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Estimation of blood oxygen content using context-aware filtering

Published: 11 April 2016 Publication History
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  • Abstract

    In this paper we address the problem of estimating the blood oxygen concentration in children during surgery. Currently, the oxygen content can only be measured through invasive means such as drawing blood from the patient. In this work, we attempt to perform estimation by only using other non-invasive measurements (e.g., fraction of oxygen in inspired air, volume of inspired air) collected during surgery. Although models mapping these measurements to blood oxygen content contain multiple parameters that vary widely across patients, the non-invasive measurements can be used to provide binary information about whether the oxygen concentration is rising or dropping. This information can then be incorporated in a context-aware filter that is used to combine regular continuous measurements with discrete detection events in order to improve estimation. We evaluate the filter using real-patient data collected over the last decade at the Children's Hospital of Philadelphia and show that it is a promising approach for the estimation of unobservable physiological variables.

    References

    [1]
    N. R. Ahmed, E. M. Sample, and M. Campbell. Bayesian multicategorical soft data fusion for human--robot collaboration. Robotics, IEEE Transactions on, 29(1):189--206, 2013.
    [2]
    D. Arney, M. Pajic, J. Goldman, I. Lee, R. Mangharam, and O. Sokolsky. Toward patient safety in closed-loop medical device systems. In Proceedings of the 1st International Conference on Cyber-Physical Systems, pages 139--148, 2010.
    [3]
    N. Atanasov, M. Zhu, K. Daniilidis, and G. Pappas. Semantic localization via the matrix permanent. In Robotics: Science and Systems, 2014.
    [4]
    A. N. Bishop and B. Ristic. Fusion of spatially referring natural language statements with random set theoretic likelihoods. Aerospace and Electronic Systems, IEEE Transactions on, 49(2):932--944, 2013.
    [5]
    A. Burgos, A. Goñi, A. Illarramendi, and J. Bermúdez. Real-time detection of apneas on a pda. IEEE Transactions on Information Technology in Biomedicine, 14(4):995--1002, 2010.
    [6]
    S. Cruickshank and N. Hirschauer. The alveolar gas equation. Continuing Education in Anaesthesia, Critical Care & and Pain, 4:24--27, 2004.
    [7]
    W. O. Fenn, H. Rahn, and A. B. Otis. A theoretical study of the composition of the alveolar air at altitude. American Journal of Physiology, 146:637--653, 1946.
    [8]
    R. Ivanov, N. Atanasov, M. Pajic, G. Pappas, and I. Lee. Robust estimation using context-aware filtering. In 53rd Annual Allerton Conference on Communication, Control, and Computing, 2015.
    [9]
    R. Ivanov, J. Weimer, A. Simpao, M. Rehman, and I. Lee. Early detection of critical pulmonary shunts in infants. In Proceedings of the ACM/IEEE Sixth International Conference on Cyber-Physical Systems, ICCPS '15, pages 110--119. ACM, 2015.
    [10]
    S. Joshi and S. Boyd. Sensor selection via convex optimization. Transactions on Signal Processing, 57(2):451--462, 2009.
    [11]
    G. Kelman. Digital computer subroutine for the conversion of oxygen tension into saturation. Journal of Applied Physiology, 21(4):1375--1376, 1966.
    [12]
    J. Kretschmer, T. Becher, A. Riedlinger, D. Schadler, N. Weiler, and K. Moller. A simple gas exchange model predicting arterial oxygen content for various FiO2 levels. In Engineering in Medicine and Biology Society (EMBC), 2013 35th Annual International Conference of the IEEE, pages 465--468, July 2013.
    [13]
    R. Mahler. Statistical Multisource-Multitarget Information Fusion. Artech House, Inc., 2007.
    [14]
    H. Nickisch and C. Rasmussen. Approximations for binary gaussian process classification. Journal of Machine Learning Research (JMLR), 9(Oct):2035--2078, 2008.
    [15]
    M. Pajic, R. Mangharam, O. Sokolsky, D. Arney, J. Goldman, and I. Lee. Model-driven safety analysis of closed-loop medical systems. IEEE Transactions on Industrial Informatics, 10(1):3--16, 2014.
    [16]
    S. Saria, D. Koller, and A. Penn. Learning individual and population level traits from clinical temporal data. In Proceedings of Neural Information Processing Systems, pages 1--9, 2010.
    [17]
    S. Shafer, J. P. Rathmell, and R. Stoelting. Stoelting's Pharmacology & Physiology. Wolters Kluwer, 2014.
    [18]
    D. Simon and D. L. Simon. Constrained kalman filtering via density function truncation for turbofan engine health estimation. International Journal of Systems Science, 41(2):159--171, 2010.
    [19]
    A. F. Simpao, E. Y. Pruitt, S. D. Cook-Sather, H. Gurnaney, and M. Rehman. The reliability of manual reporting of clinical events in an anesthesia information management system (AIMS). Journal of Clinical Monitoring and Computing, 26(6):437--439, 2012.
    [20]
    B. Sinopoli, L. Schenato, M. Franceschetti, K. Poolla, M. Jordan, and S. Sastry. Kalman filtering with intermittent observations. Automatic Control, IEEE Transactions on, 49(9):1453--1464, 2004.
    [21]
    M. P. Vitus, W. Zhang, A. Abate, J. Hu, and C. J. Tomlin. On efficient sensor scheduling for linear dynamical systems. Automatica, 48(10):2482--2493, 2012.
    [22]
    J. Weimer, R. Ivanov, A. Roederer, S. Chen, and I. Lee. Parameter invariant design of medical alarms. IEEE Design & Test, 2015.
    [23]
    J. B. West. Respiratory Physiology: The Essentials. Lippincott Williams & Wilkins, 2012.
    [24]
    K. Wyffels and M. Campbell. Negative information for occlusion reasoning in dynamic extended multiobject tracking. Robotics, IEEE Transactions on, 31(2):425--442, 2015.

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    • (2018)Context-aware detection in medical cyber-physical systemsProceedings of the 9th ACM/IEEE International Conference on Cyber-Physical Systems10.1109/ICCPS.2018.00030(232-241)Online publication date: 11-Apr-2018

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    cover image ACM Conferences
    ICCPS '16: Proceedings of the 7th International Conference on Cyber-Physical Systems
    April 2016
    291 pages

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    Published: 11 April 2016

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    • (2018)Context-aware detection in medical cyber-physical systemsProceedings of the 9th ACM/IEEE International Conference on Cyber-Physical Systems10.1109/ICCPS.2018.00030(232-241)Online publication date: 11-Apr-2018

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