Deep Ensemble of Classifiers for Alzheimer’s Disease Detection with Optimal Feature Set

Pub Date : 2023-09-25 DOI:10.1142/s0219467825500329
R. S. Rajasree, S. Brintha Rajakumari
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Abstract

Machine learning (ML) and deep learning (DL) techniques can considerably enhance the process of making a precise diagnosis of Alzheimer’s disease (AD). Recently, DL techniques have had considerable success in processing medical data. They still have drawbacks, like large data requirements and a protracted training phase. With this concern, we have developed a novel strategy with the four stages. In the initial stage, the input data is subjected to data imbalance processing, which is crucial for enhancing the accuracy of disease detection. Subsequently, entropy-based, correlation-based, and improved mutual information-based features will be extracted from these pre-processed data. However, the curse of dimensionality will be a serious issue in this work, and hence we have sorted it out via optimization strategy. Particularly, the tunicate updated golden eagle optimization (TUGEO) algorithm is proposed to pick out the optimal features from the extracted features. Finally, the ensemble classifier, which integrates models like CNN, DBN, and improved RNN is modeled to diagnose the diseases by training the selected optimal features from the previous stage. The suggested model achieves the maximum F-measure as 97.67, which is better than the extant methods like [Formula: see text], [Formula: see text], [Formula: see text], [Formula: see text], and [Formula: see text], respectively. The suggested TUGEO-based AD detection is then compared to the traditional models like various performance matrices including accuracy, sensitivity, specificity, and precision.
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基于最优特征集的阿尔茨海默病深度集成分类器检测
机器学习(ML)和深度学习(DL)技术可以大大提高对阿尔茨海默病(AD)的精确诊断过程。最近,深度学习技术在处理医疗数据方面取得了相当大的成功。它们仍然有缺点,比如需要大量的数据和漫长的训练阶段。考虑到这一点,我们制定了一个新的四个阶段的战略。在初始阶段,对输入数据进行数据不平衡处理,这对提高疾病检测的准确性至关重要。随后,从这些预处理数据中提取基于熵、基于关联和改进的互信息特征。然而,维数的诅咒在这项工作中将是一个严重的问题,因此我们通过优化策略对其进行了整理。特别地,提出了被囊更新金鹰优化算法(TUGEO),从提取的特征中挑选出最优特征。最后,对集成了CNN、DBN和改进RNN等模型的集成分类器进行建模,通过训练从前一阶段选出的最优特征来诊断疾病。该模型的最大f值为97.67,优于现有的[公式:见文]、[公式:见文]、[公式:见文]、[公式:见文]、[公式:见文]、[公式:见文]等方法。然后将建议的基于tugeo的AD检测与传统模型(如各种性能矩阵,包括准确性、灵敏度、特异性和精密度)进行比较。
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