scholarly journals Using Body Mass Index Data in the Electronic Health Record to Calculate Cardiovascular Risk

2012 ◽  
Vol 42 (4) ◽  
pp. 342-347 ◽  
Author(s):  
Beverly B. Green ◽  
Melissa L. Anderson ◽  
Andrea J. Cook ◽  
Sheryl Catz ◽  
Paul A. Fishman ◽  
...  
2022 ◽  
pp. 0272989X2110699
Author(s):  
Louise B. Russell ◽  
Qian Huang ◽  
Yuqing Lin ◽  
Laurie A. Norton ◽  
Jingsan Zhu ◽  
...  

Introduction. Pragmatic clinical trials test interventions in patients representative of real-world medical practice and reduce data collection costs by using data recorded in the electronic health record (EHR) during usual care. We describe our experience using the EHR to measure the primary outcome of a pragmatic trial, hospital readmissions, and important clinical covariates. Methods. The trial enrolled patients recently discharged from the hospital for treatment of heart failure to test whether automated daily monitoring integrated into the EHR could reduce readmissions. The study team used data from the EHR and several data systems that drew on the EHR, supplemented by the hospital admissions files of three states. Results. Almost three-quarters of enrollees’ readmissions over the 12-mo trial period were captured by the EHRs of the study hospitals. State data, which took 7 mo to more than 2 y from first contact to receipt of first data, provided the remaining one-quarter. Considerable expertise was required to resolve differences between the 2 data sources. Common covariates used in trial analyses, such as weight and body mass index during the index hospital stay, were available for >97% of enrollees from the EHR. Ejection fraction, obtained from echocardiograms, was available for only 47.6% of enrollees within the 6-mo window that would likely be expected in a traditional trial. Discussion. In this trial, patient characteristics and outcomes were collected from existing EHR systems, but, as usual for EHRs, they could not be standardized for date or method of measurement and required substantial time and expertise to collect and curate. Hospital admissions, the primary trial outcome, required additional effort to locate and use supplementary sources of data. Highlights Electronic health records are not a single system but a series of overlapping and legacy systems that require time and expertise to use efficiently. Commonly measured patient characteristics such as weight and body mass index are relatively easy to locate for most trial enrollees but less common characteristics, like ejection fraction, are not. Acquiring essential supplementary data—in this trial, state data on hospital admission—can be a lengthy and difficult process.


2009 ◽  
Vol 182 (6) ◽  
pp. 2646-2652 ◽  
Author(s):  
Stacy Loeb ◽  
H. Ballentine Carter ◽  
Edward M. Schaeffer ◽  
Luigi Ferrucci ◽  
Anna Kettermann ◽  
...  

Author(s):  
Olympia Giannakopoulou ◽  
Petros Toumpaniaris ◽  
Ioannis Kouris ◽  
Konstantia Moirogiorgou ◽  
Nansy Karanasiou ◽  
...  

eMass project aims to digitalize the medical examination procedure of recruitment phase of conscripts in the Hellenic Navy. eMass integrates recruits’ Electronic Health Record (EHR), while allows a pre-screening test, through portable telemedicine equipment. The data will be exploited to assess the individual’s cardiovascular risk through appropriate digital tools and algorithms. The eMass digital platform, will be accessible to health experts involved in the recruitment procedure for further assessment and processing. Recruits’ personal data is stored in the database encrypted using Advanced Encryption Standard (AES). eMass solution contributes to beneficial management and medical data analysis, preventing inessential physical or medical examinations minimizing danger of possible errors and reducing time-consuming processes. Moreover, eMass exploits Electronic Health Record data through a machine-learning based cardiovascular risk assessment tool.


2015 ◽  
Vol 85 (5) ◽  
pp. 327-333 ◽  
Author(s):  
Christina B. Khaokham ◽  
Sharon Hillidge ◽  
Shaila Serpas ◽  
Eric McDonald ◽  
Philip R. Nader

Sign in / Sign up

Export Citation Format

Share Document