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Model-based Hyperparameter Optimization of Convolutional Neural Networks for Information Extraction from Cancer Pathology Reports on HPC

机译:基于模型的卷积神经网络超参数优化,可从HPC癌症病理报告中提取信息

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Finding optimal hyperparameters is necessary to identify the best performing deep learning models but the process is costly. In this paper, we applied model-based optimization, also known as Bayesian optimization, using the CANDLE framework implemented on a High-Performance Computing environment. As a use case we selected information extraction from cancer pathology reports using a multi-task convolutional neural network, and hierarchical convolutional attention network to be optimized. We utilized a synthesized text corpus of 8,000 training cases and 2,000 validation cases with four types of clinical task labels including primary cancer site, laterality, behavior, and histological grade. We demonstrated that hyperparameter optimization using the CANDLE framework is a feasible approach with respect to both scalability and clinical task performance.
机译:找到最佳超参数对于识别性能最佳的深度学习模型是必要的,但是该过程成本很高。在本文中,我们使用在高性能计算环境上实现的CANDLE框架应用了基于模型的优化(也称为贝叶斯优化)。作为一个用例,我们选择了使用多任务卷积神经网络和分层卷积注意网络从癌症病理报告中提取信息,以进行优化。我们利用了8,000个训练案例和2,000个验证案例的综合文本语料库,并提供了四种类型的临床任务标签,包括原发癌部位,偏侧,行为和组织学等级。我们证明了使用CANDLE框架进行超参数优化对于可伸缩性和临床任务性能而言都是可行的方法。

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