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Research Studies is a compilation of published research articles funded by AHRQ or authored by AHRQ researchers.
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1 to 2 of 2 Research Studies DisplayedGernant SA, Adeoye-Olatunde OA, Murawski MM
Experiences applying technology to overcome common challenges in pharmacy practice-based research in the United States.
Despite the importance of pharmacy practice-based research in generating knowledge that results in better outcomes for patients, health systems and society alike, common challenges to PPBR persist. In this paper, the authors described PPBR challenges their research teams have encountered, and their experiences using technology-driven solutions to overcome such challenges. The authors describe the technology driven solutions they have used to address PPBR challenges.
AHRQ-funded; HS025943.
Citation: Gernant SA, Adeoye-Olatunde OA, Murawski MM .
Experiences applying technology to overcome common challenges in pharmacy practice-based research in the United States.
Pharmacy 2020 May 30;8(2):93. doi: 10.3390/pharmacy8020093..
Keywords: Provider: Pharmacist, Provider, Health Information Technology (HIT), Patient-Centered Outcomes Research, Evidence-Based Practice, Health Services Research (HSR)
Tsou AY, Treadwell JR, Erinoff E
Machine learning for screening prioritization in systematic reviews: comparative performance of Abstrackr and EPPI-Reviewer.
Improving the speed of systematic review (SR) development is key to supporting evidence-based medicine. Machine learning tools which semi-automate citation screening might improve efficiency. Few studies have assessed use of screening prioritization functionality or compared two tools head to head. In this project, the investigators compared performance of two machine-learning tools for potential use in citation screening.
AHRQ-funded; HS025859.
Citation: Tsou AY, Treadwell JR, Erinoff E .
Machine learning for screening prioritization in systematic reviews: comparative performance of Abstrackr and EPPI-Reviewer.
Syst Rev 2020 Apr 2;9(1):73. doi: 10.1186/s13643-020-01324-7..
Keywords: Health Services Research (HSR), Research Methodologies, Evidence-Based Practice, Patient-Centered Outcomes Research