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The scientific challenges in moving from targeted to non-targeted mass spectrometric methods for food fraud analysis: A proposed validation workflow to bring about a harmonized approach

机译:从针对非针对性质谱法转变为食物欺诈分析的科学挑战:提出了统一方法的建议验证工作流程

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BackgroundDetecting and measuring food fraud is a challenging analytical task since a very wide range of food ingredients and types may be adulterated by numerous potential adulterants, many of which are yet unknown. To date most of the methods applied for the control of food fraud are targeted methods, which are focused on the detection of one or a few classes of known compounds.Scope and approachThere is an increasing availability of solutions and applications based on high resolution mass spectrometry (HRMS), allowing parallel non-targeted approaches, novel compound identification and retrospective data analysis. For these types of methods sample-handling must be minimal to allow the inclusion of as many as possible chemical categories. However data-handling of such methods is much more demanding, together with the potential requirement to integrate multiplatform data as well as conducting data fusion. To allow the processing of massive amounts of information based on the separation techniques and mass spectrometry approaches employed, effective software tools capable of rapid data mining procedures must be employed and metabolomics based approaches does appear to be the correct way forward.To verify the relevance of modelling results, appropriate model validation is essential for non-targeted approaches, confirming the significance of the chemical markers identified.Key findings and conclusionsThe present paper is devoted to review and assess the current state of the art with regards non-targeted mass spectrometry in food fraud detection within many food matrices and to propose a harmonized workflow for all such applications.
机译:背景迹象和测量食物欺诈是一个具有挑战性的分析任务,因为各种食品成分和类型可能掺杂,其中许多潜在的掺杂剂尚不清楚。迄今为止申请控制食品欺诈的大多数方法是针对性方法,其重点是检测一种或几类已知化合物。探索和接近是基于高分辨率质谱法的溶液和应用的增加(HRMS),允许并行非目标方法,新的复合鉴定和回顾性数据分析。对于这些类型的方法,样品处理必须是最小的,以允许包含尽可能多的化学类别。然而,这些方法的数据处理更加苛刻,以及集成多平台数据以及导通数据融合的潜在要求。为了允许基于采用的分离技术和质谱方法的大量信息处理,必须采用能够快速数据挖掘程序的有效软件工具,并且基于代谢组的方法似乎是正确的正确方式。要验证相关性建模结果,适当的模型验证对于非针对性方法至关重要,确认所识别的化学标志物的重要性.Key调查结果和结论本文旨在审查和评估食品中非靶向质谱法的现有技术。许多食物矩阵内的欺诈检测,并为所有此类应用提出统一的工作流程。

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