Catalyzing Precision Medicine: Artificial Intelligence Advancements in Prostate Cancer Diagnosis and Management

被引:4
作者
Talyshinskii, Ali [1 ]
Hameed, B. M. Zeeshan [2 ]
Ravinder, Prajwal P. [3 ]
Naik, Nithesh [4 ]
Randhawa, Princy [5 ]
Shah, Milap [6 ]
Rai, Bhavan Prasad [7 ]
Tokas, Theodoros [8 ]
Somani, Bhaskar K. [4 ,9 ]
机构
[1] Astana Med Univ, Dept Urol & Androl, Astana 010000, Kazakhstan
[2] KMC Manipal Hosp, Dept Urol, Mangalore 575001, India
[3] Manipal Acad Higher Educ, Kasturba Med Coll, Dept Urol, Mangaluru 576104, India
[4] Manipal Acad Higher Educ, Manipal Inst Technol, Dept Mech & Ind Engn, Manipal 576104, India
[5] Manipal Univ Jaipur, Dept Mechatron, Jaipur 303007, India
[6] Aarogyam Hosp, Dept Urol, Ahmadabad 380014, India
[7] Freeman Rd Hosp, Dept Urol, Newcastle Upon Tyne NE7 7DN, England
[8] Univ Crete, Univ Gen Hosp Heraklion, Med Sch, Dept Urol, Iraklion 14122, Greece
[9] Univ Hosp Southampton NHS Trust, Dept Urol, Southampton SO16 6YD, England
关键词
prostate cancer; prostate reconstruction; PCa detection; PCa reconstruction; artificial intelligence; deep learning; MRI; PET/CT; ADT; biopsy; NEURAL-NETWORK; SEGMENTATION; MRI; LESIONS;
D O I
10.3390/cancers16101809
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary In this paper, we look at the role of artificial intelligence (AI) advancements in prostate cancer diagnosis and management. Specifically, we focus on magnetic resonance prostate reconstruction, prostate cancer detection/stratification/reconstruction, positron emission tomography/computed tomography, androgen deprivation therapy, and prostate biopsy. A total of 64 studies were included. Our results showed that deep learning AI models in prostate cancer diagnosis show promise but are not yet ready for clinical use due to variability in methods, labels, and evaluation criteria. Conducting additional research while acknowledging the limitations is crucial for reinforcing the utility and effectiveness of AI-based models in clinical settings.Abstract Background: The aim was to analyze the current state of deep learning (DL)-based prostate cancer (PCa) diagnosis with a focus on magnetic resonance (MR) prostate reconstruction; PCa detection/stratification/reconstruction; positron emission tomography/computed tomography (PET/CT); androgen deprivation therapy (ADT); prostate biopsy; associated challenges and their clinical implications. Methods: A search of the PubMed database was conducted based on the inclusion and exclusion criteria for the use of DL methods within the abovementioned areas. Results: A total of 784 articles were found, of which, 64 were included. Reconstruction of the prostate, the detection and stratification of prostate cancer, the reconstruction of prostate cancer, and diagnosis on PET/CT, ADT, and biopsy were analyzed in 21, 22, 6, 7, 2, and 6 studies, respectively. Among studies describing DL use for MR-based purposes, datasets with magnetic field power of 3 T, 1.5 T, and 3/1.5 T were used in 18/19/5, 0/1/0, and 3/2/1 studies, respectively, of 6/7 studies analyzing DL for PET/CT diagnosis which used data from a single institution. Among the radiotracers, [68Ga]Ga-PSMA-11, [18F]DCFPyl, and [18F]PSMA-1007 were used in 5, 1, and 1 study, respectively. Only two studies that analyzed DL in the context of DT met the inclusion criteria. Both were performed with a single-institution dataset with only manual labeling of training data. Three studies, each analyzing DL for prostate biopsy, were performed with single- and multi-institutional datasets. TeUS, TRUS, and MRI were used as input modalities in two, three, and one study, respectively. Conclusion: DL models in prostate cancer diagnosis show promise but are not yet ready for clinical use due to variability in methods, labels, and evaluation criteria. Conducting additional research while acknowledging all the limitations outlined is crucial for reinforcing the utility and effectiveness of DL-based models in clinical settings.
