Development of CNN-LSTM combinational architecture for COVID-19 detection

被引:1
|
作者
Narula A. [1 ]
Vaegae N.K. [1 ]
机构
[1] School of Electronics Engineering, Vellore Institute of Technology, Vellore
关键词
Chest X-ray; Convolution neural network; COVID-19; Deep learning; Image processing; LSTM;
D O I
10.1007/s12652-022-04508-2
中图分类号
学科分类号
摘要
The world has been under extreme pressure due to the spread of the coronavirus. The urgency to eradicate the virus has caused distress amongst civilians and medical agencies to an equal extent. Due to anomalies observed in the results from reverse transcription-polymerase chain reaction (RTPCR) tests, more reliable options like computed tomography (CT) scan-based tests are being researched upon. In this paper, a novel combinational architecture is built upon the principles of Convolution Neural Networks (CNN) and Long Short Term Memory (LSTM) Networks to detect COVID-19 virus. This method uses chest X-ray images as inputs to combinational architecture for the classification of samples. The CNN part of the network will be used to extract features that help in the classification, and the LSTM part will be used for classification based on the extracted features. A total of 8 convolutional layers and 4 pooling layers are used for CNN and 4 LSTM layers of 64 and 128 cells respectively. Instead of the sigmoid function, a rectified linear unit function is used as an activation function. This provides non-linearity to the CNN and better accuracies in comparison. The proposed model employs a padding layer to prevent the loss of information. Accuracy, loss, F1 score, and Matthew’s Correlation Coefficient (MCC) are calculated to analyse the effectiveness of the proposed architecture. The proposed model is validated using a relatively larger dataset of 7292 images. The combinational architecture provides a more informative and truthful result in the evaluation of classification as it caters to both the size of positive elements and negative elements in the dataset. The proposed CNN-LSTM model gives an accuracy of 98.91% and an MCC value of 97.84% respectively. The model is also compared with models employing transfer learning methods for similar applications. © 2022, The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.
引用
收藏
页码:2645 / 2656
页数:11
相关论文
共 50 条
  • [1] A comparison between CNN and combined CNN-LSTM for chest X-ray based COVID-19 detection
    Fachrela, Julio
    Pravitasaria, Anindya Apriliyanti
    Yulitab, Intan Nurma
    Ardhisasmitac, Mulya Nurmansyah
    Indrayatnaa, Fajar
    DECISION SCIENCE LETTERS, 2023, 12 (02) : 199 - 210
  • [2] COVID-19 Pandemic Forecasting Using CNN-LSTM: A Hybrid Approach
    Zain, Zuhaira M.
    Alturki, Nazik M.
    JOURNAL OF CONTROL SCIENCE AND ENGINEERING, 2021, 2021
  • [3] EARLY DETECTION OF COVID-19 DISEASE USING COMPUTED TOMOGRAPHY IMAGES AND OPTIMIZED CNN-LSTM
    Memon, Muhammad Hammad
    Golilarz, Noorbakhsh Amiri
    Li, Jianping
    Yazdi, Mohammad
    Addeh, Abdoljalil
    2020 17TH INTERNATIONAL COMPUTER CONFERENCE ON WAVELET ACTIVE MEDIA TECHNOLOGY AND INFORMATION PROCESSING (ICCWAMTIP), 2020, : 161 - 165
  • [4] Fall Detection With UWB Radars and CNN-LSTM Architecture
    Maitre, Julien
    Bouchard, Kevin
    Gaboury, Sebastien
    IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2021, 25 (04) : 1273 - 1283
  • [5] COVID-19 Diagnosis from Chest CT Scans: A Weakly Supervised CNN-LSTM Approach
    Kara, Mustafa
    Ozturk, Zeynep
    Akpek, Sergin
    Turupcu, Aysegul
    AI, 2021, 2 (03) : 330 - 341
  • [6] A Hybrid CNN-LSTM Architecture for Detection of Coronary Artery Disease from ECG
    Banerjee, Rohan
    Ghose, Avik
    Mandana, Kayapanda Muthana
    2020 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2020,
  • [7] CodnNet: A lightweight CNN architecture for detection of COVID-19 infection
    Yang, Jingdong
    Zhang, Lei
    Tang, Xinjun
    Han, Man
    APPLIED SOFT COMPUTING, 2022, 130
  • [8] Fake News Stance Detection Using Deep Learning Architecture (CNN-LSTM)
    Umer, Muhammad
    Imtiaz, Zainab
    Ullah, Saleem
    Mehmood, Arif
    Choi, Gyu Sang
    On, Byung-Won
    IEEE ACCESS, 2020, 8 : 156695 - 156706
  • [9] CNN-LSTM architecture for predictive indoor temperature modeling
    Elmaz, Furkan
    Eyckerman, Reinout
    Casteels, Wim
    Latre, Steven
    Hellinckx, Peter
    BUILDING AND ENVIRONMENT, 2021, 206
  • [10] CNN-LSTM based Approach for DDoS Detection
    Alasmari, Tahani
    Eshmawi, Ala'
    Alshomrani, Adel
    Hsairi, Lobna
    2023 EIGHTH INTERNATIONAL CONFERENCE ON MOBILE AND SECURE SERVICES, MOBISECSERV, 2023,