International Journal of Neutrosophic Science

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https://doi.org/10.54216/IJNS

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Volume 24 , Issue 4 , PP: 277-292, 2024 | Cite this article as | XML | Html | PDF | Full Length Article

Enhanced Brain Tumor Diagnosis through Differential and Canonical Quadri –Partitioned Neutrosophic Set Classification Methods:A Comparative Study

A. Panimalar 1 * , P. Sugapriya 2 , D. Aarthi 3 , S. Santhosh Kumar 4 , K. Mohana 5 , F. Nirmala Irudayam 6

  • 1 KGiSL institute of Technology,Coimbatore,India - (panimalar81@gmail.com)
  • 2 K. Ramakrishnan College of Engineering (Autonomous), Tiruchirapalli - 621112, India - (sugapriya.mat10@gmail.com)
  • 3 Department of Mathematics, Sri Ramakrishna Mission Vidyalaya College of Arts and Science, Coimbatore, India. - (fuzzysansrmvcas@gmail.com)
  • 4 Department of Mathematics, Sri Ramakrishna Mission Vidyalaya College of Arts and Science, Coimbatore, India. - (aarthi.pkm16@gmail.com)
  • 5 Department of Mathematics, Nirmala College for Women, Red Fields, Coimbatore, India. - (riyaraju1116@gmail.com)
  • 6 Department of Mathematics, Nirmala College for Women, Red Fields, Coimbatore, India. - (nirmalairudayam78@gmail.com)
  • Doi: https://doi.org/10.54216/IJNS.240420

    Received: November 14, 2023 Revised: March 17, 2024 Accepted: June 14, 2024
    Abstract

    An early cancer diagnosis is carried out for adequate management of diseases. Magnetic resonance imaging (MRI) is most commonly preferred method for cancer diagnosis. Due to the uncontrolled and rapid growth of cells, brain tumor is occurred. If not treated at a preliminary phase, it may lead to death. Thus, a noteworthy prerequisite for a successful treatment outcome is an early and precise diagnosis.Many conventional methods are discussed for performing efficient tumor detection. But, conventional classification methods not distinguish MRI as primary and metastases tumors in an accurate manner. Therefore, the performance comparison of deep learning-based classification (i.e., Differential Quadri-Partitioned Neutrosophic Interval-valued Polynomial Attention-based Deep CNN (DQNI-PADCNN) method and Canonical Quadri-Partitioned Neutrosophic Set based Otsuka–Ochiai Deep Recurrent Neural Network (CQNS-ODRNN) method) is introduced to provide exact image classification results. The brain MRI images are considered as an input. MRI image classification is carried out through CNN and RNN to find the brain tumor disease. Before the classification process, input images are de-noised. The noise-removed images are get segmented to identify the region of interested regions. Later, the images are classified into four classes such as glioma, meningioma, no tumor, and pituitary classes to detect the brain tumor. Both classification methods use Quadri-Partitioned Neutrosophic set for categorizing the images. Depending on CNNs and RNNs achievement in handling intricate tasks, an optimal multi-class brain tumor diagnosis is carried out. Experimental evaluation is implemented using MATLAB 2017 for brain tumor detection with the Brain Tumor MRI dataset. To the total number of MRI images, the various performance metrics are calculated in terms of sensitivity, specificity, accuracy, and time for the detection of brain tumors.

    Keywords :

    Cancer Diagnosis , Magnetic Resonance Imaging , Recurrent Neural Network , Convolutional Neural Network , Quadri-Partitioned Neutrosophic set

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    Cite This Article As :
    Panimalar, A.. , Sugapriya, P.. , Aarthi, D.. , Santhosh, S.. , Mohana, K.. , Nirmala, F.. Enhanced Brain Tumor Diagnosis through Differential and Canonical Quadri –Partitioned Neutrosophic Set Classification Methods:A Comparative Study. International Journal of Neutrosophic Science, vol. , no. , 2024, pp. 277-292. DOI: https://doi.org/10.54216/IJNS.240420
    Panimalar, A. Sugapriya, P. Aarthi, D. Santhosh, S. Mohana, K. Nirmala, F. (2024). Enhanced Brain Tumor Diagnosis through Differential and Canonical Quadri –Partitioned Neutrosophic Set Classification Methods:A Comparative Study. International Journal of Neutrosophic Science, (), 277-292. DOI: https://doi.org/10.54216/IJNS.240420
    Panimalar, A.. Sugapriya, P.. Aarthi, D.. Santhosh, S.. Mohana, K.. Nirmala, F.. Enhanced Brain Tumor Diagnosis through Differential and Canonical Quadri –Partitioned Neutrosophic Set Classification Methods:A Comparative Study. International Journal of Neutrosophic Science , no. (2024): 277-292. DOI: https://doi.org/10.54216/IJNS.240420
    Panimalar, A. , Sugapriya, P. , Aarthi, D. , Santhosh, S. , Mohana, K. , Nirmala, F. (2024) . Enhanced Brain Tumor Diagnosis through Differential and Canonical Quadri –Partitioned Neutrosophic Set Classification Methods:A Comparative Study. International Journal of Neutrosophic Science , () , 277-292 . DOI: https://doi.org/10.54216/IJNS.240420
    Panimalar A. , Sugapriya P. , Aarthi D. , Santhosh S. , Mohana K. , Nirmala F. [2024]. Enhanced Brain Tumor Diagnosis through Differential and Canonical Quadri –Partitioned Neutrosophic Set Classification Methods:A Comparative Study. International Journal of Neutrosophic Science. (): 277-292. DOI: https://doi.org/10.54216/IJNS.240420
    Panimalar, A. Sugapriya, P. Aarthi, D. Santhosh, S. Mohana, K. Nirmala, F. "Enhanced Brain Tumor Diagnosis through Differential and Canonical Quadri –Partitioned Neutrosophic Set Classification Methods:A Comparative Study," International Journal of Neutrosophic Science, vol. , no. , pp. 277-292, 2024. DOI: https://doi.org/10.54216/IJNS.240420