Vinod, Sharma and Samriti, Mahajan and Mohd Hamza, Zaki and Shailza Nimmi, Guria and Swathy, K. and Madhuri, Sharma (2024) AI-Guided Rehabilitation for Stroke Patients. treatment efficiency. Researchers have explored a range of AI2024 4th International Conference on Advancement in Electronics & Communication Engineering (AECE).
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Abstract
Tailoring interventions to meet the unique needs of patients is crucial for optimizing recovery in stroke rehabilitation. One potential avenue for customizing therapy for each individual is by integrating artificial intelligence (AI) into rehabilitation robotics. This abstract explores the integration of AI algorithms into rehabilitation robotics systems, with a focus on their capacity to adapt workouts based on real-time patient data and feedback loops. By leveraging machine learning techniques, these systems can assess a patient’s progress, adjust exercise parameters, and provide personalized guidance, ultimately enhancing patient engagement and effectiveness. AI also facilitates precise adjustments to training intensity and difficulty by analyzing biomechanical data. To maximize the outcomes of stroke rehabilitation, such as improved motor function, increased independence, and enhanced quality of life,
this abstract discusses the potential benefits of AI-guided
rehabilitation robotics. It also addresses concerns such as
algorithm transparency, data security, and integration with
clinical practices. Overall, the incorporation of AI into
rehabilitation robotics represents a groundbreaking approach
to stroke recovery, enabling tailored and adaptable
interventions that support patients on their journey towards
recovery. The integration of AI empowers robotic rehabilitation
systems to make informed decisions based on data, providing
valuable insights into patient progress, trends, and challenges through continuous data collection and analysis. With this information, clinicians can select exercises, adjust exercise intensity, and develop treatment plans tailored to individual needs. AI-guided rehabilitation robotics also offer stroke patients adaptable assistive technologies to aid in daily tasks, such as robotic exoskeletons or smart prostheses, which automatically adjust to optimize comfort and functionality based on user preferences, habits, and constraints. By continuously adapting and learning, AI- driven assistive devices
enhance quality of life and promote independence for
individuals post-stroke.
| Item Type: | Article |
|---|---|
| Subjects: | Biomedical Engineering > Biomedical Signal & Image Processing |
| Divisions: | Engineering > Biomedical Engineering |
| Depositing User: | Unnamed user with email techsupport@mosys.org |
| Date Deposited: | 04 Feb 2026 11:34 |
| Last Modified: | 04 Feb 2026 11:34 |
| URI: | https://ir.dsce.ac.in/id/eprint/120 |
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