Department of Thoracic Surgery, Shanghai Pulmonary Hospital, Tongji University School of Medicine, Shanghai, China.
Department of Chemistry, Fudan University, Shanghai, China.
Expert Rev Proteomics. 2024 Jul-Aug;21(7-8):271-280. doi: 10.1080/14789450.2024.2394190. Epub 2024 Aug 21.
Metaproteomics offers insights into the function of complex microbial communities, while it is also capable of revealing microbe-microbe and host-microbe interactions. Data-independent acquisition (DIA) mass spectrometry is an emerging technology, which holds great potential to achieve deep and accurate metaproteomics with higher reproducibility yet still facing a series of challenges due to the inherent complexity of metaproteomics and DIA data.
This review offers an overview of the DIA metaproteomics approaches, covering aspects such as database construction, search strategy, and data analysis tools. Several cases of current DIA metaproteomics studies are presented to illustrate the procedures. Important ongoing challenges are also highlighted. Future perspectives of DIA methods for metaproteomics analysis are further discussed. Cited references are searched through and collected from Google Scholar and PubMed.
Considering the inherent complexity of DIA metaproteomics data, data analysis strategies specifically designed for interpretation are imperative. From this point of view, we anticipate that deep learning methods and de novo sequencing methods will become more prevalent in the future, potentially improving protein coverage in metaproteomics. Moreover, the advancement of metaproteomics also depends on the development of sample preparation methods, data analysis strategies, etc. These factors are key to unlocking the full potential of metaproteomics.
代谢组学可以深入了解复杂微生物群落的功能,同时还能够揭示微生物-微生物和宿主-微生物之间的相互作用。数据非依赖性采集(DIA)质谱技术是一种新兴技术,具有实现深度和准确代谢组学分析的巨大潜力,具有更高的重现性,但由于代谢组学和 DIA 数据的固有复杂性,仍面临一系列挑战。
本综述概述了 DIA 代谢组学方法,涵盖了数据库构建、搜索策略和数据分析工具等方面。介绍了当前 DIA 代谢组学研究的几个案例,以说明这些程序。还强调了重要的正在面临的挑战。进一步讨论了 DIA 方法在代谢组学分析中的未来展望。通过谷歌学术和 PubMed 搜索并收集了参考文献。
考虑到 DIA 代谢组学数据的固有复杂性,专门用于解释的数据分析策略是必不可少的。从这个角度来看,我们预计深度学习方法和从头测序方法将在未来变得更加流行,可能会提高代谢组学中的蛋白质覆盖率。此外,代谢组学的发展还取决于样品制备方法、数据分析策略等的发展。这些因素是充分发挥代谢组学潜力的关键。