Maximizing Efficiency and Revenue Integrity: How Arintra Transformed a Midwest Health System’s Coding Operations inside Epic
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Client Overview
The client, a leading healthcare provider in the United States, serves a diverse patient population with a commitment to quality care and regulatory compliance. Facing the complexities of regulatory standards, particularly HIPAA, the organization sought solutions to streamline its coding processes and enhance compliance efforts.
Challenges Faced
1. HIPAA Compliance: The organization grappled with the intricate requirements of HIPAA, especially concerning the protection of electronic protected health information (ePHI). Manual coding processes made it challenging to maintain compliance and track access to sensitive patient data.
2. Audit Trail Documentation: The lack of a robust system for documenting audit trails related to coding activities posed a significant challenge. This deficiency hindered the organization's ability to demonstrate compliance and respond effectively to audits.
3. Coding Accuracy: Ensuring coding accuracy was paramount not only for billing accuracy but also for regulatory compliance. Manual processes were prone to errors, increasing the risk of non-compliance and financial penalties.
Arintra's Solution
Arintra's AI-powered autonomous coding solution offered a comprehensive solution to the organization's compliance challenges. By leveraging advanced algorithms and machine learning, Arintra provided detailed audit trails and ensured coding accuracy, helping the organization meet HIPAA requirements and improve operational efficiency.
Implementation
The implementation of Arintra's solution involved close collaboration between the organization's compliance, IT, and coding teams. Arintra was configured to generate detailed audit trails for all coding activities, providing transparency into the coding process and ensuring compliance with HIPAA guidelines. Extensive training sessions were conducted to familiarize staff with the new system and ensure seamless integration into existing workflows.
Results
1.Improved Compliance: Arintra's detailed audit trails enabled the organization to demonstrate compliance with HIPAA regulations. The system tracked all coding activities, ensuring that ePHI was protected according to HIPAA standards.
2. Enhanced Audit Preparedness: Arintra's documentation of audit trails improved the organization's ability to respond to audits efficiently. Auditors could easily review the audit trails to verify compliance, reducing the risk of penalties.
3. Increased Coding Accuracy: Arintra's advanced algorithms significantly improved coding accuracy, reducing errors and ensuring compliance with coding guidelines. This improvement not only supported accurate billing but also enhanced overall operational efficiency.
Conclusion
Arintra's AI-powered autonomous coding solution proved instrumental in helping the healthcare provider ensure compliance with regulatory requirements, particularly HIPAA. By implementing Arintra, the organization improved its compliance efforts, enhanced audit preparedness, and increased coding accuracy, ultimately leading to better patient care and operational excellence.
Overview
A large provider organization in the United States, with a monthly visit volume of 231,360, faced several challenges in their revenue cycle. Adopting Arintra's AI powered autonomous medical coding solution brought a significantly positive impact from November 1 to November 30, 2022, marking a transformative change for the organization.
Challenges
- 75% physician coded charts were billed directly
- 10% denial rate
- High volume low dollar claims
- Massive coding backlogs
- Shortage of medical coders
These challenges collectively resulted in an annual loss of $12 million for the provider organization.
Solution
Arintra’s powerful autonomous medical coding technology addressed these multifaceted challenges by leveraging deep learning, NLP, clinical LLMs and generative AI. The seamless and secure bi-directional integration with the provider organization’s existing EHR required zero IT lift and ensured zero workflow change. Arintra autonomously processed every patient chart, consistently applied business rules and generated precise direct-to-billing charges and codes. It automated an impressive 696 charts per hour, significantly expediting the coding process. By automating the routine coding tasks, Arintra freed providers from coding workload and gave them more time to provide optimal patient care.
Results
Arintra addressed all the challenges and increased the average monthly revenue by 4% for the large provider organization. A significant 41% drop in claim denial rate showcased Arintra's prowess in enhancing coding accuracy. Moreover, Arintra's implementation led to a commendable 22% reduction in coding backlogs, ensuring a smoother workflow.
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Introduction
Accurate medical coding is fundamental for the smooth operation of healthcare systems in the United States, ensuring correct billing, adherence to regulatory standards, and optimal patient care. While much attention is given to the coding process itself, the significance of audit trails is often overlooked. These trails offer a detailed chronicle of coding activities, providing transparency and accountability in the coding process. This blog delves into the crucial role of audit trails in US medical coding, highlighting their importance in ensuring accuracy, compliance, and efficiency.
