Department of Information Engineering, Università Politecnica delle Marche, Via Brecce Bianche 12, I-60131 Ancona, Italy.
Neurology Clinic, Department of Experimental and Clinical Medicine, Università Politecnica delle Marche, Torrette, I-60126 Ancona, Italy.
Sensors (Basel). 2024 Oct 19;24(20):6721. doi: 10.3390/s24206721.
Neurodegenerative diseases severely impact the life of millions of patients worldwide, and their occurrence is more and more increasing proportionally to longer life expectancy. Electroencephalography has become an important diagnostic tool for these diseases, due to its relatively simple procedure, but it requires analyzing a large number of data, often carrying a small fraction of informative content. For this reason, machine learning tools have gained a considerable relevance as an aid to classify potential signs of a specific disease, especially in its early stages, when treatments can be more effective. In this work, long short-term memory-based neural networks with different numbers of units were properly designed and trained after accurate data pre-processing, in order to perform a multi-class detection. To this end, a custom dataset of EEG recordings from subjects affected by five neurodegenerative diseases (Alzheimer's disease, frontotemporal dementia, dementia with Lewy bodies, progressive supranuclear palsy, and vascular dementia) was acquired. Experimental results show that an accuracy up to 98% was achieved with data belonging to different classes of disease, up to six including the control group, while not requiring particularly heavy computational resources.
神经退行性疾病严重影响着全球数以百万计的患者的生活,而且随着预期寿命的延长,其发病率呈比例上升。脑电图已成为这些疾病的重要诊断工具,因为其过程相对简单,但需要分析大量的数据,而这些数据通常只包含一小部分有价值的信息。出于这个原因,机器学习工具作为一种辅助手段来对特定疾病的潜在迹象进行分类,尤其是在疾病的早期阶段,因为那时治疗可能更有效,已经得到了相当大的关注。在这项工作中,在进行精确的数据预处理之后,我们设计并训练了基于长短时记忆的神经网络,以实现多类检测。为此,我们获得了一个来自受五种神经退行性疾病(阿尔茨海默病、额颞叶痴呆、路易体痴呆、进行性核上性麻痹和血管性痴呆)影响的受试者的脑电图记录的自定义数据集。实验结果表明,对于属于不同疾病类别的数据,最高可达 98%的准确率,包括对照组在内最高可达六类,同时不需要特别繁重的计算资源。