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Dive into the research topics where Luyao Shi is active.

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Featured researches published by Luyao Shi.


IEEE Transactions on Medical Imaging | 2014

Artifact Suppressed Dictionary Learning for Low-Dose CT Image Processing

Yang Chen; Luyao Shi; Qianjing Feng; Jiang Yang; Huazhong Shu; Limin Luo; Jean-Louis Coatrieux; Wufan Chen

Low-dose computed tomography (LDCT) images are often severely degraded by amplified mottle noise and streak artifacts. These artifacts are often hard to suppress without introducing tissue blurring effects. In this paper, we propose to process LDCT images using a novel image-domain algorithm called “artifact suppressed dictionary learning (ASDL).” In this ASDL method, orientation and scale information on artifacts is exploited to train artifact atoms, which are then combined with tissue feature atoms to build three discriminative dictionaries. The streak artifacts are cancelled via a discriminative sparse representation operation based on these dictionaries. Then, a general dictionary learning processing is applied to further reduce the noise and residual artifacts. Qualitative and quantitative evaluations on a large set of abdominal and mediastinum CT images are carried out and the results show that the proposed method can be efficiently applied in most current CT systems.


Physics in Medicine and Biology | 2013

Improving abdomen tumor low-dose CT images using a fast dictionary learning based processing

Yang Chen; Xindao Yin; Luyao Shi; Huazhong Shu; Limin Luo; Jean-Louis Coatrieux; Christine Toumoulin

In abdomen computed tomography (CT), repeated radiation exposures are often inevitable for cancer patients who receive surgery or radiotherapy guided by CT images. Low-dose scans should thus be considered in order to avoid the harm of accumulative x-ray radiation. This work is aimed at improving abdomen tumor CT images from low-dose scans by using a fast dictionary learning (DL) based processing. Stemming from sparse representation theory, the proposed patch-based DL approach allows effective suppression of both mottled noise and streak artifacts. The experiments carried out on clinical data show that the proposed method brings encouraging improvements in abdomen low-dose CT images with tumors.


Physics in Medicine and Biology | 2013

A surrogate-based metaheuristic global search method for beam angle selection in radiation treatment planning.

H Zhang; Siyang Gao; Weiwei Chen; Luyao Shi; W D' Souza; Robert R. Meyer

An important element of radiation treatment planning for cancer therapy is the selection of beam angles (out of all possible coplanar and non-coplanar angles in relation to the patient) in order to maximize the delivery of radiation to the tumor site and minimize radiation damage to nearby organs-at-risk. This category of combinatorial optimization problem is particularly difficult because direct evaluation of the quality of treatment corresponding to any proposed selection of beams requires the solution of a large-scale dose optimization problem involving many thousands of variables that represent doses delivered to volume elements (voxels) in the patient. However, if the quality of angle sets can be accurately estimated without expensive computation, a large number of angle sets can be considered, increasing the likelihood of identifying a very high quality set. Using a computationally efficient surrogate beam set evaluation procedure based on single-beam data extracted from plans employing equallyspaced beams (eplans), we have developed a global search metaheuristic process based on the nested partitions framework for this combinatorial optimization problem. The surrogate scoring mechanism allows us to assess thousands of beam set samples within a clinically acceptable time frame. Tests on difficult clinical cases demonstrate that the beam sets obtained via our method are of superior quality.


Physics in Medicine and Biology | 2017

Discriminative feature representation: an effective postprocessing solution to low dose CT imaging*

Yang Chen; Jin Liu; Yining Hu; Jian Yang; Luyao Shi; Huazhong Shu; Zhiguo Gui; Gouenou Coatrieux; Limin Luo

This paper proposes a concise and effective approach termed discriminative feature representation (DFR) for low dose computerized tomography (LDCT) image processing, which is currently a challenging problem in medical imaging field. This DFR method assumes LDCT images as the superposition of desirable high dose CT (HDCT) 3D features and undesirable noise-artifact 3D features (the combined term of noise and artifact features induced by low dose scan protocols), and the decomposed HDCT features are used to provide the processed LDCT images with higher quality. The target HDCT features are solved via the DFR algorithm using a featured dictionary composed by atoms representing HDCT features and noise-artifact features. In this study, the featured dictionary is efficiently built using physical phantom images collected from the same CT scanner as the target clinical LDCT images to process. The proposed DFR method also has good robustness in parameter setting for different CT scanner types. This DFR method can be directly applied to process DICOM formatted LDCT images, and has good applicability to current CT systems. Comparative experiments with abdomen LDCT data validate the good performance of the proposed approach.


PLOS ONE | 2014

2-D Impulse Noise Suppression by Recursive Gaussian Maximum Likelihood Estimation

Yang Chen; Jian Yang; Huazhong Shu; Luyao Shi; Jiasong Wu; Limin Luo; Jean-Louis Coatrieux; Christine Toumoulin

An effective approach termed Recursive Gaussian Maximum Likelihood Estimation (RGMLE) is developed in this paper to suppress 2-D impulse noise. And two algorithms termed RGMLE-C and RGMLE-CS are derived by using spatially-adaptive variances, which are respectively estimated based on certainty and joint certainty & similarity information. To give reliable implementation of RGMLE-C and RGMLE-CS algorithms, a novel recursion stopping strategy is proposed by evaluating the estimation error of uncorrupted pixels. Numerical experiments on different noise densities show that the proposed two algorithms can lead to significantly better results than some typical median type filters. Efficient implementation is also realized via GPU (Graphic Processing Unit)-based parallelization techniques.


