Department of Epidemiology and Health Statistics, School of Public Health, Capital Medical University, You'anmenwai, Xitoutiao No.10, Beijing, P. R. China.
Beijing Municipal Key Laboratory of Clinical Epidemiology, Capital Medical University, Beijing, P. R. China.
Int J Neural Syst. 2020 Jun;30(6):2050032. doi: 10.1142/S012906572050032X.
In the context of neuro-pathological disorders, neuroimaging has been widely accepted as a clinical tool for diagnosing patients with Alzheimer's disease (AD) and mild cognitive impairment (MCI). The advanced deep learning method, a novel brain imaging technique, was applied in this study to evaluate its contribution to improving the diagnostic accuracy of AD. Three-dimensional convolutional neural networks (3D-CNNs) were applied with magnetic resonance imaging (MRI) to execute binary and ternary disease classification models. The dataset from the Alzheimer's disease neuroimaging initiative (ADNI) was used to compare the deep learning performances across 3D-CNN, 3D-CNN-support vector machine (SVM) and two-dimensional (2D)-CNN models. The outcomes of accuracy with ternary classification for 2D-CNN, 3D-CNN and 3D-CNN-SVM were [Formula: see text]%, [Formula: see text]% and [Formula: see text]% respectively. The 3D-CNN-SVM yielded a ternary classification accuracy of 93.71%, 96.82% and 96.73% for NC, MCI and AD diagnoses, respectively. Furthermore, 3D-CNN-SVM showed the best performance for binary classification. Our study indicated that 'NC versus MCI' showed accuracy, sensitivity and specificity of 98.90%, 98.90% and 98.80%; 'NC versus AD' showed accuracy, sensitivity and specificity of 99.10%, 99.80% and 98.40%; and 'MCI versus AD' showed accuracy, sensitivity and specificity of 89.40%, 86.70% and 84.00%, respectively. This study clearly demonstrates that 3D-CNN-SVM yields better performance with MRI compared to currently utilized deep learning methods. In addition, 3D-CNN-SVM proved to be efficient without having to manually perform any prior feature extraction and is totally independent of the variability of imaging protocols and scanners. This suggests that it can potentially be exploited by untrained operators and extended to virtual patient imaging data. Furthermore, owing to the safety, noninvasiveness and nonirradiative properties of the MRI modality, 3D-CNN-SMV may serve as an effective screening option for AD in the general population. This study holds value in distinguishing AD and MCI subjects from normal controls and to improve value-based care of patients in clinical practice.
在神经病理学障碍的背景下,神经影像学已被广泛接受为诊断阿尔茨海默病(AD)和轻度认知障碍(MCI)患者的临床工具。本研究应用先进的深度学习方法——一种新的脑成像技术,评估其对提高 AD 诊断准确性的贡献。使用磁共振成像(MRI)对三维卷积神经网络(3D-CNN)进行了二进制和三分类疾病分类模型的应用。该数据集来自阿尔茨海默病神经影像学倡议(ADNI),用于比较深度学习在 3D-CNN、3D-CNN-支持向量机(SVM)和二维(2D)-CNN 模型中的性能。二维(2D)-CNN、3D-CNN 和 3D-CNN-SVM 的三分类准确性结果分别为[Formula: see text]%、[Formula: see text]%和[Formula: see text]%。3D-CNN-SVM 对 NC、MCI 和 AD 诊断的三分类准确率分别为 93.71%、96.82%和 96.73%。此外,3D-CNN-SVM 对二进制分类的性能最佳。本研究表明,“NC 与 MCI”的准确率、灵敏度和特异性分别为 98.90%、98.90%和 98.80%;“NC 与 AD”的准确率、灵敏度和特异性分别为 99.10%、99.80%和 98.40%;“MCI 与 AD”的准确率、灵敏度和特异性分别为 89.40%、86.70%和 84.00%。本研究清楚地表明,与目前使用的深度学习方法相比,3D-CNN-SVM 可通过 MRI 获得更好的性能。此外,3D-CNN-SVM 无需手动执行任何预先的特征提取,效率高,且完全独立于成像协议和扫描仪的可变性。这表明它可以被未经训练的操作人员利用,并扩展到虚拟患者成像数据。此外,由于 MRI 模式的安全性、非侵入性和非放射性,3D-CNN-SMV 可作为一般人群中 AD 的有效筛查选项。本研究在区分 AD 和 MCI 患者与正常对照方面具有价值,并提高了临床实践中患者基于价值的护理水平。