Deep bidirectional LSTM for disease classification supporting hospital admission based on pre-diagnosis: a case study in Vietnam.

Hai Thanh Nguyen, Khoa Dang Dang Le, Ngoc Huynh Pham, Chi Le Hoang Tran
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引用次数: 1

Abstract

Overcrowding in hospitals in Vietnam has caused many disadvantages in receiving and treating patients. Especially at the stage of receiving and diagnosing procedures taking patients to the treatment departments in the hospital takes up much time. This study proposes a text-based disease diagnosis using text processing techniques (such as Bag of Words, Term Frequency- Inverse Document Frequency, and Tokenizer) combined with classifiers (such as Random Forests (RF), Multi-Layer Perceptron (MLP), Embeddings and Bidirectional Long Short-term memory (LSTM)) on symptoms. As observed from the results, deep Bidirectional LSTM can reach 0.982 in AUC in the classification of 10 diseases on 230,457 samples of pre-diagnosis collected from Vietnam hospitals used in the training and testing phases. The proposed approach is expected to provide a way to automate patient flow in hospitals to improve healthcare in the future.

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用于疾病分类的深度双向LSTM支持基于预诊断的入院:越南的一项案例研究。
越南医院过于拥挤,在接收和治疗病人方面造成了许多不利因素。尤其是在接收和诊断程序的阶段,将患者带到医院的治疗部门需要花费大量时间。本研究提出了一种基于文本的疾病诊断方法,该方法使用文本处理技术(如单词袋、术语频率-逆文档频率和标记器)与分类器(如随机森林(RF)、多层感知器(MLP)、嵌入和双向长短期记忆(LSTM))相结合对症状进行诊断。从结果中可以观察到,在训练和测试阶段从越南医院收集的230457份预诊断样本的10种疾病分类中,深度双向LSTM的AUC可以达到0.982。所提出的方法有望提供一种自动化医院患者流动的方法,以改善未来的医疗保健。
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