应用降维方法提取临床高光谱图像的生理和诊断特征

V. Lalitha, B. Latha
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引用次数: 0

摘要

应妥善处理高光谱图像(HSI)中最有价值的信息。我们利用两种不同方法中的降维技术,为高光谱图像创建了一个结构,用于收集生理和诊断信息。利用 HSI 方法提取了组织氧饱和度(StO2),作为压力检测的生理特征。我们的研究结果表明,这一独特的特征可能不受环境湿度或温度的影响。与标准 StO2 参考值和压力浓度相比,社会压力评估显示出很大的差异和相当大的实用差异。拟议的系统已在头颈部癌症大鼠的肿瘤图像上进行了评估,使用的光谱波长为 450 到 900 nm。为了提高精确度,对亮度和平均光谱成分进行了归一化处理,开发了傅立叶变换。对结果的分析表明,在困难的情况下,由于快速分类任务的特征可能性,以及在整个野生动物手术切除过程中测量用于癌症检测的 HSI 分析结构的重要意义,意识可能是廉价的。与现有系统相比,我们提出的模型提高了可靠性 89.62% 和准确性 95.26% 等性能指标。
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Applying dimensionality reduction methods to extract physiological and diagnostic features for clinical Hyperspectral Images
The most valuable information of Hyperspectral Image (HSI) should be processed properly. Using dimensionality reduction techniques in two distinct approaches, we created a structure for HSI to collect physiological and diagnostic information. The tissue Oxygen Saturation Level (StO2) was extracted using the HSI approach as a physiological characteristic for stress detection. Our research findings suggest that this unique characteristic may not be affected by humidity or temperature in the environment. Comparing the standard StO2 reference and pressure concentrations, the social stress assessments showed a substantial variance and considerable practical differentiation. The proposed system has already been evaluated on tumor images from rats with head and neck cancers using a spectrum from 450 to 900 nm wavelength. The Fourier transformation was developed to improve precision, and normalize the brightness and mean spectrum components. The analysis of results showed that in a difficult situation where awareness could be inexpensive due to feature possibilities for rapid classification tasks and significant in measuring the structure of HSI analysis for cancer detection throughout the surgical resection of wildlife. Our proposed model improves performance measures such as reliability at 89.62% and accuracy at 95.26% when compared with existing systems.
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