Cano Camilo, Mohammadian Rad Nastaran, Gholampour Amir, van Sambeek Marc, Pluim Josien, Lopata Richard, Wu Min
Department of Biomedical Engineering, Eindhoven University of Technology, De Rondom 70, Eindhoven, the Netherlands.
Department of Precision Medicine, Maastricht University, Minderbroedersberg 4-6, Maastricht, the Netherlands.
Photoacoustics. 2023 Aug 16;33:100544. doi: 10.1016/j.pacs.2023.100544. eCollection 2023 Oct.
Spectral photoacoustic imaging (sPAI) is an emerging modality that allows real-time, non-invasive, and radiation-free assessment of tissue, benefiting from their optical contrast. sPAI is ideal for morphology assessment in arterial plaques, where plaque composition provides relevant information on plaque progression and its vulnerability. However, since sPAI is affected by spectral coloring, general spectroscopy unmixing techniques cannot provide reliable identification of such complicated sample composition. In this study, we employ a convolutional neural network (CNN) for the classification of plaque composition using sPAI. For this study, nine carotid endarterectomy plaques were imaged and were then annotated and validated using multiple histological staining. Our results show that a CNN can effectively differentiate constituent regions within plaques without requiring fluence or spectra correction, with the potential to eventually support vulnerability assessment in plaques.
光谱光声成像(sPAI)是一种新兴的成像方式,它能够利用组织的光学对比度,对组织进行实时、无创且无辐射的评估。sPAI非常适合用于动脉斑块的形态学评估,因为斑块成分能提供有关斑块进展及其易损性的相关信息。然而,由于sPAI会受到光谱着色的影响,一般的光谱解混技术无法可靠地识别如此复杂的样本成分。在本研究中,我们采用卷积神经网络(CNN)利用sPAI对斑块成分进行分类。在这项研究中,对9个颈动脉内膜切除术斑块进行了成像,然后使用多种组织学染色进行注释和验证。我们的结果表明,CNN能够有效区分斑块内的组成区域,无需通量或光谱校正,最终有可能支持对斑块易损性的评估。