Using electronic health record data to develop inpatient mortality predictive model : Acute Laboratory Risk of Mortality
暂无分享,去创建一个
Xiaowu Sun | Y. Tabak | R. Johannes | Xiaowu Sun | Carlos M. Nunez | Richard S Johannes | Ying P Tabak | Carlos M Nunez
[1] Marin H Kollef,et al. Epidemiology and outcomes of health-care-associated pneumonia: results from a large US database of culture-positive pneumonia. , 2005, Chest.
[2] S. Normand,et al. An Administrative Claims Model Suitable for Profiling Hospital Performance Based on 30-Day Mortality Rates Among Patients With an Acute Myocardial Infarction , 2006, Circulation.
[3] W. Knaus,et al. Acute physiology and chronic health evaluation and Glasgow coma scores. , 1992, Critical care medicine.
[4] M. Pencina,et al. Evaluating the added predictive ability of a new marker: From area under the ROC curve to reclassification and beyond , 2008, Statistics in medicine.
[5] D. Hoaglin,et al. Enhancement of claims data to improve risk adjustment of hospital mortality. , 2007, JAMA.
[6] L I Iezzoni,et al. A clinical assessment of MedisGroups. , 1988, JAMA.
[7] D. Prytherch,et al. Routine Laboratory Tests can Predict In-hospital Mortality in Acute Exacerbations of COPD , 2011, Lung.
[8] Arnold Milstein,et al. Reductions in Mortality Associated With Intensive Public Reporting of Hospital Outcomes , 2008, American journal of medical quality : the official journal of the American College of Medical Quality.
[9] J. Zimmerman,et al. Acute Physiology and Chronic Health Evaluation (APACHE) IV: Hospital mortality assessment for today’s critically ill patients* , 2006, Critical care medicine.
[10] Xiaowu Sun,et al. Mortality and need for mechanical ventilation in acute exacerbations of chronic obstructive pulmonary disease: development and validation of a simple risk score. , 2009, Archives of internal medicine.
[11] P. Froom,et al. Prediction of hospital mortality rates by admission laboratory tests. , 2006, Clinical chemistry.
[12] Y. Tabak,et al. Using Automated Clinical Data for Risk Adjustment: Development and Validation of Six Disease-Specific Mortality Predictive Models for Pay-for-Performance , 2007, Medical care.
[13] C. Feldman,et al. Community-Acquired Pneumonia in the ' CU , 2022 .
[14] Gabriel J. Escobar,et al. Risk-Adjusting Hospital Inpatient Mortality Using Automated Inpatient, Outpatient, and Laboratory Databases , 2008, Medical care.
[15] Harlan M. Krumholz,et al. An Administrative Claims Model for Profiling Hospital 30-Day Mortality Rates for Pneumonia Patients , 2011, PloS one.
[16] R. D'Agostino,et al. Presentation of multivariate data for clinical use: The Framingham Study risk score functions , 2004, Statistics in medicine.
[17] Gregory F Cooper,et al. A prediction rule to identify low-risk patients with heart failure. , 2005, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.
[18] Xiaowu Sun,et al. Burden of early-onset candidemia: Analysis of culture-positive bloodstream infections from a large U.S. database* , 2009, Critical care medicine.
[19] Xiaowu Sun,et al. Development and validation of a disease-specific risk adjustment system using automated clinical data. , 2010, Health services research.
[20] Y. Tabak,et al. Surgical site infections: Causative pathogens and associated outcomes. , 2010, American journal of infection control.
[21] Harlan M Krumholz,et al. An Administrative Claims Model Suitable for Profiling Hospital Performance Based on 30-Day Mortality Rates Among Patients With Heart Failure , 2006, Circulation.
[22] Evaluation of the Complication Rate as a Measure of Quality of Care in Coronary Artery Bypass Graft Surgery , 1996 .
[23] Ian M Hastings,et al. Prediction of hospital mortality from admission laboratory data and patient age: A simple model , 2011, Emergency medicine Australasia : EMA.
[24] Inger,et al. A prediction rule to identify low-risk patients with community-acquired pneumonia. , 1997, The New England journal of medicine.