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Дата публикацииНазваниеАвторы
2019Case study of interrelation between brain-computer interface based multimodal metric and heart rate variabilityVasilyev, V. S.; Borisov, V. I.; Syskov, A. M.; Kublanov, V. S.
2023Combination of personalized computational modeling and machine learning for optimization of left ventricular pacing site in cardiac resynchronization therapyDokuchaev, A.; Chumarnaya, T.; Bazhutina, A.; Khamzin, S.; Lebedeva, V.; Lyubimtseva, T.; Zubarev, S.; Lebedev, D.; Solovyova, O.
2018Comparison of Depolarization and Depolarization in Mathematical Models of the Left Ventricle and the Longitudinal Ventricular SliceBazhutina, A. E.; Khokhlova, A.; Ushenin, K. S.; Solovyova, O.
2021The current role and prospects of electrophysiological research methods in ophthalmology. Literature reviewKazaykin, V. N.; Ponomarev, V. O.; Lizunov, A. V.; Zhdanov, A. E.; Dolganov, A. Y.; Borisov, V. I.
2018Dynamical anchoring of distant arrhythmia sources by fibrotic regions via restructuring of the activation patternVandersickel, N.; Watanabe, M.; Tao, Q.; Fostier, J.; Zeppenfeld, K.; Panfilov, A. V.
2020The electrophysiological underpinnings of variation in verbal working memory capacityPavlov, Y. G.; Kotchoubey, B.
2023Evaluation of the effectiveness of the decision support algorithm for physicians in retinal dystrophy using machine learning methodsZhdanov, A. E.; Dolganov, A. Yu.; Zanca, D.; Borisov, V. I.; Luchian, E.; Dorosinsky, L. G.
2018In Silico Comparison of Phase Maps Based on Action Potential and Extracellular PotentialUshenin, K.; Razumov, A.; Kalinin, V.; Solovyova, O.
2023The inter-chamber differences in the contractile function between left and right atrial cardiomyocytes in atrial fibrillation in ratsButova, X.; Myachina, T.; Simonova, R.; Kochurova, A.; Mukhlynina, E.; Kopylova, G.; Shchepkin, D.; Khokhlova, A.
2019The local repolarization heterogeneity in the murine pulmonary veins myocardium contributes to the spatial distribution of the adrenergically induced ectopic fociPotekhina, V. M.; Averina, O. A.; Razumov, A. A.; Kuzmin, V. S.; Rozenshtraukh, L. V.
2021Machine Learning Prediction of Cardiac Resynchronisation Therapy Response From Combination of Clinical and Model-Driven DataKhamzin, S.; Dokuchaev, A.; Bazhutina, A.; Chumarnaya, T.; Zubarev, S.; Lyubimtseva, T.; Lebedeva, V.; Lebedev, D.; Gurev, V.; Solovyova, O.
2021Mathematical modelling of the mechano-electric coupling in the human cardiomyocyte electrically connected with fibroblastsBazhutina, A.; Balakina-Vikulova, N. A.; Kursanov, A.; Solovyova, O.; Panfilov, A.; Katsnelson, L. B.
2018Mechano-Electric Feedbacks in a New Model of the Excitation-Contraction Coupling in Human CardiomyocytesBalakina-Vikulova, N.; Solovyova, O.; Panfilov, A.; Katsnelson, L.
2012Modeling of heterogeneity in electrical and mechanical properties of guinea pig ventricular myocytesVasilyeva, Anastasia; Solovyova, Olga
2018New Mathematical Model of Electromechanical Coupling in Rat CardiomyocytesKatsnelson, L. B.; Konovalov, P.; Solovyova, O.
2023OculusGraphy: Signal Analysis of the Electroretinogram in a Rabbit Model of Endophthalmitis Using Discrete and Continuous Wavelet TransformsZhdanov, A.; Constable, P.; Manjur, S. M.; Dolganov, A.; Posada-Quintero, H. F.; Lizunov, A.
2023Ophthalmic Bioengineering. ReviewPonomarev, V. O.; Zhdanov, A. E.; Luzhnov, P. V.; Davydova, I. D.; Iomdina, E. N.; Lizunov, A. V.; Dolganov, A. Yu.; Ivliev, S. A.; Znamenskaya, M. A.; Kazaykin, V. N.; Borisov, V. I.; Filatova, E. O.
2020Overdrive pacing of spiral waves in a model of human ventricular tissuePravdin, S. F.; Epanchintsev, T. I.; Panfilov, A. V.
2020Phase Mapping for Cardiac Unipolar Electrograms with Neural Network Instead of Phase TransformationUshenin, K.; Nesterova, T.; Smarko, D.; Sholokhov, V.
2019Processing the results of electroencephalography for patients suffering from depression after neuro-electrostimulation course: Case studyKublanov, V.; Dolganov, A.