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AHRQ Research Studies
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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 3 of 3 Research Studies DisplayedHerrin J, Abraham NS, Yao X
Comparative effectiveness of machine learning approaches for predicting gastrointestinal bleeds in patients receiving antithrombotic treatment.
The purpose of this retrospective cross-sectional study was to compare the performance of 3 machine learning approaches with the commonly-used HAS-BLED (hypertension, abnormal kidney and liver function, stroke, bleeding, labile international normalized ratio, older age, and drug or alcohol use) risk score in predicting antithrombotic-related gastrointestinal bleeding (GIB). The machine-learning models were regularized Cox proportional hazards regression (RegCox), random survival forests, and extreme gradient boosting (XGBoost). Findings showed that the machine learning models revealed similar performance in identifying patients at high risk for GIB after being prescribed antithrombotic agents. Two models (RegCox and XGBoost) performed modestly better than the HAS-BLED score.
AHRQ-funded; HS025402.
Citation: Herrin J, Abraham NS, Yao X .
Comparative effectiveness of machine learning approaches for predicting gastrointestinal bleeds in patients receiving antithrombotic treatment.
JAMA Netw Open 2021 May;4(5):e2110703. doi: 10.1001/jamanetworkopen.2021.10703..
Keywords: Blood Thinners, Medication, Risk, Adverse Drug Events (ADE), Adverse Events, Medication: Safety, Patient Safety, Comparative Effectiveness
Villa Zapata L, Hansten PD, Panic J
Risk of bleeding with exposure to warfarin and nonsteroidal anti-inflammatory drugs: a systematic review and meta-analysis.
Warfarin use can trigger the occurrence of bleeding independently or as a result of a drug-drug interaction when used in combination with nonsteroidal anti-inflammatory drugs (NSAIDs). This article examines the risk of bleeding in individuals exposed to concomitant warfarin and NSAID compared with those taking warfarin alone. The investigators concluded that risk of bleeding was significantly increased among persons taking warfarin and a NSAID or COX-2 inhibitor together as compared with taking warfarin alone.
AHRQ-funded; HS025984.
Citation: Villa Zapata L, Hansten PD, Panic J .
Risk of bleeding with exposure to warfarin and nonsteroidal anti-inflammatory drugs: a systematic review and meta-analysis.
Thromb Haemost 2020 Jul;120(7):1066-74. doi: 10.1055/s-0040-1710592..
Keywords: Blood Thinners, Medication, Medication: Safety, Risk, Adverse Drug Events (ADE), Adverse Events, Patient Safety, Evidence-Based Practice, Patient-Centered Outcomes Research, Outcomes
Chopra V, Fallouh N, McGuirk H
Patterns, risk factors and treatment associated with PICC-DVT in hospitalized adults: a nested case-control study.
The purpose of this study was to determine patterns, risk factors and treatment related to peripherally inserted central catheters-deep vein thrombosis (PICC-DVT) in hospitalized patients. It found that treatment for PICC-DVT varied and included heparin bridging, low molecular weight heparin only and device removal only; the average duration of treatment also varied across these groups.
AHRQ-funded; HS022835.
Citation: Chopra V, Fallouh N, McGuirk H .
Patterns, risk factors and treatment associated with PICC-DVT in hospitalized adults: a nested case-control study.
Thromb Res 2015 May;135(5):829-34. doi: 10.1016/j.thromres.2015.02.012..
Keywords: Patient Safety, Blood Clots, Blood Thinners, Risk, Hospitalization