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Exercise Intensity Forecasting: Application in Elderly Interventions that Promote Active and Healthy Aging

Published: 01 October 2015 Publication History

Abstract

Heart rate monitoring in physical exercise regimens is the key indicator of the workout intensity level. Day-to-day exercise variation of the heart rate reflects any progress achieved by the trainee and helps the trainer or the trainee himself to adjust the exercise work plan accordingly. However, timely decision upon changing intensity level of exercise is of crucial importance so as to maximize the health outcomes. Prediction of future heart rate values based on the trainee's history profile may prove to be a useful decision making tool in that case. The minimum set of available heart rate measurements in combination with the existence of outliers pose restrictions so to achieve reliable predictions. Time-series forecasting state-of-the-art algorithms such as Support Vector Regression and Gaussian Processes have been used in order to extract the best forecaster for these data. Heart rate data during and at the end of an exergaming intervention of 90 seniors were analyzed and compared in different cases. No single method outperformed the others. However, forecasting error was considered acceptable and all algorithms proved to be robust enough, even in the presence of outliers and irrespective the forecasting horizon, be it short or long term.

References

[1]
Aarhus, R., & Gröönvall, E. S B Simon Bo Larsen, and Susanne Wollsen. 2011. "Turning Training into Play: Embodied Gaming, Seniors, Physical Training and Motivation." Gerontechnology 102: 110-20. http://gerontechnology.info/index.php/journal/article/view/gt.2011.10.2.005.00
[2]
Abakar, Khalid A A, and Chongwen Yua. 2014. "Performance of SVM Based on PUK Kernel in Comparison to SVM Based on RBF Kernel in Prediction of Yarn Tenacity." Indian Journal of Fibre & Textile Research 391: 55-59.
[3]
Achten, Juul, and Asker E Jeukendrup. 2003. "Heart Rate Monitoring." Sports Medicine 337: 517-38. http://link.springer.com/10.2165/00007256-200333070-00004
[4]
Ahmed, N. K., Amir F Atiya, N. E. G., & El-Shishiny, H. 2010. An Empirical Comparison of Machine Learning Models for Time Series Forecasting. Econometric Reviews, 295-6, 594-621.
[5]
American College of Sports Medicine and others. 2013. ACSM's Guidelines for Exercise Testing and Prescription. Lippincott Williams & Wilkins.
[6]
Bamidis Panagiotis D., Konstantinidis Evdokimos I., Billis Antonis, Frantzidis Christos, Tsolaki Magda, Hlauschek Walter, Kyriacou Efthyvoulos, Neofytou Marios, Pattichis Constantinos. 2011. "A Web Services-Based Exergaming Platform for Senior Citizens: The Long Lasting Memories Project Approach to E-Health Care." Conference proceedings: Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Conference 2011: 2505-9.
[7]
Barmpalias, K. G., Chokani, N., Kalfas, A. I., & Abhari, R. S. 2014, December 2. 2012. "Data Adaptive Spectral Analysis of Unsteady Leakage Flow in an Axial Turbine. International Journal of Rotating Machinery, 2012, 1-7. http://www.hindawi.com/journals/ijrm/2012/121695/
[8]
Billis, A. S., Papageorgiou, E. I., Frantzidis, C. A., Tsatali, M. S., Tsolaki, A. C., & Bamidis, P. D. 2014. "A Decision-Support Framework for Promoting Independent Living and Ageing Well." Biomed. Heal. Informatics, IEEE J. 2014 vol. PP, no. 99, p. 1.
[9]
Box, George E P, Gwilym M Jenkins, and Gregory C Reinsel. 2013. Time Series Analysis: Forecasting and Control. John Wiley & Sons.
[10]
