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首页> 外文期刊>Journal of visual communication & image representation >Convolutional neural networks: Ensemble modeling, fine-tuning and unsupervised semantic localization for neurosurgical CLE images
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Convolutional neural networks: Ensemble modeling, fine-tuning and unsupervised semantic localization for neurosurgical CLE images

机译:卷积神经网络:神经外科CLE图像的集合建模,微调和无监督语义定位

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摘要

Confocal laser endomicroscopy (CLE) is an advanced optical fluorescence technology undergoing assessment for applications in brain tumor surgery. Many of the CLE images can be distorted and interpreted as nondiagnostic. However, just one neat CLE image might suffice for intraoperative diagnosis of the tumor. While manual examination of thousands of nondiagnostic images during surgery would be impractical, this creates an opportunity for a model to select diagnostic images for the pathologists or surgeons review. In this study, we sought to develop a deep learning model to automatically detect the diagnostic images. We explored the effect of training regimes and ensemble modeling and localized histological features from diagnostic CLE images. The developed model could achieve promising agreement with the ground truth. With the speed and precision of the proposed method, it has potential to be integrated into the operative workflow in the brain tumor surgery.
机译:共聚焦激光内窥镜检查(CLE)是一项先进的光学荧光技术,正在接受评估,以用于脑肿瘤手术。许多CLE图像可能会失真并被解释为无法诊断。但是,仅一张清晰的CLE图像就足以在术中诊断肿瘤。尽管在手术过程中手动检查数千个非诊断性图像是不切实际的,但是这为模型提供了一个机会来选择诊断性图像供病理学家或外科医生检查。在这项研究中,我们试图开发一种深度学习模型来自动检测诊断图像。我们探索了诊断性CLE图像的训练方式和整体建模以及局部组织学特征的影响。所开发的模型可以与地面真理达成有希望的协议。凭借所提方法的速度和精度,它有可能被整合到脑肿瘤手术的手术流程中。

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