IVCECVNov 30, 2023

Quantification of cardiac capillarization in single-immunostained myocardial slices using weakly supervised instance segmentation

arXiv:2311.18173v11 citationsh-index: 10
Originality Incremental advance
AI Analysis

This provides an automated solution for researchers in cardiac pathology to assess capillary density more efficiently, though it is incremental as it builds on existing segmentation methods.

The paper tackled the problem of automating the quantification of cardiac capillarization from single-immunostained myocardial slices, which previously required manual segmentation, by developing AutoQC, a weakly supervised instance segmentation tool that outperformed YOLOv8-Seg and reduced annotation workload.

Decreased myocardial capillary density has been reported as an important histopathological feature associated with various heart disorders. Quantitative assessment of cardiac capillarization typically involves double immunostaining of cardiomyocytes (CMs) and capillaries in myocardial slices. In contrast, single immunostaining of basement membrane components is a straightforward approach to simultaneously label CMs and capillaries, presenting fewer challenges in background staining. However, subsequent image analysis always requires manual work in identifying and segmenting CMs and capillaries. Here, we developed an image analysis tool, AutoQC, to automatically identify and segment CMs and capillaries in immunofluorescence images of collagen type IV, a predominant basement membrane protein within the myocardium. In addition, commonly used capillarization-related measurements can be derived from segmentation masks. AutoQC features a weakly supervised instance segmentation algorithm by leveraging the power of a pre-trained segmentation model via prompt engineering. AutoQC outperformed YOLOv8-Seg, a state-of-the-art instance segmentation model, in both instance segmentation and capillarization assessment. Furthermore, the training of AutoQC required only a small dataset with bounding box annotations instead of pixel-wise annotations, leading to a reduced workload during network training. AutoQC provides an automated solution for quantifying cardiac capillarization in basement-membrane-immunostained myocardial slices, eliminating the need for manual image analysis once it is trained.

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