Medical image prediction using artificial neural networks

D. Xhako, N. Hyka
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Abstract

Artificial Neural Networks (ANN) have been applied to solve a large number of real-world problems, considerable complexity. Solving problems that are too complex for conventional technologies is the main advantage of ANN. In general, these problems include pattern recognition and forecasting. ANN have been used in the medical imaging, in computer aided diagnosis, medical image segmentation and edge detection towards visual content analysis, and medical image registration. In this paper we use ANN as a prediction method in medical images to complete the missing data in MRI and CT images. By using these methods, we can eliminate artifacts of image and visualize the new image which is much closer to the desired one. This image can be used for diagnostic purposes or radiotherapy.Artificial Neural Networks (ANN) have been applied to solve a large number of real-world problems, considerable complexity. Solving problems that are too complex for conventional technologies is the main advantage of ANN. In general, these problems include pattern recognition and forecasting. ANN have been used in the medical imaging, in computer aided diagnosis, medical image segmentation and edge detection towards visual content analysis, and medical image registration. In this paper we use ANN as a prediction method in medical images to complete the missing data in MRI and CT images. By using these methods, we can eliminate artifacts of image and visualize the new image which is much closer to the desired one. This image can be used for diagnostic purposes or radiotherapy.
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基于人工神经网络的医学图像预测
人工神经网络(ANN)已被应用于解决大量复杂的现实问题。解决传统技术无法解决的复杂问题是人工神经网络的主要优势。一般来说,这些问题包括模式识别和预测。人工神经网络在医学成像、计算机辅助诊断、医学图像分割和边缘检测、视觉内容分析、医学图像配准等方面都有应用。本文将神经网络作为医学图像的预测方法,用于填补MRI和CT图像中的缺失数据。通过使用这些方法,我们可以消除图像中的伪影,并将更接近期望图像的新图像可视化。该图像可用于诊断或放疗。人工神经网络(ANN)已被应用于解决大量复杂的现实问题。解决传统技术无法解决的复杂问题是人工神经网络的主要优势。一般来说,这些问题包括模式识别和预测。人工神经网络在医学成像、计算机辅助诊断、医学图像分割和边缘检测、视觉内容分析、医学图像配准等方面都有应用。本文将神经网络作为医学图像的预测方法,用于填补MRI和CT图像中的缺失数据。通过使用这些方法,我们可以消除图像中的伪影,并将更接近期望图像的新图像可视化。该图像可用于诊断或放疗。
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