An Investigation into Glomeruli Detection in Kidney H&E and PAS Images using YOLO
Kimia Hemmatirad, Morteza Babaie, Jeffrey Hodgin, Liron Pantanowitz,, H.R.Tizhoosh

TL;DR
This study demonstrates that YOLO-v4 can effectively detect glomeruli in kidney histopathology images stained with H&E and PAS, offering a faster alternative to manual annotation.
Contribution
The paper applies YOLO-v4 for automated glomeruli detection in kidney images, including multi-stain datasets, and validates its performance across multiple datasets.
Findings
High sensitivity and specificity achieved in detection.
Effective cross-stain detection demonstrated.
YOLO-v4 outperforms existing segmentation methods.
Abstract
Context: Analyzing digital pathology images is necessary to draw diagnostic conclusions by investigating tissue patterns and cellular morphology. However, manual evaluation can be time-consuming, expensive, and prone to inter- and intra-observer variability. Objective: To assist pathologists using computerized solutions, automated tissue structure detection and segmentation must be proposed. Furthermore, generating pixel-level object annotations for histopathology images is expensive and time-consuming. As a result, detection models with bounding box labels may be a feasible solution. Design: This paper studies. YOLO-v4 (You-Only-Look-Once), a real-time object detector for microscopic images. YOLO uses a single neural network to predict several bounding boxes and class probabilities for objects of interest. YOLO can enhance detection performance by training on whole slide images.…
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Taxonomy
TopicsAI in cancer detection · Colorectal Cancer Screening and Detection · Medical Image Segmentation Techniques
