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Integrated disease surveillance and response implementation in Liberia, findings from a data quality audit, 2017

INTRODUCTION: in spite of the efforts and resources committed by the division of infectious disease and epidemiology (DIDE) of the national public health institute of Liberia (NPHIL)/Ministry of health to strengthening integrated disease surveillance and response (IDSR) across the country, quality d...

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Autores principales: Nagbe, Thomas, Yealue, Kwuakuan, Yeabah, Trokon, Rude, Julius Monday, Fallah, Musoka, Skrip, Laura, Agbo, Chukwuemeka, Mouhamoud, Nuha, Okeibunor, Joseph Chukwudi, Tuopileyi, Roland, Talisuna, Ambrose, Yahaya, Ali Ahmed, Rajatonirina, Soatiana, Frimpong, Joseph Asamoah, Stephen, Mary, Hamblion, Esther, Nyenswah, Tolbert, Dahn, Bernice, Gasasira, Alex, Fall, Ibrahima Socé
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The African Field Epidemiology Network 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6675580/
https://www.ncbi.nlm.nih.gov/pubmed/31402968
http://dx.doi.org/10.11604/pamj.supp.2019.33.2.17608
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author Nagbe, Thomas
Yealue, Kwuakuan
Yeabah, Trokon
Rude, Julius Monday
Fallah, Musoka
Skrip, Laura
Agbo, Chukwuemeka
Mouhamoud, Nuha
Okeibunor, Joseph Chukwudi
Tuopileyi, Roland
Talisuna, Ambrose
Yahaya, Ali Ahmed
Rajatonirina, Soatiana
Frimpong, Joseph Asamoah
Stephen, Mary
Hamblion, Esther
Nyenswah, Tolbert
Dahn, Bernice
Gasasira, Alex
Fall, Ibrahima Socé
author_facet Nagbe, Thomas
Yealue, Kwuakuan
Yeabah, Trokon
Rude, Julius Monday
Fallah, Musoka
Skrip, Laura
Agbo, Chukwuemeka
Mouhamoud, Nuha
Okeibunor, Joseph Chukwudi
Tuopileyi, Roland
Talisuna, Ambrose
Yahaya, Ali Ahmed
Rajatonirina, Soatiana
Frimpong, Joseph Asamoah
Stephen, Mary
Hamblion, Esther
Nyenswah, Tolbert
Dahn, Bernice
Gasasira, Alex
Fall, Ibrahima Socé
author_sort Nagbe, Thomas
collection PubMed
description INTRODUCTION: in spite of the efforts and resources committed by the division of infectious disease and epidemiology (DIDE) of the national public health institute of Liberia (NPHIL)/Ministry of health to strengthening integrated disease surveillance and response (IDSR) across the country, quality data management system remains a challenge to the Liberia NPHIL/MoH (Ministry of health), with incomplete and inconsistent data constantly being reported at different levels of the surveillance system. As part of the monitoring and evaluation strategy for IDSR continuous improvement, data quality assessment (DQA) of the IDSR system to identify successes and gaps in the disease surveillance information system (DSIS) with the aim of ensuring data accuracy, reliability and credibility of generated data at all levels of the health system; and to inform an operational plan to address data quality needs for IDSR activities is required. METHODS: multi-stage cluster sampling that included stage 1: simple random sample (SRS) of five counties, stage 2: simple random sample of two districts and stage 3: simple random sample of three health facilities was employed during the study pilot assessment done in Montserrado County with Liberia institute of bio medical research (LIBR) inclusive. A total of thirty (30) facilities was targeted, twenty nine (29) of the facilities were successfully audited: one hospital, two health centers, twenty clinics and respondents included: health facility surveillance focal persons (HFSFP), zonal surveillance officers (ZSOs), district surveillance officers (DSOs) and County surveillance officers (CSOs). RESULTS: the assessment revealed that data use is limited to risk communication and sensitization, no examples of use of data for prioritization or decision making at the subnational level. The findings indicated the following: 23% (7/29) of health facilities having dedicated phone for reporting, 20% (6/29) reported no cell phone network, 17% (5/29) reported daily access to internet, 56.6% (17/29) reported a consistent supply of electricity, and no facility reported access to functional laptop. It was also established that 40% of health facilities have experienced a stock out of laboratory specimens packaging supplies in the past year. About half of the surveyed health facilities delivered specimens through riders and were assisted by the DSOs. There was a large variety in the reported