2002
DOI: 10.1002/sim.1391
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Use of the mean, hot deck and multiple imputation techniques to predict outcome in intensive care unit patients in Colombia

Abstract: A cohort of intensive care unit (ICU) patients in 20 Colombian ICUs is used to describe the application of three imputation techniques: single, hot deck and multiple imputation. These strategies were used to impute the missing data in the variables used to construct APACHE II scores, a scoring system for the ICU patients that provides an unbiased standardized estimate of the probability of hospital death. Imputed APACHE II scores were then used in the APACHE II model to estimate adjusted hospital mortality rat… Show more

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Cited by 69 publications
(43 citation statements)
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References 25 publications
(21 reference statements)
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“…The HCU costs and lost productivity costs were analyzed using a bias-corrected and accelerated bootstrapping method with 2,000 replications. The mean costs of HCU were analyzed for the entire study population after imputation of missing data via the hot deck method and after interpolation for non-observed months [20].…”
Section: Discussionmentioning
confidence: 99%
“…The HCU costs and lost productivity costs were analyzed using a bias-corrected and accelerated bootstrapping method with 2,000 replications. The mean costs of HCU were analyzed for the entire study population after imputation of missing data via the hot deck method and after interpolation for non-observed months [20].…”
Section: Discussionmentioning
confidence: 99%
“…This process continues until all censored values for the variable or variables of interest have been replaced. 28 This technique generally underestimates the variance of the parameter estimate because the variation introduced into the imputed analysis is only consistent with the ranges from complete cases identified as being similar to those with missing data. 28 Variance is also underestimated because only a single specific value is imputed for each censored value.…”
Section: Weighted Complete-case Analysismentioning
confidence: 99%
“…28 This technique generally underestimates the variance of the parameter estimate because the variation introduced into the imputed analysis is only consistent with the ranges from complete cases identified as being similar to those with missing data. 28 Variance is also underestimated because only a single specific value is imputed for each censored value. The principal advantages of this technique are that it does not require parametric assumptions or careful modeling to identify values to impute and that variation of imputed values may better reflect the distributional properties of the variable.…”
Section: Weighted Complete-case Analysismentioning
confidence: 99%
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“…As a result, there are fewer tendencies towards the mean of the sample. The other main advantage of this non-parametric technique is that it does not require strong distribution assumptions or careful modeling to develop selection criteria for imputing a value (Perez A and Rodolfo JD, 2002 (Perez A and Rodolfo JD, 2002).…”
Section: Health and Nutritional Examination Survey (Nhanes Iii) Multmentioning
confidence: 99%