Multi-modality Fluorodeoxyglucose (FDG) positron emission tomography / computed tomography (PET/CT) has been routinely used in the assessment of common cancers, such as lung cancer, lymphoma, and melanoma. This is mainly attributed to the fact that PET/CT combines the high sensitivity for tumor detection of PET and anatomical information from CT. In PET/CT image assessment, automatic tumor segmentation is an important step, and in recent years, deep learning based methods have become the state-of-the-art. Unfortunately, existing methods tend to over-segment the tumor regions and include regions such as the normal high uptake organs, inflammation, and other infections. In this study, we introduce a false positive reduction network to overcome this limitation. We firstly introduced a self-supervised pre-trained global segmentation module to coarsely delineate the candidate tumor regions using a self-supervised pre-trained encoder. The candidate tumor regions were then refined by removing false positives via a local refinement module. Our experiments with the MICCAI 2022 Automated Lesion Segmentation in Whole-Body FDG-PET/CT (AutoPET) challenge dataset showed that our method achieved a dice score of 0.9324 with the preliminary testing data and was ranked 1st place in dice on the leaderboard. Our method was also ranked in the top 7 methods on the final testing data, the final ranking will be announced during the 2022 MICCAI AutoPET workshop. Our code is available at: https://github.com/YigePeng/AutoPET_False_Positive_Reduction.
翻译:多模式的氟化二氧基糖(FDG)正方形离心机(PET/CT)在评估常见癌症(如肺癌、淋巴瘤、乳腺瘤、乳腺瘤等)时经常使用离心机(FDG)离心机(FDG)离心机排放断层法(PET/CT),这主要是因为PET/CT结合了肿瘤检测PET高敏感度和CT的解剖信息。在PET/CT图像评估中,自动肿瘤分解是一个重要步骤,近年来,深层次的基于学习的方法已成为最新工艺。不幸的是,现有的方法往往超过肿瘤区域的自动离心机(PET/CT),包括正常的高吸收器官、淋巴瘤和其他感染等区域。在本研究中,我们引入了一个虚假的正减少网络来克服这一限制。我们首先引入了一个自我监督的预训练全球分解模块,以便使用自我监控的7P级分解码来对候选肿瘤区域进行分解。然后,通过本地的精化模块删除假阳性脱色的根方法,在IMATA最后等级测试期间,我们AA级的一级数据测试了2022的升级方法。