Development of a Machine Learning Model for the Classification of Enterobius vermicularis Egg

被引:1
作者
Chaibutr, Natthanai [1 ,2 ,3 ]
Pongpanitanont, Pongphan [4 ]
Laymanivong, Sakhone [5 ]
Thanchomnang, Tongjit [6 ]
Janwan, Penchom [1 ,2 ,7 ]
机构
[1] Walailak Univ, Sch Allied Hlth Sci, Med Innovat & Technol Program, Nakhon Si Thammarat 80160, Thailand
[2] Walailak Univ, Hematol & Transfus Sci Res Ctr, Nakhon Si Thammarat 80160, Thailand
[3] Prince Songkla Univ, Med Technol Serv Ctr, Phuket Campus, Phuket 83120, Thailand
[4] Walailak Univ, Coll Grad Studies, Int Program, Hlth Sci, Nakhon Si Thammarat 80160, Thailand
[5] Minist Hlth, Ctr Malariol Parasitol & Entomol, POB 0100, Vientiane Capital, Laos
[6] Mahasarakham Univ, Fac Med, Maha Sarakham 44000, Thailand
[7] Walailak Univ, Sch Allied Hlth Sci, Dept Med Technol, Nakhon Si Thammarat 80160, Thailand
关键词
Enterobius vermicularis; deep learning; machine learning; computer vision; object detection;
D O I
10.3390/jimaging10090212
中图分类号
TB8 [摄影技术];
学科分类号
0804 ;
摘要
Enterobius vermicularis (pinworm) infections are a significant global health issue, affecting children predominantly in environments like schools and daycares. Traditional diagnosis using the scotch tape technique involves examining E. vermicularis eggs under a microscope. This method is time-consuming and depends heavily on the examiner's expertise. To improve this, convolutional neural networks (CNNs) have been used to automate the detection of pinworm eggs from microscopic images. In our study, we enhanced E. vermicularis egg detection using a CNN benchmarked against leading models. We digitized and augmented 40,000 images of E. vermicularis eggs (class 1) and artifacts (class 0) for comprehensive training, using an 80:20 training-validation and a five-fold cross-validation. The proposed CNN model showed limited initial performance but achieved 90.0% accuracy, precision, recall, and F1-score after data augmentation. It also demonstrated improved stability with an ROC-AUC metric increase from 0.77 to 0.97. Despite its smaller file size, our CNN model performed comparably to larger models. Notably, the Xception model achieved 99.0% accuracy, precision, recall, and F1-score. These findings highlight the effectiveness of data augmentation and advanced CNN architectures in improving diagnostic accuracy and efficiency for E. vermicularis infections.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Machine Learning Model for Vaccine Development: A Perspective
    Dubey, Anubha
    BIOSCIENCE BIOTECHNOLOGY RESEARCH COMMUNICATIONS, 2020, 13 (02): : 762 - 769
  • [32] Development of features for blade rubbing defect classification in machine learning
    Park, Dong Hee
    Lee, Jeong Jun
    Cheong, Deok Yeong
    Eom, Ye Jun
    Kim, Seon Hwa
    Choi, Byeong Keun
    JOURNAL OF MECHANICAL SCIENCE AND TECHNOLOGY, 2024, 38 (01) : 1 - 9
  • [33] Development of features for blade rubbing defect classification in machine learning
    Dong Hee Park
    Jeong Jun Lee
    Deok Yeong Cheong
    Ye Jun Eom
    Seon Hwa Kim
    Byeong Keun Choi
    Journal of Mechanical Science and Technology, 2024, 38 : 1 - 9
  • [34] Development and prospects of machine learning methods in geographic elements classification
    Wang J.
    Li K.
    Yan X.
    Zheng L.
    Han X.
    National Remote Sensing Bulletin, 2023, 27 (08) : 1757 - 1768
  • [35] Development and comparison of machine learning models for water multidimensional classification
    Diaz-Gonzalez, Lorena
    Alejandro Uscanga-Junco, Oscar
    Rosales-Rivera, Mauricio
    JOURNAL OF HYDROLOGY, 2021, 598
  • [36] Mitigating Bias in Radiology Machine Learning: 2. Model Development
    Zhang, Kuan
    Khosravi, Bardia
    Vahdati, Sanaz
    Faghani, Shahriar
    Nugen, Fred
    Rassoulinejad-Mousavi, Seyed Moein
    Moassefi, Mana
    Jagtap, Jaidip Manikrao M.
    Singh, Yashbir
    Rouzrokh, Pouria
    Erickson, Bradley J.
    RADIOLOGY-ARTIFICIAL INTELLIGENCE, 2022, 4 (05)
  • [37] MULTI-SCALE MACHINE LEARNING FOR THE CLASSIFICATION OF BUILDING PROPERTY VALUES
    Helber, Patrick
    Bischke, Benjamin
    Guo, Qiushi
    Hees, Joern
    Dengel, Andreas
    2019 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS 2019), 2019, : 4873 - 4876
  • [38] Classification and object detection with image assisted total station and machine learning
    Zschiesche, Kira
    Schlueter, Martin
    JOURNAL OF APPLIED GEODESY, 2023, 17 (04) : 381 - 389
  • [39] Machine Learning Techniques to address classification issues in Reverse Engineering.
    Dekhtiar, Jonathan
    Durupt, Alexandre
    Kiritsis, Dimitris
    Bricogne, Matthieu
    Rowson, Harvey
    Eynard, Benoit
    ADVANCES ON MECHANICS, DESIGN ENGINEERING AND MANUFACTURING, 2017, : 829 - 839
  • [40] Machine Learning Approach and Model Performance Evaluation for Tele-Marketing Success Classification
    Kocoglu, Fatma Onay
    Esnaf, Sakir
    INTERNATIONAL JOURNAL OF BUSINESS ANALYTICS, 2022, 9 (05)