Journal of Biomedical Science and Engineering

Journal of Biomedical Science and Engineering

ISSN Print: 1937-6871
ISSN Online: 1937-688X
www.scirp.org/journal/jbise
E-mail: jbise@scirp.org
"A diffusion-weighted imaging based diagnostic system for early detection of prostate cancer"
written by Ahmad Firjani, Ahmed Elnakib, Fahmi Khalifa, Georgy Gimel’farb, Mohamed Abou El-Ghar, Adel Elmaghraby, Ayman El-Baz,
published by Journal of Biomedical Science and Engineering, Vol.6 No.3A, 2013
has been cited by the following article(s):
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[2] An Enhanced Deep Learning Technique for Prostate Cancer Identification Based on MRI Scans
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[3] Role of machine learning in early diagnosis of kidney diseases.
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[4] To Determine the Diagnostic Accuracy of Diffusion-Weighted Imaging in the Diagnosis of Prostate Carcinoma Taking Histopathology As the Gold Standard
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[5] Supervised classifiers of prostate cancer
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[6] Big Data in Prostate Cancer
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[7] Supervised classifiers of prostate cancer: A geometric study on magnetic resonance images T2 weighted (T2W), by diffusion (DWI-ADC)
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[8] MRI Imaging of Seminal Vesicle Invasion (SVI) in Prostate Adenocarcinoma
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[9] On Computer-Aided Diagnosis of Prostate Cancer from MRI using Machine Intelligence Techniques
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[10] 18 Diagnosing Prostate Cancer Based on Deep Learning with Constraint Autoencoder
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[11] 19 MRI Imaging of Seminal Vesicle Invasion (SVI) in Prostate Adenocarcinoma
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[12] Diffusion-weighted MRI based System for the Early Detection of Prostate Cancer
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[13] A new CNN-based system for early diagnosis of prostate cancer
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[14] Computer-aided diagnosis of clinically significant prostate cancer from MRI images using sparse autoencoder and random forest classifier
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[15] A Novel ADCs-Based CNN Classification System for Precise Diagnosis of Prostate Cancer
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[16] A New Fast Framework for Early Detection of Prostate Cancer Without Prostate Segmentation
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[17] Computer-Aided Diagnosis of Prostate Cancer on Diffusion Weighted Imaging: A Technical Review
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[18] Prostate Segmentation from DW-MRI Using Level-Set Guided by Nonnegative Matrix Factorization
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[19] Diagnosing Prostate Cancer Based on Deep Learning with a Stacked Nonnegativity Constraint Autoencoder
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[20] A DCE-MRI-Based Noninvasive CAD System for Prostate Cancer Diagnosis
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[21] Prostate Cancer Imaging: An Engineering and Clinical Perspective
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[22] Early diagnosis and staging of prostate cancer using magnetic resonance imaging: State of the art and perspectives
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[23] Diffusion-weighted magnetic resonance imaging in diagnosing graft dysfunction: a non-invasive alternative to renal biopsy.
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[24] A novel MRA-based framework for the detection of changes in cerebrovascular blood pressure.
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[25] Deformable model-based methods for image segmentation................... and Robert Keynton
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[26] A new NMF-autoencoder based CAD system for early diagnosis of prostate cancer
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[27] Application of an unsupervised multi-characteristic framework for intermediate-high risk prostate cancer localization using diffusion-weighted MRI
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[28] Computational methods for the analysis of functional 4D-CT chest images.
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[29] A Comprehensive Non-invasive Framework for Diagnosing Prostate Cancer
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[30] A CAD system for early diagnosis of autism using different imaging modalities.
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[31] In vivo MRI based prostate cancer localization with random forests and auto-context model
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[32] Sparse feature learning for image analysis in segmentation, classification, and disease diagnosis.
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[33] A novel NMF-based CAD system for early diagnosis of prostate cancer by using 4-D diffusion-weighted magnetic resonance images (DW-MRI)
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[34] Image-Based Computer-Aided Diagnostic System for Early Diagnosis of Prostate Cancer
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[35] A non-invasive diagnostic system for early assessment of acute renal transplant rejection.
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[36] Computer-aided diagnostic tool for early detection of prostate cancer
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[37] Biomedical Image Segmentation: Advances & Trends
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[38] Prostate segmentation using deformable model-based methods: A review
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[39] An appearance-guided deformable model for 4D kidney segmentation using diffusion MRI
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[40] A novel NMF-based CAD system for early diagnosis of prostate cancer by using 4D diffusion-weighted magnetic resonance images (DW-MRI)
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[41] A level set-based framework for 3D kidney segmentation from diffusion MR images
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[42] A novel framework for automatic segmentation of kidney from DW-MRI
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[43] Using morphological transforms to enhance the contrast of medical images
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[44] Computerized detection of cancer in multi-parametric prostate MRI
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[45] Fast and robust hybrid framework for infant brain classification from structural MRI: a case study for early diagnosis of autism.
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[46] In-vitro and in-vivo diagnostic techniques for prostate cancer: A review
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[47] Geert Litjens is with Diagnostic Image Analysis Group, Radboud University Nijmegen Medical Centre, Geert Grootteplein-Zuid 10, 6525GA Nijmegen, The Netherlands.(email: g. litjens@ rad. umcn. nl)
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[48] A Novel NMF Guided Level-set for DWI Prostate Segmentation
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[49] FAST AND ROBUST HYBRID FRAMEWORK FOR INFANT BRAIN CLASSIFICATION FROM STRUCTRUAL MRI: A CASE STUDY FOR EARLY DIAGNOSIS OF AUTISM
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[50] A NOVEL NMF-BASED DWI CAD FRAMEWORK FOR PROSTATE CANCER
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[51] ANALYSIS OF CONTRAST-ENHANCED MEDICAL IMAGES
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[52] A novel NMF-based DWI CAD framework for prostate cancer.
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[53] Analysis of contrast-enhanced medical images.
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[54] MRI-based diagnostic system for early detection of prostate cancer
Biomedical Sciences and Engineering Conference (BSEC), 2013. IEEE, 2013
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