...
首页> 外文期刊>Journal of Pathology Informatics >Automated discrimination of lower and higher grade gliomas based on histopathological image analysis
【24h】

Automated discrimination of lower and higher grade gliomas based on histopathological image analysis

机译:基于组织病理学图像分析的低度和高度神经胶质瘤自动识别

获取原文
           

摘要

Introduction:Histopathological images have rich structural information, are multi-channel in nature and contain meaningful pathological information at various scales. Sophisticated image analysis tools that can automatically extract discriminative information from the histopathology image slides for diagnosis remain an area of significant research activity. In this work, we focus on automated brain cancer grading, specifically glioma grading. Grading of a glioma is a highly important problem in pathology and is largely done manually by medical experts based on an examination of pathology slides (images). To complement the efforts of clinicians engaged in brain cancer diagnosis, we develop novel image processing algorithms and systems to automatically grade glioma tumor into two categories: Low-grade glioma (LGG) and high-grade glioma (HGG) which represent a more advanced stage of the disease.Results:We propose novel image processing algorithms based on spatial domain analysis for glioma tumor grading that will complement the clinical interpretation of the tissue. The image processing techniques are developed in close collaboration with medical experts to mimic the visual cues that a clinician looks for in judging of the grade of the disease. Specifically, two algorithmic techniques are developed: (1) A cell segmentation and cell-count profile creation for identification of Pseudopalisading Necrosis, and (2) a customized operation of spatial and morphological filters to accurately identify microvascular proliferation (MVP). In both techniques, a hierarchical decision is made via a decision tree mechanism. If either Pseudopalisading Necrosis or MVP is found present in any part of the histopathology slide, the whole slide is identified as HGG, which is consistent with World Health Organization guidelines. Experimental results on the Cancer Genome Atlas database are presented in the form of: (1) Successful detection rates of pseudopalisading necrosis and MVP regions, (2) overall classification accuracy into LGG and HGG categories, and (3) receiver operating characteristic curves which can facilitate a desirable trade-off between HGG detection and false-alarm rates.Conclusion:The proposed method demonstrates fairly high accuracy and compares favorably against best-known alternatives such as the state-of-the-art WND-CHARM feature set provided by NIH combined with powerful support vector machine classifier. Our results reveal that the proposed method can be beneficial to a clinician in effectively separating histopathology slides into LGG and HGG categories, particularly where the analysis of a large number of slides is needed. Our work also reveals that MVP regions are much harder to detect than Pseudopalisading Necrosis and increasing accuracy of automated image processing for MVP detection emerges as a significant future research direction.
机译:简介:组织病理学图像具有丰富的结构信息,本质上是多通道的,并且包含各种规模的有意义的病理学信息。能够自动从组织病理学图像幻灯片中提取判别信息以进行诊断的复杂图像分析工具仍然是重要的研究领域。在这项工作中,我们专注于自动脑癌分级,尤其是神经胶质瘤分级。神经胶质瘤的分级是病理学中非常重要的问题,并且在很大程度上由医学专家基于对病理切片(图像)的检查来手动完成。为了补充从事脑癌诊断的临床医生的工作,我们开发了新颖的图像处理算法和系统,将神经胶质瘤肿瘤自动分为两类:低级神经胶质瘤(LGG)和高级神经胶质瘤(HGG),它们代表了更高级的阶段结果:我们提出了一种基于空间域分析的新型图像处理算法,用于神经胶质瘤的肿瘤分级,将对组织的临床解释起到补充作用。与医学专家密切合作开发了图像处理技术,以模仿临床医生在判断疾病等级时寻找的视觉线索。具体来说,开发了两种算法技术:(1)用于识别假性苍白性坏死的细胞分割和细胞计数概况创建,以及(2)空间和形态过滤器的定制操作,以准确识别微血管增生(MVP)。在这两种技术中,都是通过决策树机制做出分层决策的。如果在组织病理学幻灯片的任何部分中发现假性苍白坏死或MVP,则将整个幻灯片标识为HGG,与世界卫生组织的指南一致。在Cancer Genome Atlas数据库上的实验结果以以下形式呈现:(1)伪苍白坏死和MVP区域的成功检出率;(2)LGG和HGG类别的总体分类准确性;(3)接收器工作特性曲线,可以结论:所提出的方法显示出相当高的准确性,并且与最著名的替代方法(如NIH提供的最新WND-CHARM功能集)相比具有优势结合功能强大的支持向量机分类器。我们的结果表明,所提出的方法对临床医生有效地将组织病理学玻片分为LGG和HGG类别可能是有益的,尤其是在需要分析大量玻片的情况下。我们的工作还表明,与假性苍白坏死相比,MVP区域更难检测,并且用于MVP检测的自动图像处理的准确性不断提高,这是未来的重要研究方向。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号