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臺灣學術機構典藏系統 (Taiwan Academic Institutional Repository, TAIR)
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Institution Date Title Author
元智大學 Sep-15 Computational Depth of Anesthesia via Multiple Vital Signs Based on Artificial Neural Networks Muammar Sadrawi; Shou-Zen Fan; Maysam F. Abbod; Kuo-Kuang Jen; J.S. Shieh
元智大學 Sep-15 Computational Depth of Anesthesia via Multiple Vital Signs Based on Artificial Neural Networks Muammar Sadrawi; Shou-Zen Fan; Maysam F. Abbod; Kuo-Kuang Jen; J.S. Shieh
元智大學 Sep-14 A Critical Care Monitoring System for Depth of Anaesthesia Analysis Based on Entropy Analysis and Physiological Information Database Qin Wei; Yang Li; Shou-Zen Fan; Quan Liu; Maysam F. Abbod; Cheng-Wei Lu; Tzu-Yu Lin; Kuo-Kuang Jen; Shang-Ju Wu; Jiann-Shing Shieh
元智大學 Mar-15 Instantaneous 3D EEG Signal Analysis based on Empirical Mode Decomposition and Hilbert-Huang Transform Applied to Depth of Anaesthesia Mu-Tzu Shih; Faiyaz Doctor; Shou-Zen Fan; Kuo-Kuang Jen; J.S. Shieh
元智大學 Feb-15 Sample Entropy Analysis of EEG Signals via Artificial Neural Networks to Model Patients’ Consciousness Level Based on Anesthesiologists Experience George Jiang; Shou-Zen Fan; Maysam F. Abbod; Hui-Hsun Huang; Jheng-Yan Lan; Feng-Fang Tsai; Hung-Chi Chang; Yea-Wen Yang; Fu-Lan Chuang; Yi-Fang Chiu; Kuo-Kuang Jen; Jeng-Fu Wu; J.S. Shieh
元智大學 Aug-18 Design and Evaluation of a Real Time Physiological Signals Acquisition System Implemented in Multi-Operating Rooms for Anesthesia Quan Liu; Li Ma; Shou-Zhen Fan; Maysam F. Abbod; Cheng-Wei Lu; Tzu-Yu Lin; Kuo-Kuang Jen; Shang-Ju Wu; J.S. Shieh
元智大學 2015-11-20 Genetic Type-2 Self-Organising Fuzzy Logic Controller Applied to Anaesthesia Yan-Xin Liu; J.S. Shieh; Faiyaz Doctor; Kuo-Kuang Jen
元智大學 2013-12-06 Multivariable Type-2 Self-Organizing Fuzzy Logic Controllers for Regulating Anesthesia with Rule base Extraction Yan-Xin Liu; Jiann-Shing Shieh; Faiyaz Doctor; Shou-Zen Fan; Kuo-Kuang Jen
元智大學 2013-09-28 A serial device data collection and maintenance of physiological signals’ system based on networks Yi-Feng Chen; Jiann-Shing Shieh; Shou-Zen Fan; Hui-Zen Huang; Kuo-Kuang Jen; Nien-Tzu Chen; Shang-Ju Wu
元智大學 2013-09-28 A serial device data collection and maintenance of physiological signals’ system based on networks Yi-Feng Chen; Jiann-Shing Shieh; Shou-Zen Fan; Hui-Zen Huang; Kuo-Kuang Jen; Nien-Tzu Chen; Shang-Ju Wu
元智大學 2013-09-28 Stress Index Prediction Based On The Plrthysmograph (PPG) Signal Using Artificial Neural Networks Muammar Sadrawi; Jiann-Shing Shieh; Shou-Zen Fan; Kuo-Kuang Jen; Nien-Tzu Chen; Shang-Ju Wu
元智大學 2013-09-28 Using Artificial Neural Networks to Model the Patient''s Consciousness Level via EEG Signal Based on Sample Entropy Analysis Jun-An Jiang; Jiann-Shing Shieh; Shou-Zen Fan; Hui-Zen Huang; Feng-Fang Tsai; Jheng-Yan Lan; Kuo-Kuang Jen
元智大學 2013 Application of Multivariate Empirical Mode Decomposition and Sample Entropy in EEG Signals via Artificial Neural Networks for Interpreting Depth of Anesthesia Jeng-Rung Huang; Shou-Zen Fan; Maysam F. Abbod; Kuo-Kuang Jen; Jeng-Fu Wu; Jiann-Shing Shieh
元智大學 2012-09-22 An Assessment of Anesthesia in Pain by Using Plethysmography Wave Amplitude and Heart Beat Interval Jiann-Shing Shieh; Yuan-Jang Jiang; Shou-Zen Fan; Kuo-Kuang Jen; Ying-sun Huang; Jeng-Fu Wu; Shang-Ju Wu
元智大學 2012-09-22 Application of Multivariate Empirical Mode Decomposition and Sample Entropy in EEG Signals for Depth of Anesthesia Jeng-Rung Huang; Jiann-Shing Shieh; Shou-Zen Fan; Kuo-Kuang Jen; Nien-Tzu Chen; Shang-Ju Wu

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