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Dive into the research topics where Yan Zhuang-zhi is active.

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Featured researches published by Yan Zhuang-zhi.


Journal of Computer Science and Technology | 2000

A logic filter for tumor detection on mammograms

Alberto Rocha; Tong Fu; Yan Zhuang-zhi

This paper presents a novel approach for detection of suspicious regions in digitized mammograms. The edges of the suspicious region in mammogram are enhanced using an improved logic filter. The result of further image processing gives a gray-level histogram with distinguished characteristics, which facilitates the segmentation of the suspicious masses. The experiment results based on 25 digital sample mammograms, which are definitely diagnosed, are analyzed and evaluated briefly.


Journal of Shanghai University (english Edition) | 1999

A Computer Aided Consultant System for Mammogram Diagnosis

Alberto Rocha; Tong Fu; Yan Zhuang-zhi

A computer-aided consultant system for mammogram diagnosis is proposed in this paper based on mammogram segmentation as an image mining technique, to aid radiologistis in X-ray film interpretation. The general architecture of the system is introduced first, followed by a discussion of mammogram segmentation using logic filter, an analysis of the statistical data to the diagnostics with respect to different clinical information, and a brief introduction to a fuzzy decision making subsystem. Finally some experimental results are given.


Chinese Science Bulletin | 2017

Research progress of X-ray luminescence optical tomography

Shu YueXia; Zhao Li-li; Jiang Jiehui; Yan Zhuang-zhi; Luo Jianwen; Liu Xin

Recently, X-ray luminescence optical tomography (XLOT) has been proposed as a promising optical molecular imaging modality. XLOT, or equivalently, X-ray luminescence computed tomography (XLCT), is a tomography imaging technique based on the X-ray excited nanophosphors (NPs). Briefly, when NPs in imaged object are irradiated with X-ray, NPs will emit visible or near infrared (NIR) luminescence. By mathematically modeling the light transportation and solving an inverse problem, the three dimensional (3D) distribution of NPs in imaged object can be recovered. Compared with the conventional optical molecular imaging modalities, XLOT has ability to eliminate the autofluorescence and provide the increased penetration depth in tissues. As a result, the imaging technique is well suited for biomedical researches. Especially, XLOT provides the potential for clinical applications due to the increased penetration depth. Based on the excitation patterns of X-ray beams, the current XLOT imaging systems can be classed into three types, i.e., the pencil-beam system, the fan-beam system, and the cone-beam system. Among these systems, the pencil-beam XLOT has the highest spatial resolution and the lowest time resolution. In contrast, the cone-beam XLOT system, especially the single-view cone-beam XLOT system, has the shortest data acquisition time. But, the imaging quality is relatively lower compared to the pencil-beam system. Hence, there is a tradeoff between the spatial resolution and time resolution for XLOT imaging technique. After acquring the measurement data by the above XLOT system, the 3D distribution of NPs in imaged object can be recovered by the reconstruction methods. For XLOT reconstruction, there are two types of methods, i.e., the filtered back projection (FBP) method and the reconstruction method based on photon migration model. For the pencil-beam XLOT system, the reconstruction is generally performed by FBP method, which is similar to XCT reconstruction method. For the cone-beam XLOT system, the NPs in imaged object are generally resolved by using the method based on photon migration model. It is worth noting that the reconstruction based on migration mode is a high ill-posed problem due to the high scattering of light in biological tissues. To alleviate the ill-posedness, the compressive sensing technique and a priori information method (e.g., excitation a priori information) can be used. In addition, the imaging probes play an important role in XLOT imaging. Currently, the rare-earth nanophosphors have be widely used in XLOT due to their optical properties. Of course, the rare-earth nanophosphors are not sole NPs for XLOT imaging. Other NPs, e.g., quantum dots and gold nanoclusters, have also been used as the imaging probes. Further, with the advances in NPs, more applications would be expected in bio-medical researches. To sum up, for XLOT excellent performances, during the last few years, the continuous research efforts have been made to develop new imaging systems, build robust reconstruction methods, design efficient NPs, and expand the applications of XLOT. This paper reviews the developments of XLOT, including the basic imaging principles, system compositions, and advantages and disadvantages of different XLOT imaging systems. Subsequently, the corresponding reconstruction methods and the imaging probes are classified and summarized. Finally, we discuss the applications of XLOT in the preclinical diagnosis, and the future research direction of XLOT.


international conference on future computer science and education | 2011

A Novel Digital Spiked Shoes Design and Testing

Si Wen; Yan Zhuang-zhi; Liu Shu-peng

This paper designs a novel digital force measurement spiked shoes. Acquire three dimensional forces of the spikes, then stored it in SD card in the vamp. As for the athletes provides assistance with acquiring the three dimensional force between the spiked shoes and the runway. Digital spiked shoes mainly include the three-dimensional force sensor, data collector, SD memory card and PC display software. In the simulated test on the force platform, comparison with force platform and digital spiked shoes test results that show good consistency.


Journal of Shanghai University (english Edition) | 2005

Electrical Impedance Tomography Based on Direct Search Method

Cai Chang; Yan Zhuang-zhi

Solution to impedance distribution in electrical impedance tomography (EIT) is an ill-posed nonlinear inverse problem. It is especially difficult to reconstruct an EIT image in the center area of a measured object. Tikhonov regularization with some prior information is a sound regularization method for static electrical impedance tomography under the condition that some true impedance distribution information is known a priori. This paper presents a direct search method (DSM) as pretreatment of image reconstruction through which one not only can construct a regularization matrix which may locate in areas of impedance change, but also can obtain an initial impedance distribution more similar to the true impedance distribution, as well as better current modes which can better distinguish the initial distribution and the true distribution. Simulation results indicate that, by using DSM, resolution in the center area of the measured object can be improved significantly.


Archive | 2005

A magnetic rheological fluid and preparing method thereof

Liu Shu-peng; Yan Zhuang-zhi


Archive | 2005

Disease gene sorting method

Yan Zhuang-zhi; Liu Shu-peng; Chen Zhihong


Archive | 2013

Multifunctional nursing bed for old people

Jiang Jiehui; Jiang Xianbo; Ma Pengcheng; Pan Xiaojie; Pan Yang; Yan Dayu; Gao Zengxiang; Gao Zhengyue; Zhou Hucheng; Zhang Xiyue; Wu Xiaowei; Gong Yunzhi; Wang Jingwen; Zhou Zhuoqi; Zhou Huihui; Zheng Xiaosong; Yan Zhuang-zhi


Journal of Applied Sciences | 2010

Lattice Boltzmann Method for Vector Image Denoising

Wang Zhi-qiang; Yan Zhuang-zhi


Journal of Applied Sciences | 2008

Prediction of Protein Secondary Structure with an Improved Measure of Information Discrepancy

Li Zhe-qian; Liu Shu-peng; Yan Zhuang-zhi; Xin Yan-fei

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Si Wen

Shanghai University

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