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Automated detection of altered mental status in emergency department clinical notes: a deep learning approach

机译:自动检测急诊科临床笔记中精神状态的变化:一种深度学习方法

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Machine learning has been used extensively in clinical text classification tasks. Deep learning approaches using word embeddings have been recently gaining momentum in biomedical applications. In an effort to automate the identification of altered mental status (AMS) in emergency department provider notes for the purpose of decision support, we compare the performance of classic bag-of-words-based machine learning classifiers and novel deep learning approaches. We used a case-control study design to extract an adequate number of clinical notes with AMS and non-AMS based on ICD codes. The notes were parsed to extract the history of present illness, which was used as the clinical text for the classifiers. The notes were manually labeled by clinicians. As a baseline for comparison, we tested several traditional bag-of-words based classifiers. We then tested several deep learning models using a convolutional neural network architecture with three different types of word embeddings, a pre-trained word2vec model and two models without pre-training but with different word embedding dimensions. We evaluated the models on 1130 labeled notes from the emergency department. The deep learning models had the best overall performance with an area under the ROC curve of 98.5% and an accuracy of 94.5%. Pre-training word embeddings on the unlabeled corpus reduced training iterations and had performance that was statistically no different than the other deep learning models. This supervised deep learning approach performs exceedingly well for the detection of AMS symptoms in clinical text in our environment. Further work is needed for the generalizability of these findings, including evaluation of these models in other types of clinical notes and other environments. The results seem promising for the ultimate use of these types of classifiers in combination with other information derived from the electronic health records as input for clinical decision support.
机译:机器学习已广泛用于临床文本分类任务。使用词嵌入的深度学习方法最近在生物医学应用中获得了发展。为了自动识别急诊科提供者备注中的精神状态改变(AMS),以提供决策支持,我们比较了基于经典词袋的机器学习分类器和新颖的深度学习方法的性能。我们使用了一项病例对照研究设计,以基于ICD代码的AMS和非AMS提取了足够数量的临床笔记。解析注释以提取当前疾病的历史,用作分类器的临床文本。这些注释由临床医生手动标记。作为比较的基准,我们测试了几种基于传统词袋的分类器。然后,我们使用具有三种不同类型词嵌入的卷积神经网络体系结构,预训练的word2vec模型和两个没有预训练但具有不同词嵌入维的模型来测试几种深度学习模型。我们在急诊部门的1130个带标签的便笺上评估了模型。深度学习模型的整体性能最佳,ROC曲线下的面积为98.5%,准确度为94.5%。在未标记的语料库上进行预训练单词嵌入可减少训练迭代次数,并且在统计上与其他深度学习模型没有什么不同。在我们的环境中,这种受监督的深度学习方法对于检测临床文本中的AMS症状表现非常出色。这些发现的一般性需要进一步的工作,包括在其他类型的临床笔记和其他环境中评估这些模型。对于最终将这些类型的分类器与从电子健康记录中获得的其他信息结合起来作为临床决策支持的输入而言,结果似乎很有希望。

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