Cory M. Endle
Mayo Clinic
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Cory M. Endle.
Journal of the American Medical Informatics Association | 2013
Jyotishman Pathak; Kent R. Bailey; Calvin Beebe; Steven Bethard; David Carrell; Pei J. Chen; Dmitriy Dligach; Cory M. Endle; Lacey Hart; Peter J. Haug; Stanley M. Huff; Vinod Kaggal; Dingcheng Li; Hongfang D Liu; Kyle Marchant; James J. Masanz; Timothy A. Miller; Thomas A. Oniki; Martha Palmer; Kevin J. Peterson; Susan Rea; Guergana Savova; Craig Stancl; Sunghwan Sohn; Harold R. Solbrig; Dale Suesse; Cui Tao; David P. Taylor; Les Westberg; Stephen T. Wu
RESEARCH OBJECTIVE To develop scalable informatics infrastructure for normalization of both structured and unstructured electronic health record (EHR) data into a unified, concept-based model for high-throughput phenotype extraction. MATERIALS AND METHODS Software tools and applications were developed to extract information from EHRs. Representative and convenience samples of both structured and unstructured data from two EHR systems-Mayo Clinic and Intermountain Healthcare-were used for development and validation. Extracted information was standardized and normalized to meaningful use (MU) conformant terminology and value set standards using Clinical Element Models (CEMs). These resources were used to demonstrate semi-automatic execution of MU clinical-quality measures modeled using the Quality Data Model (QDM) and an open-source rules engine. RESULTS Using CEMs and open-source natural language processing and terminology services engines-namely, Apache clinical Text Analysis and Knowledge Extraction System (cTAKES) and Common Terminology Services (CTS2)-we developed a data-normalization platform that ensures data security, end-to-end connectivity, and reliable data flow within and across institutions. We demonstrated the applicability of this platform by executing a QDM-based MU quality measure that determines the percentage of patients between 18 and 75 years with diabetes whose most recent low-density lipoprotein cholesterol test result during the measurement year was <100 mg/dL on a randomly selected cohort of 273 Mayo Clinic patients. The platform identified 21 and 18 patients for the denominator and numerator of the quality measure, respectively. Validation results indicate that all identified patients meet the QDM-based criteria. CONCLUSIONS End-to-end automated systems for extracting clinical information from diverse EHR systems require extensive use of standardized vocabularies and terminologies, as well as robust information models for storing, discovering, and processing that information. This study demonstrates the application of modular and open-source resources for enabling secondary use of EHR data through normalization into standards-based, comparable, and consistent format for high-throughput phenotyping to identify patient cohorts.
Journal of Biomedical Semantics | 2016
Guoqian Jiang; Julie Evans; Cory M. Endle; Harold R. Solbrig; Christopher G. Chute
BackgroundThe Biomedical Research Integrated Domain Group (BRIDG) model is a formal domain analysis model for protocol-driven biomedical research, and serves as a semantic foundation for application and message development in the standards developing organizations (SDOs). The increasing sophistication and complexity of the BRIDG model requires new approaches to the management and utilization of the underlying semantics to harmonize domain-specific standards. The objective of this study is to develop and evaluate a Semantic Web-based approach that integrates the BRIDG model with ISO 21090 data types to generate domain-specific templates to support clinical study metadata standards development.MethodsWe developed a template generation and visualization system based on an open source Resource Description Framework (RDF) store backend, a SmartGWT-based web user interface, and a “mind map” based tool for the visualization of generated domain-specific templates. We also developed a RESTful Web Service informed by the Clinical Information Modeling Initiative (CIMI) reference model for access to the generated domain-specific templates.ResultsA preliminary usability study is performed and all reviewers (n = 3) had very positive responses for the evaluation questions in terms of the usability and the capability of meeting the system requirements (with the average score of 4.6).ConclusionsSemantic Web technologies provide a scalable infrastructure and have great potential to enable computable semantic interoperability of models in the intersection of health care and clinical research.
american medical informatics association annual symposium | 2012
Dingcheng Li; Cory M. Endle; Sahana Murthy; Craig Stancl; Dale Suesse; Davide Sottara; Stanley M. Huff; Christopher G. Chute; Jyotishman Pathak
AMIA | 2013
Jyotishman Pathak; Cory M. Endle; Dale Suesse; Kevin J. Peterson; Craig Stancl; Dingcheng Li; Christopher G. Chute
AMIA | 2012
Guoqian Jiang; Cory M. Endle; Harold R. Solbrig; Christopher G. Chute
Journal of animal science and biotechnology | 2016
Guoqian Jiang; Julie Evans; Cory M. Endle; Harold R. Solbrig; Christopher G. Chute
AMIA | 2014
Sherri de Coronado; Lawrence W. Wright; Craig Stancl; Gilberto Fragoso; Harold R. Solbrig; Herbert Bauer; Cory M. Endle; Kevin J. Peterson
semantic web applications and tools for life sciences | 2013
Guoqian Jiang; Julie Evans; Cory M. Endle; Harold R. Solbrig; Christopher G. Chute
SWAT4LS | 2013
Guoqian Jiang; Julie Evans; Cory M. Endle; Harold R. Solbrig; Christopher G. Chute
Archive | 2013
Guoqian Jiang; Cory M. Endle; Harold R. Solbrig; Christopher G. Chute