UM
Multi-view convolutional neural network with leader and long-tail particle swarm optimizer for enhancing heart disease and breast cancer detection
Lan,Kun3; Liu,Liansheng2; Li,Tengyue3; Chen,Yuhao3; Fong,Simon3; Marques,Joao Alexandre Lobo4; Wong,Raymond K.5; Tang,Rui1
2020-10-01
Source PublicationNeural Computing and Applications
ISSN0941-0643
Volume32Issue:19Pages:15469-15488
AbstractAs the core of deep learning methodologies, convolutional neural network (CNN) has received wide attention in the area of image recognition. In particular, it requires very precise, accurate and fine recognition power for medical imaging processing. Numerous promising prospects of CNN applications with medical prognosis and diagnosis have been reported in the related works, and the common goal among the literature is mainly to analyze the insights from the finest details of medical images and build a more suitable model with maximum accuracy and minimum error. Thus, a novel CNN model is proposed with the characteristics of multi-view feature preprocessing and swarm-based parameter optimization. Additional information of extra features from multi-view is discovered potentially for training, and simultaneously, the most optimal set of CNN parameters are provided by our proposed leader and long-tail-based particle swarm optimization. The purpose of such a hybrid method is to achieve the highest possibility of target recognition in medical images. Preliminary experiments over cardiovascular and mammogram datasets related to heart disease prediction and breast cancer classification, respectively, are designed and conducted, and the results indicate encouraging performance compared to other existing CNN model optimization methods.
KeywordBreast cancer Convolutional neural network Heart disease Leader and long-tail Parameter optimization Particle swarm optimization
DOI10.1007/s00521-020-04769-y
URLView the original
Language英语
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Document TypeJournal article
CollectionUniversity of Macau
Corresponding AuthorTang,Rui
Affiliation1.Department of Management Science and Information System,Faculty of Management and Economics,Kunming University of Science and Technology,Kunming,China
2.Department of Medical Imaging,First Affiliated Hospital of Guangzhou University of Chinese Medicine,Guangzhou,China
3.Department of Computer and Information Science,Faculty of Science and Technology,University of Macau,Macao
4.School of Business,University of Saint Joseph,Macao
5.School of Computer Science and Engineering,University of New South Wales,Sydney,Australia
First Author AffilicationFaculty of Science and Technology
Recommended Citation
GB/T 7714
Lan,Kun,Liu,Liansheng,Li,Tengyue,et al. Multi-view convolutional neural network with leader and long-tail particle swarm optimizer for enhancing heart disease and breast cancer detection[J]. Neural Computing and Applications,2020,32(19):15469-15488.
APA Lan,Kun,Liu,Liansheng,Li,Tengyue,Chen,Yuhao,Fong,Simon,Marques,Joao Alexandre Lobo,Wong,Raymond K.,&Tang,Rui.(2020).Multi-view convolutional neural network with leader and long-tail particle swarm optimizer for enhancing heart disease and breast cancer detection.Neural Computing and Applications,32(19),15469-15488.
MLA Lan,Kun,et al."Multi-view convolutional neural network with leader and long-tail particle swarm optimizer for enhancing heart disease and breast cancer detection".Neural Computing and Applications 32.19(2020):15469-15488.
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