Analytical Capabilities and Future Perspectives of Chemometrics in Omics for Food Microbial Investigation.

IF 5.2 2区 化学 Q1 CHEMISTRY, ANALYTICAL
Feifei Sun, Yu Zhang, Chin Ping Tan, Ying Gu, Yuanfa Liu, Yong-Jiang Xu
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引用次数: 0

Abstract

Microbiomes significantly impact food flavor, food quality and human health. The development of omics technologies has revolutionized our understanding of the microbiome, the generated complex datasets, as well as their processing and interpretation need to be taken seriously. Currently, chemometrics has shown huge potential in omics data analysis, which is crucial to reveal the functional attributes and mechanisms of microbiomes in food nutrition and safety. However, various chemometric tools have their own characteristics, selecting appropriate technologies and performing multiomics data fusion analysis to improve the precision and reliability of food microbial investigations is still a huge challenge. In this review, we summarized the omics technologies used in food microbiome studies, overviewed the principle and applicability of chemometrics in omics, and discussed the challenges and prospects of chemometrics. The urgent need for chemometrics is to integrate deep learning (DL) and artificial intelligence algorithms to enhance its analytical capabilities and prediction accuracy. We hope this review will provide valuable insights of the integration of multiomics and bioinformatics combined with various chemometric techniques in data analysis for food microbial investigation. In the future, chemometrics combined with modern technologies for multiomics data analysis will further deepen our understanding of food microbiology and improve food safety.

化学计量学在食品微生物组学研究中的分析能力及未来展望。
微生物组显著影响食品风味、食品质量和人类健康。组学技术的发展彻底改变了我们对微生物组的理解,产生的复杂数据集,以及它们的处理和解释需要认真对待。目前,化学计量学在组学数据分析中显示出巨大的潜力,这对于揭示微生物组在食品营养和安全中的功能属性和机制至关重要。然而,各种化学计量工具都有各自的特点,选择合适的技术并进行多组学数据融合分析,以提高食品微生物调查的精度和可靠性仍然是一个巨大的挑战。本文综述了组学技术在食品微生物组学研究中的应用,综述了化学计量学在组学研究中的原理和应用,并讨论了化学计量学在食品微生物组学研究中的挑战和前景。化学计量学迫切需要将深度学习和人工智能算法相结合,以提高其分析能力和预测精度。希望本文的综述能够为多组学和生物信息学结合各种化学计量学技术在食品微生物数据分析中的应用提供有价值的见解。未来,化学计量学与现代多组学数据分析技术的结合将进一步加深我们对食品微生物学的认识,提高食品安全水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
12.00
自引率
4.00%
发文量
137
审稿时长
6 months
期刊介绍: Critical Reviews in Analytical Chemistry continues to be a dependable resource for both the expert and the student by providing in-depth, scholarly, insightful reviews of important topics within the discipline of analytical chemistry and related measurement sciences. The journal exclusively publishes review articles that illuminate the underlying science, that evaluate the field''s status by putting recent developments into proper perspective and context, and that speculate on possible future developments. A limited number of articles are of a "tutorial" format written by experts for scientists seeking introduction or clarification in a new area. This journal serves as a forum for linking various underlying components in broad and interdisciplinary means, while maintaining balance between applied and fundamental research. Topics we are interested in receiving reviews on are the following: · chemical analysis; · instrumentation; · chemometrics; · analytical biochemistry; · medicinal analysis; · forensics; · environmental sciences; · applied physics; · and material science.
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