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Featured researches published by Dexing Kong.


Physics in Medicine and Biology | 2016

Automatic 3D liver segmentation based on deep learning and globally optimized surface evolution.

Peijun Hu; Fa Wu; Jialin Peng; Ping Liang; Dexing Kong

The detection and delineation of the liver from abdominal 3D computed tomography (CT) images are fundamental tasks in computer-assisted liver surgery planning. However, automatic and accurate segmentation, especially liver detection, remains challenging due to complex backgrounds, ambiguous boundaries, heterogeneous appearances and highly varied shapes of the liver. To address these difficulties, we propose an automatic segmentation framework based on 3D convolutional neural network (CNN) and globally optimized surface evolution. First, a deep 3D CNN is trained to learn a subject-specific probability map of the liver, which gives the initial surface and acts as a shape prior in the following segmentation step. Then, both global and local appearance information from the prior segmentation are adaptively incorporated into a segmentation model, which is globally optimized in a surface evolution way. The proposed method has been validated on 42 CT images from the public Sliver07 database and local hospitals. On the Sliver07 online testing set, the proposed method can achieve an overall score of [Formula: see text], yielding a mean Dice similarity coefficient of [Formula: see text], and an average symmetric surface distance of [Formula: see text] mm. The quantitative validations and comparisons show that the proposed method is accurate and effective for clinical application.


Medical Physics | 2015

3D liver segmentation using multiple region appearances and graph cuts

Jialin Peng; Peijun Hu; Fang Lu; Zhiyi Peng; Dexing Kong; Hongbo Zhang

PURPOSE Efficient and accurate 3D liver segmentations from contrast-enhanced computed tomography (CT) images play an important role in therapeutic strategies for hepatic diseases. However, inhomogeneous appearances, ambiguous boundaries, and large variance in shape often make it a challenging task. The existence of liver abnormalities poses further difficulty. Despite the significant intensity difference, liver tumors should be segmented as part of the liver. This study aims to address these challenges, especially when the target livers contain subregions with distinct appearances. METHODS The authors propose a novel multiregion-appearance based approach with graph cuts to delineate the liver surface. For livers with multiple subregions, a geodesic distance based appearance selection scheme is introduced to utilize proper appearance constraint for each subregion. A special case of the proposed method, which uses only one appearance constraint to segment the liver, is also presented. The segmentation process is modeled with energy functions incorporating both boundary and region information. Rather than a simple fixed combination, an adaptive balancing weight is introduced and learned from training sets. The proposed method only calls initialization inside the liver surface. No additional constraints from user interaction are utilized. RESULTS The proposed method was validated on 50 3D CT images from three datasets, i.e., Medical Image Computing and Computer Assisted Intervention (MICCAI) training and testing set, and local dataset. On MICCAI testing set, the proposed method achieved a total score of 83.4 ± 3.1, outperforming nonexpert manual segmentation (average score of 75.0). When applying their method to MICCAI training set and local dataset, it yielded a mean Dice similarity coefficient (DSC) of 97.7% ± 0.5% and 97.5% ± 0.4%, respectively. These results demonstrated the accuracy of the method when applied to different computed tomography (CT) datasets. In addition, user operator variability experiments showed its good reproducibility. CONCLUSIONS A multiregion-appearance based method is proposed and evaluated to segment liver. This approach does not require prior model construction and so eliminates the burdens associated with model construction and matching. The proposed method provides comparable results with state-of-the-art methods. Validation results suggest that it may be suitable for the clinical use.