Buford, T. W. Michael D Roberts, and Timothy S Church. 2013. "Toward Exercise as Personalized Medicine." Sports medicine Auckland, N.Z. 433: 157-65. http://www.central.nih.gov/articlerender.fcgi?artid=3595541&tool=pmcentrez&rendertype=abstract
[11]
Chen, Zhuo, and Yuhong Yang. 2004. "Assessing Forecast Accuracy Measures." Preprint Series 2004-2010: 2004-10.
[12]
Conconi, F., Ferrari, M., Ziglio, P. G., Droghetti, P., & Codeca, L. 1982. Determination of the Anaerobic Threshold by a Noninvasive Field Test in Runners. Journal of Applied Physiology: Respiratory, Environmental and Exercise Physiology, 524, 869-873. http://www.ncbi.nlm.nih.gov/ /7085420 7085420.
[13]
Cortez, Paulo, Miguel Rocha, and José Neves. 2006. "Time Series Forecasting by Evolutionary Neural Networks." Artificial Neural Networks in Real-Life Applications: 47-70.
[14]
Cress, M. E., Buchner, D. M., Prohaska, T., Rimmer, J., Brown, M., Macera, C., & Chodzko-Zajko, W. et al . 2005. Best Practices for Physical Activity Programs and Behavior Counseling in Older Adult Populations. Journal of Aging and Physical Activity, 131, 61-74. 15677836.
[15]
Friedman, J., Hastie, T., & Tibshirani, R. 2001. 1 The Elements of Statistical Learning. Springer Series in Statistics New York.
[16]
GerlingK.LivingstonI.NackeL.MandrykR. 2012. "Full-Body Motion-Based Game Interaction for Older Adults." In Proceedings of the 2012 ACM Annual Conference on Human Factors in Computing Systems, ACM, 1873-82. 10.1145/2207676.2208324
[17]
GerlingK.MasuchM. 2011. "When Gaming Is Not Suitable for Everyone: Playtesting Wii Games with Frail Elderly." 1st Workshop on Game Accessibility: Xtreme Interaction Design GAXID'11.
[18]
González-Palau, F., Franco, M., Bamidis, P., Losada, R., Parra, E., Papageorgiou, S. G., & Vivas, A. B. 2014. The Effects of a Computer-Based Cognitive and Physical Training Program in a Healthy and Mildly Cognitive Impaired Aging Sample. Aging & Mental Health, 187, 838-846. http://www.ncbi.nlm.nih.gov/ /24697325 24697325.
[19]
Hermens, Hermie J, and Miriam M R Vollenbroek-Hutten. 2008. "Towards Remote Monitoring and Remotely Supervised Training." Journal of electromyography and kinesiology¿: official journal of the International Society of Electrophysiological Kinesiology 186: 908-19. http://www.ncbi.nlm.nih.gov/ /19004646 November 21, 2014.
[20]
Huang, S.-C. 2011. Using Gaussian Process Based Kernel Classifiers for Credit Rating Forecasting. Expert Systems with Applications, 387, 8607-8611.
[21]
Hyndman, R. J., & Koehler, A. B. 2014, July 11. 2006. "Another Look at Measures of Forecast Accuracy. International Journal of Forecasting, 224, 679-688. http://linkinghub.elsevier.com/retrieve/pii/S0169207006000239
[22]
Iglewicz, B., & Hoaglin, D. C. 1993. How to Detect and Handle Outliers. ASQC Quality Press. http://books.google.gr/books?id=siInAQAAIAAJ
[23]
Issa, Z., Adolph, A. L., Puyau, M. R., Vohra, F. A., & Butte, N. F. 2008. "Application of Cross-Sectional Time Series Modeling for the Prediction of Energy Expenditure from Heart Rate and Accelerometry." Journal of applied physiology Bethesda, Md.:¿ 1985 1046: 1665-73. http://www.ncbi.nlm.nih.gov/ /18403453 November 10, 2014.
[24]
Jeukendrup, A, and A VanDiemen. 1998. "Heart Rate Monitoring during Training and Competition in Cyclists." Journal of sports sciences 16 Supplsup1: S91-99.10.1080/026404198366722
[25]
Jeukendrup, A. E., Hesselink, M. K., Snyder, A. C., Kuipers, H., & Keizer, H. A. 1992. Physiological Changes in Male Competitive Cyclists after Two Weeks of Intensified Training. International Journal of Sports Medicine, 137, 534-541. https://www.thieme-connect.com/products/ejournals/abstract/10.1055/s-2007-1021312 1459749.
