2021
DOI: 10.3389/fnhum.2021.720699
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Impact of the Marker Set Configuration on the Accuracy of Gait Event Detection in Healthy and Pathological Subjects

Abstract: For interpreting outcomes of clinical gait analysis, an accurate estimation of gait events, such as initial contact (IC) and toe-off (TO), is essential. Numerous algorithms to automatically identify timing of gait events have been developed based on various marker set configurations as input. However, a systematic overview of the effect of the marker selection on the accuracy of estimating gait event timing is lacking. Therefore, we aim to evaluate (1) if the marker selection influences the accuracy of kinemat… Show more

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Cited by 5 publications
(11 citation statements)
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“…On the same test-set, the best performing kinematic algorithm was capable of identifying 95% of IC and events within 33ms and 22ms [4], whereas our approach these events to within 20ms and 33ms, respectively (Fig 4). When optimised towards specific gait patterns, 95% of the events were detected within 7ms and 12ms for IC and TO respectively [22]. While our approach showed varying performance per subgroup, the kinematic algorithms only showed performance differences when optimised on a particular subgroup.…”
Section: How Does the Performance Compare To The Manual Annotation Of...mentioning
confidence: 87%
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“…On the same test-set, the best performing kinematic algorithm was capable of identifying 95% of IC and events within 33ms and 22ms [4], whereas our approach these events to within 20ms and 33ms, respectively (Fig 4). When optimised towards specific gait patterns, 95% of the events were detected within 7ms and 12ms for IC and TO respectively [22]. While our approach showed varying performance per subgroup, the kinematic algorithms only showed performance differences when optimised on a particular subgroup.…”
Section: How Does the Performance Compare To The Manual Annotation Of...mentioning
confidence: 87%
“…The high variability in heel-toe progression known to be present in MF, could be the reason for the MF group showing the worst performance for both IC and TO detection. Additionally, our dataset only classified MF indirectly-while, HS and FF were clearly defined based on their dorsi-flexion angles during IC (section Methods), all cases which did not correspond to the criteria for HS or FF were classified as MF [22]. The fact that we chose subgroups based on IC could also be one reason why the TO detection showed a higher inter-group variability than the IC detection.…”
Section: Plos Onementioning
confidence: 99%
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“…We used custom MATLAB scripts for all data processing. We computed heel strike events for each foot as the time points when the ground reaction forces reached 20 N, similar to [27,28]. For each gait cycle, we calculated the step duration as the time difference between heel strikes of opposing feet.…”
Section: Data Processingmentioning
confidence: 99%