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Explainable process trace classification: An application to stroke.

Giorgio Leonardi1, Stefania Montani1, Manuel Striani1

  • 1DISIT, Computer Science Institute, Università del Piemonte Orientale, Viale Michel 11, I-15121 Alessandria, Italy.

Journal of Biomedical Informatics
|December 30, 2021
PubMed
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This study introduces trace saliency maps to explain deep learning in healthcare process classification. This method enhances interpretability for quality assessment in stroke management.

Area of Science:

  • Health Informatics
  • Machine Learning in Healthcare
  • Process Mining

Background:

  • Medical process trace classification uses activity sequences for quality assessment.
  • Deep learning excels at classification but lacks explainability, hindering clinical trust.
  • Explainable AI is crucial for adopting advanced analytics in healthcare.

Purpose of the Study:

  • To address the explainability challenge in deep learning for medical process trace classification.
  • To improve the interpretability of classification models for healthcare professionals.
  • To enhance quality assessment in stroke management through explainable AI.

Main Methods:

  • Introduction of trace saliency maps as a novel technique.
  • Application of trace saliency maps to highlight significant activities in process traces.
Keywords:
Deep learningExplainable artificial intelligenceProcess tracesStroke management

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  • Utilizing deep learning architectures for classification tasks.
  • Main Results:

    • Trace saliency maps effectively highlight key activities influencing classification.
    • The approach successfully explains deep learning model outputs for medical users.
    • Demonstrated feasibility and interpretability in a stroke management use case.

    Conclusions:

    • Trace saliency maps offer a viable solution for explainable AI in medical process classification.
    • The method enhances trust and interpretability for deep learning in healthcare.
    • Potential for broader application across different medical domains and black-box models.