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A critical analysis of discovery health's claims-based risk adjustment of mortality rates in South African private sector hospitals
Rodseth, R N; Smith, D; Maslo, C; Laubscher, A; Thabane, L.
  • Rodseth, R N; Netcare Ltd. Department of Anaesthesiology and Critical Care, College of Health Sciences, Nelson R Mandela School of Medicine, University of KwaZulu-Natal, Durban, South Africa. Johannesburg. ZA
  • Smith, D; Netcare Ltd. Johannesburg. ZA
  • Maslo, C; Netcare Ltd. Johannesburg. ZA
  • Laubscher, A; Netcare Ltd. Johannesburg. ZA
  • Thabane, L; Department of Health Research Methods, Evidence and Impact, Faculty of Health Sciences, McMaster University, Hamilton. Biostatistics Unit, St Joseph's Healthcare Hamilton, Ont., Canada. Ontario. CA
S. Afr. med. j. (Online) ; 113(1): 13-16, 2023. tables
Article in English | AIM | ID: biblio-1412820
Responsible library: CG1.1
ABSTRACT
In 2019, Discovery Health published a risk adjustment model to determine standardised mortality rates across South African private hospital systems, with the aim of contributing towards quality improvement in the private healthcare sector. However, the model suffers from limitations due to its design and its reliance on administrative data. The publication's aim of facilitating transparency is unfortunately undermined by shortcomings in reporting. When designing a risk prediction model, patient-proximate variables with a sound theoretical or proven association with the outcome of interest should be used. The addition of key condition-specific clinical data points at the time of hospital admission will dramatically improve model performance. Performance could be further improved by using summary risk prediction scores such as the EUROSCORE II for coronary artery bypass graft surgery or the GRACE risk score for acute coronary syndrome. In general, model reporting should conform to published reporting standards, and attempts should be made to test model validity by using sensitivity analyses. In particular, the limitations of machine learning prediction models should be understood, and these models should be appropriately developed, evaluated and reported.
Subject(s)

Full text: Available Index: AIM (Africa) Main subject: Hospital Mortality / Private Sector / Risk Adjustment / Quality Improvement Type of study: Etiology study / Practice guideline / Prognostic study / Risk factors Limits: Female / Humans / Male Language: English Journal: S. Afr. med. j. (Online) Year: 2023 Type: Article Institution/Affiliation country: Department of Health Research Methods, Evidence and Impact, Faculty of Health Sciences, McMaster University, Hamilton/CA / Netcare Ltd/ZA

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Full text: Available Index: AIM (Africa) Main subject: Hospital Mortality / Private Sector / Risk Adjustment / Quality Improvement Type of study: Etiology study / Practice guideline / Prognostic study / Risk factors Limits: Female / Humans / Male Language: English Journal: S. Afr. med. j. (Online) Year: 2023 Type: Article Institution/Affiliation country: Department of Health Research Methods, Evidence and Impact, Faculty of Health Sciences, McMaster University, Hamilton/CA / Netcare Ltd/ZA