自动兴趣区选择改进肾细胞癌分类。

Qaiser Chaudry, S Hussain Raza, Yachna Sharma, Andrew N Young, May D Wang
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引用次数: 10

摘要

在本文中,我们提出了一个改进的肾细胞癌病理图像数据自动分类系统。分析组织活检的任务通常由专家病理学家手动执行,由于组织形态的可变性,组织标本的制备和图像采集过程,这一任务极具挑战性。由于这项任务的复杂性和患者组织的异质性,这一过程受到观察者之间和观察者内部的变异性的影响。在我们之前提出的基于知识的自动化系统的工作的延续中,我们观察到现实生活中包含坏死区域和腺体的临床活检图像显着降低了分类过程。在病理学家关注感兴趣区域(ROI)的技术基础上,我们提出了一种简单的感兴趣区域选择过程,该过程自动拒绝腺体和坏死区域,从而提高了分类精度。使用我们的技术,我们能够将分类精度从90%提高到95%,在一个明显异构的图像数据集上。
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Improving Renal Cell Carcinoma Classification by Automatic Region of Interest Selection.

In this paper, we present an improved automated system for classification of pathological image data of renal cell carcinoma. The task of analyzing tissue biopsies, generally performed manually by expert pathologists, is extremely challenging due to the variability in the tissue morphology, the preparation of tissue specimen, and the image acquisition process. Due to the complexity of this task and heterogeneity of patient tissue, this process suffers from inter-observer and intra-observer variability. In continuation of our previous work, which proposed a knowledge-based automated system, we observe that real life clinical biopsy images which contain necrotic regions and glands significantly degrade the classification process. Following the pathologist's technique of focusing on selected region of interest (ROI), we propose a simple ROI selection process which automatically rejects the glands and necrotic regions thereby improving the classification accuracy. We were able to improve the classification accuracy from 90% to 95% on a significantly heterogeneous image data set using our technique.

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