Multimodal Data Integration for Early Alzheimer’s Detection Using Random Forest and Support Vector Machines

Muhammad Nadeem, Wei Zhang, Sarwat Aslam, Liaqat Ali, Abdul Majid
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Abstract

Alzheimer's is a very challenging brain disease to recognize, diagnose, and treat correctly when it appears in its earliest forms. The primary contribution of this research study is about machine learning models, techniques, and approaches. In contrast, Random Forest and Support Vector Machine (SVM) are particularly suitable for identifying and staging Alzheimer's disease stages using multimodal data sources. In this paper, the aim was to develop well-performing predictive models to help diagnose Alzheimer's disease at an early stage by combining neuroimaging data (MRI/PET images), imaging-based biomarkers, both structural and functional measures from MRI(P) /PET image analysis along with subject-specific demographics like age using clinical features in a probabilistic fashion obtained from the Alzheimer's Disease Neuro-Imaging Initiative (ADNI) database. The methodology focuses on data pre-processing, feature selection, and model building using supervised learning algorithms. The accuracy of the Random Forest model is 78%, having a high performance in classifying some classes while showing different marks of performances across other courses. SVM reached an accuracy of 61%, or the model's performance is good in some classes and not reliable to identify samples from the others. The findings of this study underscore the capabilities and limits of these machine learning models in identifying Alzheimer’s disease and highlight the importance of feature engineering, data pre-processing, and model tuning to increase performance and correct class unevenness and misclassification.
利用随机森林和支持向量机进行多模态数据整合以早期检测阿尔茨海默氏症
阿尔茨海默氏症是一种极具挑战性的脑部疾病,当它在早期出现时,要正确识别、诊断和治疗是非常困难的。这项研究的主要贡献在于机器学习模型、技术和方法。相比之下,随机森林和支持向量机(SVM)尤其适用于利用多模态数据源识别和分期阿尔茨海默病。本文旨在开发性能良好的预测模型,通过结合神经成像数据(MRI/PET 图像)、基于成像的生物标记物(MRI(P) /PET 图像分析中的结构和功能测量指标)以及特定受试者的人口统计学特征(如年龄),利用从阿尔茨海默病神经成像倡议(ADNI)数据库中获取的临床特征,以概率方式帮助早期诊断阿尔茨海默病。该方法侧重于数据预处理、特征选择和使用监督学习算法建立模型。随机森林模型的准确率为 78%,在对某些类别进行分类时表现出色,而在对其他类别进行分类时则表现不一。SVM 的准确率为 61%,或者说该模型在某些类别中表现良好,但在识别其他类别的样本时并不可靠。本研究的结果凸显了这些机器学习模型在识别阿尔茨海默病方面的能力和局限性,并强调了特征工程、数据预处理和模型调整对于提高性能、纠正类别不均和分类错误的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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