In Human pathology ; h5-index 41.0
Lymphovascular invasion, specifically lymph-blood vessel invasion (LBVI), is a risk factor for metastases in breast invasive ductal carcinoma (IDC) and is routinely screened using hematoxylin-eosin histopathological images. However, routine reports only describe whether LBVI is present and does not provide other potential prognostic information of LBVI. This study aims to evaluate the clinical significance of LBVI in 685 IDC cases and explore the added predictive value of LBVI on lymph node metastases (LNM) via supervised deep learning (DL), an expert-experience embedded knowledge transfer learning (EEKT) model in 40 LBVI-positive cases signed by the routine report. Multivariate logistic regression and propensity score matching analysis demonstrated that LBVI (OR 4.203, 95%CI 2.809-6.290, p < 0.001) was a significant risk factor for LNM. Then, the EEKT model trained on 5780 image patches automatically segmented LBVI with a patch-wise Dice similarity coefficient of 0.930 in the test set and output counts, location, and morphometric features of the LBVIs. Some morphometric features were beneficial for further stratification within the 40 LBVI-positive cases. The results showed that LBVI in cases with LNM had a higher short-to-long side ratio of the minimum rectangle (MR) (0.686 vs. 0.480, p = 0.001), LBVI-to-MR area ratio (0.774 vs. 0.702, p = 0.002), and solidity (0.983 vs. 0.934, p = 0.029) compared to LBVI in cases without LNM. The results highlight the potential of DL to assist pathologists in quantifying LBVI and, more importantly, in exploring added prognostic information from LBVI.
Chen Jiamei, Yang Yang, Luo Bo, Wen Yaofeng, Chen Qingzhong, Ma Ru, Huang Zhen, Zhu Hangjia, Li Yan, Chen Yongshun, Qian Dahong
2022-Dec-05
Breast cancer, Deep learning, HE histopathology image, Knowledge transfer learning, Lymph node metastases, Lymphovascular invasion