Bruker Daltonics GmbH & Co. KG, 28359 Bremen, Germany.
Université de Caen, Normandie, 14032, Cedex 5, Caen, France.
J Microbiol Methods. 2022 Oct;201:106564. doi: 10.1016/j.mimet.2022.106564. Epub 2022 Sep 6.
Salmonella enterica is among the major burdens for public health at global level. Typing of salmonellae below the species level is fundamental for different purposes, but traditional methods are expensive, technically demanding, and time-consuming, and therefore limited to reference centers. Fourier transform infrared (FTIR) spectroscopy is an alternative method for bacterial typing, successfully applied for classification at different infra-species levels.
This study aimed to address the challenge of subtyping Salmonella enterica at O-serogroup level by using FTIR spectroscopy. We applied machine learning to develop a novel approach for S. enterica typing, using the FTIR-based IR Biotyper® system (IRBT; Bruker Daltonics GmbH & Co. KG, Germany). We investigated a multicentric collection of isolates, and we compared the novel approach with classical serotyping-based and molecular methods.
A total of 958 well characterized Salmonella isolates (25 serogroups, 138 serovars), collected in 11 different centers (in Europe and Japan), from clinical, environmental and food samples were included in this study and analyzed by IRBT. Infrared absorption spectra were acquired from water-ethanol bacterial suspensions, from culture isolates grown on seven different agar media. In the first part of the study, the discriminatory potential of the IRBT system was evaluated by comparison with reference typing method/s. In the second part of the study, the artificial intelligence capabilities of the IRBT software were applied to develop a classifier for Salmonella isolates at serogroup level. Different machine learning algorithms were investigated (artificial neural networks and support vector machine). A subset of 88 pre-characterized isolates (corresponding to 25 serogroups and 53 serovars) were included in the training set. The remaining 870 samples were used as validation set. The classifiers were evaluated in terms of accuracy, error rate and failed classification rate.
The classifier that provided the highest accuracy in the cross-validation was selected to be tested with four external testing sets. Considering all the testing sites, accuracy ranged from 97.0% to 99.2% for non-selective media, and from 94.7% to 96.4% for selective media.
The IRBT system proved to be a very promising, user-friendly, and cost-effective tool for Salmonella typing at serogroup level. The application of machine learning algorithms proved to enable a novel approach for typing, which relies on automated analysis and result interpretation, and it is therefore free of potential human biases. The system demonstrated a high robustness and adaptability to routine workflows, without the need of highly trained personnel, and proving to be suitable to be applied with isolates grown on different agar media, both selective and unselective. Further tests with currently circulating clinical, food and environmental isolates would be necessary before implementing it as a potentially stand-alone standard method for routine use.
沙门氏菌是全球公共卫生的主要负担之一。对沙门氏菌进行种以下的分型对于不同的目的至关重要,但传统方法昂贵、技术要求高且耗时,因此仅限于参考中心。傅里叶变换红外(FTIR)光谱是细菌分型的替代方法,已成功应用于不同亚种水平的分类。
本研究旨在使用 FTIR 光谱解决沙门氏菌 O 血清群水平的亚分型挑战。我们应用机器学习开发了一种新的沙门氏菌分型方法,使用基于 FTIR 的 IR Biotyper®系统(IRBT;Bruker Daltonics GmbH & Co. KG,德国)。我们研究了一个多中心的分离株集,将新型方法与经典的血清分型和分子方法进行了比较。
本研究共纳入了 958 株经过充分特征描述的沙门氏菌分离株(25 个血清群,138 个血清型),这些分离株来自临床、环境和食品样本,收集于 11 个不同的中心(欧洲和日本),并通过 IRBT 进行分析。从水-乙醇细菌悬浮液中获取红外吸收光谱,从在七种不同琼脂培养基上生长的培养物中获取。在研究的第一部分,通过与参考分型方法/比较评估了 IRBT 系统的区分潜力。在研究的第二部分,应用了 IRBT 软件的人工智能能力来开发血清群水平的沙门氏菌分离株分类器。研究了不同的机器学习算法(人工神经网络和支持向量机)。一个包含 88 个预特征描述的分离株(对应 25 个血清群和 53 个血清型)的子集被包含在训练集中。其余 870 个样本被用作验证集。根据准确性、错误率和分类失败率对分类器进行评估。
在交叉验证中提供最高准确性的分类器被选择用于四个外部测试集进行测试。考虑到所有测试地点,非选择性培养基的准确率范围为 97.0%至 99.2%,选择性培养基的准确率范围为 94.7%至 96.4%。
IRBT 系统被证明是一种非常有前途、用户友好且具有成本效益的沙门氏菌血清群水平分型工具。机器学习算法的应用证明了一种新型的分型方法的可行性,该方法依赖于自动化分析和结果解释,因此不存在潜在的人为偏见。该系统表现出很高的稳健性和对常规工作流程的适应性,无需高度训练的人员,并且适用于在选择性和非选择性琼脂培养基上生长的分离株。在将其作为一种潜在的独立标准方法用于常规使用之前,还需要对目前流行的临床、食品和环境分离株进行进一步测试。