packaging process, with many staff unable to give clear processes. The findings during the exercise also indicated that 91% of health facility staff were mentored on data quality check and data management including the importance of the timeliness and completeness of reporting through supportive supervision and mentorship; 65% of the health facility assessed received supervision on IDSR core performance indicator; and 58% of the health facility officer in charge gave feedback to the community level. CONCLUSION: public health is a data-intensive field which needs high-quality data and authoritative information to support public health assessment, decision-making and to assure the health of communities. Data quality assessment is important for public health. In this review completeness, accuracy, and timeliness were the three most-assessed attributes. Quantitative data quality assessment primarily used descriptive surveys and data audits, while qualitative data quality assessment methods include primarily interviews, questionnaires administration, documentation reviews and field observations. We found that data-use and data-process have not been given adequate attention, although they were equally important factors which determine the quality of data. Other limitations of the previous studies were inconsistency in the definition of the attributes of data quality, failure to address data users’ concerns and a lack of triangulation of mixed methods for data quality assessment. The reliability and validity of the data quality assessment were rarely reported. These gaps suggest that in the future, data quality assessment for public health needs to consider equally the three dimensions of data quality, data use and data process. Measuring the perceptions of end users or consumers towards data quality will enrich our understanding of data quality issues. Data use is limited to risk communication and sensitization, no examples of use of data for prioritization or decision making at the sub national level.
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spelling pubmed-66755802019-08-09 Integrated disease surveillance and response implementation in Liberia, findings from a data quality audit, 2017 Nagbe, Thomas Yealue, Kwuakuan Yeabah, Trokon Rude, Julius Monday Fallah, Musoka Skrip, Laura Agbo, Chukwuemeka Mouhamoud, Nuha Okeibunor, Joseph Chukwudi Tuopileyi, Roland Talisuna, Ambrose Yahaya, Ali Ahmed Rajatonirina, Soatiana Frimpong, Joseph Asamoah Stephen, Mary Hamblion, Esther Nyenswah, Tolbert Dahn, Bernice Gasasira, Alex Fall, Ibrahima Socé Pan Afr Med J Research INTRODUCTION: in spite of the efforts and resources committed by the division of infectious disease and epidemiology (DIDE) of the national public health institute of Liberia (NPHIL)/Ministry of health to strengthening integrated disease surveillance and response (IDSR) across the country, quality data management system remains a challenge to the Liberia NPHIL/MoH (Ministry of health), with incomplete and inconsistent data constantly being reported at different levels of the surveillance system. As part of the monitoring and evaluation strategy for IDSR continuous improvement, data quality assessment (DQA) of the IDSR system to identify successes and gaps in the disease surveillance information system (DSIS) with the aim of ensuring data accuracy, reliability and credibility of generated data at all levels of the health system; and to inform an operational plan to address data quality needs for IDSR activities is required. METHODS: multi-stage cluster sampling that included stage 1: simple random sample (SRS) of five counties, stage 2: simple random sample of two districts and stage 3: simple random sample of three health facilities was employed during the study pilot assessment done in Montserrado County with Liberia institute of bio medical research (LIBR) inclusive. A total of thirty (30) facilities was targeted, twenty nine (29) of the facilities were successfully audited: one hospital, two health centers, twenty clinics and respondents included: health facility surveillance focal persons (HFSFP), zonal surveillance officers (ZSOs), district surveillance officers (DSOs) and County surveillance officers (CSOs). RESULTS: the assessment revealed that data use is limited to risk communication and sensitization, no examples of use of data for prioritization or decision making at the subnational level. The findings