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Hospitals and AI. Tools for Success

Hospitals and AI. Tools for Success

Am I hallucinating?

This story about AI-powered transcriptions used in hospitals should be alarming to Chief Informatics Officers or anyone in Healthcare Administration. You know how when you are at the doctor's office, and they record your patient interview rather than take notes? Well, it turns out that the AI tools some organizations use to transcribe the content add significant hallucinations and then delete the original content, making it impossible to verify what you told the doctor!

Let's dig in.

What are AI “hallucinations?”

You might get results like this if you ask your favorite AI chatbot. “AI hallucinations are when an artificial intelligence system, like a chatbot or a language model, generates information that seems plausible but is actually incorrect or completely made up. It’s like when someone dreams up a story that sounds real but isn’t based on reality.” I asked Microsoft Copilot that.

Your search might differ slightly, but I wouldn’t expect it to provide the wrong answer. It’s not the type of question that seems to cause challenges. In my experience, the more specific or obscure the question, the more ‘interesting’ answers one receives. Why so many problems with transcription? My guess is that even though these models are trained on large amounts of healthcare information, natural conversation about specific complex topics, such as one's health, is currently just too individual and complex.

I love AI.

We use it at Improv for process improvement and automation. Have you checked out Process Street yet? I use it to improve critical responses to emails. I love tools like Microsoft Copilot as a search replacement. I've even developed some custom GPTs to simplify my complex work world. There are myriad examples of how AI can improve our day-to-day experience, even in its current state. But that doesn't make it ready for complex project management, automated coding, government operations, and definitely not patient records! At least not out of the box, without some very intentional effort. The takeaway here is that AI can be a huge help. Just remember what you are dealing with. Educate yourself and prepare accordingly.

It WILL get there. You know it. I know it. It's inevitable. But not until it is at least as accurate as a medical transcriber of the human type. According to the article, "A University of Michigan researcher conducting a study of public meetings, for example, said he found hallucinations in eight out of every ten audio transcriptions he inspected..." YIKES!

So why are "over 30,000 clinicians and 40 health systems" using tools based on this technology? It's sexy, cool, and, most importantly, it saves a ton of time in this crazy busy environment. And after reading a recent LinkedIn article by @Taylor Borden it might not be unreasonable to assume that employees are “overwhelmed by how quickly their jobs are changing” and feel the need to learn and implement AI solutions rapidly. She goes on to say,

LinkedIn data shows that over the next five years, the skills required at work will change by 50% — and innovation in artificial intelligence is expected to push that figure to a whopping 70%.

Are we panicking? I know I did a little a year ago when AI seemed to be moving too fast. But maybe that’s just me.

What can and should be done?

I'd like to propose a different approach to today's standard of “hurry, install, run with it!” Let's use traditional IT methods with assessment, analysis, professional testing and built-in change management processes. It's not as daunting as it sounds.

Firstly, engage someone who understands healthcare, vendor selection, process improvement, and the current state of AI. Do what they tell you to do!

I've built a Process Street template to help you evaluate these tools. If you'd like access, let me know.

Process Street Workflow

Reach out for a free consultation to Pick My Brain about  AI in Healthcare, Change Management, or Process Improvement.

Oft Forgotten Tasks

The outline below covers some key tasks often missing or underappreciated.

  1. Identify the initiative's goals and align the project carefully to the organization's needs

  • Hold workshops with cross-functional teams (doctors, nurses, IT, administration) to outline project objectives and desired outcomes.
  • Document alignment of the AI transcription tool with organizational goals, such as improving efficiency, reducing errors, or saving time.
  • Establish a timeline and initial budget estimation based on scope and goals.
  1. Perform an assessment to identify the current state, challenges, and issues we are working to solve and gain consensus on the goals for the future state

  • Map out current transcription processes and workflows to highlight existing inefficiencies and bottlenecks.
  • Map out the ideal future state transcription process and workflows and align with the above goals.
  • Gather quantitative data on current transcription accuracy, time, and costs to create baseline metrics.
  • Share findings with stakeholders and refine project goals based on feedback and identified challenges.
  • ID and agree to clear goals that target the weaknesses in the current process.
  1. Design the test cases
  • Define key scenarios and edge cases for testing, such as medical jargon, accents, and environmental noise.
  • Develop criteria for success and expected outputs for each test case, focusing on accuracy, speed, and ease of use.
  • Create a process for tracking and documenting test results, issues, and improvements.
  1. Determine validation methods to ensure the AI tool consistently provides expected results
  • Develop a comprehensive checklist for assessing tool accuracy, reliability, and adaptability across test cases.
  • Identify critical error thresholds and set guidelines for acceptable error rates.
  • Design a validation process that includes feedback loops with end-users to verify AI outputs match expected quality standards.
  1. Research the current tools landscape (vendor selection)
  • Create a comparison matrix of potential AI tools, evaluating features, cost, support, and scalability.
  • Solicit input from independent experts or users in other hospitals to get unbiased feedback on potential tools.
  • Schedule live demos with vendors, and prepare questions based on identified requirements and validation criteria.
  1. Have a tool 'champion' or team learn the tool well and match test case design to the tool
  • Assign a dedicated champion or team members to receive in-depth training from the vendor.
  • Document tool functionalities and match them against test case requirements to ensure comprehensive coverage.
  • Prepare a resource guide or manual for future reference and training for additional staff.
  1. TEST and change prompts (if applicable to the software)
  • Run initial tests on a variety of audio samples and medical scenarios, adjusting prompts for improved accuracy.
  • Track prompt modifications and outcomes to build a library of effective prompts.
  • Gather feedback from clinicians on prompt effectiveness and make adjustments based on their insights.
  1. TEST and change configuration
  • Adjust configuration settings, such as language model parameters or sensitivity levels, based on initial test results.
  • Conduct iterative testing on different configurations to identify the most effective settings for real-world use.
  • Document configuration changes and their impacts on performance for future optimization.
  1. TEST and validate
  • Run comprehensive validation tests across different departments and user scenarios to assess tool performance.
  • Validate transcription outputs with human reviewers to ensure accuracy meets hospital standards.
  • Capture test results, including any issues, and compile feedback from testers to refine settings.
  1. Measure results, retool, test some more
  • Compare AI tool outcomes with initial baseline metrics to quantify improvements in speed, accuracy, and cost.
  • Collect ongoing feedback from users to identify any new issues or opportunities for improvement.
  • Adjust configurations, prompts, or workflows as needed and conduct periodic testing to ensure consistent quality.

Once you have gone through the implementation process, it’s important to ensure a periodic review. AI changes daily. If you skip this step the most likely outcome is that the results will not be what you expect. So make it part of the project plan. Change management should never end and neither should validating your AI results. Good luck in your implementations and please let me know in the comments (or chat with me directly) how it goes!

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