Hai Yin1, Qiliang Ma2, Junwei Zhuang1, Wei Yu1, Zhongyou Wang3. 1. School of Biomedical Engineering and Medical Imaging, Xianning Medical College, Hubei University of Science and Technology, Xianning, 437100, People's Republic of China. 2. School of Mathematics and Computer, Wuhan Textile University, Wuhan, 430200, People's Republic of China. 3. School of Computer Science and Technology, Hubei University of Science and Technology, Xianning, 437100, People's Republic of China.
Abstract
Introduction: Heart sound signal is an important physiological signal of human body, and the identification and research of heart sound signal is of great significance. Methods: For abnormal heart sound signal recognition, an abnormal heart sound recognition system, combining hidden semi-Markov models (HSMM) with deep neural networks, is proposed. Firstly, HSMM is used to build a heart sound segmentation model to accurately segment the heart sound signal, and then the segmented heart sound signal is subjected to feature extraction. Finally, the trained deep neural network model is used for recognition. Results: Compared with other methods, this method has a relatively small amount of input feature data and high accuracy, fast recognition speed. Discussion: HSMM combined with deep neural network is expected to be deployed on smart mobile devices for telemedicine detection.
Introduction: Heart sound signal is an important physiological signal of human body, and the identification and research of heart sound signal is of great significance. Methods: For abnormal heart sound signal recognition, an abnormal heart sound recognition system, combining hidden semi-Markov models (HSMM) with deep neural networks, is proposed. Firstly, HSMM is used to build a heart sound segmentation model to accurately segment the heart sound signal, and then the segmented heart sound signal is subjected to feature extraction. Finally, the trained deep neural network model is used for recognition. Results: Compared with other methods, this method has a relatively small amount of input feature data and high accuracy, fast recognition speed. Discussion: HSMM combined with deep neural network is expected to be deployed on smart mobile devices for telemedicine detection.
Authors: Chengyu Liu; David Springer; Qiao Li; Benjamin Moody; Ricardo Abad Juan; Francisco J Chorro; Francisco Castells; José Millet Roig; Ikaro Silva; Alistair E W Johnson; Zeeshan Syed; Samuel E Schmidt; Chrysa D Papadaniil; Leontios Hadjileontiadis; Hosein Naseri; Ali Moukadem; Alain Dieterlen; Christian Brandt; Hong Tang; Maryam Samieinasab; Mohammad Reza Samieinasab; Reza Sameni; Roger G Mark; Gari D Clifford Journal: Physiol Meas Date: 2016-11-21 Impact factor: 2.688