scholarly journals Combining Structured and Free-text Electronic Medical Record Data for Real-time Clinical Decision Support

2019 ◽  
Author(s):  
Emilia Apostolova ◽  
Tony Wang ◽  
Tim Tschampel ◽  
Ioannis Koutroulis ◽  
Tom Velez
2016 ◽  
Vol 23 (4) ◽  
pp. 731-740 ◽  
Author(s):  
Yoni Halpern ◽  
Steven Horng ◽  
Youngduck Choi ◽  
David Sontag

ABSTRACT Background Electronic medical records (EMRs) hold a tremendous amount of information about patients that is relevant to determining the optimal approach to patient care. As medicine becomes increasingly precise, a patient’s electronic medical record phenotype will play an important role in triggering clinical decision support systems that can deliver personalized recommendations in real time. Learning with anchors presents a method of efficiently learning statistically driven phenotypes with minimal manual intervention. Materials and Methods We developed a phenotype library that uses both structured and unstructured data from the EMR to represent patients for real-time clinical decision support. Eight of the phenotypes were evaluated using retrospective EMR data on emergency department patients using a set of prospectively gathered gold standard labels. Results We built a phenotype library with 42 publicly available phenotype definitions. Using information from triage time, the phenotype classifiers have an area under the ROC curve (AUC) of infection 0.89, cancer 0.88, immunosuppressed 0.85, septic shock 0.93, nursing home 0.87, anticoagulated 0.83, cardiac etiology 0.89, and pneumonia 0.90. Using information available at the time of disposition from the emergency department, the AUC values are infection 0.91, cancer 0.95, immunosuppressed 0.90, septic shock 0.97, nursing home 0.91, anticoagulated 0.94, cardiac etiology 0.92, and pneumonia 0.97. Discussion The resulting phenotypes are interpretable and fast to build, and perform comparably to statistically learned phenotypes developed with 5000 manually labeled patients. Conclusion Learning with anchors is an attractive option for building a large public repository of phenotype definitions that can be used for a range of health IT applications, including real-time decision support.


2019 ◽  
Vol 26 (2) ◽  
pp. 841-861 ◽  
Author(s):  
Akash Gupta ◽  
Tieming Liu ◽  
Scott Shepherd

Early and accurate diagnoses of sepsis enable practitioners to take timely preventive actions. The existing diagnostic criteria suffer from deficiencies, such as triggering false alarms or leaving conditions undiagnosed. This study aims to develop a clinical decision support system to predict the risk of sepsis using tree augmented naive Bayesian network by identifying the optimal set of biomarkers. The key feature of our approach is that we captured the dynamics among biomarkers. With an area under receiver operating characteristic of 0.84, the proposed model outperformed the competing diagnostic criteria (systemic inflammatory response syndrome = 0.59, quick sepsis-related organ failure assessment = 0.65, modified early warning system = 0.75, sepsis-related organ failure assessment = 0.80). The richness of our proposed model is measured not only by achieving high accuracy, but also by utilizing fewer biomarkers. We also propose a left-center-right imputation method suitable for electronic medical record data. This method uses the individual patient’s visit, instead of aggregated (mean or median) value, to impute the missing data.


2004 ◽  
Vol 11 (5) ◽  
pp. 351-357 ◽  
Author(s):  
Richard R. Owen ◽  
Carol R. Thrush ◽  
Dale Cannon ◽  
Kevin L. Sloan ◽  
Geoff Curran ◽  
...  

2021 ◽  
Vol Publish Ahead of Print ◽  
Author(s):  
Thomas L. Higgins ◽  
Laura Freeseman-Freeman ◽  
Maureen M. Stark ◽  
Kathy N. Henson

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