TY - JOUR
T1 - Characterizing variability of electronic health record-driven phenotype definitions
AU - Brandt, Pascal S.
AU - Kho, Abel
AU - Luo, Yuan
AU - Pacheco, Jennifer A.
AU - Walunas, Theresa L.
AU - Hakonarson, Hakon
AU - Hripcsak, George
AU - Liu, Cong
AU - Shang, Ning
AU - Weng, Chunhua
AU - Walton, Nephi
AU - Carrell, David S.
AU - Crane, Paul K.
AU - Larson, Eric B.
AU - Chute, Christopher G.
AU - Kullo, Iftikhar J.
AU - Carroll, Robert
AU - Denny, Josh
AU - Ramirez, Andrea
AU - Wei, Wei Qi
AU - Pathak, Jyoti
AU - Wiley, Laura K.
AU - Richesson, Rachel
AU - Starren, Justin B.
AU - Rasmussen, Luke V.
N1 - Publisher Copyright:
© 2022 The Author(s). Published by Oxford University Press on behalf of the American Medical Informatics Association. All rights reserved.
PY - 2023/3/1
Y1 - 2023/3/1
N2 - Objective: The aim of this study was to analyze a publicly available sample of rule-based phenotype definitions to characterize and evaluate the variability of logical constructs used. Materials and Methods: A sample of 33 preexisting phenotype definitions used in research that are represented using Fast Healthcare Interoperability Resources and Clinical Quality Language (CQL) was analyzed using automated analysis of the computable representation of the CQL libraries. Results: Most of the phenotype definitions include narrative descriptions and flowcharts, while few provide pseudocode or executable artifacts. Most use 4 or fewer medical terminologies. The number of codes used ranges from 5 to 6865, and value sets from 1 to 19. We found that the most common expressions used were literal, data, and logical expressions. Aggregate and arithmetic expressions are the least common. Expression depth ranges from 4 to 27. Discussion: Despite the range of conditions, we found that all of the phenotype definitions consisted of logical criteria, representing both clinical and operational logic, and tabular data, consisting of codes from standard terminologies and keywords for natural language processing. The total number and variety of expressions are low, which may be to simplify implementation, or authors may limit complexity due to data availability constraints. Conclusions: The phenotype definitions analyzed show significant variation in specific logical, arithmetic, and other operators but are all composed of the same high-level components, namely tabular data and logical expressions. A standard representation for phenotype definitions should support these formats and be modular to support localization and shared logic.
AB - Objective: The aim of this study was to analyze a publicly available sample of rule-based phenotype definitions to characterize and evaluate the variability of logical constructs used. Materials and Methods: A sample of 33 preexisting phenotype definitions used in research that are represented using Fast Healthcare Interoperability Resources and Clinical Quality Language (CQL) was analyzed using automated analysis of the computable representation of the CQL libraries. Results: Most of the phenotype definitions include narrative descriptions and flowcharts, while few provide pseudocode or executable artifacts. Most use 4 or fewer medical terminologies. The number of codes used ranges from 5 to 6865, and value sets from 1 to 19. We found that the most common expressions used were literal, data, and logical expressions. Aggregate and arithmetic expressions are the least common. Expression depth ranges from 4 to 27. Discussion: Despite the range of conditions, we found that all of the phenotype definitions consisted of logical criteria, representing both clinical and operational logic, and tabular data, consisting of codes from standard terminologies and keywords for natural language processing. The total number and variety of expressions are low, which may be to simplify implementation, or authors may limit complexity due to data availability constraints. Conclusions: The phenotype definitions analyzed show significant variation in specific logical, arithmetic, and other operators but are all composed of the same high-level components, namely tabular data and logical expressions. A standard representation for phenotype definitions should support these formats and be modular to support localization and shared logic.
KW - CQL
KW - EHR-driven phenotyping
KW - FHIR
KW - cohort identification
UR - https://www.scopus.com/pages/publications/85148250157
U2 - 10.1093/jamia/ocac235
DO - 10.1093/jamia/ocac235
M3 - Article
C2 - 36474423
AN - SCOPUS:85148250157
SN - 1067-5027
VL - 30
SP - 427
EP - 437
JO - Journal of the American Medical Informatics Association
JF - Journal of the American Medical Informatics Association
IS - 3
ER -