Development of a novel score for the prediction of hospital mortality in patients with severe sepsis: the use of electronic healthcare records with LASSO regression
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[1] J. Vincent,et al. The SOFA (Sepsis-related Organ Failure Assessment) score to describe organ dysfunction/failure , 1996, Intensive Care Medicine.
[2] Adil Rafiq Rather,et al. The Third International Consensus Definitions for Sepsis and Septic Shock (Sepsis-3) , 2015 .
[3] Chengcheng Hu,et al. Least absolute shrinkage and selection operator type methods for the identification of serum biomarkers of overweight and obesity: simulation and application , 2016, BMC Medical Research Methodology.
[4] W. Cleveland. Robust Locally Weighted Regression and Smoothing Scatterplots , 1979 .
[5] C. Sprung,et al. The use of maximum SOFA score to quantify organ dysfunction/failure in intensive care. Results of a prospective, multicentre study , 1999, Intensive Care Medicine.
[6] W. Knaus,et al. The APACHE III prognostic system. Risk prediction of hospital mortality for critically ill hospitalized adults. , 1991, Chest.
[7] Trevor Hastie,et al. Regularization Paths for Generalized Linear Models via Coordinate Descent. , 2010, Journal of statistical software.
[8] Christian Jung,et al. AME evidence series 001-The Society for Translational Medicine: clinical practice guidelines for diagnosis and early identification of sepsis in the hospital. , 2016, Journal of thoracic disease.
[9] Zhongheng Zhang,et al. Univariate description and bivariate statistical inference: the first step delving into data. , 2016, Annals of translational medicine.
[10] M. Manji,et al. Microalbuminuria in the intensive care unit: Clinical correlates and association with outcomes in 431 patients* , 2006, Critical care medicine.
[11] C. Sprung,et al. Use of the SOFA score to assess the incidence of organ dysfunction/failure in intensive care units: results of a multicenter, prospective study. Working group on "sepsis-related problems" of the European Society of Intensive Care Medicine. , 1998, Critical care medicine.
[12] S Lemeshow,et al. The Logistic Organ Dysfunction system. A new way to assess organ dysfunction in the intensive care unit. ICU Scoring Group. , 1996, JAMA.
[13] Gari D. Clifford,et al. A New Severity of Illness Scale Using a Subset of Acute Physiology and Chronic Health Evaluation Data Elements Shows Comparable Predictive Accuracy* , 2013, Critical care medicine.
[14] G. Clermont,et al. Epidemiology of severe sepsis in the United States: Analysis of incidence, outcome, and associated costs of care , 2001, Critical care medicine.
[15] S. Lemeshow,et al. A new Simplified Acute Physiology Score (SAPS II) based on a European/North American multicenter study. , 1993, JAMA.
[16] J. Ruiz-Rodríguez,et al. Epidemiology of sepsis in Catalonia: analysis of incidence and outcomes in a European setting , 2017, Annals of Intensive Care.
[17] Xiao Xu,et al. Lactate Clearance Is a Useful Biomarker for the Prediction of All-Cause Mortality in Critically Ill Patients: A Systematic Review and Meta-Analysis* , 2014, Critical care medicine.
[18] K. Hillman,et al. The impact of post-operative sepsis on mortality after hospital discharge among elective surgical patients: a population-based cohort study , 2017, Critical Care.
[19] A. Abu-Hanna,et al. Evaluation of SOFA-based models for predicting mortality in the ICU: A systematic review , 2008, Critical care.
[20] X. Cui,et al. Increased body mass index and adjusted mortality in ICU patients with sepsis or septic shock: a systematic review and meta-analysis , 2016, Critical Care.
[21] Hushan Ao,et al. The Effects of Different BMI on Blood Loss and Transfusions in Chinese Patients Undergoing Coronary Artery Bypass Grafting. , 2017, Annals of thoracic and cardiovascular surgery : official journal of the Association of Thoracic and Cardiovascular Surgeons of Asia.
[22] Zhongheng Zhang,et al. Model building strategy for logistic regression: purposeful selection. , 2016, Annals of translational medicine.
[23] Yucai Hong,et al. Association of do-not-resuscitate order and survival in patients with severe sepsis and/or septic shock , 2017, Intensive Care Medicine.
[24] Enrique F Schisterman,et al. Collinearity and Causal Diagrams: A Lesson on the Importance of Model Specification , 2017, Epidemiology.
[25] B. Khwannimit. A comparison of three organ dysfunction scores: MODS, SOFA and LOD for predicting ICU mortality in critically ill patients. , 2007, Journal of the Medical Association of Thailand = Chotmaihet thangphaet.
[26] Peter Szolovits,et al. MIMIC-III, a freely accessible critical care database , 2016, Scientific Data.
[27] R. Bellomo,et al. Prognostic Accuracy of the SOFA Score, SIRS Criteria, and qSOFA Score for In-Hospital Mortality Among Adults With Suspected Infection Admitted to the Intensive Care Unit , 2017, JAMA.
[28] H. Ni,et al. Normalized Lactate Load Is Associated with Development of Acute Kidney Injury in Patients Who Underwent Cardiopulmonary Bypass Surgery , 2015, PloS one.
[29] M. L. La Rovere,et al. Postoperative Hypoxia and Length of Intensive Care Unit Stay after Cardiac Surgery: The Underweight Paradox? , 2014, PloS one.
[30] Richard D Riley,et al. External validation of clinical prediction models using big datasets from e-health records or IPD meta-analysis: opportunities and challenges , 2016, BMJ.
[31] He Yu,et al. Can body mass index predict clinical outcomes for patients with acute lung injury/acute respiratory distress syndrome? A meta-analysis , 2017, Critical Care.
[32] Munish Goyal,et al. Serum lactate is associated with mortality in severe sepsis independent of organ failure and shock* , 2009, Critical care medicine.
[33] Hongying Ni,et al. Predictive value of lactate in unselected critically ill patients: an analysis using fractional polynomials. , 2014, Journal of thoracic disease.
[34] Shan L. Ward,et al. Evaluation of the Association of Early Elevated Lactate With Outcomes in Children With Severe Sepsis or Septic Shock , 2017, Pediatric emergency care.