固相微萃取
化学
色谱法
检出限
分析物
样品制备
萃取(化学)
固相萃取
分析化学(期刊)
质谱法
气相色谱-质谱法
作者
Vincent Bessonneau,Ezel Boyacı,Małgorzata Maciążek-Jurczyk,Janusz Pawliszyn
标识
DOI:10.1016/j.aca.2014.11.029
摘要
On-site sample preparation is an analytical approach based on direct sampling from the system under investigation. It has the advantage of combining sampling and sample preparation into a single step, thus generally is fast, minimizes the potential sources of error and eliminates the risks for analytes instability. For such analysis solid phase microextraction in thin film geometry (TF-SPME) can provide robust and convenient in vivo sampling, offering in the same time faster analysis and higher extraction recovery (i.e., better sensitivity) due to large surface to volume ratio. In this study, TF-SPME in coated blade and membrane formats with a single extraction phase were used for in vivo and ex vivo saliva extraction and separation by LC and GC, respectively. Due to applicability for wide range of polarity of analytes as well as thermal and solvent stability during the desorption, hydrophilic lipophilic balanced particles (HLB) were chosen as extraction phase and used for fast (5 min) in vivo and ex vivo sampling. The results of metabolomic profiling of the saliva are indicating that even 5 min in vivo sampling using TF-SPME followed by GC and LC analyses provides complementary coverage of wide range of analytes with different physical and chemical properties. To demonstrate the applicability of the method for doping analyses, the SPME-LC-MS/MS method was validated for simultaneous quantification of 49 prohibited substances with limit of quantification (LOQ) ranging between 0.004 and 0.98 ng mL(-1). Moreover, the method was also validated and successfully applied for determination of endogenous steroids in saliva where the concentrations of the analytes are substantially low. The developed assay offers fast and reliable multiresidue analysis of saliva as an attractive alternative to the standard analysis methods.
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