Importance of Audit Trails in Medical Coding
Ensuring Accuracy and Transparency: Audit trails serve as detailed records of all coding activities, offering transparency into who accessed patient records and the changes made. This transparency is crucial for maintaining accuracy, allowing coders to track their actions and identify errors. By reviewing audit trails, coders can ensure the correctness of codes assigned to each patient's diagnosis and treatment, reducing the risk of claim denials and ensuring appropriate patient care.
Meeting Regulatory Requirements: In the US, healthcare providers must comply with various regulations to protect patient privacy and data security. Audit trails play a crucial role in meeting these regulatory requirements by providing detailed records of coding activities. They help demonstrate compliance with regulations such as HIPAA, reducing the risk of fines and penalties.
Enhancing Efficiency and Accountability: Audit trails improves the accuracy and transparency of coding processes as well as enhances efficiency and accountability. By maintaining detailed records, healthcare providers can track the progress of each coding task, identify bottlenecks, and improve processes. Additionally, audit trails promote accountability by holding individuals responsible for their actions, ensuring ethical coding practices and compliance with regulatory requirements.
The Role of Arintra's Audit Trails
Arintra, an AI-powered autonomous coding solution, offers a unique approach to audit trails in medical coding. Arintra's audit trail provides detailed insights into how codes are generated and which parts of the medical chart contribute to each code, including ICD (International Classification of Diseases) or CPT (Current Procedural Terminology) codes, and decisions regarding Evaluation and Management (E/M) levels.
Code Generation Process: Arintra's audit trail details the process of how codes are generated for each patient encounter, including the rules, algorithms, and machine learning models used. This level of detail helps in understanding the rationale behind each assigned code, ensuring accuracy and compliance with coding guidelines.
Chart Contribution Analysis: Arintra's audit trail specifies which parts of the medical chart contribute to the assignment of specific codes, identifying specific diagnoses, procedures, or symptoms documented in the chart that lead to the selection of particular codes.
E/M Level Decision Documentation: Arintra's audit trail documents the decision-making process for selecting the appropriate E/M level, including the factors considered, such as history, examination, and medical decision-making.
Overall, Arintra's audit trail provides a comprehensive and transparent view of the coding process, ensuring accuracy, compliance, and accountability. By detailing how codes are generated and which parts of the chart contribute to each code and E/M level decision, Arintra enhances the integrity of the coding process and helps healthcare providers deliver high-quality care to patients.
Conclusion
In conclusion, audit trails are crucial for ensuring accuracy, transparency, and compliance in medical coding. They provide detailed records of coding activities, helping healthcare providers track their actions, identify errors, and demonstrate compliance with regulatory standards. Arintra's AI-powered solution enhances audit trails by generating detailed and explainable records, facilitating documentation, and integrating seamlessly with EHR systems. By leveraging Arintra, healthcare providers can improve coding practices, reduce errors, and enhance patient care.
Introduction
Prior to 1980, coding was a paper-based, time-consuming, error-prone, and inefficient process with limited practical alternatives. This soon changed with the 1980s technology boom, which brought about a protracted shift to ICD-10-CM/PCS and fundamentally changed the process and scale of gathering and managing patient data.
It is essential to draw a distinction between simple, primitive solutions like computer-assisted coding (CAC) and true automation. CAC tools primarily affect productivity and workflow, but fail to completely automate the processes. On the contrary, autonomous coding emulates human intelligence by combining large datasets with computational power and sophisticated algorithms, enabling the coders to instead address more complex RCM concerns.
CAC has proven successful in highly structured and smaller records, such as radiological tests, laboratory exams, and emergency room visits, but delivers inefficient results with larger records. On the other hand, autonomous coding has shown demonstrable results in radiology, primary care, emergency, urgent care, pathology, and other high-volume outpatient encounters. Vaccines, cardiac rehab, gastrointestinal, women's health, and outpatient therapies, are other areas with the potential to be future case types for autonomous coding.
The implementation of the CAC software can often be challenging. Subsequently, the coding specialists are also required to receive training on operating the software and must modify their existing coding procedures to conform to the new CAC workflow. In contrast, the autonomous coding software can be seamlessly implemented into the existing workflow without any modification or human intervention.
