Recent advances in wearable sensor technology and machine learning (ML) have allowed for the seamless and objective study of human motion in clinical applications, including Parkinson’s disease and stroke. Using ML to identify salient patterns in sensor data has the potential for widespread application in neurological disorders, so understanding how to develop this approach for one’s area of inquiry is vital. We previously proposed an approach that combined wearable inertial measurement units (IMUs) and ML to classify motions made by stroke patients. However, our approach had computational and practical limitations. We address these limitations here in the form of a primer, presenting how to optimize a sensor-ML approach for clinical implem...
In this paper, we present a deep learning framework ‘Rehab-Net’ for effectively classifying three up...
In this paper, we present a deep learning framework 'Rehab-Net' for effectively classifying three up...
Stroke rehabilitation seeks to accelerate motor recovery by training functional activities, but may ...
In this paper we present a systematic exploration for determining the appropriate type of inertial s...
Quantitative evaluation of motor function is of great demand for monitoring clinical outcome of appl...
Wearable sensors have been beneficial in assessing motor impairment after stroke. Individuals who ha...
Background: Arm use metrics derived from wrist-mounted movement sensors are widely used to quantify ...
We present a low-complexity framework for classifying elementary arm movements (reach retrieve, lift...
Neurorehabilitation is progressively shifting from purely in-clinic treatment to therapy that is pro...
We present a low-complexity framework for classifying elementary arm-movements (reach-retrieve, lift...
Purpose. Body worn inertial sensors could be used to assess rehabilitation of patients with impaired...
Motion is a fundamental component of our everyday life. Population ageing, in place especially in th...
Background: Stroke leads to motor impairment which reduces physical activity, negatively affects soc...
Assurance of outcome is critical for patients that are afflicted with neurological disorders (for ex...
Background: Arm use metrics derived from wrist-mounted movement sensors are widely used to quantify ...
In this paper, we present a deep learning framework ‘Rehab-Net’ for effectively classifying three up...
In this paper, we present a deep learning framework 'Rehab-Net' for effectively classifying three up...
Stroke rehabilitation seeks to accelerate motor recovery by training functional activities, but may ...
In this paper we present a systematic exploration for determining the appropriate type of inertial s...
Quantitative evaluation of motor function is of great demand for monitoring clinical outcome of appl...
Wearable sensors have been beneficial in assessing motor impairment after stroke. Individuals who ha...
Background: Arm use metrics derived from wrist-mounted movement sensors are widely used to quantify ...
We present a low-complexity framework for classifying elementary arm movements (reach retrieve, lift...
Neurorehabilitation is progressively shifting from purely in-clinic treatment to therapy that is pro...
We present a low-complexity framework for classifying elementary arm-movements (reach-retrieve, lift...
Purpose. Body worn inertial sensors could be used to assess rehabilitation of patients with impaired...
Motion is a fundamental component of our everyday life. Population ageing, in place especially in th...
Background: Stroke leads to motor impairment which reduces physical activity, negatively affects soc...
Assurance of outcome is critical for patients that are afflicted with neurological disorders (for ex...
Background: Arm use metrics derived from wrist-mounted movement sensors are widely used to quantify ...
In this paper, we present a deep learning framework ‘Rehab-Net’ for effectively classifying three up...
In this paper, we present a deep learning framework 'Rehab-Net' for effectively classifying three up...
Stroke rehabilitation seeks to accelerate motor recovery by training functional activities, but may ...