Improving risk prediction model quality in the critically ill: data linkage study

Author:

Ferrando-Vivas Paloma1ORCID,Shankar-Hari Manu23ORCID,Thomas Karen1ORCID,Doidge James C1ORCID,Caskey Fergus J45ORCID,Forni Lui6ORCID,Harris Steve78ORCID,Ostermann Marlies9ORCID,Gornik Ivan10ORCID,Holman Naomi11ORCID,Lone Nazir12ORCID,Young Bob13ORCID,Jenkins David14ORCID,Webb Stephen15ORCID,Nolan Jerry P1617ORCID,Soar Jasmeet18ORCID,Rowan Kathryn M1ORCID,Harrison David A1ORCID

Affiliation:

1. Clinical Trials Unit, Intensive Care National Audit & Research Centre, London, UK

2. Intensive Care Unit, Guy’s and St Thomas’ NHS Foundation Trust, London, UK

3. School of Immunology & Microbial Sciences, Kings College London, London, UK

4. Population Health Sciences, University of Bristol, Bristol, UK

5. Department of Renal Medicine, North Bristol NHS Trust, Bristol, UK

6. Department of Clinical and Experimental Medicine, Faculty of Health Sciences, University of Surrey, Guildford, UK

7. Department of Critical Care, University College London Hospitals NHS Foundation Trust, London, UK

8. Bloomsbury Institute for Intensive Care Medicine, Division of Medicine, University College London, London, UK

9. Department of Critical Care, Guy’s and St Thomas’ NHS Foundation Trust, London, UK

10. Intensive Care Unit, University Hospital Centre Zagreb, Zagreb, Croatia

11. Institute of Cardiovascular & Medical Sciences, University of Glasgow, Glasgow, UK

12. Usher Institute, College of Medicine and Veterinary Medicine, University of Edinburgh, Edinburgh, UK

13. Diabetes UK, London, UK

14. Department of Cardiothoracic Surgery, Royal Papworth Hospital NHS Foundation Trust, Cambridge, UK

15. Department of Anaesthesia and Intensive Care, Royal Papworth Hospital NHS Foundation Trust, Cambridge, UK

16. Warwick Medical School, University of Warwick, Coventry, UK

17. Department of Anaesthesia and Intensive Care Medicine, Royal United Hospital Bath NHS Trust, Bath, UK

18. Critical Care Unit, Southmead Hospital, North Bristol NHS Trust, Bristol, UK

Abstract

Background A previous National Institute for Health and Care Research study [Harrison DA, Ferrando-Vivas P, Shahin J, Rowan KM. Ensuring comparisons of health-care providers are fair: development and validation of risk prediction models for critically ill patients. Health Serv Deliv Res 2015;3(41)] identified the need for more research to understand risk factors and consequences of critical care and subsequent outcomes. Objectives First, to improve risk models for adult general critical care by developing models for mortality at fixed time points and time-to-event outcomes, end-stage renal disease, type 2 diabetes, health-care utilisation and costs. Second, to improve risk models for cardiothoracic critical care by enhancing risk factor data and developing models for longer-term mortality. Third, to improve risk models for in-hospital cardiac arrest by enhancing risk factor data and developing models for longer-term mortality and critical care utilisation. Design Risk modelling study linking existing data. Setting NHS adult critical care units and acute hospitals in England. Participants Patients admitted to an adult critical care unit or experiencing an in-hospital cardiac arrest. Interventions None. Main outcome measures Mortality at hospital discharge, 30 days, 90 days and 1 year following critical care unit admission; mortality at 1 year following discharge from acute hospital; new diagnosis of end-stage renal disease or type 2 diabetes; hospital resource use and costs; return of spontaneous circulation sustained for > 20 minutes; survival to hospital discharge and 1 year; and length of stay in critical care following in-hospital cardiac arrest. Data sources Case Mix Programme, National Cardiac Arrest Audit, UK Renal Registry, National Diabetes Audit, National Adult Cardiac Surgery Audit, Hospital Episode Statistics and Office for National Statistics. Results Data were linked for 965,576 critical care admissions between 1 April 2009 and 31 March 2016, and 83,939 in-hospital cardiac arrests between 1 April 2011 and 31 March 2016. For admissions to adult critical care units, models for 30-day mortality had similar predictors and performance to those for hospital mortality and did not reduce heterogeneity. Models for longer-term outcomes reflected increasing importance of chronic over acute predictors. New models for end-stage renal disease and diabetes will allow benchmarking of critical care units against these important outcomes and identification of patients requiring enhanced follow-up. The strongest predictors of health-care costs were prior hospitalisation, prior dependency and chronic conditions. Adding pre- and intra-operative risk factors to models for cardiothoracic critical care gave little improvement in performance. Adding comorbidities to models for in-hospital cardiac arrest provided modest improvements but were of greater importance for longer-term outcomes. Limitations Delays in obtaining linked data resulted in the data used being 5 years old at the point of publication: models will already require recalibration. Conclusions Data linkage provided enhancements to the risk models underpinning national clinical audits in the form of additional predictors and novel outcomes measures. The new models developed in this report may assist in providing objective estimates of potential outcomes to patients and their families. Future work (1) Develop and test care pathways for recovery following critical illness targeted at those with the greatest need; (2) explore other relevant data sources for longer-term outcomes; (3) widen data linkage for resource use and costs to primary care, outpatient and emergency department data. Study registration This study is registered as NCT02454257. Funding details This project was funded by the National Institute for Health and Care Research (NIHR) Health and Social Care Delivery Research programme and will be published in full in Health and Social Care Delivery Research; Vol. 10, No. 39. See the NIHR Journals Library website for further project information.

Funder

Health and Social Care Delivery Research (HSDR) Programme

Publisher

National Institute for Health and Care Research (NIHR)

Subject

Health (social science),Care Planning,Health Policy

Reference118 articles.

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