A deep stacked random vector functional link network autoencoder for diagnosis of brain abnormalities and breast cancer

Publication date: April 2020Source: Biomedical Signal Processing and Control, Volume 58Author(s): Deepak Ranjan Nayak, Ratnakar Dash, Banshidhar Majhi, Ram Bilas Pachori, Yudong ZhangAbstractAutomated diagnosis of two-class brain abnormalities through magnetic resonance imaging (MRI) has progressed significantly in past few years. In contrast, there exists a limited amount of methods proposed to date for multiclass brain abnormalities detection. Such detection has shown its importance in biomedical research and has remained a challenging task. Almost all existing methods are designed using conventional machine learning approaches, however, deep learning methods, due to their advantages over machine learning, have recently achieved great success in various computer vision and medical imaging applications. In this paper, a deep neural network termed as stacked random vector functional link (RVFL) based autoencoder (SRVFL-AE) is proposed to detect the multiclass brain abnormalities. The RVFL autoencoders are the basic building blocks of the proposed SRVFL-AE. The main purpose of choosing RVFL as the core component of the proposed SRVFL-AE is to improve the generalization capability and learning speed compared to traditional autoencoder based deep learning methods. Further, the rectified linear unit (ReLU) activation function is incorporated in the proposed deep network to provide fast and better hidden representation of input features. To evaluate the effectiveness of suggested ...
Source: Biomedical Signal Processing and Control - Category: Biomedical Science Source Type: research