An autonomous and intelligent hybrid CNN-RNN-LSTM based approach for the detection and classification of abnormalities in brain

被引:2
作者
Datta P. [1 ,2 ]
Rohilla R. [2 ]
机构
[1] G L Bajaj Institute of Technology and Management, U.P., Greater Noida
[2] Delhi Technological University, Delhi
关键词
Abnormalities; Brain; CNN; Hybrid; LSTM; RNN;
D O I
10.1007/s11042-023-17877-3
中图分类号
学科分类号
摘要
This article shows the identification and classification of abnormalities present in the brain. MRI test is typically conducted to detect abnormalities in the brain, but the test gives multiple information from a single image, which becomes highly exhaustive and challenging. Such types of issues can be resolved by considering the multi-mark classification, i.e., allocating multiple images with more than one mark. The marks are represented in terms of brain abnormalities. The six abnormalities of the brain are taken into account, namely: infract, hemorrhage, ring-enhancing lesion, granuloma, meningitis, and encephalitis. In order to detect and classify the abnormalities, convolutional neural networks (CNN) and recurrent neural networks (RNN) are used. CNN is used to extract the important features of the input signal based on a channel-wise model, while RNN is used to classify the various abnormalities with dependency parameters. RNN is executed with long short-term memory (LSTM) in order to prevent gradient failure. Performance parameters like accuracy, precision, probability of occurrence (POC), and mean square error (MSE) are used to avoid boundary conditions and classify abnormalities. Still, it is observed that individual applications of CNN and RNN-based LSTM for the detection and classification of abnormalities provide inappropriate performance parameters and involve huge mathematics. In order to resolve such issues, the best features of CNN and RNN-based LSTM methods have been extracted and developed in the hybrid intelligent controller. The hybrid approach provides improved and better performance parameters for the appropriate image classification of abnormalities in comparison to individual CNN, RNN, RNN-based LSTM, and other existing methods. The effectiveness and testing of the proposed hybrid approach are being tested on samples of 1000 collected data from the standard source. © The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2023.
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页码:60627 / 60653
页数:26
相关论文
共 32 条
  • [1] Ren L., Meng Z., Wang X., Lu R., Yang L.T., A wide-deep-sequence model based quality prediction method in industrial process analysis, IEEE Trans Neural Netw Learn Syst, (2020)
  • [2] Wang X., Yang L.T., Song L., Wang H., Ren L., Deen M.J., A tensor-based multi-attributes visual feature recognition method for industrial intelligence, IEEE Trans Industr Inf, (2020)
  • [3] Wang X., Yang L.T., Wang Y., Ren L., Deen M.J., Adtt: A highly-efficient distributed tensor-train decomposition method for iiot big data, IEEE Trans Industr Inf, (2020)
  • [4] Ren L., Meng Z., Wang X., Zhang L., Yang L.T., A data-driven approach of product quality prediction for complex production sys-tems, IEEE Trans Industr Inf, (2020)
  • [5] Zhao B., Li X., Lu X., Wang Z., A CNN–RNN architecture for multi-label weather recognition, Neurocomputing, 322, pp. 47-57, (2018)
  • [6] Cheng G., Yang C., Yao X., Guo L., Han J., When deep learning meets metric learning: remote sensing image scene classification via learning discriminative cnns, IEEE Trans Geosci Remote Sens, 56, 5, pp. 2811-2821, (2018)
  • [7] Han J., Zhang D., Cheng G., Liu N., Xu D., Advanced deep-learning techniques for salient and category-specific object detection: a survey, IEEE Signal Process. Mag, 35, 1, pp. 84-100, (2018)
  • [8] Pavlic M., Rigoll G., Ilic S., Classification of images in fog and fog-free scenes for use in vehicles, In: 2013 IEEE Intelligent Vehicles Symposium (IV), pp. 481-486, (2013)
  • [9] Benites F., Sapozhnikova E.P., HARAM: A hierarchical ARAM neural network for large-scale text classification, In: IEEE International Conference on Data Mining Workshop, ICDMW 2015, pp. 847-854, (2015)
  • [10] Akilan T., Wu Q.M.J., Jiang W., Safaei A., Huo J., New trend in video foreground detection using deep learning, 2018 IEEE 61St International Midwest Symposium on Circuits and Systems (MWSCAS), pp. 889-892, (2018)