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Unsupervised supervoxel-based lung tumor segmentation across patient scans in hybrid PET/MRI

机译:杂交宠物/ MRI患者患者患者扫描的无监督基于Supervingel的肺肿瘤细分

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摘要

Tumor segmentation is a crucial but difficult task in treatment planning and follow-up of cancerous patients. The challenge of automating the tumor segmentation has recently received a lot of attention, but the potential of utilizing hybrid positron emission tomography (PET)/magnetic resonance imaging (MRI), a novel and promising imaging modality in oncology, is still under-explored. Recent approaches have either relied on manual user input and/or performed the segmentation patient-by-patient, whereas a fully unsupervised segmentation framework that exploits the available information from all patients is still lacking.We present an unsupervised across-patients supervoxel-based clustering framework for lung tumor segmentation in hybrid PET/MRI. The method consists of two steps: First, each patient is represented by a set of PET/MRI supervoxel-features. Then the data points from all patients are transformed and clustered on a population level into tumor and non-tumor supervoxels. The proposed framework is tested on the scans of 18 non-small cell lung cancer patients with a total of 19 tumors and evaluated with respect to manual delineations provided by clinicians. Experiments study the performance of several commonly used clustering algorithms within the framework and provide analysis of (i) the effect of tumor size, (ii) the segmentation errors, (iii) the benefit of across-patient clustering, and (iv) the noise robustness.The proposed framework detected 15 out of 19 tumors in an unsupervised manner. Moreover, performance increased considerably by segmenting across patients, with the mean dice score increasing from 0.169 +/- 0.295 (patient-by-patient) to 0.470 +/- 0.308 (across-patients). Results demonstrate that both spectral clustering and Manhattan hierarchical clustering have the potential to segment tumors in PET/MRI with a low number of missed tumors and a low number of false-positives, but that spectral clustering seems to be more robust to noise.
机译:肿瘤分割是治疗计划和癌症患者随访的关键而困难的任务。最近探讨了自动化肿瘤细分的挑战,但最近收到了很多关注,但利用杂种正电子发射断层摄影(PET)/磁共振成像(MRI),一种新颖和有前途的肿瘤中的成像模型。最近的方法既依赖于手动用户输入和/或执行分割患者患者,而仍然缺乏从所有患者那里利用所有患者的可用信息的完全无监督的分割框架。我们呈现了无监督的基于患者的基于Supervoxel的基于患者杂交宠物/ MRI中肺肿瘤分割的框架。该方法由两个步骤组成:首先,每个患者由一组PET / MRI超级素 - 特征表示。然后将所有患者的数据点转化并在人口水平上转化为肿瘤和非肿瘤超级素。拟议的框架在18名非小细胞肺癌患者的扫描中进行了测试,共19例肿瘤,并根据临床医生提供的手动划分评估。实验研究了框架内几种常用聚类算法的性能,并提供了(i)肿瘤大小的影响,(ii)分割误差,(iii)对患者聚类的益处,(iv)噪音鲁棒性。拟议的框架以无人监督的方式检测到19个肿瘤中的15个。此外,通过对患者进行分割的性能显着增加,平均骰子评分从0.169 +/- 0.295(患者患者)增加到0.470 +/- 0.308(过度患者)。结果表明,光谱聚类和曼哈顿分层聚类均具有宠物/ MRI中肿瘤的肿瘤,具有少量的错过的肿瘤和少量的假阳性,但光谱聚类似乎对噪声更加坚固。

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