IEEE/ACM Trans Comput Biol Bioinform. 2024 Jul-Aug;21(4):573-581. doi: 10.1109/TCBB.2022.3219032. Epub 2024 Aug 8.
Alzheimer's is progressive and irreversible type of dementia, which causes degeneration and death of cells and their connections in the brain. AD worsens over time and greatly impacts patients' life and affects their important mental functions, including thinking, the ability to carry on a conversation, and judgment and response to environment. Clinically, there is no single test to effectively diagnose Alzheimer disease. However, computed tomography (CT) and magnetic resonance imaging (MRI) scans can be used to help in AD diagnosis by observing critical changes in the size of different brain areas, typically parietal and temporal lobes areas. In this work, an integrative mulitresolutional ensemble deep learning-based framework is proposed to achieve better predictive performance for the diagnosis of Alzheimer disease. Unlike ResNet, DenseNet and their variants proposed pipeline utilizes PartialNet in a hierarchical design tailored to AD detection using brain MRIs. The advantage of the proposed analysis system is that PartialNet diversified the depth and deep supervision. Additionally, it also incorporates the properties of identity mappings which makes it powerful in better learning due to feature reuse. Besides, the proposed ensemble PartialNet is better in vanishing gradient, diminishing forward-flow with low number of parameters and better training time in comparison to its counter network. The proposed analysis pipeline has been tested and evaluated on benchmark ADNI dataset collected from 379 subjects patients. Quantitative validation of the obtained results documented our framework's capability, outperforming state-of-the-art learning approaches for both multi-and binary-class AD detection.
阿尔茨海默病是一种进行性和不可逆转的痴呆症,它会导致大脑细胞及其连接的退化和死亡。AD 会随着时间的推移而恶化,极大地影响患者的生活,并影响他们的重要精神功能,包括思考、对话能力、判断和对环境的反应。临床上,没有单一的测试可以有效地诊断阿尔茨海默病。然而,计算机断层扫描(CT)和磁共振成像(MRI)扫描可以通过观察不同大脑区域大小的关键变化来帮助 AD 的诊断,通常是顶叶和颞叶区域。在这项工作中,提出了一种集成的多分辨率集成深度学习框架,以实现对阿尔茨海默病诊断的更好预测性能。与 ResNet、DenseNet 及其变体提出的流水线不同,该流水线在分层设计中利用 PartialNet 来专门针对使用脑 MRI 进行 AD 检测。所提出的分析系统的优点是 PartialNet 多样化了深度和深度监督。此外,它还结合了恒等映射的特性,由于特征重用,使其在更好的学习中具有强大的功能。此外,与对照网络相比,所提出的集成 PartialNet 在消失梯度、向前流减少和参数较少方面表现更好,并且训练时间更短。所提出的分析流水线已经在来自 379 名患者的基准 ADNI 数据集上进行了测试和评估。获得的结果的定量验证记录了我们框架的能力,在多类和二类 AD 检测方面都优于最先进的学习方法。