Search Results - "CIFREK, M."

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  1. 1

    Electrical Impedance Myography Applied to Monitoring of Muscle Fatigue During Dynamic Contractions by Huang, L. K., Huang, L. N., Gao, Y. M., Lucev Vasic, Z., Cifrek, M., Du, M.

    Published in IEEE access (2020)
    “…Muscle fatigue, as a common physiological phenomenon, has attracted much attention in the fields of rehabilitation and athletic training. A wearable technology…”
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    Journal Article
  2. 2

    Design of Galvanic Coupling Intra-Body Communication Transceiver Using Direct Sequence Spread Spectrum Technology by Chen, W. K., Wei, Z. L., Gao, Y. M., Vasic, Z. Lucev, Cifrek, M., Vai, M. I., Du, M., Pun, S. H.

    Published in IEEE access (2020)
    “…Intra-body communication (IBC) uses the human body as the transmission medium for electrical signals, and it features the following advantages: low power…”
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    Journal Article
  3. 3

    Estimating the Ankle Angle Induced by FES via the Neural Network-Based Hammerstein Model by Zhou, H. Y., Huang, L. K., Gao, Y. M., Lucev Vasic, Z., Cifrek, M., Du, M.

    Published in IEEE access (2019)
    “…Functional electrical stimulation (FES) has been widely used in limb rehabilitation. The first step for the precision rehabilition is to clarify the variation…”
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    Journal Article
  4. 4

    Optimization of the electrode configuration of electrical impedance myography for wearable application by Wang, J. N., Zhou, H. Y., Gao, Y. M., Yang, J. J., Lučev Vasić, Ž., Cifrek, M., Du, M.

    Published in Automatika (02-07-2020)
    “…Electrical Impedance Myography (EIM) based on the four-electrode method is a novel method for assessing muscle state in the fields of sports, fitness, and…”
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    Journal Article Paper
  5. 5

    Differentiating patients with radiculopathy from chronic low back pain patients by single surface EMG parameter by Ostojić, S., Peharec, S., Srhoj-Egekher, V., Cifrek, M.

    Published in Automatika (02-10-2018)
    “…The classification potential of surface electromyographic (EMG) parameters needs to be explored beyond classification of subjects onto low back pain subjects…”
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    Journal Article Paper
  6. 6

    ID 6 – A new method for performing vibratory evoked potentials by Krbot Skoric, M, Habek, Mario, Adamec, I, Jerbic, A.B, Cifrek, M, Krois, I, Isgum, V

    Published in Clinical neurophysiology (01-03-2016)
    “…Objective To establish reliable and objective method, which will enable objective examination of functional integrity of the entire sensory vibratory pathway…”
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    Journal Article
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    Analysis of electric field and emission spectrum in the glow discharge of therapeutic plasma electrode by Prebeg, D., Pavelić, B., Cifrek, M., Milošević, S., Krois, I., Šegović, S., Katunaruć, M., Kordić, M.

    Published in Automatika (02-01-2017)
    “…Gas-filled glass plasma electrodes coupled with high-frequency high-voltage generators are used in medicine and dentistry for more than a century. In recent…”
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    Journal Article Paper
  12. 12

    Impact of EEG Signal Preprocessing Methods on Machine Learning Models for Affective Disorders by Jovicic, E., Jovic, A., Cifrek, M.

    “…Affective disorders belong to a group of psychiatric disorders that are diagnosed according to the criteria of standardized diagnostic manuals. The diagnostic…”
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    Conference Proceeding
  13. 13

    Numerical Modelling of Multi-Layered Capacitive Electrodes for Biomedical Signals Measurement by Klaic, L., Stanesic, A., Cifrek, M.

    “…In this paper, a concentric cylinder model of the upper arm is used in order to perform a stationary and low-frequency analysis of the electrical field…”
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    Conference Proceeding
  14. 14

    The influence of age and dental status on elevator and depressor muscle activity by ALAJBEG, I. Z., VALENTIC-PERUZOVIC, M., ALAJBEG, I., CIFREK, M.

    Published in Journal of oral rehabilitation (01-02-2006)
    “…summary  The objective of this study was to determine whether the muscle activity at various mandibular positions is affected by age and dental status. Thirty…”
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    Journal Article
  15. 15

    Classification of asthma using artificial neural network by Badnjevic, A., Gurbeta, L., Cifrek, M., Marjanovic, D.

    “…This paper presents a system for classification of asthma based on artificial neural network. A total of 1800 Medical Reports were used for neural network…”
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    Conference Proceeding
  16. 16

    Numerical Modelling of Capacitive Electrodes for Biomedical Signals Measurement by Klaic, L., Stanesic, A., Cifrek, M.

    “…Surface electromyography (sEMG) uses noninvasive technique of measuring muscle action potentials on the skin surface. Numerical methods are often the first…”
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    Conference Proceeding
  17. 17

    Clinical Decision Support Systems in Practice: Current Status and Challenges by Jovic, A., Stancin, I., Friganovic, K., Cifrek, M.

    “…Decision support systems (DSS) are computer programs based on artificial intelligence methods that contribute to reaching a correct decision in an often-narrow…”
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    Conference Proceeding
  18. 18

    Design and Implementation of Galvanic Coupling Intra-Body Communication Transceivers using Differential Phase Shift Keying by Wei, Zi-liang, Chen, Wei-kun, Yang, Ming-jing, Gao, Yue-Ming, Vasic, Z. Lucev, Cifrek, M.

    “…Intra-body communications (IBC) is a short-range wireless communication technology, which has been included as the third physical layer in the IEEE 802.15.6…”
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    Conference Proceeding
  19. 19

    A Capacitive Intrabody Communication Channel from 100 kHz to 100 MHz by Lucev, Z., Krois, I., Cifrek, M.

    “…Intrabody communication (IBC) uses the human body as a signal transmission medium. In the capacitive coupling IBC approach, the signal is transmitted through…”
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    Journal Article
  20. 20

    Comparison of Machine Learning Methods in Classification of Affective Disorders by Kinder, I., Friganovic, K., Vukojevic, J., Mulc, D., Slukan, T., Vidovic, D., Brecic, P., Cifrek, M.

    “…Depression belongs to a group of psychiatric disorders called affective disorders. In medical practice, patients are diagnosed according to the criteria in…”
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    Conference Proceeding