2010
DOI: 10.1503/cmaj.091117
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Derivation and validation of an index to predict early death or unplanned readmission after discharge from hospital to the community

Abstract: 551R eadmission to hospital and death are adverse patient outcomes that are serious, common and costly.1,2 Several studies suggest that focused care after discharge can improve post-discharge outcomes.3-7 Being able to accurately predict the risk of poor outcomes after hospital discharge would allow health care workers to focus post-discharge interventions on patients who are at highest risk of poor post-discharge outcomes. Further, policy-makers have expressed interest in either penalizing hospitals with rela… Show more

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Cited by 758 publications
(807 citation statements)
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References 27 publications
(23 reference statements)
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“…When we retrospectively applied the LACE strategy to more than 300,000 KPSC Health Plan discharges over a 12-month period, we found that readmission prediction curves reported by van Walraven et al 8 were almost identical to readmission curves seen in KPSC. Our analysis included the results for all discharges and for discharges that met HEDIS criteria.…”
Section: Risk Stratificationmentioning
confidence: 64%
See 2 more Smart Citations
“…When we retrospectively applied the LACE strategy to more than 300,000 KPSC Health Plan discharges over a 12-month period, we found that readmission prediction curves reported by van Walraven et al 8 were almost identical to readmission curves seen in KPSC. Our analysis included the results for all discharges and for discharges that met HEDIS criteria.…”
Section: Risk Stratificationmentioning
confidence: 64%
“…For KPSC, we decided to develop a risk stratification program that we could standardize and integrate into our electronic medical record (EMR). In 2010, van Walraven and colleagues 8 reported that a new risk stratification tool called LACE (Length of stay, Acuity of admission, Comorbidities, and Emergency room visits in last 6 months) could be used to predict patients at risk of an unplanned 30-day readmission and death.…”
Section: Risk Stratificationmentioning
confidence: 99%
See 1 more Smart Citation
“…Among all hospitalized Medicare beneficiaries (including community-dwelling and institutionalized elders, as well as younger disabled Medicare beneficiaries), nearly one in five were readmitted within 30 days, and over one-third were readmitted within 90 days. 1 These readmitted individuals have been described in some detail; research has identified early readmission risk factors for general 2,3 and geriatric populations, [4][5][6] as well as those with specific diseases such as heart failure, 7 stroke, 8 and chronic obstructive pulmonary disease. 9 Individuals readmitted early are more likely to have multiple medical comorbidities, greater length of stay during the index hospitalization, and additional recent hospitalizations.…”
Section: Introductionmentioning
confidence: 99%
“…In addition, many patients have multiple readmissions, sometimes over a period of several years, so this measure loses information, especially on disease progression [9]. Most studies of readmissions ignore the competing risk of death or account for it by using a combined endpoint of death or readmission [10], which is unsatisfactory, not least because death and readmission are far from being of equal importance. Other modelling options include hurdle models and resource buckets, which can be useful for some questions [11] but are not flexible enough to show progression of the underlying chronic disease.…”
Section: Modelling Optionsmentioning
confidence: 99%