Bridging the Gender, Climate, and Health Gap: the Road to COP29
The Lancet. Planetary health(2024)
Barcelona Supercomputing Center | Univ Leipzig | Natl Ribat Univ | Tecnol Monterrey | Univ Philippines Manila | European Citizen Sci Assoc | Int Labor Org | Univ Tunis El Manar | Wish Wash | Univ Melbourne | ISGlobal | Ctr Planetary Hlth Policy | Women Global Hlth | Coombe Women & Infants Univ Hosp | Global Climate & Hlth Alliance | Publ Hlth Specialty Training Programme | Univ Cambridge | IfP | Johns Hopkins Univ | Barcelona Supercomp Ctr
Abstract
Focusing specifically on the gender-climate-health nexus, this Personal View builds on existing feminist works and analyses to discuss why intersectional approaches to climate policy and inclusive representation in climate decision making are crucial for achieving just and equitable solutions to address the impacts of climate change on human health and societies. This Personal View highlights how women, girls, and gender-diverse people often face disproportionate climate-related health impacts, particularly those who experience compounding and overlapping vulnerabilities due to current and former systems of oppression. We summarise the insufficient meaningful inclusion of gender, health, and their intersection in international climate governance. Despite the tendency to conflate gender equality with number-based representation, climate governance under the UNFCCC (1995-2023) remains dominated by men, with several countries projected to take over a decade to achieve gender parity in their Party delegations. Advancing gender-responsiveness in climate policy and implementation and promoting equitable participation in climate governance will not only improve the inclusivity and effectiveness of national strategies, but will also build more resilient, equitable, and healthier societies.
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