An Ensemble Classification Model to Predict Alzheimer’s Incidence as Multiple Classes

Radhika Raju P, Ananda Rao A
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Abstract

This study introduces an ensemble classification model designed to categorize Alzheimer’s disease (AD) into four distinct classes—mild dementia, no dementia, moderate dementia, and very mild dementia—using Magnetic Resonance Imaging (MRI). The proposed model entitled the Ensemble Classification Model to Predict Alzheimer's Incidence as Multiple Classes (PAIMC) that integrates a six-dimensional analysis of MR images, encompassing entropies, Fractal Dimensions, Gray Level Run Length Matrix (GLRLM), Gray Level Co-occurrence Matrix (GLCM), morphological features, and Local Binary Patterns. A four-fold multi-label cross-validation approach was employed on a benchmark dataset to evaluate the model's performance. Quantitative analysis reveals that PAIMC consistently achieves superior Decision Accuracy, F-Score, Specificity, Sensitivity Recall, and Precision metrics compared to existing state-of-the-art models. For instance, PAIMC's Decision Accuracy and Precision outperform the second-best model by a notable margin across all folds. The model also demonstrates a significant improvement in Sensitivity Recall and Specificity, reinforcing its efficacy in the multi-class classification of AD stages. A novel data diversity assessment measure was developed and utilized, further confirming the robustness of the PAIMC model. The results underscore the potential of PAIMC as a highly accurate tool for AD classification in clinical settings.
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预测阿尔茨海默氏症多类发病率的集合分类模型
本研究介绍了一种集合分类模型,旨在利用磁共振成像(MRI)将阿尔茨海默病(AD)分为四个不同的等级--轻度痴呆、无痴呆、中度痴呆和极轻度痴呆。所提出的模型名为 "预测阿尔茨海默氏症多类发病率的集合分类模型(PAIMC)",它整合了磁共振图像的六维分析,包括熵、分形维数、灰度符长矩阵(GLRLM)、灰度共现矩阵(GLCM)、形态特征和局部二元模式。在基准数据集上采用了四重多标签交叉验证方法来评估模型的性能。定量分析结果表明,与现有的先进模型相比,PAIMC 的判定准确率、F-Score、特异性、灵敏度、召回率和精确度指标都非常出色。例如,在所有折叠中,PAIMC 的决策准确度和精确度都明显优于排名第二的模型。该模型在灵敏度、召回率和特异性方面也有显著提高,加强了其在多类 AD 阶段分类中的功效。研究还开发并使用了一种新的数据多样性评估方法,进一步证实了 PAIMC 模型的稳健性。这些结果凸显了 PAIMC 作为一种高精度的 AD 分类工具在临床环境中的潜力。
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