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Heart motion tracking on cine MRI based on a deep Boltzmann machine-driven level set method

机译:基于深玻尔兹曼机器驱动水平集方法的电影MRI心脏运动跟踪

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Tracking the heart motion during radiation treatment of cancer patients can provide important information for designing strategies to reduce radiation-induced heart toxicity. Recently, in-treatment cine MRI images are used for guiding radiation therapy. However, dynamic changes of heart shape and limited-contrast of cine MRI images make automatic heart motion tracking a very challenging task. This paper proposes a deep generative shape model-driven level set method to address these challenges and automatically track heart motion on 2D cine MRI images. First, we use a three-layered Deep Boltzmann Machine (DBM) to train a heart shape model that can characterize both global and local heart shape variations. Second, the shape priors inferred from the trained heart shape model are incorporated into the distance regularized level set evolution-based segmentation method to guide frame-by-frame heart segmentation on cine MRI images. We demonstrate the superior performance of the proposed method on cine MRI image sequences acquired from seven volunteers and also compare it with four other methods.
机译:追踪癌症患者放射治疗期间的心脏运动可以为设计减少放射诱发的心脏毒性的策略提供重要信息。近来,治疗中的电影MRI图像被用于指导放射治疗。但是,心脏形状的动态变化和电影MRI图像的有限对比度使自动心脏运动跟踪成为一项非常艰巨的任务。本文提出了一种由深层生成形状模型驱动的水平集方法,以解决这些挑战并在2D电影MRI图像上自动跟踪心脏运动。首先,我们使用三层深玻尔兹曼机(DBM)来训练可表征整体和局部心脏形状变​​化的心脏形状模型。其次,从受过训练的心脏形状模型推断出的形状先验被合并到基于距离正则化水平集演化的分割方法中,以指导电影MRI图像的逐帧心脏分割。我们证明了所提出的方法在从七名志愿者那里获得的电影MRI图像序列上的优越性能,并且还将其与其他四种方法进行了比较。

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