OBJECTIVES: The current volume and complexity of genetic tests, and the molecular genetics knowledge and health knowledge related to interpretation of the results of those tests, are rapidly outstripping the ability of individual clinicians to recall, understand and convey to their patients information relevant to their care. The tailoring of molecular genetics knowledge and health knowledge in clinical settings is important both for the provision of personalized medicine and to reduce clinician information overload. In this paper we describe the incorporation, customization and demonstration of molecular genetic data (mainly sequence variants), molecular genetics knowledge and health knowledge into a standards-based electronic health record (EHR) prototype developed specifically for this study. METHODS: We extended the CCR (Continuity of Care Record), an existing EHR standard for representing clinical data, to include molecular genetic data. An EHR prototype was built based on the extended CCR and designed to display relevant molecular genetics knowledge and health knowledge from an existing knowledge base for cystic fibrosis (OntoKBCF). We reconstructed test records from published case reports and represented them in the CCR schema. We then used the EHR to dynamically filter molecular genetics knowledge and health knowledge from OntoKBCF using molecular genetic data and clinical data from the test cases. RESULTS: The molecular genetic data were successfully incorporated in the CCR by creating a category of laboratory results called "Molecular Genetics" and specifying a particular class of test ("Gene Mutation Test") in this category. Unlike other laboratory tests reported in the CCR, results of tests in this class required additional attributes ("Molecular Structure" and "Molecular Position") to support interpretation by clinicians. These results, along with clinical data (age, sex, ethnicity, diagnostic procedures, and therapies) were used by the EHR to filter and present molecular genetics knowledge and health knowledge from OntoKBCF. CONCLUSIONS: This research shows a feasible model for delivering patient sequence variants and presenting tailored molecular genetics knowledge and health knowledge via a standards-based EHR system prototype. EHR standards can be extended to include the necessary patient data (as we have demonstrated in the case of the CCR), while knowledge can be obtained from external knowledge bases that are created and maintained independently from the EHR. This approach can form the basis for a personalized medicine framework, a more comprehensive standards-based EHR system and a potential platform for advancing translational research by both disseminating results and providing opportunities for new insights into phenotype-genotype relationships.
OBJECTIVES: The current volume and complexity of genetic tests, and the molecular genetics knowledge and health knowledge related to interpretation of the results of those tests, are rapidly outstripping the ability of individual clinicians to recall, understand and convey to their patients information relevant to their care. The tailoring of molecular genetics knowledge and health knowledge in clinical settings is important both for the provision of personalized medicine and to reduce clinician information overload. In this paper we describe the incorporation, customization and demonstration of molecular genetic data (mainly sequence variants), molecular genetics knowledge and health knowledge into a standards-based electronic health record (EHR) prototype developed specifically for this study. METHODS: We extended the CCR (Continuity of Care Record), an existing EHR standard for representing clinical data, to include molecular genetic data. An EHR prototype was built based on the extended CCR and designed to display relevant molecular genetics knowledge and health knowledge from an existing knowledge base for cystic fibrosis (OntoKBCF). We reconstructed test records from published case reports and represented them in the CCR schema. We then used the EHR to dynamically filter molecular genetics knowledge and health knowledge from OntoKBCF using molecular genetic data and clinical data from the test cases. RESULTS: The molecular genetic data were successfully incorporated in the CCR by creating a category of laboratory results called "Molecular Genetics" and specifying a particular class of test ("Gene Mutation Test") in this category. Unlike other laboratory tests reported in the CCR, results of tests in this class required additional attributes ("Molecular Structure" and "Molecular Position") to support interpretation by clinicians. These results, along with clinical data (age, sex, ethnicity, diagnostic procedures, and therapies) were used by the EHR to filter and present molecular genetics knowledge and health knowledge from OntoKBCF. CONCLUSIONS: This research shows a feasible model for delivering patient sequence variants and presenting tailored molecular genetics knowledge and health knowledge via a standards-based EHR system prototype. EHR standards can be extended to include the necessary patient data (as we have demonstrated in the case of the CCR), while knowledge can be obtained from external knowledge bases that are created and maintained independently from the EHR. This approach can form the basis for a personalized medicine framework, a more comprehensive standards-based EHR system and a potential platform for advancing translational research by both disseminating results and providing opportunities for new insights into phenotype-genotype relationships.
Authors: Els Dequeker; Manfred Stuhrmann; Michael A Morris; Teresa Casals; Carlo Castellani; Mireille Claustres; Harry Cuppens; Marie des Georges; Claude Ferec; Milan Macek; Pier-Franco Pignatti; Hans Scheffer; Marianne Schwartz; Michal Witt; Martin Schwarz; Emmanuelle Girodon Journal: Eur J Hum Genet Date: 2008-08-06 Impact factor: 4.246
Authors: Guilherme Del Fiol; Peter J Haug; James J Cimino; Scott P Narus; Chuck Norlin; Joyce A Mitchell Journal: J Am Med Inform Assoc Date: 2008-08-28 Impact factor: 4.497
Authors: Samuel J Aronson; Eugene H Clark; Lawrence J Babb; Samantha Baxter; Lisa M Farwell; Birgit H Funke; Amy Lovelette Hernandez; Victoria A Joshi; Elaine Lyon; Andrew R Parthum; Franklin J Russell; Matthew Varugheese; Thomas C Venman; Heidi L Rehm Journal: Hum Mutat Date: 2011-03-22 Impact factor: 4.878
Authors: Walter S Campbell; Alexis B Carter; Allison M Cushman-Vokoun; Timothy C Greiner; Rajesh C Dash; Mark Routbort; Monica E de Baca; James R Campbell Journal: J Mol Diagn Date: 2019-02-20 Impact factor: 5.568
Authors: Daniel R Masys; Gail P Jarvik; Neil F Abernethy; Nicholas R Anderson; George J Papanicolaou; Dina N Paltoo; Mark A Hoffman; Isaac S Kohane; Howard P Levy Journal: J Biomed Inform Date: 2011-12-27 Impact factor: 6.317
Authors: Terry Vrijenhoek; Ken Kraaijeveld; Martin Elferink; Joep de Ligt; Elcke Kranendonk; Gijs Santen; Isaac J Nijman; Derek Butler; Godelieve Claes; Adalberto Costessi; Wim Dorlijn; Winfried van Eyndhoven; Dicky J J Halley; Mirjam C G N van den Hout; Steven van Hove; Lennart F Johansson; Jan D H Jongbloed; Rick Kamps; Christel E M Kockx; Bart de Koning; Marjolein Kriek; Ronald Lekanne Dit Deprez; Hans Lunstroo; Marcel Mannens; Olaf R Mook; Marcel Nelen; Corrette Ploem; Marco Rijnen; Jasper J Saris; Richard Sinke; Erik Sistermans; Marjon van Slegtenhorst; Frank Sleutels; Nienke van der Stoep; Marianne van Tienhoven; Martijn Vermaat; Maartje Vogel; Quinten Waisfisz; Janneke Marjan Weiss; Arthur van den Wijngaard; Wilbert van Workum; Helger Ijntema; Bert van der Zwaag; Wilfred F J van IJcken; Johan den Dunnen; Joris A Veltman; Raoul Hennekam; Edwin Cuppen Journal: Eur J Hum Genet Date: 2015-01-28 Impact factor: 4.246