Deep learning assessment of breast terminal duct lobular unit involution: towards automated prediction of breast cancer risk
Suzanne C Wetstein, Allison M Onken, Christina Luffman, Gabrielle M, Baker, Michael E Pyle, Kevin H Kensler, Ying Liu, Bart Bakker, Ruud Vlutters,, Marinus B van Leeuwen, Laura C Collins, Stuart J Schnitt, Josien PW Pluim,, Rulla M Tamimi, Yujing J Heng, Mitko Veta

TL;DR
This study presents a deep learning-based computational pathology method to automatically quantify TDLU involution in breast tissue, facilitating large-scale breast cancer risk assessment with high accuracy and reliability.
Contribution
The paper introduces a novel CNN-based approach for automated TDLU involution measurement, reducing manual effort and improving consistency in large cohort studies.
Findings
CNN models detected acini with F1 score of 0.73
Segmentation of TDLUs and adipose tissue achieved Dice scores of 0.86
Automated measures correlated well with manual assessments and age/menopausal status.
Abstract
Terminal ductal lobular unit (TDLU) involution is the regression of milk-producing structures in the breast. Women with less TDLU involution are more likely to develop breast cancer. A major bottleneck in studying TDLU involution in large cohort studies is the need for labor-intensive manual assessment of TDLUs. We developed a computational pathology solution to automatically capture TDLU involution measures. Whole slide images (WSIs) of benign breast biopsies were obtained from the Nurses' Health Study (NHS). A first set of 92 WSIs was annotated for TDLUs, acini and adipose tissue to train deep convolutional neural network (CNN) models for detection of acini, and segmentation of TDLUs and adipose tissue. These networks were integrated into a single computational method to capture TDLU involution measures including number of TDLUs per tissue area, median TDLU span and median number of…
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