基于深度学习的分割和基于计算机视觉的超声成像技术

S. Girinath, T. Kavitha, Pamulapati Satish Chandra, Nellore Manoj Kumar, N. K. Gattim, R. Challa
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引用次数: 0

摘要

生物医学成像已经改变了医疗领域的游戏规则,因为它可以促进对人体问题的分析。由于计算机科学的发展及其与医学成像的结合,现在可能做出最好的诊断。生物图像处理的最新技术已经通过基于深度学习的方法得到了证明。由于这些方法具有固有的自我学习能力,因此不再需要手动构建特征。它以这种方式为医学图像处理提供了世界一流的解决方案和值得信赖的结果。正在进行这项努力,以通过解决上述主要挑战来帮助更好地诊断。这些方法固有的自我学习能力使得自定义增强变得多余。这为医学图像处理领域提供了一个具有可靠结果的优秀解决方案。为了更好地诊断健康问题,目前正在努力解决上述主要挑战。因此,本研究旨在创建新的分割和分类方法,以识别不同类型的乳腺肿块从美国图片。由于一种称为弹性成像的新方法,现在可以对组织的弹性特性进行成像。在我们的研究中,我们使用超声弹性成像和超声b型来对乳腺肿瘤进行分类。
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Deep Learning-based Segmentation and Computer Vision-based Ultrasound Imagery Techniques
Biomedical imaging has been a game-changer in the medical field because of how it facilitates the analysis of human body issues. The best possible diagnosis may now be made thanks to the development of computer science and its integration with medical imaging. The state-of-the-art in biological image processing has been demonstrated by methods based on deep learning. Thanks to these approaches' inherent capacity for self-learning, manually constructed features are no longer necessary. It has given a world-class solution with trustworthy outcomes for medical image processing in this way. This effort is being done to help with better diagnosis by addressing the key challenges mentioned above. These approaches' inherent capacity for self-learning has rendered custom enhancements superfluous. This has supplied an excellent solution with trustworthy outcomes in the field of medical image processing. In order to better diagnose health problems, the current effort is conducted to solve the aforementioned key challenges. Therefore, the study aims to create novel segmentation and classification methods for identifying the different types of breast masses from US pictures. The elastic characteristics of tissues can now be imaged thanks to a novel method called elastography. In our studies, we use ultrasound elastography as well as ultrasound B-mode to categorise breast tumours.
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