378 research outputs found

    Communications Biophysics

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    Contains reports on three research projects.National Institutes of Health (Grant MH-04737-05)National Institutes of Health (Grant NB-05462-02)Joint Services Electronics Programs (U. S. Army, U. S. Navy, and U. S. Air Force) under Contract DA 36-039-AMC-03200(E)National Science Foundation (Grant GP-2495)National Aeronautics and Space Administration (Grant NsG-496

    Guest editorial: the educational activities of the IEEE history center

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    Three Dimensional Electrical Impedance Tomography

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    The electrical resistivity of mammalian tissues varies widely and is correlated with physiological function. Electrical impedance tomography (EIT) can be used to probe such variations in vivo, and offers a non-invasive means of imaging the internal conductivity distribution of the human body. But the computational complexity of EIT has severe practical limitations, and previous work has been restricted to considering image reconstruction as an essentially two-dimensional problem. This simplification can limit significantly the imaging capabilities of EIT, as the electric currents used to determine the conductivity variations will not in general be confined to a two-dimensional plane. A few studies have attempted three-dimensional EIT image reconstruction, but have not yet succeeded in generating images of a quality suitable for clinical applications. Here we report the development of a three-dimensional EIT system with greatly improved imaging capabilities, which combines our 64-electrode data-collection apparatus with customized matrix inversion techniques. Our results demonstrate the practical potential of EIT for clinical applications, such as lung or brain imaging and diagnostic screening

    Atrial Fibrosis Hampers Non-invasive Localization of Atrial Ectopic Foci From Multi-Electrode Signals: A 3D Simulation Study

