AI in Healthcare: 5 barriers and solutions for integration
Aditi U Joshi MD, MSc, FACEP
Executive Director, Telehealth.org | Author | Top Voice | Digital Health | Telehealth | Virtual Reality | Chief Medical Officer | Emergency Medicine
Looking at my LinkedIn feed, most are mentioning #AI, #ChatGPT and its future effects on the healthcare system. Everything from diagnosing diseases, developing new treatments, streamlining clinicians’ roles and improving patient care seem to be within its wheelhouse.?
However, we have to be realistic in integration and the actual process of change in healthcare. There still remain barriers which will slow down that uptake.?
1. #Data privacy and security
AI systems require large amounts of data to train and learn. In healthcare this includes sensitive patient information, such as medical records, test results, and images. We don’t even know and haven’t seen the extent of what will happen if much of this data is used by unauthorized individuals or organizations. This could lead to identity theft, financial fraud, or even physical harm to patients.
2. Bias in the data
Data #bias has been a longstanding concern as AI systems are only as good as the data they are trained on. If we are already reliant on the data we have, it could lead to inaccurate diagnoses or treatments. This has implications especially for historically marginalized populations - and we know we don’t have the right research data in certain instances.
3. Lack of transparency
If the system is complex and difficult for healthcare providers to understand how the system arrived at its conclusions, it will lead to a lack of #trust. Or even an inability to use the system to its fullest potential. I’ve noted how some #telehealth programs make more work for clinicians, not less. This has the same potential.?
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4. Patient trust
On the other side of the equation, patients may not understand the safety and reliability of AI. This can be especially worse if their clinicians’ don’t. Who would be willing to use it in these cases ??
5. Regulation and governance
The use of AI in healthcare is still in its early stage and there are currently no clear regulations or guidelines governing its use. Once again, tech has been faster than regulation. This has led to lack of reimbursement, standards, clinical evidence and guidance.?
I’m always a realist, however, and know that AI is being used in healthcare. And should, once some of these barriers are cleared. Here are some ways I see we can address those challenges:
AI is an exciting new forefront in medicine but we need to address these challenges. None of them are new - they are the same ones we deal with during every new #digitalhealth change. Starting earlier on these issues could potentially have it integrate - and revolutionize #medicine - more quickly.
President and CEO at BioPortUSA
1 年Excellent! I reposted and will share with all of my clients and prospective clients. People, especially from outside the USA, need to understand the challenges they will face in trying to implement AI technologies in the healthcare setting.