J
Jeffrey S. McCullough
Researcher at University of Michigan
Publications - 74
Citations - 2639
Jeffrey S. McCullough is an academic researcher from University of Michigan. The author has contributed to research in topics: Health care & Health information technology. The author has an hindex of 21, co-authored 65 publications receiving 2054 citations. Previous affiliations of Jeffrey S. McCullough include University of Minnesota & Medical University of South Carolina.
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A Changing Landscape of Physician Quality Reporting: Analysis of Patients’ Online Ratings of Their Physicians Over a 5-Year Period
TL;DR: Online physician rating is rapidly growing in popularity and becoming commonplace with no evidence that they are dominated by disgruntled patients, and there exist statistically significant correlations between the value of ratings and physician experience, board certification, education and malpractice claims.
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The Effect Of Health Information Technology On Quality In U.S. Hospitals
TL;DR: It is concluded that achieving substantive benefits from national implementation of health IT may be a lengthy process, and policies to improve health IT's efficacy in nonacademic hospitals might be more beneficial than adoption subsidies.
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Vocal minority and silent majority: how do online ratings reflect population perceptions of quality
TL;DR: This study is the first to provide empirical evidence of the relationship between online ratings and the underlying consumer-perceived quality, and extends prior research on online word-of-mouth to the domain of professional services.
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External Validation of a Widely Implemented Proprietary Sepsis Prediction Model in Hospitalized Patients.
Andrew Wong,Erkin Otles,John P. Donnelly,Andrew E. Krumm,Jeffrey S. McCullough,Olivia DeTroyer-Cooley,Justin Pestrue,Marie Phillips,Judy Konye,Carleen Penoza,Muhammad Ghous,Karandeep Singh +11 more
TL;DR: The Epic Sepsis Model (ESM) as discussed by the authors is a proprietary sepsis prediction model that is implemented at hundreds of US hospitals and has been used to identify patients with septic infections.
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Health Information Technology And Patient Safety: Evidence From Panel Data
TL;DR: It is found that electronic medical records have a small, positive effect on patient safety, and it is suggested that investment in health IT should be accompanied by investment in the evidence base needed to evaluate it.