Asset Details
MbrlCatalogueTitleDetail
Do you wish to reserve the book?
Data-Driven Guideline Adherence in Data Representation and Compliance Measurement: Scoping Review
by
Shetty, Amith
, Donnelly, Candice
, Igasto, Christina
, Pradhan, Malcolm
, Shaw, Tim
, Hoang, Minh Trang
in
Adherence
/ Algorithms
/ Alignment
/ Best practice
/ Best practices
/ Clinical decision making
/ Clinical Information and Decision Making
/ Clinical medicine
/ Clinical outcomes
/ Clinical standards
/ Computerized medical records
/ Context
/ Data quality
/ Data sources
/ Digital Health Reporting Standards, Quality and Transparency in e-Research
/ Digital Health Reviews
/ Electronic data processing
/ Electronic Health Records
/ Fidelity
/ Guideline Adherence
/ Health services
/ Health status
/ Humans
/ Inappropriateness
/ Information technology
/ Innovations
/ Interoperability
/ Literature
/ Measurement
/ Medical care
/ Medical records
/ Medical research
/ Medical screening
/ Medicine, Experimental
/ Meta-analysis
/ Ontology
/ Patient care planning
/ Patient-centered care
/ Patients
/ Practice guidelines (Medicine)
/ Practice Guidelines as Topic
/ Quality management
/ Representation
/ Review
/ Rules
/ Scores
/ Standardization
/ Standards and Interoperability
/ Systematic review
2026
Hey, we have placed the reservation for you!
By the way, why not check out events that you can attend while you pick your title.
You are currently in the queue to collect this book. You will be notified once it is your turn to collect the book.
Oops! Something went wrong.
Looks like we were not able to place the reservation. Kindly try again later.
Are you sure you want to remove the book from the shelf?
Data-Driven Guideline Adherence in Data Representation and Compliance Measurement: Scoping Review
by
Shetty, Amith
, Donnelly, Candice
, Igasto, Christina
, Pradhan, Malcolm
, Shaw, Tim
, Hoang, Minh Trang
in
Adherence
/ Algorithms
/ Alignment
/ Best practice
/ Best practices
/ Clinical decision making
/ Clinical Information and Decision Making
/ Clinical medicine
/ Clinical outcomes
/ Clinical standards
/ Computerized medical records
/ Context
/ Data quality
/ Data sources
/ Digital Health Reporting Standards, Quality and Transparency in e-Research
/ Digital Health Reviews
/ Electronic data processing
/ Electronic Health Records
/ Fidelity
/ Guideline Adherence
/ Health services
/ Health status
/ Humans
/ Inappropriateness
/ Information technology
/ Innovations
/ Interoperability
/ Literature
/ Measurement
/ Medical care
/ Medical records
/ Medical research
/ Medical screening
/ Medicine, Experimental
/ Meta-analysis
/ Ontology
/ Patient care planning
/ Patient-centered care
/ Patients
/ Practice guidelines (Medicine)
/ Practice Guidelines as Topic
/ Quality management
/ Representation
/ Review
/ Rules
/ Scores
/ Standardization
/ Standards and Interoperability
/ Systematic review
2026
Oops! Something went wrong.
While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Data-Driven Guideline Adherence in Data Representation and Compliance Measurement: Scoping Review
by
Shetty, Amith
, Donnelly, Candice
, Igasto, Christina
, Pradhan, Malcolm
, Shaw, Tim
, Hoang, Minh Trang
in
Adherence
/ Algorithms
/ Alignment
/ Best practice
/ Best practices
/ Clinical decision making
/ Clinical Information and Decision Making
/ Clinical medicine
/ Clinical outcomes
/ Clinical standards
/ Computerized medical records
/ Context
/ Data quality
/ Data sources
/ Digital Health Reporting Standards, Quality and Transparency in e-Research
/ Digital Health Reviews
/ Electronic data processing
/ Electronic Health Records
/ Fidelity
/ Guideline Adherence
/ Health services
/ Health status
/ Humans
/ Inappropriateness
/ Information technology
/ Innovations
/ Interoperability
/ Literature
/ Measurement
/ Medical care
/ Medical records
/ Medical research
/ Medical screening
/ Medicine, Experimental
/ Meta-analysis
/ Ontology
/ Patient care planning
/ Patient-centered care
/ Patients
/ Practice guidelines (Medicine)
/ Practice Guidelines as Topic
/ Quality management
/ Representation
/ Review
/ Rules
/ Scores
/ Standardization
/ Standards and Interoperability
/ Systematic review
2026
Please be aware that the book you have requested cannot be checked out. If you would like to checkout this book, you can reserve another copy
We have requested the book for you!
