基于深度学习的结核分枝杆菌细菌生长检测框架。

IF 4.4 2区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Computational and structural biotechnology journal Pub Date : 2025-05-26 eCollection Date: 2025-01-01 DOI:10.1016/j.csbj.2025.05.030
Hoang-Anh T Vo, Sang Nguyen, Ai-Quynh T Tran, Han Nguyen, Hai Bich Ho, Philip W Fowler, Timothy M Walker, Thuy Thi Nguyen
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引用次数: 0

摘要

结核病每年造成的死亡人数超过任何其他病原体。耐药性是一个日益严重的全球性问题,尤其是因为诊断仍然具有挑战性和获取途径有限。96孔肉汤微稀释板提供了一种高通量表型检测方法,但它们可能具有挑战性。自动分枝杆菌生长检测算法(AMyGDA)是一个软件包,它使用图像处理技术来读取板,但难以处理表现出低生长或低质量图像的板。我们开发了一个新的框架,TMAS(结核微生物分析系统),它利用最先进的深度学习模型来检测96孔微滴板图像中的结核分枝杆菌生长。TMAS旨在快速准确地测量最低抑制浓度(mic),同时区分真正的细菌生长和人工产物。使用来自CRyPTIC(结核病综合耐药性预测:国际联盟)数据集的4,018张平板图像来训练模型并完善框架,TMAS达到了98.8%的基本一致性,显著优于国际标准化组织(ISO)设定的90%的阈值。TMAS提供了可靠、自动化和互补的评价,以支持专家解释,有可能提高结核病药敏试验(DST)的准确性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-based framework for Mycobacterium tuberculosis bacterial growth detection for antimicrobial susceptibility testing.

Tuberculosis (TB) kills more people annually than any other pathogen. Resistance is an ever-increasing global problem, not least because diagnostics remain challenging and access limited. 96-well broth microdilution plates offer one approach to high-throughput phenotypic testing, but they can be challenging to read. Automated Mycobacterial Growth Detection Algorithm (AMyGDA) is a software package that uses image processing techniques to read plates, but struggles with plates that exhibit low growth or images of low quality. We developed a new framework, TMAS (TB Microbial Analysis System), which leverages state-of-the-art deep learning models to detect M. tuberculosis growth in images of 96-well microtiter plates. TMAS is designed to measure Minimum Inhibitory Concentrations (MICs) rapidly and accurately while differentiating between true bacterial growth and artefacts. Using 4,018 plate images from the CRyPTIC (Comprehensive Resistance Prediction for Tuberculosis: An International Consortium) dataset to train models and refine the framework, TMAS achieved an essential agreement of 98.8%, significantly outperformed the 90% threshold established by the International Organization for Standardization (ISO). TMAS offers a reliable, automated and complementary evaluation to support expert interpretation, potentially improving accuracy and efficiency in tuberculosis drug susceptibility testing (DST).

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来源期刊
Computational and structural biotechnology journal
Computational and structural biotechnology journal Biochemistry, Genetics and Molecular Biology-Biophysics
CiteScore
9.30
自引率
3.30%
发文量
540
审稿时长
6 weeks
期刊介绍: Computational and Structural Biotechnology Journal (CSBJ) is an online gold open access journal publishing research articles and reviews after full peer review. All articles are published, without barriers to access, immediately upon acceptance. The journal places a strong emphasis on functional and mechanistic understanding of how molecular components in a biological process work together through the application of computational methods. Structural data may provide such insights, but they are not a pre-requisite for publication in the journal. Specific areas of interest include, but are not limited to: Structure and function of proteins, nucleic acids and other macromolecules Structure and function of multi-component complexes Protein folding, processing and degradation Enzymology Computational and structural studies of plant systems Microbial Informatics Genomics Proteomics Metabolomics Algorithms and Hypothesis in Bioinformatics Mathematical and Theoretical Biology Computational Chemistry and Drug Discovery Microscopy and Molecular Imaging Nanotechnology Systems and Synthetic Biology
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