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1.
目的 介绍一种动态模糊聚类算法并利用该算法对磁共振图像进行分割研究。方法 首先对磁共振颅脑图像进行预处理去掉颅骨和肌肉等非脑组织,只保留大脑组织,然后利用模糊K- 均值聚类算法计算脑白质、脑灰质和脑脊液的模糊类属函数。结果 模糊K- 均值聚类算法能很好地分割出磁共振颅脑图像中的灰质、白质和脑脊液。结论 利用模糊K- 均值聚类算法分割磁共振颅脑图像能获得较好的分割效果。  相似文献   

2.
目的 介绍一种动态模糊聚类算法并和该算法对磁共振图像进行分割研究。方法 首先对磁共振颅脑图像进行预处理去掉颅骨和肌肉等非脑组织,只保留大脑组织,然后利用模糊K-均值聚类算法计算脑白质、脑灰质和脑脊液的模糊类属函数。结果 模糊K-均值聚类算法能很好地分割出磁共振颅脑图像中的灰质、白质和脑脊液。结论 利用模糊K-均值聚类算法分割磁共振颅脑图像能获得较好的分割效果。  相似文献   

3.
体外对生物反应调节剂(BRMs)单独及与化疗药物并用对阿霉(ADM)素敏感和耐药的K-562细胞系进行了研究。用RPMI-1640液体培养法培养细胞,以抑制率做为判断指标,研究结果如下:(1)10~3U/ml浓度IFN-α、-β和-γ对K-562细胞的抑制率分别为0.51、0.46、0.28;IFN-α、-β和-γ联合应用,抑制率无增加;对K-562/ADMIFN单独应用效果可疑,但IFN-α、-β与-γ联合应用,抑制作用明显增强;(2)IFN与ADM联合应用,对K-562细胞的抑制率为两种药物单独应用时抑制率之和,但对K-562/ADM的抑制率大于二者抑制率之和;3种IFN之间作用无差异;(3) G-CSF或RA与ADM合用能明显增强ADM对K-562/ADM细胞的抑制作用;(4) K-562/ADM细胞对MTX无交叉耐药性,对VP-16有部分交叉耐药性;RA与VP-16并用,能增强VP-16对K-562/ADM细胞的抑制作用。研究结果证明,某些BRMs可直接抑制K-562细胞,与化疗药物并用有协同作用。这种协同作用对K-562/ADM细胞尤其明显。BRMs与化疗药物联合应用可能有助于难治性或复发性白血病的治疗。  相似文献   

4.
背景:Snake模型为医学图像分割提供了一个全新的分割方式,可以克服传统图像分割方法在医学图像分割中的缺点.目的:针对肝癌CT图像特点,提出了一种改进的B样条曲线的Snake模型图像分割算法.方法:对腹部CT图像进行预处理,获得肝脏癌变部分的初始轮廓,再构造闭合B样条Snake模型,最后使用MMSE最小化外力变形模型以实现图像的准确分割.结果与结论:改进的B-Snake分割算法不仅减少了噪声的影响,而且使Snake曲线较好地收敛于目标轮廓边缘,对于肝癌CT图像该方法取得了感兴趣目标的良好分割效果.  相似文献   

5.
目的脑图像分割在外科手术规划和脑疾病诊断等方面都起着极为重要的作用,建立脑图像分割的自动策略成为一种需要。方法通过各向异性滤波,统计阈值分割,数学形态学滤波,和基于模糊连接算法对脑图像进行自动分割。结果实验表明这种分割策略能取得良好的分割结果。结论本文提出的算法可以有效地完成脑图像的自动分割工作。  相似文献   

6.
蚁群算法在磁共振图像分割中的应用   总被引:1,自引:0,他引:1  
研究一种智能的图像分割方法并且把这种分割方法应用到磁共振的图像分割中,对目前应用的图像分割方法进行比较后提出了一种基于蚁群的磁共振图像分割方法。最后将算法应用到颅脑磁共振的图像分割当中,实验结果表明新算法具有很强的噪声和模糊边界的检测能力。该算法的提出对磁共振研究和临床应用都有很大的理论和实践意义。  相似文献   