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    [EN] Introduction: Focal atrial tachycardia is commonly treated by radio frequency ablation with an acceptable long-term success. Although the location of ectopic foci tends to appear in specific hot-spots, they can be located virtually in any atrial region. Multi-electrode surface ECG systems allow acquiring dense body surface potential maps (BSPM) for non-invasive therapy planning of cardiac arrhythmia. However, the activation of the atria could be affected by fibrosis and therefore biomarkers based on BSPM need to take these effects into account. We aim to analyze the effect of fibrosis on a BSPM derived index, and its potential application to predict the location of ectopic foci in the atria. Methodology: We have developed a 3D atrial model that includes 5 distributions of patchy fibrosis in the left atrium at 5 different stages. Each stage corresponds to a different amount of fibrosis that ranges from 2 to 40%. The 25 resulting 3D models were used for simulation of Focal Atrial Tachycardia (FAT), triggered from 19 different locations described in clinical studies. BSPM were obtained for all simulations, and the body surface potential integral maps (BSPiM) were calculated to describe atrial activations. A machine learning (ML) pipeline using a supervised learning model and support vector machine was developed to learn the BSPM patterns of each of the 475 activation sequences and relate them to the origin of the FAT source. Results: Activation maps for stages with more than 15% of fibrosis were greatly affected, producing conduction blocks and delays in propagation. BSPiMs did not always cluster into non-overlapped groups since BSPiMs were highly altered by the conduction blocks. From stage 3 (15% fibrosis) the BSPiMs showed differences for ectopic beats placed around the area of the pulmonary veins. Classification results were mostly above 84% for all the configurations studied when a large enough number of electrodes were used to map the torso. However, the presence of fibrosis increases the area of the ectopic focus location and therefore decreases the utility for the electrophysiologist. Conclusions: The results indicate that the proposed ML pipeline is a promising methodology for non-invasive ectopic foci localization from BSPM signal even when fibrosis is present.This work was partially supported by Ministerio de Economia y Competitividad and Fondo Europeo de Desarrollo Regional (FEDER) DPI2015-69125-R and TIN2014-59932-JIN (MINECO/FEDER, UE).Godoy, EJ.; Lozano, M.; García-Fernández, I.; Ferrer-Albero, A.; Macleod, R.; Saiz, J.; Sebastián, R. (2018). Atrial Fibrosis Hampers Non-invasive Localization of Atrial Ectopic Foci From Multi-Electrode Signals: A 3D Simulation Study. Frontiers in Physiology. 9:1-18. https://doi.org/10.3389/fphys.2018.00404S1189Boyle, P. M., Zahid, S., & Trayanova, N. A. (2016). Towards personalized computational modelling of the fibrotic substrate for atrial arrhythmia. EP Europace, 18(suppl_4), iv136-iv145. doi:10.1093/europace/euw358Courtemanche, M., Ramirez, R. J., & Nattel, S. (1998). Ionic mechanisms underlying human atrial action potential properties: insights from a mathematical model. American Journal of Physiology-Heart and Circulatory Physiology, 275(1), H301-H321. doi:10.1152/ajpheart.1998.275.1.h301Daccarett, M., Badger, T. J., Akoum, N., Burgon, N. S., Mahnkopf, C., Vergara, G., … Marrouche, N. F. (2011). Association of Left Atrial Fibrosis Detected by Delayed-Enhancement Magnetic Resonance Imaging and the Risk of Stroke in Patients With Atrial Fibrillation. Journal of the American College of Cardiology, 57(7), 831-838. doi:10.1016/j.jacc.2010.09.049Dössel, O., Krueger, M. W., Weber, F. M., Wilhelms, M., & Seemann, G. (2012). Computational modeling of the human atrial anatomy and electrophysiology. Medical & Biological Engineering & Computing, 50(8), 773-799. doi:10.1007/s11517-012-0924-6Ferrer, A., Sebastián, R., Sánchez-Quintana, D., Rodríguez, J. F., Godoy, E. J., Martínez, L., & Saiz, J. (2015). Detailed Anatomical and Electrophysiological Models of Human Atria and Torso for the Simulation of Atrial Activation. PLOS ONE, 10(11), e0141573. doi:10.1371/journal.pone.0141573Ferrer-Albero, A., Godoy, E. J., Lozano, M., Martínez-Mateu, L., Atienza, F., Saiz, J., & Sebastian, R. (2017). Non-invasive localization of atrial ectopic beats by using simulated body surface P-wave integral maps. PLOS ONE, 12(7), e0181263. doi:10.1371/journal.pone.0181263Geselowitz, D. B., & Miller, W. T. (1983). A bidomain model for anisotropic cardiac muscle. Annals of Biomedical Engineering, 11(3-4), 191-206. doi:10.1007/bf02363286Giffard-Roisin, S., Jackson, T., Fovargue, L., Lee, J., Delingette, H., Razavi, R., … Sermesant, M. (2017). Noninvasive Personalization of a Cardiac Electrophysiology Model From Body Surface Potential Mapping. IEEE Transactions on Biomedical Engineering, 64(9), 2206-2218. doi:10.1109/tbme.2016.2629849Go, A. S., Hylek, E. M., Phillips, K. A., Chang, Y., Henault, L. E., Selby, J. V., & Singer, D. E. (2001). Prevalence of Diagnosed Atrial Fibrillation in Adults. JAMA, 285(18), 2370. doi:10.1001/jama.285.18.2370Guillem, M. S., Climent, A. M., Rodrigo, M., Fernández-Avilés, F., Atienza, F., & Berenfeld, O. (2016). Presence and