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ACRIN数字化乳腺X线摄影筛查试验的放射医生Logistic回归模型分析 被引量:6
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作者 E.D.Pisano S.Acharyya +4 位作者 E.B.Cole H.S.Marques M.J.Yaffe M.Blevins 秦乃姗 《国际医学放射学杂志》 2009年第5期493-493,共1页
目的确定影响数字化乳腺X线摄影筛查试验(DMIST)中癌肿检出结果的因素。材料与方法此研究经学术审核委员会通过,符合健康医疗保险要求。7位影像医师复习DMIST癌肿病例的胶片硬拷贝(屏-片)和数字乳腺X线影像,并评价影响两种影像中... 目的确定影响数字化乳腺X线摄影筛查试验(DMIST)中癌肿检出结果的因素。材料与方法此研究经学术审核委员会通过,符合健康医疗保险要求。7位影像医师复习DMIST癌肿病例的胶片硬拷贝(屏-片)和数字乳腺X线影像,并评价影响两种影像中病灶显示的因素。阅片者对数字化和屏一片影像的配对资料进行分级,采用两种多项式Logistic回归模型分析联合与浓缩显示的分级。 展开更多
关键词 数字化乳腺X线摄影 LOGISTIC 回归模型分析 筛查试验 放射医生 X线影像 检出结果 医疗保险
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Adaptive Binary Coding for Scene Classification Based on Convolutional Networks
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作者 Shuai Wang Xianyi Chen 《Computers, Materials & Continua》 SCIE EI 2020年第12期2065-2077,共13页
With the rapid development of computer technology,millions of images are produced everyday by different sources.How to efficiently process these images and accurately discern the scene in them becomes an important but... With the rapid development of computer technology,millions of images are produced everyday by different sources.How to efficiently process these images and accurately discern the scene in them becomes an important but tough task.In this paper,we propose a novel supervised learning framework based on proposed adaptive binary coding for scene classification.Specifically,we first extract some high-level features of images under consideration based on available models trained on public datasets.Then,we further design a binary encoding method called one-hot encoding to make the feature representation more efficient.Benefiting from the proposed adaptive binary coding,our method is free of time to train or fine-tune the deep network and can effectively handle different applications.Experimental results on three public datasets,i.e.,UIUC sports event dataset,MIT Indoor dataset,and UC Merced dataset in terms of three different classifiers,demonstrate that our method is superior to the state-of-the-art methods with large margins. 展开更多
关键词 Scene classification convolutional neural network one-hot encoding supervised feature training
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RESTplus: an improved toolkit for resting-state functional magnetic resonance imaging data processing 被引量:14
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作者 Xi-Ze Jia Jue Wang +6 位作者 Hai-Yang Sun Han Zhang Wei Liao Ze Wang Chao-Gan Yan Xiao-Wei Song Yu-Feng Zang 《Science Bulletin》 SCIE EI CAS CSCD 2019年第14期953-954,共2页
Resting-state functional magnetic resonance imaging (RS-fMRI)[1,2] provides relatively high spatial and temporal resolution for mapping spontaneous brain activity non-invasively. It has been widely used in cognitive n... Resting-state functional magnetic resonance imaging (RS-fMRI)[1,2] provides relatively high spatial and temporal resolution for mapping spontaneous brain activity non-invasively. It has been widely used in cognitive neuroscience and clinical studies. A number of comprehensive software packages have been developed for RS-fMRI data analysis, among which a MATLAB package named REST (RESing-state fMRI data analysis Toolkit, released in October 2008 at http://www.restfmri.net)[3] is the earliest one dedicated to RS-fMRI analysis. REST focuses on RS-fMRI postprocessing metrics. 展开更多
关键词 RESTING-STATE FUNCTIONAL magnetic RESONANCE imaging (RS-fMRI) REST MATLAB
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Deep learning in cortical surface-based neuroimage analysis:a systematic review
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作者 Fenqiang Zhao Zhengwang Wu Gang Li 《Intelligent Medicine》 CSCD 2023年第1期46-58,共13页
Deep learning approaches,especially convolutional neural networks(CNNs),have become the method of choice in the field of medical image analysis over the last few years.This prevalence is attributed to their excellent ... Deep learning approaches,especially convolutional neural networks(CNNs),have become the method of choice in the field of medical image analysis over the last few years.This prevalence is attributed to their excellent abilities to learn features in a more effective and efficient manner,not only for 2D/3D images in the Euclidean space,but also for meshes and graphs in non-Euclidean space such as cortical surfaces in neuroimaging analysis field.The brain cerebral cortex is a highly convoluted and thin sheet of gray matter(GM)that is thus typically represented by triangular surface meshes with an intrinsic spherical topology for each hemisphere.Accordingly,novel tailored deep learning methods have been developed for cortical surface-based analysis of neuroimaging data.This paper reviewsed the representative deep learning techniques relevant to cortical surface-based analysis and summarizes recent major contributions to the field.Specifically,we surveyed the use of deep learning techniques for cortical surface reconstruction,registration,parcellation,prediction,and other applications.We concluded by discussing the open challenges,limitations,and potentials of these techniques,and suggested directions for future research. 展开更多
