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An Automatic Segmentation of Gland Nuclei in Gastric Cancer Based on Local and Contextual Information

机译:基于局部和上下文信息的胃癌腺核自动分割

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Analysis of tubular glands plays an important role for gastric cancer diagnosis, grading, and prognosis; however, gland quantification is a highly subjective task, prone to error. Objective identification of glans might help clinicians for analysis and treatment planning. The visual characteristics of such glands suggest that information from nuclei and their context would be useful to characterize them. In this paper we present a new approach for segmentation of gland nuclei based on nuclear local and contextual (neighborhood) information. A Gradient-Boosted-Regression-Trees classifier is trained to distinguish between gland-nuclei and non-gland-nuclei. Validation was carried out using a dataset containing 45702 annotated nuclei from 90 1024 × 1024 fields of view extracted from gastric cancer whole slide images. A Deep Learning model was trained as a baseline. Results showed an accuracy and f-score 5.4% and 23.6% higher, respectively, with the presented framework than with the Deep Learning approach.
机译:肾小管的分析对于胃癌的诊断,分级和预后起着重要的作用。但是,腺体量化是一项高度主观的任务,容易出错。龟头的客观鉴定可能有助于临床医生进行分析和治疗计划。这种腺体的视觉特征表明,来自细胞核及其背景的信息将有助于表征它们。在本文中,我们提出了一种基于核局部和上下文(邻域)信息的腺核分割新方法。训练了梯度增强回归树分类器以区分腺核和非腺核。使用包含从胃癌全玻片图像中提取的90 1024×1024视场中的45702个带注释核的数据集进行验证。深度学习模型被训练为基线。结果显示,与深度学习方法相比,所提出的框架的准确性和f得分分别高5.4%和23.6%。

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