[26]
Knoepfli-Lenzin, C., Haenggli, B., & Boutellier, U. 2014. Optimised Heart Rate Formulae to Monitor Endurance Training in Sedentary Individuals. Journal of Sports Sciences, 326, 557-562. 24073817.
[27]
Konstantinidis, E. I., Bamparopoulos, G., Billis, A., & Bamidis, P. D. 2015submitted. Internet of Things For an Age-Friendly Healthcare. In Medical Informatics Europe. MIE.
[28]
Konstantinidis, E. I., Billis, A., & Bamidis, P. D. 2011. Cognitive and Physical Training Medical Record, a Web Service Based Architecture. In In. CLOSER.
[29]
Konstantinidis, E. I., Billis, A., Hlauschek, W., Panek, P., & Bamidis, P. D. 2010. Integration of Cognitive and Physical Training in a Smart Home Environment for the Elderly People. Studies in Health Technology and Informatics, 160Pt 1, 58-62. 20841650.
[30]
Konstantinidis, E. I., Billis, A. S., Mouzakidis, C., Zilidou, V., Antoniou, P. E., & Bamidis, P. D. 2014. Design, Implementation and Wide Pilot Deployment of FitForAll: An Easy to Use Exergaming Platform Improving Physical Fitness and Life Quality of Senior Citizens. IEEE Journal of Biomedical and Health Informatics, 1.
[31]
Kruel Luiz, F. M., & Leonardo, A. P. 2014. Using Heart Rate to Prescribe Physical Exercise during Head-out Water Immersion. Journal of Strength and Conditioning Research, 281, 281-289. 23591950.
[32]
Lehmann, M., Baumgartl, P., Wiesenack, C., Seidel, A., Baumann, H., Fischer, S., & Keul, J. et al . 1992. Training-Overtraining: Influence of a Defined Increase in Training Volume vs Training Intensity on Performance, Catecholamines and Some Metabolic Parameters in Experienced Middle- and Long-Distance Runners. European Journal of Applied Physiology and Occupational Physiology, 642, 169-177. http://link.springer.com/10.1007/BF00717956 1555564.
[33]
Lehmann, M., Dickhuth, H. H., Gendrisch, G., Lazar, W., Thum, M., Kaminski, R., & Keul, J. et al . 1991. Training-Overtraining. A Prospective, Experimental Study with Experienced Middle- and Long-Distance Runners. International Journal of Sports Medicine, 125, 444-452. https://www.thieme-connect.com/products/ejournals/abstract/10.1055/s-2007-1024711 1752709.
[34]
Long Lasting Memories Project." http://www.longlastingmemories.eu/ July 1, 2014.
[35]
MacKay, D. J. C.MacKay. 1992. A Practical Bayesian Framework for Backpropagation Networks. Neural Computation, 43, 448-472.
[36]
Marja, H., Katarina, S., & Harri, O.-K. 2009. "Understanding Persuasive Software Functionality in Practice: A Field Trial of Polar FT60." Proceedings of the 4th International Conference on Persuasive Technology, Claremont, California {doi>10.1145/1541948.1541952}.
[37]
Mark Hall, Eibe Frank, Geoffrey Holmes, Bernhard Pfahringer, Peter Reutemann, Ian H. Witten. 2009. "The WEKA Data Mining Software: An Update." ACM SIGKDD explorations newsletter 111: 10-18.
[38]
Marshall, R. J. 2001. The Use of Classification and Regression Trees in Clinical Epidemiology. Journal of Clinical Epidemiology, 546, 603-609. 11377121.
[39]
McDermott, A Y Ann, and Heather Mernitz. 2004. Exercise and the Elderly: Guidelines and Practical Prescription Applications for the Clinician. Journal of Clinical Outcomes Management, 112, 117-127.
[40]
Moody, J., & Darken, C. J. 1989. Fast Learning in Networks of Locally-Tuned Processing Units. Neural Computation, 12, 281-294.
[41]
Myung-kyung, S., Ani, N., Jonathan, W., Mahsan, R., & Majid, S. 2014, November 29. 2011. "Machine Learning-Based Adaptive Wireless Interval Training Guidance System. Mobile Networks and Applications, 172, 163-177. http://link.springer.com/10.1007/s11036-011-0331-5.
