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Issues And Trends In Healthcare Delivery System01:29

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The issues and trends in healthcare delivery are constantly changing. The COVID-19 pandemic is one recent issue that wreaked havoc on healthcare systems, causing a shortage of healthcare workers, high demand for medicines and supplies, and increased medical expenditure due to a lack of insurance. Other issues include rising healthcare costs and care fragmentation.
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Developing a Research Center for Artificial Intelligence in Medicine.

Curtis P Langlotz1, Johanna Kim2, Nigam Shah3

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Stanford University

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Area of Science:

  • Biomedical research
  • Artificial intelligence
  • Machine learning

Background:

  • Artificial intelligence (AI) and machine learning (ML) are transforming biosciences, medical scholarship, and clinical care.
  • Academic medical centers are establishing dedicated units to foster AI/ML research and innovation.

Purpose of the Study:

  • To present a successful model for an AI/ML research center at Stanford University.
  • To outline key strategies for supporting AI/ML research in academic medical settings.

Main Methods:

  • Establishing an AI/ML research center with support from academic leaders, clinical departments, grants, and industry partners.
  • Implementing four key tactics: project-based learning, internal grants, data infrastructure, and educational/open data programs.
  • Fostering interdisciplinary collaboration among clinicians, computer scientists, and data scientists.

Main Results:

  • The Center for Artificial Intelligence in Medicine and Imaging (AIMI) successfully supports AI/ML research.
  • The model emphasizes complementary foundational and applied research.
  • The center facilitates the creation of large, multimodal, AI-ready clinical datasets.

Conclusions:

  • Multidisciplinary centers of excellence are crucial for advancing AI/ML in academic medical centers.
  • These centers provide a foundation for responsible, ethical, and fair AI/ML implementation.
  • Team science integrating diverse expertise is essential for solving complex biomedical problems using AI/ML.