Advances in Kidney Biopsy Lesion Assessment through Dense Instance Segmentation
Zhan Xiong, Junling He, Pieter Valkema, Tri Q. Nguyen, Maarten, Naesens, Jesper Kers, and Fons J. Verbeek

TL;DR
This paper introduces DiffRegFormer, a novel dense instance segmentation framework combining diffusion models, transformers, and RCNNs to accurately classify and segment kidney lesions in histopathology images, reducing variability and enabling domain transfer.
Contribution
The paper presents DiffRegFormer, a new end-to-end model for dense instance segmentation of kidney structures, addressing challenges like class imbalance and multi-label lesions in renal biopsy analysis.
Findings
Achieves 52.1% average precision in detection
Attains 46.8% average precision in segmentation
Classifies lesions with 89.2% precision and 64.6% recall
Abstract
Renal biopsies are the gold standard for the diagnosis of kidney diseases. Lesion scores made by renal pathologists are semi-quantitative and exhibit high inter-observer variability. Automating lesion classification within segmented anatomical structures can provide decision support in quantification analysis, thereby reducing inter-observer variability. Nevertheless, classifying lesions in regions-of-interest (ROIs) is clinically challenging due to (a) a large amount of densely packed anatomical objects, (b) class imbalance across different compartments (at least 3), (c) significant variation in size and shape of anatomical objects and (d) the presence of multi-label lesions per anatomical structure. Existing models cannot address these complexities in an efficient and generic manner. This paper presents an analysis for a \textbf{generalized solution} to datasets from various sources…
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Taxonomy
TopicsMRI in cancer diagnosis
MethodsConvolution · Diffusion
