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The "Ecosystem as a Service (EaaS)" approach to advance clinical artificial intelligence (cAI).

Julian Euma Ishii-RousseauShion SeinoDaniel K EbnerMaryam VarethMing Jack PoLeo Anthony Celi
Published in: PLOS digital health (2022)
The application of machine learning and artificial intelligence to clinical settings for prevention, diagnosis, treatment, and the improvement of clinical care have been demonstrably cost-effective. However, current clinical AI (cAI) support tools are predominantly created by non-domain experts and algorithms available in the market have been criticized for the lack of transparency behind their creation. To combat these challenges, the Massachusetts Institute of Technology Critical Data (MIT-CD) consortium, an affiliation of research labs, organizations, and individuals that contribute to research in and around data that has a critical impact on human health, has iteratively developed the "Ecosystem as a Service (EaaS)" approach, providing a transparent education and accountability platform for clinical and technical experts to collaborate and advance cAI. The EaaS approach provides a range of resources, from open-source databases and specialized human resources to networking and collaborative opportunities. While mass deployment of the ecosystem still faces several hurdles, here we discuss our initial implementation efforts. We hope this will promote further exploration and expansion of the EaaS approach, while also informing or realizing policies that will accelerate multinational, multidisciplinary, and multisectoral collaborations in cAI research and development, and provide localized clinical best practices for equitable healthcare access.
Keyphrases
  • artificial intelligence
  • machine learning
  • healthcare
  • big data
  • human health
  • deep learning
  • climate change
  • quality improvement
  • primary care
  • public health
  • pain management
  • health insurance
  • chronic pain
  • african american