Department of Information Technology, College of Informatics, University of Gondar, Gondar, Ethiopia.
Sci Rep. 2024 Jun 20;14(1):14196. doi: 10.1038/s41598-024-61452-1.
Alzheimer disease (AD) is among the most chronic neurodegenerative diseases that threaten global public health. The prevalence of Alzheimer disease and consequently the increased risk of spread all over the world pose a vital threat to human safekeeping. Early diagnosis of AD is a suitable action for timely intervention and medication, which may increase the prognosis and quality of life for affected individuals. Quantum computing provides a more efficient model for different disease classification tasks than classical machine learning approaches. The full potential of quantum computing is not applied to Alzheimer's disease classification tasks as expected. In this study, we proposed an ensemble deep learning model based on quantum machine learning classifiers to classify Alzheimer's disease. The Alzheimer's disease Neuroimaging Initiative I and Alzheimer's disease Neuroimaging Initiative II datasets are merged for the AD disease classification. We combined important features extracted based on the customized version of VGG16 and ResNet50 models from the merged images then feed these features to the Quantum Machine Learning classifier to classify them as non-demented, mild demented, moderate demented, and very mild demented. We evaluate the performance of our model by using six metrics; accuracy, the area under the curve, F1-score, precision, and recall. The result validates that the proposed model outperforms several state-of-the-art methods for detecting Alzheimer's disease by registering an accuracy of 99.89 and 98.37 F1-score.
阿尔茨海默病(AD)是威胁全球公共健康的最常见的神经退行性疾病之一。AD 的患病率以及随之而来的在全球范围内的传播风险,对人类的安全构成了重大威胁。AD 的早期诊断是及时干预和用药的合适措施,这可能会提高患者的预后和生活质量。与经典机器学习方法相比,量子计算为不同的疾病分类任务提供了更有效的模型。然而,量子计算的全部潜力并没有像预期的那样应用于 AD 分类任务。在这项研究中,我们提出了一种基于量子机器学习分类器的集成深度学习模型,用于 AD 的分类。我们合并了 ADNI I 和 ADNI II 数据集,用于 AD 疾病的分类。我们结合了基于合并图像的自定义版 VGG16 和 ResNet50 模型提取的重要特征,然后将这些特征输入到量子机器学习分类器中,将其分类为非痴呆、轻度痴呆、中度痴呆和非常轻度痴呆。我们使用六个指标来评估我们的模型的性能:准确性、曲线下面积、F1 得分、精度和召回率。结果验证了我们的模型通过注册准确率 99.89%和 F1 得分 98.37%,优于几种最先进的 AD 检测方法。