Institute of Mass Spectrometer and Atmospheric Environment, Guangdong Provincial Engineering Research Center for On-Line Source Apportionment System of Air Pollution, Jinan University, Guangzhou, 510632, China.
Guangdong-Hongkong-Macau Joint Laboratory of Collaborative Innovation for Environmental Quality, Guangzhou, 510632, China.
Rapid Commun Mass Spectrom. 2021 May 30;35(10):e9069. doi: 10.1002/rcm.9069.
Single-particle aerosol mass spectrometry is a practical method for studying microbial aerosols. However, the related mass spectral characteristics of single-cell microorganisms have not yet been studied systematically; hence, further investigations are necessary.
Different microbial cells were grown and directly aerosolized in the laboratory. These aerosols were then drawn into a single-particle mass spectrometer platform, and single-cell mass spectra profiles were obtained in real-time. The biological characteristics, ion variation trends, and microbial types were analyzed with either laser pulse energy or laser fluence.
The single-particle mass spectra contained prominent peaks that could be attributed to the presence of biological matter, such as organic phosphate and nitrogen, amino acids, and spore-associated calcium complexes. Limited types of average mass spectral patterns were present, and a significant correlation was found between the ion intensity trend (presence and absence of peaks) and laser ionization energy (expressed by the total positive ion intensity). Although a single spectral data point does not contain all the peaks of the average spectrum, it covers most of the characteristic peaks and could be identified using a machine learning algorithm. After the analysis of single-particle mass spectra, we found that using multi-group features (e.g., peak intensity ratio of m/z +47 and +41, peak intensity ratio of N(CH ) and N(CH ) , and 12 peak variables) led to an identification accuracy of approximately 92.4% with the random forest algorithm.
The results indicate that single-cell mass spectral profiles can be used to distinguish microbial aerosols and further illustrate their origin in a laboratory setting.
单颗粒气溶胶质谱是研究微生物气溶胶的一种实用方法。然而,单细胞微生物的相关质谱特征尚未得到系统研究;因此,需要进一步研究。
在实验室中培养不同的微生物细胞,并将其直接气溶胶化。然后将这些气溶胶吸入单颗粒质谱仪平台,实时获得单细胞质谱谱图。通过激光脉冲能量或激光通量分析生物特征、离子变化趋势和微生物类型。
单颗粒质谱包含明显的峰,可以归因于生物物质的存在,如有机磷酸盐和氮、氨基酸和与孢子相关的钙复合物。存在有限类型的平均质谱模式,离子强度趋势(峰的存在和不存在)与激光电离能(用总正离子强度表示)之间存在显著相关性。虽然单个光谱数据点不包含平均光谱的所有峰,但它包含了大部分特征峰,可以使用机器学习算法进行识别。对单颗粒质谱进行分析后,我们发现使用多组特征(例如,m/z+47 和+41 的峰强度比、N(CH ) 和 N(CH ) 的峰强度比以及 12 个峰变量)可以使随机森林算法的识别准确率约为 92.4%。
结果表明,单细胞质谱谱图可用于区分微生物气溶胶,并进一步说明其在实验室环境中的来源。