Title:Extended Application of Digital Clock Drawing Test in the Evaluation of
Alzheimer’s Disease Based on Artificial Intelligence and the Neural Basis
Volume: 18
Issue: 14
关键词:
阿尔茨海默病、认知领域、数字时钟绘图测试、脑萎缩、机器学习、痴呆。
摘要:
Introduction: This study aimed to build the supervised learning model to predict the
state of cognitive impairment, Alzheimer’s Disease (AD) and cognitive domains including memory,
language, action, and visuospatial based on Digital Clock Drawing Test (dCDT) precisely.
Methods: 207 normal controls, 242 Mild Cognitive Impairment (MCI) patients, 87 dementia patients,
including 53 AD patients, were selected from Shanghai Tongji Hospital. The electromagnetic
tablets were used to collect the trajectory points of dCDT. By combining dynamic process and
static results, different types of features were extracted, and the prediction models were built based
on the feature selection approaches and machine learning methods.
Results and Discussion: The optimal AUC of cognitive impairment’s screening, AD’s screening
and differentiation are 0.782, 0.919 and 0.818, respectively. In addition, the cognitive state of the
domains with the best prediction result based on the features of dCDT is action with the optimal
AUC 0.794, while the other three cognitive domains got the prediction results between
0.744-0.755.
Conclusion: By extracting dCDT features, cognitive impairment and AD patients can be identified
early. Through dCDT feature extraction, a prediction model of single cognitive domain damage
can be established.