Recording Heart Rate Variability of Dairy Cows to the Cloud—Why Smartphones Provide Smart Solutions
Abstract
:1. Introduction
2. Materials and Methods
2.1. Experimental Probands
- Cow I: BCS = 3.5; Days in Milk (DIM) = 66; not gestating
- Cow II: BCS = 3.25; DIM = 166; gestating
2.2. Testing Procedure and Recording of Data
- RR interval: distance between two R peaks (ms);
- SDNN: standard deviation of all RR intervals; square root of variance (ms);
- rMSSD: Square root of the mean of the sum of all differences between adjacent RR intervals; higher values indicate increased parasympathetic activity (ms);
2.3. Processing of Data and HRV Analysis
3. Results
3.1. Robust Method for Processing Time Domain HRV Parameters
3.2. Results for the Conformity of Measurements
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Smartphone IoTool Mean ± SD | Polar V800 Mean ± SD | Spearman Correlation (p Value) | |
---|---|---|---|
Dairy Cow I | |||
RR interval (ms) | 819.08 ± 21.96 | 818.08 ± 22.91 | 0.98 * (<0.001) |
SDNN (ms) | 15.36 ± 8.31 | 14.67 ± 8.54 | 0.89 † (<0.001) |
rMSSD (ms) | 7.82 ± 1.86 | 7.41 ± 1.77 | 0.82 † (<0.001) |
Dairy Cow II | |||
RR interval (ms) | 899.84 ± 42.03 | 897.41 ± 44.91 | 0.98 * (<0.001) |
SDNN (ms) | 26.86 ± 15.15 | 26.33 ± 15.30 | 0.97 * (<0.001) |
rMSSD (ms) | 10.15 ± 2.22 | 9.34 ± 1.96 | 0.88 † (<0.001) |
Human control data | |||
RR interval (ms) | 1326.13 ± 123.08 | 1324.68 ± 125.86 | 0.99 * (<0.001) |
SDNN (ms) | 88.07 ± 43.73 | 88.50 ± 44.48 | 1.00 * (<0.001) |
rMSSD (ms) | 73.63 ± 12.73 | 73.59 ± 12.63 | 1.00 * (<0.001) |
Error % | Smartphone IoTool vs. Polar V800 |
---|---|
Dairy Cow I | |
RR interval (ms) | 0.12 |
SDNN (ms) | 4.70 |
rMSSD (ms) | 5.53 |
Dairy Cow II | |
RR interval (ms) | 0.27 |
SDNN (ms) | 2.01 |
rMSSD (ms) | 8.67 |
Human control data | |
RR interval (ms) | 0.11 |
SDNN (ms) | 0.49 |
rMSSD (ms) | 0.05 |
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Wierig, M.; Mandtler, L.P.; Rottmann, P.; Stroh, V.; Müller, U.; Büscher, W.; Plümer, L. Recording Heart Rate Variability of Dairy Cows to the Cloud—Why Smartphones Provide Smart Solutions. Sensors 2018, 18, 2541. https://doi.org/10.3390/s18082541
Wierig M, Mandtler LP, Rottmann P, Stroh V, Müller U, Büscher W, Plümer L. Recording Heart Rate Variability of Dairy Cows to the Cloud—Why Smartphones Provide Smart Solutions. Sensors. 2018; 18(8):2541. https://doi.org/10.3390/s18082541
Chicago/Turabian StyleWierig, Maren, Leonard P. Mandtler, Peter Rottmann, Viktor Stroh, Ute Müller, Wolfgang Büscher, and Lutz Plümer. 2018. "Recording Heart Rate Variability of Dairy Cows to the Cloud—Why Smartphones Provide Smart Solutions" Sensors 18, no. 8: 2541. https://doi.org/10.3390/s18082541
APA StyleWierig, M., Mandtler, L. P., Rottmann, P., Stroh, V., Müller, U., Büscher, W., & Plümer, L. (2018). Recording Heart Rate Variability of Dairy Cows to the Cloud—Why Smartphones Provide Smart Solutions. Sensors, 18(8), 2541. https://doi.org/10.3390/s18082541