Scientific Reports | 2016

Corrigendum: Improving Low-dose Cardiac CT Images based on 3D Sparse Representation

Luyao Shi; Yining Hu; Yang Chen; Xindao Yin; Huazhong Shu; Limin Luo; Jean-Louis Coatrieux

Scientific Reports 6: Article number: 2280410.1038/srep22804; published online: March162016; updated: April222016 In the original version of this Article, there were typographical errors in Affiliation 3 which was incorrectly listed as ‘Department of Radiology, Nanjing Hospital Affiliated to Nanjing Medical University, 210096, Nanjing, China.’ The correct affiliation is listed below: Department of Radiology, Nanjing First Hospital, Nanjing Medical University, 210006, Nanjing, China. These errors have now been corrected in the PDF and HTML versions of the Article.


Scientific Reports | 2016

Improving Low-dose Cardiac CT Images based on 3D Sparse Representation

Luyao Shi; Yining Hu; Yang Chen; Xindao Yin; Huazhong Shu; Limin Luo; Jean-Louis Coatrieux

Cardiac computed tomography (CCT) is a reliable and accurate tool for diagnosis of coronary artery diseases and is also frequently used in surgery guidance. Low-dose scans should be considered in order to alleviate the harm to patients caused by X-ray radiation. However, low dose CT (LDCT) images tend to be degraded by quantum noise and streak artifacts. In order to improve the cardiac LDCT image quality, a 3D sparse representation-based processing (3D SR) is proposed by exploiting the sparsity and regularity of 3D anatomical features in CCT. The proposed method was evaluated by a clinical study of 14 patients. The performance of the proposed method was compared to the 2D spares representation-based processing (2D SR) and the state-of-the-art noise reduction algorithm BM4D. The visual assessment, quantitative assessment and qualitative assessment results show that the proposed approach can lead to effective noise/artifact suppression and detail preservation. Compared to the other two tested methods, 3D SR method can obtain results with image quality most close to the reference standard dose CT (SDCT) images.


international symposium on biomedical imaging | 2014

Low-dose CT image processing using artifact suppressed dictionary learning

Luyao Shi; Yang Chen; Huazhong Shu; Limin Luo; Christine Toumoulin; Jean-Louis Coatrieux

With low-dose scanning protocol, CT images are often severely corrupted by quantum noise and artifacts. Artifacts often take prominent directional features and are rather hard to be suppressed without blurring tissue structures. In this paper, we propose to improve low-dose CT (LDCT) images using a two-step scheme called “artifact suppressed dictionary learning algorithm” (ASDL). In the first step, artifacts are significantly reduced by a discriminative sparse representation (DSR) operation, in which scale and orientation information of artifacts are exploited to build discriminative dictionaries for artifact suppression. Then, a general dictionary learning (DL) processing is performed to suppress the residual artifacts and noise. Experiments on both abdominal and thoracic data validate the good performance of the proposed method.


Proceedings of SPIE | 2015

Improving low-dose cardiac CT images using 3D sparse representation based processing

Luyao Shi; Yang Chen; Limin Luo

Cardiac computed tomography (CCT) has been widely used in diagnoses of coronary artery diseases due to the continuously improving temporal and spatial resolution. When helical CT with a lower pitch scanning mode is used, the effective radiation dose can be significant when compared to other radiological exams. Many methods have been developed to reduce radiation dose in coronary CT exams including high pitch scans using dual source CT scanners and step-and-shot scanning mode for both single source and dual source CT scanners. Additionally, software methods have also been proposed to reduce noise in the reconstructed CT images and thus offering the opportunity to reduce radiation dose while maintaining the desired diagnostic performance of a certain imaging task. In this paper, we propose that low-dose scans should be considered in order to avoid the harm from accumulating unnecessary X-ray radiation. However, low dose CT (LDCT) images tend to be degraded by quantum noise and streak artifacts. Accordingly, in this paper, a 3D dictionary representation based image processing method is proposed to reduce CT image noise. Information on both spatial and temporal structure continuity is utilized in sparse representation to improve the performance of the image processing method. Clinical cases were used to validate the proposed method.


Fluctuation and Noise Letters | 2015

Comparative Analysis of Median and Average Filters in Impulse Noise Suppression

Luyao Shi; Yang Chen; Wenlong Yuan; Libo Zhang; Benqiang Yang; Huazhong Shu; Limin Luo; Jean-Louis Coatrieux

Median type filters coupled with the Laplacian distribution assumption have shown a high efficiency in suppressing impulse noise. We however demonstrate in this paper that the Gaussian distribution assumption is more preferable than Laplacian distribution assumption in suppressing impulse noise, especially for high noise densities. This conclusion is supported by numerical experiments with different noise densities and filter models.

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Robert R. Meyer

University of Wisconsin-Madison

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W D'Souza

University of Maryland Medical Center

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H Zhang

University of Maryland

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Xindao Yin

Nanjing Medical University

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