Research Scholar, Anna University, Chennai, Tamilnadu, India.
Department of Computer Science and Engineering, Bannari Amman Institute of Technology, Sathyamangalam, Erode, India.
J Med Syst. 2019 Feb 13;43(3):76. doi: 10.1007/s10916-018-1147-7.
The recent studies in Morphometric Magnetic Resonance Imaging (MRI) have investigated the abnormalities in the brain volume that have been associated diagnosing of the Alzheimer's Disease (AD) by making use of the Voxel-Based Morphometry (VBM). The system permits the evaluation of the volumes of grey matter in subjects such as the AD or the conditions related to it and are compared in an automated manner with the healthy controls in the entire brain. The article also reviews the findings of the VBM that are related to various stages of the AD and also its prodrome known as the Mild Cognitive Impairment (MCI). For this work, the Ada Boost classifier has been proposed to be a good selector of feature that brings down the classification error's upper bound. A Principal Component Analysis (PCA) had been employed for the dimensionality reduction and for improving efficiency. The PCA is a powerful, as well as a reliable, tool in data analysis. Calculating fitness scores will be an independent process. For this reason, the Genetic Algorithm (GA) along with a greedy search may be computed easily along with some high-performance systems of computing. The primary goal of this work was to identify better collections or permutations of the classifiers that are weak to build stronger ones. The results of the experiment prove that the GAs is one more alternative technique used for boosting the permutation of weak classifiers identified in Ada Boost which can produce some better solutions compared to the classical Ada Boost.
最近的形态磁共振成像(MRI)研究利用体素形态计量学(VBM)调查了与阿尔茨海默病(AD)诊断相关的脑容量异常。该系统允许评估 AD 或与之相关的条件等受试者的灰质体积,并以自动方式与整个大脑中的健康对照进行比较。本文还回顾了与 AD 各个阶段及其前驱期即轻度认知障碍(MCI)相关的 VBM 研究结果。为此,AdaBoost 分类器已被提议作为特征的良好选择器,可降低分类错误的上限。主成分分析(PCA)已用于降维和提高效率。PCA 是数据分析中一种强大而可靠的工具。计算适应度评分将是一个独立的过程。出于这个原因,遗传算法(GA)结合贪婪搜索可以很容易地与一些高性能计算系统一起计算。这项工作的主要目标是识别更弱的分类器的更好集合或排列,以构建更强的分类器。实验结果证明,GA 是用于增强 AdaBoost 中识别的弱分类器排列的另一种替代技术,与经典的 AdaBoost 相比,它可以产生一些更好的解决方案。