BACKGROUND: The electronic health record (EHR) includes a rich data set that may offer opportunities for data mining and natural language processing to answer questions about quality of care, key aspects of resident education, or attributes of the residents' learning environment. OBJECTIVE: We used data obtained from the EHR to report on inpatient documentation practices of residents and attending physicians at a large academic medical center. METHODS: We conducted a retrospective observational study of deidentified patient notes entered over 7 consecutive months by a multispecialty university physician group at an urban hospital. A novel automated data mining technology was used to extract patient note-related variables. RESULTS: A sample of 26 802 consecutive patient notes was analyzed using the data mining and modeling tool Healthcare Smartgrid. Residents entered most of the notes (33%, 8178 of 24 787) between noon and 4 pm and 31% (7718 of 24 787) of notes between 8 am and noon. Attending physicians placed notes about teaching attestations within 24 hours in only 73% (17 843 of 24 443) of the records. Surgical residents were more likely to place notes before noon (P < .001). Nonsurgical faculty were more likely to provide attestation of resident notes within 24 hours (P < .001). CONCLUSIONS: Data related to patient note entry was successfully used to objectively measure current work flow of resident physicians and their supervising faculty, and the findings have implications for physician oversight of residents' clinical work. We were able to demonstrate the utility of a data mining model as an assessment tool in graduate medical education.
BACKGROUND: The electronic health record (EHR) includes a rich data set that may offer opportunities for data mining and natural language processing to answer questions about quality of care, key aspects of resident education, or attributes of the residents' learning environment. OBJECTIVE: We used data obtained from the EHR to report on inpatient documentation practices of residents and attending physicians at a large academic medical center. METHODS: We conducted a retrospective observational study of deidentified patient notes entered over 7 consecutive months by a multispecialty university physician group at an urban hospital. A novel automated data mining technology was used to extract patient note-related variables. RESULTS: A sample of 26 802 consecutive patient notes was analyzed using the data mining and modeling tool Healthcare Smartgrid. Residents entered most of the notes (33%, 8178 of 24 787) between noon and 4 pm and 31% (7718 of 24 787) of notes between 8 am and noon. Attending physicians placed notes about teaching attestations within 24 hours in only 73% (17 843 of 24 443) of the records. Surgical residents were more likely to place notes before noon (P < .001). Nonsurgical faculty were more likely to provide attestation of resident notes within 24 hours (P < .001). CONCLUSIONS: Data related to patient note entry was successfully used to objectively measure current work flow of resident physicians and their supervising faculty, and the findings have implications for physician oversight of residents' clinical work. We were able to demonstrate the utility of a data mining model as an assessment tool in graduate medical education.
Authors: J Matthew Brennan; Eric D Peterson; John C Messenger; John S Rumsfeld; William S Weintraub; Kevin J Anstrom; Eric L Eisenstein; Sarah Milford-Beland; Maria V Grau-Sepulveda; Michael E Booth; Rachel S Dokholyan; Pamela S Douglas Journal: Circ Cardiovasc Qual Outcomes Date: 2012-01
Authors: Martin E Schlueter; Peter H Phan; Christopher S E Martin; Dan Breece; Dennis A Boysen Journal: J Surg Educ Date: 2009 Nov-Dec Impact factor: 2.891
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Authors: Maura J McGuire; Gary Noronha; Lipika Samal; Hsin-Chieh Yeh; Susan Crocetti; Steven Kravet Journal: J Gen Intern Med Date: 2012-08-11 Impact factor: 5.128