Author:
Bhatt Ami B.,Bae Jennifer
Abstract
AbstractCollaborative intelligence reflects the promise and limits of leveraging artificial intelligence (AI) technologies in clinical care. It involves the use of advanced analytics and computing power with an understanding that humans bear responsibility for the accuracy, completeness and any inherent bias found in the training data. Clinicians benefit from using this technology to address increased complexity and information overload, support continuous care and optimized resource allocation, and to enact efforts to eradicate disparities in health care access and quality. This requires active clinician engagement with the technology, a general understanding of how the machine produced its insight, the limitations of the algorithms, and the need to screen datasets for bias. Importantly, by interacting, the clinician and the analytics will create trust based on the clinician’s critical thinking skills leveraged to discern value of machine outputs within clinical context. Utilization of collaborative intelligence should be staged with the level of understanding and evidence. It is particularly well suited to low-complexity non-urgent care and to identifying individuals at rising risk within a population. Clinician involvement in algorithm development and the amassing of evidence to support safety and efficacy will propel adoption. Utilization of collaborative intelligence represents the natural progression of health care innovation, and if thoughtfully constructed and equitably deployed, holds the promise to decrease clinician burden and improve access to care.
Publisher
Springer Science and Business Media LLC
Subject
Health Information Management,Health Informatics,Computer Science Applications,Medicine (miscellaneous)
Reference26 articles.
1. Bhatt, A. & Bae, J. Innovating Health Care | The Rise of Collaborative Intelligence: How Do We Instill Trust in a Nonhuman ‘Brain’? Cardiology Magazine. (2022).
2. Artificial Intelligence. Oxford Dictionary of Phrase and Fable (2nd edition), https://doi.org/10.1093/acref/9780198609810.001.0001 (2006).
3. Liu, D. S., Abu-Shaban, K., Halabi, S. S. & Sundaram, C. T. Changes in radiology due to artificial intelligence that can attract medical students to the specialty. JMIR Med Educ. 9, e43415 (2023).
4. A. Civil Society Guide to Advance NCD Prevention Policies. The NCD Alliance, (2023).
5. Popowitz E. Addressing the Health Care Staffing Shortage. Definitive Healthcare, (2022).
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