Department of Biomedical Engineering, Ankara University, 06830, Ankara, Turkey.
Department of Physics, Bogazici University, 34342, Istanbul, Turkey.
Comput Biol Med. 2019 Jun;109:333-341. doi: 10.1016/j.compbiomed.2019.04.035. Epub 2019 Apr 30.
Photoacoustic microscopy (PAM) is classified as a hybrid imaging technique based on the photoacoustic effect and has been frequently studied in recent years. Photoacoustic (PA) signals are inherently recorded in a noisy environment and are also exposed to noise by system components. Therefore, it is essential to reduce the noise in PA signals to reconstruct images with less error. In this study, an image reconstruction algorithm for PAM system was implemented and different filtering approaches for denoising were compared. Studies were carried out in three steps: simulation, experimental phantom and blood cell studies. FIR low-pass and band-pass filters and Discrete Wavelet Transform (DWT) based filters (mother wavelets: "bior3.5″, "bior3.7″, "sym7″) with four different thresholding techniques were examined. For the evaluation purposes, Root Mean Square Error (RMSE), Signal to Noise Ratio (SNR) and Contrast to Noise Ratio (CNR) metrics were calculated. In the simulation studies, the most effective methods were obtained as: sym7/heursure/hard thresh. combination (low and medium level noise) and bior3.7/sqtwolog/soft thresh. combination (high-level noise). In experimental phantom studies, noise was classified into five levels. Different filtering approaches perform better depending on the SNR of PA images. For the blood cell study, based on the standard deviation in the background, sym7/sqtwolog/soft thresh. combination provided the best improvement and this result supported the experimental phantom results.
光声显微镜(PAM)是一种基于光声效应的混合成像技术,近年来得到了广泛研究。光声(PA)信号本质上是在噪声环境中记录的,并且系统组件也会受到噪声的影响。因此,减少 PA 信号中的噪声对于重建误差较小的图像至关重要。本研究实现了一种 PAM 系统的图像重建算法,并比较了不同的去噪滤波方法。研究分三个步骤进行:模拟、实验性体模和血细胞研究。研究了四种不同阈值技术的 FIR 低通和带通滤波器以及基于离散小波变换(DWT)的滤波器(母小波:"bior3.5"、"bior3.7"、"sym7")。为了评估目的,计算了均方根误差(RMSE)、信噪比(SNR)和对比噪声比(CNR)指标。在模拟研究中,获得了最有效的方法是:sym7/heursure/hard thresh. 组合(中低水平噪声)和 bior3.7/sqtwolog/soft thresh. 组合(高水平噪声)。在实验性体模研究中,噪声分为五个等级。不同的滤波方法根据 PA 图像的 SNR 表现出不同的性能。对于血细胞研究,基于背景的标准差,sym7/sqtwolog/soft thresh. 组合提供了最佳的改进,这一结果支持了实验性体模的结果。