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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Patient-specific and global convolutional neural networks for robust automatic liver tumor delineation in follow-up CT studies
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Patient-specific and global convolutional neural networks for robust automatic liver tumor delineation in follow-up CT studies

机译:患者特异性和全球卷积神经网络,用于随访CT研究中的鲁棒自动肝肿瘤描绘

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摘要

Radiological longitudinal follow-up of tumors in CT scans is essential for disease assessment and liver tumor therapy. Currently, most tumor size measurements follow the RECIST guidelines, which can be off by as much as 50%. True volumetric measurements are more accurate but require manual delineation, which is time-consuming and user-dependent. We present a convolutional neural networks (CNN) based method for robust automatic liver tumor delineation in longitudinal CT studies that uses both global and patient specific CNNs trained on a small database of delineated images. The inputs are the baseline scan and the tumor delineation, a follow-up scan, and a liver tumor global CNN voxel classifier built from radiologist-validated liver tumor delineations. The outputs are the tumor delineations in the follow-up CT scan. The baseline scan tumor delineation serves as a high-quality prior for the tumor characterization in the follow-up scans. It is used to evaluate the global CNN performance on the new case and to reliably predict failures of the global CNN on the follow-up scan. High-scoring cases are segmented with a global CNN; low-scoring cases, which are predicted to be failures of the global CNN, are segmented with a patient-specific CNN built from the baseline scan. Our experimental results on 222 tumors from 31 patients yield an average overlap error of 17% (std = 11.2) and surface distance of 2.1 mm (std = 1.8), far better than stand-alone segmentation. Importantly, the robustness of our method improved from 67% for stand-alone global CNN segmentation to 100%. Unlike other medical imaging deep learning approaches, which require large annotated training datasets, our method exploits the follow-up framework to yield accurate tumor tracking and failure detection and correction with a small training dataset.
机译:CT扫描中肿瘤的放射纵向随访对疾病评估和肝肿瘤治疗至关重要。目前,大多数肿瘤大小测量均遵循重新入住的指导原则,可以低至50%。真正的体积测量更准确,但需要手动描绘,这是耗时和依赖的。我们在纵向CT研究中展示了一种基于稳健的自动肝肿瘤描绘的基于卷积的神经网络(CNN)方法,其使用在描绘图像的小型数据库上训练的全局和患者特定的CNN。输入是基线扫描和肿瘤描绘,随访扫描,以及由放射科验证的肝肿瘤描绘构建的肝肿瘤全球CNN体素分类器。输出是随访CT扫描中的肿瘤划分。基线扫描肿瘤描绘用作在后续扫描中肿瘤表征之前的高质量。它用于评估新案例上的全局CNN性能,并可靠地预测随访扫描上的全局CNN的失败。高评分案件以全球CNN分段;预计将成为全局CNN的失败的低分计量案例,用由基线扫描构建的患者特定的CNN分段。我们的实验结果来自322例患者的222例肿瘤产生的平均重叠误差为17%(STD = 11.2),表面距离为2.1毫米(STD = 1.8),远远优于独立分割。重要的是,我们的方法的稳健性从67%提高到独立全球CNN分段为100%。与需要大型注释训练数据集的其他医学成像的深度学习方法不同,我们的方法利用后续框架利用后续框架来产生准确的肿瘤跟踪和故障检测和用小型训练数据集进行校正。

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