The role of healthcare practitioners in managing chronic disease: Best practices and challenges

https://doi.org/10.53730/ijhs.v8nS1.15425

Authors

  • ‏Afaf Snitan Al-Otaibi KSA, National Guard Health Affairs
  • ‏Reham Mohammad Alsoulaimi KSA, National Guard Health Affairs
  • Hatem Osama Okal KSA, National Guard Health Affairs
  • Abdullah Hassan Abdullah Aldawsari KSA, National Guard Health Affairs
  • ‏Mohammed Hamed Alqahtani KSA, National Guard Health Affairs
  • ‏Faiz Al-Dahamashi KSA, National Guard Health Affairs
  • ‏Maryam Helal Alanazi KSA, National Guard Health Affairs
  • ‏Adel Abdulaziz Alruhaymi Medical Services, Ministry of Interior
  • ‏Asmaa Yahya Iogbi KSA, National Guard Health Affairs
  • ‏Abdulrahman Marzooq Alharbi KSA, National Guard Health Affairs
  • ‏Abdullah Mohammed Aldawsari KSA, National Guard Health Affairs
  • ‏Mohammed Rashed Aldhahri KSA, National Guard Health Affairs
  • Adil Mubarak F Alotaibi KSA, National Guard Health Affairs
  • Afnan Mohammed Bin Jabal KSA, National Guard Health Affairs
  • Nourah Ibrahim Mohammed Alruqaie KSA, National Guard Health Affairs
  • Mohammed Faraj Albalawi KSA, National Guard Health Affairs
  • Mohammed Eid Alhawiti KSA, National Guard Health Affairs

Keywords:

Patient Management, Chronic Illnesses, Cooperation, Patient-Centered care, Teams of Healthcare

Abstract

Background: Non-communicable diseases are considered a major global public health problem and hence, are best tackled. Several chronic disease interventions require teamwork involving different practitioners in the delivery of services. Aim: The purpose of this paper is to identify the implication of interprofessional relationships in chronic illnesses and in relation to teamwork and patient centered care. Methods: A literature review on the cross-disciplinary collaborative care models, position description of the healthcare practitioners come under and the influence of teamwork in chronic disease management. Results: The studies give emphasis that partnerships enhance quality, patient satisfaction, as well as health care productivity. But, for instance, issues like lack of effective communication were noted. Conclusion:  There is indication that inter-disciplinary teamwork effort of different personnel in the management of chronic diseases result in good patient care goals hence better result.

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Published

03-01-2024

How to Cite

Al-Otaibi, ‏Afaf S., Alsoulaimi, ‏Reham M., Okal, H. O., Aldawsari, A. H. A., Alqahtani, ‏Mohammed H., Al-Dahamashi, ‏Faiz, Alanazi, ‏Maryam H., Alruhaymi, ‏Adel A., Iogbi, ‏Asmaa Y., Alharbi, ‏Abdulrahman M., Aldawsari, ‏Abdullah M., Aldhahri, ‏Mohammed R., Alotaibi, A. M. F., Jabal, A. M. B., Alruqaie, N. I. M., Albalawi, M. F., & Alhawiti, M. E. (2024). The role of healthcare practitioners in managing chronic disease: Best practices and challenges. International Journal of Health Sciences, 8(S1), 1870–1884. https://doi.org/10.53730/ijhs.v8nS1.15425

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