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Fully-Automated Analysis of Body Composition from CT in Cancer Patients Using Convolutional Neural Networks

机译:使用卷积神经网络对癌症患者的CT身体成分进行全自动分析

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The amounts of muscle and fat in a person's body, known as body composition, are correlated with cancer risks, cancer survival, and cardiovascular risk. The current gold standard for measuring body composition requires time-consuming manual segmentation of CT images by an expert reader. In this work, we describe a two-step process to fully automate the analysis of CT body composition using a DenseNet to select the CT slice and U-Net to perform segmentation. We train and test our methods on independent cohorts. Our results show Dice scores (0.95—0.98) and correlation coefficients (R = 0.99) that are favorable compared to human readers. These results suggest that fully automated body composition analysis is feasible, which could enable both clinical use and large-scale population studies.
机译:人体内肌肉和脂肪的含量(称为人体成分)与癌症风险,癌症存活率和心血管疾病风险相关。当前用于测量身体成分的黄金标准要求专业阅读器进行费时的CT图像手动分割。在这项工作中,我们描述了一个两步过程,以使用DenseNet选择CT切片和使用U-Net进行分割来完全自动化CT身体成分的分析。我们在独立的队列中训练和测试我们的方法。我们的结果显示,与人类读者相比,骰子得分(0.95-0.98)和相关系数(R = 0.99)更为有利。这些结果表明,全自动的身体成分分析是可行的,可以实现临床应用和大规模人群研究。

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