Deep learning–based classification of parotid gland tumors: integrating dynamic contrast-enhanced MRI for enhanced diagnostic accuracy

dc.contributor.author Kazim Ayberk Sinci
dc.contributor.author Ilker Ozgur Koska
dc.contributor.author Yusuf Kenan Cetinoglu
dc.contributor.author Nezahat Karaca Erdoǧan
dc.contributor.author Ali Murat Koc
dc.contributor.author Nüket Ozkavruk Eliyatkin
dc.contributor.author Cagan Koska
dc.contributor.author Barkan Candan
dc.date.accessioned 2025-10-06T17:48:32Z
dc.date.issued 2025
dc.description.abstract Background: To evaluate the performance of deep learning models in classifying parotid gland tumors using T2-weighted diffusion-weighted and contrast-enhanced T1-weighted MR images along with DCE data derived from time-intensity curves. Methods: In this retrospective single-center study including a total of 164 participants 124 patients with surgically confirmed parotid gland tumors and 40 individuals with normal parotid glands underwent multiparametric MRI including DCE sequences. Data partitions were performed at the patient level (80% training 10% validation 10% testing). Two deep learning architectures (MobileNetV2 and EfficientNetB0) as well as a combined approach integrating predictions from both models were fine-tuned using transfer learning to classify (i) normal versus tumor (Task 1) (ii) benign versus malignant tumors (Task 2) and (iii) benign subtypes (Warthin tumor vs. pleomorphic adenoma) (Task 3). For Tasks 2 and 3 DCE-derived metrics were integrated via a support vector machine. Classification performance was assessed using accuracy precision recall and F1‐score with 95% confidence intervals derived via bootstrap resampling. Results: In Task 1 EfficientNetB0 achieved the highest accuracy (85%). In Task 2 the combined approach reached an accuracy of 65% while adding DCE data significantly improved performance with MobileNetV2 achieving an accuracy of 96%. In Task 3 EfficientNetB0 demonstrated the highest accuracy without DCE data (75%) while including DCE data boosted the combined approach to an accuracy of 89%. Conclusions: Adding DCE-MRI data to deep learning models substantially enhances parotid gland tumor classification accuracy highlighting the value of functional imaging biomarkers in improving noninvasive diagnostic workflows. © 2025 Elsevier B.V. All rights reserved.
dc.identifier.doi 10.1186/s12880-025-01814-x
dc.identifier.issn 14712342
dc.identifier.issn 1471-2342
dc.identifier.uri https://www.scopus.com/inward/record.uri?eid=2-s2.0-105010042307&doi=10.1186%2Fs12880-025-01814-x&partnerID=40&md5=8c956b730f76ab1194e0a84eed0151e6
dc.identifier.uri https://gcris.yasar.edu.tr/handle/123456789/7962
dc.language.iso English
dc.publisher BioMed Central Ltd
dc.relation.ispartof BMC Medical Imaging
dc.source BMC Medical Imaging
dc.subject Deep Learning, Parotid Neoplasms, Perfusion Magnetic Resonance Imaging, Pleomorphic Adenoma, Warthin Tumor, Contrast Media, Contrast Medium, Adult, Aged, Classification, Computer Assisted Diagnosis, Deep Learning, Diagnostic Imaging, Female, Human, Male, Middle Aged, Nuclear Magnetic Resonance Imaging, Parotid Gland, Parotid Gland Tumor, Procedures, Retrospective Study, Adult, Aged, Contrast Media, Deep Learning, Female, Humans, Image Interpretation Computer-assisted, Magnetic Resonance Imaging, Male, Middle Aged, Parotid Gland, Parotid Neoplasms, Retrospective Studies
dc.subject contrast medium, adult, aged, classification, computer assisted diagnosis, deep learning, diagnostic imaging, female, human, male, middle aged, nuclear magnetic resonance imaging, parotid gland, parotid gland tumor, procedures, retrospective study, Adult, Aged, Contrast Media, Deep Learning, Female, Humans, Image Interpretation Computer-Assisted, Magnetic Resonance Imaging, Male, Middle Aged, Parotid Gland, Parotid Neoplasms, Retrospective Studies
dc.title Deep learning–based classification of parotid gland tumors: integrating dynamic contrast-enhanced MRI for enhanced diagnostic accuracy
dc.type Article
dspace.entity.type Publication
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gdc.coar.type text::journal::journal article
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gdc.description.volume 25
gdc.identifier.openalex W4412038375
gdc.identifier.pmid 40615947
gdc.index.type Scopus
gdc.oaire.accesstype GOLD
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gdc.oaire.keywords Male
gdc.oaire.keywords Adult
gdc.oaire.keywords Research
gdc.oaire.keywords Contrast Media
gdc.oaire.keywords Middle Aged
gdc.oaire.keywords Magnetic Resonance Imaging
gdc.oaire.keywords Parotid Neoplasms
gdc.oaire.keywords Deep Learning
gdc.oaire.keywords Image Interpretation, Computer-Assisted
gdc.oaire.keywords Humans
gdc.oaire.keywords Parotid Gland
gdc.oaire.keywords Female
gdc.oaire.keywords Retrospective Studies
gdc.oaire.keywords Aged
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person.identifier.scopus-author-id Sinci- Kazim Ayberk (57423186100), Koska- Ilker Ozgur (57194787904), Cetinoglu- Yusuf Kenan (56716287300), Erdoǧan- Nezahat Karaca (7004283128), Koc- Ali Murat (57217154014), Eliyatkin- Nüket Ozkavruk (36727339100), Koska- Cagan (59543590100), Candan- Barkan (59980454500)
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