Advancing Alzheimer's Disease Diagnosis Using VGG19 and XGBoost: A Neuroimaging-Based Method.

IF 1.9
Abdelmounim Boudi, Jingfei He, Isselmou Abd El Kader, Xiaotong Liu, Mohamed Mouhafid
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Abstract

Introduction: Alzheimer's disease (AD) is a progressive neurodegenerative disorder that currently affects over 55 million individuals worldwide. Conventional diagnostic approaches often rely on subjective clinical assessments and isolated biomarkers, limiting their accuracy and early-stage effectiveness. With the rising global burden of AD, there is an urgent need for objective, automated tools that enhance diagnostic precision using neuroimaging data.

Methods: This study proposes a novel diagnostic framework combining a fine-tuned VGG19 deep convolutional neural network with an eXtreme Gradient Boosting (XGBoost) classifier. The model was trained and validated on the OASIS MRI dataset (Dataset 2), which was manually balanced to ensure equitable class representation across the four AD stages. The VGG19 model was pre-trained on ImageNet and fine-tuned by unfreezing its last ten layers. Data augmentation strategies, including random rotation and zoom, were applied to improve generalization. Extracted features were classified using XGBoost, incorporating class weighting, early stopping, and adaptive learning. Model performance was evaluated using accuracy, precision, recall, F1-score, and ROC-AUC.

Results: The proposed VGG19-XGBoost model achieved a test accuracy of 99.6%, with an average precision of 1.00, a recall of 0.99, and an F1-score of 0.99 on the balanced OASIS dataset. ROC curves indicated high separability across AD stages, confirming strong discriminatory power and robustness in classification.

Discussion: The integration of deep feature extraction with ensemble learning demonstrated substantial improvement over conventional single-model approaches. The hybrid model effectively mitigated issues of class imbalance and overfitting, offering stable performance across all dementia stages. These findings suggest the method's practical viability for clinical decision support in early AD diagnosis.

Conclusion: This study presents a high-performing, automated diagnostic tool for Alzheimer's disease based on neuroimaging. The VGG19-XGBoost hybrid architecture demonstrates exceptional accuracy and robustness, underscoring its potential for real-world applications. Future work will focus on integrating multimodal data and validating the model on larger and more diverse populations to enhance clinical utility and generalizability.

利用VGG19和XGBoost推进阿尔茨海默病诊断:一种基于神经影像学的方法。
阿尔茨海默病(AD)是一种进行性神经退行性疾病,目前影响全球超过5500万人。传统的诊断方法往往依赖于主观的临床评估和孤立的生物标志物,限制了它们的准确性和早期有效性。随着全球阿尔茨海默病负担的增加,迫切需要客观、自动化的工具来提高使用神经影像学数据的诊断精度。方法:本研究提出了一种新的诊断框架,该框架结合了微调VGG19深度卷积神经网络和极端梯度增强(XGBoost)分类器。该模型在OASIS MRI数据集(数据集2)上进行了训练和验证,该数据集进行了手动平衡,以确保在四个AD阶段中公平的类别表示。VGG19模型在ImageNet上进行预训练,并通过解冻其最后10层进行微调。数据增强策略,包括随机旋转和缩放,以提高泛化。使用XGBoost对提取的特征进行分类,结合类加权、早期停止和自适应学习。使用准确性、精密度、召回率、f1分数和ROC-AUC来评估模型的性能。结果:提出的VGG19-XGBoost模型在平衡的OASIS数据集上的测试准确率为99.6%,平均精度为1.00,召回率为0.99,f1分数为0.99。ROC曲线显示不同AD分期的可分离性较高,证实了分类的强区分力和稳健性。讨论:深度特征提取与集成学习的集成比传统的单模型方法有了实质性的改进。混合模型有效地缓解了类别不平衡和过拟合的问题,在所有痴呆阶段提供稳定的性能。这些发现表明该方法在早期AD诊断的临床决策支持方面具有实际可行性。结论:本研究提出了一种基于神经影像学的高性能、自动化的阿尔茨海默病诊断工具。VGG19-XGBoost混合架构展示了卓越的准确性和稳健性,强调了其在实际应用中的潜力。未来的工作将集中于整合多模态数据,并在更大、更多样化的人群中验证模型,以提高临床实用性和推广能力。
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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