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Automatic Tissue Differentiation Based on Confocal Endomicroscopic Images for Intraoperative Guidance in Neurosurgery

机译:基于共聚焦内镜图像的组织自动分化在神经外科手术中的指导

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摘要

Diagnosis of tumor and definition of tumor borders intraoperatively using fast histopathology is often not sufficiently informative primarily due to tissue architecture alteration during sample preparation step. Confocal laser microscopy (CLE) provides microscopic information of tissue in real-time on cellular and subcellular levels, where tissue characterization is possible. One major challenge is to categorize these images reliably during the surgery as quickly as possible. To address this, we propose an automated tissue differentiation algorithm based on the machine learning concept. During a training phase, a large number of image frames with known tissue types are analyzed and the most discriminant image-based signatures for various tissue types are identified. During the procedure, the algorithm uses the learnt image features to assign a proper tissue type to the acquired image frame. We have verified this method on the example of two types of brain tumors: glioblastoma and meningioma. The algorithm was trained using 117 image sequences containing over 27 thousand images captured from more than 20 patients. We achieved an average cross validation accuracy of better than 83%. We believe this algorithm could be a useful component to an intraoperative pathology system for guiding the resection procedure based on cellular level information.
机译:术中使用快速组织病理学诊断肿瘤和确定肿瘤边界通常不足以提供足够的信息,这主要是由于样品制备步骤中组织结构的改变。共聚焦激光显微镜(CLE)在细胞和亚细胞水平上实时提供组织的微观信息,在这里可以进行组织表征。一个主要的挑战是在手术过程中尽快对这些图像进行可靠的分类。为了解决这个问题,我们提出了一种基于机器学习概念的自动组织分化算法。在训练阶段,将分析大量具有已知组织类型的图像帧,并识别出针对各种组织类型的最有区别的基于图像的签名。在该过程中,算法使用学习到的图像特征为获取的图像帧分配适当的组织类型。我们已经在两种类型的脑肿瘤:胶质母细胞瘤和脑膜瘤的例子中验证了这种方法。使用117个图像序列对算法进行了训练,其中包含从20多个患者中捕获的27,000多个图像。我们的平均交叉验证准确性超过83%。我们认为该算法可能是术中病理系统的有用组成部分,用于基于细胞水平信息指导切除过程。

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