Ultrasonics | 2017

A pre-trained convolutional neural network based method for thyroid nodule diagnosis

Jinlian Ma; Fa Wu; Jiang Zhu; Dong Xu; Dexing Kong

HIGHLIGHTSA hybrid approach is proposed to diagnose thyroid nodules in ultrasound.It is a fusion of two pre‐trained CNNs with different architectures.All the CNNs are pre‐trained with 1.3 million natural images from ImageNet database.A multi‐view strategy is applied to improve the performance of CNNs.Large clinical thyroid nodule images are studied in our experiments.Novel single‐valued integrated indices called TMI are determined.It is easy and transparent of TMI to diagnose thyroid nodules using this technique. ABSTRACT In ultrasound images, most thyroid nodules are in heterogeneous appearances with various internal components and also have vague boundaries, so it is difficult for physicians to discriminate malignant thyroid nodules from benign ones. In this study, we propose a hybrid method for thyroid nodule diagnosis, which is a fusion of two pre‐trained convolutional neural networks (CNNs) with different convolutional layers and fully‐connected layers. Firstly, the two networks pre‐trained with ImageNet database are separately trained. Secondly, we fuse feature maps learned by trained convolutional filters, pooling and normalization operations of the two CNNs. Finally, with the fused feature maps, a softmax classifier is used to diagnose thyroid nodules. The proposed method is validated on 15,000 ultrasound images collected from two local hospitals. Experiment results show that the proposed CNN based methods can accurately and effectively diagnose thyroid nodules. In addition, the fusion of the two CNN based models lead to significant performance improvement, with an accuracy of 83.02% ± 0.72%. These demonstrate the potential clinical applications of this method.


computer assisted radiology and surgery | 2017

Ultrasound image-based thyroid nodule automatic segmentation using convolutional neural networks

Jinlian Ma; Fa Wu; Tian’an Jiang; Qiyu Zhao; Dexing Kong

PurposeDelineation of thyroid nodule boundaries from ultrasound images plays an important role in calculation of clinical indices and diagnosis of thyroid diseases. However, it is challenging for accurate and automatic segmentation of thyroid nodules because of their heterogeneous appearance and components similar to the background. In this study, we employ a deep convolutional neural network (CNN) to automatically segment thyroid nodules from ultrasound images.MethodsOur CNN-based method formulates a thyroid nodule segmentation problem as a patch classification task, where the relationship among patches is ignored. Specifically, the CNN used image patches from images of normal thyroids and thyroid nodules as inputs and then generated the segmentation probability maps as outputs. A multi-view strategy is used to improve the performance of the CNN-based model. Additionally, we compared the performance of our approach with that of the commonly used segmentation methods on the same dataset.ResultsThe experimental results suggest that our proposed method outperforms prior methods on thyroid nodule segmentation. Moreover, the results show that the CNN-based model is able to delineate multiple nodules in thyroid ultrasound images accurately and effectively. In detail, our CNN-based model can achieve an average of the overlap metric, dice ratio, true positive rate, false positive rate, and modified Hausdorff distance as


Medical Physics | 2017

Cascade convolutional neural networks for automatic detection of thyroid nodules in ultrasound images

Jinlian Ma; Fa Wu; Tian'an Jiang; Jiang Zhu; Dexing Kong


IEEE Transactions on Biomedical Engineering | 2018

Semiautomatic Radiofrequency Ablation Planning Based on Constrained Clustering Process for Hepatic Tumors

Rendong Chen; Tian'an Jiang; Fang Lu; Kaifeng Wang; Dexing Kong

0.8683 \pm 0.0056


International Journal of Imaging Systems and Technology | 2017

The effect of short cardio on inhibitory control ability of obese people

Donghui Tang; Shuang Tao; Jinlian Ma; Peijun Hu; Dan Long; Jun Wang; Dexing Kong


international congress on image and signal processing | 2015

A geodesic selection based variational model for 3D liver segmentation

Fang Lu; Jialin Peng; Zhiyi Peng; Dexing Kong

0.8683±0.0056,


Computers & Mathematics With Applications | 2015

Salt and pepper noise removal based on an approximation of l 0 norm

Fangfang Dong; Yunmei Chen; Dexing Kong; Bailin Yang


computer assisted radiology and surgery | 2017

Automatic 3D liver location and segmentation via convolutional neural network and graph cut

Fang Lu; Fa Wu; Peijun Hu; Zhiyi Peng; Dexing Kong

0.9224 \pm 0.0027

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Fa Wu

Zhejiang University

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Fangfang Dong

Zhejiang Gongshang University

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