Department of Computer Science, Wesleyan University, Middletown, Connecticut, USA.
Medical Devices R&D Center, Gachon University Gil Hospital, Incheon, Republic of Korea.
J Imaging Inform Med. 2024 Aug;37(4):1674-1682. doi: 10.1007/s10278-024-00997-z. Epub 2024 Feb 20.
For molecular classification of endometrial carcinoma, testing for mismatch repair (MMR) status is becoming a routine process. Mismatch repair deficiency (MMR-D) is caused by loss of expression in one or more of the 4 major MMR proteins: MLH1, MSH2, MSH6, PHS2. Over 30% of patients with endometrial cancer have MMR-D. Determining the MMR status holds significance as individuals with MMR-D are potential candidates for immunotherapy. Pathological whole slide image (WSI) of endometrial cancer with immunohistochemistry results of MMR proteins were gathered. Color normalization was applied to the tiles using a CycleGAN-based network. The WSI was divided into tiles at three different magnifications (2.5 × , 5 × , and 10 ×). Three distinct networks of the same architecture were employed to include features from all three magnification levels and were stacked for ensemble learning. Three architectures, InceptionResNetV2, EfficientNetB2, and EfficientNetB3 were employed and subjected to comparison. The per-tile results were gathered to classify MMR status in the WSI, and prediction accuracy was evaluated using the following performance metrics: AUC, accuracy, sensitivity, and specificity. The EfficientNetB2 was able to make predictions with an AUC of 0.821, highest among the three architectures, and an overall AUC range of 0.767 - 0.821 was reported across the three architectures. In summary, our study successfully predicted MMR classification from pathological WSIs in endometrial cancer through a multi-resolution ensemble learning approach, which holds the potential to facilitate swift decisions on tailored treatment, such as immunotherapy, in clinical settings.
对于子宫内膜癌的分子分类,检测错配修复(MMR)状态正成为常规流程。错配修复缺陷(MMR-D)是由 4 种主要 MMR 蛋白中的一种或多种表达缺失引起的:MLH1、MSH2、MSH6、PHS2。超过 30%的子宫内膜癌患者存在 MMR-D。确定 MMR 状态具有重要意义,因为 MMR-D 个体是免疫治疗的潜在候选者。收集了具有 MMR 蛋白免疫组织化学结果的子宫内膜癌的病理全切片图像(WSI)。使用基于 CycleGAN 的网络对瓦片进行颜色归一化。WSI 分为三种不同放大倍数(2.5×、5×和 10×)的瓦片。使用相同架构的三个不同网络来包含所有三个放大倍数级别的特征,并堆叠用于集成学习。使用了三种架构,InceptionResNetV2、EfficientNetB2 和 EfficientNetB3,并进行了比较。收集每个瓦片的结果以对 WSI 中的 MMR 状态进行分类,并使用以下性能指标评估预测准确性:AUC、准确性、敏感性和特异性。EfficientNetB2 能够以最高的 AUC(0.821)进行预测,在三种架构中表现最佳,而三种架构的总体 AUC 范围为 0.767-0.821。总之,我们的研究通过多分辨率集成学习方法成功地从子宫内膜癌的病理 WSI 中预测了 MMR 分类,这有可能在临床环境中促进对免疫治疗等个性化治疗的快速决策。