Deep Learning-Based Grading of Ductal Carcinoma In Situ in Breast Histopathology Images
Suzanne C. Wetstein, Nikolas Stathonikos, Josien P.W. Pluim, Yujing J., Heng, Natalie D. ter Hoeve, Celien P.H. Vreuls, Paul J. van Diest, Mitko Veta

TL;DR
This study presents a deep learning system for grading ductal carcinoma in situ (DCIS) in breast histopathology images, achieving performance comparable to expert pathologists and potentially aiding in more objective diagnoses.
Contribution
The paper introduces a novel deep learning-based DCIS grading system trained on expert consensus, providing an automated, objective, and reproducible tool for pathology assessment.
Findings
Deep learning system achieved higher inter-observer agreement than individual pathologists.
System's agreement with experts was comparable to inter-expert agreement.
Potential to assist pathologists with robust second opinions on DCIS grading.
Abstract
Ductal carcinoma in situ (DCIS) is a non-invasive breast cancer that can progress into invasive ductal carcinoma (IDC). Studies suggest DCIS is often overtreated since a considerable part of DCIS lesions may never progress into IDC. Lower grade lesions have a lower progression speed and risk, possibly allowing treatment de-escalation. However, studies show significant inter-observer variation in DCIS grading. Automated image analysis may provide an objective solution to address high subjectivity of DCIS grading by pathologists. In this study, we developed a deep learning-based DCIS grading system. It was developed using the consensus DCIS grade of three expert observers on a dataset of 1186 DCIS lesions from 59 patients. The inter-observer agreement, measured by quadratic weighted Cohen's kappa, was used to evaluate the system and compare its performance to that of expert observers.…
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