Research Article
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An Improved Deep CNN For an Early and Accurate Skin Cancer Detection and Diagnosis System

Year 2022, Volume: 14 Issue: 2, 721 - 734, 31.07.2022
https://doi.org/10.29137/umagd.1116295

Abstract

Skin cancer is considered to be the most common and dangerous type of cancer. Information technology techniques are required to detect and diagnose skin cancer. Therefore, there is a need for an early and accurate skin cancer diagnosis and detection by employing an efficient deep learning technique. This research work proposes automatic diagnosis of skin cancer by employing Deep Convolution Neural Network (DCNN). The distinguishing feature of this research is it employs DCNN with 12 nested processing layers increasing the diagnosis and detection of skin cancer accuracy. Beside neural network, machine learning techniques of naïve Bayes and random forest are also utilized to detect skin cancer. This research work results concluded that the deep learning technique are more effective than machine learning in terms of skin cancer detection. By applying Naïve Bayesian on the proposed system accuracy of 96% were achieved, similarly for Random Forest method, an accuracy of 97% were achieved. The accuracy of 99.5% were achieved by applying Deep CNN network. The performance of proposed system has been compared with other research work and it is concluded that it shows the higher performance compared to all conventional systems.

References

  • Boman, J., & Volminger, A. (2018). Evaluating a deep convolutional neural network for classification of skin cancer. In.
  • Bray, F., Ferlay, J., Soerjomataram, I., Siegel, R. L., Torre, L. A., & Jemal, A. (2018). Global cancer statistics 2018: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries. CA: a cancer journal for clinicians, 68(6), 394-424.
  • Brekhna, B., Mahmood, A., Zhou, Y., & Zhang, C. (2017). Robustness analysis of superpixel algorithms to image blur, additive Gaussian noise, and impulse noise. Journal of Electronic Imaging, 26(6), 061604.
  • Daghrir, J., Tlig, L., Bouchouicha, M., & Sayadi, M. (2020). Melanoma skin cancer detection using deep learning and classical machine learning techniques: A hybrid approach. Paper presented at the 2020 5th international conference on advanced technologies for signal and image processing (ATSIP).
  • Dorj, U.-O., Lee, K.-K., Choi, J.-Y., & Lee, M. (2018). The skin cancer classification using deep convolutional neural network. Multimedia Tools and Applications, 77(8), 9909-9924. Gedraite, E. S., & Hadad, M. (2011). Investigation on the effect of a Gaussian Blur in image filtering and segmentation. Paper presented at the Proceedings ELMAR-2011.
  • Grigoryan, A. M., & Agaian, S. S. (2020). New look on quantum representation of images: Fourier transform representation. Quantum Information Processing, 19(5), 1-26.
  • Kadampur, M. A., & Al Riyaee, S. (2020). Skin cancer detection: Applying a deep learning based model driven architecture in the cloud for classifying dermal cell images. Informatics in Medicine Unlocked, 18, 100282.
  • Krive, J., Patel, M., Gehm, L., Mackey, M., Kulstad, E., Lussier, Y. A., & Boyd, A. D. (2015). The complexity and challenges of the international classification of diseases, ninth revision, clinical modification to international classification of diseases, 10th revision, clinical modification transition in eds. The American journal of emergency medicine, 33(5), 713-718.
  • Ku, J., Harakeh, A., & Waslander, S. L. (2018). In defense of classical image processing: Fast depth completion on the cpu. Paper presented at the 2018 15th Conference on Computer and Robot Vision (CRV).
  • Kumar, M., Alshehri, M., AlGhamdi, R., Sharma, P., & Deep, V. (2020). A de-ann inspired skin cancer detection approach using fuzzy c-means clustering. Mobile Networks and Applications, 25(4), 1319-1329.
  • Lewis, D. D. (1998). Naive (Bayes) at forty: The independence assumption in information retrieval. Paper presented at the European conference on machine learning.
  • Mahesh, B. (2020). Machine learning algorithms-a review. International Journal of Science and Research (IJSR).[Internet], 9, 381-386.
  • Munir, K., Elahi, H., Ayub, A., Frezza, F., & Rizzi, A. (2019). Cancer diagnosis using deep learning: a bibliographic review. Cancers, 11(9), 1235.
  • Nahata, H., & Singh, S. P. (2020). Deep learning solutions for skin cancer detection and diagnosis. In Machine Learning with Health Care Perspective (pp. 159-182): Springer.
  • Pacheco, A. G., Ali, A.-R., & Trappenberg, T. (2019). Skin cancer detection based on deep learning and entropy to detect outlier samples. arXiv preprint arXiv:1909.04525.
  • Pranckevičius, T., & Marcinkevičius, V. (2017). Comparison of naive bayes, random forest, decision tree, support vector machines, and logistic regression classifiers for text reviews classification. Baltic Journal of Modern Computing, 5(2), 221.
  • Rey-Barroso, L., Peña-Gutiérrez, S., Yáñez, C., Burgos-Fernández, F. J., Vilaseca, M., & Royo, S. (2021). Optical Technologies for the Improvement of Skin Cancer Diagnosis: A Review. Sensors, 21(1), 252.
  • Salvi, M., Acharya, U. R., Molinari, F., & Meiburger, K. M. (2021). The impact of pre-and post-image processing techniques on deep learning frameworks: A comprehensive review for digital pathology image analysis. Computers in Biology and Medicine, 128, 104129.
  • Speiser, J. L., Miller, M. E., Tooze, J., & Ip, E. (2019). A comparison of random forest variable selection methods for classification prediction modeling. Expert systems with applications, 134, 93-101.
  • Wang, A., Zhang, W., & Wei, X. (2019). A review on weed detection using ground-based machine vision and image processing techniques. Computers and electronics in agriculture, 158, 226-240.
  • Yang, Y.-G., Zou, L., Zhou, Y.-H., & Shi, W.-M. (2020). Visually meaningful encryption for color images by using Qi hyper-chaotic system and singular value decomposition in YCbCr color space. Optik, 213, 164422.
  • Zhang, L., Gao, H. J., Zhang, J., & Badami, B. (2019). Optimization of the convolutional neural networks for automatic detection of skin cancer. Open Medicine, 15(1), 27-37.
  • Zhang, N., Cai, Y.-X., Wang, Y.-Y., Tian, Y.-T., Wang, X.-L., & Badami, B. (2020). Skin cancer diagnosis based on optimized convolutional neural network. Artificial intelligence in medicine, 102, 101756.

