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首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >Automatic identifying laryngopharyngeal reflux using artificial neural network
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Automatic identifying laryngopharyngeal reflux using artificial neural network

机译:利用人工神经网络自动识别喉咽反流

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Laryngopharyngeal Reflux mostly leads to burns of the pharynx and larynx by reflux from gastric acid and also leads to different degrees of burns in the esophagus and the stomach. This paper aims to develop a technique for analyzing pharyngeal and laryngeal images. With techniques of digital image processing, this paper can choose the suitable images from burns of the pharynx and larynx to obtain the feature zones of burns of the pharynx and larynx. Artificial neural network helps physicians to develop the diagnostic standard about the burns severity of Laryngopharyngeal Reflux. This paper divides the types of the complications into three degrees and compares with other ways (Hanson et al. ~5 and Ilgner et al. ~6). The results can be the technical assistance in helping physicians to diagnose the severity of Laryngopharyngeal Reflux and to make a more precise diagnosis.
机译:喉咽反流主要通过胃酸回流导致咽部和喉部灼伤,并在食道和胃部引起不同程度的灼伤。本文旨在发展一种分析咽和喉图像的技术。借助数字图像处理技术,本文可以从咽和喉的烧伤中选择合适的图像,以获得咽和喉的烧伤特征区域。人工神经网络可帮助医生制定有关喉咽返流烧伤严重程度的诊断标准。本文将并发症的类型分为三个等级,并与其他方式进行比较(Hanson等人〜5和Ilgner等人〜6)。结果可为帮助医生诊断喉咽反流的严重程度并做出更精确的诊断提供技术帮助。

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