Department of Computer Technology, 29817Anna University, Chennai, India.
Department of Computer Science and Engineering, 164007Sri Venkateswara College of Engineering, Sriperumbudur, India.
Health Informatics J. 2022 Jan-Mar;28(1):14604582221082868. doi: 10.1177/14604582221082868.
Alzheimer's disease (AD) is one of the most common forms of dementia contributing to more than 70% of the cases. The factors accounting for the cause and progression of neurodegenerative diseases like AD are primarily genetic, in addition to life style and environmental factors. Early and accurate diagnoses of AD empower practitioners to take timely clinical decisions and preventive actions. This being the motivation, the work proposes a novel pattern matching and scoring method on genetic material towards devising an effective classifier. We propose a distinctive disease causing gene sequence pattern identification using suffix trees as a base detection model with an accuracy of 91.5% in linear time complexity. A scoring mechanism is implemented to assign scores to genes based on the severity of the disease causing and disease resistant Single Nucleotide Polymorphisms associated with the genes. These scores are then used as a remarkable feature in the gradient boosted decision tree classifier to enhance the classification of AD versus healthy control. The efficiency of the proposed gene powered EGBDT classifier is evaluated on ADNI benchmark data set with the prediction accuracy of 94.16% and is found to be efficient compared to the recent works in the literature.
阿尔茨海默病(AD)是最常见的痴呆症形式之一,占病例的 70%以上。除了生活方式和环境因素外,导致神经退行性疾病(如 AD)的因素主要是遗传因素。对 AD 的早期和准确诊断使医生能够及时做出临床决策和采取预防措施。正是出于这个动机,本研究提出了一种新颖的基于遗传物质的模式匹配和评分方法,以设计有效的分类器。我们提出了一种使用后缀树作为基础检测模型的独特的致病基因序列模式识别方法,其线性时间复杂度的准确率为 91.5%。我们实施了一种评分机制,根据与基因相关的致病和抗疾病的单核苷酸多态性的严重程度,为基因分配分数。然后,这些分数将作为梯度提升决策树分类器中的一个显著特征,以增强 AD 与健康对照组的分类。在所提出的基于基因的 EGBDT 分类器的效率评估中,我们使用 ADNI 基准数据集,预测准确率为 94.16%,与文献中的最新研究相比,发现该分类器效率更高。