An Improved Deep CNN For an Early and Accurate Skin Cancer Detection and Diagnosis System

Year 2022, Volume: 14 Issue: 2, 721 - 734, 31.07.2022
https://doi.org/10.29137/umagd.1116295

Abstract

Skin cancer is considered to be the most common and dangerous type of cancer. Information technology techniques are required to detect and diagnose skin cancer. Therefore, there is a need for an early and accurate skin cancer diagnosis and detection by employing an efficient deep learning technique. This research work proposes automatic diagnosis of skin cancer by employing Deep Convolution Neural Network (DCNN). The distinguishing feature of this research is it employs DCNN with 12 nested processing layers increasing the diagnosis and detection of skin cancer accuracy. Beside neural network, machine learning techniques of naïve Bayes and random forest are also utilized to detect skin cancer. This research work results concluded that the deep learning technique are more effective than machine learning in terms of skin cancer detection. By applying Naïve Bayesian on the proposed system accuracy of 96% were achieved, similarly for Random Forest method, an accuracy of 97% were achieved. The accuracy of 99.5% were achieved by applying Deep CNN network. The performance of proposed system has been compared with other research work and it is concluded that it shows the higher performance compared to all conventional systems.

References

  • Boman, J., & Volminger, A. (2018). Evaluating a deep convolutional neural network for classification of skin cancer. In.
  • Bray, F., Ferlay, J., Soerjomataram, I., Siegel, R. L., Torre, L. A., & Jemal, A. (2018). Global cancer statistics 2018: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries. CA: a cancer journal for clinicians, 68(6), 394-424.
  • Brekhna, B., Mahmood, A., Zhou, Y., & Zhang, C. (2017). Robustness analysis of superpixel algorithms to image blur, additive Gaussian noise, and impulse noise. Journal of Electronic Imaging, 26(6), 061604.
  • Daghrir, J., Tlig, L., Bouchouicha, M., & Sayadi, M. (2020). Melanoma skin cancer detection using deep learning and classical machine learning techniques: A hybrid approach. Paper presented at the 2020 5th international conference on advanced technologies for signal and image processing (ATSIP).
  • Dorj, U.-O., Lee, K.-K., Choi, J.-Y., & Lee, M. (2018). The skin cancer classification using deep convolutional neural network. Multimedia Tools and Applications, 77(8), 9909-9924. Gedraite, E. S., & Hadad, M. (2011). Investigation on the effect of a Gaussian Blur in image filtering and segmentation. Paper presented at the Proceedings ELMAR-2011.
  • Grigoryan, A. M., & Agaian, S. S. (2020). New look on quantum representation of images: Fourier transform representation. Quantum Information Processing, 19(5), 1-26.
  • Kadampur, M. A., & Al Riyaee, S. (2020). Skin cancer detection: Applying a deep learning based model driven architecture in the cloud for classifying dermal cell images. Informatics in Medicine Unlocked, 18, 100282.
  • Krive, J., Patel, M., Gehm, L., Mackey, M., Kulstad, E., Lussier, Y. A., & Boyd, A. D. (2015). The complexity and challenges of the international classification of diseases, ninth revision, clinical modification to international classification of diseases, 10th revision, clinical modification transition in eds. The American journal of emergency medicine, 33(5), 713-718.
