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Automated prediction of dosimetric eligibility of patients with prostate cancer undergoing intensity-modulated radiation therapy using a convolutional neural network

机译:使用卷积神经网络进行强度调制的放射治疗的前列腺癌患者剂量测定的自动化预测

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The quality of radiotherapy has greatly improved due to the high precision achieved by intensity-modulated radiation therapy (IMRT). Studies have been conducted to increase the quality of planning and reduce the costs associated with planning through automated planning method; however, few studies have used the deep learning method for optimization of planning. The purpose of this study was to propose an automated method based on a convolutional neural network (CNN) for predicting the dosimetric eligibility of patients with prostate cancer undergoing IMRT. Sixty patients with prostate cancer who underwent IMRT were included in the study. Treatment strategy involved division of the patients into two groups, namely, meeting all dose constraints and not meeting all dose constraints, by experienced medical physicists. We used AlexNet (i.e., one of common CNN architectures) for CNN-based methods to predict the two groups. An AlexNet CNN pre-trained on ImageNet was fine-tuned. Two dataset formats were used as input data: planning computed tomography (CT) images and structure labels. Five-fold cross-validation was used, and performance metrics included sensitivity, specificity, and prediction accuracy. Class activation mapping was used to visualize the internal representation learned by the CNN. Prediction accuracies of the model with the planning CT image dataset and that with the structure label dataset were 56.7?±?9.7% and 70.0?±?11.3%, respectively. Moreover, the model with structure labels focused on areas associated with dose constraints. These results revealed the potential applicability of deep learning to the treatment planning of patients with prostate cancer undergoing IMRT.
机译:由于强度调制的放射治疗(IMRT)实现的高精度,放射疗法的质量大大提高。已经进行了研究以提高规划质量,并通过自动化规划方法降低与规划相关的成本;然而,很少有研究使用了深入学习方法来优化规划。本研究的目的是提出基于卷积神经网络(CNN)的自动化方法,用于预测患有IMRT的前列腺癌患者的患者的剂量可靠性。研究中包括60例接受IMRT的前列腺癌患者。治疗策略涉及患者分为两组,即满足所有剂量限制,不与经验丰富的医疗物理学家达到所有剂量限制。我们使用基于CNN的方法的AlexNet(即,常见的CNN架构之一)来预测两组。在想象中预先培训的AlexNet CNN是微调的。两个数据集格式用作输入数据:规划计算机断层扫描(CT)图像和结构标签。使用五倍交叉验证,并且性能指标包括灵敏度,特异性和预测精度。类激活映射用于可视化CNN学习的内部表示。用规划CT图像数据集预测模型的准确性,并且具有结构标签数据集的模型为56.7?±9.7%和70.0?±11.3%。此外,具有结构标签的模型聚焦在与剂量约束相关的区域上。这些结果揭示了深度学习对患有IMRT前列腺癌患者治疗计划的潜在适用性。

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