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Published in: The Journal of Supercomputing 2/2024

24-07-2023

Optimized convolutional neural network for the classification of lung cancer

Authors: Divya Paikaray, Ashok Kumar Mehta, Danish Ali Khan

Published in: The Journal of Supercomputing | Issue 2/2024

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Abstract

Convolutional neural networks (CNN) have made significant strides in the field of image processing recently by solving a variety of previously unsolvable issues. However, the efficacy of this system depends on the selected hyper-parameters, and it is hard to physically adjust these hyper-parameters. As a result, an optimized convolution neural network is suggested in this study and is then employed to identify the kind of lung cancer. By employing an appropriate encoding strategy, the approach has used a gray wolf optimization algorithm to optimize hyper-parameters of CNN. By contrasting the model’s performance with that of conventional CNN on the NIH/NCI Lung Image Database Consortium data set, the model’s efficacy is confirmed. According to simulation findings, the suggested model can generate testing accuracy up to 98.21%, which is higher than CNN. Similarly, the suggested model’s testing loss is around 0.10%, less than CNN. The test data conclusively show that the suggested model outperforms the conventional CNN.

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Metadata
Title
Optimized convolutional neural network for the classification of lung cancer
Authors
Divya Paikaray
Ashok Kumar Mehta
Danish Ali Khan
Publication date
24-07-2023
Publisher
Springer US
Published in
The Journal of Supercomputing / Issue 2/2024
Print ISSN: 0920-8542
Electronic ISSN: 1573-0484
DOI
https://doi.org/10.1007/s11227-023-05550-3

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