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Growth and globalization of the Central African wildlife economy: Insights from a 23-year study of wild meat markets on Bioko Island, Equatorial Guinea

Author

Listed:
  • Dana Venditti Mitchell
  • Stephen Woloszynek
  • Matthew W Mitchell
  • Drew T Cronin
  • Zhengqiao Zhao
  • Gail R Rosen
  • Michael P O’Connor
  • Maximiliano Fero Meñe
  • Mary Katherine Gonder

Abstract

The commercial trade in wild meat is booming in Central Africa. Addressing this issue is a global priority because the trade poses a major threat to biodiversity and human health. We investigated the impact of socioeconomic factors, public health emergencies, and conservation efforts on the wild meat trade using daily surveys of wild meat markets on Bioko Island, Equatorial Guinea (EG), from 1997 through 2021. Bioko is an ideal location for examining how external factors impact the wild meat market trade. Although small, the island has large areas of intact forest that host populations of commercially valuable wildlife; low-cost protein substitutes are available; and Malabo, the island’s only large metropolitan area and wild meat trading hub, hosts a wealthy class of urbanites. We found significant associations between global market trends and the wild meat trade, especially China’s foreign investment and oil production in the US and EG. Economic crises like EG’s 2009 economic downturn that followed a global crash in oil prices and reduced production, redirected demand towards cheaper mainland wildlife carcasses amid reduced consumer demand. Public health emergencies had the most comprehensive impact on the wild meat trade. The 2014 Ebola outbreak and the COVID-19 pandemic both induced shifts in market demand, and the COVID-19 pandemic disrupted trade routes, affecting both urban and rural markets. Internally, we observed market decentralization over the last decade and changes in wildlife supply chains during public health emergencies. Conservation policies, including anti-poaching measures and educational outreach, temporarily influenced wildlife market trends, sometimes leading to trading surges in endangered primate carcasses. Our study highlights the importance of monitoring global market trends, public health campaigns, and adapting conservation strategies to disrupt wildlife supply chains and curb consumer demand for wild meat.Author summary: This study presents a detailed analysis of a 23-year survey of wild meat markets on Bioko Island, Equatorial Guinea. It focused on assessing the impacts of various socioeconomic changes across the study period. These included the rise and fall of the national oil industry, the expansion of infrastructure, the repercussions of two public health emergencies, and the implementation of conservation measures aimed at curtailing the supply of wild meat and reducing its demand among urban consumers. The results offer valuable insights into how these diverse factors collectively shape the dynamics of the wild meat trade in an urban context and pathways to discourage luxury wild meat consumption.

Suggested Citation

  • Dana Venditti Mitchell & Stephen Woloszynek & Matthew W Mitchell & Drew T Cronin & Zhengqiao Zhao & Gail R Rosen & Michael P O’Connor & Maximiliano Fero Meñe & Mary Katherine Gonder, 2024. "Growth and globalization of the Central African wildlife economy: Insights from a 23-year study of wild meat markets on Bioko Island, Equatorial Guinea," PLOS Sustainability and Transformation, Public Library of Science, vol. 3(11), pages 1-34, November.
  • Handle: RePEc:plo:pstr00:0000139
    DOI: 10.1371/journal.pstr.0000139
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    References listed on IDEAS

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