7.
背景:在临床中准确对人体组织进行三维分割能提高临床诊断的准确性,但传统的分水岭算法存在过度分割问题,难以实现人体组织的三维分割。目的:为准确三维分割人体组织,减少图像中伪极小值点对图像分割的影响,提出了一种基于控制标记符分水岭的交互式三维分割方法。方法:提取CT序列图像的内部和外部标记符,以此修正梯度图像并进行分割;在此基础上,根据序列图像上下层的相似性,利用人机交互进行组织结构的三维分割。首先在第一张序列图像上手工选取感兴趣区域上的一个点,借助同一组织在连续CT序列图像上面积的重叠关系即可从三维序列图上提取出感兴趣区域。结果与结论:基于控制标记符的分水岭算法解决了直接应用梯度图像进行分割的过度分割问题,便于进一步分割图像。利用基于分水岭算法的交互式三维分割方法得到的三维分割结果经过三维可视化后可清晰、准确地反映组织的三维特征。  相似文献   

8.
背景:在临床中准确对人体组织进行三维分割能提高临床诊断的准确性,但传统的分水岭算法存在过度分割问题,难以实现人体组织的三维分割.目的:为准确三维分割人体组织,减少图像中伪极小值点对图像分割的影响,提出了一种基于控制标记符分水岭的交互式三维分割方法.方法:提取CT 序列图像的内部和外部标记符,以此修正梯度图像并进行分割;在此基础上,根据序列图像上下层的相似性,利用人机交互进行组织结构的三维分割.首先在第一张序列图像上手工选取感兴趣区域上的一个点,借助同一组织在连续CT 序列图像上面积的重叠关系即可从三维序列图上提取出感兴趣区域.结果与结论:基于控制标记符的分水岭算法解决了直接应用梯度图像进行分割的过度分割问题,便于进一步分割图像.利用基于分水岭算法的交互式三维分割方法得到的三维分割结果经过三维可视化后可清晰、准确地反映组织的三维特征.  相似文献   

9.
目的研究MRI图像和K-空间数据之间的映射关系以及因K-空间数据有问题而引起的典型的图像伪影。方法给出K-空间及K-平面的定义,通过MRI模拟实验揭示K-空间数据的不同区域所包含的信息的差异。结果给出了K-空间数据丢失或欠采样所引起的各种伪影的特征。结论MR图像与K-空间数据之间满足傅立叶映射关系,了解K-空间的性质对于理解图像伪影产生的根源、校正图像畸变和伪影直接对k-空间数据进行处理有时候更方便、更有效。  相似文献   

10.
图像分割在医学图像中的研究方法及应用   总被引:6,自引:1,他引:6  
图像分割是指将一幅图像分解为若干互不交迭区域的集合,是图像处理与机器视觉的基本问题之一.医学图像分割是图像分割的一个重要应用领域,也是一个经典难题.本文从应用的特定角度,对近年来医学图像分割的新方法或改进算法进行综述,并简要讨论了每类分割方法的特点及应用.  相似文献   

11.
Automatic segmentation of MR images of the developing newborn brain   总被引:2,自引:0,他引:2  
This paper describes an automatic tissue segmentation method for newborn brains from magnetic resonance images (MRI). The analysis and study of newborn brain MRI is of great interest due to its potential for studying early growth patterns and morphological changes in neurodevelopmental disorders. Automatic segmentation of newborn MRI is a challenging task mainly due to the low intensity contrast and the growth process of the white matter tissue. Newborn white matter tissue undergoes a rapid myelination process, where the nerves are covered in myelin sheathes. It is necessary to identify the white matter tissue as myelinated or non-myelinated regions. The degree of myelination is a fractional voxel property that represents regional changes of white matter as a function of age. Our method makes use of a registered probabilistic brain atlas. The method first uses robust graph clustering and parameter estimation to find the initial intensity distributions. The distribution estimates are then used together with the spatial priors to perform bias correction. Finally, the method refines the segmentation using training sample pruning and non-parametric kernel density estimation. Our results demonstrate that the method is able to segment the brain tissue and identify myelinated and non-myelinated white matter regions.  相似文献   

