Publications by authors named "Aisling Kelliher"

Article Synopsis
  • The study developed a Hierarchical Bayesian Model (HBM) to quantify the relationship between movement quality and functionality in stroke survivors undergoing upper extremity therapy.
  • Clinicians rated videos of 478 stroke patients performing therapy tasks, and the HBM was built to analyze the effectiveness of these movements in relation to their functional abilities.
  • Results showed that the HBM resolved discrepancies in clinician ratings 95% of the time and aligned kinematic data with therapy tasks in over 90% of cases, indicating its potential for automated therapy assessments across various neurorehabilitation settings.
View Article and Find Full Text PDF

The application of machine learning (ML) and artificial intelligence (AI) in healthcare domains has received much attention in recent years, yet significant questions remain about how these new tools integrate into frontline user workflow, and how their design will impact implementation. Lack of acceptance among clinicians is a major barrier to the translation of healthcare innovations into clinical practice. In this systematic review, we examine when and how clinicians are consulted about their needs and desires for clinical AI tools.

View Article and Find Full Text PDF

For upper extremity rehabilitation, quantitative measurements of a person's capabilities during activities of daily living could provide useful information for therapists, including in telemedicine scenarios. Specifically, measurements of a person's upper body kinematics could give information about which arm motions or movement features are in need of additional therapy, and their location within the home could give context to these motions. To that end, we present a new algorithm for identifying a person's location in a region of interest based on a Bluetooth received signal strength (RSS) and present an experimental evaluation of this and a different Bluetooth RSS-based localization algorithm via fingerprinting.

View Article and Find Full Text PDF

We are developing a system for long term Semi-Automated Rehabilitation At the Home (SARAH) that relies on low-cost and unobtrusive video-based sensing. We present a cyber-human methodology used by the SARAH system for automated assessment of upper extremity stroke rehabilitation at the home. We propose a hierarchical model for automatically segmenting stroke survivor's movements and generating training task performance assessment scores during rehabilitation.

View Article and Find Full Text PDF

We introduce a novel in-home hand rehabilitation system for monitoring hand motions and assessing grip forces of stroke patients. The overall system is composed of a sensing device and a computer vision system. The sensing device is a lightweight cylindrical object for easy grip and manipulation, which is covered by a passive sensing layer called "Smart Skin.

View Article and Find Full Text PDF