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Deformable Registration of Histological Cancer Margins to Gross Hyperspectral Images using Demons

机译:组织恶性肿瘤组织边缘的可变形配准使用恶魔的总高光谱图像

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Hyperspectral imaging (HSI), a non-contact optical imaging technique, has been recently used along with machine learning technique to provide diagnostic information about ex-vivo surgical specimens for optical biopsy. The computer-aided diagnostic approach requires accurate ground truths for both training and validation. This study details a processing pipeline for registering the cancer-normal margin from a digitized histological image tp the gross-level HSI of a tissue specimen. Our work incorporates an initial affine and control-point, registration followed by a deformable Demons-based registration of the moving mask obtained from the histological image to the fixed mask made from the HS image. To assess registration quality, Dice similarity coefficient, (DSC) measures the image overlap, visual inspection is used to evaluate the margin, and average target registration error (TRE) of needle-bored holes measures the registration error between the histologic and HSI images. Excised tissue samples from seventeen patients, 11 head and neck squamous cell carcinoma (HNSCCa) and 6 thyroid carcinoma, were registered according to the proposed method. Three registered specimens are illustrated in this paper, which demonstrate the efficacy of the registration workflow. Further work is required to apply the technique to more patient data and investigate the ability of this procedure to produce suitable gold standards for machine learning validation.
机译:高光谱成像(HSI)是一种非接触式光学成像技术,近来已与机器学习技术一起使用,以提供有关用于光学活检的离体外科手术标本的诊断信息。计算机辅助的诊断方法需要进行培训和验证的准确的事实真相。这项研究详细介绍了用于从数字化组织学图像到组织标本的总水平HSI记录癌症正常边缘的处理管道。我们的工作包括初始仿射和控制点,配准,然后是从组织学图像获取的移动蒙版到由HS图像生成的固定蒙版的可变形基于恶魔的配准。为了评估套准质量,Dice相似系数(DSC)测量图像重叠,目测用于评估页边距,针孔的平均目标套准误差(TRE)测量组织学图像与HSI图像之间的套准误差。根据所提出的方法,对来自17例患者的切除的组织样本(11例头颈部鳞状细胞癌(HNSCCa)和6例甲状腺癌)进行了登记。本文说明了三个已注册的标本,它们证明了注册工作流程的有效性。需要进一步的工作以将该技术应用于更多的患者数据,并研究该程序为机器学习验证产生合适的金标准的能力。

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