标题: | 运用最大概似估计及期望最大演算法以重建与切割微正子断层扫描与微阵列影像之统计应用 Statistical Applications of Maximized Likelihood Estimates with the Expectation-Maximization Algorithms for Reconstruction and Segmentation of MicroPET and Spotted Microarray Images |
作者: | 陈泰宾 Tai Been Chen 卢鸿兴 Henry Horng-Shing Lu 统计学研究所 |
关键字: | 微阵列基因影像;正子断层扫描影像;最大概似期望最大演算法;Microarray;MicroPET;MLEEM;GMM;PDEM;Segmentation;KDE |
公开日期: | 2007 |
摘要: | 正子断层扫描影像(PET)针对功能性疾病诊断提供非侵入式且可量化等资讯;然而PET影像品质与使用的重建演算法有很高的相依性。属叠代法之最大概似期望最大法(MLEEM)正快速成为PET影像重建的标准方法。常见的MLEM演算法对于随机事件修正是采用二个Poisson分配相减(即: Prompt与delay资料相减),此方法将失去Poisson分配的特性。我们将提出可行的演算法解决此一问题。利用联合Poisson分配(即联合Prompt与delay)做随机事件修正并同时重建PET影像,称之为PDEM演算法;不仅保持了Poisson分配特性而且不会增加估计随机事件修正后的变异。利用模拟、实验假体及实际老鼠等资料,采用变异系数和半高全宽值比较FBP, OSEM以及PDEM之影像重建品质。经由PDEM所得的影像品质均优于FBP或OSEM。 三维microPET影像能对体内基因反应之追踪与辨认提供重要的讯息。为了能调查或了解基因表现情形,发展低杂讯且高精确度的重建方法有其必要性。因此采用PDEM演算法重建影像接着将利用统计混合模型切割影像。在这研究中,模拟与实际老鼠资料用来评估所提之方法,结果显示所提出的方法具有合理且正确性。 另一应用是对微阵列针状基因影像之切割;该影像能提供生物医学之基因资讯。此应用使用高斯混合模型以及无母数的核密度估计等方法用来切割双色微阵列针状基因影像。16片双色基因影像设计嵌入已知浓度之 spike spots、重复Spots及染剂互换等实验,将用以验证与评估所提方法之有效性与正确性;结果显示所提之方法不仅能有效切割Spots同时对Spots的估计具有高准确性。 Positron emission tomography (PET) can provide in vivo, quantitative and functional information for the diagnosis of functional diseases; however, PET image quality is highly dependent on a reconstruction algorithm. Iterative algorithms, such as the maximum likelihood expectation-maximization (MLEM) algorithm, are rapidly becoming the standards for image reconstruction in emission tomography. The conventional MLEM algorithm utilized the Poisson model, which is no longer valid for delay-subtraction after random correction. This study was undertaken to overcome this problem. The MLEM algorithm is adopted and modified to reconstruct microPET images with random correction from the joint Poisson model of prompt and delay sinograms; this reconstruction method is called PDEM. The proposed joint Poisson model preserves Poisson properties without increasing the variances of estimates associated with random correction. The coefficients of variation (CV) and full width at half-maximum (FWHM) values were utilized to compare the quality of reconstructed microPET images of physical phantoms acquired by filtered backprojection (FBP), ordered subsets expectation-maximization (OSEM) and PDEM approaches. Experimental and simulated results demonstrated that the proposed PDEM method yielded better image quality results than the FBP and OSEM approaches. The segmentation of 3D microPET image is one of the most important issues in tracing and recognizing the gene activity in vivo. In order to discover and recover the activity of gene expression, reconstruction techniques with higher precision and fewer artifacts are necessary. To improve the resolution on microPET images, the PDEM method is applied. In addition, the advanced statistical technique based on the mixture model is developed to segment the reconstructed images. In this study, the new proposed method is evaluated with simulation and empirical studies. The performance shows that the proposed method is promising in practice. The segmentation of cDNA microarray spots is essential in analyzing the intensities of microarray images for biological and medical investigations. In this work, the nonparametric method of kernel density estimation is applied to segment two-channel cDNA microarray images. This approach successfully groups pixels into foreground and background. The segmentation performance of this model is tested and evaluated by sixteen microarrays. Specifically, spike genes with various levels of contents are spotted in a microarray to examine and evaluate the accuracy of the segmentation results. Duplicated design is implemented to evaluate the accuracy of the model. Swapped experiments of microarray dyes are also implemented. Results of this study demonstrate that this method can cluster pixels and estimate statistics regarding spots with high accuracy. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#GT008826801 http://hdl.handle.net/11536/67112 |
显示于类别: | Thesis |
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