| Literature DB >> 26681962 |
Ellen Yard1, Tesfaye Bayleyegn2, Almaz Abebe3, Andualem Mekonnen3, Matthew Murphy2, Kathleen L Caldwell2, Richard Luce4, Danielle Rentz Hunt5, Kirubel Tesfaye3, Moa Abate3, Tsigereda Assefa3, Firehiwot Abera3, Kifle Habte3, Feyissa Chala3, Lauren Lewis2, Amha Kebede3.
Abstract
BACKGROUND: The Akaki River in Ethiopia has been found to contain elevated levels of several metals. Our objectives were to characterize metals exposures of residents living near the Akaki River and to assess metal levels in their drinking water.Entities:
Mesh:
Substances:
Year: 2015 PMID: 26681962 PMCID: PMC4670646 DOI: 10.1155/2015/935297
Source DB: PubMed Journal: J Environ Public Health ISSN: 1687-9805
Figure 1Sampling locations—Addis Ababa, Ethiopia, 2011.
Participant characteristics, by subcity—Addis Ababa, Ethiopia, 2011.
| Overall ( | Akaki-Kality ( | Yeka ( | |
|---|---|---|---|
| Body mass index (kg/m2; | |||
| Range | 14–38 | 14–38 | 18–35 |
| Mean (St. dev.) | 23 (4) | 23 (4) | 23 (4) |
| Median | 22 | 22 | 23 |
| Years living in subcity ( | |||
| Range | 1–50 | 1–50 | 1–35 |
| Mean (St. dev.) | 18 (11) | 18 (12) | 18 (10) |
| Median | 19 | 18 | 20 |
| Occupation ( | |||
| None | 50 (38%) | 35 (39%) | 15 (35%) |
| Factory/laborer | 23 (17%) | 17 (19%) | 6 (14%) |
| Business | 16 (12%) | 12 (13%) | 4 (9%) |
| Student | 15 (11%) | 11 (12%) | 4 (9%) |
| Teacher/secretary | 8 (6%) | 5 (6%) | 3 (7%) |
| Othera | 20 (15%) | 9 (10%) | 11 (26%) |
| Drink alcohol ( | |||
| Yes | 24 (17%) | 19 (19%) | 5 (11%) |
| No | 120 (83%) | 79 (81%) | 41 (89%) |
| Chew khat | |||
| Yes | 7 (5%) | 2 (2%) | 5 (10%) |
| No | 142 (95%) | 98 (98%) | 44 (90%) |
| Smoke cigarettes ( | |||
| Yes | 3 (2%) | 1 (1%) | 2 (4%) |
| No | 145 (98%) | 99 (99%) | 46 (96%) |
| Eat homegrown vegetables ( | |||
| Yes | 18 (12%) | 9 (9%) | 9 (18%) |
| No | 133 (88%) | 92 (91%) | 41 (82%) |
| Add chlorine to drinking water ( | |||
| Yes | 12 (8%) | 7 (7%) | 5 (10%) |
| No | 139 (92%) | 94 (93%) | 45 (90%) |
| Drinking water characteristics ( | |||
| Cloudy/muddy | 26 (17%) | 19 (19%) | 7 (14%) |
| Bad taste | 13 (9%) | 10 (10%) | 3 (6%) |
| Bad smell | 8 (5%) | 5 (5%) | 3 (6%) |
a“Other” occupations include security, researcher, and bus driver.
p < 0.05 comparing Akaki-Kality and Yeka using t-test for continuous variables and chi-square for categorical variables.
Figure 2Photos of drinking water from participant homes—Addis Ababa, Ethiopia, 2011.
Creatinine-corrected urine and blood metal concentrations, by subcity—Addis Ababa, Ethiopia, 2011a.
