Tian Wenxu, Yang Dan, Wei Zhulin, Wang Jiao
School of Information Science & Engineering, Northeastern University, Shenyang 110819, P.R.China.
Key Laboratory of Infrared Optoelectric Materials and Micro-Nano Devices, Shenyang 110819, P.R.China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2021 Aug 25;38(4):774-782. doi: 10.7507/1001-5515.202010041.
The inverse problem of diffuse optical tomography (DOT) is ill-posed. Traditional method cannot achieve high imaging accuracy and the calculation process is time-consuming, which restricts the clinical application of DOT. Therefore, a method based on stacked auto-encoder (SAE) was proposed and used for the DOT inverse problem. Firstly, a traditional SAE method is used to solved the inverse problem. Then, the output structure of SAE neural network is improved to a single output SAE, which reduce the burden on the neural network. Finally, the improved SAE method is used to compare with traditional SAE method and traditional levenberg-marquardt (LM) iterative method. The result shows that the average time to solve the inverse problem of the method proposed in this paper is only 1.67% of the LM method. The mean square error (MSE) value is 46.21% lower than the traditional iterative method, 61.53% lower than the traditional SAE method, and the image correlation coefficient(ICC) value is 4.03% higher than the traditional iterative method, 18.7% higher than the traditional SAE method and has good noise immunity under 3% noise conditions. The research results in this article prove that the improved SAE method has higher image quality and noise resistance than the traditional SAE method, and at the same time has a faster calculation speed than the traditional iterative method, which is conducive to the application of neural networks in DOT inverse problem calculation.
扩散光学层析成像(DOT)的逆问题是不适定的。传统方法无法实现高成像精度,且计算过程耗时,这限制了DOT的临床应用。因此,提出了一种基于堆叠自动编码器(SAE)的方法并将其用于DOT逆问题。首先,使用传统的SAE方法解决逆问题。然后,将SAE神经网络的输出结构改进为单输出SAE,这减轻了神经网络的负担。最后,将改进后的SAE方法与传统SAE方法和传统的列文伯格-马夸特(LM)迭代方法进行比较。结果表明,本文提出的方法解决逆问题的平均时间仅为LM方法的1.67%。均方误差(MSE)值比传统迭代方法低46.21%,比传统SAE方法低61.53%,图像相关系数(ICC)值比传统迭代方法高4.03%,比传统SAE方法高18.7%,并且在3%噪声条件下具有良好的抗噪声能力。本文的研究结果证明,改进后的SAE方法比传统SAE方法具有更高的图像质量和抗噪声能力,同时比传统迭代方法具有更快的计算速度,这有利于神经网络在DOT逆问题计算中的应用。