Mask Enhanced Deeply Supervised Prostate Cancer Detection on B-mode Micro-Ultrasound
Lichun Zhang, Steve Ran Zhou, Moon Hyung Choi, Jeong Hoon Lee,, Shengtian Sang, Adam Kinnaird, Wayne G. Brisbane, Giovanni Lughezzani, Davide, Maffei, Vittorio Fasulo, Patrick Albers, Sulaiman Vesal, Wei Shao, Ahmed N., El Kaffas, Richard E. Fan, Geoffrey A. Sonn, Mirabela Rusu

TL;DR
This paper introduces MedMusNet, a novel deep learning model that enhances prostate cancer detection and segmentation on micro-ultrasound images, outperforming baseline models and showing promise for aiding clinical diagnosis.
Contribution
MedMusNet is a new mask-enhanced, deeply supervised neural network that improves prostate cancer segmentation accuracy on micro-ultrasound images compared to existing models.
Findings
MedMusNet detected 76% of clinically significant cancer.
It achieved a Dice Similarity Coefficient of 0.365.
Outperformed baseline models and human experts in specificity and accuracy.
Abstract
Prostate cancer is a leading cause of cancer-related deaths among men. The recent development of high frequency, micro-ultrasound imaging offers improved resolution compared to conventional ultrasound and potentially a better ability to differentiate clinically significant cancer from normal tissue. However, the features of prostate cancer remain subtle, with ambiguous borders with normal tissue and large variations in appearance, making it challenging for both machine learning and humans to localize it on micro-ultrasound images. We propose a novel Mask Enhanced Deeply-supervised Micro-US network, termed MedMusNet, to automatically and more accurately segment prostate cancer to be used as potential targets for biopsy procedures. MedMusNet leverages predicted masks of prostate cancer to enforce the learned features layer-wisely within the network, reducing the influence of noise and…
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Taxonomy
TopicsPhotoacoustic and Ultrasonic Imaging
