Khurram, Syed Ali
An Automated Pipeline for Tumour-Infiltrating Lymphocyte Scoring in Breast Cancer
Shephard, Adam J, Jahanifar, Mostafa, Wang, Ruoyu, Dawood, Muhammad, Graham, Simon, Sidlauskas, Kastytis, Khurram, Syed Ali, Rajpoot, Nasir M, Raza, Shan E Ahmed
Tumour-infiltrating lymphocytes (TILs) are considered as a valuable prognostic markers in both triple-negative and human epidermal growth factor receptor 2 (HER2) positive breast cancer. In this study, we introduce an innovative deep learning pipeline based on the Efficient-UNet architecture to predict the TILs score for breast cancer whole-slide images (WSIs). We first segment tumour and stromal regions in order to compute a tumour bulk mask. We then detect TILs within the tumour-associated stroma, generating a TILs score by closely mirroring the pathologist's workflow. Our method exhibits state-of-the-art performance in segmenting tumour/stroma areas and TILs detection, as demonstrated by internal cross-validation on the TiGER Challenge training dataset and evaluation on the final leaderboards. Additionally, our TILs score proves competitive in predicting survival outcomes within the same challenge, underscoring the clinical relevance and potential of our automated TILs scoring pipeline as a breast cancer prognostic tool.
Transformer-based Model for Oral Epithelial Dysplasia Segmentation
Shephard, Adam J, Mahmood, Hanya, Raza, Shan E Ahmed, Araujo, Anna Luiza Damaceno, Santos-Silva, Alan Roger, Lopes, Marcio Ajudarte, Vargas, Pablo Agustin, McCombe, Kris, Craig, Stephanie, James, Jacqueline, Brooks, Jill, Nankivell, Paul, Mehanna, Hisham, Khurram, Syed Ali, Rajpoot, Nasir M
Oral epithelial dysplasia (OED) is a premalignant histopathological diagnosis given to lesions of the oral cavity. OED grading is subject to large inter/intra-rater variability, resulting in the under/over-treatment of patients. We developed a new Transformer-based pipeline to improve detection and segmentation of OED in haematoxylin and eosin (H&E) stained whole slide images (WSIs). Our model was trained on OED cases (n = 260) and controls (n = 105) collected using three different scanners, and validated on test data from three external centres in the United Kingdom and Brazil (n = 78). Our internal experiments yield a mean F1-score of 0.81 for OED segmentation, which reduced slightly to 0.71 on external testing, showing good generalisability, and gaining state-of-the-art results. This is the first externally validated study to use Transformers for segmentation in precancerous histology images. Our publicly available model shows great promise to be the first step of a fully-integrated pipeline, allowing earlier and more efficient OED diagnosis, ultimately benefiting patient outcomes.