Rajapakse Maneeshin Y, Borras Eva, Yeap Danny, Peirano Daniel J, Kenyon Nicholas J, Davis Cristina E
Mechanical and Aerospace Engineering, University of California, Davis, One Shields Avenue, Davis, CA 95616, USA.
Department of Internal Medicine, 4150 V Street, Suite 3400, University of California, Davis, Sacramento, CA 95817, USA.
Anal Methods. 2018 Sep 21;10(35):4339-4349. doi: 10.1039/C8AY00846A. Epub 2018 Aug 14.
Differential mobility spectrometry (DMS) based detectors require rapid data analysis capabilities, embedded into the devices to achieve the optimum detection capabiites as portable trace chemical detectors. Automated algorithm-based DMS dispersion plot data analysis method was applied for the first time to pre-process and separate 3-dimentional (3-D) DMS dispersion data. We previously demonstrated our AnalyzeIMS (AIMS) software was capable of analyzing complex gas chromatography differential mobility spectrometry (GC-DMS) data sets. In our present work, the AIMS software was able to easliy separate DMS dispersion data sets of five chemicals that are important in detection of volatile organic compounds (VOCs): 2-butanone, 2-propanone, ethyl acetate, methanol and ethanol. Identification of chemicals from mixtures, separation of chemicals from a mixture and prediction capability of the software were all tested. These automated algorithms may have potential applications in separation of chemicals (or ion peaks) from other 3-D data obtained by hybrid analytical devices such as mass spectrometry (MS). New algorithm developments are included as future considerations to improve the current numerical approaches to fingerprint chemicals (ions) from a significantly complicated dispersion plot. Comprehensive peak identifcation by DMS-MS, variations of the DMS data due to chemical concentration, gas phase ion chemistry, temperature and pressure of the drift gas are considered in future algorithm improvements.
基于差分离子迁移谱(DMS)的探测器需要快速数据分析能力,并将其嵌入设备中,以实现作为便携式痕量化学探测器的最佳检测能力。基于自动算法的DMS色散图数据分析方法首次应用于预处理和分离三维(3-D)DMS色散数据。我们之前证明了我们的AnalyzeIMS(AIMS)软件能够分析复杂的气相色谱 - 差分离子迁移谱(GC-DMS)数据集。在我们目前的工作中,AIMS软件能够轻松分离出在挥发性有机化合物(VOCs)检测中重要的五种化学物质的DMS色散数据集:2-丁酮、2-丙酮、乙酸乙酯、甲醇和乙醇。对该软件从混合物中识别化学物质、从混合物中分离化学物质以及预测能力进行了测试。这些自动算法可能在从质谱(MS)等混合分析设备获得的其他三维数据中分离化学物质(或离子峰)方面具有潜在应用。新算法的开发作为未来的考虑因素,以改进当前从明显复杂的色散图中识别化学物质(离子)的数值方法。未来算法改进中将考虑通过DMS-MS进行全面的峰识别、由于化学浓度、气相离子化学、漂移气体的温度和压力导致的DMS数据变化。