Attention-based multi-residual network for lung segmentation in diseased lungs with custom data augmentation.

Publication date: Nov 22, 2024

Lung disease analysis in chest X-rays (CXR) using deep learning presents significant challenges due to the wide variation in lung appearance caused by disease progression and differing X-ray settings. While deep learning models have shown remarkable success in segmenting lungs from CXR images with normal or mildly abnormal findings, their performance declines when faced with complex structures, such as pulmonary opacifications. In this study, we propose AMRU++, an attention-based multi-residual UNet++ network designed for robust and accurate lung segmentation in CXR images with both normal and severe abnormalities. The model incorporates attention modules to capture relevant spatial information and multi-residual blocks to extract rich contextual and discriminative features of lung regions. To further enhance segmentation performance, we introduce a data augmentation technique that simulates the features and characteristics of CXR pathologies, addressing the issue of limited annotated data. Extensive experiments on public and private datasets comprising 350 cases of pneumoconiosis, COVID-19, and tuberculosis validate the effectiveness of our proposed framework and data augmentation technique.

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Concepts Keywords
Learning COVID-19
Pneumoconiosis Deep Learning
Pulmonary Humans
Rich Lung
Tuberculosis Lung Diseases
Pneumoconiosis
Radiography, Thoracic
SARS-CoV-2

Semantics

Type Source Name
disease MESH Lung disease
disease MESH disease progression
drug DRUGBANK Spinosad
disease MESH abnormalities
disease MESH residual blocks
disease MESH pneumoconiosis
disease MESH COVID-19
disease MESH tuberculosis
pathway KEGG Tuberculosis
disease MESH death
disease MESH inflammation
disease MESH morbidities
drug DRUGBANK Coenzyme M
disease IDO quality
drug DRUGBANK Flunarizine
drug DRUGBANK Aspartame
disease IDO algorithm
disease IDO object
disease MESH Causes
disease MESH infection
disease MESH pneumonia
pathway REACTOME Translation
disease IDO process
disease IDO intervention
disease MESH diabetic retinopathy
disease MESH brain tumor
pathway REACTOME Reproduction

Original Article

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