傅立叶变换红外光谱中的机器学习用于识别抗生素耐药性:用不同种类微生物进行演示

Claudia Patricia Barrera Patiño, Jennifer Machado Soares, Kate Cristina Blanco, Vanderlei Salvador Bagnato
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引用次数: 0

摘要

最近的研究介绍了在以识别抗生素耐药性为重点的研究中使用机器学习算法的重要性。在本研究中,我们强调了建立坚实的机器学习基础对区分微生物抗菌性的重要性。利用先进的机器学习算法,我们建立了一种方法,能够分析化脓性链球菌和变异链球菌(革兰氏阳性)以及大肠埃希菌和肺炎克雷伯菌(革兰氏阴性)样本的傅立叶变换红外光谱(FTIR)结构图,证明了这种方法在不同微生物中的横向适用性。该分析侧重于傅立叶变换红外光谱中的特定生物大分子--碳水化合物、脂肪酸和蛋白质,提供了一个超越微生物变异性的多维数据库。结果表明,无论细菌的革兰氏分类和涉及的物种如何,该方法都能始终如一地识别耐药性模式,从而加强了所识别的结构特征在所测试的微生物中具有普遍性这一前提。通过在四个不同的物种中验证这种方法,我们的研究证明了所使用方法的通用性和精确性,同时也为开发一种快速、安全地鉴定抗菌药耐药性的创新方案提供了支持。这一进展对于优化治疗策略和避免耐药性扩散至关重要。这强调了专门的机器学习基础在有效区分革兰氏阴性菌和革兰氏阳性菌的耐药性特征方面的相关性,以用于抗生素耐药性的鉴定。所获得的结果极有可能应用于临床程序。
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Machine Learning in FTIR Spectrum for the Identification of Antibiotic Resistance: A Demonstration with Different Species of Microorganisms
Recent studies introduced the importance of using machine learning algorithms in research focused on the identification of antibiotic resistance. In this study, we highlight the importance of building solid machine learning foundations to differentiate antimicrobial resistance among microorganisms. Using advanced machine learning algorithms, we established a methodology capable of analyzing the FTIR structural profile of the samples of Streptococcus pyogenes and Streptococcus mutans (Gram-positive), as well as Escherichia coli and Klebsiella pneumoniae (Gram-negative), demonstrating cross-sectional applicability in this focus on different microorganisms. The analysis focuses on specific biomolecules—Carbohydrates, Fatty Acids, and Proteins—in FTIR spectra, providing a multidimensional database that transcends microbial variability. The results highlight the ability of the method to consistently identify resistance patterns, regardless of the Gram classification of the bacteria and the species involved, reinforcing the premise that the structural characteristics identified are universal among the microorganisms tested. By validating this approach in four distinct species, our study proves the versatility and precision of the methodology used, in addition to bringing support to the development of an innovative protocol for the rapid and safe identification of antimicrobial resistance. This advance is crucial for optimizing treatment strategies and avoiding the spread of resistance. This emphasizes the relevance of specialized machine learning bases in effectively differentiating between resistance profiles in Gram-negative and Gram-positive bacteria to be implemented in the identification of antibiotic resistance. The obtained result has a high potential to be applied to clinical procedures.
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