Lu Jiaying, Clement Christoph, Hong Jimin, Wang Min, Li Xinyi, Cavinato Lara, Yen Tzu-Chen, Jiao Fangyang, Wu Ping, Wu Jianjun, Ge Jingjie, Sun Yimin, Brendel Matthias, Lopes Leonor, Rominger Axel, Wang Jian, Liu Fengtao, Zuo Chuantao, Guan Yihui, Zhao Qianhua, Shi Kuangyu
Department of Nuclear Medicine & PET Center & National Center for Neurological Disorders & National Clinical Research Center for Aging and Medicine, Huashan Hospital, Fudan University, Shanghai 200235, China.
Department of Nuclear Medicine, Inselspital, Bern University Hospital, University of Bern, 3010 Bern, Switzerland.
iScience. 2023 Jul 20;26(8):107426. doi: 10.1016/j.isci.2023.107426. eCollection 2023 Aug 18.
While F-florzolotau tau PET is an emerging biomarker for progressive supranuclear palsy (PSP), its interpretation has been hindered by a lack of consensus on visual reading and potential biases in conventional semi-quantitative analysis. As clinical manifestations and regions of elevated F-florzolotau binding are highly overlapping in PSP and the Parkinsonian type of multiple system atrophy (MSA-P), developing a reliable discriminative classifier for F-florzolotau PET is urgently needed. Herein, we developed a normalization-free deep-learning (NFDL) model for F-florzolotau PET, which achieved significantly higher accuracy for both PSP and MSA-P compared to semi-quantitative classifiers. Regions driving the NFDL classifier's decision were consistent with disease-specific topographies. NFDL-guided radiomic features correlated with clinical severity of PSP. This suggests that the NFDL model has the potential for early and accurate differentiation of atypical parkinsonism and that it can be applied in various scenarios due to not requiring subjective interpretation, MR-dependent, and reference-based preprocessing.
虽然F-氟代罗替高汀正电子发射断层扫描(PET)是进行性核上性麻痹(PSP)的一种新兴生物标志物,但其解读因视觉判读缺乏共识以及传统半定量分析中存在潜在偏差而受到阻碍。由于PSP与帕金森型多系统萎缩(MSA-P)的临床表现和F-氟代罗替高汀结合升高区域高度重叠,因此迫切需要开发一种可靠的F-氟代罗替高汀PET鉴别分类器。在此,我们开发了一种用于F-氟代罗替高汀PET的无归一化深度学习(NFDL)模型,与半定量分类器相比,该模型对PSP和MSA-P的准确率均显著更高。驱动NFDL分类器决策的区域与疾病特异性地形一致。NFDL引导的放射组学特征与PSP的临床严重程度相关。这表明NFDL模型具有早期准确区分非典型帕金森病的潜力,并且由于不需要主观解读、依赖磁共振成像以及基于参考的预处理,它可以应用于各种场景。