Your browser doesn't support javascript.
A Deep Batch Normalized Convolution Approach for Improving COVID-19 Detection from Chest X-ray Images.
Al-Shourbaji, Ibrahim; Kachare, Pramod H; Abualigah, Laith; Abdelhag, Mohammed E; Elnaim, Bushra; Anter, Ahmed M; Gandomi, Amir H.
  • Al-Shourbaji I; Department of Computer Science, University of Hertfordshire, Hatfield AL10 9AB, UK.
  • Kachare PH; Department of Electronics & Telecommunication Engineering, Ramrao Adik Institute of Technology, Nerul, Navi Mumbai 400706, Maharashtra, India.
  • Abualigah L; Computer Science Department, Prince Hussein Bin Abdullah Faculty for Information Technology, Al al-Bayt University, Mafraq 25113, Jordan.
  • Abdelhag ME; Hourani Center for Applied Scientific Research, Al-Ahliyya Amman University, Amman 19328, Jordan.
  • Elnaim B; Faculty of Information Technology, Middle East University, Amman 11831, Jordan.
  • Anter AM; Applied Science Research Center, Applied Science Private University, Amman 11931, Jordan.
  • Gandomi AH; School of Computer Sciences, Universiti Sains Malaysia, Pulau Pinang 11800, Malaysia.
Pathogens ; 12(1)2022 Dec 22.
Article in English | MEDLINE | ID: covidwho-2227238
ABSTRACT
Pre-trained machine learning models have recently been widely used to detect COVID-19 automatically from X-ray images. Although these models can selectively retrain their layers for the desired task, the output remains biased due to the massive number of pre-trained weights and parameters. This paper proposes a novel batch normalized convolutional neural network (BNCNN) model to identify COVID-19 cases from chest X-ray images in binary and multi-class frameworks with a dual aim to extract salient features that improve model performance over pre-trained image analysis networks while reducing computational complexity. The BNCNN model has three phases Data pre-processing to normalize and resize X-ray images, Feature extraction to generate feature maps, and Classification to predict labels based on the feature maps. Feature extraction uses four repetitions of a block comprising a convolution layer to learn suitable kernel weights for the features map, a batch normalization layer to solve the internal covariance shift of feature maps, and a max-pooling layer to find the highest-level patterns by increasing the convolution span. The classifier section uses two repetitions of a block comprising a dense layer to learn complex feature maps, a batch normalization layer to standardize internal feature maps, and a dropout layer to avoid overfitting while aiding the model generalization. Comparative analysis shows that when applied to an open-access dataset, the proposed BNCNN model performs better than four other comparative pre-trained models for three-way and two-way class datasets. Moreover, the BNCNN requires fewer parameters than the pre-trained models, suggesting better deployment suitability on low-resource devices.
Keywords

Full text: Available Collection: International databases Database: MEDLINE Type of study: Prognostic study Language: English Year: 2022 Document Type: Article Affiliation country: Pathogens12010017

Similar

MEDLINE

...
LILACS

LIS


Full text: Available Collection: International databases Database: MEDLINE Type of study: Prognostic study Language: English Year: 2022 Document Type: Article Affiliation country: Pathogens12010017