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Published in: Internal and Emergency Medicine 2/2018

01-03-2018 | IM - ORIGINAL

Predictive modeling of inpatient mortality in departments of internal medicine

Authors: Naama Schwartz, Ali Sakhnini, Naiel Bisharat

Published in: Internal and Emergency Medicine | Issue 2/2018

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Abstract

Despite overwhelming data on predictors of inpatient mortality, it is unclear which variables are the most instructive in predicting mortality of patients in departments of internal medicine. This study aims to identify the most informative predictors of inpatient mortality, and builds a prediction model on an individual level, given a constellation of patient characteristics. We use a penalized method for developing the prediction model by applying the least-absolute-shrinkage and selection-operator regression. We utilize a cohort of adult patients admitted to any of 5 departments of internal medicine during 3.5 years. We integrated data from electronic health records that included clinical, epidemiological, administrative, and laboratory variables. The prediction model was evaluated using the validation sample. Of 10,788 patients hospitalized during the study period, 874 (8.1%) died during admission. We find that the strongest predictors of inpatient mortality are prior admission within 3 months, malignant morbidity, serum creatinine levels, and hypoalbuminemia at hospital admission, and an admitting diagnosis of sepsis, pneumonia, malignant neoplastic disease, or cerebrovascular disease. The C-statistic of the risk prediction model is 89.4% (95% CI 88.4–90.4%). The predictive performance of this model is better than a multivariate stepwise logistic regression model. By utilizing the prediction model, the AUC for the independent (validation) data set is 85.7% (95% CI 84.1–87.3%). Using penalized regression, this prediction model identifies the most informative predictors of inpatient mortality. The model illustrates the potential value and feasibility of a tool that can aid physicians in decision-making.
Literature
1.
go back to reference Steyerberg E (2009) Applications of prediction models. In: Steyerberg E (ed) Clinical prediction models: a practical approach to development, validation, and updating. Springer, New York, pp 11–31CrossRef Steyerberg E (2009) Applications of prediction models. In: Steyerberg E (ed) Clinical prediction models: a practical approach to development, validation, and updating. Springer, New York, pp 11–31CrossRef
2.
go back to reference Bo M, Raspo S, Massaia M, Cena P, Bosco F, Fabris F et al (2003) A predictive model of in-hospital mortality in elderly patients admitted to medical intensive care units. J Am Geriatr Soc 51:1507–1508CrossRefPubMed Bo M, Raspo S, Massaia M, Cena P, Bosco F, Fabris F et al (2003) A predictive model of in-hospital mortality in elderly patients admitted to medical intensive care units. J Am Geriatr Soc 51:1507–1508CrossRefPubMed
3.
go back to reference Nobre SR, Cabral JE, Gomes JJ, Leitao MC (2008) In-hospital mortality in spontaneous bacterial peritonitis: a new predictive model. Eur J Gastroenterol Hepatol 20:1176–1181CrossRefPubMed Nobre SR, Cabral JE, Gomes JJ, Leitao MC (2008) In-hospital mortality in spontaneous bacterial peritonitis: a new predictive model. Eur J Gastroenterol Hepatol 20:1176–1181CrossRefPubMed
4.
go back to reference Tabak YP, Sun X, Nunez CM, Johannes RS (2013) Using electronic health record data to develop inpatient mortality predictive model: Acute Laboratory Risk of Mortality Score (ALaRMS). J Am Med Inf Assoc 21:455–463CrossRef Tabak YP, Sun X, Nunez CM, Johannes RS (2013) Using electronic health record data to develop inpatient mortality predictive model: Acute Laboratory Risk of Mortality Score (ALaRMS). J Am Med Inf Assoc 21:455–463CrossRef
5.
