Umemoto Mina, Mariya Tasuku, Nambu Yuta, Nagata Mai, Horimai Toshihiro, Sugita Shintaro, Kanaseki Takayuki, Takenaka Yuka, Shinkai Shota, Matsuura Motoki, Iwasaki Masahiro, Hirohashi Yoshihiko, Hasegawa Tadashi, Torigoe Toshihiko, Fujino Yuichi, Saito Tsuyoshi
Department of Obstetrics and Gynecology, Sapporo Medical University of Medicine, Sapporo 060-8556, Japan.
Department of Media Architecture, Future University Hakodate, Hakodate 041-8655, Japan.
Cancers (Basel). 2024 May 9;16(10):1810. doi: 10.3390/cancers16101810.
The application of deep learning algorithms to predict the molecular profiles of various cancers from digital images of hematoxylin and eosin (H&E)-stained slides has been reported in recent years, mainly for gastric and colon cancers. In this study, we investigated the potential use of H&E-stained endometrial cancer slide images to predict the associated mismatch repair (MMR) status. H&E-stained slide images were collected from 127 cases of the primary lesion of endometrial cancer. After digitization using a Nanozoomer virtual slide scanner (Hamamatsu Photonics), we segmented the scanned images into 5397 tiles of 512 × 512 pixels. The MMR proteins (PMS2, MSH6) were immunohistochemically stained, classified into MMR proficient/deficient, and annotated for each case and tile. We trained several neural networks, including convolutional and attention-based networks, using tiles annotated with the MMR status. Among the tested networks, ResNet50 exhibited the highest area under the receiver operating characteristic curve (AUROC) of 0.91 for predicting the MMR status. The constructed prediction algorithm may be applicable to other molecular profiles and useful for pre-screening before implementing other, more costly genetic profiling tests.
近年来,已有报道称深度学习算法可用于从苏木精和伊红(H&E)染色切片的数字图像预测各种癌症的分子特征,主要针对胃癌和结肠癌。在本研究中,我们调查了H&E染色的子宫内膜癌切片图像预测相关错配修复(MMR)状态的潜在用途。从127例子宫内膜癌原发灶病例中收集H&E染色的切片图像。使用Nanozoomer虚拟切片扫描仪(滨松光子学)进行数字化处理后,我们将扫描图像分割成5397个512×512像素的图像块。对MMR蛋白(PMS2、MSH6)进行免疫组织化学染色,分类为MMR熟练/缺陷,并对每个病例和图像块进行注释。我们使用标注了MMR状态的图像块训练了几个神经网络,包括卷积网络和基于注意力的网络。在测试的网络中,ResNet50在预测MMR状态时表现出最高的受试者工作特征曲线下面积(AUROC),为0.91。构建的预测算法可能适用于其他分子特征,并且在实施其他成本更高的基因分析测试之前用于预筛查很有用。