Cross-modal ultra-scale learning with tri-modalities of renal biopsy images for glomerular multi-disease auxiliary diagnosis
Kaixing Long, Danyi Weng, Yun Mi, Zhentai Zhang, Yanmeng Lu, Jian Geng, Zhitao Zhou, Liming Zhong, Qianjin Feng, Wei Yang, Lei Cao

TL;DR
This paper introduces CMUS-Net, a novel cross-modal ultra-scale learning network that effectively fuses multi-scale and multi-modal renal biopsy images to accurately classify multiple glomerular diseases.
Contribution
The paper presents the first automatic multi-disease classification model using three modalities and two scales of renal biopsy images, addressing scale differences with a new cross-modal ultra-scale learning approach.
Findings
Achieves 95.37% accuracy on in-house dataset
Outperforms existing multi-modal and multi-scale methods
Demonstrates good generalization in disease staging
Abstract
Constructing a multi-modal automatic classification model based on three types of renal biopsy images can assist pathologists in glomerular multi-disease identification. However, the substantial scale difference between transmission electron microscopy (TEM) image features at the nanoscale and optical microscopy (OM) or immunofluorescence microscopy (IM) images at the microscale poses a challenge for existing multi-modal and multi-scale models in achieving effective feature fusion and improving classification accuracy. To address this issue, we propose a cross-modal ultra-scale learning network (CMUS-Net) for the auxiliary diagnosis of multiple glomerular diseases. CMUS-Net utilizes multiple ultrastructural information to bridge the scale difference between nanometer and micrometer images. Specifically, we introduce a sparse multi-instance learning module to aggregate features from TEM…
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Taxonomy
TopicsAI in cancer detection · Digital Imaging for Blood Diseases · Systemic Lupus Erythematosus Research
