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Automated Grading of Gliomas using Deep Learning in Digital Pathology Images: A modular approach with ensemble of convolutional neural networks

机译:在数字病理图像中使用深度学习对神经胶质瘤进行自动分级:卷积神经网络集成的模块化方法

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摘要

Brain glioma is the most common primary malignant brain tumors in adults with different pathologic subtypes: Lower Grade Glioma (LGG) Grade II, Lower Grade Glioma (LGG) Grade III, and Glioblastoma Multiforme (GBM) Grade IV. The survival and treatment options are highly dependent of this glioma grade. We propose a deep learning-based, modular classification pipeline for automated grading of gliomas using digital pathology images. Whole tissue digitized images of pathology slides obtained from The Cancer Genome Atlas (TCGA) were used to train our deep learning modules. Our modular pipeline provides diagnostic quality statistics, such as precision, sensitivity and specificity, of the individual deep learning modules, and (1) facilitates training given the limited data in this domain, (2) enables exploration of different deep learning structures for each module, (3) leads to developing less complex modules that are simpler to analyze, and (4) provides flexibility, permitting use of single modules within the framework or use of other modeling or machine learning applications, such as probabilistic graphical models or support vector machines. Our modular approach helps us meet the requirements of minimum accuracy levels that are demanded by the context of different decision points within a multi-class classification scheme. Convolutional Neural Networks are trained for each module for each sub-task with more than 90% classification accuracies on validation data set, and achieved classification accuracy of 96% for the task of GBM vs LGG classification, 71% for further identifying the grade of LGG into Grade II or Grade III on independent data set coming from new patients from the multi-institutional repository.
机译:脑胶质瘤是具有不同病理亚型的成年人中最常见的原发性恶性脑肿瘤:低级胶质瘤(LGG)II级,低级胶质瘤(LGG)III级和多形胶质母细胞瘤(GBM)IV级。生存和治疗选择高度依赖于该神经胶质瘤等级。我们提出了一种基于深度学习的模块化分类管道,用于使用数字病理图像对神经胶质瘤进行自动分级。从癌症基因组图谱(TCGA)获得的病理切片的全组织数字化图像用于训练我们的深度学习模块。我们的模块化流水线提供各个深度学习模块的诊断质量统计信息,例如精度,敏感性和特异性,并且(1)在该领域有限的数据下促进培训,(2)能够探索每个模块的不同深度学习结构,(3)导致开发较简单的模块,使其更易于分析,并且(4)提供灵活性,允许在框架内使用单个模块,或使用其他建模或机器学习应用程序,例如概率图形模型或支持向量机。我们的模块化方法可帮助我们满足多类分类方案中不同决策点的上下文所要求的最低准确性级​​别的要求。卷积神经网络针对每个子任务的每个模块进行了训练,在验证数据集上具有超过90%的分类准确度,GBM vs LGG分类任务的分类准确度达到96%,进一步鉴定LGG等级的准确率达到71%来自多机构存储库中的新患者的独立数据集分为II级或III级。

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