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Automating Healthcare Data Entry: A Case Study on New Bedford Corporation
Technology Category
- Analytics & Modeling - Robotic Process Automation (RPA)
Applicable Industries
- Finance & Insurance
- Healthcare & Hospitals
Applicable Functions
- Quality Assurance
Use Cases
- Inventory Management
- Time Sensitive Networking
The Challenge
New Bedford Corporation, a healthcare service provider, was faced with the challenge of manually entering patient care data into their Vitera Intergy Practice Management application. This process involved keying in thousands of medical charges weekly, each with up to 40 different pieces of information such as name, address, and specific treatment. The manual data entry process was not only tedious and time-consuming, requiring up to 8 hours each day, but also prone to errors and delays. The company also faced the risk of legal implications due to the sensitive nature of the medical information being handled. Furthermore, the cost of employing workers to perform this task was a significant financial burden for the company.
About The Customer
New Bedford Corporation is a healthcare service provider based in the USA. The company offers Practice Management, Billing, Coding, EMR Auditing, Provider Enrollment, and other services to healthcare providers throughout the Southeast and Mid-Atlantic regions. Their mission is to develop long-lasting business relationships with healthcare providers by offering high-quality back-office services that adhere to their core company values. They handle thousands of medical charges weekly from their 50 healthcare provider-customers, which they used to manually enter into their Vitera Intergy Practice Management application.
The Solution
After a careful evaluation, New Bedford Corporation chose Nintex Foxtrot RPA to automate their billing-data entry. This solution automatically copies patient data from New Bedford’s proprietary billing system and enters it into Intergy at a rate of up to 6 records per minute, resulting in a 62 percent time savings compared to manual entry. The automation process is carried out overnight, freeing up employees during working hours to focus on other value-adding activities such as following up with insurance companies for payment. Nintex Foxtrot RPA operates like an automated employee, intelligently reacting to the data it encounters and entering the data with 100 percent accuracy.
Operational Impact
Quantitative Benefit
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