商业和低成本高光谱成像系统评估热组织对牛肝脏样本影响的前瞻性研究

Q3 Chemistry Journal of Spectral Imaging Pub Date : 2021-10-04 DOI:10.1255/jsi.2021.a5
M. Aref, A. Hussein, A. Youssef, Ibrahim H. Aboughaleb, Amr A. Sharawi, P. Saccomandi, Y. El-Sharkawy
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引用次数: 1

摘要

热消融模式,例如射频消融(RFA)和微波消融,旨在通过提高组织温度来促进受控的肿瘤切除。然而,在热去除过程中监测所产生的组织损伤的大小是一项具有挑战性的任务。本研究的目的是评估用商业和低成本系统在离体肝脏样本上观察到的RFA,以区分正常区域和消融区域以及热影响区域。RFA试验在五种不同的离体正常牛样本上进行,最初由定制的高光谱(HS)相机进行监测,以使用光谱范围为348–950 nm的多色光源(卤钨灯)测量漫反射率(Rd)。接下来,用单色LED(415565和660nm)代替光源,并使用商业电荷耦合器件(CCD)相机代替HS相机。该系统算法包括图像增强(归一化和移动平均滤波器)和具有K-means聚类的图像分割,结合光谱和空间信息来评估对多色光和单色LED的可变响应,以突出热影响/正常组织区域的Rd特性的差异。除了计算生成的六组之间的标准差(δ)外,测量的各个区域的光谱特征还指导我们选择三个最佳波长(420540和660nm)来区分这些不同的区域。接下来,我们选择了六个光谱图像来应用图像处理(在450、500、550、600、650和700 nm处)。我们注意到,最佳图像是在550600650和700nm处叠加的光谱图像,它们能够区分不同的区域。后来,我们用CCD相机和商用单色LED光源在415565和660nm处测量了Rd。与HS相机的结果相比,该系统比所研究的离体肝脏样品的侧面穿透RFA更能识别表面RFA的消融和热影响区域。然而,与HS系统相比,我们成功地开发了一种低成本的系统,该系统提供了令人满意的信息来突出消融和热影响区域,以改善手术肿瘤消融的结果,图像捕获和处理时间要短得多。
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Prospective study for commercial and low-cost hyperspectral imaging systems to evaluate thermal tissue effect on bovine liver samples
Thermal ablation modalities, for example radiofrequency ablation (RFA) and microwave ablation, are intended to prompt controlled tumour removal by raising tissue temperature. However, monitoring the size of the resulting tissue damage during the thermal removal procedures is a challenging task. The objective of this study was to evaluate the observation of RFA on an ex vivo liver sample with both a commercial and a low-cost system to distinguish between the normal and the ablated regions as well as the thermally affected regions. RFA trials were conducted on five different ex vivo normal bovine samples and monitored initially by a custom hyperspectral (HS) camera to measure the diffuse reflectance (Rd) utilising a polychromatic light source (tungsten halogen lamp) within the spectral range 348–950 nm. Next, the light source was replaced with monochromatic LEDs (415, 565 and 660 nm) and a commercial charge-coupled device (CCD) camera was used instead of the HS camera. The system algorithm comprises image enhancement (normalisation and moving average filter) and image segmentation with K-means clustering, combining spectral and spatial information to assess the variable responses to polychromatic light and monochromatic LEDs to highlight the differences in the Rd properties of thermally affected/normal tissue regions. The measured spectral signatures of the various regions, besides the calculation of the standard deviations (δ) between the generated six groups, guided us to select three optimal wavelengths (420, 540 and 660 nm) to discriminate between these various regions. Next, we selected six spectral images to apply the image processing to (at 450, 500, 550, 600, 650 and 700 nm). We noticed that the optimum image is the superimposed spectral images at 550, 600, 650 and 700 nm, which are capable of discriminating between the various regions. Later, we measured Rd with the CCD camera and commercially available monochromatic LED light sources at 415, 565 and 660 nm. Compared to the HS camera results, this system was more capable of identifying the ablated and the thermally affected regions of surface RFA than the side-penetration RFA of the investigated ex vivo liver samples. However, we succeeded in developing a low-cost system that provides satisfactory information to highlight the ablated and thermally affected region to improve the outcome of surgical tumour ablation with much shorter time for image capture and processing compared to the HS system.
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来源期刊
Journal of Spectral Imaging
Journal of Spectral Imaging Chemistry-Analytical Chemistry
CiteScore
3.90
自引率
0.00%
发文量
11
审稿时长
22 weeks
期刊介绍: JSI—Journal of Spectral Imaging is the first journal to bring together current research from the diverse research areas of spectral, hyperspectral and chemical imaging as well as related areas such as remote sensing, chemometrics, data mining and data handling for spectral image data. We believe all those working in Spectral Imaging can benefit from the knowledge of others even in widely different fields. We welcome original research papers, letters, review articles, tutorial papers, short communications and technical notes.
期刊最新文献
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