Pranita Pradhan, T. Meyer, M. Vieth, A. Stallmach, M. Waldner, M. Schmitt, J. Popp, T. Bocklitz
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引用次数: 13
摘要
非线性多模态成像,结合相干抗斯托克斯拉曼散射(CARS),双光子激发荧光(TPEF)和二次谐波产生(SHG),已经显示出其协助诊断不同炎症性肠病(IBDs)的潜力。这种无标签成像技术可以支持结肠镜检查和组织病理学等“金标准”技术,以确保在临床环境中对IBD进行诊断。此外,非线性多模态成像可以测量不同组织区域(如隐窝和粘膜区域)的生物分子变化,作为IBD严重程度的预测指标。为了实现对IBD严重程度的实时评估,需要对隐窝和粘膜区域进行自动分割。在本文中,我们使用深度神经网络对隐窝和粘膜区域进行语义分割。我们使用了SegNet架构(Badrinarayanan et al., 2015),并将其结果与经典的机器学习方法进行了比较。我们训练的SegNet模型获得了0.75的F1总分。在我们的研究中,该模型在隐窝和粘膜区域的分割方面优于经典的机器学习方法。
Semantic Segmentation of Non-linear Multimodal Images for Disease Grading of Inflammatory Bowel Disease: A SegNet-based Application
Non-linear multimodal imaging, the combination of coherent anti-stokes Raman scattering (CARS), two-photon excited fluorescence (TPEF) and second harmonic generation (SHG), has shown its potential to assist the diagnosis of different inflammatory bowel diseases (IBDs). This label-free imaging technique can support the ‘gold-standard’ techniques such as colonoscopy and histopathology to ensure an IBD diagnosis in clinical environment. Moreover, non-linear multimodal imaging can measure biomolecular changes in different tissue regions such as crypt and mucosa region, which serve as a predictive marker for IBD severity. To achieve a real-time assessment of IBD severity, an automatic segmentation of the crypt and mucosa regions is needed. In this paper, we semantically segment the crypt and mucosa region using a deep neural network. We utilized the SegNet architecture (Badrinarayanan et al., 2015) and compared its results with a classical machine learning approach. Our trained SegNet model achieved an overall F1 score of 0.75. This model outperformed the classical machine learning approach for the segmentation of the crypt and mucosa region in our study.