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Concurrent segmentation of the prostate on MRI and CT via linked statistical shape models for radiotherapy planning

机译:通过链接的统计形状模型对MRI和CT进行前列腺同时分割以进行放射治疗计划

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摘要

>Purpose: Prostate gland segmentation is a critical step in prostate radiotherapy planning, where dose plans are typically formulated on CT. Pretreatment MRI is now beginning to be acquired at several medical centers. Delineation of the prostate on MRI is acknowledged as being significantly simpler to perform, compared to delineation on CT. In this work, the authors present a novel framework for building a linked statistical shape model (LSSM), a statistical shape model (SSM) that links the shape variation of a structure of interest (SOI) across multiple imaging modalities. This framework is particularly relevant in scenarios where accurate boundary delineations of the SOI on one of the modalities may not be readily available, or difficult to obtain, for training a SSM. In this work the authors apply the LSSM in the context of multimodal prostate segmentation for radiotherapy planning, where the prostate is concurrently segmented on MRI and CT.>Methods: The framework comprises a number of logically connected steps. The first step utilizes multimodal registration of MRI and CT to map 2D boundary delineations of the prostate from MRI onto corresponding CT images, for a set of training studies. Hence, the scheme obviates the need for expert delineations of the gland on CT for explicitly constructing a SSM for prostate segmentation on CT. The delineations of the prostate gland on MRI and CT allows for 3D reconstruction of the prostate shape which facilitates the building of the LSSM. In order to perform concurrent prostate MRI and CT segmentation using the LSSM, the authors employ a region-based level set approach where the authors deform the evolving prostate boundary to simultaneously fit to MRI and CT images in which voxels are classified to be either part of the prostate or outside the prostate. The classification is facilitated by using a combination of MRI-CT probabilistic spatial atlases and a random forest classifier, driven by gradient and Haar features.>Results: The authors acquire a total of 20 MRI-CT patient studies and use the leave-one-out strategy to train and evaluate four different LSSMs. First, a fusion-based LSSM (fLSSM) is built using expert ground truth delineations of the prostate on MRI alone, where the ground truth for the gland on CT is obtained via coregistration of the corresponding MRI and CT slices. The authors compare the fLSSM against another LSSM (xLSSM), where expert delineations of the gland on both MRI and CT are employed in the model building; xLSSM representing the idealized LSSM. The authors also compare the fLSSM against an exclusive CT-based SSM (ctSSM), built from expert delineations of the gland on CT alone. In addition, two LSSMs trained using trainee delineations (tLSSM) on CT are compared with the fLSSM. The results indicate that the xLSSM, tLSSMs, and the fLSSM perform equivalently, all of them out-performing the ctSSM.>Conclusions: The fLSSM provides an accurate alternative to SSMs that require careful expert delineations of the SOI that may be difficult or laborious to obtain. Additionally, the fLSSM has the added benefit of providing concurrent segmentations of the SOI on multiple imaging modalities.
机译:>目的:前列腺分割是前列腺放射治疗计划中的关键步骤,通常在CT上制定剂量计划。现在已经在多个医疗中心开始进行MRI预处理。与CT上的描绘相比,MRI上的前列腺描绘被认为非常容易执行。在这项工作中,作者提出了一个新颖的框架,用于建立链接的统计形状模型(LSSM),该统计形状模型(SSM)跨多个成像模态链接了感兴趣结构(SOI)的形状变化。在可能无法轻易获得或很难获得用于训练SSM的方式之一上SOI的精确边界描述的情况下,此框架特别有用。在这项工作中,作者将LSSM应用于放射治疗计划的多模式前列腺分割的背景下,其中前列腺同时在MRI和CT上分割。>方法:该框架包括多个逻辑连接的步骤。第一步,利用MRI和CT的多模式配准将MRI的2D前列腺边界描图映射到相应的CT图像上,以进行一组训练研究。因此,该方案消除了对CT上的腺体的专家描绘的需要,以明确地构建用于CT上的前列腺分割的SSM。 MRI和CT上前列腺的勾画允许对前列腺形状进行3D重建,从而有助于LSSM的构建。为了使用LSSM进行并发的前列腺MRI和CT分割,作者采用了基于区域的水平集方法,其中作者变形了不断发展的前列腺边界,以同时适应MRI和CT图像,其中将体素分类为前列腺或前列腺外。结合使用MRI-CT概率空间地图集和随机森林分类器(由梯度和Haar特征驱动)进行分类。>结果:作者总共获得了20例MRI-CT患者研究,并且使用留一法的策略来训练和评估四个不同的LSSM。首先,仅使用MRI上前列腺的专家地面实况描绘来构建基于融合的LSSM(fLSSM),其中通过相应MRI和CT切片的配准获得CT上腺体的地面实况。作者将fLSSM与另一种LSSM(xLSSM)进行了比较,在该模型中,在MRI和CT上均采用了专家对腺体的描述。 xLSSM代表理想化的LSSM。作者还将fLSSM与基于CT的专有SSM(ctSSM)进行了比较,后者仅根据CT上的腺体专家描述而构建。另外,将两个在CT上使用受训者描述(tLSSM)训练的LSSM与fLSSM进行了比较。结果表明,xLSSM,tLSSM和fLSSM的性能相当,均优于ctSSM。>结论:fLSSM提供了SSM的准确替代,而SSM则需要对SOI进行仔细的专家描述,可能难以获得或费力。此外,fLSSM具有在多个成像模态上同时对SOI进行分割的优势。

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