Optimal Hyperspectral Band Selection for Tissue Oxygenation Mapping with Generative Adversarial Network.

Minhye Chang, Wonju Lee, Kye Young Jeong, Jun Wan Kim
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Abstract

Tissue oxygenation assessment using hyperspectral imaging is an emerging technique for the diagnosis and pre- and post-treatment monitoring of ischemic patients. However, the high spectral resolution of hyperspectral imaging leads to large data sizes and a long imaging time. In this study, we propose a method that utilizes multi-objective evolutionary algorithms to determine the optimal hyperspectral band combination when developing a deep learning model for predicting tissue oxygenation from hyperspectral images. Our results confirm that the deep learning model effectively predicts tissue oxygenation images for various oxygenation states. Moreover, we demonstrate that a high-performance prediction model can be developed using only a small number of spectral bands, indicating the potential for more efficient non-contact tissue oxygenation mapping with the proposed method.Clinical Relevance- The proposed method allows for the non-contact and efficient acquisition of two-dimensional tissue oxygenation information in various oxygenation states.

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利用生成对抗网络为组织氧合绘图选择最佳高光谱波段
利用高光谱成像进行组织氧合评估是一项新兴技术,可用于缺血患者的诊断和治疗前后的监测。然而,高光谱成像的高光谱分辨率导致数据量大、成像时间长。在本研究中,我们提出了一种方法,利用多目标进化算法来确定最佳高光谱波段组合,从而开发出一种深度学习模型,用于预测高光谱图像中的组织含氧量。我们的研究结果证实,深度学习模型能有效预测各种氧合状态下的组织氧合图像。此外,我们还证明了只需使用少量光谱波段就能开发出高性能的预测模型,这表明利用所提出的方法可以更高效地绘制非接触式组织氧合图谱。临床意义--所提出的方法可以非接触式地高效获取各种氧合状态下的二维组织氧合信息。
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