Clinician Perception of a Machine Learning-Based Early Warning System Designed to Predict Severe Sepsis and Septic Shock.
暂无分享,去创建一个
Michael Draugelis | P. J. Donnelly | Craig A Umscheid | C. Umscheid | B. Fuchs | W. Schweickert | H. Giannini | J. Ginestra | C. Chivers | M. Draugelis | L. Meadows | Michael Lynch | K. Pavan | William D Schweickert | Barry D Fuchs | Jennifer C Ginestra | Heather M Giannini | Laurie Meadows | Michael J Lynch | Kimberly Pavan | Corey J Chivers | Patrick J Donnelly | Patrick J. Donnelly | Michael Draugelis
[1] Lisa Kurczewski,et al. Reduction in Time to First Action as a Result of Electronic Alerts for Early Sepsis Recognition , 2015, Critical care nursing quarterly.
[2] S. Simpson,et al. Identifying Severe Sepsis via Electronic Surveillance , 2015, American journal of medical quality : the official journal of the American College of Medical Quality.
[3] Karla Kerlikowske,et al. National Performance Benchmarks for Modern Diagnostic Digital Mammography: Update from the Breast Cancer Surveillance Consortium. , 2017, Radiology.
[4] Gabriel J. Escobar,et al. Nonelective Rehospitalizations and Postdischarge Mortality , 2015, Medical care.
[5] Matthew M Churpek,et al. Identifying Patients With Sepsis on the Hospital Wards , 2017, Chest.
[6] S. Lemeshow,et al. Surviving Sepsis Campaign: association between performance metrics and outcomes in a 7.5-year study , 2014, Intensive Care Medicine.
[7] Ritankar Das,et al. Reducing patient mortality, length of stay and readmissions through machine learning-based sepsis prediction in the emergency department, intensive care unit and hospital floor units , 2017, BMJ open quality.
[8] Christopher W. Barton,et al. A computational approach to early sepsis detection , 2016, Comput. Biol. Medicine.
[9] Susan Gruber,et al. Incidence and Trends of Sepsis in US Hospitals Using Clinical vs Claims Data, 2009-2014 , 2017, JAMA.
[10] K. Wood,et al. Duration of hypotension before initiation of effective antimicrobial therapy is the critical determinant of survival in human septic shock* , 2006, Critical care medicine.
[11] Patricia Kipnis,et al. Early detection of impending physiologic deterioration among patients who are not in intensive care: development of predictive models using data from an automated electronic medical record. , 2012, Journal of hospital medicine.
[12] Benjamin French,et al. Development, implementation, and impact of an automated early warning and response system for sepsis. , 2015, Journal of hospital medicine.
[13] Stephen L. Jones,et al. Outcomes and Resource Use of Sepsis-associated Stays by Presence on Admission, Severity, and Hospital Type , 2016, Medical care.
[14] Corey Chivers,et al. A Machine Learning Algorithm to Predict Severe Sepsis and Septic Shock: Development, Implementation, and Impact on Clinical Practice. , 2019, Critical care medicine.
[15] Chenyang Lu,et al. A randomized trial of real-time automated clinical deterioration alerts sent to a rapid response team. , 2014, Journal of hospital medicine.
[16] C. Lehman,et al. National Performance Benchmarks for Modern Screening Digital Mammography: Update from the Breast Cancer Surveillance Consortium. , 2017, Radiology.
[17] P. Harris,et al. Research electronic data capture (REDCap) - A metadata-driven methodology and workflow process for providing translational research informatics support , 2009, J. Biomed. Informatics.
[18] Robert C. Amland,et al. Clinical Decision Support for Early Recognition of Sepsis , 2014, American journal of medical quality : the official journal of the American College of Medical Quality.
[19] Rongwei Fu,et al. Screening for Lung Cancer With Low-Dose Computed Tomography: A Systematic Review to Update the U.S. Preventive Services Task Force Recommendation , 2013, Annals of Internal Medicine.
[20] Ritankar Das,et al. Effect of a machine learning-based severe sepsis prediction algorithm on patient survival and hospital length of stay: a randomised clinical trial , 2017, BMJ Open Respiratory Research.
[21] Uli K. Chettipally,et al. Prediction of Sepsis in the Intensive Care Unit With Minimal Electronic Health Record Data: A Machine Learning Approach , 2016, JMIR medical informatics.
[22] F. Cabitza,et al. Unintended Consequences of Machine Learning in Medicine , 2017, JAMA.
[23] Joel S. Betesh,et al. Clinician Perception of the Effectiveness of an Automated Early Warning and Response System for Sepsis in an Academic Medical Center. , 2015, Annals of the American Thoracic Society.
[24] N. O'connor,et al. An Interprofessional Process to Improve Early Identification and Treatment for Sepsis , 2014, Journal for healthcare quality : official publication of the National Association for Healthcare Quality.
[25] B. Hemmelgarn,et al. Exploring physician specialist response rates to web-based surveys , 2015, BMC Medical Research Methodology.
[26] Robert Gibbons,et al. Using Electronic Health Record Data to Develop and Validate a Prediction Model for Adverse Outcomes in the Wards* , 2012, Critical care medicine.
[27] Kevin M. Heard,et al. A trial of a real-time alert for clinical deterioration in patients hospitalized on general medical wards. , 2013, Journal of hospital medicine.
[28] Joshua A. Doherty,et al. Early prediction of septic shock in hospitalized patients. , 2010, Journal of hospital medicine.
[29] David O. Meltzer,et al. Multicenter Comparison of Machine Learning Methods and Conventional Regression for Predicting Clinical Deterioration on the Wards , 2016, Critical care medicine.
[30] Yixin Chen,et al. Toward a two-tier clinical warning system for hospitalized patients. , 2011, AMIA ... Annual Symposium proceedings. AMIA Symposium.
[31] T. Beebe,et al. Testing the Impact of Mixed‐Mode Designs (Mail and Web) and Multiple Contact Attempts within Mode (Mail or Web) on Clinician Survey Response , 2018, Health services research.
[32] Developing an Early Sepsis Alert Program , 2014, Journal of nursing care quality.
[33] Kevin M. Heard,et al. Implementation of a real-time computerized sepsis alert in nonintensive care unit patients* , 2011, Critical care medicine.
[34] S. Lemeshow,et al. Surviving Sepsis Campaign: association between performance metrics and outcomes in a 7.5-year study. , 2015, Critical care medicine.
[35] P. Pronovost,et al. A targeted real-time early warning score (TREWScore) for septic shock , 2015, Science Translational Medicine.
[36] Joanne Thanavaro,et al. The impact of an electronic medical record surveillance program on outcomes for patients with sepsis. , 2014, Heart & lung : the journal of critical care.