人工智能辅助在胃腺癌淋巴结转移病理组织学评估中的临床应用价值
Clinical utility of artificial intelligence assistance in histopathologic review of lymph node metastasis for gastric adenocarcinoma.
作者信息
Matsushima Jun, Sato Tamotsu, Yoshimura Yuichiro, Mizutani Hiroyuki, Koto Shinichiro, Matsusaka Keisuke, Ikeda Jun-Ichiro, Sato Taiki, Fujii Akiko, Ono Yuko, Mitsui Takashi, Ban Shinichi, Matsubara Hisahiro, Hayashi Hideki
机构信息
Department of Pathology, Dokkyo Medical University Saitama Medical Center, 2-1-50 Minamikoshigaya, Koshigaya, Saitama, Japan.
Center for Frontier Medical Engineering, Chiba University, 1-33 Yayoi-Cho, Inage-Ku, Chiba, Chiba, 263-8522, Japan.
出版信息
Int J Clin Oncol. 2023 Aug;28(8):1033-1042. doi: 10.1007/s10147-023-02356-4. Epub 2023 May 31.
BACKGROUND
Advances in whole-slide image capture and computer image analyses using deep learning technologies have enabled the development of computer-assisted diagnostics in pathology. Herein, we built a deep learning algorithm to detect lymph node (LN) metastasis on whole-slide images of LNs retrieved from patients with gastric adenocarcinoma and evaluated its performance in clinical settings.
METHODS
We randomly selected 18 patients with gastric adenocarcinoma who underwent surgery with curative intent and were positive for LN metastasis at Chiba University Hospital. A ResNet-152-based assistance system was established to detect LN metastases and to outline regions that are highly probable for metastasis in LN images. Reference standards comprising 70 LN images from two different institutions were reviewed by six pathologists with or without algorithm assistance, and their diagnostic performances were compared between the two settings.
RESULTS
No statistically significant differences were observed between these two settings regarding sensitivity, review time, or confidence levels in classifying macrometastases, isolated tumor cells, and metastasis-negative. Meanwhile, the sensitivity for detecting micrometastases significantly improved with algorithm assistance, although the review time was significantly longer than that without assistance. Analysis of the algorithm's sensitivity in detecting metastasis in the reference standard indicated an area under the curve of 0.869, whereas that for the detection of micrometastases was 0.785.
CONCLUSIONS
A wide variety of histological types in gastric adenocarcinoma could account for these relatively low performances; however, this level of algorithm performance could suffice to help pathologists improve diagnostic accuracy.
背景
全玻片图像采集和使用深度学习技术的计算机图像分析的进展,推动了病理学中计算机辅助诊断的发展。在此,我们构建了一种深度学习算法,用于检测从胃腺癌患者中获取的淋巴结全玻片图像上的淋巴结转移,并在临床环境中评估其性能。
方法
我们随机选择了18例在千叶大学医院接受根治性手术且淋巴结转移呈阳性的胃腺癌患者。建立了一个基于ResNet - 152的辅助系统,用于检测淋巴结转移并勾勒出淋巴结图像中极有可能发生转移的区域。由六位病理学家在有或没有算法辅助的情况下,对来自两个不同机构的70张淋巴结图像组成的参考标准进行评估,并比较他们在两种情况下的诊断性能。
结果
在检测宏观转移、孤立肿瘤细胞和转移阴性方面,这两种情况在敏感性、检查时间或置信水平上均未观察到统计学上的显著差异。同时,在算法辅助下,检测微转移的敏感性显著提高,尽管检查时间比无辅助时长。对算法在参考标准中检测转移的敏感性分析表明,曲线下面积为0.869,而检测微转移的曲线下面积为0.785。
结论
胃腺癌中多种组织学类型可能是导致这些相对较低性能的原因;然而,这种算法性能水平足以帮助病理学家提高诊断准确性。