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首页> 外文期刊>BMC Medical Informatics and Decision Making >Enhanced character-level deep convolutional neural networks for cardiovascular disease prediction
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Enhanced character-level deep convolutional neural networks for cardiovascular disease prediction

机译:增强的性格级深卷积神经网络用于心血管疾病预测

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Electronic medical records contain a variety of valuable medical information for patients. So, when we are able to recognize and extract risk factors for disease from EMRs of patients with cardiovascular disease (CVD), and are able to use them to predict CVD, we have the ability to automatically process clinical texts, resulting in an improved accuracy of supporting doctors for the clinical diagnosis of CVD. In the case where CVD is becoming more worldwide, predictive CVD based on EMRs has been studied by many researchers to address this important aspect of improving diagnostic efficiency. This paper proposes an Enhanced Character-level Deep Convolutional Neural Networks (EnDCNN) model for cardiovascular disease prediction. On the manually annotated Chinese EMRs corpus, our risk factor identification extraction model achieved 0.9073 of F-score, our prediction model achieved 0.9516 of F-score, and the prediction result is better than the most previous methods. The character-level model based on text region embedding can well map risk factors and their labels as a unit into a vector, and downsampling plays a crucial role in improving the training efficiency of deep CNN. What’s more, the shortcut connections with pre-activation used in our model architecture implements dimension-matching free in training.
机译:电子医疗记录为患者含有各种有价值的医疗信息。因此,当我们能够从心血管疾病(CVD)患者的EMR识别和提取疾病的风险因素时,并且能够使用它们来预测CVD,我们有能力自动处理临床文本,从而提高准确性CVD临床诊断的支持医生。在CVD变得越来越全球的情况下,许多研究人员研究了基于EMR的预测CVD,以解决提高诊断效率的这一重要方面。本文提出了一种增强的性格级深卷积神经网络(Endcnn)模型用于心血管疾病预测。在手动注释的中国EMRS语料库中,我们的风险因子识别提取模型实现了0.9073的F分,我们的预测模型实现了0.9516的F分,预测结果优于最先前的方法。基于文本区域的字符级模型嵌入嵌入式风险因子及其标签作为向量中的单位,下采样在提高深度CNN的训练效率方面发挥着至关重要的作用。更重要的是,在我们的模型架构中使用的捷径连接在我们的模型架构中实现了培训中免费的维度匹配。

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