stability of rotors in atrial fibrillation: evidence and therapeutic implications. Cardiovascular Research, 109(4), 480-492. doi:10.1093/cvr/cvw011Heidenreich, E. A., Ferrero, J. M., Doblaré, M., & Rodríguez, J. F. (2010). Adaptive Macro Finite Elements for the Numerical Solution of Monodomain Equations in Cardiac Electrophysiology. Annals of Biomedical Engineering, 38(7), 2331-2345. doi:10.1007/s10439-010-9997-2HOFFMANN, E., REITHMANN, C., NIMMERMANN, P., ELSER, F., DORWARTH, U., REMP, T., & STEINBECK, G. (2002). Clinical Experience with Electroanatomic Mapping of Ectopic Atrial Tachycardia. Pacing and Clinical Electrophysiology, 25(1), 49-56. doi:10.1046/j.1460-9592.2002.00049.xJacquemet, V. (2012). An eikonal-diffusion solver and its application to the interpolation and the simulation of reentrant cardiac activations. Computer Methods and Programs in Biomedicine, 108(2), 548-558. doi:10.1016/j.cmpb.2011.05.003Jalife, J. (2010). Deja vu in the theories of atrial fibrillation dynamics. Cardiovascular Research, 89(4), 766-775. doi:10.1093/cvr/cvq364Keller, D. U. J., Weber, F. M., Seemann, G., & Dössel, O. (2010). Ranking the Influence of Tissue Conductivities on Forward-Calculated ECGs. IEEE Transactions on Biomedical Engineering, 57(7), 1568-1576. doi:10.1109/tbme.2010.2046485Kistler, P. M., Fynn, S. P., Haqqani, H., Stevenson, I. H., Vohra, J. K., Morton, J. B., … Kalman, J. M. (2005). Focal Atrial Tachycardia From the Ostium of the Coronary Sinus. Journal of the American College of Cardiology, 45(9), 1488-1493. doi:10.1016/j.jacc.2005.01.042Kistler, P. M., Roberts-Thomson, K. C., Haqqani, H. M., Fynn, S. P., Singarayar, S., Vohra, J. K., … Kalman, J. M. (2006). P-Wave Morphology in Focal Atrial Tachycardia. Journal of the American College of Cardiology, 48(5), 1010-1017. doi:10.1016/j.jacc.2006.03.058Kistler, P. M., Sanders, P., Fynn, S. P., Stevenson, I. H., Hussin, A., Vohra, J. K., … Kalman, J. M. (2003). Electrophysiological and Electrocardiographic Characteristics of Focal Atrial Tachycardia Originating From the Pulmonary Veins. Circulation, 108(16), 1968-1975. doi:10.1161/01.cir.0000095269.36984.75Kistler, P. M., Sanders, P., Hussin, A., Morton, J. B., Vohra, J. K., Sparks, P. B., & Kalman, J. M. (2003). Focal atrial tachycardia arising from the mitral annulus. Journal of the American College of Cardiology, 41(12), 2212-2219. doi:10.1016/s0735-1097(03)00484-4Andrew MacCannell, K., Bazzazi, H., Chilton, L., Shibukawa, Y., Clark, R. B., & Giles, W. R. (2007). A Mathematical Model of Electrotonic Interactions between Ventricular Myocytes and Fibroblasts. Biophysical Journal, 92(11), 4121-4132. doi:10.1529/biophysj.106.101410MacLeod, R. S., Kholmovski, E., DiBella, E. V. R., Oakes, R. S., Blauer, J. E., Fish, E., … Marrouche, N. F. (2008). Integration of MRI in evaluation and ablation of atrial fibrillation. 2008 Computers in Cardiology. doi:10.1109/cic.2008.4748981Maleckar, M. M., Greenstein, J. L., Giles, W. R., & Trayanova, N. A. (2009). Electrotonic Coupling between Human Atrial Myocytes and Fibroblasts Alters Myocyte Excitability and Repolarization. Biophysical Journal, 97(8), 2179-2190. doi:10.1016/j.bpj.2009.07.054Morgan, R., Colman, M. A., Chubb, H., Seemann, G., & Aslanidi, O. V. (2016). Slow Conduction in the Border Zones of Patchy Fibrosis Stabilizes the Drivers for Atrial Fibrillation: Insights from Multi-Scale Human Atrial Modeling. Frontiers in Physiology, 7. doi:10.3389/fphys.2016.00474MORTON, J. B., SANDERS, P., DAS, A., VOHRA, J. K., SPARKS, P. B., & KALMAN, J. M. (2001). Focal Atrial Tachycardia Arising from the Tricuspid Annulus: Electrophysiologic and Electrocardiographic Characteristics. Journal of Cardiovascular Electrophysiology, 12(6), 653-659. doi:10.1046/j.1540-8167.2001.00653.xNiederer, S. A., Kerfoot, E., Benson, A. P., Bernabeu, M. O., Bernus, O., Bradley, C., … Smith, N. P. (2011). Verification of cardiac tissue electrophysiology simulators using an N -version benchmark. Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences, 369(1954), 4331-4351. doi:10.1098/rsta.2011.0139Oakes, R. S., Badger, T. J., Kholmovski, E. G., Akoum, N., Burgon, N. S., Fish, E. N., … Marrouche, N. F. (2009). 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Heart Rhythm, 13(2), 374-382. doi:10.1016/j.hrthm.2015.10.023Saoudi, N. (2001). A classification of atrial flutter and regular atrial tachycardia according to electrophysiological mechanisms and anatomical bases. A Statement from a Joint Expert Group from the Working Group of Arrhythmias of the European Society of Cardiology and the North American Society of Pacing and Electrophysiology. European Heart Journal, 22(14), 1162-1182. doi:10.1053/euhj.2001.2658Shah, A. J., Hocini, M., Pascale, P., Roten, L., Komatsu, Y., … Daly, M. (2013). Body Surface Electrocardiographic Mapping for Non-invasive Identification of Arrhythmic Sources. Arrhythmia & Electrophysiology Review, 2(1), 16. doi:10.15420/aer.2013.2.1.16SippensGroenewegen, A., Natale, A., Marrouche, N. F., Bash, D., & Cheng, J. (2004). Potential role of body surface ECG mapping for localization of atrial fibrillation trigger sites. 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    Validation and Opportunities of Electrocardiographic Imaging: From Technical chievements to Clinical Applications

