2017
DOI: 10.1186/s12984-017-0241-2
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Auto detection and segmentation of daily living activities during a Timed Up and Go task in people with Parkinson’s disease using multiple inertial sensors

Abstract: BackgroundWearable sensors have the potential to provide clinicians with access to motor performance of people with movement disorder as they undergo intervention. However, sensor data often have to be manually classified and segmented before they can be processed into clinical metrics. This process can be time consuming. We recently proposed detection and segmentation algorithms based on peak detection using Inertial Measurement Units (IMUs) to automatically identify and isolate common activities during daily… Show more

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Cited by 53 publications
(65 citation statements)
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“…Data collected from inertial measurement units (IMUs) worn by patients with PD were used to assess motor symptoms including tremor, bradykinesia, and freezing of gait, as well as drug-induced dyskinesia [29]. Using this inertial sensor technology, algorithms were developed that can detect and segment movements in patients performing a Timed Up and Go task [30] or carrying out activities of daily living in a simulated living space [31]. IMU data were also used to identify a turning signature that discriminates between older-age adults and older-age patients with PD, as well as between patients in ON and OFF medication states [32].…”
Section: Recent Studies and Trials Facilitated By The Quebec Parkinsomentioning
confidence: 99%
“…Data collected from inertial measurement units (IMUs) worn by patients with PD were used to assess motor symptoms including tremor, bradykinesia, and freezing of gait, as well as drug-induced dyskinesia [29]. Using this inertial sensor technology, algorithms were developed that can detect and segment movements in patients performing a Timed Up and Go task [30] or carrying out activities of daily living in a simulated living space [31]. IMU data were also used to identify a turning signature that discriminates between older-age adults and older-age patients with PD, as well as between patients in ON and OFF medication states [32].…”
Section: Recent Studies and Trials Facilitated By The Quebec Parkinsomentioning
confidence: 99%
“…Authors of these studies set up algorithms that allow, from previous annotated observations of participants performing activities (labeled training data), to determine which type of activity is performed during an analysis of a signal section (see Section 5 for more details on machine learning procedures for activity classification). Some of these studies point towards the study of machine learning systems [ 62 , 63 , 64 ], while others focus on other factors such as sensor implementation [ 65 ]. This is the group of aims that contains the greatest number of studies (28 papers).…”
Section: Aims Of the Studiesmentioning
confidence: 99%
“…Some clinical trials focus on healthy participants, some compare the patients included with healthy participants [ 39 , 42 , 71 , 72 ], while others dwell specifically upon cohorts with a medical condition. Perriot et al [ 7 ] intended to improve posture detection in COPD participants and Nguyen et al [ 63 ] focused on activity classification in patients with PD. In such work, the aim is either to compare the results obtained on certain patients with specific pathologies to control patients or to evaluate the impact that changes in instrumentation (position of sensors, etc.)…”
Section: Aims Of the Studiesmentioning
confidence: 99%
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“…Based on previous literature, it is unclear what low-pass filter should be used for the gyroscope and magnetometer data. Previous studies that examined turning have used low-pass filters between 0.7-1.5 Hz (18,51,52). Thus, for the current study, the data were filtered with a second-order low-pass Butterworth filter at various frequencies (0.25, 0.50, 0.75, 1.00, 1.25, 1.50, 1.75, 2.00 Hz).…”
Section: Turn Detectionmentioning
confidence: 99%