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Featured researches published by Ronald A. Hankey.


Journal of the American Medical Informatics Association | 2012

Clinical decision support with automated text processing for cervical cancer screening.

Kavishwar B. Wagholikar; Kathy L. MacLaughlin; Michael R. Henry; Robert A. Greenes; Ronald A. Hankey; Hongfang Liu; Rajeev Chaudhry

Objective To develop a computerized clinical decision support system (CDSS) for cervical cancer screening that can interpret free-text Papanicolaou (Pap) reports. Materials and Methods The CDSS was constituted by two rulebases: the free-text rulebase for interpreting Pap reports and a guideline rulebase. The free-text rulebase was developed by analyzing a corpus of 49 293 Pap reports. The guideline rulebase was constructed using national cervical cancer screening guidelines. The CDSS accesses the electronic medical record (EMR) system to generate patient-specific recommendations. For evaluation, the screening recommendations made by the CDSS for 74 patients were reviewed by a physician. Results and Discussion Evaluation revealed that the CDSS outputs the optimal screening recommendations for 73 out of 74 test patients and it identified two cases for gynecology referral that were missed by the physician. The CDSS aided the physician to amend recommendations in six cases. The failure case was because human papillomavirus (HPV) testing was sometimes performed separately from the Pap test and these results were reported by a laboratory system that was not queried by the CDSS. Subsequently, the CDSS was upgraded to look up the HPV results missed earlier and it generated the optimal recommendations for all 74 test cases. Limitations Single institution and single expert study. Conclusion An accurate CDSS system could be constructed for cervical cancer screening given the standardized reporting of Pap tests and the availability of explicit guidelines. Overall, the study demonstrates that free text in the EMR can be effectively utilized through natural language processing to develop clinical decision support tools.


Journal of Primary Care & Community Health | 2015

Evaluation of the effect of decision support on the efficiency of primary care providers in the outpatient practice

Kavishwar B. Wagholikar; Ronald A. Hankey; Lindsay K. Decker; Stephen S. Cha; Robert A. Greenes; Hongfang Liu; Rajeev Chaudhry

Background: Clinical decision support (CDS) for primary care has been shown to improve delivery of preventive services. However, there is little evidence for efficiency of physicians due to CDS assistance. In this article, we report a pilot study for measuring the impact of CDS on the time spent by physicians for deciding on preventive services and chronic disease management. Methods: We randomly selected 30 patients from a primary care practice, and assigned them to 10 physicians. The physicians were requested to perform chart review to decide on preventive services and chronic disease management for the assigned patients. The patients assignment was done in a randomized crossover design, such that each patient received 2 sets of recommendations—one from a physician with CDS assistance and the other from a different physician without CDS assistance. We compared the physician recommendations made using CDS assistance, with the recommendations made without CDS assistance. Results: The physicians required an average of 1 minute 44 seconds, when they were they had access to the decision support system and 5 minutes when they were unassisted. Hence the CDS assistance resulted in an estimated saving of 3 minutes 16 seconds (65%) of the physicians’ time, which was statistically significant (P < .0001). There was no statistically significant difference in the number of recommendations. Conclusion: Our findings suggest that CDS assistance significantly reduced the time spent by physicians for deciding on preventive services and chronic disease management. The result needs to be confirmed by performing similar studies at other institutions.


Cancer Informatics | 2014

Automated Recommendation for Cervical Cancer Screening and Surveillance

Kavishwar B. Wagholikar; Kathy L. MacLaughlin; Petra M. Casey; Thomas M. Kastner; Michael R. Henry; Ronald A. Hankey; Steve G. Peters; Robert A. Greenes; Christopher G. Chute; Hongfang Liu; Rajeev Chaudhry

Because of the complexity of cervical cancer prevention guidelines, clinicians often fail to follow best-practice recommendations. Moreover, existing clinical decision support (CDS) systems generally recommend a cervical cytology every three years for all female patients, which is inappropriate for patients with abnormal findings that require surveillance at shorter intervals. To address this problem, we developed a decision tree-based CDS system that integrates national guidelines to provide comprehensive guidance to clinicians. Validation was performed in several iterations by comparing recommendations generated by the system with those of clinicians for 333 patients. The CDS system extracted relevant patient information from the electronic health record and applied the guideline model with an overall accuracy of 87%. Providers without CDS assistance needed an average of 1 minute 39 seconds to decide on recommendations for management of abnormal findings. Overall, our work demonstrates the feasibility and potential utility of automated recommendation system for cervical cancer screening and surveillance.


the International Journal of Person-Centered Medicine | 2012

Innovations in the delivery of primary care services using a software solution: the Mayo Clinic’s Generic Disease Management System

Rajeev Chaudhry; Kavishwar B. Wagholikar; Lindsay K. Decker; Ronald A. Hankey; Caroline Lu; Hongfang Liu; Barbara R. Spurrier; Nicholas F. LaRusso


BMC Medical Informatics and Decision Making | 2016

Assessment and improvement of HIV screening rates in a Midwest primary care practice using an electronic clinical decision support system: a quality improvement study

Jasmine R. Marcelin; Eugene M. Tan; Alberto Marcelin; Marianne Scheitel; Praveen Ramu; Ronald A. Hankey; Pritesh Keniya; Majken T. Wingo; Stacey A. Rizza; Frederick North; Rajeev Chaudhry


Open Forum Infectious Diseases | 2015

Improving rates of HIV screening in a Midwest primary care practice using an electronic clinical decision support system

Jasmine R. Marcelin; Aq Tan; Alberto Marcelin; Marianne Scheitel; Praveen Ramu; Ronald A. Hankey; Pritesh Keniya; Majken T. Wingo; Stacey A. Rizza; Frederick North; Rajeev Chaudhry


AMIA | 2015

Automating risk score calculations and care recommendations by an EMR agnostic solution and potential time saving for providers.

Marianne Scheitel; Hongfang Liu; Jane L. Shellum; Ronald A. Hankey; Steve G. Peters; Rajeev Chaudhry


AMIA | 2015

Natural Language Processing facilitates delivery of individualized recommendations at the point of care.

K. E. Ravikumar; Rajeev Chaudhry; James J. Masanz; Joshua J. Pankratz; Jane L. Shellum; Steve G. Peters; Ronald A. Hankey; Daniel J. Cronk; Jennifer J. Boysen; Kristin Pavek; Robert Roden; Hongfang Liu


AMIA | 2013

Decision Support can Improve Time Efficiency of Healthcare Providers for Deciding Preventive Care Recommendations.

Kavishwar B. Wagholikar; Ronald A. Hankey; Hongfang Liu; Rajeev Chaudhry


Archive | 2012

Innovations in the delivery of primary care services using a software solution: the Mayo Clinics Ge

Rajeev Chaudhry; Kavishwar B. Wagholikar; Lindsay K. Decker; Ronald A. Hankey; Caroline Lu; Robert J. Stroebel; Barbara R. Spurrier; Nicholas F. LaRusso

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