Suzan Sherman
University of Minnesota
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Featured researches published by Suzan Sherman.
Cin-computers Informatics Nursing | 2017
Bonnie L. Westra; Beverly Christie; Steven G. Johnson; Lisiane Pruinelli; Anne LaFlamme; Suzan Sherman; Jung In Park; Connie Delaney; Grace Gao; Stuart M. Speedie
The purpose of this study was to create information models from flowsheet data using a data-driven consensus-based method. Electronic health records contain a large volume of data about patient assessments and interventions captured in flowsheets that measure the same “thing,” but the names of these observations often differ, according to who performs documentation or the location of the service (eg, pulse rate in an intensive care, the emergency department, or a surgical unit documented by a nurse or therapist or captured by automated monitoring). Flowsheet data are challenging for secondary use because of the existence of multiple semantically equivalent measures representing the same concepts. Ten information models were created in this study: five related to quality measures (falls, pressure ulcers, venous thromboembolism, genitourinary system including catheter-associated urinary tract infection, and pain management) and five high-volume physiological systems: cardiac, gastrointestinal, musculoskeletal, respiratory, and expanded vital signs/anthropometrics. The value of the information models is that flowsheet data can be extracted and mapped for semantically comparable flowsheet measures from a clinical data repository regardless of the time frame, discipline, or setting in which documentation occurred. The 10 information models simplify the representation of the content in flowsheet data, reducing 1552 source measures to 557 concepts. The amount of representational reduction ranges from 3% for falls to 78% for the respiratory system. The information models provide a foundation for including nursing and interprofessional assessments and interventions in common data models, to support research within and across health systems.
Journal of Advanced Nursing | 2012
Patricia Short Tomlinson; Cynthia Peden-McAlpine; Suzan Sherman
Rehabilitation Nursing | 2012
Cynthia Peden-McAlpine; Donna Z. Bliss; Brenda Becker; Suzan Sherman
AMIA Joint Summits on Translational Science proceedings. AMIA Joint Summits on Translational Science | 2015
Steven G. Johnson; Byrne; Beverly Christie; Connie Delaney; Anne LaFlamme; Jung In Park; Lisiane Pruinelli; Suzan Sherman; Stuart M. Speedie; Bonnie L. Westra
AMIA Joint Summits on Translational Science proceedings. AMIA Joint Summits on Translational Science | 2016
Bonnie L. Westra; Beverly Christie; Steven G. Johnson; Lisiane Pruinelli; Anne LaFlamme; Jung In Park; Suzan Sherman; Matthew D. Byrne; Piper Ranallo; Stuart M. Speedie
CRI | 2017
Steven G. Johnson; Lisiane Pruinelli; Beverly Christie; Connie White-Delaney; Grace Gao; Anne LaFlamme; Jung In Park; Suzan Sherman; Bonnie L. Westra
Archive | 2016
Bonnie L. Westra; Beverly Christie; Matthew Byrnes; Anne LaFlamme; Grace Gao; Steve Johnson; Jungin Park; Lisiane Pruinelli; P Renallo; Suzan Sherman; Connie Delaney; Stuart M. Speedie
CRI | 2016
Piper Ranallo; Beverly Christie; Steven G. Johnson; Lisiane Pruinelli; Anne LaFlamme; Jung In Park; Suzan Sherman; Matthew D. Byrne; Stuart M. Speedie; Bonnie L. Westra
AMIA | 2015
Matthew D. Byrne; Steven G. Johnson; Beverly Christie; Jung In Park; Lisiane Pruinelli; Suzan Sherman; Bonnie L. Westra
AMIA | 2014
Steven G. Johnson; Jung In Park; Matthew D. Byrne; Beverly Christie; Lisiane Pruinelli; Suzan Sherman; Bonnie L. Westra