Feature extraction of Giemsa-stained chromosomes and classification error of a backpropagation neural network-based classifier

被引:1
|
作者
Ryu, SY [1 ]
Cho, JM [1 ]
机构
[1] Inje Univ, Dept Biomed Engn, Kimhae, South Korea
关键词
artificial neural network; chromosome; feature; classification error;
D O I
10.1117/12.461676
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Many studies for computer-based chromosome analysis using artificial neural network (ANN) have shown that it is possible to classify chromosomes into 24 subgroups. It is important to select optimum features for training the ANN. Our purpose was to select features that had the low classification error and the best ability for human chromosome classification. We applied the medial axis transformation for the medial line, extended the line to the boundary and obtained relative length, relative area and centromeric index. The Giemsa-stained human chromosome has a sequence of banding pattern that is perpendicular to the medial axis of the chromosome. Density profile is a one-dimensional graph of the banding pattern property of the chromosome computed at a sequence of points along the possibly curved chromosome medial axis. Some studied used relative length, centromeric index and 62 density profile as features, but we prepared two data sets as features that one set was relative length, centromeric index and 80 density profile considered No. I chromosome's length and the other was relative length, centromeric index, the 80 density profile and relative area and compared classification error of each set. We found that the classification error showed to be decreased by adding relative area to the other features.
引用
收藏
页码:20 / 28
页数:3
相关论文
共 50 条
  • [21] Feature extraction methods for neural network-based transmission line fault discrimination
    Websper, S
    Dunn, RW
    Aggarwal, RK
    Johns, AT
    Bennett, A
    IEE PROCEEDINGS-GENERATION TRANSMISSION AND DISTRIBUTION, 1999, 146 (03) : 209 - 216
  • [22] Deep Convolution Neural Network-Based Crack Feature Extraction, Detection and Quantification
    Shuai Teng
    Gongfa Chen
    Journal of Failure Analysis and Prevention, 2022, 22 : 1308 - 1321
  • [23] Graphion: graph neural network-based visual correlation feature extraction module
    Chu, Chengqian
    Li, Shijia
    Yu, Xingui
    Wan, Yongjing
    Jiang, Cuiling
    JOURNAL OF ELECTRONIC IMAGING, 2024, 33 (01)
  • [24] Deep Convolution Neural Network-Based Crack Feature Extraction, Detection and Quantification
    Teng, Shuai
    Chen, Gongfa
    JOURNAL OF FAILURE ANALYSIS AND PREVENTION, 2022, 22 (03) : 1308 - 1321
  • [25] Automatic Electrocardiogram Sensing Classifier Based on Improved Backpropagation Neural Network
    Mao, Yan-ming
    Chang, Ting-Cheng
    SENSORS AND MATERIALS, 2020, 32 (08) : 2641 - 2658
  • [26] Improving cognitive impairment classification by generative neural network-based feature augmentation
    Mirheidari, Bahman
    Blackburn, Daniel
    O'Malley, Ronan
    Venneri, Annalena
    Walker, Traci
    Reuber, Markus
    Christensen, Heidi
    INTERSPEECH 2020, 2020, : 2527 - 2531
  • [27] Multiresolution wavelet analysis based feature extraction for neural network classification
    Chen, CH
    Lee, GG
    ICNN - 1996 IEEE INTERNATIONAL CONFERENCE ON NEURAL NETWORKS, VOLS. 1-4, 1996, : 1416 - 1421
  • [28] An algorithm of texture classification based on feature extraction and BP neural network
    Liu, Tongyan
    Liu, Zongguo
    Wu, Guoqing
    Journal of Information and Computational Science, 2015, 12 (06): : 2315 - 2323
  • [29] Audio Feature Extraction and Classification Technology Based on Convolutional Neural Network
    Liu, Zhenfang
    JOURNAL OF ELECTRICAL SYSTEMS, 2024, 20 (09) : 1425 - 1431
  • [30] Text Feature Extraction and Classification Based on Convolutional Neural Network (CNN)
    Zhang, Taohong
    Li, Cunfang
    Cao, Nuan
    Ma, Rui
    Zhang, ShaoHua
    Ma, Nan
    DATA SCIENCE, PT 1, 2017, 727 : 472 - 485