4.5 Article

A Novel Deep Neural Network for Intracranial Haemorrhage Detection and Classification

期刊

CMC-COMPUTERS MATERIALS & CONTINUA
卷 68, 期 3, 页码 2877-2893

出版社

TECH SCIENCE PRESS
DOI: 10.32604/cmc.2021.015480

关键词

Intracerebral hemorrhage; fusion model; feature extraction; deep features; classification

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Data fusion poses a challenge in the healthcare sector, with Deep Learning being the preferred method for diagnosing conditions like Intracerebral Haemorrhage. The proposed FFEDL-ICH model combines handcrafted and deep features to outperform existing models, showing significant improvement in its performance. Further research is recommended to enhance the model's performance using learning rate scheduling techniques for Deep Neural Networks.
Data fusion is one of the challenging issues, the healthcare sector is facing in the recent years. Proper diagnosis from digital imagery and treatment are deemed to be the right solution. Intracerebral Haemorrhage (ICH), a condition characterized by injury of blood vessels in brain tissues, is one of the important reasons for stroke. Images generated by X-rays and Computed Tomography (CT) are widely used for estimating the size and location of hemorrhages. Radiologists use manual planimetry, a time-consuming process for segmenting CT scan images. Deep Learning (DL) is the most preferred method to increase the efficiency of diagnosing ICH. In this paper, the researcher presents a unique multi-modal data fusion-based feature extraction technique with Deep Learning (DL) model, abbreviated as FFE-DL for Intracranial Haemorrhage Detection and Classification, also known as FFEDL-ICH. The proposed FFEDL-ICH model has four stages namely, preprocessing, image segmentation, feature extraction, and classification. The input image is first preprocessed using the Gaussian Filtering (GF) technique to remove noise. Secondly, the Density-based Fuzzy C-Means (DFCM) algorithm is used to segment the images. Furthermore, the Fusion-based Feature Extraction model is implemented with handcrafted feature (Local Binary Patterns) and deep features (Residual Network-152) to extract useful features. Finally, Deep Neural Network (DNN) is implemented as a classification technique to differentiate multiple classes of ICH. The researchers, in the current study, used benchmark Intracranial Haemorrhage dataset and simulated the FFEDL-ICH model to assess its diagnostic performance. The findings of the study revealed that the proposed FFEDL-ICH model has the ability to outperform existing models as there is a significant improvement in its performance. For future researches, the researcher recommends the performance improvement of FFEDL-ICH model using learning rate scheduling techniques for DNN.

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