| Literature DB >> 31217817 |
Mariem Abid1,2, Neila Mezghani1,2, Amar Mitiche3.
Abstract
BACKGROUND: The purpose of this study is to review the current literature on knee joint biomechanical gait data analysis for knee pathology classification. The review is prefaced by a presentation of the prerequisite knee joint biomechanics background and a description of biomechanical gait pattern recognition as a diagnostic tool. It is postfaced by discussions that highlight the current research findings and future directions.Entities:
Year: 2019 PMID: 31217817 PMCID: PMC6536985 DOI: 10.1155/2019/7472039
Source DB: PubMed Journal: Appl Bionics Biomech ISSN: 1176-2322 Impact factor: 1.781
Figure 1The knee joint coordinate system as defined by Grood and Suntay.
Figure 2Roadmap of this survey.
Figure 3Flow of article inclusion/exclusion throughout the review process.
Knee joint biomechanical gait data classification-related studies.
| Study | Pathology | Population | Biomechanical variables | Data acquisition | Feature Ext/select | Classification | Acc |
|---|---|---|---|---|---|---|---|
| [ | ACL | 20 ACL | EMG | PDP 11/23 minicomputer | Fourier transform | K-means | — |
| [ | OA | 50 OA | Spatiotemporal data | Optoelectronic measurement system | Global rep. | LDA | 94% |
| [ | OA | 35 OA | Kinematics | 3D knee analyzer | Local rep. | ANOVA | — |
| [ | OA | 12 OA | Acceleration data | Vicon motion analysis system | Local rep. | LDA | 87.9% |
| [ | OA | 15 OA | Spatiotemporal data | Optoelectronic measurement system | Local rep. | DST | 96.7% |
| [ | OA | 20 OA | Spatiotemporal data | Optoelectronic measurement system | Local rep. | DST | — |
| [ | OA | 110OA | Spatiotemporal data | Vicon motion analysis system | — | MLP | 98.5% |
| [ | OA | 50OA | Kinematics | Optoelectronic measurement system | Global rep. | LDA | 92% |
| [ | PFPS-OA | 13PFPS | Kinetics | Kistler force platform | Local rep. | SVM | 85-92% |
| [ | OA | 11 OA | Spatiotemporal data | Vicon motion analysis system | Hill-climbing algorithm | SVM | 94.2% |
| [ | OA | 20 OA | Kinematics | Optoelectronic measurement system | Global rep. | DST | 97.62% |
| [ | OA | 26OA | Kinetics | Kistler force platforms | Global representation | NN | 91% |
| [ | OA | 26 OA | Kinetics | Kistler force platforms integrated to an ADAL treadmill | Global rep. | NNC | 90% |
| [ | OA | 11 OA | Spatiotemporal data | Vicon motion analysis system | Hill-climbing algorithm | SVM | 88.89% |
| [ | OA | 24 OA | Kinetics | Bertec platform | Wavelet packet based on the Fuz-Coc | DT-SVM | 93.44% |
| [ | OA | 30 OA | Kinematics | KneeKG | Local rep. | SVD | 77.27% |
| [ | ACL | 29 ACL | Kinematics | ADAL treadmill | Global rep. | NNC | 83.2% |
| [ | OA | 30 OA | Kinematics | KneeKG | Global rep. | SVD | 93.1% |
| [ | ACL-R | 6 ACL-R | Kinematics | Four cameras motion analysis system (Innovision) | Global rep. | LR | 93.75% |
| [ | OA | 18 KS | Kinematics | KneeKG | Local rep. | Student's | — |
| [ | AS | 111 AS | Kinematics | KneeKG | Global rep. | Discriminant model based on PCs' sign | — |
| [ | OA | 2,900 OA | Spatiotemporal data | Computerized walking mat | — | CART | 89.5%–90.8% |
| [ | OA | 2,911 OA | Spatiotemporal data | Computerized walking mat | — | CART | 89.5%–90.8% |
| [ | OA | 47 OA | Kinetics | Kistler force plates | Probabilistic PCA | Bayes classifier | 82.62% |
| [ | OA | 25 KS | Kinematics | KneeKG | — | Bayes classifier | — |
| [ | OA | 44 S | Kinematics | KneeKG | Local rep. | CART | 84.7% |
| [ | OA | 100 OA | Kinematics | KneeKG | Local rep. | RTs | 88% |
| [ | ACL | 7 ACL | Kinematics | Vicon motion analysis system | PCA | SVM | 100% |
| [ | OA | 100 OA | Kinematics | KneeKG | Local rep. | RTs | 85% |
| [ | AS | 165 AS | Kinematics | KneeKG | Isometric mapping | DBSCAN algorithm | — |
| [ | OA | 63 OA | Kinematics | KneeKG | WT | Kohonen neural network | 90.47% |
Figure 4The waveform of the knee flexion angle for a normal subject is shown normalized to 100% of the gait cycle.
Figure 5An illustration of gait phases.
Figure 6Illustration of high dimensionality and variability. The graph shows the graph of a sample of 160 distinct asymptomatic abduction/adduction waveforms, each composed of 100 measurement points.
Figure 7Example of representation of points of interest on kinematic waveforms.