ECTIL: Label-efficient Computational Tumour Infiltrating Lymphocyte (TIL) assessment in breast cancer: Multicentre validation in 2,340 patients with breast cancer
Yoni Schirris, Rosie Voorthuis, Mark Opdam, Marte Liefaard, Gabe S, Sonke, Gwen Dackus, Vincent de Jong, Yuwei Wang, Annelot Van Rossum, Tessa G, Steenbruggen, Lars C Steggink, Liesbeth G.E. de Vries, Marc van de Vijver,, Roberto Salgado, Efstratios Gavves, Paul J van Diest

TL;DR
ECTIL is a simple, label-efficient deep learning model for assessing tumour-infiltrating lymphocytes in breast cancer, achieving high concordance with pathologists and prognostic value with minimal annotations.
Contribution
We introduce ECTIL, a novel deep learning approach that requires far fewer annotations and simplifies TIL assessment in breast cancer.
Findings
ECTIL shows high concordance with pathologist scores (r=0.54-0.74).
ECTIL's scores are independently associated with overall survival.
The model can be trained rapidly and with minimal annotations.
Abstract
The level of tumour-infiltrating lymphocytes (TILs) is a prognostic factor for patients with (triple-negative) breast cancer (BC). Computational TIL assessment (CTA) has the potential to assist pathologists in this labour-intensive task, but current CTA models rely heavily on many detailed annotations. We propose and validate a fundamentally simpler deep learning based CTA that can be trained in only ten minutes on hundredfold fewer pathologist annotations. We collected whole slide images (WSIs) with TILs scores and clinical data of 2,340 patients with BC from six cohorts including three randomised clinical trials. Morphological features were extracted from whole slide images (WSIs) using a pathology foundation model. Our label-efficient Computational stromal TIL assessment model (ECTIL) directly regresses the TILs score from these features. ECTIL trained on only a few hundred samples…
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Taxonomy
TopicsCancer Immunotherapy and Biomarkers · Esophageal Cancer Research and Treatment · Breast Cancer Treatment Studies
MethodsSparse Evolutionary Training
