Publications by authors named "P Boisvert"

Computable biomedical knowledge (CBK) is: "the result of an analytic and/or deliberative process about human health, or affecting human health, that is explicit, and therefore can be represented and reasned upon using logic, formal standards, and mathematical approaches." Representing biomedical knowledge in a machine-interpretable, computable form increases its ability to be discovered, accessed, understood, and deployed. Computable knowledge artifacts can greatly advance the potential for implementation, reproducibility, or extension of the knowledge by users, who may include practitioners, researchers, and learners.

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Article Synopsis
  • The authors reflect on their 4 years of work with the Mobilizing Computable Biomedical Knowledge Technical Infrastructure group, emphasizing the need for foundational infrastructure to leverage computable biomedical knowledge.
  • They clarify the distinction between computable knowledge and data while linking their discussion to Learning Health Systems and FAIR principles.
  • Three guiding principles are proposed for developing this infrastructure: promoting interoperable systems for accessibility, ensuring stable and trustworthy knowledge representations, and advocating for open standards in computable knowledge resources.
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Introduction: Learning health systems are challenged to combine computable biomedical knowledge (CBK) models. Using common technical capabilities of the World Wide Web (WWW), digital objects called Knowledge Objects, and a new pattern of activating CBK models brought forth here, we aim to show that it is possible to compose CBK models in more highly standardized and potentially easier, more useful ways.

Methods: Using previously specified compound digital objects called Knowledge Objects, CBK models are packaged with metadata, API descriptions, and runtime requirements.

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Many obstacles must be overcome to generate new biomedical knowledge from real-world data and then directly apply the newly generated knowledge for decision support. Attempts to bridge the processes of data analysis and technical implementation of analytic results reveal a number of gaps. As one example, the knowledge format used to communicate results from data analysis often differs from the knowledge format required by systems to compute advice.

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