arXiv Open Access 2025

Prompt2SegCXR:Prompt to Segment All Organs and Diseases in Chest X-rays

Abduz Zami Shadman Sobhan Rounaq Hossain Md. Sawran Sorker Mohiuddin Ahmed +1 lainnya
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Abstrak

Image segmentation plays a vital role in the medical field by isolating organs or regions of interest from surrounding areas. Traditionally, segmentation models are trained on a specific organ or a disease, limiting their ability to handle other organs and diseases. At present, few advanced models can perform multi-organ or multi-disease segmentation, offering greater flexibility. Also, recently, prompt-based image segmentation has gained attention as a more flexible approach. It allows models to segment areas based on user-provided prompts. Despite these advances, there has been no dedicated work on prompt-based interactive multi-organ and multi-disease segmentation, especially for Chest X-rays. This work presents two main contributions: first, generating doodle prompts by medical experts of a collection of datasets from multiple sources with 23 classes, including 6 organs and 17 diseases, specifically designed for prompt-based Chest X-ray segmentation. Second, we introduce Prompt2SegCXR, a lightweight model for accurately segmenting multiple organs and diseases from Chest X-rays. The model incorporates multi-stage feature fusion, enabling it to combine features from various network layers for better spatial and semantic understanding, enhancing segmentation accuracy. Compared to existing pre-trained models for prompt-based image segmentation, our model scores well, providing a reliable solution for segmenting Chest X-rays based on user prompts.

Topik & Kata Kunci

Penulis (6)

A

Abduz Zami

S

Shadman Sobhan

R

Rounaq Hossain

M

Md. Sawran Sorker

M

Mohiuddin Ahmed

M

Md. Redwan Hossain

Format Sitasi

Zami, A., Sobhan, S., Hossain, R., Sorker, M.S., Ahmed, M., Hossain, M.R. (2025). Prompt2SegCXR:Prompt to Segment All Organs and Diseases in Chest X-rays. https://arxiv.org/abs/2507.00673

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