Efficient and Accurate Tuberculosis Diagnosis: Attention Residual U-Net and Vision Transformer Based Detection Framework

Efficient and Accurate Tuberculosis Diagnosis: Attention Residual U-Net and Vision Transformer Based Detection Framework

Publication date: Jan 06, 2025

Tuberculosis (TB), an infectious disease caused by Mycobacterium tuberculosis, continues to be a major global health threat despite being preventable and curable. This burden is particularly high in low and middle income countries. Microscopy remains essential for diagnosing TB by enabling direct visualization of Mycobacterium tuberculosis in sputum smear samples, offering a cost effective approach for early detection and effective treatment. Given the labour-intensive nature of microscopy, automating the detection of bacilli in microscopic images is crucial to improve both the expediency and reliability of TB diagnosis. The current methodologies for detecting tuberculosis bacilli in bright field microscopic sputum smear images are hindered by limited automation capabilities, inconsistent segmentation quality, and constrained classification precision. This paper proposes a twostage deep learning methodology for tuberculosis bacilli detection, comprising bacilli segmentation followed by classification. In the initial phase, an advanced U-Net model employing attention blocks and residual connections is proposed to segment microscopic sputum smear images, enabling the extraction of Regions of Interest (ROIs). The extracted ROIs are then classified using a Vision Transformer, which we specifically customized as TBViT to enhance the precise detection of bacilli within the images. For the experiments, a newly developed dataset of microscopic sputum smear images derived from Ziehl-Neelsen-stained slides is used in conjunction with existing public datasets. The qualitative and quantitative evaluation of the experiments using various metrics demonstrates that the proposed model achieves significantly improved segmentation performance, higher classification accuracy, and a greater level of automation, surpassing existing methods.

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Concepts Keywords
Aguilera Attention
Biotech Bacilli
Efficiency Classification
Hiv Detection
Pathology Image
Images
Net
Proposed
Regions
Residual
Segmentation
Smear
Sputum
Training
Tuberculosis

Semantics

Type Source Name
disease MESH Tuberculosis
pathway KEGG Tuberculosis
disease MESH infectious disease
pathway REACTOME Infectious disease
disease IDO quality
drug DRUGBANK Coenzyme M
disease IDO pathogen
disease MESH death
disease IDO infectious agent
disease MESH AIDS
disease MESH COVID 19
disease IDO site
drug DRUGBANK Ethanol
drug DRUGBANK Ademetionine
disease IDO bacteria
drug DRUGBANK Stavudine
disease IDO process
drug DRUGBANK Esomeprazole
disease IDO algorithm
drug DRUGBANK Saquinavir
drug DRUGBANK Dichloroacetic Acid
drug DRUGBANK Flunarizine
disease MESH residual block
drug DRUGBANK Aspartame
drug DRUGBANK Spinosad
drug DRUGBANK Alpha-Linolenic Acid
drug DRUGBANK Gold
disease IDO facility
drug DRUGBANK Glycerin
drug DRUGBANK Isoxaflutole
drug DRUGBANK Etoperidone
disease MESH pulmonary tuberculosis

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