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首页> 外文期刊>Physics and Imaging in Radiation Oncology >Automated clinical target volume delineation using deep 3D neural networks in radiation therapy of Non-small Cell Lung Cancer
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Automated clinical target volume delineation using deep 3D neural networks in radiation therapy of Non-small Cell Lung Cancer

机译:利用深层细胞肺癌放射治疗的深3 3D神经网络自动化临床目标体积描绘

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Background and purpose Clinical targeted volume (CTV) delineation accounting for the patient-specific microscopic tumor spread can be a difficult step in defining the treatment volume. We developed an intelligent and automated CTV delineation system for locally advanced non-small cell lung carcinoma (NSCLC) to cover the microscopic tumor spread while avoiding organs-at-risk (OAR). Materials and methods A 3D UNet with a customized loss function was used, which takes both the patients’ respiration-correlated (“4D”) CT scan and the physician contoured internal gross target volume (iGTV) as inputs, and outputs the CTV delineation. Among the 84 identified patients, 60 were randomly selected to train the network, and the remaining as testing. The model performance was evaluated and compared with cropped expansions using the shape similarities to the physicians’ contours (the ground-truth) and the avoidance of critical OARs. Results On the testing datasets, all model-predicted CTV contours followed closely to the ground truth, and were acceptable by physicians. The average dice score was 0.86. Our model-generated contours demonstrated better agreement with the ground-truth than the cropped 5?mm/8?mm expansion method (median of median surface distance of 1.0?mm vs 1.9?mm/2.0?mm), with a small overlap volume with OARs (0.4?cm 3 for the esophagus and 1.2?cm 3 for the heart). Conclusions The CTVs generated by our CTV delineation system agree with the physician's contours. This approach demonstrates the capability of intelligent volumetric expansions with the potential to be used in clinical practice.
机译:背景论和目的临床靶向体积(CTV)鉴定患者特异性微观肿瘤扩散的描述可能是定义治疗量的困难步骤。我们开发了一种智能和自动化的CTV划分系统,用于局部晚期的非小细胞肺癌(NSCLC),以覆盖微观肿瘤,同时避免使用器官 - 风险(OAR)。材料和方法使用具有定制损失功能的3D杂志,其呼吸相关(“4D”)CT扫描和医生轮廓的内部总数(IGTV)作为输入,并输出CTV描绘。在84名鉴定的患者中,60个被随机选择培训网络,并将其留下的视为测试。使用与医生的轮廓(地面真理)的形状相似度和避免临界桨的形状相似性评估模型性能并与裁剪扩展进行了比较。结果在测试数据集上,所有模型预测的CTV轮廓紧随其后的真相,并且是医生接受的。平均骰子得分为0.86。我们的模型生成的轮廓与地面真理比裁剪5?MM / 8?MM扩展方法(中位数距离为1.0Ω·mm / 2.0?2.0?mm),展现了比裁剪的5?mm / 8?mm)更好地达成了更好的协议。用桨(对于食道的0.4?cm 3,心脏为1.2?cm 3)。结论我们的CTV划分系统产生的CTVS与医生的轮廓一致。这种方法展示了智能体积扩展的能力,具有临床实践中的潜力。

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