Arabul M U, Rutten M C M, Bruneval P, van Sambeek M R H M, van de Vosse F N, Lopata R G P
Biomedical Engineering, Eindhoven University of Technology, 5612 AJ Eindhoven, The Netherlands.
Service d'Anatomie Pathologique, Hôpital Européen Georges Pompidou, 20 rue Leblanc, 75015 Paris, France.
Photoacoustics. 2019 Jul 25;15:100140. doi: 10.1016/j.pacs.2019.100140. eCollection 2019 Sep.
Multi-spectral photoacoustic imaging (MSPAI) is promising for morphology assessment of carotid plaques; however, obtaining unique spectral characteristics of chromophores is cumbersome. We used MSPAI and non-negative independent component analysis (ICA) to unmix distinct signal sources in human carotid plaques blindly. The feasibility of the method was demonstrated on a plaque phantom with hemorrhage and cholesterol inclusions, and plaque endarterectomy samples . Furthermore, the results were verified with histology using Masson's trichrome staining. Results showed that ICA could separate recent hemorrhages from old hemorrhages. Additionally, the signatures of cholesterol inclusion were also captured for the phantom experiment. Artifacts were successfully removed from signal sources. Histologic examinations showed high resemblance with the unmixed components and confirmed the morphologic distinction between recent and mature hemorrhages. In future pre-clinical studies, unmixing could be used for morphology assessment of intact human plaque samples.
多光谱光声成像(MSPAI)在颈动脉斑块形态学评估方面具有潜力;然而,获取发色团的独特光谱特征较为繁琐。我们使用MSPAI和非负独立成分分析(ICA)盲目地分离人类颈动脉斑块中不同的信号源。该方法在具有出血和胆固醇包涵体的斑块模型以及斑块内膜切除术样本上证明了其可行性。此外,通过使用马松三色染色的组织学方法对结果进行了验证。结果表明,ICA能够将近期出血与陈旧性出血区分开来。此外,在模型实验中还捕捉到了胆固醇包涵体的特征。成功从信号源中去除了伪影。组织学检查显示与分离后的成分高度相似,并证实了近期出血与成熟出血之间的形态学差异。在未来的临床前研究中,分离可用于完整人类斑块样本的形态学评估。