Department of Obstetrics and Gynaecology, Medical Faculty Mannheim of the University of Heidelberg, Heidelberg, Germany.
Digital Biomarkers for Oncology Group, German Cancer Research Center (DKFZ), Heidelberg, Germany.
Eur J Cancer. 2023 Dec;195:113390. doi: 10.1016/j.ejca.2023.113390. Epub 2023 Oct 18.
Sentinel lymph node (SLN) status is a clinically important prognostic biomarker in breast cancer and is used to guide therapy, especially for hormone receptor-positive, HER2-negative cases. However, invasive lymph node staging is increasingly omitted before therapy, and studies such as the randomised Intergroup Sentinel Mamma (INSEMA) trial address the potential for further de-escalation of axillary surgery. Therefore, it would be helpful to accurately predict the pretherapeutic sentinel status using medical images.
Using a ResNet 50 architecture pretrained on ImageNet and a previously successful strategy, we trained deep learning (DL)-based image analysis algorithms to predict sentinel status on hematoxylin/eosin-stained images of predominantly luminal, primary breast tumours from the INSEMA trial and three additional, independent cohorts (The Cancer Genome Atlas (TCGA) and cohorts from the University hospitals of Mannheim and Regensburg), and compared their performance with that of a logistic regression using clinical data only. Performance on an INSEMA hold-out set was investigated in a blinded manner.
None of the generated image analysis algorithms yielded significantly better than random areas under the receiver operating characteristic curves on the test sets, including the hold-out test set from INSEMA. In contrast, the logistic regression fitted on the Mannheim cohort retained a better than random performance on INSEMA and Regensburg. Including the image analysis model output in the logistic regression did not improve performance further on INSEMA.
Employing DL-based image analysis on histological slides, we could not predict SLN status for unseen cases in the INSEMA trial and other predominantly luminal cohorts.
前哨淋巴结(SLN)状态是乳腺癌具有临床重要意义的预后生物标志物,用于指导治疗,尤其是对于激素受体阳性、HER2 阴性病例。然而,在治疗前越来越多地省略了侵袭性淋巴结分期,随机分组的 Sentinel Mamma 研究(INSEMA)等研究探讨了进一步降低腋窝手术程度的潜力。因此,使用医学图像准确预测治疗前的前哨状态将非常有帮助。
我们使用在 ImageNet 上预训练的 ResNet 50 架构和以前成功的策略,训练深度学习(DL)基于图像分析算法,以预测 INSEMA 试验以及三个额外独立队列(癌症基因组图谱(TCGA)和曼海姆和雷根斯堡大学医院的队列)中主要为 luminal 型、原发性乳腺癌的苏木精/伊红染色图像的前哨状态,并将其性能与仅使用临床数据的逻辑回归进行比较。以盲法方式研究了 INSEMA 保留集的性能。
生成的任何图像分析算法在测试集(包括 INSEMA 的保留测试集)上的接收者操作特征曲线下的面积都没有明显优于随机,而基于曼海姆队列的逻辑回归在 INSEMA 和雷根斯堡仍保留了优于随机的性能。在逻辑回归中包括图像分析模型输出并没有进一步提高 INSEMA 的性能。
我们无法使用基于 DL 的组织学幻灯片图像分析来预测 INSEMA 试验和其他主要为 luminal 型队列中未见病例的 SLN 状态。