Single Shot AI-assisted quantification of KI-67 proliferation index in breast cancer
Journal:
arXiv
Published Date:
Mar 25, 2025
Abstract
Reliable quantification of Ki-67, a key proliferation marker in breast
cancer, is essential for molecular subtyping and informed treatment planning.
Conventional approaches, including visual estimation and manual counting,
suffer from interobserver variability and limited reproducibility. This study
introduces an AI-assisted method using the YOLOv8 object detection framework
for automated Ki-67 scoring. High-resolution digital images (40x magnification)
of immunohistochemically stained tumor sections were captured from Ki-67
hotspot regions and manually annotated by a domain expert to distinguish
Ki-67-positive and negative tumor cells. The dataset was augmented and divided
into training (80%), validation (10%), and testing (10%) subsets. Among the
YOLOv8 variants tested, the Medium model achieved the highest performance, with
a mean Average Precision at 50% Intersection over Union (mAP50) exceeding 85%
for Ki-67-positive cells. The proposed approach offers an efficient, scalable,
and objective alternative to conventional scoring methods, supporting greater
consistency in Ki-67 evaluation. Future directions include developing
user-friendly clinical interfaces and expanding to multi-institutional datasets
to enhance generalizability and facilitate broader adoption in diagnostic
practice.