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Optimising age adjustment of trichiasis prevalence estimates using data from 162 standardised surveys from seven regions of Ethiopia

Purpose: The prevalence of trichiasis is higher in females and increases markedly with age. Surveys carried out in the daytime, particularly in developing countries, are prone to find older individuals and females at home at the time of the survey. Population-level trichiasis estimates should adjust...

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Autores principales: Macleod, Colin K., Porco, Travis C., Dejene, Michael, Shafi, Oumer, Kebede, Biruck, Negussu, Nebiyu, Bero, Berhanu, Taju, Sadik, Adamu, Yilikal, Negash, Kassahun, Haileselassie, Tesfaye, Riang, John, Badei, Ahmed, Bakhtiari, Ana, Willis, Rebecca, Bailey, Robin L., Solomon, Anthony W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Taylor & Francis 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6532728/
https://www.ncbi.nlm.nih.gov/pubmed/30592237
http://dx.doi.org/10.1080/09286586.2018.1555262
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author Macleod, Colin K.
Porco, Travis C.
Dejene, Michael
Shafi, Oumer
Kebede, Biruck
Negussu, Nebiyu
Bero, Berhanu
Taju, Sadik
Adamu, Yilikal
Negash, Kassahun
Haileselassie, Tesfaye
Riang, John
Badei, Ahmed
Bakhtiari, Ana
Willis, Rebecca
Bailey, Robin L.
Solomon, Anthony W.
author_facet Macleod, Colin K.
Porco, Travis C.
Dejene, Michael
Shafi, Oumer
Kebede, Biruck
Negussu, Nebiyu
Bero, Berhanu
Taju, Sadik
Adamu, Yilikal
Negash, Kassahun
Haileselassie, Tesfaye
Riang, John
Badei, Ahmed
Bakhtiari, Ana
Willis, Rebecca
Bailey, Robin L.
Solomon, Anthony W.
author_sort Macleod, Colin K.
collection PubMed
description Purpose: The prevalence of trichiasis is higher in females and increases markedly with age. Surveys carried out in the daytime, particularly in developing countries, are prone to find older individuals and females at home at the time of the survey. Population-level trichiasis estimates should adjust sample proportions to reflect the demographic breakdown of the population, although the most accurate method of doing this is unclear. Methods: Having obtained data from 162 surveys carried out in Ethiopia as part of the Global Trachoma Mapping Project from 2012 to 2015, we used internal validation with both Brier and Logarithmic forecast scoring to test stratification models to identify those models with the highest predictive accuracy. Selection of partitions was undertaken by both simple random sampling (SRS) and cluster sampling (CS) over 8192 selections. Results: A total of 4529 (1.9%) cases of trichiasis were identified from 241,139 individuals aged ≥15 years from a total of 4210 kebeles and 122,090 households visited. Overall, the binning method using 5-year bands from age 15 to 69 years, with coarser binning in 20-year age-bands above this age, provided the best predictive accuracy, in both SRS and CS methodologies and for both the Brier and Logarithmic scoring rules. Conclusion: The greatest predictive accuracy for trichiasis estimates was found by adjusting for sex and in 5-year age-bands from the age of 15 to 69 years and in 20-year age-bands in those aged 70 years and greater. Trichiasis surveys attempting to make population-level inferences should use this method to optimise surgery backlog estimates.
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spelling pubmed-65327282019-06-12 Optimising age adjustment of trichiasis prevalence estimates using data from 162 standardised surveys from seven regions of Ethiopia Macleod, Colin K. Porco, Travis C. Dejene, Michael Shafi, Oumer Kebede, Biruck Negussu, Nebiyu Bero, Berhanu Taju, Sadik Adamu, Yilikal Negash, Kassahun Haileselassie, Tesfaye Riang, John Badei, Ahmed Bakhtiari, Ana Willis, Rebecca Bailey, Robin L. Solomon, Anthony W. Ophthalmic Epidemiol Original Research Purpose: The prevalence of trichiasis is higher in females and increases markedly with age. Surveys carried out in the daytime, particularly in developing countries, are prone to find older individuals and females at home at the time of the survey. Population-level trichiasis estimates should adjust sample proportions to reflect the demographic breakdown of the population, although the most accurate method of doing this is unclear. Methods: Having obtained data from 162 surveys carried out in Ethiopia as part of the Global Trachoma Mapping Project from 2012 to 2015, we used internal validation with both Brier and Logarithmic forecast scoring to test stratification models to identify those models with the highest predictive accuracy. Selection of partitions was undertaken by both simple random sampling (SRS) and cluster sampling (CS) over 8192 selections. Results: A total of 4529 (1.9%) cases of trichiasis were identified from 241,139 individuals aged ≥15 years from a total of 4210 kebeles and 122,090 households visited. Overall, the binning method using 5-year bands from age 15 to 69 years, with coarser binning in 20-year age-bands above this age, provided the best predictive accuracy, in both SRS and CS methodologies and for both the Brier and Logarithmic scoring rules. Conclusion: The greatest predictive accuracy for trichiasis estimates was found by adjusting for sex and in 5-year age-bands from the age of 15 to 69 years and in 20-year age-bands in those aged 70 years and greater. Trichiasis surveys attempting to make population-level inferences should use this method to optimise surgery backlog estimates. Taylor & Francis 2018-12-28 /pmc/articles/PMC6532728/ /pubmed/30592237 http://dx.doi.org/10.1080/09286586.2018.1555262 Text en © 2018 World Health Organization. Published with license by Taylor & Francis. http://creativecommons.org/licenses/by/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Research
Macleod, Colin K.
Porco, Travis C.
Dejene, Michael
Shafi, Oumer
Kebede, Biruck
Negussu, Nebiyu
Bero, Berhanu
Taju, Sadik
Adamu, Yilikal
Negash, Kassahun
Haileselassie, Tesfaye
Riang, John
Badei, Ahmed
Bakhtiari, Ana
Willis, Rebecca
Bailey, Robin L.
Solomon, Anthony W.
Optimising age adjustment of trichiasis prevalence estimates using data from 162 standardised surveys from seven regions of Ethiopia
title Optimising age adjustment of trichiasis prevalence estimates using data from 162 standardised surveys from seven regions of Ethiopia
title_full Optimising age adjustment of trichiasis prevalence estimates using data from 162 standardised surveys from seven regions of Ethiopia
title_fullStr Optimising age adjustment of trichiasis prevalence estimates using data from 162 standardised surveys from seven regions of Ethiopia
title_full_unstemmed Optimising age adjustment of trichiasis prevalence estimates using data from 162 standardised surveys from seven regions of Ethiopia
title_short Optimising age adjustment of trichiasis prevalence estimates using data from 162 standardised surveys from seven regions of Ethiopia
title_sort optimising age adjustment of trichiasis prevalence estimates using data from 162 standardised surveys from seven regions of ethiopia
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6532728/
https://www.ncbi.nlm.nih.gov/pubmed/30592237
http://dx.doi.org/10.1080/09286586.2018.1555262
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