-
Je něco špatně v tomto záznamu ?
Automated detection of bioimages using novel deep feature fusion algorithm and effective high-dimensional feature selection approach
R. Maurya, VK. Pathak, R. Burget, MK. Dutta
Jazyk angličtina Země Spojené státy americké
Typ dokumentu časopisecké články
NLK
ProQuest Central
od 2003-01-01 do 2023-12-31
Nursing & Allied Health Database (ProQuest)
od 2003-01-01 do 2023-12-31
Health & Medicine (ProQuest)
od 2003-01-01 do 2023-12-31
- MeSH
- algoritmy * MeSH
- neuronové sítě * MeSH
- Publikační typ
- časopisecké články MeSH
The classification of bioimages plays an important role in several biological studies, such as subcellular localisation, phenotype identification and other types of histopathological examinations. The objective of the present study was to develop a computer-aided bioimage classification method for the classification of bioimages across nine diverse benchmark datasets. A novel algorithm was developed, which systematically fused the features extracted from nine different convolution neural network architectures. A systematic fusion of features boosts the performance of a classifier but at the cost of the high dimensionality of the fused feature set. Therefore, non-discriminatory and redundant features need to be removed from a high-dimensional fused feature set to improve the classification performance and reduce the time complexity. To achieve this aim, a method based on analysis of variance and evolutionary feature selection was developed to select an optimal set of discriminatory features from the fused feature set. The proposed method was evaluated on nine different benchmark datasets. The experimental results showed that the proposed method achieved superior performance, with a significant reduction in the dimensionality of the fused feature set for most bioimage datasets. The performance of the proposed feature selection method was better than that of some of the most recent and classical methods used for feature selection. Thus, the proposed method was desirable because of its superior performance and high compression ratio, which significantly reduced the computational complexity.
Citace poskytuje Crossref.org
- 000
- 00000naa a2200000 a 4500
- 001
- bmc22003555
- 003
- CZ-PrNML
- 005
- 20230720093507.0
- 007
- ta
- 008
- 220113s2021 xxu f 000 0|eng||
- 009
- AR
- 024 7_
- $a 10.1016/j.compbiomed.2021.104862 $2 doi
- 035 __
- $a (PubMed)34534793
- 040 __
- $a ABA008 $b cze $d ABA008 $e AACR2
- 041 0_
- $a eng
- 044 __
- $a xxu
- 100 1_
- $a Maurya, Ritesh $u Centre for Advanced Studies, Dr A.P.J. Abdul Kalam Technical University, Lucknow, India. Electronic address: ritesh@cas.res.in
- 245 10
- $a Automated detection of bioimages using novel deep feature fusion algorithm and effective high-dimensional feature selection approach / $c R. Maurya, VK. Pathak, R. Burget, MK. Dutta
- 520 9_
- $a The classification of bioimages plays an important role in several biological studies, such as subcellular localisation, phenotype identification and other types of histopathological examinations. The objective of the present study was to develop a computer-aided bioimage classification method for the classification of bioimages across nine diverse benchmark datasets. A novel algorithm was developed, which systematically fused the features extracted from nine different convolution neural network architectures. A systematic fusion of features boosts the performance of a classifier but at the cost of the high dimensionality of the fused feature set. Therefore, non-discriminatory and redundant features need to be removed from a high-dimensional fused feature set to improve the classification performance and reduce the time complexity. To achieve this aim, a method based on analysis of variance and evolutionary feature selection was developed to select an optimal set of discriminatory features from the fused feature set. The proposed method was evaluated on nine different benchmark datasets. The experimental results showed that the proposed method achieved superior performance, with a significant reduction in the dimensionality of the fused feature set for most bioimage datasets. The performance of the proposed feature selection method was better than that of some of the most recent and classical methods used for feature selection. Thus, the proposed method was desirable because of its superior performance and high compression ratio, which significantly reduced the computational complexity.
- 650 12
- $a algoritmy $7 D000465
- 650 12
- $a neuronové sítě $7 D016571
- 655 _2
- $a časopisecké články $7 D016428
- 700 1_
- $a Pathak, Vinay Kumar $u Dr A.P.J. Abdul Kalam Technical University, Lucknow, India. Electronic address: vinay@vpathak.in
- 700 1_
- $a Burget, Radim, $u Department of Telecommunications, Faculty of Electrical Engineering and Communication, BRNO University of Technology, Czech Republic. Electronic address: burgetrm@feec.vutbr.cz $d 1982- $7 jo2015889385
- 700 1_
- $a Dutta, Malay Kishore $u Centre for Advanced Studies, Dr A.P.J. Abdul Kalam Technical University, Lucknow, India. Electronic address: mkd@cas.res.in
- 773 0_
- $w MED00001218 $t Computers in biology and medicine $x 1879-0534 $g Roč. 137, č. - (2021), s. 104862
- 856 41
- $u https://pubmed.ncbi.nlm.nih.gov/34534793 $y Pubmed
- 910 __
- $a ABA008 $b sig $c sign $y p $z 0
- 990 __
- $a 20220113 $b ABA008
- 991 __
- $a 20230720093501 $b ABA008
- 999 __
- $a ok $b bmc $g 1751117 $s 1154704
- BAS __
- $a 3
- BAS __
- $a PreBMC
- BMC __
- $a 2021 $b 137 $c - $d 104862 $e 20210910 $i 1879-0534 $m Computers in biology and medicine $n Comput Biol Med $x MED00001218
- LZP __
- $a Pubmed-20220113