Clinical notes are often unstructured, with complex medical terminology and spelling errors. Another notable disadvantage of CAC is the inability to decipher and translate such free text into precise medical codes, resulting in error-prone, inaccurate, and unreliable coding suggestions. Autonomous coding’s robust, cutting-edge technology is the complete solution for an impressive return on investment, a streamlined revenue cycle, error-free coding, improved accuracy, and increased efficiency in the complex medical coding industry.
Introduction
Medical coding is, perhaps, the most crucial and labor-intensive part of revenue cycle management, requiring skilled and certified resources. The United States is the world's largest market for medical coding and is expected to expand from 2022 to 2030 at a compound annual growth rate (CAGR) of 8 percent.
However, the coding process has become increasingly complex over the years due to the dynamic regulatory environment and clinical documentation requirements. The efficiency of the medical coders has undoubtedly decreased as a result of frequent modifications to the medical coding standards. Needless to say, this has led to a rapid increase in revenue leakage, a shortage of professional coders, and constant pressure to keep abreast with changing guidelines while enhancing productivity and quality.
Primary Obstacles in the Realm of Medical Coding
The key concerns in the healthcare sector pertaining to coding include claim rejections, inaccuracies, errors, and delayed time to payment. The coding workforce must be fully up to speed, given that inaccurate coding accounts for 68 percent of hospital denials, with these denied claims costing hospitals over $262 billion annually.
Training a coding workforce has become more challenging as a consequence of the transient and volatile coding standards. It is nearly impossible to remain up-to-date on the myriad of payer-specific coding guidelines while concurrently anticipating future revisions.
Several health systems have begun relying on technology to automate some of their coding and billing procedures in order to meet the growing complexity of medical coding. Due to its significant impact on the revenue cycle, it is crucial to identify which tasks can or cannot be easily automated and the right blend of technology as well as human expertise that would yield the best results.
Computer-assisted Coding: An Outdated Solution
Computer-assisted coding (CAC) software analyzes medical records and generates accurate medical codes for specific terms and phrases within the record. Additionally, this software also examines the context of the data enclosed within clinical documents to ascertain whether coding may be required. For instance, when referring to a diagnosis of hypertension, the software can deduce that the term "hypertension" has to be coded. In contrast, the same cannot be considered while discussing a "family history of hypertension".
Although the concept of CAC first surfaced in the 1950s, it garnered substantial prominence only around 2015, driven by the transition of US healthcare from the 30-year-old ICD-9 to the ICD-10 standards. The latter was significantly larger and more detailed. Thereby, CAC emerged as software with significant relevance and utility, by reducing the time spent per record by 22 percent compared to manual coding processes.
From a technology standpoint, computer-assisted coding presents a successful use case of NLP in healthcare. Natural language processing, a confluence of AI, linguistics, and computer science, enables computers to comprehend human writing to some extent and can solve different tasks, iincluding those of CAC.
Implementing CAC does not eliminate the need for medical coders, but rather increases their efficiency. This software enables the coders to review, revise, and validate medical codes. However, the downside to CAC is that it merely augments the clinical knowledge and coding experience of medical coders rather than fully automating the coding process. The software seeks human assistance, provides reduced accuracy in coding suggestions, and increases the likelihood of denied claims, thereby extending the revenue cycle and adding cost burdens. This is where intelligent autonomous medical coding differs from CAC and manual coding processes by providing a more holistic solution for the aforementioned issues.
Enter Autonomous Coding
Recent advancements in machine learning, artificial intelligence, natural language processing, and clinical language understanding capabilities have enabled the development of the holy grail of the field—a medical coding technology that can convert medical information into coded data to obtain reimbursement from insurance providers without any human intervention.
Autonomous coding is a solution pioneered to propel medical coders beyond the limitations of CAC and its predecessors. This software is designed to understand and translate unstructured clinical notes into structured medical codes without the need for human assistance.
One of the key benefits of autonomous coding is its positive impact on revenue. A healthcare organization's profit margin can be exponentially increased through the autonomous coding engines' ability to seamlessly integrate into the normal flow of RCM and swiftly process a large volume of charts. Furthermore, since the software produces consistent results, it aids in reducing claim rejections. Consequently, this modern technology saves money and time, while significantly shortening the revenue cycle.
Autonomous medical coding employs a new generation of sophisticated computer algorithms to code charts within seconds without any human intervention. The intelligent autonomous engines are fully cognizant of which codes are most accurate to assign and their relevance. If any information in the medical record is ambiguous, these unhandled charts may occasionally be flagged for manual coding.
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Coding accuracy
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