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dc.contributor.authorDubey AK
dc.contributor.authorChabert GL
dc.contributor.authorCarriero A
dc.contributor.authorPasche A
dc.contributor.authorDanna PSC
dc.contributor.authorAgarwal S
dc.contributor.authorMohanty L
dc.contributor.authorNillmani
dc.contributor.authorSharma N
dc.contributor.authorYadav S
dc.contributor.authorJain A
dc.contributor.authorKumar A
dc.contributor.authorKalra MK
dc.contributor.authorSobel DW
dc.contributor.authorLaird JR
dc.contributor.authorSingh IM
dc.contributor.authorSingh N
dc.contributor.authorTsoulfas G
dc.contributor.authorFouda MM
dc.contributor.authorAlizad A
dc.contributor.authorKitas GD
dc.contributor.authorKhanna NN
dc.contributor.authorViskovic K
dc.contributor.authorKukuljan M
dc.contributor.authorAl-Maini M
dc.contributor.authorEl-Baz A
dc.contributor.authorSaba L
dc.contributor.authorSuri JS
dc.date.accessioned2024-04-25T09:22:46Z
dc.date.available2024-04-25T09:22:46Z
dc.date.issued02/06/2023
dc.identifier.citationDubey AK, Chabert GL, Carriero A, Pasche A, Danna PSC, Agarwal S, Mohanty L, Nillmani, Sharma N, Yadav S, Jain A, Kumar A, Kalra MK, Sobel DW, Laird JR, Singh IM, Singh N, Tsoulfas G, Fouda MM, Alizad A, Kitas GD, Khanna NN, Viskovic K, Kukuljan M, Al-Maini M, El-Baz A, Saba L, Suri JS. 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. Diagnostics (Basel). 2023 Jun 2;13(11):1954. doi: 10.3390/diagnostics13111954. PMID: 37296806; PMCID: PMC10252539.
dc.identifier.doi10.3390/diagnostics13111954
dc.identifier.pmid37296806
dc.identifier.urihttp://hdl.handle.net/20.500.14200/4365
dc.description.abstractLung 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. 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.
dc.publisherMDPI AG
dc.subjectRespiratory medicine
dc.titleEnsemble 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.
dc.typeArticle
dc.source.journaltitleDiagnostics
dc.contributor.affiliationBharati Vidyapeeth's College of Engineering; Azienda Ospedaliero Universitaria; University of Piemonte Orientale; The Dudley Group NHS Foundation Trust et al
oa.grant.openaccessNA


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