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Physician-in-the-Loop Active Learning in Radiology Artificial Intelligence Workflows: Opportunities, Challenges, and

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Summary
This summary is machine-generated.

Active learning reduces the need for extensive expert-labeled data in artificial intelligence (AI) for radiology. This approach enhances AI model performance and physician collaboration by identifying the most informative data for annotation.

Keywords:
active learningartificial intelligenceclinical workflowphysician in the loop

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Area of Science:

  • Radiology
  • Artificial Intelligence
  • Machine Learning

Background:

  • Artificial intelligence (AI) applications in radiology are expanding, including image reconstruction, segmentation, classification, and workflow optimization.
  • Training accurate AI models necessitates large, expert-labeled datasets, which are costly and time-consuming to acquire.
  • Active learning presents a solution to mitigate labeling requirements in data-limited scenarios.

Purpose of the Study:

  • To explore the application of active learning in radiology AI.
  • To highlight active learning's role in reducing resource needs for training radiology AI models.
  • To enhance physician-AI interaction and collaboration within radiology workflows.

Main Methods:

  • Review of literature on active learning strategies in the context of radiology AI.
  • Discussion of active learning concepts and their application to radiology tasks.
  • Presentation of use cases and literature-based examples.

Main Results:

  • Active learning identifies the most informative data for human annotation, reducing the overall labeling burden.
  • This targeted annotation improves AI model performance, especially with constrained datasets.
  • Active learning facilitates the development of physician-in-the-loop AI systems.

Conclusions:

  • Active learning is a valuable strategy for efficient radiology AI development.
  • Integration of active learning can optimize resource allocation and enhance physician-AI collaboration.
  • Further research and implementation are recommended to address challenges and capitalize on opportunities.