关键词 Deep learning Cortical surface-based analysis Neuroimage analysis Reconstruction REGISTRATION PARCELLATION
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Neuroimage-Based Consciousness Evaluation of Patients with Secondary Doubtful Hydrocephalus Before and After Lumbar Drainage 被引量:7
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作者 Jiayu Huo Zengxin Qi +8 位作者 Sen Chen Qian Wang Xuehai Wu Di Zang Tanikawa Hiromi Jiaxing Tan Lichi Zhang Weijun Tang Dinggang Shen 《Neuroscience Bulletin》 SCIE CAS CSCD 2020年第9期985-996,共12页
Hydrocephalus is often treated with a cerebrospinal fluid shunt(CFS) for excessive amounts of cerebrospinal fluid in the brain.However,it is very difficult to distinguish whether the ventricular enlargement is due to ... Hydrocephalus is often treated with a cerebrospinal fluid shunt(CFS) for excessive amounts of cerebrospinal fluid in the brain.However,it is very difficult to distinguish whether the ventricular enlargement is due to hydrocephalus or other causes,such as brain atrophy after brain damage and surgery.The non-trivial evaluation of the consciousness level,along with a continuous drainage test of the lumbar cistern is thus clinically important before the decision for CFS is made.We studied 32 secondary mild hydrocephalus patients with different consciousness levels,who received T1 and diffusion tensor imaging magnetic resonance scans before and after lumbar cerebrospinal fluid drainage.We applied a novel machine-learning method to find the most discriminative features from the multi-modal neuroimages.Then,we built a regression model to regress the JFK Coma Recovery Scale-Revised(CRS-R) scores to quantify the level of consciousness.The experimental results showed that our method not only approximated the CRS-R scores but also tracked the temporal changes in individual patients.The regression model has high potential for the evaluation of consciousness in clinical practice. 展开更多
关键词 HYDROCEPHALUS Disorder of consciousness Structural imaging Feature selection Regression
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Detection of Geochemical Element Assemblage Anomalies Using a Local Correlation Approach
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作者 Xianchuan Yu Shicheng Wang +9 位作者 Hao Wang Yuchen Liang Siying Chen Kang Wu Zhaoying Yang Chongyang Li Yunzhen Chang Ying Zhan Wang Yao Dan Hu 《Journal of Earth Science》 SCIE CAS CSCD 2021年第2期408-414,共7页
As direct prospecting data,geochemical data play an important role in modelling prospect potential.Geochemical element assemblage anomalies are usually reflected by the correlation between elements.Correlation coeffic... As direct prospecting data,geochemical data play an important role in modelling prospect potential.Geochemical element assemblage anomalies are usually reflected by the correlation between elements.Correlation coefficients are computed from the values of two elements,which reflect only the correlation at a global level.Thus,the spatial details of the correlation structure are ignored.In fact,an element combination anomaly often exists in geological backgrounds,such as on a fault zone or within a lithological unit.This anomaly may cause some combination of anomalies that are submerged inside the overall area and thus cannot be effectively extracted.To address this problem,we propose a local correlation coefficient based on spatial neighbourhoods to reflect the global distribution of elements.In this method,the sampling area is first divided into a set of uniform grid cells.A moving window with a size of 3×3 is defined with an integer of 3 to represent the sampling unit.The local correlation in each unit is expressed by the Pearson correlation coefficient.The whole area is scanned by the moving window,which produces a correlation coefficient matrix,and the result is portrayed with a thermal diagram.The local correlation approach was tested on two selected geochemical soil survey sites in Xiao Mountain,Henan Province.The results show that the areas of high correlation are mainly distributed in the fault zone or the known mineral spots.Therefore,the local correlation method is effective in extracting geochemical element combination anomalies. 展开更多
关键词 local correlation coefficients geochemical prospecting geochemical soil survey assemblage anomalies geodata mining
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