基于空间与谱域图神经网络的新生儿脸、胸、腹黄疸识别

Shikha Prasher, Leema Nelson, Sangeetha Annam
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摘要

新生儿黄疸很常见,一般无痛,但如果不及时诊断和处理,会引起皮肤急性黄变,损害大脑甚至死亡。新生儿的黄疸表现为婴儿的脸和胸部发黄。这是由婴儿血液中胆红素的积累引起的。自然地,孕妈妈的肝脏会将胆红素从婴儿体内清除出去,但坚持到分娩,婴儿的身体还没有开始清除胆红素,导致新生儿黄疸。当血液中的胆红素水平过高时,婴儿的脸和胸部变黄,并且血液中的总血清胆红素(TSB)水平呈黄色。深度学习(DL)方法已被用于使用光谱和空间图神经网络(SSGNN)来确定新生儿黄疸的程度。这种黄疸预测将改善新生儿的健康和生活质量。它是一种基于图形神经网络的人脸和胸部图像空间域和光谱域信息提取的新模型。利用人脸和胸部的图像颜色信息预测TSB水平。将基于图神经网络(SPAGNN)的空间域与基于图神经网络(SPEGNN)的谱域结合,并进行补充提取,使新模型的强度最大化,精度更高。SSGNN模型的性能通过召回率、准确性、特异性和F1评分来评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Jaundice Recognition in Newborn Face, Chest and Abdomen using Spatial and Spectral Domain Graph Neural Network
Jaundice in newborns is common and generally no pain, but if it is not diagnosed and not handled with proper time, it will cause acute yellowing of the skin, which damages the brain and even death. Jaundice in a newborn manifest as yellowing of the infant’s face and chest. This is caused by the buildup of bilirubin in the blood of baby. Naturally, the liver of pregnant mother removes bilirubin from the baby, but adhering to delivery, thebody of baby does not begin to remove bilirubin, causing newborn jaundice. The infant’s face and chest turn yellow when bilirubin levels produce in the blood are too high and yellow coloration is present on the total serum bilirubin (TSB) level in the blood. Deep learning (DL) methods have been used to determine the degree of newborn jaundice using spectral and spatial graph neural networks (SSGNN). This jaundice prediction will improve the health and quality of life of a neonatal. It is a novel model based on graphical neural networks to extract information from photos of the face and the chest in the spatial and spectral domains.The image color information of the face and chest are used to predict the TSB levels. The combined impacts from spatial domain based on graph neural networks (SPAGNN) and the spectral domain based on graph neural networks (SPEGNN) with supplementary extraction will be carried out to maximize the intensity of the new model with higher accuracy. The performance of the SSGNN model is evaluated using recall,accuracy, specificity, and F1 score.
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