AI is no longer just a technology for the future; it is now used in healthcare work. One big money-saving benefit is cutting costs in tasks like paperwork, patient check-in, and service operations. A 2023 McKinsey global survey showed that over 78 percent of healthcare groups use AI in at least one area of their business. Also, 71 percent use generative AI to improve how things work. Even though many use AI, only about 17 percent say it has added at least 5 percent to their earnings before interest and taxes (EBIT) so far. This means there is still room to get better at using AI.
Some health systems show how AI can save money while keeping or improving patient care:
These examples show that AI works well automating simple and repeated jobs like booking appointments, answering patient questions, and collecting symptom info. When these tasks need less effort, healthcare workers can use their time better, saving money and helping operations.
Good AI use means it must fit well with electronic medical records (EMRs) and other technology without breaking workflows. Research shows 88 percent of healthcare systems say smooth EHR integration is key for digital health projects to work. Without this, AI tools can become separate systems that make work harder, not easier.
Fabric, an AI system for front-office tasks, shows this well. It connects directly to existing systems and helps gather symptoms and sort patients through chat, phone, or video. This cuts costs because it lowers manual intake and support work.
A main way to get money benefits from AI is by changing workflows to use AI well. Organizations that change workflows deeply when they add AI see bigger gains in earnings. This means they do not just add AI tech but rethink how tasks are done to fit AI’s abilities.
Healthcare has delays and extra cost in patient check-in, scheduling, and customer help. AI tools like conversational AI and natural language processing (NLP) help automate these tasks. This frees staff to work on more important jobs.
For example, Fabric’s AI helped Intermountain Healthcare cut call center talks by 30 percent. Nurses and staff spent less time on phone triage and more on patient care. OSF HealthCare used conversational AI to get similar cuts, saving millions every year.
A McKinsey study says 21 percent of organizations that use generative AI changed workflows deeply when they added AI. Healthcare also does this. Changing workflows means clearing up roles, moving tasks between people and machines, and improving the entire care path—from booking to discharge.
This leads to:
The hybrid AI model mixes conversational AI with clinical intelligence. It helps to collect symptoms, give early diagnosis, and send patients to the right care provider. This makes clinical work faster and helps more patients get care.
Using AI is changing jobs in healthcare. Automation can reduce the need for some roles that handle simple, repeated tasks like answering phones or routine questions. At the same time, health groups are hiring or creating jobs for AI oversight, ethics, and compliance.
Research shows groups use five steps to match workforce plans with AI:
This results in a more skilled and efficient workforce. Nurses and office staff save time and can focus more on helping patients directly.
Cutting labor costs is important, but AI also cuts errors and makes better use of resources. Digital tools reduce paperwork, avoid unnecessary visits, and lower mix-ups.
Financial effects seen include:
Money benefits from AI connect to better clinical quality and patient experience. AI helps providers follow standard care rules, which improves patient results. AI tools also offer patients faster and clearer care from virtual check-in onward.
An AI-powered digital front door guides patients through symptom checks, visit updates, and automated discharge. This makes the whole process less stressful and more efficient. Better patient satisfaction can lead to fewer missed appointments and higher revenue for practices.
For example, Luminis Health said AI helped nurses speed up patient intake and improve care access. Patients liked clear information and faster appointments. This shows AI helps cut costs by reducing wait times and admin mistakes.
In the U.S., healthcare groups must handle compliance, privacy, and security risks when using AI. Larger groups that lead in AI often have special AI governance teams and CEO involvement to meet rules and ethics standards.
Recent studies show only about 28 percent of healthcare groups include CEO oversight in AI governance. This factor is linked to better financial results. Groups with strong risk management on accuracy, bias, and cyber risks avoid costly mistakes and damage to reputation. This protects their AI investment.
Even with the money savings shown in case studies, many healthcare groups have not yet seen clear returns on AI investments. Research shows:
These numbers show that although AI use is common, healthcare groups still face work in getting full money benefits and improving workflows with AI.
To get the most financial benefit from AI, healthcare groups need to work on changing workflows as they add AI. This means:
Fabric AI’s work with big U.S. healthcare systems shows these benefits. Their AI platform speeds patient intake, automates phone replies, and cuts admin work. This makes workflows better and helps reduce costs.
By carefully matching AI tools with changed workflows, U.S. healthcare groups can cut costs, improve care delivery, and see real financial gains. AI’s job is not just to replace human work but to make it better, so providers can focus on patients while controlling expenses. As AI investments grow, healthcare leaders must focus on smart AI rules, workflow fit, and workforce planning to get the most from AI.
AI enhances patient engagement by providing a virtual assistant that guides patients through their healthcare journey, offering symptom checking and routing to appropriate care, which leads to higher satisfaction and reduced chances of patients leaving without being seen.
AI automates administrative tasks such as symptom collection, documentation, and patient triage, allowing healthcare providers to focus more on patient care and less on administrative busywork, thus increasing efficiency.
OSF Health saved $2.4 million in one year by implementing conversational AI, which contributed to significant reductions in operational costs, particularly in call center volume.
The virtual care platform enables remote patient interactions, reducing the need for in-person visits and streamlining the intake process, which directly lowers overhead costs.
Features such as digital intake forms, real-time visit updates, and automated discharge allow for quicker patient processing, reducing wait times and improving overall efficiency.
Fabric integrates security and compliance measures into its offerings, ensuring that healthcare organizations can safely implement AI solutions without risking patient data integrity.
By leveraging AI-driven clinical protocols and automation, providers can offer standardized, evidence-based care, leading to improved patient outcomes and lowered error rates.
Hybrid AI combines conversational and clinical intelligence, ensuring that AI solutions are effective and safe for patient interactions, thus enhancing the overall healthcare experience.
Organizations can assess metrics such as reduced call volumes, cost savings, improved patient throughput, and enhanced patient satisfaction to evaluate the effectiveness of AI solutions.
Digital front door solutions enhance patient accessibility by providing virtual check-in and symptom collection, streamlining the care process and improving patient experiences from the outset.