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Lymph Node Gross Tumor Volume Detection and Segmentation via Distance-Based Gating Using 3D CT/PET Imaging in Radiotherapy

机译:淋巴结总肿瘤体积检测和通过在放射疗法中使用3D CT / PET成像通过距离的门控进行分割

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Finding, identifying and segmenting suspicious cancer metas-tasized lymph nodes from 3D multi-modality imaging is a clinical task of paramount importance. In radiotherapy, they are referred to as Lymph Node Gross Tumor Volume (GTV_(LN)). Determining and delineating the spread of GTV_(LN) is essential in denning the corresponding resection and irradiating regions for the downstream workflows of surgical resection and radiotherapy of various cancers. In this work, we propose an effective distance-based gating approach to simulate and simplify the high-level reasoning protocols conducted by radiation oncologists, in a divide-and-conquer manner. GTV_(LN) is divided into two subgroups of "tumor-proximal" and "tumor-distal", respectively, by means of binary or soft distance gating. This is motivated by the observation that each category can have distinct though overlapping distributions of appearance, size and other LN characteristics. A novel multi-branch detection-by-segmentation network is trained with each branch specializing on learning one GTV_(LN) category features, and outputs from multi-branch are fused in inference. The proposed method is evaluated on an in-house dataset of 141 esophageal cancer patients with both PET and CT imaging modalities. Our results validate significant improvements on the mean recall from 72.5% to 78.2%, as compared to previous state-of-the-art work. The highest achieved GTV_(LN) recall of 82.5% at 20% precision is clinically relevant and valuable since human observers tend to have low sensitivity (~80% for the most experienced radiation oncologists, as reported by literature [5]).
机译:从3D多模态成像中发现,识别和分割可疑癌症的淋巴结淋巴结是至关重要的临床任务。在放射疗法中,它们被称为淋巴结肿瘤肿瘤体积(GTV_(LN))。确定和描绘GTV_(LN)的扩散对于丹恩对外科切除和各种癌症放射治疗的下游工作流程的相应切除和照射区域至关重要。在这项工作中,我们提出了一种基于距离的基于距离的门控方法来模拟和简化辐射肿瘤学家进行的高级推理方案,以分行和征服方式。通过二元或软距离门控分别分别分为两个“肿瘤近端”和“肿瘤 - 远端”的亚组。这是通过观察到每个类别可以具有不同的观察,而是在外观,尺寸和其他LN特性的重叠分布中可以具有不同。使用专门研究一个GTV_(LN)类别特征的每个分支训练一种新的多分支检测逐分割网络,并且来自多分支的输出在推断中融合。该方法在宠物和CT成像方式的141名食管癌患者的内部数据集上进行评估。与以前的最先进的工作相比,我们的结果验证了从72.5%的平均召回到78.2%的重大改进。最高达到的GTV_(LN)召回的82.5%在20%的精度下是临床相关和有价值的,因为人类观察者往往具有低灵敏度(最有经验的放射肿瘤学家的〜80%,如文献[5]所报道的[5])。

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