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Hybrid 3D-ResNet Deep Learning Model for Automatic Segmentation of Thoracic Organs at Risk in CT Images

机译:混合3D-ResNet深度学习模型,可自动分割CT图像中有风险的胸腔器官

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In image radiation therapy, accurate segmentation of organs at risk (OARs) is a very essential task and has clinical applications in cancer treatment. The segmentation of organs close to lung, breast, or esophageal cancer is a routine and time-consuming process. The automatic segmentation of organs at risk would be an essential part of treatment planning for patients suffering radiotherapy. The position and shape variation, morphology inherent and low soft tissue contrast between neighboring organs across each patient’s scans is the challenging task for automatic segmentation of OARs in Computed Tomography (CT) images. The objective of this paper is to use automatic segmentation of the organs near risk in CT images using deep learning model. The paper proposes a hybrid 3D-ResNet based deep learning model with Atrous spatial pyramid pooling module and Project & Excite (PE)' module for 3D volumetric segmentation using Thoracic Organs at Risk (SegTHOR) dataset. The proposed model produces better results as compared to state-of-the-art deep learning models used in SegTHOR dataset. Proposed 3D volumetric Hybrid deep model could be used for automatic segmentation of OARs in clinical applications and would be helpful to diagnose lung, breast or esophageal cancer in CT images.
机译:在图像放射治疗中,对危险器官(OAR)进行精确分割是一项非常重要的任务,并在癌症治疗中具有临床应用。接近肺癌,乳腺癌或食道癌的器官分割是一个常规且耗时的过程。对有风险的器官进行自动分割将是放射治疗患者治疗计划中必不可少的部分。在计算机断层扫描(CT)图像中对OAR进行自动分割时,相邻器官之间的位置和形状变化,固有的形态以及相邻器官之间的软组织对比度低是一项艰巨的任务。本文的目的是使用深度学习模型对CT图像中的临近危险器官进行自动分割。本文提出了一种基于混合3D-ResNet的深度学习模型,该模型具有Atrous空间金字塔池模块和Project&Excite(PE)'模块,可使用处于危险中的胸腔器官(SegTHOR)数据集进行3D体积分割。与SegTHOR数据集中使用的最新深度学习模型相比,该模型产生了更好的结果。拟议的3D体积混合深层模型可用于临床应用中OAR的自动分割,将有助于诊断CT图像中的肺癌,乳腺癌或食道癌。

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