Sequential whole-body 18F-Fluorodeoxyglucose (FDG) positron emission tomography (PET) scans are regarded as the imaging modality of choice for the assessment of treatment response in the lymphomas because they detect treatment response when there may not be changes on anatomical imaging. Any computerized analysis of lymphomas in whole-body PET requires automatic segmentation of the studies so that sites of disease can be quantitatively monitored over time. State-of-the-art PET image segmentation methods are based on convolutional neural networks (CNNs) given their ability to leverage annotated datasets to derive high-level features about the disease process. Such methods, however, focus on PET images from a single time-point and discard information from other scans or are targeted towards specific organs and cannot cater for the multiple structures in whole-body PET images. In this study, we propose a spatio-temporal 'dual-stream' neural network (ST-DSNN) to segment sequential whole-body PET scans. Our ST-DSNN learns and accumulates image features from the PET images done over time. The accumulated image features are used to enhance the organs / structures that are consistent over time to allow easier identification of sites of active lymphoma. Our results show that our method outperforms the state-of-the-art PET image segmentation methods.
翻译:18F- Fluodooxyglucose (FDG) 正方射线离心仪扫描(PET)被视为在淋巴瘤中评估治疗反应反应的成像选择模式,因为当解剖成像没有变化时,它们会检测治疗反应。对全体PET中淋巴瘤的任何计算机化分析都需要对研究进行自动分解,以便可以对病址进行长期定量监测。最先进的PET图像分解方法基于同级神经网络(CNN),因为它们有能力利用附加说明的数据集来获取有关淋巴瘤过程的高级特征。然而,这些方法侧重于单个时间点的 PET 图像,丢弃其他扫描中的信息,或针对特定器官,无法满足全体 PET 图像中多个结构。在这项研究中,我们建议用“双向流”神经网络(ST-DSNNN)到连续连续连续连续的 PET 部分断线路段图像扫描功能。我们SST-NDS 的系统图象学方法可以使我们连续的图像结构升级。