Presentation + Paper
3 March 2017 Convolutional neural network based deep-learning architecture for prostate cancer detection on multiparametric magnetic resonance images
Yohannes K. Tsehay, Nathan S. Lay, Holger R. Roth, Xiaosong Wang, Jin Tae Kwak, Baris I. Turkbey, Peter A. Pinto, Brad J. Wood, Ronald M. Summers
Author Affiliations +
Abstract
Prostate cancer (PCa) is the second most common cause of cancer related deaths in men. Multiparametric MRI (mpMRI) is the most accurate imaging method for PCa detection; however, it requires the expertise of experienced radiologists leading to inconsistency across readers of varying experience. To increase inter-reader agreement and sensitivity, we developed a computer-aided detection (CAD) system that can automatically detect lesions on mpMRI that readers can use as a reference. We investigated a convolutional neural network based deep-learing (DCNN) architecture to find an improved solution for PCa detection on mpMRI. We adopted a network architecture from a state-of-the-art edge detector that takes an image as an input and produces an image probability map. Two-fold cross validation along with a receiver operating characteristic (ROC) analysis and free-response ROC (FROC) were used to determine our deep-learning based prostate-CAD’s (CADDL) performance. The efficacy was compared to an existing prostate CAD system that is based on hand-crafted features, which was evaluated on the same test-set. CADDL had an 86% detection rate at 20% false-positive rate while the top-down learning CAD had 80% detection rate at the same false-positive rate, which translated to 94% and 85% detection rate at 10 false-positives per patient on the FROC. A CNN based CAD is able to detect cancerous lesions on mpMRI of the prostate with results comparable to an existing prostate-CAD showing potential for further development.
Conference Presentation
© (2017) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Yohannes K. Tsehay, Nathan S. Lay, Holger R. Roth, Xiaosong Wang, Jin Tae Kwak, Baris I. Turkbey, Peter A. Pinto, Brad J. Wood, and Ronald M. Summers "Convolutional neural network based deep-learning architecture for prostate cancer detection on multiparametric magnetic resonance images", Proc. SPIE 10134, Medical Imaging 2017: Computer-Aided Diagnosis, 1013405 (3 March 2017); https://doi.org/10.1117/12.2254423
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CITATIONS
Cited by 30 scholarly publications and 4 patents.
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KEYWORDS
Computer aided design

Prostate

Tumors

Solid modeling

Biopsy

Principal component analysis

Computer aided diagnosis and therapy

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