| Literature DB >> 35336346 |
Robert Karpiński1, Przemysław Krakowski2,3, Józef Jonak1, Anna Machrowska1, Marcin Maciejewski4, Adam Nogalski2.
Abstract
Osteoarthritis (OA) is a chronic, progressive disease which has over 300 million cases each year. Some of the main symptoms of OA are pain, restriction of joint motion and stiffness of the joint. Early diagnosis and treatment can prolong painless joint function. Vibroarthrography (VAG) is a cheap, reproducible, non-invasive and easy-to-use tool which can be implemented in the diagnostic route. The aim of this study was to establish diagnostic accuracy and to identify the most accurate signal processing method for the detection of OA in knee joints. In this study, we have enrolled a total of 67 patients, 34 in a study group and 33 in a control group. All patients in the study group were referred for surgical treatment due to intraarticular lesions, and the control group consisted of healthy individuals without knee symptoms. Cartilage status was assessed during surgery according to the International Cartilage Repair Society (ICRS) and vibroarthrography was performed one day prior to surgery in the study group. Vibroarthrography was performed in an open and closed kinematic chain for the involved knees in the study and control group. Signals were acquired by two sensors placed on the medial and lateral joint line. Using the neighbourhood component analysis (NCA) algorithm, the selection of optimal signal measures was performed. Classification using artificial neural networks was performed for three variants: I-open kinetic chain, II-closed kinetic chain, and III-open and closed kinetic chain. Vibroarthrography showed high diagnostic accuracy in determining healthy cartilage from cartilage lesions, and the number of repetitions during examination can be reduced only to closed kinematic chain.Entities:
Keywords: RBF; artificial neural network; femoral-tibial joint; kinetic chain; multilevel perceptron; osteoarthritis; vibroacoustic signal
Mesh:
Year: 2022 PMID: 35336346 PMCID: PMC8950358 DOI: 10.3390/s22062176
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Characteristics of study participants.
| Study Group | N | Males/ | Age | Heigh | Weight | BMI | Tegner-Lyshom Score |
|---|---|---|---|---|---|---|---|
| Healthy control (HC) | 33 | 9/24 | 24.10 ± 5.56 | 1.71 ± 0.09 | 65.16 ± 15.10 | 21.95 ± 3.09 | 100 ± 0.0 |
| Osteoarthrisis (OA) | 34 | 15/19 | 56.15 ± 12.99 | 1.69 ± 0.09 | 89.08 ± 14.30 | 31.19 ± 4.83 | 38.59 ± 12.96 |
Figure 1Arthroscopic view of healthy articular cartilage (a) and grade IV (b) lesion in the tibio-femoral joint.
Figure 2Intraoperative view prior (a) and after resection (b) of articular surfaces of the tibio-femoral joint.
Figure 3Sensor placement on the knee area and general measurement concept.
Figure 4Main modules of the measurement system.
Figure 5Leg movement in the open (a) and closed (b) kinematic chain.
Figure 6Examples of normalized signals for healthy and injured knees in the time and frequency domain for OKC and CKC recorded with a sensor placed on the lateral side. Respectively: (a) HC OKC, (b) OA OKC, (c) HC CKC and (d) OA CKC.
Figure 7Graphical visualization of the applied neural network.
Figure 8Selection of optimal features for variant I (OKC).
Figure 9Selection of optimal features for variant II (CKC).
Figure 10Selection of optimal features for variant III (OKC and CKC).
Quality of the MLP and RBF neural network for variant I (open kinetic chain), II (close kinetic chain) and III (open and close kinetic chain).
| Variant | Network | Quality | Quality | Quality | Learning | Error | Activation | Activation |
|---|---|---|---|---|---|---|---|---|
| I | MLP 13-9-2 | 96.32 | 100.00 | 96.43 | BFGS 45 | SOS | Logistic | Exponential |
| RBF 13-43-2 | 89.71 | 96.43 | 96.43 | RBFT | Entropy | Gauss | Softmax | |
| II | MLP 15-12-2 | 94.85 | 92.86 | 92.86 | BFGS 14 | Entropy | Linear | Softmax |
| RBF 15-6-2 | 91.91 | 100.00 | 89.29 | RBFT | SOS | Gauss | Linear | |
| III | MLP 15-24-2 | 93.70 | 94.74 | 85.96 | BFGS 13 | SOS | Linear | Linear |
| RBF 15-5-2 | 89.63 | 89.47 | 91.23 | RBFT | Entropy | Gauss | Softmax |
Summary of classification accuracy of MLP and RBF networks for variant I, II and III.
| Network Name | HC | OA | Total | |
|---|---|---|---|---|
| MLP 13-9-2 | Total | 89.00 | 47.00 | 136.00 |
| Correct | 87.00 | 44.00 | 131.00 | |
| Incorrect | 2.00 | 3.00 | 5.00 | |
| Correct (%) | 97.75 | 93.62 | 96.32 | |
| Incorrect (%) | 2.25 | 6.38 | 3.68 | |
| RBF 13-43-2 | Total | 89.00 | 47.00 | 136.00 |
| Correct | 83.00 | 39.00 | 122.00 | |
| Incorrect | 6.00 | 8.00 | 14.00 | |
| Correct (%) | 93.26 | 82.98 | 89.71 | |
| Incorrect (%) | 6.74 | 17.02 | 10.29 | |
| MLP 15-12-2 | Total | 89.00 | 47.00 | 136.00 |
| Correct | 86.00 | 43.00 | 129.00 | |
| Incorrect | 3.00 | 4.00 | 7.00 | |
| Correct (%) | 96.63 | 91.49 | 94.85 | |
| Incorrect (%) | 3.37 | 8.51 | 5.15 | |
| RBF 15-6-2 | Total | 89.00 | 47.00 | 136.00 |
| Correct | 87.00 | 38.00 | 125.00 | |
| Incorrect | 2.00 | 9.00 | 11.00 | |
| Correct (%) | 97.75 | 80.85 | 91.91 | |
| Incorrect (%) | 2.25 | 19.15 | 8.09 | |
| MLP 15-24-2 | Total | 182.00 | 88.00 | 270.00 |
| Correct | 176.00 | 77.00 | 253.00 | |
| Incorrect | 6.00 | 11.00 | 17.00 | |
| Correct (%) | 96.70 | 87.50 | 93.70 | |
| Incorrect (%) | 3.30 | 12.50 | 6.30 | |
| RBF 15-5-2 | Total | 182.00 | 88.00 | 270.00 |
| Correct | 163.00 | 79.00 | 242.00 | |
| Incorrect | 19.00 | 9.00 | 28.00 | |
| Correct (%) | 89.56 | 89.77 | 89.63 | |
| Incorrect (%) | 10.44 | 10.23 | 10.37 | |
Area under the ROC curves and ROC threshold.
| Variant I | Variant II | Variant III | ||||
|---|---|---|---|---|---|---|
| MPL | RBF | MPL | RBF | MPL | RBF | |
| Area Under the ROC | 0.996 | 0.960 | 0.989 | 0.977 | 0.977 | 0.974 |
| ROC Threshold | 0.603 | 0.571 | 0.647 | 0.505 | 0.645 | 0.529 |
Figure 11Comparison of the ROC curves for all classification variants.