...
首页> 外文期刊>Journal of Computational and Applied Mathematics >Sparse Bayesian learning for the Laplace transform inversion in dynamic light scattering
【24h】

Sparse Bayesian learning for the Laplace transform inversion in dynamic light scattering

机译:动态光散射中Laplace变换反演的稀疏贝叶斯学习

获取原文
获取原文并翻译 | 示例

摘要

A new method is described using the sparse Bayesian learning (SBL) algorithm of Tipping to obtain an optimal and reliable solution to the Laplace transform inversion in dynamic light scattering (DLS). The linear inverse problem in DLS has numerical solutions that depend on their domains and dimensions. For a given domain and dimension, a sparse solution in an SBL framework is the most-probable solution and can be used for classifying a system of objects by a few relevant values. Recently, we have shown that the SBL algorithm of Tipping is suitable for studying cataract in ocular lenses by describing the opacity of a lens with a few dominant sizes of crystallin proteins in the lens. However, since the sparseness of SBL solutions cannot reflect a true system, we need to develop a method by using the SBL algorithm to give a true description and, at the same time, a useful classification of the opacity of lenses. We generate a set of sparse solutions of different domains but of the same dimension, and then superimpose them to give a general solution with its dimension treated as a regularization parameter. An optimal solution, which provides a reliable description of a particle system, is determined by the L-curve criterion for selecting the suitable value of the regularization parameter. The performance of our method is evaluated by analyzing simulated data generated from unimodal and bimodal distributions. From the reconstructed distributions, we see that our method gives high resolution comparable to the sophisticated Bryan's maximum-entropy algorithm, which gives better resolution than CONTIN. Our method is then applied to experimental DLS data of the ocular lenses of a fetal calf and a Rhesus monkey to obtain optimal particle size distributions of crystallins and the crystallin aggregates in the lenses. We conclude by discussing possible improvements on our method for analyzing DLS data and for solving any linear inverse problem by an SBL algorithm.
机译:描述了一种新的方法,该方法使用Tipping的稀疏贝叶斯学习(SBL)算法获得动态光散射(DLS)中拉普拉斯变换反演的最佳且可靠的解决方案。 DLS中的线性逆问题具有取决于其域和维的数值解。对于给定的域和维度,SBL框架中的稀疏解决方案是最可能的解决方案,可用于通过一些相关值对对象系统进行分类。最近,我们已经显示出Tipping的SBL算法适用于研究晶状体中的白内障,方法是通过描述晶状体中一些晶状体蛋白占主导地位的晶状体的不透明度。但是,由于SBL解决方案的稀疏性不能反映出真实的系统,因此我们需要开发一种方法,使用SBL算法给出真实的描述,并同时对晶状体的不透明度进行有用的分类。我们生成了一组不同域但维数相同的稀疏解,然后将它们叠加起来以给出一个通用解,其维数被视为正则化参数。通过选择适当参数的正则化参数的L曲线标准,可以确定最佳解决方案,从而提供对粒子系统的可靠描述。通过分析从单峰和双峰分布生成的模拟数据来评估我们方法的性能。从重构的分布中,我们看到我们的方法可提供与复杂的Bryan最大熵算法相当的高分辨率,该算法比CONTIN具有更好的分辨率。然后将我们的方法应用于胎牛和恒河猴眼晶状体的实验DLS数据,以获得晶状体蛋白和晶状体聚集体在晶状体中的最佳粒径分布。通过讨论对我们的DLS数据分析方法和通过SBL算法解决任何线性逆问题的方法的可能改进,我们得出结论。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号