Red Blood Cells Abnormality Classification: Deep Learning Architecture versus Support Vector Machine

被引:1
|
作者
Aliyu, Hajara Abdulkarim [1 ,2 ]
Sudirman, Rubita [2 ]
Razak, Mohd Azhar Abdul [2 ]
Abd Wahab, Muhamad Amin [2 ]
机构
[1] Jigawa State Polytech Dutse, Kiyawa Rd, Dutse 7040, Jigawa State, Nigeria
[2] Univ Teknol Malaysia, Fac Elect Engn, Johor Baharu 81310, Malaysia
来源
关键词
Red blood cells (RBCs); Deep Learning; SVM; Rbc's abnormality;
D O I
10.30880/ijie.2018.10.07.004
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The most common and dangerous defect of red blood cells (RBCS) is shape abnormality, The primary detection and confirmation of anaemic stage(shape abnormality) is based on haemoglobin level or manual microscopic examination of peripheral blood smears. The problem of classifying the abnormal cells manually under microscope is that it consumes time, working on huge number of sample manually is burdensome which leads to poor result quality with unnecessary medication leading to life trait to the patient and cause eye fatique to the technicians. This paper proposed a method to classify Rbc's abnormalities based on deformed shaped RBCs image by using SVM and Deep learning in comparison on the RBCs cell Classification. Classifying normal cells of RBCs indicate a healthy patient and Classifying anemic abnormalities indicate presence of disease. And is very important in medical field to detect and classify disease in early stage because it saves and protects human lives. The patients waiting time for blood test is longer because the time taken to generate the result of the blood test is more due to high demand and less equipment. This lead to comparison of the two classifiers in order to predict the one that will best perform on RBCs in order to achieved maximum accuracy for the classification. This study shows that SVM classifier can classify the cells in all condition either small or large dataset while deep learning performs mainly on large and very large dataset which RBCs dataset will be generated in large amount in order to work successfully with the state of the earth on RBCs deformity.
引用
收藏
页码:34 / 42
页数:9
相关论文
共 50 条
  • [31] Morphology classification of malaria infected red blood cells using deep learning techniques
    Muhammad, Fatima Abdullahi
    Sudirman, Rubita
    Zakaria, Nor Aini
    Daud, Syarifah Noor Syakiylla Sayed
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2025, 99
  • [32] Deep Learning Approach Versus Traditional Machine Learning for ADHD Classification
    Cicek, Gulay
    Akan, Aydin
    TIP TEKNOLOJILERI KONGRESI (TIPTEKNO'21), 2021,
  • [33] Deep Learning for Blood Cells Classification and Localisation
    Mercaldo, Francesco
    Cesarelli, Mario
    Martinelli, Fabio
    Santone, Antonella
    FIFTEENTH INTERNATIONAL CONFERENCE ON MACHINE VISION, ICMV 2022, 2023, 12701
  • [34] Comparison of Deep Learning and Support Vector Machine Learning for Subgroups of Multiple Sclerosis
    Karaca, Yeliz
    Cattani, Carlo
    Moonis, Majaz
    COMPUTATIONAL SCIENCE AND ITS APPLICATIONS - ICCSA 2017, PT II, 2017, 10405 : 142 - 153
  • [35] A Parallel Digital VLSI Architecture for Integrated Support Vector Machine Training and Classification
    Wang, Qian
    Li, Peng
    Kim, Yongtae
    IEEE TRANSACTIONS ON VERY LARGE SCALE INTEGRATION (VLSI) SYSTEMS, 2015, 23 (08) : 1471 - 1484
  • [36] Feature Extraction and Classification of Animal Blood Spectra with Support Vector Machine
    Lu Peng-fei
    Fan Ya
    Zhou Lin-hua
    Qian Jun
    Liu Lin-na
    Zhao Si-yan
    Kong Zhi-feng
    Gao Bin
    SPECTROSCOPY AND SPECTRAL ANALYSIS, 2017, 37 (12) : 3828 - 3832
  • [37] The learning performance of support vector machine classification based on Markov sampling
    ZOU Bin
    PENG ZhiMing
    XU ZongBen
    Science China(Information Sciences), 2013, 56 (03) : 107 - 122
  • [38] Classification of electrocardiogram signals with support vector machines and extreme learning machine
    S. Karpagachelvi
    M. Arthanari
    M. Sivakumar
    Neural Computing and Applications, 2012, 21 : 1331 - 1339
  • [39] The learning performance of support vector machine classification based on Markov sampling
    Bin Zou
    ZhiMing Peng
    ZongBen Xu
    Science China Information Sciences, 2013, 56 : 1 - 16
  • [40] Classification of electrocardiogram signals with support vector machines and extreme learning machine
    Karpagachelvi, S.
    Arthanari, M.
    Sivakumar, M.
    NEURAL COMPUTING & APPLICATIONS, 2012, 21 (06): : 1331 - 1339