sift:gait_measures:global_gait_asymmetry
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sift:gait_measures:global_gait_asymmetry [2024/11/26 20:08] – wikisysop | sift:gait_measures:global_gait_asymmetry [2024/12/17 20:22] (current) – [Mathematics of LGGA] wikisysop | ||
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The LGGA was developed to improve gait symmetry retraining methods and tests the effectiveness of classify induced asymmetry [1]. The original definition of the LGGA uses the three dimensional joint angles that are time normalized to left and right gait cycles, including the hip, knee, ankle, trunk wrt pelvis, and the pelvis wrt the lab [1]. The implementation of the LGGA in Sift follows the mathematical principals of Cabral et. al., however, allows users to specify the kinematic and kinetic measures to include. | The LGGA was developed to improve gait symmetry retraining methods and tests the effectiveness of classify induced asymmetry [1]. The original definition of the LGGA uses the three dimensional joint angles that are time normalized to left and right gait cycles, including the hip, knee, ankle, trunk wrt pelvis, and the pelvis wrt the lab [1]. The implementation of the LGGA in Sift follows the mathematical principals of Cabral et. al., however, allows users to specify the kinematic and kinetic measures to include. | ||
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==== Mathematics of LGGA ==== | ==== Mathematics of LGGA ==== | ||
- | the following equation considers xl and xr to be individual points of the left and right matching signal components. | + | The following equation considers xl and xr to be individual points of the left and right matching signal components. |
All signals are time normalized to 101 points. | All signals are time normalized to 101 points. | ||
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{{: | {{: | ||
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==== GGA in Sift ==== | ==== GGA in Sift ==== | ||
Here we will walk through an example of how to calculate GGA values on a dataset in Sift, and plot and export our results. This tutorial is a general example, and should be applicable to any gait data that has [[Visual3D: | Here we will walk through an example of how to calculate GGA values on a dataset in Sift, and plot and export our results. This tutorial is a general example, and should be applicable to any gait data that has [[Visual3D: | ||
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=== Load Library === | === Load Library === | ||
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=== View and Export Results === | === View and Export Results === | ||
- | {{ : | + | {{ : |
We can view the LGGA results on the Sift [[Sift: | We can view the LGGA results on the Sift [[Sift: | ||
- | Here we have selected the LGGA1 group and all subgroups. | + | On the figure below, |
- | Let's say we want to compare the asymmetry values between subjects, which are represented by their independent CMZ workspaces. | + | Let's say we want to compare the asymmetry values between subjects, which are represented by their independent CMZ workspaces. |
To export figures, we can right click on the selected plot and hit [[Sift: | To export figures, we can right click on the selected plot and hit [[Sift: | ||
- | To export our metric data results, we can select the [[Sift: | + | To export our metric data results, we can select the [[Sift: |
- | {{: | + | {{: |
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==== References ==== | ==== References ==== |
sift/gait_measures/global_gait_asymmetry.1732651716.txt.gz · Last modified: 2024/11/26 20:08 by wikisysop