AI is not just one simple technology. It involves machine learning models, data input, and user interaction. To know if AI is working well, healthcare groups need to look at clear Key Performance Indicators (KPIs). These KPIs show how well the AI works and what benefits it provides.
A clear way to check AI success looks at three main parts:
Each part has specific measurements that help understand AI performance and guide healthcare leaders.
The base of any AI is its model. In healthcare, where safety matters, the model’s accuracy and reliability are very important.
Watching the model all the time helps catch problems early and make it better before it causes issues.
The AI model is not enough alone. The technology behind it and how it fits into the healthcare system matter for real use.
Good design and fitting AI into current systems stop it from being a failed experiment without real value.
Even if AI is accurate and fits well, it is only useful if it brings real benefits to healthcare groups and patients.
A study showed many leaders believe using AI with good KPIs improves business success a lot. Organizations tracking AI KPIs work better and respond faster to problems than those who do not.
Healthcare has special challenges with AI. Safety and privacy are very important. AI must be checked to avoid bias and mistakes.
One effort to handle this is the Trustworthy & Responsible AI Network (TRAIN). It started at the HIMSS 2024 Global Health Conference. Members include health systems like Duke Health and Cleveland Clinic, and partner Microsoft. TRAIN works on:
Experts say it is important to watch AI before and after it is used. This helps find if accuracy drops, bias appears, or safety is at risk. Following good AI practices builds patient and provider trust, which helps wider AI use.
One clear use of AI is automating front-office tasks like answering calls, scheduling, and responding to patients. This can reduce work for staff and let them focus more on patients.
Companies like Simbo AI offer AI that answers phones for medical offices. These systems can handle common patient calls fast. They help with appointment requests, prescription refills, and general questions. Benefits include:
Using AI beyond the front office also helps healthcare work better. For example:
Using AI for workflow helps staff be more productive and improves patient experience, which is important in a busy healthcare world.
Health administrators, owners, and IT managers should follow these steps to use and check AI well:
Healthcare groups don’t work alone when using AI. Partners like Microsoft and Google Cloud offer tools to watch AI performance closely.
Google Cloud experts say measuring KPIs in model quality, system quality, and business impact is important not only at the start but all the time. Nitin Aggarwal from Google Cloud explains that checking generative AI helps keep outputs reliable and guide improvements. Amy Liu adds that knowing how users actually interact with AI is key because adoption takes time and needs ongoing adjustments.
Using tech platforms that support careful checking helps avoid problems like unnoticed bias, bad system fit, or low user use, which can reduce AI’s value.
Measuring how well AI works in U.S. healthcare is important to improve patient care and operations. Using KPIs that cover model quality, system performance, and business results helps leaders make smart choices about AI.
Practices like those promoted by TRAIN offer a way to safely and fairly watch AI effects. At the same time, AI tools for automating front-office tasks bring quick benefits by cutting paperwork and improving patient contact.
Combining good measurement, careful AI use, and practical automation helps U.S. healthcare groups manage the ongoing digital changes and get the most from artificial intelligence.
TRAIN is a consortium of healthcare leaders aimed at operationalizing responsible AI principles to enhance the quality, safety, and trustworthiness of AI in healthcare.
Members include renowned healthcare organizations such as AdventHealth, Johns Hopkins Medicine, Cleveland Clinic, and technology partners like Microsoft.
TRAIN aims to share best practices, enable secure registration of AI applications, measure outcomes of AI implementation, and develop a federated AI outcomes registry among organizations.
AI enhances care outcomes, improves efficiency, and reduces costs by automating tasks, screening patients, and supporting new treatment development.
Responsible AI ensures safety, efficacy, and equity in healthcare, minimizing unintended harms and enhancing patient trust in technology.
TRAIN will offer tools for measuring AI implementation outcomes and analyzing bias in AI applications in diverse healthcare settings.
TRAIN enables healthcare organizations to collaborate in sharing best practices and tools essential for the responsible use of AI.
Microsoft acts as the technology enabling partner, helping to establish best practices for responsible AI in healthcare.
AI poses risks related to its rapid development; thus, proper evaluation, deployment, and trustworthiness are crucial for successful integration.
The HIMSS 2024 conference serves as a platform to announce initiatives like TRAIN, facilitating discussions on operationalizing responsible AI in healthcare.