| Geometric mean (95% confidence interval) | ||||
|---|---|---|---|---|
| Overall | Akaki-Kality | Yeka | US populationb | |
| Urine | ||||
| Antimony ( | 0.036 (0.031–0.040) | 0.036 (0.031–0.042) | 0.034 (0.028–0.042) | N/A |
| Arsenic ( | 5.85 (5.39–6.36) | 5.44 (4.99–5.93) | 6.83 (5.74–8.13) | 8.04 (7.07–9.14) |
| Barium ( | 2.05 (1.72–2.43) | 2.02 (1.62–2.51) | 2.12 (1.62–2.77) | 1.29 (1.17–1.41) |
| Cadmium ( | 0.127 (0.112–0.144) | 0.133 (0.115–0.156) | 0.116 (0.094–0.143) | 0.220 (0.204–0.237) |
| Cesium ( | 1.19 (1.12–1.27) | 1.11 (1.02–1.21) | 1.39 (1.28–1.50) | 4.36 (4.15–4.59) |
| Chromium ( | 0.412 (0.361–0.470) | 0.422 (0.361–0.494) | 0.391 (0.306–0.500) | N/A |
| Cobalt ( | 1.56 (1.38–1.76) | 1.64 (1.41–1.89) | 1.40 (1.13–1.74) | 0.349 (0.330–0.369) |
| Iodine ( | 55.1 (48.5–62.5) | 51.4 (44.8–59.0) | 63.4 (49.1–82.0) | N/A |
| Lead ( | 0.856 (0.779–0.940) | 0.944 (0.842–1.06) | 0.698 (0.600–0.813) | 0.433 (0.402–0.466) |
| Mercury ( | 0.130 (0.111–0.152) | 0.144 (0.122–0.170) | 0.103 (0.073–0.145) | 0.393 (0.351–0.439) |
| Molybdenum ( | 111 (99.6–124) | 128 (111–147) | 83.4 (71.4–97.5) | 38.6 (37.1–40.2) |
| Nickel ( | 8.75 (8.04–9.53) | 8.76 (7.91–9.70) | 8.73 (7.50–10.2) | N/A |
| Thallium ( | 0.286 (0.254–0.321) | 0.289 (0.248–0.336) | 0.279 (0.234–0.332) | 0.166 (0.155–0.179) |
| Tungsten ( | 0.184 (0.159–0.212) | 0.216 (0.181–0.259) | 0.131 (0.106–0.162) | 0.074 (0.067–0.083) |
| Uranium ( | 0.009 (0.008–0.011) | 0.014 (0.012–0.017) | 0.004 (0.003–0.004) | 0.007 (0.006–0.008) |
| Blood | ||||
| Cadmium ( | 0.233 (0.217–0.249) | 0.226 (0.209–0.243) | 0.250 (0.217–0.288) | 0.337 (0.323–0.353) |
| Lead ( | 1.66 (1.53–1.79) | 1.65 (1.51–1.79) | 1.68 (1.42–1.98) | 1.09 (1.03–1.16) |
| Manganese ( | 9.91 (9.34–10.5) | 9.92 (9.20–10.7) | 9.87 (9.03–10.8) | 9.09 (8.94–9.24) |
| Mercury ( | N/A | N/A | N/A | 0.863 (0.753–0.990) |
| Selenium ( | 157 (152–162) | 159 (153–166) | 153 (146–161) | 193 (190–196) |
aOnly metals detected in 5% or more of samples.
bThe geometric mean and 95% confidence interval among adults (20 years and older) from the 2011-2012 US National Health and Nutrition Examination Survey (NHANES).
p < 0.05 for maximum likelihood estimation comparing Akaki-Kality and Yeka.
N/A: not calculated; proportion of results below limit of detection was too high to provide a valid result.
Analyte concentrations (mg/L) in drinking water, by subcity—Addis Ababa, Ethiopia, 2011a.
| Overall ( | Akaki-Kality ( | Yeka ( | |||||||
|---|---|---|---|---|---|---|---|---|---|
| Analyte | Range | Mean | % >CV | Range | Mean | % >CV | Range | Mean | % >CV |
| Manganese | <LOD–0.15 | <LOD | 17% | <LOD–0.150 | <LOD | 2% | <LOD–0.120 | 0.028 | 47% |
| Nitrates | <LOD–740 | 1.12 | 1% | <LOD–5.10 | 3.48 | 0% | <LOD–740 | <LOD | 2% |
| Lead | <LOD–0.007 | <LOD | 0% | <LOD–0.007 | <LOD | 0% | <LOD–0.003 | <LOD | 0% |
| Copper | <LOD–0.024 | <LOD | 0% | <LOD–0.024 | <LOD | 0% | <LOD | <LOD | 0% |
| Cadmium | <LOD–0.001 | <LOD | 0% | <LOD–0.001 | <LOD | 0% | <LOD | <LOD | 0% |
| Arsenic | <LOD–0.004 | <LOD | 0% | <LOD | <LOD | 0% | <LOD–0.004 | <LOD | 0% |
| Chromium | <LOD | <LOD | 0% | <LOD | <LOD | 0% | <LOD | <LOD | 0% |
| Cobalt | <LOD | <LOD | 0% | <LOD | <LOD | 0% | <LOD | <LOD | 0% |
| Mercury | <LOD | <LOD | 0% | <LOD | <LOD | 0% | <LOD | <LOD | 0% |
CV = comparison value (provided in Table 1).
