Deep learning in ovarian cancer diagnosis : a comprehensive review of various imaging modalities

2024
journal article
review article
46
dc.abstract.enOvarian cancer poses a major worldwide health issue, marked by high death rates and a deficiency in reliable diagnostic methods. The precise and prompt detection of ovarian cancer holds great importance in advancing patient outcomes and determining suitable treatment plans. Medical imaging techniques are vital in diagnosing ovarian cancer, but achieving accurate diagnoses remains challenging. Deep learning (DL), particularly convolutional neural networks (CNNs), has emerged as a promising solution to improve the accuracy of ovarian cancer detection. This systematic review explores the role of DL in improving the diagnostic accuracy for ovarian cancer. The methodology involved the establishment of research questions, inclusion and exclusion criteria, and a comprehensive search strategy across relevant databases. The selected studies focused on DL techniques applied to ovarian cancer diagnosis using medical imaging modalities, as well as tumour differentiation and radiomics. Data extraction, analysis, and synthesis were performed to summarize the characteristics and findings of the selected studies. The review emphasizes the potential of DL in enhancing the diagnosis of ovarian cancer by accelerating the diagnostic process and offering more precise and efficient solutions. DL models have demonstrated their effectiveness in categorizing ovarian tissues and achieving comparable diagnostic performance to that of experienced radiologists. The integration of DL into ovarian cancer diagnosis holds the promise of improving patient outcomes, refining treatment approaches, and supporting well-informed decision-making. Nevertheless, additional research and validation are necessary to ensure the dependability and applicability of DL models in everyday clinical settings.
dc.contributor.authorSadeghi, Mohammad Hossein
dc.contributor.authorSina, Sedigheh
dc.contributor.authorOmidi, Hamid
dc.contributor.authorFarshchitabrizi, Amir Hossein
dc.contributor.authorAlavi, Mehrosadat
dc.date.accessioned2025-06-27T10:15:15Z
dc.date.available2025-06-27T10:15:15Z
dc.date.createdat2025-06-27T10:15:15Zen
dc.date.issued2024
dc.date.openaccess0
dc.description.accesstimew momencie opublikowania
dc.description.additionalBibliogr. s. e45-e48
dc.description.physicale30-e48
dc.description.versionostateczna wersja wydawcy
dc.description.volume89
dc.identifier.doi10.5114/pjr.2024.134817
dc.identifier.issn1733-134X
dc.identifier.projectDRC AI
dc.identifier.urihttps://ruj.uj.edu.pl/handle/item/553942
dc.languageeng
dc.language.containereng
dc.rightsUdzielam licencji. Uznanie autorstwa - Użycie niekomercyjne - Bez utworów zależnych 4.0 Międzynarodowa
dc.rights.licenceCC-BY-NC-ND
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/legalcode.pl
dc.share.typeotwarte czasopismo
dc.source.integratorfalse
dc.subject.enovarian cancer
dc.subject.endiagnostic accuracy
dc.subject.endeep learning
dc.subject.enconvolutional neural network
dc.subtypeReviewArticle
dc.titleDeep learning in ovarian cancer diagnosis : a comprehensive review of various imaging modalities
dc.title.journalPolish Journal of Radiology
dc.typeJournalArticle
dspace.entity.typePublicationen
dc.abstract.en
Ovarian cancer poses a major worldwide health issue, marked by high death rates and a deficiency in reliable diagnostic methods. The precise and prompt detection of ovarian cancer holds great importance in advancing patient outcomes and determining suitable treatment plans. Medical imaging techniques are vital in diagnosing ovarian cancer, but achieving accurate diagnoses remains challenging. Deep learning (DL), particularly convolutional neural networks (CNNs), has emerged as a promising solution to improve the accuracy of ovarian cancer detection. This systematic review explores the role of DL in improving the diagnostic accuracy for ovarian cancer. The methodology involved the establishment of research questions, inclusion and exclusion criteria, and a comprehensive search strategy across relevant databases. The selected studies focused on DL techniques applied to ovarian cancer diagnosis using medical imaging modalities, as well as tumour differentiation and radiomics. Data extraction, analysis, and synthesis were performed to summarize the characteristics and findings of the selected studies. The review emphasizes the potential of DL in enhancing the diagnosis of ovarian cancer by accelerating the diagnostic process and offering more precise and efficient solutions. DL models have demonstrated their effectiveness in categorizing ovarian tissues and achieving comparable diagnostic performance to that of experienced radiologists. The integration of DL into ovarian cancer diagnosis holds the promise of improving patient outcomes, refining treatment approaches, and supporting well-informed decision-making. Nevertheless, additional research and validation are necessary to ensure the dependability and applicability of DL models in everyday clinical settings.
dc.contributor.author
Sadeghi, Mohammad Hossein
dc.contributor.author
Sina, Sedigheh
dc.contributor.author
Omidi, Hamid
dc.contributor.author
Farshchitabrizi, Amir Hossein
dc.contributor.author
Alavi, Mehrosadat
dc.date.accessioned
2025-06-27T10:15:15Z
dc.date.available
2025-06-27T10:15:15Z
dc.date.createdaten
2025-06-27T10:15:15Z
dc.date.issued
2024
dc.date.openaccess
0
dc.description.accesstime
w momencie opublikowania
dc.description.additional
Bibliogr. s. e45-e48
dc.description.physical
e30-e48
dc.description.version
ostateczna wersja wydawcy
dc.description.volume
89
dc.identifier.doi
10.5114/pjr.2024.134817
dc.identifier.issn
1733-134X
dc.identifier.project
DRC AI
dc.identifier.uri
https://ruj.uj.edu.pl/handle/item/553942
dc.language
eng
dc.language.container
eng
dc.rights
Udzielam licencji. Uznanie autorstwa - Użycie niekomercyjne - Bez utworów zależnych 4.0 Międzynarodowa
dc.rights.licence
CC-BY-NC-ND
dc.rights.uri
http://creativecommons.org/licenses/by-nc-nd/4.0/legalcode.pl
dc.share.type
otwarte czasopismo
dc.source.integrator
false
dc.subject.en
ovarian cancer
dc.subject.en
diagnostic accuracy
dc.subject.en
deep learning
dc.subject.en
convolutional neural network
dc.subtype
ReviewArticle
dc.title
Deep learning in ovarian cancer diagnosis : a comprehensive review of various imaging modalities
dc.title.journal
Polish Journal of Radiology
dc.type
JournalArticle
dspace.entity.typeen
Publication
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