Execution-time integration of clinical practice guidelines to provide decision support for comorbid conditions

Patients with multiple medical conditions (comorbidity) pose major challenges to clinical decision support systems, since the different Clinical Practice Guidelines (CPG) often involve adverse interactions, such as drug-drug or drug-disease interactions. Moreover, opportunities often exist for optimizing care and resources across multiple CPG. These challenges have been taken up in the state of the art, with many approaches focusing on the static integration of comorbid CIG. Nevertheless, we observe that many aspects often change dynamically over time, in ways that cannot be foreseen - such as delays in care tasks, resource availability, test outcomes, and acute comorbid conditions. To ensure the clinical safety and effectiveness of integrating multiple comorbid CIG, these execution-time difficulties must be considered. Further, when dealing with comorbid conditions, we remark that clinical practitioners typically consider multiple complex solutions, depending on the patient's health profile. Hence, execution-time flexibility, based on dynamic health parameters, is needed to effectively and safely cope with comorbid conditions. In this work, we introduce a flexible, knowledge-driven and execution-time approach to comorbid CIG integration, based on an OWL ontology with clearly defined integration semantics.

[1]  Samina Raza Abidi,et al.  Exploiting Semantic Web Technologies to Develop OWL-Based Clinical Practice Guideline Execution Engines , 2016, IEEE Journal of Biomedical and Health Informatics.

[2]  Marc B. Vilain,et al.  A System for Reasoning About Time , 1982, AAAI.

[3]  Silvia Miksch,et al.  Verification of temporal scheduling constraints in clinical practice guidelines , 2002, Artif. Intell. Medicine.

[4]  Paolo Terenziani,et al.  A Mixed-Initiative Approach to the Conciliation of Clinical Guidelines for Comorbid Patients , 2015, KR4HC/ProHealth.

[5]  David Riaño,et al.  Automatic Combination of Formal Intervention Plans Using SDA* Representation Model , 2007, K4CARE.

[6]  David Riaño,et al.  Model-Based Combination of Treatments for the Management of Chronic Comorbid Patients , 2013, AIME.

[7]  D. Gunter,et al.  Chronic Kidney Disease in Adults , 2020, Family Practice Guidelines.

[8]  Frank van Harmelen,et al.  Inferring recommendation interactions in clinical guidelines , 2016, Semantic Web.

[9]  Syed Sibte Raza Abidi,et al.  Modeling the Form and Function of Clinical Practice Guidelines: An Ontological Model to Computerize Clinical Practice Guidelines , 2008, K4HelP.

[10]  Szymon Wilk,et al.  Comprehensive mitigation framework for concurrent application of multiple clinical practice guidelines , 2017, J. Biomed. Informatics.

[11]  Frank van Harmelen,et al.  Towards a Conceptual Model for Enhancing Reasoning About Clinical Guidelines - A Case-Study on Comorbidity , 2014, KR4HC@VSL.

[12]  Frank van Harmelen,et al.  Analyzing interactions on combining multiple clinical guidelines , 2017, Artif. Intell. Medicine.

[13]  Wojtek Michalowski,et al.  Mitigation of adverse interactions in pairs of clinical practice guidelines using constraint logic programming , 2013, J. Biomed. Informatics.

[14]  Rina Dechter,et al.  Temporal Constraint Networks , 1989, Artif. Intell..

[15]  Mor Peleg,et al.  Computer-interpretable clinical guidelines: A methodological review , 2013, J. Biomed. Informatics.

[16]  Paolo Terenziani,et al.  Temporal Detection of Guideline Interactions , 2015, HEALTHINF.

[17]  jafarpour borna,et al.  ONTOLOGY MERGING USING SEMANTICALLY-DEFINED MERGE CRITERIA AND OWL REASONING SERVICES: TOWARDS EXECUTION-TIME MERGING OF MULTIPLE CLINICAL WORKFLOWS TO HANDLE COMORBIDITIES , 2014 .

[18]  Paolo Terenziani,et al.  Temporal detection and analysis of guideline interactions , 2017, Artif. Intell. Medicine.

[19]  H. Krumholz,et al.  Integrating clinical practice guidelines into the routine of everyday practice. , 2005, Critical pathways in cardiology.

[20]  Syed Sibte Raza Abidi,et al.  Merging Disease-Specific Clinical Guidelines to Handle Comorbidities in a Clinical Decision Support Setting , 2013, AIME.

[21]  David Riaño,et al.  The SDA Model: A Set Theory Approach , 2007, Twentieth IEEE International Symposium on Computer-Based Medical Systems (CBMS'07).

[22]  Samina Raza Abidi,et al.  Towards the Merging of Multiple Clinical Protocols and Guidelines via Ontology-Driven Modeling , 2009, AIME.

[23]  S. Abidi A KNOWLEDGE MANAGEMENT FRAMEWORK TO DEVELOP, MODEL, ALIGN AND OPERATIONALIZE CLINICAL PATHWAYS TO PROVIDE DECISION SUPPORT FOR COMORBID DISEASES , 2010 .

[24]  Wojtek Michalowski,et al.  Using Constraint Logic Programming to Implement Iterative Actions and Numerical Measures during Mitigation of Concurrently Applied Clinical Practice Guidelines , 2013, AIME.

[25]  James F. Allen Maintaining knowledge about temporal intervals , 1983, CACM.