Literature DB >> 22844575

A Clinical Database-Driven Approach to Decision Support: Predicting Mortality Among Patients with Acute Kidney Injury.

Leo Anthony G Celi1, Robin J Tang, Mauricio C Villarroel, Guido A Davidzon, William T Lester, Henry C Chueh.   

Abstract

In exploring an approach to decision support based on information extracted from a clinical database, we developed mortality prediction models of intensive care unit (ICU) patients who had acute kidney injury (AKI) and compared them against the Simplified Acute Physiology Score (SAPS). We used MIMIC, a public de-identified database of ICU patients admitted to Beth Israel Deaconess Medical Center, and identified 1400 patients with an ICD9 diagnosis of AKI and who had an ICU stay > 3 days. Multivariate regression models were built using the SAPS variables from the first 72 hours of ICU admission. All the models developed on the training set performed better than SAPS (AUC = 0.64, Hosmer-Lemeshow p < 0.001) on an unseen test set; the best model had an AUC = 0.74 and Hosmer-Lemeshow p = 0.53. These findings suggest that local customized modeling might provide more accurate predictions. This could be the first step towards an envisioned individualized point-of-care probabilistic modeling using one's clinical database.

Entities:  

Year:  2011        PMID: 22844575      PMCID: PMC3404157          DOI: 10.1260/2040-2295.2.1.97

Source DB:  PubMed          Journal:  J Healthc Eng        ISSN: 2040-2295            Impact factor:   2.682


  10 in total

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Authors:  Shigehiko Uchino; John A Kellum; Rinaldo Bellomo; Gordon S Doig; Hiroshi Morimatsu; Stanislao Morgera; Miet Schetz; Ian Tan; Catherine Bouman; Ettiene Macedo; Noel Gibney; Ashita Tolwani; Claudio Ronco
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4.  The risk factors and outcome of acute kidney injury in the intensive care units.

Authors:  Woo Young Park; Eun Ah Hwang; Mi Hyun Jang; Sung Bae Park; Hyun Chul Kim
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5.  Predictive value of RIFLE classification on prognosis of critically ill patients with acute kidney injury treated with continuous renal replacement therapy.

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6.  A new Simplified Acute Physiology Score (SAPS II) based on a European/North American multicenter study.

Authors:  J R Le Gall; S Lemeshow; F Saulnier
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Review 7.  Severity scoring in the ICU: a review.

Authors:  K Strand; H Flaatten
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8.  RIFLE criteria for acute kidney injury are associated with hospital mortality in critically ill patients: a cohort analysis.

Authors:  Eric A J Hoste; Gilles Clermont; Alexander Kersten; Ramesh Venkataraman; Derek C Angus; Dirk De Bacquer; John A Kellum
Journal:  Crit Care       Date:  2006-05-12       Impact factor: 9.097

9.  Case mix, outcome and activity for patients with severe acute kidney injury during the first 24 hours after admission to an adult, general critical care unit: application of predictive models from a secondary analysis of the ICNARC Case Mix Programme database.

Authors:  Nitin V Kolhe; Paul E Stevens; Alex V Crowe; Graham W Lipkin; David A Harrison
Journal:  Crit Care       Date:  2008-10-13       Impact factor: 9.097

10.  Correlation between the AKI classification and outcome.

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  10 in total
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2.  Learning statistical models of phenotypes using noisy labeled training data.

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Review 4.  Using existing data to address important clinical questions in critical care.

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5.  Disease-based modeling to predict fluid response in intensive care units.

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Review 6.  Acute Kidney Injury in the Surgical Patient.

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8.  Collective Experience: A Database-Fuelled, Inter-Disciplinary Team-Led Learning System.

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Journal:  J Comput Sci Eng       Date:  2012-03-01

9.  Closing the Data Loop: An Integrated Open Access Analysis Platform for the MIMIC Database.

Authors:  Mohammad Adibuzzaman; Ken Musselman; Alistair Johnson; Paul Brown; Zachary Pitluk; Ananth Grama
Journal:  Comput Cardiol (2010)       Date:  2017-03-02

10.  Predicting Future Cardiovascular Events in Patients With Peripheral Artery Disease Using Electronic Health Record Data.

Authors:  Elsie Gyang Ross; Kenneth Jung; Joel T Dudley; Li Li; Nicholas J Leeper; Nigam H Shah
Journal:  Circ Cardiovasc Qual Outcomes       Date:  2019-03
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