| Literature DB >> 22915950 |
Dan Belletti1, Christopher Zacker, C Daniel Mullins.
Abstract
Health information technology (HIT) is engineered to promote improved quality and efficiency of care, and reduce medical errors. Healthcare organizations have made significant investments in HIT tools and the electronic medical record (EMR) is a major technological advance. The Department of Veterans Affairs was one of the first large healthcare systems to fully implement EMR. The Veterans Health Information System and Technology Architecture (VistA) began by providing an interface to review and update a patient's medical record with its computerized patient record system. However, since the implementation of the VistA system there has not been an overall substantial adoption of EMR in the ambulatory or inpatient setting. In fact, only 23.9% of physicians were using EMRs in their office-based practices in 2005. A sample from the American Medical Association revealed that EMRs were available in an office setting to 17% of physicians in late 2007 and early 2008. Of these, 17% of physicians with EMR, only 4% were considered to be fully functional EMR systems. With the exception of some large aggregate EMR databases the slow adoption of EMR has limited its use in outcomes research. This paper reviews the literature and presents the current status of and forces influencing the adoption of EMR in the office-based practice, and identifies the benefits, limitations, and overall value of EMR in the conduct of outcomes research in the US.Entities:
Keywords: electronic medical records; health information technology; medical errors
Year: 2010 PMID: 22915950 PMCID: PMC3417895 DOI: 10.2147/prom.s8896
Source DB: PubMed Journal: Patient Relat Outcome Meas ISSN: 1179-271X
Comparison of data sources for outcomes research
| Electronic medical records (EMRs) | Data available to reflect entire care experience; data can be analyzed in an ongoing and real-time basis for entire populations under care; may improve depth and breadth of outcomes studies; used with e-prescribing can reduce adverse drug events, medical errors and redundant tests | Converting paper-based systems to electronic; collecting and storing data in a standardized format; Certification to ensure security and privacy of EMR systems; interoperability; slow adoption |
| Paper records | Captures clinical characteristics and prescribing patterns | Accessing and use of data requires significant time commitment; difficult to merge with claims data; increased chance for missing/incomplete data; limits sample sizes; costly to extract data |
| Medical and pharmacy claims | Captures real-world utilization patterns; encompass a wealth of variables and analyses of these data can be used for benchmarking purposes | Lag time in the availability of information about new therapies; does not capture clinical experience; data limited to patients with adjudicated claims |
| Primary data collection | Ability to structure assessment to capture variables of interest; ability to measure variables or characteristics that may not be contained in a medical chart or claims database | Difficulty with patient recruitment; time and resources intensive to collect and analyze data |
Outcomes research using electronic medical reporting
| Quality improvement/disease management | Costly to collect data on all patients, thus randomization of study patients is required | Moderate | Benin | May assess all patients vs randomized subset; may incorporate interventions within EMR system; may link to billing claims |
| Retrospective studies (eg, compliance, persistence, drug utilization) | Only captures data from restricted population | Limited | Shah | Ability to capture services from several payers; increased efficiency; detailed data |
| Patient-reported outcomes | Requires separate survey/questionnaire | Limited | Wuerdeman | Ability for patient to enter data themselves; up-to date information; ability to capture services provided outside of practice |
| Economic modeling (eg, cost benefit, cost effectiveness) | Data collection time; limited patient population generalized to broader population | Limited | Eddy | Increased efficiency; increased patient population size; ability to link cost data from claims database to utilization variables |
| Prospective studies | Chart abstraction to identify patients for inclusion; time intensive | Limited | Pakhomov | Easier identification of patients for inclusion; more accurate information; reminders built into protocol |
| Comparative effectiveness | Missing or incomplete data; time intensive data collection | Limited | Pace | Increased efficiency; increased clinical details to adjust for confounding variables |
Does not include posters presented at various conferences.