Detecting and resolving inconsistencies between domain experts’ different perspectives on (classification) tasks

Abstract Objectives The work reported here focuses on developing novel techniques which enable an expert to detect inconsistencies in 2 (or more) perspectives that the expert might have on the same (classification) task. The high level task which the experts (physicians) had set themselves was to cl...

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Veröffentlicht in:Artificial intelligence in medicine 2012-06, Vol.55 (2), p.71-86
Hauptverfasser: Sleeman, Derek, Moss, Laura, Aiken, Andy, Hughes, Martin, Kinsella, John, Sim, Malcolm
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container_end_page 86
container_issue 2
container_start_page 71
container_title Artificial intelligence in medicine
container_volume 55
creator Sleeman, Derek
Moss, Laura
Aiken, Andy
Hughes, Martin
Kinsella, John
Sim, Malcolm
description Abstract Objectives The work reported here focuses on developing novel techniques which enable an expert to detect inconsistencies in 2 (or more) perspectives that the expert might have on the same (classification) task. The high level task which the experts (physicians) had set themselves was to classify, on a 5-point severity scale (A–E), the hourly reports produced by an intensive care unit's patient management system. Method The INSIGHT system has been developed to support domain experts exploring, and removing inconsistencies in their conceptualization of a task. We report here a study of intensive care physicians reconciling 2 perspectives on their patients. The 2 perspectives provided to INSIGHT were an annotated set of patient records where the expert had selected the appropriate category to describe that snapshot of the patient, and a set of rules which are able to classify the various time points on the same 5-point scale. Inconsistencies between these 2 perspectives are displayed as a confusion matrix; moreover INSIGHT then allows the expert to revise both the annotated datasets (correcting data errors, or changing the assigned categories) and the actual rule-set. Results Each of the 3 experts achieved a very high degree of consensus (∼97%) between his refined knowledge sources (i.e., annotated hourly patient records and the rule-set). We then had the experts produce a common rule-set and then refine their several sets of annotations against it; this again resulted in inter-expert agreements of ∼97%. The resulting rule-set can then be used in applications with considerable confidence. Conclusion This study has shown that under some circumstances, it is possible for domain experts to achieve a high degree of correlation between 2 perspectives of the same task. The experts agreed that the immediate feedback provided by INSIGHT was a significant contribution to this successful outcome.
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The high level task which the experts (physicians) had set themselves was to classify, on a 5-point severity scale (A–E), the hourly reports produced by an intensive care unit's patient management system. Method The INSIGHT system has been developed to support domain experts exploring, and removing inconsistencies in their conceptualization of a task. We report here a study of intensive care physicians reconciling 2 perspectives on their patients. The 2 perspectives provided to INSIGHT were an annotated set of patient records where the expert had selected the appropriate category to describe that snapshot of the patient, and a set of rules which are able to classify the various time points on the same 5-point scale. Inconsistencies between these 2 perspectives are displayed as a confusion matrix; moreover INSIGHT then allows the expert to revise both the annotated datasets (correcting data errors, or changing the assigned categories) and the actual rule-set. Results Each of the 3 experts achieved a very high degree of consensus (∼97%) between his refined knowledge sources (i.e., annotated hourly patient records and the rule-set). We then had the experts produce a common rule-set and then refine their several sets of annotations against it; this again resulted in inter-expert agreements of ∼97%. The resulting rule-set can then be used in applications with considerable confidence. Conclusion This study has shown that under some circumstances, it is possible for domain experts to achieve a high degree of correlation between 2 perspectives of the same task. 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source MEDLINE; Elsevier ScienceDirect Journals
subjects Artificial Intelligence
Categories
Classification
Classification - methods
Confidence intervals
Confusion
Database Management Systems - instrumentation
Diagnosis, Computer-Assisted - methods
Electronic Health Records - instrumentation
Expert systems
Expert Testimony
Expertise capture
Inconsistency resolution
Information Storage and Retrieval - methods
Intensive care unit
Intensive Care Units
Internal Medicine
Other
Patient scoring system
Patients
Physicians
Physiological measurements
Tasks
title Detecting and resolving inconsistencies between domain experts’ different perspectives on (classification) tasks
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