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Automatic anatomy recognition in whole-body PET/CT images

机译:全身PET / CT图像中的自动解剖识别

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Purpose: Whole-body positron emission tomography/computed tomography (PET/CT) has become a standard method of imaging patients with various disease conditions, especially cancer. Body-wide accurate quantification of disease burden in PET/CT images is important for characterizing lesions, staging disease, prognosticating patient outcome, planning treatment, and evaluating disease response to therapeutic interventions. However, body-wide anatomy recognition in PET/CT is a critical first step for accurately and automatically quantifying disease body-wide, body-region-wise, and organwise. This latter process, however, has remained a challenge due to the lower quality of the anatomic information portrayed in the CT component of this imaging modality and the paucity of anatomic details in the PET component. In this paper, the authors demonstrate the adaptation of a recently developed automatic anatomy recognition (AAR) methodology [Udupa et al., "Body-wide hierarchical fuzzy modeling, recognition, and delineation of anatomy in medical images," Med. Image Anal. 18, 752-771 (2014)] to PET/CT images. Their goal was to test what level of object localization accuracy can be achieved on PET/CT compared to that achieved on diagnostic CT images.
机译:目的:全身正电子发射断层扫描/计算机断层扫描(PET / CT)已成为患有各种疾病病症的患者的标准方法,尤其是癌症。宠物/ CT图像中疾病负担的身体范围精确定量对于表征病变,分期疾病,预后患者结果,规划治疗和评估对治疗干预的疾病反应是重要的。然而,PET / CT中的身体宽解剖学识别是精确和自动地量化身体,身体区域和静止的关键第一步。然而,由于在该成像模型的CT组分中描绘的解剖学信息的质量较低以及PET组分中的解剖细节的缺乏率,因此后一种过程仍然是挑战。在本文中,作者展示了最近开发的自动解剖学识别(AAR)方法的适应[Udupa等,“医学图像中解剖学的身体分层模糊建模,识别和描绘,”Med。图像肛门。 18,752-771(2014)]到PET / CT图像。他们的目标是测试在诊断CT图像上实现的PET / CT可以实现对象本地化精度的级别。

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