Lin Fangzhou, Gao Shang, Tang Yichuan, Ma Xihan, Murakami Ryo, Zhang Ziming, Obayemi John D, Soboyejo Winston O, Zhang Haichong K
Department of Robotics Engineering, Worcester Polytechnic Institute, 100 Institute Road, Worcester, MA 01609, USA.
Department of Electrical & Computer Engineering, Worcester Polytechnic Institute, 100 Institute Road, Worcester, MA 01609, USA.
Photoacoustics. 2025 May 1;44:100729. doi: 10.1016/j.pacs.2025.100729. eCollection 2025 Aug.
Spectroscopic photoacoustic (sPA) imaging uses multiple wavelengths to differentiate and quantify chromophores based on their unique optical absorption spectra. This technique has been widely applied in areas such as vascular mapping, tumor detection, and therapeutic monitoring. However, PA imaging is highly susceptible to noise, leading to a low signal-to-noise ratio (SNR) and compromised image quality. Furthermore, low SNR in spectral data adversely affects spectral unmixing outcomes, hindering accurate quantitative PA imaging. Traditional denoising techniques like frame averaging, though effective in improving SNR, can be impractical for dynamic imaging scenarios due to reduced frame rates. Advanced methods, including learning-based approaches and analytical algorithms, have demonstrated promise but often require extensive training data and parameter tuning. Moreover, spectral information preservation is unclear, limiting their adaptability for clinical usage. Additionally, training data is not always accessible for learning-based methods. In this work, we propose a Spectroscopic Photoacoustic Denoising (SPADE) framework using hybrid analytical and data-free learning method. This framework integrates a data-free learning-based method with an efficient BM3D-based analytical approach while preserving spectral integrity, providing noise reduction, and ensuring that functional information is maintained. The SPADE framework was validated through simulation, phantom, in vivo, and ex vivo studies. These studies demonstrated that SPADE improved image SNR by over 15 in high noise cases and preserved spectral information (R > 0.8), outperforming conventional methods, especially in low SNR conditions. SPADE presents a promising solution for preserving the accuracy of quantitative PA imaging in clinical applications where noise reduction and spectral preservation are critical.
光谱光声(sPA)成像利用多个波长,根据发色团独特的光吸收光谱对其进行区分和定量。该技术已广泛应用于血管造影、肿瘤检测和治疗监测等领域。然而,光声成像极易受到噪声影响,导致信噪比(SNR)较低,图像质量受损。此外,光谱数据中的低信噪比会对光谱解混结果产生不利影响,阻碍精确的定量光声成像。传统的去噪技术,如帧平均,虽然在提高信噪比方面有效,但由于帧率降低,在动态成像场景中可能不切实际。先进的方法,包括基于学习的方法和解析算法,已显示出前景,但通常需要大量的训练数据和参数调整。此外,光谱信息的保留情况尚不清楚,限制了它们在临床应用中的适应性。另外,基于学习的方法并不总是能够获取训练数据。在这项工作中,我们提出了一种使用混合解析和无数据学习方法的光谱光声去噪(SPADE)框架。该框架将基于无数据学习的方法与基于高效BM3D的解析方法相结合,同时保留光谱完整性,实现降噪,并确保功能信息得以维持。SPADE框架通过模拟、体模、体内和离体研究得到了验证。这些研究表明,在高噪声情况下,SPADE可将图像信噪比提高15以上,并保留光谱信息(R>0.8),优于传统方法,尤其是在低信噪比条件下。在降噪和光谱保留至关重要的临床应用中,SPADE为保持定量光声成像的准确性提供了一个有前景的解决方案。