go back to reference Ouwerkerk W, Voors AA, Zwinderman AH (2014) Factors influencing the predictive power of models for predicting mortality and/or heart failure hospitalization in patients with heart failure. JACC Heart Fail 2:429–436CrossRefPubMed Ouwerkerk W, Voors AA, Zwinderman AH (2014) Factors influencing the predictive power of models for predicting mortality and/or heart failure hospitalization in patients with heart failure. JACC Heart Fail 2:429–436CrossRefPubMed
6.
go back to reference Smolin B, Levy Y, Sabbach-Cohen E, Levi L, Mashiach T (2014) Predicting mortality of elderly patients acutely admitted to the Department of Internal Medicine. Int J Clin Pract 69:501–508CrossRefPubMed Smolin B, Levy Y, Sabbach-Cohen E, Levi L, Mashiach T (2014) Predicting mortality of elderly patients acutely admitted to the Department of Internal Medicine. Int J Clin Pract 69:501–508CrossRefPubMed
9.
go back to reference Greenland S (2008) Variable selection versus shrinkage in the control of multiple confounders. Am J Epidemiol 167:523–529CrossRefPubMed Greenland S (2008) Variable selection versus shrinkage in the control of multiple confounders. Am J Epidemiol 167:523–529CrossRefPubMed
10.
go back to reference Hernan MA, Hernandez-Diaz S, Werler MM, Mitchell AA (2002) Causal knowledge as a prerequisite for confounding evaluation: an application to birth defects epidemiology. Am J Epidemiol 155:176–184CrossRefPubMed Hernan MA, Hernandez-Diaz S, Werler MM, Mitchell AA (2002) Causal knowledge as a prerequisite for confounding evaluation: an application to birth defects epidemiology. Am J Epidemiol 155:176–184CrossRefPubMed
11.
go back to reference Mickey RM, Greenland S (1989) The impact of confounder selection criteria on effect estimation. Am J Epidemiol 129:125–137CrossRefPubMed Mickey RM, Greenland S (1989) The impact of confounder selection criteria on effect estimation. Am J Epidemiol 129:125–137CrossRefPubMed
12.
go back to reference Austin PC, Tu JV (2004) Automated variable selection methods for logistic regression produced unstable models for predicting acute myocardial infarction mortality. J Clin Epidemiol 57:1138–1146CrossRefPubMed Austin PC, Tu JV (2004) Automated variable selection methods for logistic regression produced unstable models for predicting acute myocardial infarction mortality. J Clin Epidemiol 57:1138–1146CrossRefPubMed
14.
go back to reference Narayanan R, Nugent R, Nugent K (2015) An investigation of the variety and complexity of statistical methods used in current internal medicine literature. South Med J 108:629–634PubMed Narayanan R, Nugent R, Nugent K (2015) An investigation of the variety and complexity of statistical methods used in current internal medicine literature. South Med J 108:629–634PubMed
15.
go back to reference Tibshirani R (1997) The lasso method for variable selection in the Cox model. Stat Med 16:385–395CrossRefPubMed Tibshirani R (1997) The lasso method for variable selection in the Cox model. Stat Med 16:385–395CrossRefPubMed
17.
go back to reference Hastie T, Tibshirani R, Friedman J (2001) Model Assessment and Selection. In: Hastie T, Tibshirani R, Friedman J (eds) The elements of statistical learning, data mining, inference, and prediction, 2nd edn. Springer, New York, pp 193–224 Hastie T, Tibshirani R, Friedman J (2001) Model Assessment and Selection. In: Hastie T, Tibshirani R, Friedman J (eds) The elements of statistical learning, data mining, inference, and prediction, 2nd edn. Springer, New York, pp 193–224
18.
go back to reference Asadollahi K, Hastings IM, Gill GV, Beeching NJ (2011) Prediction of hospital mortality from admission laboratory data and patient age: a simple model. Emerg Med Australas 23:354–363CrossRefPubMed Asadollahi K, Hastings IM, Gill GV, Beeching NJ (2011) Prediction of hospital mortality from admission laboratory data and patient age: a simple model. Emerg Med Australas 23:354–363CrossRefPubMed
19.
go back to reference Froom P, Shimoni Z (2006) Prediction of hospital mortality rates by admission laboratory tests. Clin Chem 52:325–328CrossRefPubMed Froom P, Shimoni Z (2006) Prediction of hospital mortality rates by admission laboratory tests. Clin Chem 52:325–328CrossRefPubMed
