ANN-Based Discernment of Septic and Inflammatory Synovial Fluid: A Novel Method Using Viscosity Data from a QCR Sensor
Abstract
:1. Introduction
- It is demonstrated that the ViSQCT sensor effectively measures the viscosity change in low-volume samples of SF.
- A complete methodology is proposed to differentiate between inflammatory and infectious SF.
- We show that using classification models such as ANN improves the methodology by increasing classification accuracy.
- We compare the performance of the methodology and the system when using SF samples stored in two types of tubes (tubes with EDTA and tubes with lithium heparin) and evaluate their influences on making an accurate differentiation.
2. Materials and Methods
2.1. Synovial Fluid Samples
2.2. Sensor
2.3. Experimental Set-Up
2.4. Statistical Analysis
2.5. Artificial Neural Networks
3. Results
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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EDTA | Lithium Heparin | |
---|---|---|
Inflammatory | 25 | 21 |
Infectious | 8 | 7 |
Total | 33 | 28 |
Parameter | Features |
---|---|
Input Layer | Neurons: 3 (or 5) Activation function: Relu |
Hidden Layers | 1, 2 Neurons: 50 Activation function: Relu |
Output Layer | Neurons: 2 Activation function: Softmax |
Training Epochs | 100, 200, 300 |
Batch size | 16 |
Optimizer Type | Adam |
Age (yr) | 55.52 ± 27.53 | 72.75 ± 15.27 | 0.08 |
WBC (/mm) | 9060 ± 12,526 | 52,575.62 ± 75,126.19 | 0.02 |
Neutrophils (per) | 57.28 ± 36.39 | 85.50 ± 12.43 | 0.02 |
Glucose (mg/dL) | 99.23 ± 32.11 | 64.37 ± 35.97 | 0.05 |
Proteins (g/dL) | 3.87 ± 0.82 | 4.15 ± 0.49 | 0.23 |
(Hz) | −3665.36 ± 135.34 | −3675.87 ± 104.57 | 0.25 |
(Hz) | 1787.47 ± 66.97 | 1810.47 ± 53.34 | 0.04 |
(mPa· s) | 3.46 ± 0.21 | 3.43 ± 0.30 | 0.11 |
Age (yr) | 64.66 ± 18.96 | 71.85 ± 16.27 | 0.29 |
WBC (/mm) | 9032.76 ± 13,478.73 | 57,789.28 ± 79,560.83 | 0.03 |
Neutrophils (%) | 63.11 ± 36.80 | 84.00 ± 12.62 | 0.16 |
Glucose (mg/dL) | 99.23 ± 32.11 | 59.57 ± 35.98 | 0.01 |
Proteins (g/dL) | 3.87 ± 0.82 | 4.11 ± 0.52 | 0.29 |
(Hz) | −3775.40 ± 106.55 | −3812.91 ± 109.05 | 0.03 |
(Hz) | 1861.21 ± 95.89 | 1908.10 ± 72.09 | 0.01 |
(mPa· s) | 3.76 ± 0.31 | 3.67 ± 0.18 | 0.13 |
WBC (/mm) [10] | 1.00 | 1.00–1.00 | 0.00 |
PCT serum [10] | 0.82 | 0.71–0.92 | 0.05 |
PCT SF [10] | 0.65 | 0.51–0.78 | 0.06 |
WBC (/mm) | 0.78 | 0.60–0.97 | 0.09 |
Neutrophils (%) | 0.76 | 0.58–0.94 | 0.09 |
Glucose (mg/dL) | 0.26 | 0.03–0.49 | 0.12 |
Proteins (g/dL) | 0.64 | 0.44–0.85 | 0.10 |
(Hz) | 0.55 | 0.46–0.65 | 0.04 |
(Hz) | 0.60 | 0.51–0.69 | 0.04 |
(mPa· s) | 0.42 | 0.31–0.52 | 0.05 |
WBC (/mm) [10] | 1.00 | 1.00–1.00 | 0.00 |
PCT serum [10] | 0.82 | 0.71–0.92 | 0.05 |
PCT SF [10] | 0.65 | 0.51–0.78 | 0.06 |
WBC (/mm) | 0.8 | 0.61–0.99 | 0.09 |
Neutrophils (%) | 0.68 | 0.46–0.91 | 0.11 |
Glucose (mg/dL) | 0.20 | 0.00–0.43 | 0.11 |
Proteins (g/dL) | 0.62 | 0.39–0.85 | 0.11 |
