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Introduction to Artificial Intelligence and Machine Learning for Pathology.

James H Harrison1, John R Gilbertson2, Matthew G Hanna3

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Machine learning (ML) shows promise in pathology for image analysis and prediction. However, pathologists need education to effectively use and manage these tools, with further research needed on optimal integration and regulation.

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Area of Science:

  • Pathology
  • Medical Informatics
  • Artificial Intelligence

Background:

  • Machine learning (ML) is rapidly advancing, offering potential to enhance or replace human expert functions in various fields.
  • In pathology, ML may revolutionize image analysis, interpretation, and patient outcomes prediction.
  • Pathologists currently lack familiarity with ML principles, necessitating education for effective adoption and management of these new technologies.

Purpose of the Study:

  • Provide pathologists with foundational knowledge of ML algorithms, development, and evaluation.
  • Explore the current applications of ML in pathology and define the future roles and responsibilities of pathologists.
  • Identify challenges and regulatory gaps in the deployment and management of ML systems in pathology.

Main Methods:

  • Literature review encompassing biomedical, engineering, and professional organization sources.
  • Inclusion of accessible references for pathologists without specialized statistical or software development backgrounds.
  • Synthesis of authors' experience in machine learning applications.

Main Results:

  • ML techniques demonstrate significant potential in recent pathology studies.
  • Collaborative models where human experts work with ML tools show superior performance compared to either alone.
  • Optimal integration of ML in pathology workflows is yet to be determined.

Conclusions:

  • ML tools offer promising advancements for pathology practice.
  • Further research is crucial to establish best practices for ML deployment, including generalizability, local verification, and performance monitoring.
  • Development of a robust regulatory framework is needed for widespread and safe implementation of ML in pathology.