| Literature DB >> 35165193 |
John L Wilkinson1, Alistair B A Boxall2, Dana W Kolpin3, Kenneth M Y Leung4, Racliffe W S Lai4, Cristóbal Galbán-Malagón5, Aiko D Adell6, Julie Mondon7, Marc Metian8, Robert A Marchant2, Alejandra Bouzas-Monroy2, Aida Cuni-Sanchez2, Anja Coors9, Pedro Carriquiriborde10, Macarena Rojo10, Chris Gordon11, Magdalena Cara12, Monique Moermond13, Thais Luarte14, Vahagn Petrosyan15, Yekaterina Perikhanyan15, Clare S Mahon16, Christopher J McGurk16, Thilo Hofmann17, Tapos Kormoker18, Volga Iniguez19, Jessica Guzman-Otazo20, Jean L Tavares21, Francisco Gildasio De Figueiredo21, Maria T P Razzolini22, Victorien Dougnon23, Gildas Gbaguidi24, Oumar Traoré25, Jules M Blais26, Linda E Kimpe26, Michelle Wong27, Donald Wong27, Romaric Ntchantcho28, Jaime Pizarro29, Guang-Guo Ying30, Chang-Er Chen30, Martha Páez31, Jina Martínez-Lara31, Jean-Paul Otamonga32, John Poté33, Suspense A Ifo34, Penelope Wilson35, Silvia Echeverría-Sáenz36, Nikolina Udikovic-Kolic37, Milena Milakovic37, Despo Fatta-Kassinos38, Lida Ioannou-Ttofa38, Vladimíra Belušová39, Jan Vymazal39, María Cárdenas-Bustamante2, Bayable A Kassa40, Jeanne Garric41, Arnaud Chaumot41, Peter Gibba42, Ilia Kunchulia43, Sven Seidensticker44, Gerasimos Lyberatos45, Halldór P Halldórsson46, Molly Melling2, Thatikonda Shashidhar47, Manisha Lamba48, Anindrya Nastiti49, Adee Supriatin49, Nima Pourang50, Ali Abedini50, Omar Abdullah2, Salem S Gharbia51, Francesco Pilla52, Benny Chefetz53, Tom Topaz53, Koffi Marcellin Yao54, Bakhyt Aubakirova55, Raikhan Beisenova56, Lydia Olaka57, Jemimah K Mulu57, Peter Chatanga58, Victor Ntuli58, Nathaniel T Blama59, Sheck Sherif59, Ahmad Zaharin Aris60, Ley Juen Looi60, Mahamoudane Niang61, Seydou T Traore61, Rik Oldenkamp62, Olatayo Ogunbanwo63, Muhammad Ashfaq64, Muhammad Iqbal64, Ziad Abdeen65, Aaron O'Dea66, Jorge Manuel Morales-Saldaña66, María Custodio67, Heidi de la Cruz67, Ian Navarrete68, Fabio Carvalho69, Alhaji Brima Gogra70, Bashiru M Koroma70, Vesna Cerkvenik-Flajs71, Mitja Gombač71, Melusi Thwala72, Kyungho Choi73, Habyeong Kang73, John L Celestino Ladu74, Andreu Rico75, Priyanie Amerasinghe76, Anna Sobek77, Gisela Horlitz77, Armin K Zenker78, Alex C King78, Jheng-Jie Jiang79, Rebecca Kariuki2, Madaka Tumbo80, Ulas Tezel81, Turgut T Onay81, Julius B Lejju82, Yuliya Vystavna83, Yuriy Vergeles84, Horacio Heinzen85, Andrés Pérez-Parada86, Douglas B Sims87, Maritza Figy27, David Good88, Charles Teta89.
Abstract
Environmental exposure to active pharmaceutical ingredients (APIs) can have negative effects on the health of ecosystems and humans. While numerous studies have monitored APIs in rivers, these employ different analytical methods, measure different APIs, and have ignored many of the countries of the world. This makes it difficult to quantify the scale of the problem from a global perspective. Furthermore, comparison of the existing data, generated for different studies/regions/continents, is challenging due to the vast differences between the analytical methodologies employed. Here, we present a global-scale study of API pollution in 258 of the world's rivers, representing the environmental influence of 471.4 million people across 137 geographic regions. Samples were obtained from 1,052 locations in 104 countries (representing all continents and 36 countries not previously studied for API contamination) and analyzed for 61 APIs. Highest cumulative API concentrations were observed in sub-Saharan Africa, south Asia, and South America. The most contaminated sites were in low- to middle-income countries and were associated with areas with poor wastewater and waste management infrastructure and pharmaceutical manufacturing. The most frequently detected APIs were carbamazepine, metformin, and caffeine (a compound also arising from lifestyle use), which were detected at over half of the sites monitored. Concentrations of at least one API at 25.7% of the sampling sites were greater than concentrations considered safe for aquatic organisms, or which are of concern in terms of selection for antimicrobial resistance. Therefore, pharmaceutical pollution poses a global threat to environmental and human health, as well as to delivery of the United Nations Sustainable Development Goals.Entities:
Keywords: antimicrobials; aquatic contamination; global pollution; pharmaceuticals; wastewater
Mesh:
Substances:
Year: 2022 PMID: 35165193 PMCID: PMC8872717 DOI: 10.1073/pnas.2113947119
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205
Fig. 1.Locations of studied rivers/catchments (n = 137) for our global study (Dataset S2). Points indicate groups of sampling sites across respective river catchments and countries are shaded based upon the total number of sampling sites.
Fig. 2.Cumulative API concentrations quantified across 137 studied river catchments (Dataset S6) organized by descending cumulative concentration (ng/L). Percentiles are marked by black lines and countries not previously monitored by crosses above the plot. The cumulative concentrations reported here are calculated as the average of the sum concentration of all quantifiable API residues at each sampling site within respective river catchments.
Fig. 3.(A) Detection frequencies (Dataset S5) and (B) number of APIs detected at sampling sites in the global monitoring study (Dataset S4), excluding sites without the detection of any API, and (C) box-and-whisker plots of concentrations (ng/L) of individual APIs (Dataset S4), indicating the mean, minimum, maximum, and upper and lower quartile concentrations for each API globally.
Fig. 4.(A) Cumulative concentration of APIs (Dataset S6) observed across respective river catchments (signified by a blue dot, n = number of sampling sites) organized by World Bank GNI per capita (33) and (B) distance-based redundancy analysis (dbRDA) illustrating the best model of socioeconomic indicators to explain the measured concentration of different classes of pharmaceuticals in respective countries according to the distance-based linear model (DISTLM, AICc = 325.26, r2 = 0.241). Vector projections with center coordination at (−3, 0) were performed with multiple partial correlation. Length and direction of the vectors represent the strength and direction of the relationship. Data from each country were classified according to their cumulative active pharmaceutical ingredient concentration: that is, Low: first quartile (the lowest 25%); Lower-middle: second quartile (the next 25%); Higher-middle: third quartile (the next 25%); and High: fourth quartile (the top 25%). Raw data can be found in Dataset S9.
Fig. 5.Percent of sites in the global monitoring study where concentrations exceeded: lowest PNECs (Dataset S12) derived from apical ecotoxicological endpoints for algae, fish, and daphnia (orange bars); CECs estimated based on human plasma therapeutic concentrations and uptake predictions for fish (green bars); and “safe” target concentrations for AMR selection (blue bars).