21.
go back to reference Silva TJ, Jerussalmy CS, Farfel JM, Curiati JA, Jacob-Filho W (2009) Predictors of in-hospital mortality among older patients. Clinics (Sao Paulo) 64:613–618CrossRef Silva TJ, Jerussalmy CS, Farfel JM, Curiati JA, Jacob-Filho W (2009) Predictors of in-hospital mortality among older patients. Clinics (Sao Paulo) 64:613–618CrossRef
22.
go back to reference Asadollahi K, Beeching NJ, Gill GV (2010) Leukocytosis as a predictor for non-infective mortality and morbidity. QJM 103:285–292CrossRefPubMed Asadollahi K, Beeching NJ, Gill GV (2010) Leukocytosis as a predictor for non-infective mortality and morbidity. QJM 103:285–292CrossRefPubMed
24.
go back to reference Baysal E, Cetin M, Yaylak B, Altntas B, Altndag R, Adyaman S et al (2015) Roles of the red cell distribution width and neutrophil/lymphocyte ratio in predicting thrombolysis failure in patients with an ST-segment elevation myocardial infarction. Blood Coagul Fibrinolysis 26:274–278CrossRefPubMed Baysal E, Cetin M, Yaylak B, Altntas B, Altndag R, Adyaman S et al (2015) Roles of the red cell distribution width and neutrophil/lymphocyte ratio in predicting thrombolysis failure in patients with an ST-segment elevation myocardial infarction. Blood Coagul Fibrinolysis 26:274–278CrossRefPubMed
25.
go back to reference Jia M, Huang W, Li L, Xu Z, Wu L (2015) Statins Reduce mortality after non-severe but not after severe pneumonia: a systematic review and meta-analysis. J Pharm Pharm Sci 18:286–302CrossRefPubMed Jia M, Huang W, Li L, Xu Z, Wu L (2015) Statins Reduce mortality after non-severe but not after severe pneumonia: a systematic review and meta-analysis. J Pharm Pharm Sci 18:286–302CrossRefPubMed
26.
go back to reference Jung JM, Choi JY, Kim HJ, Seo WK (2015) Statin use in spontaneous intracerebral hemorrhage: a systematic review and meta-analysis. Int J Stroke 10 Suppl(A100):10–17 Jung JM, Choi JY, Kim HJ, Seo WK (2015) Statin use in spontaneous intracerebral hemorrhage: a systematic review and meta-analysis. Int J Stroke 10 Suppl(A100):10–17
27.
go back to reference Wang JQ, Wu GR, Wang Z, Dai XP, Li XR (2014) Long-term clinical outcomes of statin use for chronic heart failure: a meta-analysis of 15 prospective studies. Heart Lung Circ 23:105–113CrossRefPubMed Wang JQ, Wu GR, Wang Z, Dai XP, Li XR (2014) Long-term clinical outcomes of statin use for chronic heart failure: a meta-analysis of 15 prospective studies. Heart Lung Circ 23:105–113CrossRefPubMed
28.
go back to reference Tabak YP, Sun X, Derby KG, Kurtz SG, Johannes RS (2010) Development and validation of a disease-specific risk adjustment system using automated clinical data. Health Serv Res 45:1815–1835CrossRefPubMedPubMedCentral Tabak YP, Sun X, Derby KG, Kurtz SG, Johannes RS (2010) Development and validation of a disease-specific risk adjustment system using automated clinical data. Health Serv Res 45:1815–1835CrossRefPubMedPubMedCentral
30.
go back to reference Tabak YP, Johannes RS, Silber JH (2007) Using automated clinical data for risk adjustment: development and validation of six disease-specific mortality predictive models for pay-for-performance. Med Care 45:789–805CrossRefPubMed Tabak YP, Johannes RS, Silber JH (2007) Using automated clinical data for risk adjustment: development and validation of six disease-specific mortality predictive models for pay-for-performance. Med Care 45:789–805CrossRefPubMed
31.
go back to reference Escobar GJ, Greene JD, Scheirer P, Gardner MN, Draper D, Kipnis P (2008) Risk-adjusting hospital inpatient mortality using automated inpatient, outpatient, and laboratory databases. Med Care 46:232–239CrossRefPubMed Escobar GJ, Greene JD, Scheirer P, Gardner MN, Draper D, Kipnis P (2008) Risk-adjusting hospital inpatient mortality using automated inpatient, outpatient, and laboratory databases. Med Care 46:232–239CrossRefPubMed
32.
