Chaozhe Zhu
Chinese Academy of Sciences
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Publication
Featured researches published by Chaozhe Zhu.
NeuroImage | 2008
Chaozhe Zhu; Yufeng Zang; Qingjiu Cao; Chao-Gan Yan; Yong He; Tianzi Jiang; Manqiu Sui; Yufeng Wang
In this study, a resting-state fMRI based classifier, for the first time, was proposed and applied to discriminate children with attention-deficit/hyperactivity disorder (ADHD) from normal controls. On the basis of regional homogeneity (ReHo), a mapping of brain function at resting state, PCA-based Fisher discriminative analysis (PC-FDA) was trained to build a linear classifier. Permutation test was then conducted to identify the brain areas with the most significant contribution to the final discrimination. Experimental results showed a correct classification rate of 85% using a leave-one-out cross-validation. Moreover, some highly discriminative brain regions, like the prefrontal cortex and anterior cingulate cortex, well confirmed the previous findings on ADHD. Interestingly, some important but less reported regions such as the thalamus were also identified. We conclude that the classifier, using resting-state brain function as classification feature, has potential ability to improve current diagnosis and treatment evaluation of ADHD.
Human Brain Mapping | 2005
Gaolang Gong; Tianzi Jiang; Chaozhe Zhu; Yufeng Zang; Fei Wang; Sheng Xie; Jiangxi Xiao; Xuemei Guo
Current analysis of diffusion tensor imaging (DTI) is based mostly on a region of interest (ROI) in an image dataset, which is specified by users. This method is not always reliable, however, because of the uncertainty of manual specification. We introduce an improved fiber‐based scheme rather than an ROI‐based analysis to study in DTI datasets of 31 normal subjects the asymmetry of the cingulum, which is one of the most prominent white matter fiber tracts of the limbic system. The present method can automatically extract the quantitative anisotropy properties along the cingulum bundles from tractography. Moreover, statistical analysis was carried out after anatomic correspondence specific to the cingulum across subjects was established, rather than the traditional whole‐brain registration. The main merit of our method compared to existing counterparts is that to find such anatomic correspondence in cingulum, a scale‐invariant parameterization method by arc‐angle was proposed. It can give a continuous and exact description on any segment of cingulum. More interestingly, a significant left‐greater‐than‐right asymmetry pattern was obtained in most segments of cingulum bundle (−50–25 degrees), except in the most posterior portion of cingulum (25–50 degrees). Hum Brain Mapp 24:92–98, 2005.
NeuroImage | 2003
Chaozhe Zhu; Tianzi Jiang
A local image model is proposed to eliminate the adverse impact of both artificial and inherent intensity inhomogeneities in magnetic resonance imaging on intensity-based image segmentation methods. The estimation and correction procedures for intensity inhomogeneities are no longer indispensable because the highly convoluted spatial distribution of different tissues in the brain is taken into consideration. On the basis of the local image model, multicontext fuzzy clustering (MCFC) is proposed for classifying 2D and 3D MR data into tissues of white matter, gray matter, and cerebral spinal fluid automatically. In MCFC, multiple clustering contexts are generated for each pixel, and fuzzy clustering is independently performed in each context to calculate the degree of membership of a pixel to each tissue class. To maintain the statistical reliability and spatial continuity of membership distributions, a fusion strategy is adopted to integrate the clustering outcomes from different contexts. The fusion result is taken as the final membership value of the pixel. Experimental results on both real MR images and simulated volumetric MR data show that MCFC outperforms the classic fuzzy c-means (FCM) as well as other segmentation methods that deal with intensity inhomogeneities.
medical image computing and computer assisted intervention | 2005
Chaozhe Zhu; Yufeng Zang; Meng Liang; Lixia Tian; Yong He; Xiaobo Li; Manqiu Sui; Yufeng Wang; Tianzi Jiang
In this work, a discriminative model of attention deficit hyperactivity disorder (ADHD) is presented on the basis of multivariate pattern classification and functional magnetic resonance imaging (fMRI). This model consists of two parts, a classifier and an intuitive representation of discriminative pattern of brain function between patients and normal controls. Regional homogeneity (ReHo), a measure of brain function at resting-state, is used here as a feature of classification. Fisher discriminative analysis (FDA) is performed on the features of training samples and a linear classifier is generated. Our initial experimental results show a successful classification rate of 85%, using leave-one-out cross validation. The classifier is also compared with linear support vector machine (SVM) and Batch Perceptron. Our classifier outperforms the alternatives significantly. Fisher brain, the optimal projective-direction vector in FDA, is used to represent the discriminative pattern. Some abnormal brain regions identified by Fisher brain, like prefrontal cortex and anterior cingulate cortex, are well consistent with that reported in neuroimaging studies on ADHD. Moreover, some less reported but highly discriminative regions are also identified. We conclude that the discriminative model has potential ability to improve current diagnosis and treatment evaluation of ADHD.
IEEE Transactions on Image Processing | 2006
Lifeng Liu; Tianzi Jiang; Jianwei Yang; Chaozhe Zhu
Fingerprint registration is a critical step in fingerprint matching. Although a variety of registration alignment algorithms have been proposed, accurate fingerprint registration remains an unresolved problem. We propose a new algorithm for fingerprint registration using orientation field. This algorithm finds the correct alignment by maximization of mutual information between features extracted from orientation fields of template and input fingerprint images. Orientation field, representing the flow of ridges, is a relatively stable global feature of fingerprint images. This method uses the statistics and distribution of global feature of fingerprint images so that it is robust to image quality and local changes in images. The primary characteristic of this method is that it uses this stable global feature to align fingerprints, and that its behavior may resemble the way humans compare fingerprints. Experimental results show that the occurrence of misalignment is dramatically reduced and that registration accuracy is greatly improved at the same time, leading to enhanced matching performance.
international conference on computer vision | 2005
Tianzi Jiang; Xiaobo Li; Gaolong Gong; Meng Liang; Lixia Tian; Fuchun Li; Yong He; Yufeng Zang; Chaozhe Zhu; Shuyu Li; Songyuan Tang
In this article, we present some advances on medical imaging and computing at the National Laboratory of Pattern Recognition (NLPR) in the Chinese Academy of Sciences. The first part is computational neuroanatomy. Several novel methods on segmentations of brain tissue and anatomical substructures, brain image registration, and shape analysis are presented. The second part consists of brain connectivity, which includes anatomical connectivity based on diffusion tensor imaging (DTI), functional and effective connectivity with functional magnetic resonance imaging (fMRI). It focuses on abnormal patterns of brain connectivity of patients with various brain disorders compared with matched normal controls. Finally, some prospects and future research directions in this field are also given.
American Journal of Neuroradiology | 2006
Chun Shui Yu; F.C. Lin; Kun Cheng Li; Tianzi Jiang; Chaozhe Zhu; Wen Qin; Hong Sun; Piu Chan
Brain & Development | 2012
Yufeng Zang; Yong He; Chaozhe Zhu; Qingjiu Cao; Manqiu Sui; Meng Liang; Lixia Tian; Tianzi Jiang; Yufeng Wang
Archive | 2006
Yufeng Zang; Yong He; Tianzai Jiang; Chaozhe Zhu; Lixia Tian; Meng Liang
NeuroImage | 2009
Chao-Gan Yan; D.Q. Liu; Yong He; Qihong Zou; Chaozhe Zhu; Xi-Nian Zuo; Xiangyu Long; Yufeng Zang