Shao Wencheng, Lin Xin, Huang Ying, Qu Liangyong, Zhuo Weihai, Liu Haikuan
Institute of Radiation Medicine, Fudan University, Shanghai, China.
Institute of Modern Physics, Fudan University, Shanghai, China.
Quant Imaging Med Surg. 2024 Oct 1;14(10):7379-7391. doi: 10.21037/qims-24-645. Epub 2024 Sep 26.
Computed tomography (CT) offers detailed cross-sectional images of internal anatomy for disease detection but carries a risk of solid cancer or blood malignancies due to exposure to X-ray radiation. This study aimed to develop a new method to quickly predict patient-specific organ doses from CT examinations by training neural networks (NNs) based on radiomics features.
CT Digital Imaging and Communications in Medicine (DICOM) image data were exported to DeepViewer, a clinical autosegmentation software, to segment the regions of interest (ROIs) for patient organs. Radiomics feature extraction was performed based on the selected CT data and ROIs. Reference organ doses were computed using Monte Carlo (MC) simulations. Patient-specific organ doses were predicted by training a NN model based on radiomics features and reference doses. For the dose prediction performance, the relative root mean squared error (RRMSE), mean absolute percentage error (MAPE), and coefficient of determination (R) were evaluated on the test sets. The robustness of the NN model was evaluated via the random rearrangement of patient samples in the training and test sets.
The maximal difference between the reference and predicted doses was less than 1 mGy for all investigated organs. The range of MAPE was 1.68% to 5.2% for head organs, 11.42% to 15.2% for chest organs, and 5.0% to 8.0% for abdominal organs; the maximal R values were 0.93, 0.86, and 0.89 for the head, chest, and abdominal organs, respectively.
The radiomics feature-based NN model can achieve accurate prediction of patient-specific organ doses at a high speed of less than 1 second using a single central processing unit, which supports its use as a user-friendly online clinical application.
计算机断层扫描(CT)可为疾病检测提供详细的内部解剖结构横断面图像,但由于暴露于X射线辐射,存在引发实体癌或血液恶性肿瘤的风险。本研究旨在开发一种新方法,通过基于放射组学特征训练神经网络(NN),快速预测CT检查中患者特定器官的剂量。
将CT数字成像和通信医学(DICOM)图像数据导出到临床自动分割软件DeepViewer,以分割患者器官的感兴趣区域(ROI)。基于选定的CT数据和ROI进行放射组学特征提取。使用蒙特卡罗(MC)模拟计算参考器官剂量。通过基于放射组学特征和参考剂量训练NN模型来预测患者特定器官剂量。对于剂量预测性能,在测试集上评估相对均方根误差(RRMSE)、平均绝对百分比误差(MAPE)和决定系数(R)。通过在训练集和测试集中随机重新排列患者样本,评估NN模型的稳健性。
所有研究器官的参考剂量和预测剂量之间的最大差异小于1 mGy。头部器官的MAPE范围为1.68%至5.2%,胸部器官为11.42%至15.2%,腹部器官为5.0%至8.0%;头部、胸部和腹部器官的最大R值分别为0.93、0.86和0.89。
基于放射组学特征的NN模型可以使用单个中央处理器在不到1秒的高速下实现对患者特定器官剂量的准确预测,这支持其作为用户友好的在线临床应用。