12.
Segmentation in image processing finds immense application in various areas. Image processing techniques can be used in medical applications for various diagnoses. In this article, we attempt to apply segmentation techniques to the brain images. Segmentation of brain magnetic resonance images (MRI) can be used to identify various neural disorders. We can segment abnormal tissues from the MRI, which and can be used for early detection of brain tumors. The segmentation, when applied to MRI, helps in extracting the different brain tissues such as white matter, gray matter and cerebrospinal fluid. Segmentation of these tissues helps in determining the volume of these tissues in the three-dimensional brain MRI. The study of volume changes helps in analyzing many neural disorders such as epilepsy and Alzheimer disease. We have proposed a hybrid method combining the classical Fuzzy C Means algorithm with neural network for segmentation.  相似文献   

13.
邓羽  黄华 《中国临床康复》2011,(22):4084-4086
背景:在传统的图像分割方法中,模糊C均值聚类算法应用十分广泛。目的:将改进的模糊C均值聚类算法应用到MRI图像的分割中,提高MRI图像分割的准确度。方法:针对传统的基于Minkowski距离的模糊C均值聚类算法,提出了基于点对称距离的模糊C均值聚类算法,并将其运用到了脑部MRI图像分割中。结果与结论:实验结果表明,与模糊C均值聚类算法相比,点对称距离的模糊C均值聚类算法有明显的优势。  相似文献   

14.
Voxel-based cortical thickness measurements in MRI   总被引:1,自引:0,他引:1  
The thickness of the cerebral cortex can provide valuable information about normal and abnormal neuroanatomy. High resolution MRI together with powerful image processing techniques has made it possible to perform these measurements automatically over the whole brain. Here we present a method for automatically generating voxel-based cortical thickness (VBCT) maps. This technique results in maps where each voxel in the grey matter is assigned a thickness value. Sub-voxel measurements of thickness are possible using sub-sampling and interpolation of the image information. The method is applied to repeated MRI scans of a single subject from two MRI scanners to demonstrate its robustness and reproducibility. A simulated data set is used to show that small focal differences in thickness between two groups of subjects can be detected. We propose that the analysis of VBCT maps can provide results that are complementary to other anatomical analyses such as voxel-based morphometry.  相似文献   

15.
背景:由于脑部MR图像中信息对比度不高,各种脑部组织的形状复杂等特点,分割方法的选择比较困难,单一的算法很难获得满意的分割结果。目的:针对脑部MRI的特点综合利用现有的算法开发和定制有效的分割应用算法。方法:根据邻域连接和Canny水平集分割算法的优缺点,结合图像特征,用邻域连接方法的分割结果作为Canny水平集分割算法的先验分割模型,借以确定出Canny算法的下限阈值,从而完成两种算法的混合分割。结果与结论:采用实验所用混合方法得到的白质和灰质的分割结果,经与专家手工分割结果对比,证明该方法取得了较好的分割效果,从而证明综合利用现有的算法,不仅避免了重复劳动,还能开发和定制出更加有效的分割应用算法,具备很好的应用潜力。  相似文献   

16.
Summary. Magnetic resonance imaging (MRI) studies of the heart have been used for some years, but there are few tools available to quantify cardiac motion. A method has been developed that creates an M-mode MRI image, analogous to the one used in echocardiography, to display motion along a line as a function of time. The M-mode image is created from MRI images acquired with an ordinary gradient echo cine sequence. In a cinematographic display of the images, a cursor line can be positioned in order to determine the orientation of the measurement. A resampling algorithm then calculates the appearance of the M-mode image along the cursor line. The MRI method has been compared to echocardiographic M-mode in a phantom study and by measuring mitral and tricuspid annulus motion in 20 normal subjects. The phantom study showed no significant differences between MRI and echocardiographic M-mode measurements (difference mm). The annulus motion exhibits a similar pattern using both methods and the measured amplitudes are in close agreement. M-mode MRI provides similar information to echocardiography, but the cursor line can be placed arbitrarily within the image plane and the method is thus not limited to certain acoustic windows. This makes M-mode MRI a promising technique for assessing cardiac motion.  相似文献   

