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基于高光谱图像分析利用射频消融对离体牛肝的热损伤。

Hyperspectral image-based analysis of thermal damage for ex-vivo bovine liver utilizing radiofrequency ablation.

机构信息

Biomedical Engineering Department, Military Technical College, Cairo, Egypt.

Biomedical Engineering Department, Military Technical College, Cairo, Egypt.

出版信息

Surg Oncol. 2021 Sep;38:101564. doi: 10.1016/j.suronc.2021.101564. Epub 2021 Apr 7.

Abstract

BACKGROUND & OBJECTIVE: Thermal ablation is the predominant methodology to treat liver tumors for segregating patients who are not permitted to have surgical intervention. However, noticing or predicting the size of the thermal strategies is a challenging endeavor. We aim to analyze the effects of ablation district volume following radiofrequency ablation (RFA) of ex-vivo liver exploiting a custom Hyperspectral Imaging (HSI) system.

MATERIALS AND METHODS

RFA was conducted on the ex-vivo bovine liver at focal and peripheral blood vessel sites and observed by Custom HSI system, which has been designed to assess the exactness and proficiency using visible and near-infrared wavelengths region for tissue thermal effect. The experiment comprised up to ten trials with RFA. The experiment was carried out in two stages to assess the percentage of the thermal effect on the investigated sample superficially and for the side penetration effect. Measuring the diffuse reflectance (Ŗ) of the sample to identify the spectral reflectance shift which could differentiate between normal and ablated tissue exploiting the designed cross-correlation algorithm for monitoring of thermal ablation.

RESULTS

Determination of the diffuse reflection (Ŗ) spectral signature responses from normal, thermal effected, and thermal ablation regions of the investigated liver sample. Where the ideal wavelength range at (600-640 nm) could discriminate between these different regions. Then, exploited the converted RGB image of the HS liver tissue after RFA for more validations which shows that the optimum wavelength for differentiation at (530-560 nm and 600-640 nm). Finally, applying statistical analysis to validate our results presenting that wavelength 600 nm had the highest standard deviation (δ) to differentiate between various thermally affected regions regarding the normal tissue and wavelength 640 nm shows the highest (δ) to differentiate between the ablated and normal regions.

CONCLUSION

The designed and implemented medical imaging system incorporated the hyperspectral camera capabilities with the associate cross-correlation algorithm that could successfully distinguish between the ablated and thermally affected regions to assist the surgery during the tumor therapy.

摘要

背景与目的

热消融是治疗肝脏肿瘤的主要方法,可将不能进行手术干预的患者进行分类。然而,观察或预测热消融策略的范围是一项具有挑战性的工作。我们旨在利用定制的高光谱成像(HSI)系统分析射频消融(RFA)后离体肝脏消融区域的体积。

材料与方法

在离体牛肝的焦点和周围血管部位进行 RFA,并通过定制的 HSI 系统进行观察,该系统旨在利用可见和近红外波长区域评估组织热效应的准确性和熟练程度。该实验最多进行了十次 RFA 试验。该实验分两个阶段进行,以评估研究样本表面的热效应百分比和侧向穿透效应。测量样本的漫反射(Ŗ),以利用设计的互相关算法识别正常和消融组织之间的光谱反射率变化,从而监测热消融。

结果

确定正常、热效应和研究肝样本消融区域的漫反射(Ŗ)光谱特征响应。理想的波长范围在(600-640nm)可区分这些不同区域。然后,利用 RFA 后 HS 肝组织的转换 RGB 图像进行更有效的验证,结果表明最佳的区分波长为(530-560nm 和 600-640nm)。最后,应用统计分析来验证我们的结果,表明 600nm 波长在区分正常组织和各种热影响区域方面具有最高的标准偏差(δ),而 640nm 波长在区分消融和正常区域方面具有最高的(δ)。

结论

设计并实现的医学成像系统结合了高光谱相机的功能和相关的互相关算法,可以成功区分消融和热影响区域,以协助肿瘤治疗期间的手术。

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