Revolutionary Algorithm Transforms Robotic Prosthetics to Restore Natural Movement and Prevent Secondary Health Issues

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Researchers at North Carolina State University have developed a groundbreaking algorithm that not only optimizes robotic prosthetic limb movement but also helps users maintain natural body movement patterns, potentially preventing secondary health complications like back pain and hip problems associated with amputations.

Breakthrough in Prosthetic Technology

Researchers at North Carolina State University have developed a revolutionary algorithm that represents a significant leap forward in robotic prosthetic technology. Unlike traditional approaches that focus solely on optimizing the movement of the prosthetic device itself, this new system takes a holistic approach by simultaneously improving both the prosthetic's function and the user's natural body movement patterns

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"Algorithms designed to improve the behavior of robotic prosthetics are not new - but this is the first algorithm that also holistically improves the physical behavior of the person interacting with those prosthetics," explains Varun Nalam, co-lead and co-corresponding author of the research and assistant research professor in the Lampe Joint Department of Biomedical Engineering

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Addressing Secondary Health Complications

The innovation addresses a critical gap in current prosthetic technology. When individuals undergo above-knee amputations, the impact extends far beyond the missing limb, affecting their entire movement pattern and leading to secondary health issues. "When people have an amputation above the knee, it affects the way they move other parts of their body," Nalam notes. "That can lead to lower back pain, hip problems and so on"

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Source: News-Medical

Source: News-Medical

Traditional robotic prostheses have focused exclusively on replacing the movement of the missing joint, with software governing prosthetic knees concentrating solely on optimizing knee joint movement. This new algorithm breaks that limitation by ensuring both proper prosthetic function and natural body movement patterns that mirror pre-amputation mobility

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Advanced Learning Technology Integration

The breakthrough builds upon previous research where the team developed an intelligent "tuning" system for powered prosthetic knees using reinforcement learning. That earlier system dramatically reduced the time needed for prosthetic adjustment from hours with a trained clinician to just minutes, marking the first prosthetic tuning system to rely solely on reinforcement learning

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Helen Huang, senior author and Jackson Family Distinguished Professor of Biomedical Engineering, explains the evolution: "That work achieved optimal prosthesis control via a reinforcement learning algorithm. However, it focused solely on the behavior of the prosthetics. In this new work, we've built on that earlier system with a new algorithm that uses inverse reinforcement learning to account for the movement of both the prosthetic and the person using it"

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Source: Futurity

Source: Futurity

Technical Implementation and Testing

The system incorporates sophisticated sensor technology to monitor multiple movement parameters simultaneously. The robotic prosthetic knee includes built-in sensors to track its movement, while additional sensors connected to the user monitor hip movement during proof-of-concept testing. "The new algorithm essentially accounts for the movement of both joints - the prosthetic knee and the user's hip - and adjusts the behavior of the prosthetic knee to help the user exhibit their natural hip movement," Nalam explains

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The research team conducted comprehensive testing with five participants, including two individuals with above-knee amputations and three without amputations. Participants performed various tasks using robotic prosthetic knees under two different conditions: first with software incorporating only the earlier knee control system, then with the new combined algorithm approach

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Promising Results and Future Applications

The testing yielded encouraging results across all participants. "The main finding here was that incorporating the new algorithm improved hip range of motion for all five subjects, which demonstrates that it can make a difference for hip health," Nalam reports. Additionally, the algorithm produced measurable improvements in gait patterns, with users taking longer steps that indicated more natural movement

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The potential applications extend beyond hip movement optimization. "While we focused on hip movement for this study, the algorithm could also be used to help users with trunk movement, walking symmetrically or other aspects of human performance," Huang notes, suggesting broader therapeutic possibilities

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The research team is now pursuing clinical partnerships to evaluate long-term user well-being impacts and exploring collaboration opportunities with prosthetic manufacturers to integrate this technology into commercial software platforms.

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