:  2021       Impact factor: 4.160

  7 in total

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