"We don't trust all data coming from all facilities": factors influencing the quality of care network data quality in Ethiopia.

Autor: Tufa AA; Ethiopian Public Health Institute, HSRHRD, Addis Ababa, Ethiopia., Gonfa G; Ethiopian Public Health Institute, HSRHRD, Addis Ababa, Ethiopia., Tesfa A; Ethiopian Public Health Institute, HSRHRD, Addis Ababa, Ethiopia., Getachew T; Ethiopian Public Health Institute, HSRHRD, Addis Ababa, Ethiopia., Bekele D; Ethiopian Ministry of Health, Quality and Clinical Service Directorate, Addis Ababa, Ethiopia., Dagnaw F; Ethiopian Ministry of Health, Quality and Clinical Service Directorate, Addis Ababa, Ethiopia., Djellouli N; Institute for Global Health, University College London, London, UK., Colbourn T; Institute for Global Health, University College London, London, UK., Marchant T; Department of Disease Control, London School of Hygiene & Tropical Medicine, London, UK., Lemma S; Department of Disease Control, London School of Hygiene & Tropical Medicine, London, UK.
Jazyk: angličtina
Zdroj: Global health action [Glob Health Action] 2023 Dec 31; Vol. 16 (1), pp. 2279856. Date of Electronic Publication: 2023 Nov 29.
DOI: 10.1080/16549716.2023.2279856
Abstrakt: Background: Good quality data are a key to quality health care. In 2017, WHO has launched the Quality of Care Network (QCN) to reduce maternal, newborn and stillbirth mortality via learning and sharing networks. Guided by the principle of equity and dignity, the network members agreed to implement the programme in 2017-2021.
Objective: This paper seeks to explore how QCN has contributed to improving data quality and to identify factors influencing quality of data in Ethiopia.
Methods: We conducted a qualitative study in selected QCN facilities in Ethiopia using key informant interview and observation methods. We interviewed 40 people at national, sub-national and facility levels. Non-participant observations were carried out in four purposively selected health facilities; we accessed monthly reports from 41 QCN learning facilities. A codebook was prepared following a deductive and inductive analytical approach, coded using Nvivo 12 and thematically analysed.
Results: There was a general perception that QCN had improved health data documentation and use in the learning facilities, achieved through coaching, learning and building from pre-existing initiatives. QCN also enhanced the data elements available by introducing a broader set of quality indicators. However, the perception of poor data quality persisted. Factors negatively affecting data quality included a lack of integration of QCN data within routine health system activities, the perception that QCN was a pilot, plus a lack of inclusive engagement at different levels. Both individual and system capabilities needed to be strengthened.
Conclusion: There is evidence of QCN's contribution to improving data awareness. But a lack of inclusive engagement of actors, alignment and limited skill for data collection and analysis continued to affect data quality and use. In the absence of new resources, integration of new data activities within existing routine health information systems emerged as the most important potential action for positive change.
Databáze: MEDLINE
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