A Deep Probabilistic Sensing and Learning Model for Brain Tumor Classification With Fusion-Net and HFCMIK Segmentation

<italic>Goal:</italic> Implementation of an artificial intelli gence-based medical diagnosis tool for brain tumor classification, which is called the BTFSC-Net. <italic>Methods:</italic> Medical images are preprocessed using a hybrid probabilistic wiener filter (HPWF) The dee...

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Bibliographic Details
Main Authors: M. V. S. Ramprasad, Md. Zia Ur Rahman, Masreshaw Demelash Bayleyegn
Format: Article
Language:English
Published: IEEE 2022-01-01
Series:IEEE Open Journal of Engineering in Medicine and Biology
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9928545/
Description
Summary:<italic>Goal:</italic> Implementation of an artificial intelli gence-based medical diagnosis tool for brain tumor classification, which is called the BTFSC-Net. <italic>Methods:</italic> Medical images are preprocessed using a hybrid probabilistic wiener filter (HPWF) The deep learning convolutional neural network (DLCNN) was utilized to fuse MRI and CT images with robust edge analysis (REA) properties, which are used to identify the slopes and edges of source images. Then, hybrid fuzzy c-means integrated k-means (HFCMIK) clustering is used to segment the disease affected region from the fused image. Further, hybrid features such as texture, colour, and low-level features are extracted from the fused image by using gray-level cooccurrence matrix (GLCM), redundant discrete wavelet transform (RDWT) descriptors. Finally, a deep learning based probabilistic neural network (DLPNN) is used to classify malignant and benign tumors. The BTFSC-Net attained 99.21&#x0025; of segmentation accuracy and 99.46&#x0025; of classification accuracy. <italic>Conclusions:</italic> The simulations showed that BTFSC-Net outperformed as compared to existing methods.
ISSN:2644-1276