论文标题

通过增强的基于多级PCA的控制空间减少电阻抗层析成像成像的多尺度优化

Multiscale Optimization via Enhanced Multilevel PCA-based Control Space Reduction for Electrical Impedance Tomography Imaging

论文作者

Chun, Maria M. F. M., Edwards, Briana L., Bukshtynov, Vladislav

论文摘要

开发和验证了适用于生物医学应用中各种模型的二进制物理特性的有效计算方法。所提出的方法包括基于主组件分析,精细和粗尺度之间的最佳切换以及其有效的重新参数化的基于多级控制空间的基于梯度的多尺度优化。缩小的尺寸控件在两个尺度上互换使用以累积优化进度并减轻副作用。通过在精细和粗尺度上获得的解决方案之间的正确通信来实现计算效率和获得的结果的卓越质量。基于伴随的梯度提供的控制空间的尺寸减小,有助于将该算法应用于高复杂性模型,以及生物医学科学和外部的广泛问题。通过电阻抗断层扫描(EIT)在基于真实乳腺癌图像的合成模型和模型中应用的2D反相反问题测试了完整计算框架的性能。结果表明,新方法的出色性能及其最大程度地减少假阳性和假阴性筛查的可能性的潜力,并提高了医学实践中基于EIT程序的整体质量。

An efficient computational approach for imaging binary-type physical properties suitable for various models in biomedical applications is developed and validated. The proposed methodology includes gradient-based multiscale optimization with multilevel control space reduction based on principal component analysis, optimal switching between the fine and coarse scales, and their effective re-parameterization. The reduced dimensional controls are used interchangeably at both scales to accumulate the optimization progress and mitigate side effects. Computational efficiency and superior quality of obtained results are achieved through proper communication between solutions obtained at the fine and coarse scales. Reduced size of control spaces supplied with adjoint-based gradients facilitates the application of this algorithm to models of high complexity and also to a broad range of problems in biomedical sciences and outside. The performance of the complete computational framework is tested with 2D inverse problems of cancer detection by electrical impedance tomography (EIT) in applications to synthetic models and models based on real breast cancer images. The results demonstrate the superior performance of the new method and its high potential for minimizing possibilities for false positive and false negative screening and improving the overall quality of the EIT-based procedures in medical practice.

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