Department of Surgery, Surgical Oncology and Science, Sapporo Medical University, Sapporo, Japan.
FUJIFILM Corporation, Tokyo, Japan.
PLoS One. 2022 Jun 17;17(6):e0269931. doi: 10.1371/journal.pone.0269931. eCollection 2022.
Although MRI has a substantial role in directing treatment decisions for locally advanced rectal cancer, precise interpretation of the findings is not necessarily available at every institution. In this study, we aimed to develop artificial intelligence-based software for the segmentation of rectal cancer that can be used for staging to optimize treatment strategy and for preoperative surgical simulation.
Images from a total of 201 patients who underwent preoperative MRI were analyzed for training data. The resected specimen was processed in a circular shape in 103 cases. Using these datasets, ground-truth labels were prepared by annotating MR images with ground-truth segmentation labels of tumor area based on pathologically confirmed lesions. In addition, the areas of rectum and mesorectum were also labeled. An automatic segmentation algorithm was developed using a U-net deep neural network.
The developed algorithm could estimate the area of the tumor, rectum, and mesorectum. The Dice similarity coefficients between manual and automatic segmentation were 0.727, 0.930, and 0.917 for tumor, rectum, and mesorectum, respectively. The T2/T3 diagnostic sensitivity, specificity, and overall accuracy were 0.773, 0.768, and 0.771, respectively.
This algorithm can provide objective analysis of MR images at any institution, and aid risk stratification in rectal cancer and the tailoring of individual treatments. Moreover, it can be used for surgical simulations.
尽管 MRI 在指导局部进展期直肠癌的治疗决策方面具有重要作用,但并非每个机构都能对其结果进行准确解读。本研究旨在开发一种基于人工智能的直肠癌分割软件,用于分期以优化治疗策略和术前手术模拟。
共分析了 201 例接受术前 MRI 检查的患者的图像作为训练数据。103 例患者的切除标本采用圆形处理。利用这些数据集,通过对基于病理证实病变的肿瘤区域的真实分割标签进行注释,准备真实标签。此外,还对直肠和直肠系膜的区域进行了标记。使用 U 形网络深度学习算法开发了自动分割算法。
所开发的算法可以估计肿瘤、直肠和直肠系膜的面积。手动和自动分割之间的 Dice 相似系数分别为 0.727、0.930 和 0.917,用于肿瘤、直肠和直肠系膜。T2/T3 的诊断敏感性、特异性和总准确性分别为 0.773、0.768 和 0.771。
该算法可以在任何机构提供 MRI 图像的客观分析,并有助于直肠癌的风险分层和个体化治疗的制定。此外,它还可用于手术模拟。