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Fully Automated Delineation of Gross Tumor Volume for Head and Neck Cancer on PET-CT Using Deep Learning: A Dual-Center Study

机译:使用深度学习在PET-CT上全自动描绘头颈癌总肿瘤体积的双中心研究

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Purpose. In this study, we proposed an automated deep learning (DL) method for head and neck cancer (HNC) gross tumor volume (GTV) contouring on positron emission tomography-computed tomography (PET-CT) images. Materials and Methods. PET-CT images were collected from 22 newly diagnosed HNC patients, of whom 17 (Database 1) and 5 (Database 2) were from two centers, respectively. An oncologist and a radiologist decided the gold standard of GTV manually by consensus. We developed a deep convolutional neural network (DCNN) and trained the network based on the two-dimensional PET-CT images and the gold standard of GTV in the training dataset. We did two experiments Experiment 1, with Database 1 only, and Experiment 2, with both Databases 1 and 2. In both Experiment 1 and Experiment 2, we evaluated the proposed method using a leave-one-out cross-validation strategy. We compared the median results in Experiment 2 (GTVa) with the performance of other methods in the literature and with the gold standard (GTVm). Results. A tumor segmentation task for a patient on coregistered PET-CT images took less than one minute. The dice similarity coefficient (DSC) of the proposed method in Experiment 1 and Experiment 2 was 0.481~0.872 and 0.482~0.868, respectively. The DSC of GTVa was better than that in previous studies. A high correlation was found between GTVa and GTVm (R = 0.99, ). The median volume difference (%) between GTVm and GTVa was 10.9%. The median values of DSC, sensitivity, and precision of GTVa were 0.785, 0.764, and 0.789, respectively. Conclusion. A fully automatic GTV contouring method for HNC based on DCNN and PET-CT from dual centers has been successfully proposed with high accuracy and efficiency. Our proposed method is of help to the clinicians in HNC management.
机译:目的。在这项研究中,我们提出了一种自动深度学习(DL)方法,用于在正电子发射断层扫描计算机断层扫描(PET-CT)图像上绘制头颈癌(HNC)总肿瘤体积(GTV)等高线。材料和方法。从22名新诊断的HNC患者中收集PET-CT图像,其中分别来自两个中心的17名患者(数据库1)和5名患者(数据库2)。肿瘤学家和放射学家以共识方式手动确定了GTV的金标准。我们开发了深度卷积神经网络(DCNN),并在训练数据集中基于二维PET-CT图像和GTV的黄金标准对网络进行了训练。我们仅在数据库1和2中分别进行了两个实验1和2,分别在数据库1和2中进行了实验。在实验1和2中,我们使用了留一法交叉验证策略对提出的方法进行了评估。我们将实验2(GTVa)的中位数结果与文献中其他方法的性能以及金标准(GTVm)进行了比较。结果。在共配准的PET-CT图像上进行患者的肿瘤分割任务所需的时间不到一分钟。实验1和实验2中提出的方法的骰子相似系数(DSC)分别为0.481〜0.872和0.482〜0.868。 GTVa的DSC优于以前的研究。发现GTVa和GTVm之间具有高度相关性(R = 0.99,)。 GTVm和GTVa之间的中位数体积差异(%)为10.9%。 DSC的中位数,GTVa的灵敏度和精度分别为0.785、0.764和0.789。结论。成功地提出了基于双中心的DCNN和PET-CT的HNC全自动GTV轮廓绘制方法。我们提出的方法有助于HNC管理中的临床医生。

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