17.
Purpose Lower back pain affects 80–90 % of all people at some point during their life time, and it is considered as the second most neurological ailment after headache. It is caused by defects in the discs, vertebrae, or the soft tissues. Radiologists perform diagnosis mainly from X-ray radiographs, MRI, or CT depending on the target organ. Vertebra fracture is usually diagnosed from X-ray radiographs or CT depending on the available technology. In this paper, we propose a fully automated Computer-Aided Diagnosis System (CAD) for the diagnosis of vertebra wedge compression fracture from CT images that integrates within the clinical routine. Methods We perform vertebrae localization and labeling, segment the vertebrae, and then diagnose each vertebra. We perform labeling and segmentation via coordinated system that consists of an Active Shape Model and a Gradient Vector Flow Active Contours (GVF-Snake). We propose a set of clinically motivated features that distinguish the fractured vertebra. We provide two machine learning solutions that utilize our features including a supervised learner (Neural Networks (NN)) and an unsupervised learner (K-Means). Results We validate our method on a set of fifty (thirty abnormal) Computed Tomography (CT) cases obtained from our collaborating radiology center. Our diagnosis detection accuracy using NN is 93.2 % on average while we obtained 98 % diagnosis accuracy using K-Means. Our K-Means resulted in a specificity of 87.5 % and sensitivity over 99 %. Conclusions We presented a fully automated CAD system that seamlessly integrates within the clinical work flow of the radiologist. Our clinically motivated features resulted in a great performance of both the supervised and unsupervised learners that we utilize to validate our CAD system. Our CAD system results are promising to serve in clinical applications after extensive validation.  相似文献   

18.
目的探求乳腺肿瘤超声图像的边缘提取。方法广义梯度矢量流Snake模型已经成功地用于噪声相对比较小的CT、MRI等医学图像,然而乳腺肿瘤超声图像对比度低,斑点噪声大,很难将该模型直接应用于乳腺肿瘤超声图像。本文针对乳腺肿瘤超声图像的特点如图像对比度低,斑点噪声大,部分边缘缺失,肿瘤内部微细结构分布复杂(如血管,钙化灶等),特别恶性肿瘤还具有复杂形状等,采用相应的图像处理技术如非线性各向异性扩散滤除斑点噪声,形态学滤波器平滑图像,直方图均衡化提高图像的对比度,最后将该模型引入到乳腺肿瘤超声图像边缘提取。结果实验对158例乳腺肿瘤超声图像进行边缘提取,定量和定性分析均获得满意的结果。结论本文方法可以有效地用于超声乳腺肿瘤图像的边缘提取。  相似文献   

19.
Purpose Improved segmentation of soft objects was sought using a new method that combines level set segmentation with statistical deformation models, using prior knowledge of the shape of an object as well as information derived from the input image. Methods Statistical deformation models were created using Euclidian distance functions of binary data and a multi-hierarchical registration approach based on mutual information metric and demons deformable registration. This approach is motivated by the fact that models based on signed distance maps, traditionally combined with level set segmentation can result in irregular shapes and do not establish explicit correspondences. By using statistical deformation models as representation of shape and a maximum a posteriori (MAP) estimation model to estimate the MAP shape of the object to be segmented, a robust segmentation algorithm using accurate shape models could be developed. Results The accuracy and correctness of the synthesized models was evaluated on different 3D objects (cardiac MRI and spinal CT vertebral segment) and the segmentation algorithm was validated by performing different segmentation tasks using various image modalities. The results of this evaluation are very promising and show the potential utility of the approach. Conclusion Initial results demonstrate the approach is feasible and may be advantageous over alternative segmentation methods. Extensions of the model, which also incorporate prior knowledge about the spatial distribution of grey values, are currently under development.  相似文献   

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