Healthcare payment integrity is often hindered by manual processes, outdated systems, and intricate compliance requirements, which lead to high overhead costs and frequent claim processing errors. These challenges are compounded by the healthcare sector’s traditionally slow adoption of new technologies, often due to concerns around data privacy and system integration. Additionally, the fragmented nature of healthcare data across multiple platforms complicates efforts to achieve a unified approach to payment integrity.

Artificial intelligence (AI) and machine learning, in particular, offer a promising path forward by automating tasks, detecting anomalies, and enhancing decision-making. By integrating AI, healthcare payors can improve claims accuracy, reduce administrative costs, and shift toward prepay claim edits, resulting in better financial outcomes and increased efficiency.

Healthcare’s New Inflection Point

AI and machine learning can enhance both pre-payment and post-payment processes. In pre-pay scenarios, AI and machine learning can analyze claims in real-time, flagging potential errors or fraudulent activities before payment, significantly reducing the need for post-payment recoveries. For post-pay analysis, artificial Intelligence and machine learning can quickly sift through vast amounts of data, identifying anomalies and prioritizing cases for human review, dramatically improving efficiency. Overall, AI is fueling transformation in several key ways that impact payment integrity:

  • Revolutionizing medical coding: AI-powered natural language processing (NLP) analyzes medical records and automatically suggests appropriate codes, reducing errors, improving accuracy, and ensuring consistent, compliant coding practices.
  • Improving clinical validation: AI ensures that treatments and procedures align with best practices, reducing unnecessary treatments and enhancing payment accuracy.
  • Enhancing predictive analytics: AI is used to identify potentially fraudulent claims before payment, leading to significant cost savings.
  • Streamlining claims processing: Through automation, AI reduces processing times and boosts overall efficiency in routine claims processing.

At MultiPlan, our innovative use of artificial intelligence and machine learning enhances payment integrity by integrating advanced anomaly detection models early in the payment lifecycle. This approach boosts error detection, reduces financial losses, and improves operational efficiency. Here are just a few of the ways that we’re leveraging artificial intelligence and machine learning to improve payment integrity outcomes:

  • Enhanced fraud detection: Our AI tools detect sophisticated fraud patterns, such as evolving schemes, false claims for unprovided services, and upcoding, before payments are made, preventing improper payments and reducing financial exposure.
  • Increased operational efficiency: By automating routine tasks and improving detection accuracy, our machine learning models streamline claim processing, saving time and reducing errors.
  • Tailored, flexible solutions: We customize AI-driven solutions to meet the unique needs of each payor, ensuring effective and relevant support.
  • Ethical AI use: With a strong focus on transparency and security, MultiPlan’s Responsible Data Use Committee ensures AI deployment aligns with regulatory standards and best practices, safeguarding trust and compliance.

Our approach to AI provides healthcare payors with a powerful, secure, and efficient solution for managing payment integrity in today’s complex medical billing landscape.

The Future of AI and Machine Learning in Payment Integrity

As AI and machine learning advance, future evolutions can offer:

  • Real-time adjudication: Imagine knowing exactly what’s covered before you even leave the doctor’s office. AI can make that happen by handling claim adjudication on the spot, cutting down on paperwork and improving cash flow for providers.
  • Personalized pricing: AI could also help figure out the fairest pricing for healthcare services by considering things like patient needs, how well providers are doing, and overall outcomes.
  • Continuous learning: Because AI is always learning, it can adapt to changes in healthcare and payment trends, making sure the system stays effective over time.
  • Blockchain integration: Pairing AI with blockchain could give us a clear, tamper-proof record of claims, making it harder for fraud to slip through and enhancing trust between payors and providers.

Blockchain is a shared, distributed ledger on which transactions are chronologically recorded in a cooperative and tamper-proof manner. While data can be continuously added, nothing can be overwritten so the technology provides an audit trail. In simpler terms, blockchain technology is like Google Docs for databases. The database exists across a network of computers and can be edited simultaneously by anyone accessing it. There is only one version of it that is always visible and always up-to-date.

Challenges and Opportunities

While artificial intelligence and machine learning hold immense promise for payment integrity, there are a few challenges that need attention:

  • Data quality and standardization: AI thrives on high-quality, standardized data. To make the most of AI, the industry must push for better data interoperability and quality. Without this, AI’s potential could be limited; with it, the accuracy and effectiveness of AI applications can significantly improve.
  • Privacy and security: The use of AI in healthcare requires robust security measures and strict compliance with key regulations to protect sensitive patient information. Ensuring data protection demands continuous improvements to security protocols and adherence to best practices, which ultimately support the secure and efficient deployment of AI-driven processes.
  • Transparency and explainability: To build and maintain trust, AI algorithms need to be transparent and explainable, especially to meet regulatory standards. Clear and understandable AI decisions can foster greater trust among stakeholders and ensure compliance.
  • Human oversight: No matter how advanced AI becomes, human oversight will be crucial for managing complex cases and ensuring ethical decisions are made. The challenge is balancing AI’s efficiency with human judgment, but combining the two can lead to improved outcomes and more ethical use of AI in healthcare.

Takeaways and Next Steps

There’s never been a more opportune time for AI adoption in healthcare. The integration of AI into payment integrity is enabling a shift from reactive models to proactive strategies that reduce costs, improve efficiency, and enhance accuracy in claims processing. To fully leverage AI, payors and TPAs should assess their current technology, invest in data quality, partner with experienced providers, and ensure compliance with evolving regulations.

MultiPlan is at the forefront of this transformation, offering integrated cost containment and payment integrity solutions to its clients.

Learn more about how MultiPlan is helping payors and TPAs reduce administrative friction and decrease waste by visiting our Payment Integrity services page.

*MultiPlan is not a user of generative AI