Attention-driven hybrid deep learning and SVM model for early Alzheimer's diagnosis using neuroimaging fusion.

IF 3.8 3区 医学 Q2 MEDICAL INFORMATICS
Arjun Kidavunil Paduvilan, Godlin Atlas Lawrence Livingston, Sampath Kumar Kuppuchamy, Rajesh Kumar Dhanaraj, Muthuvel Subramanian, Amal Al-Rasheed, Masresha Getahun, Ben Othman Soufiene
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引用次数: 0

Abstract

Alzheimer's Disease (AD) poses a significant global health challenge, necessitating early and accurate diagnosis to enable timely interventions. AD is a progressive neurodegenerative disorder that affects millions worldwide and is one of the leading causes of cognitive impairment in older adults. Early diagnosis is critical for enabling effective treatment strategies, slowing disease progression, and improving the quality of life for patients. Existing diagnostic methods often struggle with limited sensitivity, overfitting, and reduced reliability due to inadequate feature extraction, imbalanced datasets, and suboptimal model architectures. This study addresses these gaps by introducing an innovative methodology that combines SVM with Deep Learning (DL) to improve the classification performance of AD. Deep learning models extract high-level imaging features which are then concatenated with SVM kernels in a late-fusion ensemble. This hybrid design leverages deep representations for pattern recognition and SVM's robustness on small sample sets. This study provides a necessary tool for early-stage identification of possible cases, so enhancing the management and treatment options. This is attained by precisely classifying the disease from neuroimaging data. The approach integrates advanced data pre-processing, dynamic feature optimization, and attention-driven learning mechanisms to enhance interpretability and robustness. The research leverages a dataset of MRI and PET imaging, integrating novel fusion techniques to extract key biomarkers indicative of cognitive decline. Unlike prior approaches, this method effectively mitigates the challenges of data sparsity and dimensionality reduction while improving generalization across diverse datasets. Comparative analysis highlights a 15% improvement in accuracy, a 12% reduction in false positives, and a 10% increase in F1-score against state-of-the-art models such as HNC and MFNNC. The proposed method significantly outperforms existing techniques across metrics like accuracy, sensitivity, specificity, and computational efficiency, achieving an overall accuracy of 98.5%.

基于神经影像学融合的注意驱动混合深度学习和SVM模型用于阿尔茨海默病早期诊断。
阿尔茨海默病(AD)是一项重大的全球健康挑战,需要及早准确诊断,以便及时采取干预措施。阿尔茨海默病是一种进行性神经退行性疾病,影响着全世界数百万人,是导致老年人认知障碍的主要原因之一。早期诊断对于制定有效的治疗策略、减缓疾病进展和改善患者的生活质量至关重要。由于特征提取不足、数据集不平衡和次优模型架构,现有的诊断方法往往存在灵敏度有限、过拟合和可靠性降低的问题。本研究通过引入一种将支持向量机与深度学习(DL)相结合的创新方法来解决这些差距,以提高AD的分类性能。深度学习模型提取高级成像特征,然后在后期融合集成中与支持向量机核连接。这种混合设计利用了模式识别的深度表示和支持向量机在小样本集上的鲁棒性。本研究为早期识别可能的病例提供了必要的工具,从而提高了管理和治疗方案。这是通过从神经影像学数据中精确地对疾病进行分类来实现的。该方法集成了先进的数据预处理、动态特征优化和注意驱动学习机制,以增强可解释性和鲁棒性。该研究利用MRI和PET成像数据集,整合新的融合技术来提取表明认知能力下降的关键生物标志物。与先前的方法不同,该方法有效地缓解了数据稀疏性和降维的挑战,同时提高了不同数据集的泛化。对比分析表明,与HNC和MFNNC等最先进的模型相比,准确率提高了15%,误报率降低了12%,f1分数提高了10%。该方法在准确性、灵敏度、特异性和计算效率等指标上明显优于现有技术,总体准确率达到98.5%。
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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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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