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胰腺癌半自动精细勾画方案。

Semi-automatic fine delineation scheme for pancreatic cancer.

机构信息

School of Life & Environmental Science, Guilin University of Electronic Technology, Guilin, China.

State Key Laboratory of Oncology in South China, Sun Yat-sen University Cancer Center, Collaborative Innovation Center for Cancer Medicine, Guangzhou, China.

出版信息

Med Phys. 2024 Mar;51(3):1860-1871. doi: 10.1002/mp.16718. Epub 2023 Sep 4.

Abstract

BACKGROUND

Pancreatic cancer fine delineation in medical images by physicians is a major challenge due to the vast volume of medical images and the variability of patients.

PURPOSE

A semi-automatic fine delineation scheme was designed to assist doctors in accurately and quickly delineating the cancer target region to improve the delineation accuracy of pancreatic cancer in computed tomography (CT) images and effectively reduce the workload of doctors.

METHODS

A target delineation scheme in image blocks was also designed to provide more information for the deep learning delineation model. The start and end slices of the image block were manually delineated by physicians, and the cancer in the middle slices were accurately segmented using a three-dimensional Res U-Net model. Specifically, the input of the network is the CT image of the image block and the delineation of the cancer in the start and end slices, while the output of the network is the cancer area in the middle slices of the image block. Meanwhile, the model performance of pancreatic cancer delineation and the workload of doctors in different image block sizes were studied.

RESULTS

We used 37 3D CT volumes for training, 11 volumes for validating and 11 volumes for testing. The influence of different image block sizes on doctors' workload was compared quantitatively. Experimental results showed that the physician's workload was minimal when the image block size was 5, and all cancer could be accurately delineated. The Dice similarity coefficient was 0.894 ± 0.029, the 95% Hausdorff distance was 3.465 ± 0.710 mm, the normalized surface Dice was 0.969 ± 0.019. By completing the accurate delineation of all the CT images, the speed of the new method is 2.16 times faster than that of manual sketching.

CONCLUSION

Our proposed 3D semi-automatic delineative method based on the idea of block prediction could accurately delineate CT images of pancreatic cancer and effectively deal with the challenges of class imbalance, background distractions, and non-rigid geometrical features. This study had a significant advantage in reducing doctors' workload, and was expected to help doctors improve their work efficiency in clinical application.

摘要

背景

由于医学图像数量庞大且患者情况多变,医生在医学图像中对胰腺癌进行精细勾画是一项重大挑战。

目的

设计了一种半自动精细勾画方案,以帮助医生准确快速地勾画癌症靶区,提高 CT 图像中胰腺癌的勾画准确性,并有效降低医生的工作量。

方法

还设计了一种图像块目标勾画方案,为深度学习勾画模型提供更多信息。由医生手动勾画图像块的起始和结束切片,使用三维 Res U-Net 模型准确地对中间切片中的癌症进行分割。具体来说,网络的输入是图像块的 CT 图像以及起始和结束切片中的癌症勾画,网络的输出是图像块中间切片中的癌症区域。同时,研究了不同图像块大小对胰腺癌勾画和医生工作量的模型性能影响。

结果

我们使用了 37 个 3D CT 容积进行训练,11 个容积进行验证,11 个容积进行测试。定量比较了不同图像块大小对医生工作量的影响。实验结果表明,当图像块大小为 5 时,医生的工作量最小,并且可以准确勾画所有癌症。Dice 相似系数为 0.894±0.029,95% Hausdorff 距离为 3.465±0.710mm,归一化表面 Dice 为 0.969±0.019。通过完成所有 CT 图像的准确勾画,新方法的速度比手动勾画快 2.16 倍。

结论

我们提出的基于块预测思想的 3D 半自动勾画方法可以准确地勾画胰腺癌 CT 图像,并有效地应对类别不平衡、背景干扰和非刚性几何特征等挑战。这项研究在减少医生工作量方面具有显著优势,有望帮助医生提高在临床应用中的工作效率。

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