Department of Medical Imaging and Radiological Science, I-Shou University, No. 8, Yida Road., Jiao-su Village Yan-chao District, Kaohsiung City 82445, Taiwan.
Department of Anesthesiology, E-DA Cancer Hospital, I-Shou University, No.1, Yida Road, Jiao-su Village, Yan-chao District, Kaohsiung City 82445, Taiwan.
Molecules. 2020 Oct 19;25(20):4792. doi: 10.3390/molecules25204792.
Single photon emission computed tomography (SPECT) has been employed to detect Parkinson's disease (PD). However, analysis of the SPECT PD images was mostly based on the region of interest (ROI) approach. Due to limited size of the ROI, especially in the multi-stage classification of PD, this study utilizes deep learning methods to establish a multiple stages classification model of PD. In the retrospective study, the 99mTc-TRODAT-1 was used for brain SPECT imaging. A total of 202 cases were collected, and five slices were selected for analysis from each subject. The total number of images was thus 1010. According to the Hoehn and Yahr Scale standards, all the cases were divided into healthy, early, middle, late four stages, and HYS I~V six stages. Deep learning is compared with five convolutional neural networks (CNNs). The input images included grayscale and pseudo color of two types. The training and validation sets were 70% and 30%. The accuracy, recall, precision, F-score, and Kappa values were used to evaluate the models' performance. The best accuracy of the models based on grayscale and color images in four and six stages were 0.83 (AlexNet), 0.85 (VGG), 0.78 (DenseNet) and 0.78 (DenseNet).
单光子发射计算机断层扫描(SPECT)已被用于检测帕金森病(PD)。然而,SPECT PD 图像的分析主要基于感兴趣区域(ROI)方法。由于 ROI 的大小有限,特别是在 PD 的多阶段分类中,本研究利用深度学习方法建立了 PD 的多阶段分类模型。在回顾性研究中,使用 99mTc-TRODAT-1 进行脑 SPECT 成像。共收集了 202 例病例,每位患者选择 5 个切片进行分析,因此总共分析了 1010 张图像。根据 Hoehn 和 Yahr 量表标准,所有病例分为健康、早期、中期、晚期四个阶段和 HYS I~V 六个阶段。将深度学习与五个卷积神经网络(CNN)进行了比较。输入图像包括灰度和伪彩色两种类型。训练集和验证集分别为 70%和 30%。使用准确性、召回率、精度、F 分数和 Kappa 值来评估模型的性能。基于灰度和彩色图像的模型在四阶段和六阶段的最佳准确性分别为 0.83(AlexNet)、0.85(VGG)、0.78(DenseNet)和 0.78(DenseNet)。