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An ontology-driven clinical decision support system (IDDAP) for infectious disease diagnosis and antibiotic prescription

Published: 01 March 2018 Publication History

Abstract

A decision support system (DSS) is proposed for assisting in prescription of antibiotics at the point of primary care.The DSS adopts a patient-centered, step-wise decision support system using subjective judgment of the patients.Based on the re-use of existing biomedical ontologies, a complete and large domain ontology is constructed.DSS can fully utilize the infectious disease and antibiotics information for the diagnosis classification. BackgroundThe available antibiotic decision-making systems were developed from a physicians perspective. However, because infectious diseases are common, many patients desire access to knowledge via a search engine. Although the use of antibiotics should, in principle, be subject to a doctors advice, many patients take them without authorization, and some people cannot easily or rapidly consult a doctor. In such cases, a reliable antibiotic prescription support system is needed. Methods and resultsThis study describes the construction and optimization of the sensitivity and specificity of a decision support system named IDDAP, which is based on ontologies for infectious disease diagnosis and antibiotic therapy. The ontology for this system was constructed by collecting existing ontologies associated with infectious diseases, syndromes, bacteria and drugs into the ontology's hierarchical conceptual schema. First, IDDAP identifies a potential infectious disease based on a patients self-described disease state. Then, the system searches for and proposes an appropriate antibiotic therapy specifically adapted to the patient based on factors such as the patients body temperature, infection sites, symptoms/signs, complications, antibacterial spectrum, contraindications, drugdrug interactions between the proposed therapy and previously prescribed medication, and the route of therapy administration.The constructed domain ontology contains 1,267,004 classes, 7,608,725 axioms, and 1,266,993 members of SubClassOf that pertain to infectious diseases, bacteria, syndromes, anti-bacterial drugs and other relevant components. The system includes 507 infectious diseases and their therapy methods in combination with 332 different infection sites, 936 relevant symptoms of the digestive, reproductive, neurological and other systems, 371 types of complications, 838,407 types of bacteria, 341 types of antibiotics, 1504 pairs of reaction rates (antibacterial spectrum) between antibiotics and bacteria, 431 pairs of drug interaction relationships and 86 pairs of antibiotic-specific population contraindicated relationships.Compared with the existing infectious disease-relevant ontologies in the field of knowledge comprehension, this ontology is more complete. Analysis of IDDAP's performance in terms of classifiers based on receiver operating characteristic (ROC) curve results (89.91%) revealed IDDAP's advantages when combined with our ontology. Conclusions and significanceThis study attempted to bridge the patient/caregiver gap by building a sophisticated application that uses artificial intelligence and machine learning computational techniques to perform data-driven decision-making at the point of primary care. The first level of decision-making is conducted by the IDDAP and provides the patient with a first-line therapy. Patients can then make a subjective judgment, and if any questions arise, should consult a physician for subsequent decisions, particularly in complicated cases or in cases in which the necessary information is not yet available in the knowledge base.

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      Published In

      cover image Artificial Intelligence in Medicine
      Artificial Intelligence in Medicine  Volume 86, Issue C
      March 2018
      49 pages

      Publisher

      Elsevier Science Publishers Ltd.

      United Kingdom

      Publication History

      Published: 01 March 2018

      Author Tags

      1. Antibiotics prescription
      2. Clinical decision support
      3. Decision support system
      4. Diagnosis classification
      5. Ontology

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      • (2024)TEST-Net: transformer-enhanced Spatio-temporal network for infectious disease predictionMultimedia Systems10.1007/s00530-024-01494-730:6Online publication date: 1-Dec-2024
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      • (2021)Intelligent knowledge consolidationKnowledge-Based Systems10.1016/j.knosys.2021.107578234:COnline publication date: 25-Dec-2021
      • (2020)Real-time nurse dispatching using dynamic priority decision frameworkProceedings of the Winter Simulation Conference10.5555/3466184.3466273(782-793)Online publication date: 14-Dec-2020
      • (2020)Personalized Process and Decision Support in Emergency Care by Mining Electronic Health Records and Sensor DataProceedings of the 14th EAI International Conference on Pervasive Computing Technologies for Healthcare10.1145/3421937.3421961(415-418)Online publication date: 18-May-2020
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      • (2019)Building a Biomedical Ontology for Respiratory Tract InfectionProceedings of the 7th International Conference on Computer and Communications Management10.1145/3348445.3348461(8-12)Online publication date: 27-Jul-2019

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