基于ML的前列腺癌TRUS图像分割

R. I. Zaev, A. Romanov, R. Solovyev
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引用次数: 0

摘要

医学研究在检测人体各种病理方面取得了巨大进展。这一进程的速度仍然存在问题,在这一领域缺乏足够数量的受过训练的专业人员。特别是前列腺癌的检测,不需要手术,是一个非常劳动密集型的过程。已经提出了一种基于神经网络的机器学习算法来解决这个问题,使得看到器官中可疑的病变区域成为可能。在本研究中,对TRUS图像处理方法进行了综合分析,并开发了一种算法架构来分割受影响的区域。在此基础上,我们开发了一个前列腺癌的自动检测和分割系统。
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Segmentation of Prostate Cancer on TRUS Images Using ML
Medical research has made tremendous progress in detecting various pathologies in the human body. There is still the problem of the speed of the process, and the lack of a sufficient number of trained professionals in this field. Detection of prostate cancer, in particular, without surgery is a very labor- intensive process. A neural network-based machine learning algorithm has been proposed to solve this problem, making it possible to see suspected areas of lesions in the organ. In this study, a comprehensive analysis of TRUS image processing approaches was carried out, and an algorithm architecture was developed to segment the affected areas. Based on this analysis, we have developed a system for automatic detection and segmentation of prostate cancer.
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