Alexander Schepart PharmD, MBA , Arianna Burton PharmD , Larry Durkin MBA , Allison Fuller BA , Ellyn Charap MSc , Rahul Bhambri PharmD, MBA , Faraz S. Ahmad MD, MS
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Artificial intelligence–enabled tools in cardiovascular medicine: A survey of current use, perceptions, and challenges
Background
Numerous artificial intelligence (AI)-enabled tools for cardiovascular diseases have been published, with a high impact on public health. However, few have been adopted into, or have meaningfully affected, routine clinical care.
Objective
To evaluate current awareness, perceptions, and clinical use of AI-enabled digital health tools for patients with cardiovascular disease, and challenges to adoption.
Methods
This mixed-methods study included interviews with 12 cardiologists and 8 health information technology (IT) administrators, and a follow-on survey of 90 cardiologists and 30 IT administrators.
Results
We identified 5 major challenges: (1) limited knowledge, (2) insufficient usability, (3) cost constraints, (4) poor electronic health record interoperability, and (5) lack of trust. A minority of cardiologists were using AI tools; more were prepared to implement AI tools, but their sophistication level varied greatly.
Conclusion
Most respondents believe in the potential of AI-enabled tools to improve care quality and efficiency, but they identified several fundamental barriers to wide-scale adoption.