利用彩色近红外传感器对荧光癌症成像进行去马赛克处理的卷积神经网络进展。

IF 3 3区 医学 Q2 BIOCHEMICAL RESEARCH METHODS Journal of Biomedical Optics Pub Date : 2024-07-01 Epub Date: 2024-07-23 DOI:10.1117/1.JBO.29.7.076005
Yifei Jin, Borislav Kondov, Goran Kondov, Sunil Singhal, Shuming Nie, Viktor Gruev
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引用次数: 0

摘要

意义重大:采用垂直堆叠光电二极管和像素化光谱滤光片的单芯片成像设备正在推进癌症手术的多染料成像方法,但这种创新会影响空间分辨率。为了缓解这一缺陷,我们开发了一种深度卷积神经网络(CNN),旨在对彩色和近红外(NIR)通道进行去马赛克处理,其性能在临床前和临床数据集上都得到了验证。目的:我们介绍了一种优化的深度 CNN,旨在对使用六色成像传感器获得的彩色和近红外图像进行去马赛克处理:方法:在彩色图像数据集上对残差 CNN 进行微调和训练,随后在一系列双通道彩色和近红外图像上对其进行评估,以证明其性能优于传统的双线性插值法:我们用于彩色和近红外图像去马赛克的优化 CNN 在彩色图像和近红外图像中的均方误差分别减少了 37% 和 40%,在临床前数据中,两种成像模式的结构相似性指数提高了 37%。在临床数据集中,该网络将彩色图像的均方误差提高了 35%,将近红外图像的均方误差提高了 42%,同时将两种成像模式的结构相似性指数提高了 39%:通过使用专为六色图像传感器定制的优化 CNN,我们展示了彩色和近红外模式下图像分辨率的提升。随着显卡计算能力的不断进步,我们的方法显著提高了分辨率,可在手术环境中实时执行。
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Convolutional neural network advances in demosaicing for fluorescent cancer imaging with color-near-infrared sensors.

Significance: Single-chip imaging devices featuring vertically stacked photodiodes and pixelated spectral filters are advancing multi-dye imaging methods for cancer surgeries, though this innovation comes with a compromise in spatial resolution. To mitigate this drawback, we developed a deep convolutional neural network (CNN) aimed at demosaicing the color and near-infrared (NIR) channels, with its performance validated on both pre-clinical and clinical datasets.

Aim: We introduce an optimized deep CNN designed for demosaicing both color and NIR images obtained using a hexachromatic imaging sensor.

Approach: A residual CNN was fine-tuned and trained on a dataset of color images and subsequently assessed on a series of dual-channel, color, and NIR images to demonstrate its enhanced performance compared with traditional bilinear interpolation.

Results: Our optimized CNN for demosaicing color and NIR images achieves a reduction in the mean square error by 37% for color and 40% for NIR, respectively, and enhances the structural dissimilarity index by 37% across both imaging modalities in pre-clinical data. In clinical datasets, the network improves the mean square error by 35% in color images and 42% in NIR images while enhancing the structural dissimilarity index by 39% in both imaging modalities.

Conclusions: We showcase enhancements in image resolution for both color and NIR modalities through the use of an optimized CNN tailored for a hexachromatic image sensor. With the ongoing advancements in graphics card computational power, our approach delivers significant improvements in resolution that are feasible for real-time execution in surgical environments.

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来源期刊
CiteScore
6.40
自引率
5.70%
发文量
263
审稿时长
2 months
期刊介绍: The Journal of Biomedical Optics publishes peer-reviewed papers on the use of modern optical technology for improved health care and biomedical research.
期刊最新文献
Hyperspectral imaging in neurosurgery: a review of systems, computational methods, and clinical applications. Exploring near-infrared autofluorescence properties in parathyroid tissue: an analysis of fresh and paraffin-embedded thyroidectomy specimens. Impact of signal-to-noise ratio and contrast definition on the sensitivity assessment and benchmarking of fluorescence molecular imaging systems. Comparing spatial distributions of ALA-PpIX and indocyanine green in a whole pig brain glioma model using 3D fluorescence cryotomography. Detection properties of indium-111 and IRDye800CW for intraoperative molecular imaging use across tissue phantom models.
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