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试论古韵“脂”“微”二部的分野
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作者 向丽清 向小清 《现代语文(下旬.语言研究)》 2008年第7期29-31,共3页
本文通过总结清代古音学家的音韵学成果,从《诗经》用韵情况和阴阳入三声相配的原理得出“脂”“微”二部分用的结论。
关键词 “脂”部 “微”部 《诗经》 阴阳入三声相配
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论祭部 被引量:2
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作者 刘冠才 《古汉语研究》 CSSCI 北大核心 2004年第2期12-17,共6页
祭部的问题非常复杂 ,也非常特殊 ,涉及到古音学、今音学和等韵学三个部门。本文重点讨论与古音学(上古音 )有关的问题 ,同时也涉及到今音学 (即“广韵学”)的一些问题。以古音学而论 ,祭部关涉到上古的韵部和声调两个方面。本文重点讨... 祭部的问题非常复杂 ,也非常特殊 ,涉及到古音学、今音学和等韵学三个部门。本文重点讨论与古音学(上古音 )有关的问题 ,同时也涉及到今音学 (即“广韵学”)的一些问题。以古音学而论 ,祭部关涉到上古的韵部和声调两个方面。本文重点讨论如下几个问题 :一、关于脂祭两部分合的问题 ;二、关于祭月两部分合的问题 ;三、关于祭废分合的问题 ;四。 展开更多
关键词 古音学 今音学 等韵学 声调 次入韵 韵尾
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Automated body composition analysis system based on chest CT for evaluating content of muscle and adipose
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作者 YANG Jie LIU Yanli +2 位作者 CHEN Xiaoyan CHEN Tianle LIU Qi 《中国医学影像技术》 CSCD 北大核心 2024年第8期1242-1248,共7页
Objective To establish a body composition analysis system based on chest CT,and to observe its value for evaluating content of chest muscle and adipose.Methods T7—T8 layer CT images of 108 pneumonia patients were col... Objective To establish a body composition analysis system based on chest CT,and to observe its value for evaluating content of chest muscle and adipose.Methods T7—T8 layer CT images of 108 pneumonia patients were collected(segmented dataset),and chest CT data of 984 patients were screened from the COVID 19-CT dataset(10 cases were randomly selected as whole test dataset,the remaining 974 cases were selected as layer selection dataset).T7—T8 layer was classified based on convolutional neural network(CNN)derived networks,including ResNet,ResNeXt,MobileNet,ShuffleNet,DenseNet,EfficientNet and ConvNeXt,then the accuracy,precision,recall and specificity were used to evaluate the performance of layer selection dataset.The skeletal muscle(SM),subcutaneous adipose tissue(SAT),intermuscular adipose tissue(IMAT)and visceral adipose tissue(VAT)were segmented using classical fully CNN(FCN)derived network,including FCN,SegNet,UNet,Attention UNet,UNET++,nnUNet,UNeXt and CMUNeXt,then Dice similarity coefficient(DSC),intersection over union(IoU)and 95 Hausdorff distance(HD)were used to evaluate the performance of segmented dataset.The automatic body composition analysis system was constructed based on optimal layer selection network and segmentation network,the mean absolute error(MAE),root mean squared error(RMSE)and standard deviation(SD)of MAE were used to evaluate the performance of automatic system for testing the whole test dataset.Results The accuracy,precision,recall and specificity of DenseNet network for automatically classifying T7—T8 layer from chest CT images was 95.06%,84.83%,92.27%and 95.78%,respectively,which were all higher than those of the other layer selection networks.In segmentation of SM,SAT,IMAT and overall,DSC and IoU of UNet++network were all higher,while 95HD of UNet++network were all lower than those of the other segmentation networks.Using DenseNet as the layer selection network and UNet++as the segmentation network,MAE of the automatic body composition analysis system for predicting SM,SAT,IMAT,VAT and MAE was 27.09,6.95,6.65 and 3.35 cm 2,respectively.Conclusion The body composition analysis system based on chest CT could be used to assess content of chest muscle and adipose.Among them,the UNet++network had better segmentation performance in adipose tissue than SM. 展开更多
关键词 body composition THORAX muscle skeletal adipose tissue deep learning tomography X-ray computed
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