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How to transition to reduced-meat diets that benefit people and the planet

journal contribution
posted on 2023-07-26, 15:57 authored by Niki A Rust, Lucy Ridding, Caroline Ward, Beth Clark, Laura Kehoe, Manoj Dora, Mark J Whittingham, Philip McGowan, Abhishek Chaudhary, Christian J Reynolds, Chet Trivedy, Nicola West
Overwhelming evidence shows that overconsumption of meat is bad for human and environmental health and that moving towards a more plant-based diet is more sustainable. For instance, replacing beef with beans in the US could free up 42% of US cropland and reduce greenhouse gas emissions by 334 mmt, accomplishing 75% of the 2020 carbon reduction target. We summarise the evidence on how overconsumption of meat affects social, environmental and economic sustainability. We highlight the social, environmental and economic effectiveness of a range of dietary interventions that have been tested to date. Because meat eating is embedded within complex cultural, economic, and political systems, dietary shifts to reduce overconsumption are unlikely to happen quickly and a suite of sustained, context-specific interventions is likely to work better than brief, one-dimensional approaches. We conclude with key actions needed by global leaders in politics, industry and the health sector that could help aide this dietary transformation to benefit people and the planet.

History

Refereed

  • Yes

Volume

718

Issue number

0

Page range

137208-137208

Publication title

Science of the Total Environment

ISSN

1879-1026

Publisher

Elsevier

Language

  • other

Legacy posted date

2022-08-25

Legacy creation date

2022-08-22

Legacy Faculty/School/Department

Faculty of Business & Law

Note

For further information please visit Brunel University's Research Archive: https://bura.brunel.ac.uk/handle/2438/20247

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