Liver fat analysis using optimized support vector machine with support vector regression

被引:1
|
作者
Pushpa, B. [1 ]
Baskaran, B. [2 ]
Vivekanandan, S. [3 ]
Gokul, P. [4 ]
机构
[1] Annamalai Univ, Dept Elect & Elect Engn, Chidambaram, Tamil Nadu, India
[2] Annamalai Univ, Fac Engn & Technol, Dept Elect & Elect Engn, Chidambaram, Tamil Nadu, India
[3] RPS Hosp, Dept HPB & Liver Transplantat, Managing Director & Liver Transplant Surgeon, Chennai, Tamil Nadu, India
[4] Saveetha Sch Engn, Dept Biotechnol, Chennai, Tamil Nadu, India
关键词
CT scans; deep learning; liver fat; image analysis; liver segmentation; support vector regression; visual image processing;
D O I
10.3233/THC-220254
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BACKGROUND: Fatty liver disease is a common condition caused by excess fat in the liver. It consists of two types: Alcoholic Fatty Liver Disease, also called alcoholic steatohepatitis, and Non-Alcoholic Fatty Liver Disease (NAFLD). As per epidemiological studies, fatty liver encompasses 9% to 32% of the general population in India and affects overweight people. OBJECTIVE: An Optimized Support Vector Machine with Support Vector Regression model is proposed to evaluate the volume of liver fat by image analysis (LFA-OSVM-SVR). METHOD: The input computed tomography (CT) liver images are collected from the Chennai liver foundation and Liver Segmentation (LiTS) datasets. Here, input datasets are pre-processed using Gaussian smoothing filter and bypass filter to reduce noise and improve image intensity. The proposed U-Net method is used to perform the liver segmentation. The Optimized Support Vector Machine is used to classify the liver images as fatty liver image and normal images. The support vector regression (SVR) is utilized for analyzing the fat in percentage. RESULTS: The LFA-OSVM-SVR model effectively analyzed the liver fat from CT scan images. The proposed approach is activated in python and its efficiency is analyzed under certain performance metrics. CONCLUSION: The proposed LFA-OSVM-SVR method attains 33.4%, 28.3%, 25.7% improved accuracy with 55%, 47.7%, 32.6% lower error rate for fatty image classification and 30%, 21%, 19.5% improved accuracy with 57.9%, 46.5%, 31.76% lower error rate for normal image classificationthan compared to existing methods such as Convolutional Neural Network (CNN) with Fractional Differential Enhancement (FDE) (CNN-FDE), Fully Convolutional Networks (FCN) and Non-negative Matrix Factorization (NMF) (FCN-NMF), and Deep Learning with Fully Convolutional Networks (FCN) (DL-FCN).
引用
收藏
页码:867 / 886
页数:20
相关论文
共 50 条
  • [1] Interval regression analysis using support vector machine and quantile regression
    Hwang, CH
    Hong, DH
    Na, E
    Park, H
    Shim, J
    [J]. FUZZY SYSTEMS AND KNOWLEDGE DISCOVERY, PT 1, PROCEEDINGS, 2005, 3613 : 100 - 109
  • [2] Interval Support Vector Machine in Regression Analysis
    Arjmandzadeh, Ameneh
    Effati, Sohrab
    Zamirian, Mohammad
    [J]. JOURNAL OF MATHEMATICS AND COMPUTER SCIENCE-JMCS, 2011, 2 (03): : 565 - 571
  • [3] Possibilistic Regression Analysis by Support Vector Machine
    Hao, Pei-Yi
    [J]. IEEE INTERNATIONAL CONFERENCE ON FUZZY SYSTEMS (FUZZ 2011), 2011, : 889 - 894
  • [4] Support vector machine and optimized method for spectral analysis
    Lin Ji-Peng
    Liu Jun-hua
    [J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2006, 26 (12) : 2232 - 2235
  • [5] Predictive modeling in a steelmaking process using optimized relevance vector regression and support vector regression
    Acosta, Simone Massulini
    Amoroso, Anderson Levati
    Oliveira Sant'Anna, Angelo Marcio
    Canciglieri Junior, Osiris
    [J]. ANNALS OF OPERATIONS RESEARCH, 2022, 316 (02) : 905 - 926
  • [6] Predictive modeling in a steelmaking process using optimized relevance vector regression and support vector regression
    Simone Massulini Acosta
    Anderson Levati Amoroso
    Ângelo Márcio Oliveira Sant’Anna
    Osiris Canciglieri Junior
    [J]. Annals of Operations Research, 2022, 316 : 905 - 926
  • [7] Tide modelling using support vector machine regression
    Okwuashi, Onuwa
    Ndehedehe, Christopher
    [J]. JOURNAL OF SPATIAL SCIENCE, 2017, 62 (01) : 29 - 46
  • [8] Regression depth and support vector machine
    Christmann, Andreas
    [J]. DATA DEPTH: ROBUST MULTIVARIATE ANALYSIS, COMPUTATIONAL GEOMETRY AND APPLICATIONS, 2006, 72 : 71 - 85
  • [9] Interval regression analysis using quadratic loss support vector machine
    Hong, DH
    Hwang, CH
    [J]. IEEE TRANSACTIONS ON FUZZY SYSTEMS, 2005, 13 (02) : 229 - 237
  • [10] An ε-twin support vector machine for regression
    Yuan-Hai Shao
    Chun-Hua Zhang
    Zhi-Min Yang
    Ling Jing
    Nai-Yang Deng
    [J]. Neural Computing and Applications, 2013, 23 : 175 - 185