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页数:25
相关论文
共 83 条
[1]   Precise Identification of Prostate Cancer from DWI Using Transfer Learning [J].
Abdelmaksoud, Islam R. ;
Shalaby, Ahmed ;
Mahmoud, Ali ;
Elmogy, Mohammed ;
Aboelfetouh, Ahmed ;
Abou El-Ghar, Mohamed ;
El-Melegy, Moumen ;
Alghamdi, Norah Saleh ;
El-Baz, Ayman .
SENSORS, 2021, 21 (11)
[2]   Automatic prostate and prostate zones segmentation of magnetic resonance images using DenseNet-like U-net [J].
Aldoj, Nader ;
Biavati, Federico ;
Michallek, Florian ;
Stober, Sebastian ;
Dewey, Marc .
SCIENTIFIC REPORTS, 2020, 10 (01)
[3]   Semi-automatic classification of prostate cancer on multi-parametric MR imaging using a multi-channel 3D convolutional neural network [J].
Aldoj, Nader ;
Lukas, Steffen ;
Dewey, Marc ;
Penzkofer, Tobias .
EUROPEAN RADIOLOGY, 2020, 30 (02) :1243-1253
[4]   A Deep Learning-Based Approach for the Detection and Localization of Prostate Cancer in T2 Magnetic Resonance Images [J].
Alkadi, Ruba ;
Taher, Fatma ;
El-baz, Ayman ;
Werghi, Naoufel .
JOURNAL OF DIGITAL IMAGING, 2019, 32 (05) :793-807
[5]   Prediction of prostate cancer Gleason score upgrading from biopsy to radical prostatectomy using pre-biopsy multiparametric MRI PIRADS scoring system [J].
Alqahtani, Saeed ;
Wei, Cheng ;
Zhang, Yilong ;
Szewczyk-Bieda, Magdalena ;
Wilson, Jennifer ;
Huang, Zhihong ;
Nabi, Ghulam .
SCIENTIFIC REPORTS, 2020, 10 (01)
[6]   Prostate cancer upgrading or downgrading of biopsy Gleason scores at radical prostatectomy: prediction of "regression to the mean" using routine clinical features with correlating biochemical relapse rates [J].
Altok, Muammer ;
Troncoso, Patricia ;
Achim, Mary F. ;
Matin, Surena F. ;
Gonzalez, Graciela N. ;
Davis, John W. .
ASIAN JOURNAL OF ANDROLOGY, 2019, 21 (06) :598-604
[7]   Clinically significant prostate cancer detection and segmentation in low-risk patients using a convolutional neural network on multi-parametric MRI [J].
Arif, Muhammad ;
Schoots, Ivo G. ;
Castillo Tovar, Jose ;
Bangma, Chris H. ;
Krestin, Gabriel P. ;
Roobol, Monique J. ;
Niessen, Wiro ;
Veenland, Jifke F. .
EUROPEAN RADIOLOGY, 2020, 30 (12) :6582-6592
[8]   Deep Recurrent Neural Networks for Prostate Cancer Detection: Analysis of Temporal Enhanced Ultrasound [J].
Azizi, Shekoofeh ;
Bayat, Sharareh ;
Yan, Pingkun ;
Tahmasebi, Amir ;
Kwak, Jin Tae ;
Xu, Sheng ;
Turkbey, Baris ;
Choyke, Peter ;
Pinto, Peter ;
Wood, Bradford ;
Mousavi, Parvin ;
Abolmaesumi, Purang .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2018, 37 (12) :2695-2703
[9]   Segmentation of the Prostate Transition Zone and Peripheral Zone on MR Images with Deep Learning [J].
Bardis, Michelle ;
Houshyar, Roozbeh ;
Chantaduly, Chanon ;
Tran-Harding, Karen ;
Ushinsky, Alexander ;
Chahine, Chantal ;
Rupasinghe, Mark ;
Chow, Daniel ;
Chang, Peter .
RADIOLOGY-IMAGING CANCER, 2021, 3 (03)
[10]  
Bhattacharya Indrani, 2020, Medical Image Computing and Computer Assisted Intervention - MICCAI 2020. 23rd International Conference. Proceedings. Lecture Notes in Computer Science (LNCS 12262), P315, DOI 10.1007/978-3-030-59713-9_31