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Machine learning algorithms based on signals from a single wearable inertial sensor can detect surface- and age-related differences in walking. | LitMetric

AI Article Synopsis

  • The study aimed to determine if a machine learning algorithm could detect differences in walking related to surface types and age using data from inertial motion units (IMUs) worn by participants.
  • Seventeen older adults (average age 71.5) and eighteen younger adults (average age 27.0) walked on both flat and uneven surfaces while wearing an IMU, with data processed using a deep learning network.
  • The fully trained models showed high accuracy in distinguishing between surface and age groups, suggesting that this technology could be useful for identifying fall risks in individuals.

Article Abstract

The aim of this study was to investigate if a machine learning algorithm utilizing triaxial accelerometer, gyroscope, and magnetometer data from an inertial motion unit (IMU) could detect surface- and age-related differences in walking. Seventeen older (71.5 ± 4.2 years) and eighteen young (27.0 ± 4.7 years) healthy adults walked over flat and uneven brick surfaces wearing an inertial measurement unit (IMU) over the L5 vertebra. IMU data were binned into smaller data segments using 4-s sliding windows with 1-s step lengths. Ninety percent of the data were used as training inputs and the remaining ten percent were saved for testing. A deep learning network with long short-term memory units was used for training (fully supervised), prediction, and implementation. Four models were trained using the following inputs: all nine channels from every sensor in the IMU (fully trained model), accelerometer signals alone, gyroscope signals alone, and magnetometer signals alone. The fully trained models for surface and age outperformed all other models (area under the receiver operator curve, AUC = 0.97 and 0.96, respectively; p ≤ .045). The fully trained models for surface and age had high accuracy (96.3, 94.7%), precision (96.4, 95.2%), recall (96.3, 94.7%), and f1-score (96.3, 94.6%). These results demonstrate that processing the signals of a single IMU device with machine-learning algorithms enables the detection of surface conditions and age-group status from an individual's walking behavior which, with further learning, may be utilized to facilitate identifying and intervening on fall risk.

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Source
http://dx.doi.org/10.1016/j.jbiomech.2018.01.005DOI Listing

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