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基于机器学习的细胞分辨率光学相干断层扫描和拉曼光谱融合技术在皮肤癌细胞鉴别中的应用。

Integration of cellular-resolution optical coherence tomography and Raman spectroscopy for discrimination of skin cancer cells with machine learning.

机构信息

National Taiwan University, Graduate Institute of Photonics and Optoelectronics, Taipei, Taiwan.

National Kaohsiung Normal University, Department of Electrical Engineering, Kaohsiung, Taiwan.

出版信息

J Biomed Opt. 2023 Sep;28(9):096005. doi: 10.1117/1.JBO.28.9.096005. Epub 2023 Sep 14.

Abstract

SIGNIFICANCE

An integrated cellular-resolution optical coherence tomography (OCT) module with near-infrared Raman spectroscopy was developed on the discrimination of various skin cancer cells and normal cells. Micron-level three-dimensional (3D) spatial resolution and the spectroscopic capability on chemical component determination can be obtained simultaneously.

AIM

We experimentally verified the effectiveness of morphology, intensity, and spectroscopy features for discriminating skin cells.

APPROACH

Both spatial and spectroscopic features were employed for the discrimination of five types of skin cells, including keratinocytes (HaCaT), the cell line of squamous cell carcinoma (A431), the cell line of basal cell carcinoma (BCC-1/KMC), primary melanocytes, and the cell line of melanoma (A375). The cell volume, compactness, surface roughness, average intensity, and internal intensity standard deviation were extracted from the 3D OCT images. After removing the fluorescence components from the acquired Raman spectra, the entire spectra (600 to ) were used.

RESULTS

An accuracy of 85% in classifying five types of skin cells was achieved. The cellular-resolution OCT images effectively differentiate cancer and normal cells, whereas Raman spectroscopy can distinguish the cancer cells with nearly 100% accuracy.

CONCLUSIONS

Among the OCT image features, cell surface roughness, internal average intensity, and standard deviation of internal intensity distribution effectively differentiate the cancerous and normal cells. The three features also worked well in sorting the keratinocyte and melanocyte. Using the full Raman spectra, the melanoma and keratinocyte-based cell carcinoma cancer cells can be discriminated effectively.

摘要

意义

在区分各种皮肤癌细胞和正常细胞方面,开发了一种具有近红外拉曼光谱功能的集成细胞分辨率光学相干断层扫描(OCT)模块。可以同时获得微米级的三维(3D)空间分辨率和化学组分确定的光谱能力。

目的

我们通过实验验证了形态、强度和光谱特征在皮肤细胞区分中的有效性。

方法

采用空间和光谱特征来区分五种皮肤细胞,包括角质形成细胞(HaCaT)、鳞状细胞癌(A431)细胞系、基底细胞癌(BCC-1/KMC)细胞系、原代黑素细胞和黑素瘤(A375)细胞系。从 3D OCT 图像中提取细胞体积、紧致度、表面粗糙度、平均强度和内部强度标准偏差。从获得的拉曼光谱中去除荧光成分后,使用整个光谱(600 至 )。

结果

五种皮肤细胞的分类准确率达到 85%。细胞分辨率 OCT 图像可有效区分癌症和正常细胞,而拉曼光谱可近乎 100%准确地区分癌症细胞。

结论

在 OCT 图像特征中,细胞表面粗糙度、内部平均强度和内部强度分布的标准偏差可有效区分癌症和正常细胞。这三个特征在区分角质形成细胞和黑素细胞方面也表现良好。使用完整的拉曼光谱,可以有效地区分黑素瘤和角蛋白细胞癌的癌细胞。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a928/10500347/2abe268f10b1/JBO-028-096005-g001.jpg

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