TY - JOUR
T1 - Requirements and validation of a prototype learning health system for clinical diagnosis
AU - Corrigan, Derek
AU - Munnelly, Gary
AU - Kazienko, Przemysław
AU - Kajdanowicz, Tomasz
AU - Soler, Jean Karl
AU - Mahmoud, Samhar
AU - Porat, Talya
AU - Kostopoulou, Olga
AU - Curcin, Vasa
AU - Delaney, Brendan
N1 - Publisher Copyright:
© 2017 The Authors. Learning Health Systems published by Wiley Periodicals, Inc. on behalf of the University of Michigan
PY - 2017/10/1
Y1 - 2017/10/1
N2 - Introduction: Diagnostic error is a major threat to patient safety in the context of family practice. The patient safety implications are severe for both patient and clinician. Traditional approaches to diagnostic decision support have lacked broad acceptance for a number of well-documented reasons: poor integration with electronic health records and clinician workflow, static evidence that lacks transparency and trust, and use of proprietary technical standards hindering wider interoperability. The learning health system (LHS) provides a suitable infrastructure for development of a new breed of learning decision support tools. These tools exploit the potential for appropriate use of the growing volumes of aggregated sources of electronic health records. Methods: We describe the experiences of the TRANSFoRm project developing a diagnostic decision support infrastructure consistent with the wider goals of the LHS. We describe an architecture that is model driven, service oriented, constructed using open standards, and supports evidence derived from electronic sources of patient data. We describe the architecture and implementation of 2 critical aspects for a successful LHS: the model representation and translation of clinical evidence into effective practice and the generation of curated clinical evidence that can be used to populate those models, thus closing the LHS loop. Results/Conclusions: Six core design requirements for implementing a diagnostic LHS are identified and successfully implemented as part of this research work. A number of significant technical and policy challenges are identified for the LHS community to consider, and these are discussed in the context of evaluating this work: medico-legal responsibility for generated diagnostic evidence, developing trust in the LHS (particularly important from the perspective of decision support), and constraints imposed by clinical terminologies on evidence generation.
AB - Introduction: Diagnostic error is a major threat to patient safety in the context of family practice. The patient safety implications are severe for both patient and clinician. Traditional approaches to diagnostic decision support have lacked broad acceptance for a number of well-documented reasons: poor integration with electronic health records and clinician workflow, static evidence that lacks transparency and trust, and use of proprietary technical standards hindering wider interoperability. The learning health system (LHS) provides a suitable infrastructure for development of a new breed of learning decision support tools. These tools exploit the potential for appropriate use of the growing volumes of aggregated sources of electronic health records. Methods: We describe the experiences of the TRANSFoRm project developing a diagnostic decision support infrastructure consistent with the wider goals of the LHS. We describe an architecture that is model driven, service oriented, constructed using open standards, and supports evidence derived from electronic sources of patient data. We describe the architecture and implementation of 2 critical aspects for a successful LHS: the model representation and translation of clinical evidence into effective practice and the generation of curated clinical evidence that can be used to populate those models, thus closing the LHS loop. Results/Conclusions: Six core design requirements for implementing a diagnostic LHS are identified and successfully implemented as part of this research work. A number of significant technical and policy challenges are identified for the LHS community to consider, and these are discussed in the context of evaluating this work: medico-legal responsibility for generated diagnostic evidence, developing trust in the LHS (particularly important from the perspective of decision support), and constraints imposed by clinical terminologies on evidence generation.
KW - diagnostic decision support systems
KW - knowledge discovery
KW - knowledge representation
KW - learning health systems
UR - http://www.scopus.com/inward/record.url?scp=85059109589&partnerID=8YFLogxK
U2 - 10.1002/lrh2.10026
DO - 10.1002/lrh2.10026
M3 - Article
AN - SCOPUS:85059109589
SN - 2379-6146
VL - 1
JO - Learning Health Systems
JF - Learning Health Systems
IS - 4
M1 - e10026
ER -