MediCoSpace : Visual Decision-Support for Doctor-Patient Consultations using Medical Concept Spaces from EHRs
electronic health records
natural language processing; interaction design; Visual analytics; electronic health records
interaction design
Visual analytics
0202 electrical engineering, electronic engineering, information engineering
02 engineering and technology
natural language processing
Visual Analytics, Natural Language Processing, Interaction Design
info:eu-repo/classification/ddc/004
3. Good health
DOI:
10.1145/3564275
Publication Date:
2022-09-26T12:54:55Z
AUTHORS (4)
ABSTRACT
Healthcare systems are under pressure from an aging population, rising costs, and increasingly complex conditions and treatments. Although data are determined to play a bigger role in how doctors diagnose and prescribe treatments, they struggle due to a lack of time and an abundance of structured and unstructured information. To address this challenge, we introduce
MediCoSpace
, a visual decision-support tool for more efficient doctor-patient consultations. The tool links patient reports to past and present diagnoses, diseases, drugs, and treatments, both for the current patient and other patients in comparable situations.
MediCoSpace
uses textual medical data, deep-learning supported text analysis and concept spaces to facilitate a visual discovery process. The tool is evaluated by five medical doctors. The results show that
MediCoSpace
facilitates a promising, yet complex way to discover unlikely relations and thus suggests a path toward the development of interactive visual tools to provide physicians with more holistic diagnoses and personalized, dynamic treatments for patients.
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