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食品行业在澳大利亚食品标签声称健康关系的食品-健康关系方面进行自我证明的效果如何?

How effective is food industry self-substantiation of food-health relationships underpinning health claims on food labels in Australia?

机构信息

1Cancer Prevention and Advocacy Division,Cancer Council NSW,153 Dowling Street,Woolloomooloo,NSW2011,Australia.

2Cancer Programs Division,Cancer Council NSW,Woolloomooloo,New South Wales,Australia.

出版信息

Public Health Nutr. 2019 Jun;22(9):1686-1695. doi: 10.1017/S1368980018004081. Epub 2019 Mar 4.

Abstract

OBJECTIVE

The Food Standards Code regulates health claims on Australian food labels. General-level health claims highlight food-health relationships, e.g. 'contains calcium for strong bones'. Food companies making claims must notify Food Standards Australia New Zealand (FSANZ) and certify that a systematic literature review (SLR) substantiating the food-health relationship has been conducted. There is no pre- or post-notification assessment of the SLR, potentially enabling the food industry to make claims based on poor-quality research. The present study assessed the rigour of self-substantiation.

DESIGN

Food-health relationships notified to FSANZ were monitored monthly between 2013 and 2017. These relationships were assessed by scoping published literature. Where evidence was equivocal/insufficient, the relevant government food regulatory agency was asked to investigate. If not investigated, or the response was unsatisfactory, the project team conducted an independent SLR which was provided to the government agency.

SETTING

Australia.ParticipantsSelf-substantiated food-health relationships.

RESULTS

There were sixty-seven relationships notified by thirty-eight food companies. Of these, thirty-three relationships (52 %) from twenty companies were deemed to have sufficient published evidence. Four were excluded as they originated in New Zealand. Three relationships were removed before investigations were initiated. The project initiated twenty-seven food-health relationship investigations. Another six relationships were withdrawn, and three relationships were awaiting government assessment.

CONCLUSIONS

To ensure that SLR underpinning food-health relationships are rigorous and reduce regulatory enforcement burden, pre-market approval of food-health relationships should be introduced. This will increase consumer and public health confidence in the regulatory process and prevent potentially misleading general-level health claims on food labels.

摘要

目的

《食品标准法典》规范了澳大利亚食品标签上的健康声称。一般性健康声称强调了食品与健康之间的关系,例如“含有钙,有助于强健骨骼”。提出声称的食品公司必须通知澳大利亚新西兰食品标准局(FSANZ),并证明已进行了系统文献综述(SLR)以证实食品与健康之间的关系。对 SLR 没有预先或事后通知评估,这可能使食品行业能够基于低质量的研究提出声称。本研究评估了自我证实的严谨性。

设计

2013 年至 2017 年间,每月监测向 FSANZ 通报的食品-健康关系。通过对已发表文献进行范围界定来评估这些关系。在证据存在争议/不足的情况下,要求相关政府食品监管机构进行调查。如果未进行调查,或答复不满意,则项目团队将进行独立的 SLR,并将其提供给政府机构。

设置

澳大利亚。参与者:自我证实的食品-健康关系。

结果

有三十八个食品公司向三十八个食品公司通报了六十七个关系。其中,二十个公司中有三十三个关系(52%)被认为具有足够的已发表证据。有四个关系被排除在外,因为它们源自新西兰。在开始调查之前,有三个关系被删除。该项目启动了二十七个食品-健康关系调查。另外六个关系被撤回,三个关系正在等待政府评估。

结论

为了确保支持食品-健康关系的 SLR 严谨,并减轻监管执行负担,应引入食品-健康关系的上市前批准。这将增加消费者和公众对监管过程的信心,并防止食品标签上可能产生误导的一般性健康声称。

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