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Halving food-related greenhouse gas emissions can be achieved by redistributing meat consumption: Progressive optimization results of the NutriNet-Santé cohort. | LitMetric

AI Article Synopsis

  • The study aims to create optimized diets that reduce greenhouse gas emissions (GHGe) by focusing on dietary changes among French adults, particularly by decreasing consumption of animal-sourced foods while ensuring nutritional adequacy and cultural acceptance.
  • Using data from nearly 30,000 participants, the researchers modeled diets that reduce GHGe in 5% increments, resulting in significant decreases in dairy (up to 83%) and ruminant meat (down to 92%), while also increasing poultry, pork, legumes, and the proportion of organic foods.
  • The findings indicate that achieving a 50% reduction in GHGe involves substantial dietary shifts away from animal products, particularly beef and dairy, highlighting the need for further research to

Article Abstract

Background: Diet-related greenhouse gas emissions (GHGe) mainly comes from animal-sourced foods. As progressive changes are more acceptable for a sustainable food transition, we aimed to identify nutritionally adequate and culturally acceptable optimized diets ensuring a gradual reduction in GHGe, using observed diet from a large sample of French adults, while considering the mode of food production (organic vs conventional farming) and the co-production link between milk and beef.

Material And Method: Based on the consumption of 257 organic and conventional foods among 29,413 participants (75% women, age: 53.5 ± 14.0y) of the NutriNet-Santé study, we modelled optimal diets according to GHGe reduction scenarios in 5% steps, from 0 to 50% with nutritional, acceptability, and coproduct constraints, for men, premenopausal and menopausal women separately.

Results: Gradual GHGe decrease under these constraints led to optimal diets with an overall decrease in animal foods, with marked reductions in dairy products (up to -83%), together with a stable but largely redistributed meat consumption in favor of poultry (up to +182%) and pork (up to +46%) and at the expense of ruminant meat (down to -92%). Amounts of legumes increases dramatically (up to +238%). The greater the reduction in diet-related GHGe, the lower the cumulative energy demand (about -25%) and land use (about -43%). The proportion of organic food increased from ~30% in the observed diets to ~70% in the optimized diets.

Conclusion: Our results suggest that meeting both nutrient reference value and environmental objectives of up to 50% GHGe reduction requires the reduction of animal foods together with important substitutions between animal food groups, which result in drastic reductions in beef and dairy products. Further research is required to explore alignment with long-term health value and conflict with acceptability, in particular for even greater GHGe reductions.

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Source
http://dx.doi.org/10.1016/j.scitotenv.2021.147901DOI Listing

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