通过乙醇预处理和无监督机器学习量化染色图像改善革兰氏染色效果。

IF 2.3 3区 生物学 Q3 MICROBIOLOGY Archives of Microbiology Pub Date : 2024-06-21 DOI:10.1007/s00203-024-04045-w
Xuan Guo, Wenming Che
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引用次数: 0

摘要

在这项研究中,我们提出了一种乙醇预处理革兰氏染色法,它能显著增强染色的颜色对比度,从而提高判断的准确性,并通过无监督机器学习图像分析消除了肉眼观察误差,证明了这种改进的有效性。通过在各种细菌样本上比较传统革兰氏染色法和改进后的方法,结果显示改进后的方法具有明显的色彩对比。利用多模态评估策略,包括非辅助眼睛观察、手动图像分割和先进的无监督机器学习自动图像分割,全面验证了乙醇预处理对革兰氏染色的实用性。在定量分析中,CIEDE2000和CMC色差标准的应用证实了该方法在提高革兰氏染色分辨能力方面的显著效果。该研究不仅提高了革兰氏染色的效果,而且为分析革兰氏染色结果提供了一种更准确、更规范的策略,可为微生物诊断提供有用的分析工具。
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Improvement of gram staining effect by ethanol pretreatment and quantization of staining image by unsupervised machine learning

In this study, we propose an Ethanol Pretreatment Gram staining method that significantly enhances the color contrast of the stain, thereby improving the accuracy of judgement, and demonstrated the effectiveness of the modification by eliminating unaided-eye observational errors with unsupervised machine learning image analysis. By comparing the traditional Gram staining method with the improved method on various bacterial samples, results showed that the improved method offers distinct color contrast. Using multimodal assessment strategies, including unaided-eye observation, manual image segmentation, and advanced unsupervised machine learning automatic image segmentation, the practicality of ethanol pretreatment on Gram staining was comprehensively validated. In our quantitative analysis, the application of the CIEDE2000, and CMC color difference standards confirmed the significant effect of the method in enhancing the discrimination of Gram staining.This study not only improved the efficacy of Gram staining, but also provided a more accurate and standardized strategy for analyzing Gram staining results, which might provide an useful analytical tool in microbiological diagnostics.

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来源期刊
Archives of Microbiology
Archives of Microbiology 生物-微生物学
CiteScore
4.90
自引率
3.60%
发文量
601
审稿时长
3 months
期刊介绍: Research papers must make a significant and original contribution to microbiology and be of interest to a broad readership. The results of any experimental approach that meets these objectives are welcome, particularly biochemical, molecular genetic, physiological, and/or physical investigations into microbial cells and their interactions with their environments, including their eukaryotic hosts. Mini-reviews in areas of special topical interest and papers on medical microbiology, ecology and systematics, including description of novel taxa, are also published. Theoretical papers and those that report on the analysis or ''mining'' of data are acceptable in principle if new information, interpretations, or hypotheses emerge.
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