Fair Lawn, NJ, United States of America

Richard Ball


Average Co-Inventor Count = 3.0

ph-index = 1

Forward Citations = 2(Granted Patents)


Company Filing History:


Years Active: 2022-2025

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2 patents (USPTO):Explore Patents

Title: Innovations by Richard Ball in Pharmacy Benefit Management

Introduction

Richard Ball is an accomplished inventor based in Fair Lawn, NJ (US). He has made significant contributions to the field of pharmacy benefit management through his innovative use of machine learning technologies. With a total of 2 patents, Ball's work focuses on improving the efficiency and accuracy of drug benefit claims processing.

Latest Patents

One of Richard Ball's latest patents is centered around pharmacy benefit management machine learning systems and methods. This invention involves a machine learning process designed to identify a first predicted set of drug benefit claims that are impacted by a pricing error. The process reprices a sample of these claims to adjust for the error and trains a predictive model based on the repriced sample. Utilizing this trained model, the machine learning process can predict a second set of drug benefit claims affected by the error and initiate automatic repricing. This innovative approach aims to streamline the claims process and reduce errors in pricing.

Career Highlights

Richard Ball is currently employed at Express Scripts Strategic Development, Inc., where he applies his expertise in machine learning to enhance pharmacy benefit management systems. His work is pivotal in ensuring that the claims process is both efficient and accurate, ultimately benefiting both healthcare providers and patients.

Collaborations

Throughout his career, Richard has collaborated with notable colleagues such as John Ciliberti and Amit Gollapudi. These partnerships have allowed him to further refine his inventions and contribute to advancements in the field.

Conclusion

Richard Ball's innovative work in pharmacy benefit management showcases the potential of machine learning to transform healthcare processes. His contributions are significant in improving the accuracy and efficiency of drug benefit claims, making a positive impact on the industry.

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