Applying Deep Learning in Word Embedding for Making a Diagnosis Prediction Model from Orthopedic Clinical Note

Tanakorn Rattanajariya, K. Piromsopa
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引用次数: 2

Abstract

We propose deep learning in word embedding for making a diagnostic prediction model. One factor that causes uncertainties in diagnostic is the inexperience of physicians. The diagnosis errors lead to incorrect and delay in treatment, waste of time and money. To solve the problem, a differential diagnosis is a critical tool. It is powerful and does not introduce additional work to physician. Our method applied a deep learning tool together with word embedding from existing diagnosis texts in medical system. The model takes the clinical notes from a physician. The note is then used to analyze the possibilities of diseases. The output is sorted by model confidence. We validate our model with True Positive Rate (Recall), False Positive Rate (Precision) and accuracy. Our model achieves a new record of accuracy at 99.95% The highest recall rate is at 86.64% in top first prediction.
应用深度学习的词嵌入构建骨科临床记录诊断预测模型
我们提出在词嵌入中使用深度学习来建立诊断预测模型。导致诊断不确定的一个因素是医生缺乏经验。诊断错误导致治疗错误和延误,浪费时间和金钱。要解决这个问题,鉴别诊断是一个关键的工具。它是强大的,不引入额外的工作给医生。我们的方法将深度学习工具与医学系统中现有诊断文本的词嵌入相结合。该模型从医生那里获取临床记录。然后,该笔记被用来分析疾病的可能性。输出按模型置信度排序。我们用真阳性率(召回率)、假阳性率(精度)和准确性来验证我们的模型。我们的模型达到了99.95%的准确率,最高的召回率为86.64%。
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