[42]
Nadaraya, E. A. 1964. On Estimating Regression. Theory of Probability and Its Applications, 91, 141-142.
[43]
Nelson, M. E. W. Jack Rejeski, Steven N. Blair, Pamela W. Duncan, James O. Judge, Abby C. King, Carol A. Macera, Carmen Castaneda-Sceppa. 2007. "Physical Activity and Public Health in Older Adults: Recommendation from the American College of Sports Medicine and the American Heart Association." Circulation 1169: 1094-1105. http://circ.ahajournals.org/cgi/content/long/116/9/1094
[44]
Ozcan, Y. A. 2005. 4 Quantitative Methods in Health Care Management: Techniques and Applications. John Wiley & Sons.
[45]
Pantelis, A. 2010. Personalised Physical Exercise Regime for Chronic Patients through a Wearable ICT Platform. International Journal of Electronic Healthcare, 54, 355. http://www.inderscience.com/link.php?id=36207 21041175.
[46]
Planinc, R., Nake, I., & Kampel, M. 2013. "Exergame Design Guidelines for Enhancing Elderly's Physical and Social Activities." AMBIENT 2013, The Third International '. http://www.thinkmind.org/index.php?view=article&articleid=ambient_2013_3_10_60021
[47]
Rasmussen, Carl Edward. 2006. "Gaussian Processes for Machine Learning."
[48]
Robert, P. H., König, A., Amieva, H., Andrieu, S., Bremond, F., Bullock, R., & Manera, V. et al . 2014. Recommendations for the Use of Serious Games in People with Alzheimer's Disease, Related Disorders and Frailty. Frontiers in Aging Neuroscience, 6, 54. 24715864.
[49]
Segerståhl, K., & Oinas-Kukkonen, H. 2014, November 29. 2011. "Designing Personal Exercise Monitoring Employing Multiple Modes of Delivery: Implications from a Qualitative Study on Heart Rate Monitoring. International Journal of Medical Informatics, 8012, e203-e213. http://www.ncbi.nlm.nih.gov/ /21963231 21963231.
[50]
SujayR.ChandraP. 2014. "Forecasting Monthly Groundwater Table Fluctuations in Coastal Aquifers Using Support Vector Regression." In International Multi Conference on Innovations in Engineering and Technology IMCIET- 2014, 61-69.
[51]
Tapia Emmanuel Munguia. Intille Stephen S., Haskell William, Larson Kent, Wright Julie, King Abby, and Friedman Robert. 2007. "Real-Time Recognition of Physical Activities and Their Intensities Using Wireless Accelerometers and a Heart Rate Monitor." In Wearable Computers, 2007 11th IEEE International Symposium on, IEEE, 37-40.
[52]
Winters, P. R. 1960. Forecasting Sales by Exponentially Weighted Moving Averages. Management Science, 63, 324-342.
[53]
Zhang, T. T., Ser, W., & Daniel, G. Y. T. Jianmin Zhang, Jufeng Yu, Chua, C., Louis, I.M. 2010. "Sound Based Heart Rate Monitoring for Wearable Systems." In 2010 International Conference on Body Sensor Networks, IEEE, 139-43. http://ieeexplore.ieee.org/lpdocs/epic03/wrapper.htm?arnumber=5504744

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Published In

cover image International Journal of E-Health and Medical Communications
International Journal of E-Health and Medical Communications  Volume 6, Issue 4
October 2015
92 pages
ISSN:1947-315X
EISSN:1947-3168
Issue’s Table of Contents

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IGI Global

United States

Publication History

Published: 01 October 2015

Author Tags

  1. Decision Support Systems
  2. Exercise Intensity Level
  3. Exergaming
  4. Gaussian Process
  5. Heart Rate Monitoring
  6. Outliers
  7. Short Time-Series Forecasting
  8. Support Vector Regression

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