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利用人工智能算法追踪胃癌手术样本中的癌灶。

Tracking cancer lesions on surgical samples of gastric cancer by artificial intelligent algorithms.

作者信息

Yang Ruixin, Yan Chao, Lu Sheng, Li Jun, Ji Jun, Yan Ranlin, Yuan Fei, Zhu Zhenggang, Yu Yingyan

机构信息

Department of General Surgery of Ruijin Hospital, Shanghai Institute of Digestive Surgery, and Shanghai Key Laboratory for Gastric Neoplasms, Shanghai Jiao Tong University School of Medicine, 200025, Shanghai, China.

Department of Pathology of Ruijin Hospital, Shanghai Jiao Tong University School of Medicine, 200025, Shanghai, China.

出版信息

J Cancer. 2021 Sep 3;12(21):6473-6483. doi: 10.7150/jca.63879. eCollection 2021.

Abstract

To quickly locate cancer lesions, especially suspected metastatic lesions after gastrectomy, AI algorithms of object detection and semantic segmentation were established. A total of 509 macroscopic images from 381 patients were collected. The RFB-SSD object detection algorithm and ResNet50-PSPNet semantic segmentation algorithm were used. Another 57 macroscopic images from 48 patients were collected for prospective verification. We used mAP as the metrics of object detection. The best mAP was 95.90% with an average of 89.89% in the test set. The mAP reached 92.60% in validation set. We used mIoU for evaluation of semantic segmentation. The best mIoU was 80.97% with an average of 79.26% in the test set. In addition, 81 out of 92 (88.04%) gastric specimens were accurately predicted for the cancer lesion located at the serosa by ResNet50-PSPNet semantic segmentation model. The positive rate and accuracy of AI prediction were different based on cancer invasive depth. The metastatic lymph nodes were predicted in 24 cases by semantic segmentation model. Among them, 18 cases were confirmed by pathology. The predictive accuracy was 75.00%. Our well-trained AI algorithms effectively identified the subtle features of gastric cancer in resected specimens that may be missed by naked eyes. Taken together, AI algorithms could assist clinical doctors quickly locating cancer lesions and improve their work efficiency.

摘要

为了快速定位癌症病灶,尤其是胃癌切除术后疑似转移病灶,建立了目标检测和语义分割的人工智能算法。共收集了381例患者的509张宏观图像。使用了RFB-SSD目标检测算法和ResNet50-PSPNet语义分割算法。另外收集了48例患者的57张宏观图像用于前瞻性验证。我们使用平均精度均值(mAP)作为目标检测的指标。在测试集中,最佳mAP为95.90%,平均为89.89%。在验证集中,mAP达到92.60%。我们使用交并比(mIoU)评估语义分割。在测试集中,最佳mIoU为80.97%,平均为79.26%。此外,ResNet50-PSPNet语义分割模型对92个胃标本中的81个(88.04%)位于浆膜层的癌灶进行了准确预测。人工智能预测的阳性率和准确率因癌症浸润深度而异。语义分割模型预测了24例转移淋巴结。其中,18例经病理证实。预测准确率为75.00%。我们训练有素的人工智能算法有效地识别了切除标本中可能被肉眼遗漏的胃癌细微特征。综上所述,人工智能算法可以帮助临床医生快速定位癌症病灶并提高工作效率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c226/8489126/2af46e3d0528/jcav12p6473g001.jpg

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