Artificial intelligence and digital health in improving primary health care service delivery in LMICs: A systematic review

Author:

Saif‐Ur‐Rahman KM123ORCID,Islam Md Shariful4,Alaboson Joan5,Ola Oluwadara6,Hasan Imran7,Islam Nazmul8,Mainali Shristi9,Martina Tina10,Silenga Eva11,Muyangana Mubita12,Joarder Taufique13ORCID

Affiliation:

1. College of Medicine Nursing and Health Sciences University of Galway Galway Ireland

2. Evidence Synthesis Ireland and Cochrane Ireland University of Galway Galway Ireland

3. Health Systems and Population Studies Division International Centre for Diarrhoeal Disease Research, Bangladesh Dhaka Bangladesh

4. School of Public Health University of Queensland Brisbane Australia

5. Department of Psychology Maynooth University Kildare Ireland

6. Sacred Heart Hospital Abeokuta Ogun State Nigeria

7. Laboratory of Gut‐Brain Signaling Laboratory Sciences and Services Division International Centre for Diarrhoeal Disease Research, Bangladesh Dhaka Bangladesh

8. Department of Health Research Methods Evidence and Impact McMaster University Hamilton Ontario Canada

9. Department of Operations Marie Stopes International Kathmandu Nepal

10. General Hospital of Haji Padjonga South Sulawesi Indonesia

11. Department of Mother and Child Health Ministry of Health Lusaka Zambia

12. Lewanika School of Nursing and Midwifery Ministry of Health Mongu Zambia

13. SingHealth Duke‐NUS Global Health Institute, National University of Singapore Singapore

Abstract

AbstractAimTechnology including artificial intelligence (AI) may play a key role to strengthen primary health care services in resource‐poor settings. This systematic review aims to explore the evidence on the use of AI and digital health in improving primary health care service delivery.MethodsThree electronic databases were searched using a comprehensive search strategy without providing any restriction in June 2023. Retrieved articles were screened independently using the “Rayyan” software. Data extraction and quality assessment were conducted independently by two review authors. A narrative synthesis of the included interventions was conducted.ResultsA total of 4596 articles were screened, and finally, 48 articles were included from 21 different countries published between 2013 and 2021. The main focus of the included studies was noncommunicable diseases (n = 15), maternal and child health care (n = 11), primary care (n = 8), infectious diseases including tuberculosis, leprosy, and HIV (n = 7), and mental health (n = 6). Included studies considered interventions using AI, and digital health of which mobile‐phone‐based interventions were prominent. m‐health interventions were well adopted and easy to use and improved the record‐keeping, service deliver, and patient satisfaction.ConclusionAI and the application of digital technologies improve primary health care service delivery in resource‐poor settings in various ways. However, in most of the cases, the application of AI and digital health is implemented through m‐health. There is a great scope to conduct further research exploring the interventions on a large scale.

Publisher

Wiley

Subject

Health Policy,General Medicine

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