IBM Almaden Research Center, San Jose, California, USA.
IBM T.J. Watson Research Center, New York, New York, USA.
mSystems. 2024 Nov 19;9(11):e0084024. doi: 10.1128/msystems.00840-24. Epub 2024 Oct 10.
The increasing knowledge of microbial ecology in food products relating to quality and safety and the established usefulness of machine learning algorithms for anomaly detection in multiple scenarios suggests that the application of microbiome data in food production systems for anomaly detection could be a valuable approach to be used in food systems. These methods could be used to identify ingredients that deviate from their typical microbial composition, which could indicate food fraud or safety issues. The objective of this study was to assess the feasibility of using shotgun sequencing data as input into anomaly detection algorithms using fluid milk as a model system. Contrastive principal component analysis (PCA), cluster-based methods, and explainable artificial intelligence (AI) were evaluated for the detection of two anomalous sample classes using longitudinal metagenomic profiling of fluid milk compared to baseline (BL) samples collected under comparable circumstances. Traditional methods (alpha and beta diversity, clustering-based contrastive PCA, multidimensional scaling, and dendrograms) failed to differentiate anomalous sample classes; however, explainable AI was able to classify anomalous vs baseline samples and indicate microbial drivers in association with antibiotic use. We validated the potential for explainable AI to classify different milk sources using larger publicly available fluid milk 16S rDNA sequencing data sets and demonstrated that explainable AI is able to differentiate between milk storage methods, processing stages, and seasons. Our results indicate that the application of artificial intelligence continues to hold promise in the realm of microbiome data analysis and could present further opportunities for downstream analytic automation to aid in food safety and quality.
We evaluated the feasibility of using untargeted metagenomic sequencing of raw milk for detecting anomalous food ingredient content with artificial intelligence methods in a study specifically designed to test this hypothesis. We also show through analysis of publicly available fluid milk microbial data that our artificial intelligence approach is able to successfully predict milk in different stages of processing. The approach could potentially be applied in the food industry for safety and quality control.
微生物生态学在与质量和安全相关的食品方面的知识不断增加,以及机器学习算法在多种情况下用于异常检测的有效性已经确立,这表明将微生物组数据应用于食品生产系统中的异常检测可能是一种在食品系统中有用的方法。这些方法可用于识别成分与其典型微生物组成的偏离,这可能表明存在食品欺诈或安全问题。本研究的目的是评估使用高通量测序数据作为输入到异常检测算法中的可行性,以液态奶为模型系统。使用纵向宏基因组分析液态奶,对比在类似情况下收集的基线(BL)样本,评估对比主成分分析(PCA)、基于聚类的方法和可解释人工智能(AI)在检测两种异常样本类别的可行性。传统方法(alpha 和 beta 多样性、基于聚类的对比 PCA、多维尺度分析和聚类树)未能区分异常样本类;然而,可解释 AI 能够对异常样本和基线样本进行分类,并指出与抗生素使用相关的微生物驱动因素。我们使用更大的公开可用的液态奶 16S rDNA 测序数据集验证了可解释 AI 对不同牛奶来源进行分类的潜力,并证明了可解释 AI 能够区分牛奶储存方法、加工阶段和季节。我们的结果表明,人工智能在微生物组数据分析领域的应用继续具有前景,并为下游分析自动化提供了进一步的机会,以帮助食品安全和质量。
我们在一项专门设计来检验这一假设的研究中,评估了使用未靶向的生牛乳宏基因组测序结合人工智能方法检测异常食品成分含量的可行性。我们还通过分析公开的液态奶微生物数据表明,我们的人工智能方法能够成功预测不同加工阶段的牛奶。该方法可能有潜力应用于食品工业中的安全和质量控制。