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Evaluation and Analysis of Cardiovascular Function in Intensive Care Unit Patients by Ultrasound Image Segmentation Based on Deep Learning

机译:基于深度学习的超声图像分割对重症监护患者心血管功能的评价与分析

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Many studies have shown that cardiovascular disease has become one of the major diseases leading to death in the world. Therefore, it is a very meaningful topic to use image segmentation technology to segment blood vessels for clinical application. In order to automatically extract the features of blood vessel images in the process of segmentation, the deep learning algorithm is combined with image segmentation technology to segment the nerve cell membrane and carotid artery images of ICU patients, and to segment the blood vessel images from a multi-dimensional perspective. The relevant data are collected to observe the effect of this model. The results show that the three-dimensional multi-scale linear filter has a good effect on carotid artery segmentation in the image segmentation of nerve cell membranes and carotid artery. When analyzing the accuracy of vascular image segmentation from network parameters and training parameters, it is found that the accuracy of the three-dimensional multi-scale linear filter can reach about 85%. Therefore, it can be found that the combination of deep learning algorithm and image segmentation technology has a good segmentation effect, and the segmentation accuracy is also high. The experiment achieves the desired effect, which provides experimental basis for the clinical application of the vascular image segmentation technology.
机译:许多研究表明,心血管疾病已成为导致世界死亡的主要疾病之一。因此,它是一种非常有意义的主题,用于使用图像分割技术进行临床应用的血管。为了在分割过程中自动提取血管图像的特征,深入学习算法与图像分割技术组合,以分割ICU患者的神经细胞膜和颈动脉图像,并分段血管图像多维视角。收集相关数据以观察该模型的效果。结果表明,三维多尺度线性过滤器对神经细胞膜和颈动脉的图像分割中的颈动脉分段良好。当从网络参数和训练参数分析血管图像分割的准确性时,发现三维多尺度线性滤波器的精度达到约85%。因此,可以发现,深度学习算法和图像分割技术的组合具有良好的分割效果,并且分割精度也很高。该实验实现了所需的效果,为血管图像分割技术的临床应用提供了实验依据。

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