Marangoni-Ghoreyshi Yasmin Garcia, Franca Thiago, Esteves José, Maranni Ana, Pereira Portes Karine Dorneles, Cena Cicero, Leal Cassia R B
UFMS - Universidade Federal de Mato Grosso do Sul, Graduate Program in Veterinary Science (CIVET) Campo Grande MS Brazil.
UFMS - Universidade Federal de Mato Grosso do Sul, Optics and Photonic Lab (SISFOTON-UFMS) Campo Grande MS Brazil
RSC Adv. 2023 Aug 21;13(36):24909-24917. doi: 10.1039/d3ra03518b.
The identification of multidrug-resistant strains from species responsible for diarrhea in calves still faces many laboratory limitations and is necessary for adequately monitoring the microorganism spread and control. Then, there is a need to develop a screening tool for bacterial strain identification in microbiology laboratories, which must show easy implementation, fast response, and accurate results. The use of FTIR spectroscopy to identify microorganisms has been successfully demonstrated in the literature, including many bacterial strains; here, we explored the FTIR potential for multi-resistant identification. First, we applied principal component analysis to observe the group formation tendency; the first results showed no clustering tendency with a messy sample score distribution; then, we improved these results by adequately selecting the main principal components which most contribute to group separation. Finally, using machine learning algorithms, a predicting model showed 75% overall accuracy, demonstrating the method's viability as a screaming test for microorganism identification.
从引起犊牛腹泻的物种中鉴定多重耐药菌株仍面临许多实验室限制,而这对于充分监测微生物传播和控制至关重要。因此,有必要开发一种用于微生物学实验室细菌菌株鉴定的筛查工具,该工具必须易于实施、响应迅速且结果准确。文献中已成功证明使用傅里叶变换红外光谱(FTIR)来鉴定微生物,包括许多细菌菌株;在此,我们探索了FTIR在多重耐药鉴定方面的潜力。首先,我们应用主成分分析来观察组群形成趋势;初步结果显示没有聚类趋势,样本得分分布混乱;然后,我们通过充分选择对组群分离贡献最大的主要主成分来改善这些结果。最后,使用机器学习算法,一个预测模型显示总体准确率为75%,证明了该方法作为微生物鉴定筛查测试的可行性。