Your request is successful and it will be processed during the Library working hours. Please check the status of your request in My Requests.
Oops! Something went wrong.
Looks like we were not able to place your request. Kindly try again later.
Data-Driven Guideline Adherence in Data Representation and Compliance Measurement: Scoping Review
Journal Article
Data-Driven Guideline Adherence in Data Representation and Compliance Measurement: Scoping Review
2026
Request Book From Autostore
and Choose the Collection Method
Overview
Best practice standards aim to standardize care and improve outcomes. However, variation in clinical practice exists, and not all deviations are inappropriate. Measuring adherence to best practice standards remains challenging due to limitations in representation methods and data fidelity.
This scoping review aims to survey and synthesize the existing literature on the computable representation of guideline recommendations and to explore methods for detecting and quantifying deviations from best practice standards.
We followed the Arksey and O'Malley framework and PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews) guidelines. Five databases (Ovid Medline, EMBASE, IEEE Xplore, Web of Science, and Scopus) were searched in November 2025. Studies were included if they either (1) described a computer representation of best practice standards or (2) assessed adherence to such standards using patient data, including patient data derived from electronic medical records or event logs. Screening was done using Covidence (Veritas Health Innovation). Data were extracted on representation, clinical context, data sources, adherence metrics, and modeling techniques. A narrative synthesis was conducted to identify themes.
Twenty-four studies were included. Most studies were published as conference proceedings (13/24, 54%). Fourteen studies (14/24, 58%) included measurement of adherence to best practice standards. Cardiovascular conditions were the most common focus (13/24, 54%). Data sources included Health Level Seven (HL7) messages, structured electronic medical record data, event logs, and Fast Healthcare Interoperability Resources (FHIR)-transformed data. Best practice standards were formalized using Business Process Model and Notation (BPMN; 6/24, 25%), ontologies (7/24, 29%), FHIR (4/24, 17%), or hybrid approaches (4/24, 17%). The most common method for adherence measurement was rule-based alignment. Several studies incorporated weighted scoring to differentiate the severity of deviations. Process mining was used in a subset to detect sequence and timing variations. However, most models lacked contextual sensitivity and rarely incorporated patient-specific factors, such as comorbidities, patient acuity, or clinician rationale. Consequently, although deviations can be automatically identified, determining whether they were clinically warranted remained largely unresolved.
Despite promising advances, challenges persist in computer-interpretable representation and measuring adherence in a clinically meaningful way. Current approaches predominantly assess technical alignment rather than clinical relevance and are limited by data quality and standardization, thereby limiting real-world utility. This scoping review offers an innovative contribution by synthesizing evidence from 2 separate domains-the computable representation of best practice standards and the measurement of adherence. The findings emphasize the need for context-aware, standardized modeling and integration with clinical workflows to distinguish warranted from unwarranted deviations. Such advances are essential for scalable, transparent, and real-time adherence monitoring-ultimately driving safer, patient-centered care delivery.
Publisher
Journal of Medical Internet Research,Gunther Eysenbach MD MPH, Associate Professor,JMIR Publications Inc,JMIR Publications
Subject
/ Clinical Information and Decision Making
/ Computerized medical records
/ Context
/ Digital Health Reporting Standards, Quality and Transparency in e-Research
/ Fidelity
/ Humans
/ Ontology
/ Patients
/ Practice guidelines (Medicine)
/ Practice Guidelines as Topic
/ Review
/ Rules
/ Scores
This website uses cookies to ensure you get the best experience on our website.