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Prediction of MS/MS Data. 1. A Focus on Pharmaceuticals Containing Carboxylic Acids

机译:MS / MS数据的预测。 1.重点研究含有羧酸的药物

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Metabolite identification is a necessary step in developing safe and effective drugs. Metabolite analysis typically involves rapid identification of the chemical composition of the metabolite by automated HPLC-MS methods, followed by the laborious process of identifying the structure of the metabolite. Since MS is typically utilized to identify the metabolite, it is logical to utilize MS/MS to structurally characterize the sample. However, interpretation of MS/MS data may not provide sufficient information, as fragmentation pathways are not well understood or predictable. Therefore, other more time-consuming methods of analysis are often undertaken. If the dissociation rules for low-energy MS/MS experiments were clearly defined for all classes of compounds, more information would be obtained from MS/MS data, and metabolite identification would proceed more rapidly. We are currently developing methods to define these fragmentation rules. By screening ~100 carboxylic acids at a time and applying knowledge of physical-organic chemistry, predictive rules are under development that describe how compounds dissociate under low-energy collision-induced dissociation conditions. Studies of carboxylic acid dissociation demonstrate that this approach is practical and reliable. Dissociation rules were predicted with a 90% success rate, when tested on acid-containing pharmaceuticals. This predictive power cannot be matched by any commercially available software. This study, and others like it, will be used to develop algorithms that more rapidly identify drug metabolites and degradation products, based on MS/MS data. Such algorithms will benefit drug development for all types of pharmaceuticals.
机译:代谢物鉴定是开发安全有效药物的必要步骤。代谢物分析通常包括通过自动HPLC-MS方法快速鉴定代谢物的化学组成,然后进行费力的鉴定代谢物结构的过程。由于MS通常用于鉴定代谢产物,因此利用MS / MS进行样品的结构表征是合乎逻辑的。但是,MS / MS数据的解释可能无法提供足够的信息,因为碎片途径尚不为人所知或可预测。因此,经常采用其他更耗时的分析方法。如果为所有类别的化合物明确定义了低能MS / MS实验的解离规则,则将从MS / MS数据中获得更多信息,并且代谢物的鉴定将更快地进行。我们目前正在开发定义这些碎片规则的方法。通过一次筛选约100种羧酸并应用物理有机化学知识,正在制定预测规则,以描述化合物在低能碰撞诱导的解离条件下如何解离。羧酸离解的研究表明该方法是实用且可靠的。在含酸药物上进行测试时,预测解离规则的成功率为90%。这种预测能力无法通过任何市售软件来匹配。这项研究以及其他类似的研究,将用于基于MS / MS数据开发可更快速地识别药物代谢产物和降解产物的算法。这样的算法将有益于所有类型药物的药物开发。

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