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Tentative diagnosis prediction via deep understanding of patient narratives

机译:通过深刻理解患者的叙述来进行初步诊断预测

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A tentative diagnosis is a preliminary suspicion of patient status, which is usually made by physicians according to patient narrative right at admission. It largely depends on the experiences and professional knowledge of physicians. We explored a combination model for automatic tentative diagnosis prediction based on clinical narratives. Text features are extracted in two ways. Firstly, the context semantic features are extracted by attention-based bidirectional long-short term memory (BiLSTM) network. Secondly, the symptom concepts recognized from input texts by Metamap and are vectorized by TF-IDF. Two combination strategies are proposed to utilize both two features for one candidate international classification of diseases (ICD) code recommendation: feature vectors combination and prediction results combination. The experiments performed on MIMIC III dataset. Both of the two combination strategies achieved better performance, comparing with either of the model based on single type feature.
机译:初步诊断是对患者状态的初步怀疑,通常是由医生根据入院时患者的叙述权做出的。它在很大程度上取决于医师的经验和专业知识。我们探索了一种基于临床叙事的自动暂定诊断预测的组合模型。文本特征以两种方式提取。首先,上下文语义特征是通过基于注意力的双向长期短期记忆(BiLSTM)网络提取的。其次,症状概念由Metamap从输入文本中识别出来,并由TF-IDF矢量化。提出了两种组合策略以将两种特征用于一种候选国际疾病分类(ICD)代码推荐:特征向量组合和预测结果组合。实验在MIMIC III数据集上进行。与基于单一类型特征的任何一个模型相比,这两种组合策略均实现了更好的性能。

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