Ensemble Deep Learning Derived from Transfer Learning for Classification of COVID-19 Patients on Hybrid Deep-Learning-Based Lung Segmentation: A Data Augmentation and Balancing Framework

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dc.contributor.author Dubey, Arun Kumar
dc.contributor.author Chabert, Gian Luca
dc.contributor.author Carriero, Alessandro
dc.contributor.author Pasche, Alessio
dc.contributor.author Danna, Pietro S. C.
dc.contributor.author Agarwal, Sushant
dc.contributor.author Mohanty, Lopamudra
dc.contributor.author Sharma, Neeraj
dc.contributor.author Yadav, Sarita
dc.contributor.author Jain, Achin
dc.contributor.author Kumar, Ashish
dc.contributor.author Kalra, Mannudeep K.
dc.contributor.author Sobel, David W.
dc.contributor.author Laird, John R.
dc.contributor.author Singh, Inder M.
dc.contributor.author Singh, Narpinder
dc.contributor.author Tsoulfas, George
dc.contributor.author Fouda, Mostafa M.
dc.contributor.author Alizad, Azra
dc.contributor.author Kitas, George D.
dc.contributor.author Khanna, Narendra N.
dc.contributor.author Viskovic, Klaudija
dc.contributor.author Kukuljan, Melita
dc.contributor.author Al-Maini, Mustafa
dc.contributor.author El-Baz, Ayman
dc.contributor.author Saba, Luca
dc.contributor.author Suri, Jasjit S.
dc.contributor.author ., Nillmani
dc.date.accessioned 2024-04-01T10:52:04Z
dc.date.available 2024-04-01T10:52:04Z
dc.date.issued 2023-06
dc.identifier.issn 20754418
dc.identifier.uri http://localhost:8080/xmlui/handle/123456789/3055
dc.description This paper published with affiliation IIT (BHU), Varanasi in open access mode. en_US
dc.description.abstract Background and motivation: Lung computed tomography (CT) techniques are high-resolution and are well adopted in the intensive care unit (ICU) for COVID-19 disease control classification. Most artificial intelligence (AI) systems do not undergo generalization and are typically overfitted. Such trained AI systems are not practical for clinical settings and therefore do not give accurate results when executed on unseen data sets. We hypothesize that ensemble deep learning (EDL) is superior to deep transfer learning (TL) in both non-augmented and augmented frameworks. Methodology: The system consists of a cascade of quality control, ResNet–UNet-based hybrid deep learning for lung segmentation, and seven models using TL-based classification followed by five types of EDL’s. To prove our hypothesis, five different kinds of data combinations (DC) were designed using a combination of two multicenter cohorts—Croatia (80 COVID) and Italy (72 COVID and 30 controls)—leading to 12,000 CT slices. As part of generalization, the system was tested on unseen data and statistically tested for reliability/stability. Results: Using the K5 (80:20) cross-validation protocol on the balanced and augmented dataset, the five DC datasets improved TL mean accuracy by 3.32%, 6.56%, 12.96%, 47.1%, and 2.78%, respectively. The five EDL systems showed improvements in accuracy of 2.12%, 5.78%, 6.72%, 32.05%, and 2.40%, thus validating our hypothesis. All statistical tests proved positive for reliability and stability. Conclusion: EDL showed superior performance to TL systems for both (a) unbalanced and unaugmented and (b) balanced and augmented datasets for both (i) seen and (ii) unseen paradigms, validating both our hypotheses. en_US
dc.language.iso en en_US
dc.publisher Multidisciplinary Digital Publishing Institute (MDPI) en_US
dc.relation.ispartofseries Diagnostics;13
dc.subject control en_US
dc.subject COVID en_US
dc.subject ensemble deep learning en_US
dc.subject ResNet–UNet en_US
dc.subject transfer learning en_US
dc.subject unseen en_US
dc.subject iabetes mellitus en_US
dc.subject diagnostic accuracy en_US
dc.subject diagnostic test accuracy study en_US
dc.subject diagnostic value en_US
dc.subject dyspnea en_US
dc.subject feature extraction en_US
dc.subject female en_US
dc.title Ensemble Deep Learning Derived from Transfer Learning for Classification of COVID-19 Patients on Hybrid Deep-Learning-Based Lung Segmentation: A Data Augmentation and Balancing Framework en_US
dc.type Article en_US


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