Wu Yue, Jiang Jie-Hui, Chen Li, Lu Jia-Ying, Ge Jing-Jie, Liu Feng-Tao, Yu Jin-Tai, Lin Wei, Zuo Chuan-Tao, Wang Jian
Department of Shanghai Institute for Advanced Communication and Data Science, Shanghai University, Shanghai 200444, China.
Department of Medical Ultrasound, Huashan Hospital, Fudan University, Shanghai 200040, China.
Ann Transl Med. 2019 Dec;7(23):773. doi: 10.21037/atm.2019.11.26.
Parkinson's disease (PD) is an irreversible neurodegenerative disease. The diagnosis of PD based on neuroimaging is usually with low-level or deep learning features, which results in difficulties in achieving precision classification or interpreting the clinical significance. Herein, we aimed to extract high-order features by using radiomics approach and achieve acceptable diagnosis accuracy in PD.
In this retrospective multicohort study, we collected F-fluorodeoxyglucose positron emission tomography (F-FDG PET) images and clinical scale [the Unified Parkinson's Disease Rating Scale (UPDRS) and Hoehn & Yahr scale (H&Y)] from two cohorts. One cohort from Huashan Hospital had 91 normal controls (NC) and 91 PD patients (UPDRS: 22.7±11.7, H&Y: 1.8±0.8), and the other cohort from Wuxi 904 Hospital had 26 NC and 22 PD patients (UPDRS: 20.9±11.6, H&Y: 1.7±0.9). The Huashan cohort was used as the training and test sets by 5-fold cross-validation and the Wuxi cohort was used as another separate test set. After identifying regions of interests (ROIs) based on the atlas-based method, radiomic features were extracted and selected by using autocorrelation and fisher score algorithm. A support vector machine (SVM) was trained to classify PD and NC based on selected radiomic features. In the comparative experiment, we compared our method with the traditional voxel values method. To guarantee the robustness, above processes were repeated in 500 times.
Twenty-six brain ROIs were identified. Six thousand one hundred and ten radiomic features were extracted in total. Among them 30 features were remained after feature selection. The accuracies of the proposed method achieved 90.97%±4.66% and 88.08%±5.27% in Huashan and Wuxi test sets, respectively.
This study showed that radiomic features and SVM could be used to distinguish between PD and NC based on 18F-FDG PET images.
帕金森病(PD)是一种不可逆的神经退行性疾病。基于神经影像学对PD的诊断通常采用低层次或深度学习特征,这导致难以实现精确分类或解释其临床意义。在此,我们旨在通过使用放射组学方法提取高阶特征,并在PD中实现可接受的诊断准确性。
在这项回顾性多队列研究中,我们从两个队列中收集了氟代脱氧葡萄糖正电子发射断层扫描(F-FDG PET)图像和临床量表[统一帕金森病评定量表(UPDRS)和霍恩&亚尔分级量表(H&Y)]。来自华山医院的一个队列有91名正常对照(NC)和91名PD患者(UPDRS:22.7±11.7,H&Y:1.8±0.8),来自无锡904医院的另一个队列有26名NC和22名PD患者(UPDRS:20.9±11.6,H&Y:1.7±0.9)。华山队列通过5折交叉验证用作训练集和测试集,无锡队列用作另一个单独的测试集。基于图谱法确定感兴趣区域(ROI)后,使用自相关和Fisher评分算法提取并选择放射组学特征。训练支持向量机(SVM)基于选定的放射组学特征对PD和NC进行分类。在比较实验中,我们将我们的方法与传统的体素值方法进行了比较。为确保稳健性,上述过程重复500次。
确定了26个脑ROI。共提取了6110个放射组学特征。其中,特征选择后保留了30个特征。所提方法在华山和无锡测试集中的准确率分别达到90.97%±4.66%和88.08%±5.27%。
本研究表明,放射组学特征和SVM可用于基于18F-FDG PET图像区分PD和NC。