JOURNAL ARTICLE

Effective hybrid deep learning model forCOVID‐19 patterns identification usingCTimages

Abstract

Abstract Coronavirus disease 2019 (COVID‐19) has attracted significant attention of researchers from various disciplines since the end of 2019. Although the global epidemic situation is stabilizing due to vaccination, new COVID‐19 cases are constantly being discovered around the world. As a result, lung computed tomography (CT) examination, an aggregated identification technique, has been used to ameliorate diagnosis. It helps reveal missed diagnoses due to the ambiguity of nucleic acid polymerase chain reaction. Therefore, this study investigated how quickly and accurately hybrid deep learning (DL) methods can identify infected individuals with COVID‐19 on the basis of their lung CT images. In addition, this study proposed a developed system to create a reliable COVID‐19 prediction network using various layers starting with the segmentation of the lung CT scan image and ending with disease prediction. The initial step of the system starts with a proposed technique for lung segmentation that relies on a no‐threshold histogram‐based image segmentation method. Afterward, the GrabCut method was used as a post‐segmentation method to enhance segmentation outcomes and avoid over‐and under‐segmentation problems. Then, three pre‐trained models of standard DL methods, including Visual Geometry Group Network, convolutional deep belief network, and high‐resolution network, were utilized to extract the most affective features from the segmented images that can help to identify COVID‐19. These three described pre‐trained models were combined as a new mechanism to increase the system's overall prediction capabilities. A publicly available dataset, namely, COVID‐19 CT, was used to test the performance of the proposed model, which obtained a 95% accuracy rate. On the basis of comparison, the proposed model outperformed several state‐of‐the‐art studies. Because of its effectiveness in accurately screening COVID‐19 CT images, the developed model will potentially be valuable as an additional diagnostic tool for leading clinical professionals.

Keywords:
Computer science Segmentation Artificial intelligence Identification (biology) Convolutional neural network Coronavirus disease 2019 (COVID-19) Pattern recognition (psychology) Deep learning Medical diagnosis Medicine Radiology Disease Pathology

Metrics

34
Cited By
6.44
FWCI (Field Weighted Citation Impact)
43
Refs
0.96
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

COVID-19 diagnosis using AI
Health Sciences →  Medicine →  Radiology, Nuclear Medicine and Imaging
COVID-19 Clinical Research Studies
Health Sciences →  Medicine →  Infectious Diseases
Radiomics and Machine Learning in Medical Imaging
Health Sciences →  Medicine →  Radiology, Nuclear Medicine and Imaging

Related Documents

JOURNAL ARTICLE

Deep‐CoV: An integrated deep learning model to detect COVID‐19 using chest X‐ray and CT images

Sanjib RoyAyan Kumar Das

Journal:   Computational Intelligence Year: 2023 Vol: 39 (2)Pages: 369-400
JOURNAL ARTICLE

COVID‐19 detection using hybrid deep learning model in chest x‐rays images

Shubham MahajanAkshay RainaXiao‐Zhi GaoAmit Kant Pandit

Journal:   Concurrency and Computation Practice and Experience Year: 2021 Vol: 34 (5)
JOURNAL ARTICLE

Deep learning for COVID‐19 contamination analysis and prediction using ECG images on Raspberry Pi 4

Lotfi MhamdiOussama DammakFrançois CottinImed Ben Dhaou

Journal:   International Journal of Imaging Systems and Technology Year: 2023 Vol: 33 (6)Pages: 1858-1869
JOURNAL ARTICLE

IGF ‐ CNN : An Optimized Deep Learning Model for Covid‐19 Classification

Vinayak TiwariSaurabh SinghUmaisa HassanAmit Singhal

Journal:   International Journal of Imaging Systems and Technology Year: 2025 Vol: 35 (6)
JOURNAL ARTICLE

Classification of Coronavirus (COVID‐19) from X‐ray and CT images using shrunken features

Şaban ÖztürkUmut ÖzkayaMücahid Barstuğan

Journal:   International Journal of Imaging Systems and Technology Year: 2020 Vol: 31 (1)Pages: 5-15
© 2026 ScienceGate Book Chapters — All rights reserved.