Department of Computer Engineering, Jeju National University, Jeju 63243, Korea.
Department of Computer Engineering, Major of Electronic Engineering, Institute of Information Science & Technology, Jeju National University, Jeju 63243, Korea.
Sensors (Basel). 2022 Oct 9;22(19):7661. doi: 10.3390/s22197661.
Alzheimer's disease is dementia that impairs one's thinking, behavior, and memory. It starts as a moderate condition affecting areas of the brain that make it challenging to retain recently learned information, causes mood swings, and causes confusion regarding occasions, times, and locations. The most prevalent type of dementia, called Alzheimer's disease (AD), causes memory-related problems in patients. A precise medical diagnosis that correctly classifies AD patients results in better treatment. Currently, the most commonly used classification techniques extract features from longitudinal MRI data before creating a single classifier that performs classification. However, it is difficult to train a reliable classifier to achieve acceptable classification performance due to limited sample size and noise in longitudinal MRI data. Instead of creating a single classifier, we propose an ensemble voting method that generates multiple individual classifier predictions and then combines them to develop a more accurate and reliable classifier. The ensemble voting classifier model performs better in the Open Access Series of Imaging Studies (OASIS) dataset for older adults than existing methods in important assessment criteria such as accuracy, sensitivity, specificity, and AUC. For the binary classification of with dementia and no dementia, an accuracy of 96.4% and an AUC of 97.2% is attained.
阿尔茨海默病是一种会损害思维、行为和记忆的痴呆症。它始于一种中度的状况,影响大脑中使人们难以记住最近学到的信息的区域,导致情绪波动,并导致对场合、时间和地点的困惑。最常见的痴呆症类型,称为阿尔茨海默病(AD),会导致患者出现与记忆相关的问题。准确的医学诊断正确地对 AD 患者进行分类,会带来更好的治疗效果。目前,最常用的分类技术是在创建执行分类的单个分类器之前,从纵向 MRI 数据中提取特征。然而,由于纵向 MRI 数据中的样本量有限和噪声,很难训练出可靠的分类器来实现可接受的分类性能。我们提出了一种集成投票方法,而不是创建单个分类器,该方法生成多个单独的分类器预测,然后将它们组合起来,以开发更准确和可靠的分类器。与现有的方法相比,在老年人的开放获取成像研究系列(OASIS)数据集上,集成投票分类器模型在准确性、敏感性、特异性和 AUC 等重要评估标准方面表现更好。对于有痴呆症和无痴呆症的二进制分类,达到了 96.4%的准确性和 97.2%的 AUC。