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    [EN] Electrocardiographic imaging (ECGI) reconstructs the electrical activity of the heart from a dense array of body-surface electrocardiograms and a patient-specific heart-torso geometry. Depending on how it is formulated, ECGI allows the reconstruction of the activation and recovery sequence of the heart, the origin of premature beats or tachycardia, the anchors/hotspots of re-entrant arrhythmias and other electrophysiological quantities of interest. Importantly, these quantities are directly and non-invasively reconstructed in a digitized model of the patient's three-dimensional heart, which has led to clinical interest in ECGI's ability to personalize diagnosis and guide therapy. Despite considerable development over the last decades, validation of ECGI is challenging. Firstly, results depend considerably on implementation choices, which are necessary to deal with ECGI's ill-posed character. Secondly, it is challenging to obtain (invasive) ground truth data of high quality. In this review, we discuss the current status of ECGI validation as well as the major challenges remaining for complete adoption of ECGI in clinical practice. Specifically, showing clinical benefit is essential for the adoption of ECGI. Such benefit may lie in patient outcome improvement, workflow improvement, or cost reduction. Future studies should focus on these aspects to achieve broad adoption of ECGI, but only after the technical challenges have been solved for that specific application/pathology. We propose 'best' practices for technical validation and highlight collaborative efforts recently organized in this field. Continued interaction between engineers, basic scientists, and physicians remains essential to find a hybrid between technical achievements, pathological mechanisms insights, and clinical benefit, to evolve this powerful technique toward a useful role in clinical practice.This study received financial support from the Hein Wellens Fonds, the Cardiovascular Research and Training Institute (CVRTI), the Nora Eccles Treadwell Foundation, the National Institute of General Medical Sciences of the National Institutes of Health (P41GM103545), the National Institutes of Health (NIH HL080093), the French government as part of the Investments of the Future program managed by the National Research Agency (ANR-10-IAHU-04), from the VEGA Grant Agency in Slovakia (2/0071/16), from the Slovak Research and Development Agency (APVV-14-0875), the Fondo Europeo de Desarrollo Regional (FEDER), the Instituto de Salud Carlos III (PI17/01106) and from Conselleria d'Educacio, Investigacio, Cultura i Esport de la Generalitat Valenciana (AICO/2018/267) and NIH grant (HL125998) and National Science Foundation (ACI-1350374).Cluitmans, M.; Brooks, D.; Macleod, RS.; Dossel, O.; Guillem Sánchez, MS.; Van Dam, P.; Svehlikova, J.... 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    Cardiac anisotropy in boundary-element models for the electrocardiogram

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    The boundary-element method (BEM) is widely used for electrocardiogram (ECG) simulation. Its major disadvantage is its perceived inability to deal with the anisotropic electric conductivity of the myocardial interstitium, which led researchers to represent only intracellular anisotropy or neglect anisotropy altogether. We computed ECGs with a BEM model based on dipole sources that accounted for a “compound” anisotropy ratio. The ECGs were compared with those computed by a finite-difference model, in which intracellular and interstitial anisotropy could be represented without compromise. For a given set of conductivities, we always found a compound anisotropy value that led to acceptable differences between BEM and finite-difference results. In contrast, a fully isotropic model produced unacceptably large differences. A model that accounted only for intracellular anisotropy showed intermediate performance. We conclude that using a compound anisotropy ratio allows BEM-based ECG models to more accurately represent both anisotropies
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