go back to reference Kao SS, Kim SW, Horwood CM, Hakendorf P, Li JY, Thompson CH (2015) Variability in inpatient serum creatinine: its impact upon short- and long-term mortality. QJM 108:781–787CrossRefPubMed Kao SS, Kim SW, Horwood CM, Hakendorf P, Li JY, Thompson CH (2015) Variability in inpatient serum creatinine: its impact upon short- and long-term mortality. QJM 108:781–787CrossRefPubMed
33.
go back to reference Zhao L, Wang L, Zhang Y (2009) Elevated admission serum creatinine predicts poor myocardial blood flow and one-year mortality in ST-segment elevation myocardial infarction patients undergoing primary percutaneous coronary intervention. J Invas Cardiol 21:493–498 Zhao L, Wang L, Zhang Y (2009) Elevated admission serum creatinine predicts poor myocardial blood flow and one-year mortality in ST-segment elevation myocardial infarction patients undergoing primary percutaneous coronary intervention. J Invas Cardiol 21:493–498
36.
go back to reference Morotti A, Marini S, Lena UK, Crawford K, Schwab K, Kourkoulis C et al (2017) Significance of admission hypoalbuminemia in acute intracerebral hemorrhage. J Neurol 264:905–911CrossRefPubMed Morotti A, Marini S, Lena UK, Crawford K, Schwab K, Kourkoulis C et al (2017) Significance of admission hypoalbuminemia in acute intracerebral hemorrhage. J Neurol 264:905–911CrossRefPubMed
38.
go back to reference Patel KV, Semba RD, Ferrucci L, Newman AB, Fried LP, Wallace RB et al (2009) Red cell distribution width and mortality in older adults: a meta-analysis. J Gerontol A Biol Sci Med Sci 65:258–265PubMed Patel KV, Semba RD, Ferrucci L, Newman AB, Fried LP, Wallace RB et al (2009) Red cell distribution width and mortality in older adults: a meta-analysis. J Gerontol A Biol Sci Med Sci 65:258–265PubMed
39.
go back to reference Li YF, Luo J, Li Q, Jing YJ, Wang RY, Li RS (2012) A new simple model for prediction of hospital mortality in patients with intracerebral hemorrhage. CNS Neurosci Ther 18:482–486CrossRefPubMed Li YF, Luo J, Li Q, Jing YJ, Wang RY, Li RS (2012) A new simple model for prediction of hospital mortality in patients with intracerebral hemorrhage. CNS Neurosci Ther 18:482–486CrossRefPubMed
42.
go back to reference Celi LA, Tang RJ, Villarroel MC, Davidzon GA, Lester WT, Chueh HC (2011) A clinical database-driven approach to decision support: predicting mortality among patients with acute kidney injury. J Healthc Eng 2:97–110CrossRefPubMedPubMedCentral Celi LA, Tang RJ, Villarroel MC, Davidzon GA, Lester WT, Chueh HC (2011) A clinical database-driven approach to decision support: predicting mortality among patients with acute kidney injury. J Healthc Eng 2:97–110CrossRefPubMedPubMedCentral
43.
go back to reference Celi LA, Galvin S, Davidzon G, Lee J, Scott D, Mark R (2013) A database-driven decision support system: customized mortality prediction. J Pers Med 2:138–148CrossRef Celi LA, Galvin S, Davidzon G, Lee J, Scott D, Mark R (2013) A database-driven decision support system: customized mortality prediction. J Pers Med 2:138–148CrossRef
44.
go back to reference Mayaud L, Lai PS, Clifford GD, Tarassenko L, Celi LA, Annane D (2013) Dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension. Crit Care Med 41:954–962CrossRefPubMedPubMedCentral Mayaud L, Lai PS, Clifford GD, Tarassenko L, Celi LA, Annane D (2013) Dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension. Crit Care Med 41:954–962CrossRefPubMedPubMedCentral
45.
go back to reference Gaskin GL, Pershing S, Cole TS, Shah NH (2015) Predictive modeling of risk factors and complications of cataract surgery. Eur J Ophthalmol 26:328–337CrossRefPubMedPubMedCentral Gaskin GL, Pershing S, Cole TS, Shah NH (2015) Predictive modeling of risk factors and complications of cataract surgery. Eur J Ophthalmol 26:328–337CrossRefPubMedPubMedCentral
Metadata
Title
Predictive modeling of inpatient mortality in departments of internal medicine
Authors
Naama Schwartz
Ali Sakhnini
Naiel Bisharat
Publication date
01-03-2018
Publisher
Springer International Publishing
Published in
Internal and Emergency Medicine / Issue 2/2018
Print ISSN: 1828-0447
Electronic ISSN: 1970-9366
DOI
https://doi.org/10.1007/s11739-017-1784-8

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