Differential Deep Convolutional Neural Network Model for Brain Tumor Classification.

Isselmou Abd El Kader, Guizhi Xu, Zhang Shuai, Sani Saminu, Imran Javaid, Isah Salim Ahmad
Author Information
  1. Isselmou Abd El Kader: State Key Laboratory of Reliability and Intelligence of Electrical Equipment, Hebei University of Technology, Tianjin 300130, China. ORCID
  2. Guizhi Xu: State Key Laboratory of Reliability and Intelligence of Electrical Equipment, Hebei University of Technology, Tianjin 300130, China.
  3. Zhang Shuai: State Key Laboratory of Reliability and Intelligence of Electrical Equipment, Hebei University of Technology, Tianjin 300130, China.
  4. Sani Saminu: State Key Laboratory of Reliability and Intelligence of Electrical Equipment, Hebei University of Technology, Tianjin 300130, China.
  5. Imran Javaid: State Key Laboratory of Reliability and Intelligence of Electrical Equipment, Hebei University of Technology, Tianjin 300130, China.
  6. Isah Salim Ahmad: State Key Laboratory of Reliability and Intelligence of Electrical Equipment, Hebei University of Technology, Tianjin 300130, China.

Abstract

The classification of brain tumors is a difficult task in the field of medical image analysis. Improving algorithms and machine learning technology helps radiologists to easily diagnose the tumor without surgical intervention. In recent years, deep learning techniques have made excellent progress in the field of medical image processing and analysis. However, there are many difficulties in classifying brain tumors using magnetic resonance imaging; first, the difficulty of brain structure and the intertwining of tissues in it; and secondly, the difficulty of classifying brain tumors due to the high density nature of the brain. We propose a differential deep convolutional neural network model (differential deep-CNN) to classify different types of brain tumor, including abnormal and normal magnetic resonance (MR) images. Using differential operators in the differential deep-CNN architecture, we derived the additional differential feature maps in the original CNN feature maps. The derivation process led to an improvement in the performance of the proposed approach in accordance with the results of the evaluation parameters used. The advantage of the differential deep-CNN model is an analysis of a pixel directional pattern of images using contrast calculations and its high ability to classify a large database of images with high accuracy and without technical problems. Therefore, the proposed approach gives an excellent overall performance. To test and train the performance of this model, we used a dataset consisting of 25,000 brain magnetic resonance imaging (MRI) images, which includes abnormal and normal images. The experimental results showed that the proposed model achieved an accuracy of 99.25%. This study demonstrates that the proposed differential deep-CNN model can be used to facilitate the automatic classification of brain tumors.

Keywords

References

  1. Med Hypotheses. 2020 Jan;134:109433 [PMID: 31634769]
  2. Diagnostics (Basel). 2020 Aug 06;10(8): [PMID: 32781795]
  3. Sci Rep. 2020 Nov 12;10(1):19726 [PMID: 33184301]
  4. Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:5894-5897 [PMID: 30441677]
  5. IEEE Trans Med Imaging. 2019 Nov;38(11):2642-2653 [PMID: 30932833]
  6. Nature. 2015 May 28;521(7553):436-44 [PMID: 26017442]
  7. Med Hypotheses. 2020 Jun;139:109684 [PMID: 32240877]
  8. Med Image Anal. 2020 Apr;61:101639 [PMID: 32007702]
  9. IEEE Trans Med Imaging. 2016 May;35(5):1252-1261 [PMID: 27046893]
  10. Quant Imaging Med Surg. 2012 Sep;2(3):188-206 [PMID: 23256080]
  11. Med Hypotheses. 2020 Jan;134:109531 [PMID: 31877442]
  12. IEEE Trans Med Imaging. 2016 May;35(5):1240-1251 [PMID: 26960222]
  13. J Digit Imaging. 2017 Aug;30(4):449-459 [PMID: 28577131]
  14. IEEE Trans Biomed Eng. 2016 Sep;63(9):1850-1861 [PMID: 26625404]
  15. Neural Netw. 2019 Aug;116:279-287 [PMID: 31125914]
  16. Insights Imaging. 2020 Jun 8;11(1):77 [PMID: 32514649]
  17. Cancer Genet. 2012 Dec;205(12):613-21 [PMID: 23238284]
  18. J Digit Imaging. 2020 Aug;33(4):903-915 [PMID: 32440926]
  19. PLoS One. 2015 Oct 08;10(10):e0140381 [PMID: 26447861]
  20. IEEE J Biomed Health Inform. 2015 Sep;19(5):1627-36 [PMID: 25910262]
  21. Acta Neuropathol. 2016 Jun;131(6):803-20 [PMID: 27157931]

Word Cloud

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