  • Ku, J., Harakeh, A., & Waslander, S. L. (2018). In defense of classical image processing: Fast depth completion on the cpu. Paper presented at the 2018 15th Conference on Computer and Robot Vision (CRV).
  • Kumar, M., Alshehri, M., AlGhamdi, R., Sharma, P., & Deep, V. (2020). A de-ann inspired skin cancer detection approach using fuzzy c-means clustering. Mobile Networks and Applications, 25(4), 1319-1329.
  • Lewis, D. D. (1998). Naive (Bayes) at forty: The independence assumption in information retrieval. Paper presented at the European conference on machine learning.
  • Mahesh, B. (2020). Machine learning algorithms-a review. International Journal of Science and Research (IJSR).[Internet], 9, 381-386.
  • Munir, K., Elahi, H., Ayub, A., Frezza, F., & Rizzi, A. (2019). Cancer diagnosis using deep learning: a bibliographic review. Cancers, 11(9), 1235.
  • Nahata, H., & Singh, S. P. (2020). Deep learning solutions for skin cancer detection and diagnosis. In Machine Learning with Health Care Perspective (pp. 159-182): Springer.
  • Pacheco, A. G., Ali, A.-R., & Trappenberg, T. (2019). Skin cancer detection based on deep learning and entropy to detect outlier samples. arXiv preprint arXiv:1909.04525.
  • Pranckevičius, T., & Marcinkevičius, V. (2017). Comparison of naive bayes, random forest, decision tree, support vector machines, and logistic regression classifiers for text reviews classification. Baltic Journal of Modern Computing, 5(2), 221.
  • Rey-Barroso, L., Peña-Gutiérrez, S., Yáñez, C., Burgos-Fernández, F. J., Vilaseca, M., & Royo, S. (2021). Optical Technologies for the Improvement of Skin Cancer Diagnosis: A Review. Sensors, 21(1), 252.
  • Salvi, M., Acharya, U. R., Molinari, F., & Meiburger, K. M. (2021). The impact of pre-and post-image processing techniques on deep learning frameworks: A comprehensive review for digital pathology image analysis. Computers in Biology and Medicine, 128, 104129.
  • Speiser, J. L., Miller, M. E., Tooze, J., & Ip, E. (2019). A comparison of random forest variable selection methods for classification prediction modeling. Expert systems with applications, 134, 93-101.
  • Wang, A., Zhang, W., & Wei, X. (2019). A review on weed detection using ground-based machine vision and image processing techniques. Computers and electronics in agriculture, 158, 226-240.
  • Yang, Y.-G., Zou, L., Zhou, Y.-H., & Shi, W.-M. (2020). Visually meaningful encryption for color images by using Qi hyper-chaotic system and singular value decomposition in YCbCr color space. Optik, 213, 164422.
  • Zhang, L., Gao, H. J., Zhang, J., & Badami, B. (2019). Optimization of the convolutional neural networks for automatic detection of skin cancer. Open Medicine, 15(1), 27-37.
  • Zhang, N., Cai, Y.-X., Wang, Y.-Y., Tian, Y.-T., Wang, X.-L., & Badami, B. (2020). Skin cancer diagnosis based on optimized convolutional neural network. Artificial intelligence in medicine, 102, 101756.
There are 23 citations in total.

Details

Primary Language English
Subjects Electrical Engineering
Journal Section Articles
Authors

Zafer Civelek 0000-0001-6838-3149

Mohammed Kfashi 0000-0001-6794-0687

Publication Date July 31, 2022
Submission Date May 13, 2022
Published in Issue Year 2022 Volume: 14 Issue: 2

Cite

APA Civelek, Z., & Kfashi, M. (2022). An Improved Deep CNN For an Early and Accurate Skin Cancer Detection and Diagnosis System. International Journal of Engineering Research and Development, 14(2), 721-734. https://doi.org/10.29137/umagd.1116295

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