| Literature DB >> 25601018 |
Harlan Harvey1, Arun Krishnaraj, Tarik K Alkasab.
Abstract
As electronic medical records (EMRs) grow in size and complexity, there is increasing need for automated EMR tools that highlight the medical record items most germane to a practitioner's task-specific needs. The development of such tools would be aided by gold standards of information relevance for a series of different clinical scenarios. We have previously proposed a process in which exemplar medical record data are extracted from actual patients' EMRs, anonymized, and presented to clinical experts, who then score each medical record item for its relevance to a specific clinical scenario. In this paper, we present how that body of expert relevancy data can be used to create a test framework to validate new EMR search strategies.Entities:
Keywords: computerized; health information management; medical informatics; medical records systems
Year: 2014 PMID: 25601018 PMCID: PMC4288078 DOI: 10.2196/medinform.3205
Source DB: PubMed Journal: JMIR Med Inform
Figure 1The flow of data through a process of validated medical record searches for a specific clinical context. For a defined clinical context, a set of representative patients is selected and medical record items are extracted and anonymized. These datasets are then presented to a panel of domain experts who generate a set of rating data. Meanwhile, an automated search to highlight relevant items is designed and then run against all of the anonymized medical record data to determine which items would be considered “hits.” This result set is then compared with the expert relevance ratings and a normalized score is generated which quantifies the level of agreement between the search and the experts, which can then be used to design improvements in the search.
Figure 2Equation to calculate a performance score for a search strategy based off of the expert relevancy ratings.