Mild Cognitive Impairment detection based on EEG and HRV data

被引:6
|
作者
Boudaya, Amal [1 ]
Chaabene, Siwar [1 ]
Bouaziz, Bassem [1 ]
Hoekelmann, Anita [2 ]
Chaari, Lotfi [3 ]
机构
[1] Univ Sfax, Multimedia InfoRmat Syst & Adv Comp Lab MIRACL, Sfax 3021, Tunisia
[2] Otto Von Guericke Univ, Inst Sport Sci, D-39106 Magdeburg, Germany
[3] Univ Toulouse, IRIT ENSEEIHT, INP, Toulouse, France
关键词
EEG; HRV; MCI detection; Machine learning; Cognitive CERAD task; ALZHEIMERS-DISEASE; LEARNING-MODEL; TOTAL SCORES; DEMENTIA; CERAD; MCI; CLASSIFICATION; PERFORMANCE; PROGRESSION; BIOMARKERS;
D O I
10.1016/j.dsp.2024.104399
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Brain volume decrease is usually connected to neurodegeneration and aging. In this environment, an important percentage of elderly persons suffer from mild cognitive impairment (MCI), a kind of dementia that can lead to Alzheimer's disease (AD). Since the symptoms of cognitive impairment are scarcely discernible, developing a safe and effective method for early MCI detection has emerged as an important challenge. According to this regard, numerous cognitive training tests can be targeted to help aging people retain a good quality of life, especially in the case of fragility disorders. A Consortium to Establish a Registry for Alzheimer's Disease (CERAD) task was initially created to detect the early stages of AD. This task specifically targets various tests related to specific cognitive domains. However, it has since developed into a popular diagnostic tool for many kinds of dementia, such as MCI. Several low-cost equipment, such as electroencephalography (EEG) and heart rate variability (HRV), may be useful for predicting MCI. On the other side, various machine learning (ML) models can be employed to extract/analyze relevant features from biomedical and physiological signals, especially in the context of anomaly detection and classification. To this regard, we developed a new method based on ML models to categorize MCI and healthy control (HC) patients during the CERAD task using EEG and HRV multimodal data. Our dataset includes 15 subjects who were randomly assigned to training and testing groups of 7 HC and 8 MCI, respectively. Our raw EEG and HRV data are analyzed to extract time, frequency, and non-linear features. A scaling step is employed to reduce the significant disparity between features. For the classification task, five ML models are evaluated, including support vector machine (SVM), k -nearest neighbors (KNN), decision tree (DT), random forest (RF), and gradient boosting (GB). To enhance accuracy, a hybrid ML model with a voting system is developed, combining the top ML models with the highest accuracy rates. A comparison step is performed between the use of ML and hybrid ML models. The experimental findings demonstrated the efficacy of our proposed technique, which included a hybrid ML model. An average accuracy of 93.86%, a sensitivity of 93.87%, and a specificity of 93.53% are achieved. The obtained results allow one to conclude that the first CERAD test plays a prominent role as a novel biomarker with an ultra -short duration for early MCI identification through the combination of EEG and HRV signals.
引用
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页数:12
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