Literature DB >> 33835928

Multilevel Deep-Aggregated Boosted Network to Recognize COVID-19 Infection from Large-Scale Heterogeneous Radiographic Data.

Muhammad Owais, Young Won Lee, Tahir Mahmood, Adnan Haider, Haseeb Sultan, Kang Ryoung Park.   

Abstract

In the present epidemic of the coronavirus disease 2019 (COVID-19), radiological imaging modalities, such as X-ray and computed tomography (CT), have been identified as effective diagnostic tools. However, the subjective assessment of radiographic examination is a time-consuming task and demands expert radiologists. Recent advancements in artificial intelligence have enhanced the diagnostic power of computer-aided diagnosis (CAD) tools and assisted medical specialists in making efficient diagnostic decisions. In this work, we propose an optimal multilevel deep-aggregated boosted network to recognize COVID-19 infection from heterogeneous radiographic data, including X-ray and CT images. Our method leverages multilevel deep-aggregated features and multistage training via a mutually beneficial approach to maximize the overall CAD performance. To improve the interpretation of CAD predictions, these multilevel deep features are visualized as additional outputs that can assist radiologists in validating the CAD results. A total of six publicly available datasets were fused to build a single large-scale heterogeneous radiographic collection that was used to analyze the performance of the proposed technique and other baseline methods. To preserve generality of our method, we selected different patient data for training, validation, and testing, and consequently, the data of same patient were not included in training, validation, and testing subsets. In addition, fivefold cross-validation was performed in all the experiments for a fair evaluation. Our method exhibits promising performance values of 95.38%, 95.57%, 92.53%, 98.14%, 93.16%, and 98.55% in terms of average accuracy, F-measure, specificity, sensitivity, precision, and area under the curve, respectively and outperforms various state-of-the-art methods.

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Mesh:

Year:  2021        PMID: 33835928      PMCID: PMC8545161          DOI: 10.1109/JBHI.2021.3072076

Source DB:  PubMed          Journal:  IEEE J Biomed Health Inform        ISSN: 2168-2194            Impact factor:   7.021


  23 in total

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4.  Light-weighted ensemble network with multilevel activation visualization for robust diagnosis of COVID19 pneumonia from large-scale chest radiographic database.

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Journal:  Appl Soft Comput       Date:  2021-05-07       Impact factor: 6.725

5.  COVID-19 identification in chest X-ray images on flat and hierarchical classification scenarios.

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7.  Sensitivity of Chest CT for COVID-19: Comparison to RT-PCR.

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9.  Imaging Profile of the COVID-19 Infection: Radiologic Findings and Literature Review.

Authors:  Ming-Yen Ng; Elaine Y P Lee; Jin Yang; Fangfang Yang; Xia Li; Hongxia Wang; Macy Mei-Sze Lui; Christine Shing-Yen Lo; Barry Leung; Pek-Lan Khong; Christopher Kim-Ming Hui; Kwok-Yung Yuen; Michael D Kuo
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10.  Using X-ray images and deep learning for automated detection of coronavirus disease.

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  2 in total

1.  xViTCOS: Explainable Vision Transformer Based COVID-19 Screening Using Radiography.

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2.  Artificial Intelligence-Based Solution in Personalized Computer-Aided Arthroscopy of Shoulder Prostheses.

Authors:  Haseeb Sultan; Muhammad Owais; Jiho Choi; Tahir Mahmood; Adnan Haider; Nadeem Ullah; Kang Ryoung Park
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  2 in total

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