In the U.S., errors and denials in medical claims cause big problems for healthcare providers. Studies show about 80% of medical bills have some kind of mistake. This leads to about $6.2 billion lost every year because of denied claims and unpaid bills. Denials happen due to wrong patient details, missing authorizations, wrong coding, duplicate bills, or late submissions. The manual way of handling claims takes a lot of work, often 10 to 15 minutes just to enter data for one claim. Staff spend even more time, between 30 and 60 minutes, fixing denied claims.
These problems cause higher administrative costs and slow down patient payments. This puts financial pressure on medical practices. In some cases, denial rates can be as high as 11%. Humans make mistakes 5% to 15% of the time during manual entry, which often means claims need to be sent again and followed up with insurance companies. This causes the revenue cycle to get stuck in slow, repetitive tasks. It leads to cash flow problems and more staff time spent fixing issues.
Robotic Process Automation (RPA) means using software robots to do repetitive and rule-based tasks that people usually do by hand. In healthcare claims, RPA bots do jobs like entering patient data, checking eligibility, submitting claims, tracking denials, handling appeals, and posting payments. Automating these tasks helps reduce mistakes, speeds up the process, and cuts administrative costs.
Research shows healthcare groups that use RPA have a large boost in efficiency. For example, using RPA in managing revenue can cut billing time by half, making cash flow faster. McKinsey & Company estimates that RPA and automation could save between $200 and $360 billion each year in U.S. healthcare administrative costs.
One healthcare provider said they cut workflow costs by 68% and reduced the time to answer medical record inquiries by 72% after using RPA. Another hospital in Louisiana used AI-powered RPA to lower prior authorization denials to just 0.21%, which improved cash flow by $2.28 million and raised collected payments by 15%.
RPA uses software bots that act like humans when working with computer systems. This lets healthcare groups automate boring but needed tasks. Main tasks done by RPA include:
Statistics show how RPA helps improve revenue cycles:
Even with benefits, setting up RPA in healthcare money management has some challenges:
RPA is good at automating many rule-based, high-volume tasks. But Artificial Intelligence (AI) and workflow automation add more functions that improve claims work.
Artificial Intelligence (AI): AI uses advanced methods like natural language processing, machine learning, and predictive analysis to automate harder thinking tasks. In managing revenue cycles, AI can:
A survey found 46% of hospitals use AI in revenue management. Also, 74% use some kind of automation, including RPA. AI helps customer service respond 33% faster and raises patient satisfaction by 25%, making claims processes smoother.
Workflow Automation: Workflow automation is different from RPA. It manages processes and approvals across departments. It handles complex tasks like patient intake, treatment authorizations, and communication between departments. When combined with RPA, workflow automation creates full digital revenue cycles, improving teamwork and cutting delays.
For example, Keragon’s automation platform connects with over 300 healthcare tools without needing complex IT support. It follows HIPAA rules and offers AI help. Using these technologies together lets healthcare providers work better than just using task automation alone.
Healthcare practices in the U.S. that want to improve claims management can gain much by using RPA along with AI and workflow automation. These technologies can:
The next steps include choosing automation platforms that can grow and work well with healthcare systems. It is important to talk with legal and compliance teams to manage risks. Training administrative staff to use these new systems effectively is also key.
Using RPA and AI-based solutions for claims management gives healthcare groups clear benefits with measurable money savings. As technology advances, combining robotic software bots with smart AI will likely become normal. This will reduce administrative work, lower mistakes, and support sustainable healthcare services.
RPA automates repetitive, rules-based business processes, reducing errors and costs in RCM. It improves data processing efficiency and enhances patient satisfaction by enabling quicker and more accurate administrative tasks.
RPA has led to significant improvements, such as a 68% reduction in errors and a 72% decrease in processing times for medical record inquiries, ultimately resulting in enhanced workflow costs and staff morale.
RPA optimizes various aspects of RCM including patient scheduling, prior authorization, eligibility verification, charge capture, claims management, account settlement, payment posting, denial management, reporting and analytics, and contract management.
RPA streamlines patient scheduling by automating data collection and appointment booking, reducing manual errors and increasing scheduling efficiency while notifying patients of delays promptly.
Automating prior authorizations speeds up the process, minimizes errors, and allows for real-time analysis of medical records, improving patient care and satisfaction by reducing unnecessary delays.
RPA automates the charge capture process by extracting data from EHRs and clinical documentation, ensuring accurate billing and compliance, which minimizes the risk of missed or incorrect charges.
RPA checks for errors in claims submissions, automates claims status processes, and has been shown to save billions in administrative costs, thereby reducing the overall claim management burden.
RPA sorts and prioritizes claims denials by cause and urgency, enabling efficient resolution and increasing the success rate of appeals while reducing risks associated with incorrect data.
RPA automates the generation of comprehensive revenue cycle reports, providing timely insights on key performance indicators like claims status and denial management, aiding decision-making for financial and operational strategies.
It’s essential to involve legal teams for regulatory compliance, use pilot processes to identify friction points, ensure data security through encryption, define clear roles for management, and maintain ongoing monitoring for effectiveness.