An Alternate Viewpoint on Information Sharing: There is no Paradox.
Author(s): Ozeran, Larry, Schreiber, Richard
DOI: 10.1055/s-0040-1715652
Author(s): Ozeran, Larry, Schreiber, Richard
DOI: 10.1055/s-0040-1715652
Recent health care developments include connected health interventions to improve chronic disease management and/or promote actions reducing aggravating risk factors for conditions such as cardiovascular diseases. Adherence is one of the main challenges for ensuring the correct use of connected health interventions over time.
Author(s): Agher, Dahbia, Sedki, Karima, Tsopra, Rosy, Despres, Sylvie, Jaulent, Marie-Christine
DOI: 10.1055/s-0040-1715649
To measure US hospitals' adoption of electronic health record (EHR) functions that support care for older adults, focusing on structured documentation of the 4Ms (What Matters, Medication, Mentation, and Mobility) and electronic health information exchange/communication with patients, caregivers, and long-term care providers.
Author(s): Adler-Milstein, Julia, Raphael, Katherine, Bonner, Alice, Pelton, Leslie, Fulmer, Terry
DOI: 10.1093/jamia/ocaa129
Complex electronic medical records (EMRs) presenting large amounts of data create risks of cognitive overload. We are designing a Learning EMR (LEMR) system that utilizes models of intensive care unit (ICU) physicians' data access patterns to identify and then highlight the most relevant data for each patient.
Author(s): Calzoni, Luca, Clermont, Gilles, Cooper, Gregory F, Visweswaran, Shyam, Hochheiser, Harry
DOI: 10.1055/s-0040-1709707
Improving outcomes of transplant recipients within and across transplant centers is important with the increasing number of organ transplantations being performed. The current practice is to analyze the outcomes based on patient level data submitted to the United Network for Organ Sharing (UNOS). Augmenting the UNOS data with other sources such as the electronic health record will enrich the outcomes analysis, for which a common data model (CDM) can be [...]
Author(s): Cho, Sylvia, Sin, Margaret, Tsapepas, Demetra, Dale, Leigh-Anne, Husain, Syed A, Mohan, Sumit, Natarajan, Karthik
DOI: 10.1055/s-0040-1716528
The collection of race, ethnicity, and language (REaL) data from patients is advocated as a first step to identify, monitor, and improve health inequities. As a result, many health care institutions collect patients' preferred languages in their electronic health records (EHRs). These data may be used in clinical care, research, and quality improvement. However, the accuracy of EHR language data are rarely assessed.
Author(s): Rajaram, Akshay, Thomas, Daniel, Sallam, Faten, Verma, Amol A, Rawal, Shail
DOI: 10.1055/s-0040-1715896
Evidence derived from existing health-care data, such as administrative claims and electronic health records, can fill evidence gaps in medicine. However, many claim such data cannot be used to estimate causal treatment effects because of the potential for observational study bias; for example, due to residual confounding. Other concerns include P hacking and publication bias. In response, the Observational Health Data Sciences and Informatics international collaborative launched the Large-scale Evidence [...]
Author(s): Schuemie, Martijn J, Ryan, Patrick B, Pratt, Nicole, Chen, RuiJun, You, Seng Chan, Krumholz, Harlan M, Madigan, David, Hripcsak, George, Suchard, Marc A
DOI: 10.1093/jamia/ocaa103
Performing high-quality surveillance for influenza-associated hospitalization (IAH) is challenging, time-consuming, and essential.
Author(s): Burke, Patrick C, Shirley, Rachel Benish, Raciniewski, Jacob, Simon, James F, Wyllie, Robert, Fraser, Thomas G
DOI: 10.1055/s-0040-1715651
To demonstrate the application of the Large-scale Evidence Generation and Evaluation across a Network of Databases (LEGEND) principles described in our companion article to hypertension treatments and assess internal and external validity of the generated evidence.
Author(s): Schuemie, Martijn J, Ryan, Patrick B, Pratt, Nicole, Chen, RuiJun, You, Seng Chan, Krumholz, Harlan M, Madigan, David, Hripcsak, George, Suchard, Marc A
DOI: 10.1093/jamia/ocaa124
An area deprivation index (ADI) is a geographical measure that accounts for socioeconomic factors (e.g., crime, health, and education). The state of Ohio developed an ADI associated with infant mortality: Ohio Opportunity Index (OOI). However, a powerful tool to present this information effectively to stakeholders was needed.
Author(s): Fareed, Naleef, Swoboda, Christine M, Jonnalagadda, Pallavi, Griesenbrock, Tyler, Gureddygari, Harish R, Aldrich, Alison
DOI: 10.1055/s-0040-1714249