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Automation of population-based recurrence map for PSMA-PET prostate cancer patients after prostatectomy

机译:PSMA-PET前列腺癌前列腺切除术中患者的群体复发图自动化

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Purpose Investigate and evaluate the accuracy of deep learning (DL)-based segmentation and deformable image registration (DIR) for the automatization of recurrence risk map atlas definition. Materials and methods Twelve patients with visible recurrence on 18F-DCFPyL PET/CT after prostatectomy were retrospectively analyzed. The bladder, rectum, iliac arteries and veins, and recurrence sites were manually delineated. A previously trained DL model for female pelvic anatomy was re-optimized for male to automatically segment the anatomical regions of interest (ROI). Inter-patient registration was investigated using 4 registration methods: rigid, B-Spline Plastimatch, intensity DIR, and a hybrid intensity-based DIR with varying number of controlling ROI. Performance of the methods were reported using contour-based metrics, determinant of the Jacobian, contour variability in term of volume and position, and probability of overlap with the template organs. Results Transfer learning of the DL model provided greater accuracy for the bladder and rectum than for new structures such as iliac arteries and veins with average Dice similarity coefficient ranges of 0.82-0.96 and 0.63-0.77, respectively. Compared to intensity only DIR, hybrid intensity-based DIR with controlling ROI provided better contour-based metrics, determinant of Jacobian, and less incidence of overlap between recurrence sites and template organs. Centroid position variability between the registration approaches were reported with average range of 1.6-11.3 mm and up to 5.7-30 mm. Conclusion DL and hybrid DIR models can be used to automatize inter-patient registration in the definition of population-based recurrence risk map. DIR uncertainties in the propagation of the recurrence between patients need to be carefully verified before being used in population-based model.
机译:目的调查和评估深度学习(DL)的细分和可变形图像登记(DIR)的准确性,用于自动化风险地图atlas定义。回顾性分析了材料和方法18F-DCFPYL PET / CT可见复发的12例患者。手动描绘膀胱,直肠,髂骨动脉和静脉和复发位点。以前训练的女性盆腔解剖学DL模型被重新优化用于男性以自动分割感兴趣的解剖区域(ROI)。使用4个注册方法研究了患者间登记:刚性,B样条塑料贴片,强度DIAR和具有不同数量的控制ROI的混合强度。据报道,使用基于轮廓的度量,雅可比的决定因素,体积和位置期间的轮廓可变性以及与模板器官重叠的概率,以及与模板器官重叠的方法的性能。结果DL模型的转移学习为膀胱和直肠提供了更高的精度,而不是对于髂动脉和平均骰子相似系数系数的新结构分别为0.82-0.96和0.63-0.77的新结构。与强度只有DIR,基于混合强度的基于控制ROI的目录提供了更好的基于轮廓的度量,Jacobian的决定因素,并且复发位点与模板器官之间的重叠发生率较小。报告注册方法之间的质心位置可变性,平均范围为1.6-11.3毫米,高达5.7-30毫米。结论DL和Hybrid Dir模型可用于自动化患者间注册的基于人群的复发风险地图的定义。在患者之间复发的传播中的恶劣不确定性需要在基于人口的模型中进行仔细验证。

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