(Hz) | 0.61 | 0.51–0.72 | 0.05 |
(Hz) | 0.65 | 0.55–0.74 | 0.04 |
(mPa· s) | 0.42 | 0.33–0.50 | 0.04 |
Model | EDTA | Lithium Heparin | ||
---|---|---|---|---|
Data | B. Data | Data | B. Data | |
ANN; HL: 1; Epochs: 100 | 0.85 | 0.90 | 0.98 | 0.97 |
ANN; HL: 1; Epochs: 200 | 0.88 | 0.91 | 0.98 | 0.98 |
ANN; HL: 1; Epochs: 300 | 0.90 | 0.91 | 0.99 | 0.98 |
ANN; HL: 2; Epochs: 100 | 0.87 | 0.91 | 0.97 | 0.98 |
ANN; HL: 2; Epochs: 200 | 0.88 | 0.92 | 0.98 | 0.97 |
ANN; HL: 2; Epochs: 300 | 0.91 | 0.91 | 0.98 | 0.98 |
SVM | 0.79 | 0.76 | 0.87 | 0.69 |
RF | 0.91 | 0.97 | 0.96 | 0.98 |
ANN Setting | Data | Balanced Data | |||
---|---|---|---|---|---|
EDTA | HL: 1 Epochs: 100 | 488 | 86 | 485 | 99 |
20 | 152 | 05 | 553 | ||
HL: 1 Epochs: 200 | 514 | 60 | 593 | 91 | |
29 | 143 | 09 | 549 | ||
HL: 1 Epochs: 300 | 541 | 33 | 501 | 83 | |
35 | 137 | 11 | 547 | ||
HL: 2 Epochs: 100 | 504 | 70 | 496 | 88 | |
21 | 151 | 07 | 551 | ||
HL: 2 Epochs: 200 | 511 | 63 | 516 | 68 | |
26 | 146 | 23 | 535 | ||
HL: 2 Epochs: 300 | 562 | 12 | 506 | 78 | |
53 | 119 | 19 | 539 |
ANN Setting | Data | Balanced Data | |||
---|---|---|---|---|---|
Lithium heparin | HL: 1 Epochs: 100 | 627 | 04 | 586 | 10 |
10 | 147 | 22 | 623 | ||
HL: 1 Epochs: 200 | 626 | 05 | 580 | 16 | |
07 | 150 | 08 | 637 | ||
HL: 1 Epochs: 300 | 629 | 02 | 590 | 06 | |
05 | 152 | 11 | 634 | ||
HL: 2 Epochs: 100 | 615 | 16 | 589 | 07 | |
05 | 152 | 09 | 636 | ||
HL: 2 Epochs: 200 | 626 | 05 | 590 | 06 | |
06 | 151 | 20 | 625 | ||
HL: 2 Epochs: 300 | 628 | 03 | 586 | 10 | |
06 | 151 | 05 | 640 |
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Miranda-Martínez, A.; Sufrate-Vergara, B.; Fernández-Puntero, B.; Alcaide-Martin, M.J.; Buño-Soto, A.; Serrano-Olmedo, J.J. ANN-Based Discernment of Septic and Inflammatory Synovial Fluid: A Novel Method Using Viscosity Data from a QCR Sensor. Sensors 2022, 22, 9413. https://doi.org/10.3390/s22239413
Miranda-Martínez A, Sufrate-Vergara B, Fernández-Puntero B, Alcaide-Martin MJ, Buño-Soto A, Serrano-Olmedo JJ. ANN-Based Discernment of Septic and Inflammatory Synovial Fluid: A Novel Method Using Viscosity Data from a QCR Sensor. Sensors. 2022; 22(23):9413. https://doi.org/10.3390/s22239413
Chicago/Turabian StyleMiranda-Martínez, Andrés, Berta Sufrate-Vergara, Belén Fernández-Puntero, María José Alcaide-Martin, Antonio Buño-Soto, and José Javier Serrano-Olmedo. 2022. "ANN-Based Discernment of Septic and Inflammatory Synovial Fluid: A Novel Method Using Viscosity Data from a QCR Sensor" Sensors 22, no. 23: 9413. https://doi.org/10.3390/s22239413
APA StyleMiranda-Martínez, A., Sufrate-Vergara, B., Fernández-Puntero, B., Alcaide-Martin, M. J., Buño-Soto, A., & Serrano-Olmedo, J. J. (2022). ANN-Based Discernment of Septic and Inflammatory Synovial Fluid: A Novel Method Using Viscosity Data from a QCR Sensor. Sensors, 22(23), 9413. https://doi.org/10.3390/s22239413