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Choosing a model to predict hospital admission: an observational study of new variants of predictive models for case finding.

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TLDR
Characteristics of patients identified by the algorithms provide useful information in the design/costing of intervention strategies to improve care coordination/outcomes for these patients.
Abstract
Objectives To test the performance of new variants of models to identify people at risk of an emergency hospital admission. We compared (1) the impact of using alternative data sources (hospital inpatient, A&E, outpatient and general practitioner (GP) electronic medical records) (2) the effects of local calibration on the performance of the models and (3) the choice of population denominators. Design Multivariate logistic regressions using person-level data adding each data set sequentially to test value of additional variables and denominators. Setting 5 Primary Care Trusts within England. Participants 1 836 099 people aged 18–95 registered with GPs on 31 July 2009. Main outcome measures Models to predict hospital admission and readmission were compared in terms of the positive predictive value and sensitivity for various risk strata and with the receiver operating curve C statistic. Results The addition of each data set showed moderate improvement in the number of patients identified with little or no loss of positive predictive value. However, even with inclusion of GP electronic medical record information, the algorithms identified only a small number of patients with no emergency hospital admissions in the previous 2 years. The model pooled across all sites performed almost as well as the models calibrated to local data from just one site. Using population denominators from GP registers led to better case finding. Conclusions These models provide a basis for wider application in the National Health Service. Each of the models examined produces reasonably robust performance and offers some predictive value. The addition of more complex data adds some value, but we were unable to conclude that pooled models performed less well than those in individual sites. Choices about model should be linked to the intervention design. Characteristics of patients identified by the algorithms provide useful information in the design/costing of intervention strategies to improve care coordination/outcomes for these patients.

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Citations
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Journal ArticleDOI

Opportunities and challenges in developing risk prediction models with electronic health records data: a systematic review

TL;DR: Electronic health records are an increasingly common data source for clinical risk prediction, presenting both unique analytic opportunities and challenges, and there is room for improvement in designing studies using EHR data.
Journal ArticleDOI

Risk prediction models to predict emergency hospital admission in community-dwelling adults: a systematic review.

TL;DR: This study suggests that risk models developed using administrative or clinical record data tend to perform better, and careful consideration needs to be given to the purpose of its use and local factors in applying a risk prediction model to a new population.
Journal ArticleDOI

Predicting the risk of emergency admission with machine learning: Development and validation using linked electronic health records

TL;DR: The use of machine learning and addition of temporal information led to substantially improved discrimination and calibration for predicting the risk of emergency admission and support the potential of incorporating machine learning models into electronic health records to inform care and service planning.
Journal ArticleDOI

Risk prediction in the community: A systematic review of case-finding instruments that predict adverse healthcare outcomes in community-dwelling older adults.

TL;DR: A review of case-finding instruments that detect older community-dwellers risk of four adverse outcomes: hospitalisation, functional-decline, institutionalisation and death highlights the present need to develop short, reliable, valid instruments to case-find older adults at risk in the community.
Journal ArticleDOI

Predicting patients with high risk of becoming high-cost healthcare users in Ontario (Canada).

TL;DR: A predictive model was developed to identify patients at risk of becoming high-cost users in Ontario and alternatives for implementation include collaboration between different levels of healthcare services for personalized healthcare interventions and interventions addressing needs of patient cohorts with high- cost conditions.
References
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Journal ArticleDOI

A new method of classifying prognostic comorbidity in longitudinal studies: Development and validation☆

TL;DR: The method of classifying comorbidity provides a simple, readily applicable and valid method of estimating risk of death fromComorbid disease for use in longitudinal studies and further work in larger populations is still required to refine the approach.
Journal ArticleDOI

Risk Prediction Models for Hospital Readmission: A Systematic Review

TL;DR: Most current readmission risk prediction models that were designed for either comparative or clinical purposes perform poorly and although in certain settings such models may prove useful, efforts to improve their performance are needed as use becomes more widespread.
Journal ArticleDOI

Case finding for patients at risk of readmission to hospital: development of algorithm to identify high risk patients

TL;DR: A method of predicting individual patients at highest risk of readmission to hospital in the next 12 months has been developed, which has a reasonable level of sensitivity and specificity.
Journal ArticleDOI

Contribution of Preventable Acute Care Spending to Total Spending for High-Cost Medicare Patients

TL;DR: Among a sample of patients in the top decile of Medicare spending in 2010, only a small percentage of costs appeared to be related to preventable emergency department visits and hospitalizations, and the ability to lower costs for these patients through better outpatient care may be limited.
Journal ArticleDOI

Improving The Management Of Care For High-Cost Medicaid Patients

TL;DR: An algorithm is presented that identifies patients at high risk of future hospitalizations and a business-case analysis with a range of assumptions about the rate of reduction in future hospitalization and the cost of the intervention is offered.
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