Hachamnia Amir Hossein, Mehri Ali, Jamaati Maryam
Department of Physics, Faculty of Science, Babol Noshirvani University of Technology, Babol, Iran.
Department of Physics, Faculty of Science, Babol Noshirvani University of Technology, Babol, Iran.
J Neurosci Methods. 2025 Apr;416:110377. doi: 10.1016/j.jneumeth.2025.110377. Epub 2025 Jan 31.
Alzheimer's disease (AD) and frontotemporal dementia (FTD) are both progressive neurological disorders that affect the elderly. Distinguishing between individuals suffering from these two diseases in the early stages can be quite challenging, and due to their different treatments, it has become an important problem. Machine learning (ML) algorithms can be helpful in this matter due to their high ability to manage large data and deliver high-quality diagnostic results.
In this research, we integrate multiple ML algorithms into 10 ensemble learning techniques, utilizing 7 distinct features: 3 from the time domain and 4 from the frequency domain.
They are used to achieve a higher diagnostic accuracy level in binary and multiclass classification of samples from electroencephalography (EEG) signals of elderly patients with AD, FTD, and healthy age-matching controls (CN), during the eye resting state.
The best results in carrying out binary AD/CN, FTD/CN, and AD/FTD classifications with significant accuracy>95% have been obtained with the help of the light gradient boosting machine (LGBM) method applying the wavelet transform feature.
This combination (LGBM&wavelet) also displays the best performance in the AD/FTD/CN multiclass classification process with accuracy>93%.
阿尔茨海默病(AD)和额颞叶痴呆(FTD)都是影响老年人的进行性神经疾病。在早期阶段区分患有这两种疾病的个体颇具挑战性,并且由于它们的治疗方法不同,这已成为一个重要问题。机器学习(ML)算法因其处理大数据和提供高质量诊断结果的强大能力,在这方面可能会有所帮助。
在本研究中,我们将多种ML算法集成到10种集成学习技术中,利用7种不同的特征:3种来自时域,4种来自频域。
它们用于在老年AD患者、FTD患者以及年龄匹配的健康对照(CN)的脑电图(EEG)信号样本的眼静息状态下的二分类和多分类中实现更高的诊断准确率。
借助应用小波变换特征的轻梯度提升机(LGBM)方法,在进行二分类AD/CN、FTD/CN和AD/FTD分类时取得了最佳结果,显著准确率>95%。
这种组合(LGBM&小波)在AD/FTD/CN多分类过程中也表现出最佳性能,准确率>93%。