Getting Started on Artificial Intelligence in Health Care and Clinical Research: Includes Rigor Checklist for Authors and Reviewers
Clinical Summary
View sourceWhat was studied
A conceptual roadmap with rigor checklists for applying artificial intelligence in biomedical research and health care, spanning foundations (e.g., data engineering, knowledge representation, symbolic AI), core techniques (expert systems, machine learning, deep learning, explainable AI), and applications (NLP, non-ML computer vision, robotics/automation, distributed AI/multi‑agent systems), with clinical examples including wound care.
Study limitations
The abstract describes concepts, examples, and checklists but reports no empirical data, quantitative outcomes, or comparative evaluations.
Clinical implications
For teams adopting AI, start by building AI literacy, use the provided rigor checklists to plan and vet projects, and embed ethics and bias mitigation with IRB oversight and fairness frameworks.
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