2008
DOI: 10.1371/journal.pone.0003226
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Estimating Long-Term Survival of Critically Ill Patients: The PREDICT Model

Abstract: BackgroundLong-term survival outcome of critically ill patients is important in assessing effectiveness of new treatments and making treatment decisions. We developed a prognostic model for estimation of long-term survival of critically ill patients.Methodology and Principal FindingsThis was a retrospective linked data cohort study involving 11,930 critically ill patients who survived more than 5 days in a university teaching hospital in Western Australia. Older age, male gender, co-morbidities, severe acute i… Show more

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Cited by 93 publications
(100 citation statements)
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“…[27][28][29][30] To compare the meaningful differences in patients' outcomes, it is essential to balance the baseline comorbidity conditions. The CCI is one of the most commonly used tools to measure the baseline comorbidities before ICU admission.…”
Section: Discussionmentioning
confidence: 99%
“…[27][28][29][30] To compare the meaningful differences in patients' outcomes, it is essential to balance the baseline comorbidity conditions. The CCI is one of the most commonly used tools to measure the baseline comorbidities before ICU admission.…”
Section: Discussionmentioning
confidence: 99%
“…As Xing et al allured to, we can never be sure how similar any individual patient would be to other patients because not all important prognostic factors are measured by a prognostic model. For instance, long-term survival of the critically ill could be affected by factors that are not measured by the APACHE II predicted risk, including comorbidity, intensity of organ support, age and gender (http://www/appsgeyser.com/1934515) [3]. Indeed, age and comorbidity explain about 50% and 27% of the variability in long-term survival after critical illness, respectively, and have far greater influence on long-term survival of critically ill patients than the APACHE II predicted risk.…”
Section: Dear Editormentioning
confidence: 99%
“…The maximum value when age is included is 43 [51][52][53] . This score has been shown to relate to long-term survival after intensive care 54 .…”
Section: Co-morbidity In Copdmentioning
confidence: 99%