# MSLNet and Perceptual Grouping for Guidewire Segmentation and Localization

**Authors:** Adrian Barbu

PMC · DOI: 10.3390/s25206426 · Sensors (Basel, Switzerland) · 2025-10-17

## TL;DR

This paper introduces a new method for finding and tracing thin guidewires in X-ray images used during heart procedures, improving accuracy and speed.

## Contribution

The paper introduces a novel perceptual grouping method and a fast segmentation approach for guidewire localization in fluoroscopy images.

## Key findings

- The method achieves competitive segmentation results compared to Res-UNet and nnU-Net.
- It reduces inference time by avoiding skip connections and refining segmentation only in promising areas.
- Experiments on two large datasets confirm the method's effectiveness.

## Abstract

Fluoroscopy (real-time X-ray) images are used for monitoring minimally invasive coronary angioplasty operations such as stent placement. During these operations, a thin wire called a guidewire is used to guide different tools, such as a stent or a balloon, in order to repair the vessels. However, fluoroscopy images are noisy, and the guidewire is very thin, practically invisible in many places, making its localization very difficult. Guidewire segmentation is the task of finding the guidewire pixels, while guidewire localization is the higher-level task aimed at finding a parameterized curve describing the guidewire points. This paper presents a method for guidewire localization that starts from a guidewire segmentation, from which it extracts a number of initial curves as pixel chains and uses a novel perceptual grouping method to merge these initial curves into a small number of curves. The paper also introduces a novel guidewire segmentation method that uses a residual network (ResNet) as a feature extractor and predicts a coarse segmentation that is refined only in promising locations to a fine segmentation. Experiments on two challenging datasets, one with 871 frames and one with 23,449 frames, show that the method obtains results competitive with existing segmentation methods such as Res-UNet and nnU-Net, while having no skip connections and a faster inference time.

## Full-text entities

- **Diseases:** Heart disease (MESH:D006331), heart attacks (MESH:D009203), MSL (MESH:D007859), injury to (MESH:D014947), death (MESH:D003643), atherosclerosis (MESH:D050197), AHD (MESH:C535290), strokes (MESH:D020521)
- **Chemicals:** cholesterol (MESH:D002784), oxygen (MESH:D010100), Pixel (-)
- **Species:** Homo sapiens (human, species) [taxon 9606], Sus scrofa (pig, species) [taxon 9823]

## Full text

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## Figures

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## References

22 references — full list in the complete paper: https://tomesphere.com/paper/PMC12567943/full.md

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Source: https://tomesphere.com/paper/PMC12567943