000 02406 am a22002893u 4500
042 _adc
100 1 0 _aFortune, Emma
_eauthor
_9495
700 1 0 _aCloud-Biebl, Beth A.
_eauthor
_9496
700 1 0 _aMadansingh, Stefan I.
_eauthor
_9497
700 1 0 _aNgufor, Che G.
_eauthor
_9498
700 1 0 _aVan Straaten, Meegan G.
_eauthor
700 1 0 _aGoodwin, Brianna M.
_eauthor
_9500
700 1 0 _aMurphree, Dennis H.
_eauthor
_9501
700 1 0 _aZhao, Kristin D.
_eauthor
700 1 0 _aMorrow, Melissa M.
_eauthor
245 0 0 _aEstimation of Manual Wheelchair-Based Activities in the Free-Living Environment using a Neural Network Model with Inertial Body-Worn Sensors
260 _c2022-02.
500 _a/pmc/articles/PMC6980511/
500 _a/pubmed/31353200
520 _aShoulder pain is common in manual wheelchair (MWC) users. Overuse is thought to be a major cause, but little is known about exposure to activities of daily living (ADLs). The study goal was to develop a method to estimate three conditions in the field: (1) non-propulsion activity, (2) MWC propulsion, and (3) static time using an inertial measurement unit (IMU). Upper arm IMU data were collected as ten MWC users performed lab-based MWC-related ADLs. A neural network model was developed to classify data as non-propulsion activity, propulsion, or static, and validated for the lab-based data collection by video comparison. Six of the participants' free-living IMU data were collected and the lab-based model was applied to estimate daily non-propulsion activity, propulsion, and static time. The neural network model yielded lab-based validity measures ≥0.87 for differentiating non-propulsion activity, propulsion, and static time. A quasi-validation of one participant's field-based data yielded validity measures ≥0.66 for identifying propulsion. Participants' estimated mean daily non-propulsion activity, propulsion, and static time ranged from 158-409, 13-25, and 367-609 mins, respectively. The preliminary results suggest the model may be able to accurately identify MWC users' field-based activities. The inclusion of field-based IMU data in the model could further improve field-based classification.
540 _a
546 _aen
690 _aArticle
655 7 _aText
_2local
786 0 _nJ Electromyogr Kinesiol
856 4 1 _uhttp://dx.doi.org/10.1016/j.jelekin.2019.07.007
_zConnect to this object online.
999 _c1320
_d1320