Cargando…

Research progress on deep learning in magnetic resonance imaging–based diagnosis and treatment of prostate cancer: a review on the current status and perspectives

Multiparametric magnetic resonance imaging (mpMRI) has emerged as a first-line screening and diagnostic tool for prostate cancer, aiding in treatment selection and noninvasive radiotherapy guidance. However, the manual interpretation of MRI data is challenging and time-consuming, which may impact se...

Descripción completa

Detalles Bibliográficos
Autores principales: He, Mingze, Cao, Yu, Chi, Changliang, Yang, Xinyi, Ramin, Rzayev, Wang, Shuowen, Yang, Guodong, Mukhtorov, Otabek, Zhang, Liqun, Kazantsev, Anton, Enikeev, Mikhail, Hu, Kebang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10400334/
https://www.ncbi.nlm.nih.gov/pubmed/37546423
http://dx.doi.org/10.3389/fonc.2023.1189370
_version_ 1785084421231083520
author He, Mingze
Cao, Yu
Chi, Changliang
Yang, Xinyi
Ramin, Rzayev
Wang, Shuowen
Yang, Guodong
Mukhtorov, Otabek
Zhang, Liqun
Kazantsev, Anton
Enikeev, Mikhail
Hu, Kebang
author_facet He, Mingze
Cao, Yu
Chi, Changliang
Yang, Xinyi
Ramin, Rzayev
Wang, Shuowen
Yang, Guodong
Mukhtorov, Otabek
Zhang, Liqun
Kazantsev, Anton
Enikeev, Mikhail
Hu, Kebang
author_sort He, Mingze
collection PubMed
description Multiparametric magnetic resonance imaging (mpMRI) has emerged as a first-line screening and diagnostic tool for prostate cancer, aiding in treatment selection and noninvasive radiotherapy guidance. However, the manual interpretation of MRI data is challenging and time-consuming, which may impact sensitivity and specificity. With recent technological advances, artificial intelligence (AI) in the form of computer-aided diagnosis (CAD) based on MRI data has been applied to prostate cancer diagnosis and treatment. Among AI techniques, deep learning involving convolutional neural networks contributes to detection, segmentation, scoring, grading, and prognostic evaluation of prostate cancer. CAD systems have automatic operation, rapid processing, and accuracy, incorporating multiple sequences of multiparametric MRI data of the prostate gland into the deep learning model. Thus, they have become a research direction of great interest, especially in smart healthcare. This review highlights the current progress of deep learning technology in MRI-based diagnosis and treatment of prostate cancer. The key elements of deep learning-based MRI image processing in CAD systems and radiotherapy of prostate cancer are briefly described, making it understandable not only for radiologists but also for general physicians without specialized imaging interpretation training. Deep learning technology enables lesion identification, detection, and segmentation, grading and scoring of prostate cancer, and prediction of postoperative recurrence and prognostic outcomes. The diagnostic accuracy of deep learning can be improved by optimizing models and algorithms, expanding medical database resources, and combining multi-omics data and comprehensive analysis of various morphological data. Deep learning has the potential to become the key diagnostic method in prostate cancer diagnosis and treatment in the future.
format Online
Article
Text
id pubmed-10400334
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-104003342023-08-04 Research progress on deep learning in magnetic resonance imaging–based diagnosis and treatment of prostate cancer: a review on the current status and perspectives He, Mingze Cao, Yu Chi, Changliang Yang, Xinyi Ramin, Rzayev Wang, Shuowen Yang, Guodong Mukhtorov, Otabek Zhang, Liqun Kazantsev, Anton Enikeev, Mikhail Hu, Kebang Front Oncol Oncology Multiparametric magnetic resonance imaging (mpMRI) has emerged as a first-line screening and diagnostic tool for prostate cancer, aiding in treatment selection and noninvasive radiotherapy guidance. However, the manual interpretation of MRI data is challenging and time-consuming, which may impact sensitivity and specificity. With recent technological advances, artificial intelligence (AI) in the form of computer-aided diagnosis (CAD) based on MRI data has been applied to prostate cancer diagnosis and treatment. Among AI techniques, deep learning involving convolutional neural networks contributes to detection, segmentation, scoring, grading, and prognostic evaluation of prostate cancer. CAD systems have automatic operation, rapid processing, and accuracy, incorporating multiple sequences of multiparametric MRI data of the prostate gland into the deep learning model. Thus, they have become a research direction of great interest, especially in smart healthcare. This review highlights the current progress of deep learning technology in MRI-based diagnosis and treatment of prostate cancer. The key elements of deep learning-based MRI image processing in CAD systems and radiotherapy of prostate cancer are briefly described, making it understandable not only for radiologists but also for general physicians without specialized imaging interpretation training. Deep learning technology enables lesion identification, detection, and segmentation, grading and scoring of prostate cancer, and prediction of postoperative recurrence and prognostic outcomes. The diagnostic accuracy of deep learning can be improved by optimizing models and algorithms, expanding medical database resources, and combining multi-omics data and comprehensive analysis of various morphological data. Deep learning has the potential to become the key diagnostic method in prostate cancer diagnosis and treatment in the future. Frontiers Media S.A. 2023-06-13 /pmc/articles/PMC10400334/ /pubmed/37546423 http://dx.doi.org/10.3389/fonc.2023.1189370 Text en Copyright © 2023 He, Cao, Chi, Yang, Ramin, Wang, Yang, Mukhtorov, Zhang, Kazantsev, Enikeev and Hu https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
He, Mingze
Cao, Yu
Chi, Changliang
Yang, Xinyi
Ramin, Rzayev
Wang, Shuowen
Yang, Guodong
Mukhtorov, Otabek
Zhang, Liqun
Kazantsev, Anton
Enikeev, Mikhail
Hu, Kebang
Research progress on deep learning in magnetic resonance imaging–based diagnosis and treatment of prostate cancer: a review on the current status and perspectives
title Research progress on deep learning in magnetic resonance imaging–based diagnosis and treatment of prostate cancer: a review on the current status and perspectives
title_full Research progress on deep learning in magnetic resonance imaging–based diagnosis and treatment of prostate cancer: a review on the current status and perspectives
title_fullStr Research progress on deep learning in magnetic resonance imaging–based diagnosis and treatment of prostate cancer: a review on the current status and perspectives
title_full_unstemmed Research progress on deep learning in magnetic resonance imaging–based diagnosis and treatment of prostate cancer: a review on the current status and perspectives
title_short Research progress on deep learning in magnetic resonance imaging–based diagnosis and treatment of prostate cancer: a review on the current status and perspectives
title_sort research progress on deep learning in magnetic resonance imaging–based diagnosis and treatment of prostate cancer: a review on the current status and perspectives
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10400334/
https://www.ncbi.nlm.nih.gov/pubmed/37546423
http://dx.doi.org/10.3389/fonc.2023.1189370
work_keys_str_mv AT hemingze researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT caoyu researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT chichangliang researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT yangxinyi researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT raminrzayev researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT wangshuowen researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT yangguodong researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT mukhtorovotabek researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT zhangliqun researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT kazantsevanton researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT enikeevmikhail researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives
AT hukebang researchprogressondeeplearninginmagneticresonanceimagingbaseddiagnosisandtreatmentofprostatecancerareviewonthecurrentstatusandperspectives