| An effective fully deep convolutional neural network for mitochondria segmentation based on ATUM-SEM |
| Xiao C(肖驰)1,2; Li WF(李伟夫)1,3; Chen X(陈曦)1; Han H(韩华)1,2,4; Xie QW(谢启伟)1
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| 2018-03
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会议名称 | SPIE Medical Imaging
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会议日期 | 2018-2
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会议地点 | 美国休斯敦
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摘要 |
Recent studies have empowered that the relation between mitochondrial function and degenerative disorders is related to aging diseases. Due to the rapid development of electron microscope (EM), stacks delivered by EM can be used to investigate the link between mitochondrial function and physical structure. Whereas, one of the main challenges in mitochondria research is developing suitable segmentation algorithms to obtain the shapes of mitochondria. Nowadays, Deep Neural Network (DNN) has been widely applied in solving the neuron membrane segmentation problems in virtue of its exceptional performance. For this reason, its application to mitochondria segmentation holds great promise. In this paper, we propose an effective deep learning approach to realize mitochondria segmentation in Automated Tape-Collecting Ultra Microtome Scanning Electron Microscopy (ATUM-SEM) stacks. The proposed algorithm contains three parts: (1) utilizing histogram equalization algorithm as image preprocessing to keep the consistency of dataset; (2) putting forward a fusion fully convolution network (FCN), which is motivated by the principle the deeper, the better, to build a much deeper network architecture for more accurate mitochondria segmentation; and (3) employing fully connected conditional random field (CRF) to optimize segmentation results. Evaluation was performed on a dataset of a stack of 31 slices from ATUM-SEM, with 20 images used for training and 11 images for testing. For comparison, U-Net approach was evaluated through the same dataset. Jaccard index between the automated segmentation and expert manual segmentations indicates that our method (90.1%) outperforms U-Net (87.9%) and has a preferable performance on mitochondria segmentation with different shapes and sizes. |
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关键词 | Electron Microscope, Deep learning, Mitochondria segmentation
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DOI | https://doi.org/10.1117/12.2293291
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收录类别 | EI
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资助项目 | Special Program of Beijing Municipal Science & Technology Commission[Z161100000216146]
; Scientific Instrument Developing Project of Chinese Academy of Sciences[YZ201671]
; Scientific Instrument Developing Project of Chinese Academy of Sciences[YZ201671]
; Special Program of Beijing Municipal Science & Technology Commission[Z161100000216146]
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语种 | 英语
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引用统计 |
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文献类型 | 会议论文
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条目标识符 | http://ir.ia.ac.cn/handle/173211/23695
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专题 | 类脑智能研究中心_微观重建与智能分析
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通讯作者 | Han H(韩华) |
作者单位 | 1.Chinese Academy of Sciences, Institute of Automation, Beijing, China 2.University of Chinese Academy of Sciences, School of Future Technology, Beijing, China 3.Hubei University, Faculty of Mathematics and Statistic, Wuhan, China 4.The Center for Excellence in Brain Science and Intelligence Technology, CAS, China
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第一作者单位 | 中国科学院自动化研究所
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通讯作者单位 | 中国科学院自动化研究所
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推荐引用方式 GB/T 7714 |
Xiao C,Li WF,Chen X,et al. An effective fully deep convolutional neural network for mitochondria segmentation based on ATUM-SEM[C],2018.
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