| Literature DB >> 32300586 |
Joris De Roeck1, J Van Houcke1, D Almeida2, P Galibarov3, L De Roeck1, Emmanuel A Audenaert1,4,5,6.
Abstract
PURPOSE: Modern statistics and higher computational power have opened novel possibilities to complex data analysis. While gait has been the utmost described motion in quantitative human motion analysis, descriptions of more challenging movements like the squat or lunge are currently lacking in the literature. The hip and knee joints are exposed to high forces and cause high morbidity and costs. Pre-surgical kinetic data acquisition on a patient-specific anatomy is also scarce in the literature. Studying the normal inter-patient kinetic variability may lead to other comparable studies to initiate more personalized therapies within the orthopedics.Entities:
Keywords: inverse dynamics; lower limb kinetics; musculoskeletal model; principal component analysis; validation analysis
Year: 2020 PMID: 32300586 PMCID: PMC7142215 DOI: 10.3389/fbioe.2020.00233
Source DB: PubMed Journal: Front Bioeng Biotechnol ISSN: 2296-4185
Demographic and anthropometric characteristics of the study population.
| Demographic descriptor | Mean (95% CI*) | Normal values |
| Height (cm) | 181.79 (180.08–183.51) | Not applicable |
| Weight (kg) | 71.75 (69.63–73.88) | Not applicable |
| Body mass index (kg/m2) | 21.70 (21.16–22.23) | 18.5–25 ( |
| Sport activity (hours a week) | 3.40 (2.76–4.03) | Not applicable |
| Center-edge angle (°) | 28.41 (27.19–29.63) | 25–39° ( |
| Alpha angle (°) | 64.61 (62.38–66.84) | <55° ( |
| Centrum-collum-diaphyseal angle or neck-shaft angle (°) | 129.24 (127.99–130.49) | 125–135° ( |
| Femoral anteversion angle (°) | 9.40 (7.30–11.49) | <15° ( |
FIGURE 1Overview of data input for the motion capture musculoskeletal simulation model. (A) Motion is performed when standing on two force plates. Motion capture data synchronized with ground reaction forces are exported as .c3d file. (B) Twenty-eight reflective markers are placed on anatomical bony landmarks. A MRI scan of the full lower limb is performed. Segmentation of pelvis, thigh, and shank with corresponding positions of marker landscape. (C) Motion capture squat model. Anybody squat (D) and lunge (E) model.
FIGURE 3Relation between the kinetic waveform simulation output and the squat progress for each individual sample in gray. Mean values of the measurements in green ±2 standard deviations of the first mode in red and blue. The first mode accounts for 33.80% of the inter-subject population variance. Note the different y axis calibrations.
FIGURE 8Mean values of joint reaction forces during lunging in green ±2 standard deviations of the third mode in red and blue. The third mode accounts for 10.46% of the inter-subject population variance.
FIGURE 2Scree plot with the cumulative variance of the modes (or principal components) in the lunge (orange) and squat (purple) kinetic model.
FIGURE 5Mean values of joint reaction forces during deep squatting in green ±2 standard deviations of the third mode in red and blue. The third mode accounts for 11.88% of the inter-subject population variance.
FIGURE 6Mean values of joint reaction forces during lunging in green ±2 standard deviations of the first mode in red and blue. The first mode accounts for 40.87% of the inter-subject population variance.
Validation analyses of the squat and lunge statistical kinetic model. We consider squat and lunge models that capture 80, 90, 95, and 98% of inter-individual population variance.
| Validation summary | Squat model | Lunge model | ||||||
| % of inter-variability in the population | 80% | 90% | 95% | 98% | 80% | 90% | 95% | 98% |
| Model accuracy RMSE (median ±IQR**) (BW) | 0.0149 ±0.0122 | 0.0107 ±0.0087 | 0.0075 ±0.0064 | 0.0054 ±0.0048 | 0.0248 ±0.0210 | 0.0162 ±0.0167 | 0.0132 ±0.0126 | 0.0082 ±0.0083 |
| Dimensionality* | 6 | 10 | 14 | 19 | 5 | 9 | 13 | 17 |
| Model specificity RMSE (median ±IQR**) (BW) | 0.1582±0.0943 | 0.1581±0.0948 | 0.1583±0.0946 | 0.1584±0.0943 | 0.1291±0.0831 | 0.1310±0.0815 | 0.1314±0.0809 | 0.1320±0.0803 |
FIGURE 9RMSE for the original squat training data versus reconstructed squat data with an increasing number of principal components on the x axis.
Choosing the optimal amount of principal components for the squat kinetic datasets.
| PC | Eigenvalue | Percentage | Cumulative | Rank of | Equality |
| of variance | variance | roots | of roots | ||
| 1 | 204.85 | 33.80 | 33.80 | 0.001 | 0.001 |
| 2 | 85.11 | 14.04 | 47.85 | 0.001 | 0.001 |
| 3 | 71.98 | 11.88 | 59.73 | 0.001 | 0.001 |
| 4 | 58.21 | 9.61 | 69.33 | 0.001 | 0.001 |
| 5 | 46.81 | 7.73 | 77.06 | 0.001 | 0.001 |
| 6 | 31.26 | 5.16 | 82.22 | 0.001 | 0.001 |
| 7 | 18.13 | 2.99 | 85.21 | 0.001* | 0.001 |
| 8 | 15.18 | 2.50 | 87.71 | 1 | 0.001 |
| 9 | 13.82 | 2.28 | 89.99 | 1 | 0.001 |
| 10 | 9.55 | 1.58 | 91.57 | 1 | 0.001 |
| 11 | 8.38 | 1.38 | 92.95 | 1 | 0.001 |
| 12 | 6.37 | 1.05 | 94.00 | 1 | 0.001 |
| 13 | 5.57 | 0.92 | 94.92 | 1 | 0.001 |
| 14 | 4.65 | 0.77 | 95.69 | 1 | 0.005* |
| 15 | 3.97 | 0.66 | 96.35 | 1 | 0.078 |
FIGURE 10Accuracy evolution of kinetic lunge data with log–log scaling (boxplot with root-mean-square error of the reconstructed data with 95% variance versus the original training data) for different levels of prior knowledge expressed as amounts of training data in a kinetic model. The green horizontal line indicates the in-sample target accuracy.