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用于评估食品添加剂安全性测试优先级的决策树方法的评估

An evaluation of the decision tree approach for assessing priorities for safety testing of food additives.

作者信息

Phillips J C, Purchase R, Watts P, Gangolli S D

出版信息

Food Addit Contam. 1987 Apr-Jun;4(2):109-23. doi: 10.1080/02652038709373622.

Abstract

In this publication we report an evaluation of the decision tree scheme of Cramer, Ford and Hall (1978) for assigning priorities for toxicity testing of chemicals. The original scheme has been modified to allow more chemical structures to be considered and to take into account recent advances in toxicology. The majority of the food additives permitted in either the UK, USA or Canada have been processed through the modified decision tree questionnaire and their classification compared with currently available chronic toxicity data. A large proportion of the additives (53/73) assigned to the lowest toxicity (I) class have a low order of chronic oral toxicity as do many of the compounds assigned to the moderate toxicity (II) class. Although the majority of the additives assigned to the highest toxicity (III) class are substantially more toxic than those in the lower toxicity classes, some relatively innocuous compounds reached this classification. In addition, a few toxic compounds were assigned to the lowest toxicity class. The reasons for these incorrect assignments are discussed. It was concluded that the decision tree approach, although less discriminating than originally suggested, remains a useful method for classifying compounds in terms of their probable toxicity and that further modifications to the tree could be made.

摘要

在本出版物中,我们报告了对克莱默、福特和霍尔(1978年)提出的用于确定化学品毒性测试优先级的决策树方案的评估。原始方案已作修改,以便能考虑更多化学结构,并兼顾毒理学的最新进展。英国、美国或加拿大允许使用的大多数食品添加剂已通过修改后的决策树问卷进行处理,并将其分类结果与现有的慢性毒性数据进行了比较。被归入最低毒性(I)类的大部分添加剂(53/73)以及许多被归入中度毒性(II)类的化合物,其慢性经口毒性等级都较低。虽然被归入最高毒性(III)类的大多数添加剂的毒性明显高于较低毒性类别的添加剂,但一些相对无害的化合物也被归入了这一类别。此外,一些有毒化合物被归入了最低毒性类别。文中讨论了这些错误归类的原因。得出的结论是,决策树方法虽然不如最初设想的那样具有区分性,但仍是一种根据化合物可能的毒性对其进行分类的有用方法,并且可以对该树进行进一步修改。

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