aOnly metals detected in 5% or more of samples.
p < 0.05 for maximum likelihood estimation comparing Akaki-Kality to Yeka.
(a) Urine
| Analyte |
| LOD | % >LOD | Analytic technique |
|---|---|---|---|---|
| Antimony | 147 | 0.032 | 57% | ICP-DRC-MS |
| Arsenic | 136 | 1.25 | 97% | ICP-DRC-MS |
| Barium | 147 | 0.12 | 100% | ICP-DRC-MS |
| Beryllium | 147 | 0.072 | 2% | ICP-DRC-MS |
| Cadmium | 147 | 0.042 | 88% | ICP-DRC-MS |
| Cesium | 147 | 0.066 | 99% | ICP-DRC-MS |
| Chromium | 147 | 0.105 | 95% | SF-ICP-MS |
| Cobalt | 147 | 0.041 | 100% | ICP-DRC-MS |
| Iodine | 147 | 1.4 | 100% | ICP-DRC-MS |
| Lead | 147 | 0.10 | 99% | ICP-DRC-MS |
| Mercury | 141 | 0.05 | 80% | ICP-DRC-MS |
| Molybdenum | 147 | 0.92 | 100% | ICP-DRC-MS |
| Nickel | 147 | 0.337 | 100% | SF-ICP-MS |
| Platinum | 147 | 0.009 | 3% | ICP-DRC-MS |
| Thallium | 147 | 0.015 | 100% | ICP-DRC-MS |
| Tungsten | 147 | 0.021 | 95% | ICP-DRC-MS |
| Uranium | 147 | 0.0017 | 93% | ICP-DRC-MS |
(b) Blood
| Analyte |
| LOD | % >LOD | Analytic technique |
|---|---|---|---|---|
| Cadmium | 132 | 0.16 | 88% | ICP-DRC-MS |
| Lead | 132 | 0.25 | 100% | ICP-DRC-MS |
| Manganese | 132 | 1.06 | 100% | ICP-DRC-MS |
| Mercury | 132 | 0.16 | 25% | ICP-DRC-MS |
| Selenium | 132 | 30 | 100% | ICP-DRC-MS |
(c) Drinking water
| Analyte |
| LOD | % >LOD | Analytic technique | Comparison |
|---|---|---|---|---|---|
| Arsenic | 143 | 0.001 mg/L | 1% | ICP-MS | 0.01 mg/L |
| Cadmium | 143 | 0.0005 mg/L | 1% | ICP-MS | 0.003 mg/L |
| Chromium | 143 | 0.010 mg/L | 0% | ICP-AES | 0.05 mg/L |
| Cobalt | 143 | 0.010 mg/L | 0% | ICP-AES | N/A |
| Copper | 143 | 0.020 mg/L | 3% | ICP-AES | 2 mg/L |
| Lead | 143 | 0.001 mg/L | 18% | ICP-MS | 0.01 mg/L |
| Manganese | 143 | 0.010 mg/L | 27% | ICP-AES | N/A |
| Mercury | 143 | 0.0002 mg/L | 0% | CVAAS | 0.006 mg/L |
| Nitrates | 150 | 0.10 mg/L | 81% | FIA | 50 mg/L |
LOD = limit of detection; ICP-DRC-MS = inductively coupled dynamic reaction cell plasma mass spectrometry; ICP-MS = inductively coupled plasma mass spectrometry; SF-ICP-MS = sector field inductively coupled plasma mass spectrometry; ICP-AES = inductively coupled plasma atomic emission spectroscopy; CVAAS = cold vapor atomic absorption spectrometry; FIA = Flow Injection Analysis.
aComparison values determined using the World Health Organization guideline values for water.