Efficient Brain Tumor Classification Using Filter-Based Deep Feature Selection Methodology

被引:0
|
作者
Satrajit Kar [1 ]
Utathya Aich [2 ]
Pawan Kumar Singh [1 ]
机构
[1] Jadavpur University,Department of Information Technology
[2] Jadavpur University Second Campus,undefined
[3] CNH Industrial ITC,undefined
[4] Shinawatra University,undefined
关键词
Brain tumor classification; MRI scan; Deep feature selection methodology; Transfer learning; EfficientNetB3; Mutual information; Support vector machine;
D O I
10.1007/s42979-024-03392-1
中图分类号
学科分类号
摘要
Neuroimaging plays an elemental role in disease detection in the domain of medical science. Brain magnetic resonance imaging (MRI) helps to detect chronic diseases such as brain tumors, strokes, and dementia. It is a nonintrusive and sensitive method for evaluating brain tumors. Numerous deep learning techniques have been proposed to analyze brain tumors as they revolutionize feature selection by automatically extracting relevant features, outperforming traditional methods in accuracy and speed. Our paper proposes a first-of-its-kind, two-stage framework for classifying brain tumors from structural MRI scans. In the first stage, a pre-trained convolutional neural network has been used to extract relevant features, considerably reducing training time and the need for extensive hardware. Next, a filter-based deep feature selection method narrows down the high-dimensional features obtained from the previous stage, minimizing computational load and overfitting risks. Finally, a polynomial-kernel Support vector machine performs multi-class classification. We have also employed fivefold cross-validation to ensure reliable results that are not overly sensitive to specific training or testing data. On the first dataset, this paper achieved 98.17% classification accuracy, 97.92% precision, 97.95% recall, and an F1-score of 97.92% while simultaneously reducing 25% of the extracted features. The approach has also been tested on two additional brain tumor datasets, giving classification accuracies of 99.46% and 98.70%. These promising results underscore the potential of our lightweight framework’s robust nature and generalization capabilities, making it suitable for deployment in real-time environments with limited technological resources.
引用
收藏
相关论文
共 50 条
  • [31] Handcrafted Deep-Feature-Based Brain Tumor Detection and Classification Using MRI Images
    Mohan, Prakash
    Veerappampalayam Easwaramoorthy, Sathishkumar
    Subramani, Neelakandan
    Subramanian, Malliga
    Meckanzi, Sangeetha
    ELECTRONICS, 2022, 11 (24)
  • [32] Parallel Filter-Based Feature Selection Based on Balanced Incomplete Block Designs
    Salmeron, Antonio
    Madsen, Anders L.
    Jensen, Frank
    Langseth, Helge
    Nielsen, Thomas D.
    Ramos-Lopez, Dario
    Martinez, Ana M.
    Masegosa, Andres R.
    ECAI 2016: 22ND EUROPEAN CONFERENCE ON ARTIFICIAL INTELLIGENCE, 2016, 285 : 743 - 750
  • [33] Multimodal Brain Tumor Classification Using Deep Learning and Robust Feature Selection: A Machine Learning Application for Radiologists
    Khan, Muhammad Attique
    Ashraf, Imran
    Alhaisoni, Majed
    Damasevicius, Robertas
    Scherer, Rafal
    Rehman, Amjad
    Bukhari, Syed Ahmad Chan
    DIAGNOSTICS, 2020, 10 (08)
  • [34] Feature Selection in High Dimensional Data by a Filter-Based Genetic Algorithm
    De Stefano, Claudio
    Fontanella, Francesco
    di Freca, Alessandra Scotto
    APPLICATIONS OF EVOLUTIONARY COMPUTATION, EVOAPPLICATIONS 2017, PT I, 2017, 10199 : 506 - 521
  • [35] A Particle Swarm Optimization with Filter-based Population Initialization for Feature Selection
    Xue, Yu
    Jia, Weiwei
    Liu, Alex X.
    2019 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2019, : 1572 - 1579
  • [36] Evaluating the impact of filter-based feature selection in intrusion detection systems
    Houssam Zouhri
    Ali Idri
    Ahmed Ratnani
    International Journal of Information Security, 2024, 23 : 759 - 785
  • [37] Filter-Based Feature Selection Methods for Industrial Sensor Data: A Review
    Luftensteiner, Sabrina
    Mayr, Michael
    Chasparis, Georgios
    BIG DATA ANALYTICS AND KNOWLEDGE DISCOVERY (DAWAK 2021), 2021, 12925 : 242 - 249
  • [38] Filter-based optimization techniques for selection of feature subsets in ensemble systems
    Santana, Laura Emmanuella A. dos S.
    de Paula Canuto, Anne M.
    EXPERT SYSTEMS WITH APPLICATIONS, 2014, 41 (04) : 1622 - 1631
  • [39] Evaluating the impact of filter-based feature selection in intrusion detection systems
    Zouhri, Houssam
    Idri, Ali
    Ratnani, Ahmed
    INTERNATIONAL JOURNAL OF INFORMATION SECURITY, 2024, 23 (02) : 759 - 785
  • [40] Filter-Based Feature Selection Method for Predicting Students' Academic Performance
    Dafid
    Ermatita
    2022 INTERNATIONAL CONFERENCE ON DATA SCIENCE AND ITS APPLICATIONS (ICODSA), 2022, : 309 - 314