Title of article :
A Novel Radial Basis Neural Network-Leveraged Fast Training Method for Identifying Organs in MR Images
Author/Authors :
Xu, Min School of Internet of Things - Jiangnan University - Wuxi, China , Qian, Pengjiang School of Artificial Intelligence and Computer Science - Jiangnan University - Wuxi, China , Zheng, Jiamin School of Artificial Intelligence and Computer Science - Jiangnan University - Wuxi, China , Ge, Hongwei School of Internet of Things - Jiangnan University - Wuxi, China , Muzic Jr, Raymond F. Department of Radiology and Case Center for Imaging Research - University Hospitals - Case Western Reserve University - Cleveland, USA
Abstract :
We propose a new method for fast organ classification and segmentation of abdominal magnetic resonance (MR) images. Magnetic
resonance imaging (MRI) is a new type of high-tech imaging examination fashion in recent years. Recognition of specific target areas
(organs) based on MR images is one of the key issues in computer-aided diagnosis of medical images. Artificial neural network
technology has made significant progress in image processing based on the multimodal MR attributes of each pixel in MR images.
However, with the generation of large-scale data, there are few studies on the rapid processing of large-scale MRI data. To address
this deficiency, we present a fast radial basis function artificial neural network (Fast-RBF) algorithm. The importance of our efforts
is as follows: (1) The proposed algorithm achieves fast processing of large-scale image data by introducing the ε-insensitive loss
function, the structural risk term, and the core-set principle. We apply this algorithm to the identification of specific target areas in
MR images. (2) For each abdominal MRI case, we use four MR sequences (fat, water, in-phase (IP), and opposed-phase (OP)) and
the position coordinates (x, y) of each pixel as the input of the algorithm. We use three classifiers to identify the liver and kidneys
in the MR images. Experiments show that the proposed method achieves a higher precision in the recognition of specific regions of
medical images and has better adaptability in the case of large-scale datasets than the traditional RBF algorithm.
Keywords :
MR , MRI , Organs , Training , RBF
Journal title :
Computational and Mathematical Methods in Medicine