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基于高光谱成像的活体人体组织鉴别光谱相似性度量

Spectral Similarity Measures for In Vivo Human Tissue Discrimination Based on Hyperspectral Imaging.

作者信息

Pathak Priya, Chalopin Claire, Zick Laura, Köhler Hannes, Pfahl Annekatrin, Rayes Nada, Gockel Ines, Neumuth Thomas, Melzer Andreas, Jansen-Winkeln Boris, Maktabi Marianne

机构信息

Innovation Center Computer Assisted Surgery (ICCAS), Faculty of Medicine, Leipzig University, 04103 Leipzig, Germany.

Department of Visceral, Transplant, Thoracic, and Vascular Surgery, University Hospital of Leipzig, 04103 Leipzig, Germany.

出版信息

Diagnostics (Basel). 2023 Jan 5;13(2):195. doi: 10.3390/diagnostics13020195.

Abstract

PROBLEM

Similarity measures are widely used as an approved method for spectral discrimination or identification with their applications in different areas of scientific research. Even though a range of works have been presented, only a few showed slightly promising results for human tissue, and these were mostly focused on pathological and non-pathological tissue classification.

METHODS

In this work, several spectral similarity measures on hyperspectral (HS) images of in vivo human tissue were evaluated for tissue discrimination purposes. Moreover, we introduced two new hybrid spectral measures, called SID-JM-TAN(SAM) and SID-JM-TAN(SCA). We analyzed spectral signatures obtained from 13 different human tissue types and two different materials (gauze, instruments), collected from HS images of 100 patients during surgeries.

RESULTS

The quantitative results showed the reliable performance of the different similarity measures and the proposed hybrid measures for tissue discrimination purposes. The latter produced higher discrimination values, up to 6.7 times more than the classical spectral similarity measures. Moreover, an application of the similarity measures was presented to support the annotations of the HS images. We showed that the automatic checking of tissue-annotated thyroid and colon tissues was successful in 73% and 60% of the total spectra, respectively. The hybrid measures showed the highest performance. Furthermore, the automatic labeling of wrongly annotated tissues was similar for all measures, with an accuracy of up to 90%.

CONCLUSION

In future work, the proposed spectral similarity measures will be integrated with tools to support physicians in annotations and tissue labeling of HS images.

摘要

问题

相似性度量作为一种经认可的光谱鉴别或识别方法,在不同的科学研究领域中得到了广泛应用。尽管已经有一系列相关研究成果发表,但只有少数研究在人体组织方面取得了稍显乐观的结果,且这些研究大多集中在病理和非病理组织分类上。

方法

在本研究中,为了实现组织鉴别目的,对体内人体组织的高光谱(HS)图像上的几种光谱相似性度量进行了评估。此外,我们引入了两种新的混合光谱度量,分别称为SID-JM-TAN(SAM)和SID-JM-TAN(SCA)。我们分析了从13种不同人体组织类型以及两种不同材料(纱布、器械)中获取的光谱特征,这些数据来自100名患者手术期间的HS图像。

结果

定量结果表明,不同的相似性度量以及所提出的混合度量在组织鉴别方面具有可靠的性能。后者产生的鉴别值更高,比经典光谱相似性度量高出多达6.7倍。此外,还展示了相似性度量在支持HS图像标注方面的应用。我们发现,对甲状腺和结肠组织标注的自动检查分别在73%和60%的总光谱中取得了成功。混合度量表现出最高的性能。此外,所有度量对错误标注组织的自动标记效果相似,准确率高达90%。

结论

在未来的工作中,所提出的光谱相似性度量将与工具集成,以支持医生对HS图像进行标注和组织标记。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8696/9857871/526a230af30f/diagnostics-13-00195-g001.jpg

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