Machine Learning as a Proposal for a Better Application of Food Nanotechnology Regulation in the European Union

Author:

Santana Ricardo1,Onieva Enrique1,Zuluaga Robin2,Duardo-Sánchez Aliuska3,Gañán Piedad4

Affiliation:

1. DeustoTech-Fundacion Deusto, Avda. Universidades, 24, 48007, Bilbao, Spain

2. Facultad de Ingenieria Agroindustrial, Universidad Pontificia Bolivariana UPB, 050031, Medellin, Colombia

3. Department of Public Law, Law and the Human Genome Research Group, University of the Basque Country UPV/EHU, 48940, Leioa, Biscay, Spain

4. Facultad de Ingeniería Quimica, Universidad Pontificia Bolivariana UPB, 050031, Medellin, Colombia

Abstract

Aim: Given the current gaps of scientific knowledge and the need of efficient application of food law, this paper makes an analysis of principles of European food law for the appropriateness of applying biological activity Machine Learning prediction models to guarantee public safety. Background: Cheminformatic methods are able to design and create predictive models with high rate of accuracy saving time, costs and animal sacrifice. It has been applied on different disciplines including nanotechnology. Objective: Given the current gaps of scientific knowledge and the need of efficient application of food law, this paper makes an analysis of principles of European food law for the appropriateness of applying biological activity Machine Learning prediction models to guarantee public safety. Results: It is concluded Machine Learning could improve the application of nanotechnology food regulation, especially methods such as Perturbation Theory Machine Learning (PTML), given that it is aligned with principles promoted by the standards of Organization for Economic Co-operation and Development, European Union regulations and European Food Safety Authority. Conclusion: To our best knowledge this is the first study focused on nanotechnology food regulation and it can help to support technical European Food Safety Authority Opinions for complementary information.

Funder

Universidad Pontificia Bolivariana

Publisher

Bentham Science Publishers Ltd.

Subject

Drug Discovery,General Medicine

Reference54 articles.

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3. Bowman D.M.; Hodge G.A.; Nanotechnology: Mapping the wild regulatory frontier. Futures 2006,38,1060-1073

4. Bowman D.M.; Hodge G.A.; A small matter of regulation: an international review of nanotechnology regulation. Columbia Sci Technol Law Rev 2007,8,1-36

5. Reynolds G.H.; Nanotechnology and regulatory policy: three futures. Harv J Law Technol 2003,17,179-208

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