indicated the following: 23% (7/29) of health facilities having dedicated phone for reporting, 20% (6/29) reported no cell phone network, 17% (5/29) reported daily access to internet, 56.6% (17/29) reported a consistent supply of electricity, and no facility reported access to functional laptop. It was also established that 40% of health facilities have experienced a stock out of laboratory specimens packaging supplies in the past year. About half of the surveyed health facilities delivered specimens through riders and were assisted by the DSOs. There was a large variety in the reported packaging process, with many staff unable to give clear processes. The findings during the exercise also indicated that 91% of health facility staff were mentored on data quality check and data management including the importance of the timeliness and completeness of reporting through supportive supervision and mentorship; 65% of the health facility assessed received supervision on IDSR core performance indicator; and 58% of the health facility officer in charge gave feedback to the community level. CONCLUSION: public health is a data-intensive field which needs high-quality data and authoritative information to support public health assessment, decision-making and to assure the health of communities. Data quality assessment is important for public health. In this review completeness, accuracy, and timeliness were the three most-assessed attributes. Quantitative data quality assessment primarily used descriptive surveys and data audits, while qualitative data quality assessment methods include primarily interviews, questionnaires administration, documentation reviews and field observations. We found that data-use and data-process have not been given adequate attention, although they were equally important factors which determine the quality of data. Other limitations of the previous studies were inconsistency in the definition of the attributes of data quality, failure to address data users’ concerns and a lack of triangulation of mixed methods for data quality assessment. The reliability and validity of the data quality assessment were rarely reported. These gaps suggest that in the future, data quality assessment for public health needs to consider equally the three dimensions of data quality, data use and data process. Measuring the perceptions of end users or consumers towards data quality will enrich our understanding of data quality issues. Data use is limited to risk communication and sensitization, no examples of use of data for prioritization or decision making at the sub national level. The African Field Epidemiology Network 2019-05-31 /pmc/articles/PMC6675580/ /pubmed/31402968 http://dx.doi.org/10.11604/pamj.supp.2019.33.2.17608 Text en © Thomas Nagbe et al. http://creativecommons.org/licenses/by/2.0/ The Pan African Medical Journal - ISSN 1937-8688. This is an Open Access article distributed under the terms of the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Nagbe, Thomas
Yealue, Kwuakuan
Yeabah, Trokon
Rude, Julius Monday
Fallah, Musoka
Skrip, Laura
Agbo, Chukwuemeka
Mouhamoud, Nuha
Okeibunor, Joseph Chukwudi
Tuopileyi, Roland
Talisuna, Ambrose
Yahaya, Ali Ahmed
Rajatonirina, Soatiana
Frimpong, Joseph Asamoah
Stephen, Mary
Hamblion, Esther
Nyenswah, Tolbert
Dahn, Bernice
Gasasira, Alex
Fall, Ibrahima Socé
Integrated disease surveillance and response implementation in Liberia, findings from a data quality audit, 2017
title Integrated disease surveillance and response implementation in Liberia, findings from a data quality audit, 2017
title_full Integrated disease surveillance and response implementation in Liberia, findings from a data quality audit, 2017
title_fullStr Integrated disease surveillance and response implementation in Liberia, findings from a data quality audit, 2017
title_full_unstemmed Integrated disease surveillance and response implementation in Liberia, findings from a data quality audit, 2017
title_short Integrated disease surveillance and response implementation in Liberia, findings from a data quality audit, 2017
title_sort integrated disease surveillance and response implementation in liberia, findings from a data quality audit, 2017
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6675580/
https://www.ncbi.nlm.nih.gov/pubmed/31402968
http://dx.doi.org/10.11604/pamj.supp.2019.33.2.17608
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