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利用手术标本评估超过 1000nm 近红外高光谱成像对胃癌程度的识别。

Evaluating the identification of the extent of gastric cancer by over-1000 nm near-infrared hyperspectral imaging using surgical specimens.

机构信息

National Cancer Center Hospital East, Department of Gastroenterology and Endoscopy, Kashiwa, Japan.

Yokohama City University Graduate School of Medicine, Department of Gastroenterology, Yokohama, Japan.

出版信息

J Biomed Opt. 2023 Aug;28(8):086001. doi: 10.1117/1.JBO.28.8.086001. Epub 2023 Aug 22.

Abstract

SIGNIFICANCE

Determining the extent of gastric cancer (GC) is necessary for evaluating the gastrectomy margin for GC. Additionally, determining the extent of the GC that is not exposed to the mucosal surface remains difficult. However, near-infrared (NIR) can penetrate mucosal tissues highly efficiently.

AIM

We investigated the ability of near-infrared hyperspectral imaging (NIR-HSI) to identify GC areas, including exposed and unexposed using surgical specimens, and explored the identifiable characteristics of the GC.

APPROACH

Our study examined 10 patients with diagnosed GC who underwent surgery between 2020 and 2021. Specimen images were captured using NIR-HSI. For the specimens, the exposed area was defined as an area wherein the cancer was exposed on the surface, the unexposed area as an area wherein the cancer was present although the surface was covered by normal tissue, and the normal area as an area wherein the cancer was absent. We estimated the GC (including the exposed and unexposed areas) and normal areas using a support vector machine, which is a machine-learning method for classification. The prediction accuracy of the GC region in every area and normal region was evaluated. Additionally, the tumor thicknesses of the GC were pathologically measured, and their differences in identifiable and unidentifiable areas were compared using NIR-HSI.

RESULTS

The average prediction accuracy of the GC regions combined with both areas was 77.2%; with exposed and unexposed areas was 79.7% and 68.5%, respectively; and with normal regions was 79.7%. Additionally, the areas identified as cancerous had a tumor thickness of .

CONCLUSIONS

NIR-HSI identified the GC regions with high rates. As a feature, the exposed and unexposed areas with tumor thicknesses of were identified using NIR-HSI.

摘要

意义

确定胃癌(GC)的范围对于评估 GC 的胃切除术边缘是必要的。此外,确定未暴露于黏膜表面的 GC 范围仍然很困难。然而,近红外(NIR)可以高效穿透黏膜组织。

目的

我们研究了近红外高光谱成像(NIR-HSI)识别 GC 区域的能力,包括使用手术标本识别暴露和未暴露区域,并探讨了 GC 的可识别特征。

方法

我们的研究检查了 2020 年至 2021 年间接受手术的 10 名诊断为 GC 的患者。使用 NIR-HSI 捕获标本图像。对于标本,暴露区域定义为癌症暴露于表面的区域,未暴露区域定义为癌症存在但表面被正常组织覆盖的区域,正常区域定义为癌症不存在的区域。我们使用支持向量机(一种用于分类的机器学习方法)估计 GC(包括暴露和未暴露区域)和正常区域。评估了每个区域和正常区域中 GC 区域的预测准确性。此外,对 GC 的肿瘤厚度进行了病理测量,并使用 NIR-HSI 比较了可识别和不可识别区域的差异。

结果

GC 区域(包括暴露和未暴露区域)的平均预测准确率为 77.2%;暴露和未暴露区域的准确率分别为 79.7%和 68.5%;正常区域的准确率为 79.7%。此外,被识别为癌症的区域的肿瘤厚度为。

结论

NIR-HSI 以高比率识别 GC 区域。作为一个特征,使用 NIR-HSI 可以识别厚度为的暴露和未暴露区域。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4dde/10442660/7d2ea9e95476/JBO-028-086001-g001.jpg

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