Literature DB >> 27886714

Classification of CT brain images based on deep learning networks.

Xiaohong W Gao1, Rui Hui2, Zengmin Tian2.   

Abstract

While computerised tomography (CT) may have been the first imaging tool to study human brain, it has not yet been implemented into clinical decision making process for diagnosis of Alzheimer's disease (AD). On the other hand, with the nature of being prevalent, inexpensive and non-invasive, CT does present diagnostic features of AD to a great extent. This study explores the significance and impact on the application of the burgeoning deep learning techniques to the task of classification of CT brain images, in particular utilising convolutional neural network (CNN), aiming at providing supplementary information for the early diagnosis of Alzheimer's disease. Towards this end, three categories of CT images (N = 285) are clustered into three groups, which are AD, lesion (e.g. tumour) and normal ageing. In addition, considering the characteristics of this collection with larger thickness along the direction of depth (z) (~3-5 mm), an advanced CNN architecture is established integrating both 2D and 3D CNN networks. The fusion of the two CNN networks is subsequently coordinated based on the average of Softmax scores obtained from both networks consolidating 2D images along spatial axial directions and 3D segmented blocks respectively. As a result, the classification accuracy rates rendered by this elaborated CNN architecture are 85.2%, 80% and 95.3% for classes of AD, lesion and normal respectively with an average of 87.6%. Additionally, this improved CNN network appears to outperform the others when in comparison with 2D version only of CNN network as well as a number of state of the art hand-crafted approaches. As a result, these approaches deliver accuracy rates in percentage of 86.3, 85.6 ± 1.10, 86.3 ± 1.04, 85.2 ± 1.60, 83.1 ± 0.35 for 2D CNN, 2D SIFT, 2D KAZE, 3D SIFT and 3D KAZE respectively. The two major contributions of the paper constitute a new 3-D approach while applying deep learning technique to extract signature information rooted in both 2D slices and 3D blocks of CT images and an elaborated hand-crated approach of 3D KAZE. Copyright Â
© 2016 Elsevier Ireland Ltd. All rights reserved.

Entities:  

Keywords:  3D CNN; CT brain images; Classification; Convolutional neural network; Deep learning; KAZE

Mesh:

Year:  2016        PMID: 27886714     DOI: 10.1016/j.cmpb.2016.10.007

Source DB:  PubMed          Journal:  Comput Methods Programs Biomed        ISSN: 0169-2607            Impact factor:   5.428


  33 in total

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Authors:  Makoto Murata; Yoshiko Ariji; Yasufumi Ohashi; Taisuke Kawai; Motoki Fukuda; Takuma Funakoshi; Yoshitaka Kise; Michihito Nozawa; Akitoshi Katsumata; Hiroshi Fujita; Eiichiro Ariji
Journal:  Oral Radiol       Date:  2018-12-11       Impact factor: 1.852

2.  A deep-learning artificial intelligence system for assessment of root morphology of the mandibular first molar on panoramic radiography.

Authors:  Teruhiko Hiraiwa; Yoshiko Ariji; Motoki Fukuda; Yoshitaka Kise; Kazuhiko Nakata; Akitoshi Katsumata; Hiroshi Fujita; Eiichiro Ariji
Journal:  Dentomaxillofac Radiol       Date:  2018-11-09       Impact factor: 2.419

3.  Automatic detection of hemorrhagic pericardial effusion on PMCT using deep learning - a feasibility study.

Authors:  Lars C Ebert; Jakob Heimer; Wolf Schweitzer; Till Sieberth; Anja Leipner; Michael Thali; Garyfalia Ampanozi
Journal:  Forensic Sci Med Pathol       Date:  2017-08-18       Impact factor: 2.007

4.  Tumor co-segmentation in PET/CT using multi-modality fully convolutional neural network.

Authors:  Xiangming Zhao; Laquan Li; Wei Lu; Shan Tan
Journal:  Phys Med Biol       Date:  2018-12-21       Impact factor: 3.609

5.  Automated Detection of Alzheimer's Disease Using Brain MRI Images- A Study with Various Feature Extraction Techniques.

Authors:  U Rajendra Acharya; Steven Lawrence Fernandes; Joel En WeiKoh; Edward J Ciaccio; Mohd Kamil Mohd Fabell; U John Tanik; V Rajinikanth; Chai Hong Yeong
Journal:  J Med Syst       Date:  2019-08-09       Impact factor: 4.460

6.  Deep learning-based classification of multi-categorical Alzheimer's disease data.

Authors:  David S Cohen; Kristy A Carpenter; Juliet T Jarrell; Xudong Huang
Journal:  Curr Neurobiol       Date:  2019-10

7.  Preliminary study on the application of deep learning system to diagnosis of Sjögren's syndrome on CT images.

Authors:  Yoshitaka Kise; Haruka Ikeda; Takeshi Fujii; Motoki Fukuda; Yoshiko Ariji; Hiroshi Fujita; Akitoshi Katsumata; Eiichiro Ariji
Journal:  Dentomaxillofac Radiol       Date:  2019-05-22       Impact factor: 2.419

8.  Usefulness of a deep learning system for diagnosing Sjögren's syndrome using ultrasonography images.

Authors:  Yoshitaka Kise; Mayumi Shimizu; Haruka Ikeda; Takeshi Fujii; Chiaki Kuwada; Masako Nishiyama; Takuma Funakoshi; Yoshiko Ariji; Hiroshi Fujita; Akitoshi Katsumata; Kazunori Yoshiura; Eiichiro Ariji
Journal:  Dentomaxillofac Radiol       Date:  2019-12-11       Impact factor: 2.419

9.  Automatic diagnosis for cysts and tumors of both jaws on panoramic radiographs using a deep convolution neural network.

Authors:  Odeuk Kwon; Tae-Hoon Yong; Se-Ryong Kang; Jo-Eun Kim; Kyung-Hoe Huh; Min-Suk Heo; Sam-Sun Lee; Soon-Chul Choi; Won-Jin Yi
Journal:  Dentomaxillofac Radiol       Date:  2020-07-03       Impact factor: 2.419

10.  Impact of Upstream Medical Image Processing on Downstream Performance of a Head CT Triage Neural Network.

Authors:  Sarah M Hooper; Jared A Dunnmon; Matthew P Lungren; Domenico Mastrodicasa; Daniel L Rubin; Christopher Ré; Adam Wang; Bhavik N Patel
Journal:  Radiol Artif Intell       Date:  2021-04-28
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