Machine Learning Applied to Health Information Exchange

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引用次数: 1

Abstract

The interest in Artificial Intelligence (AI) has grown in the last few years. The healthcare community is no exception. The present work is focused on the exchange of medical information, using the Health Level Seven (HL7) international standards. The main objective of the present work is to develop an AI model capable of inferring if for a given hour exists a peak in the number of exchanged messages. To accomplish that two different deep learning models were created, an Artificial Neural Networks (ANN) and Long-short Term Memory (LSTM). The intention is to observe which is capable to perceive the situation better considering the environment and features of a healthcare facility. Using laboratory-generated data was possible to simulate variations and differences in “traffic”. Comparing the LSTM vs ANN model, the first is capable of outputting peaks better but for considered mean values that do not happen. For the given context, predicting the peak is essential, so the LSTM is the right choice and uses fewer features that are good regarding performance.
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机器学习在健康信息交流中的应用
在过去的几年里,人们对人工智能的兴趣与日俱增。医疗保健界也不例外。目前的工作重点是利用卫生七级(HL7)国际标准交流医疗信息。本工作的主要目标是开发一种人工智能模型,该模型能够推断在给定的时间内交换的消息数量是否存在峰值。为了实现这一点,创建了两个不同的深度学习模型,即人工神经网络(ANN)和长短期记忆(LSTM)。其目的是观察哪一个能够更好地感知情况,考虑到医疗机构的环境和特点。使用实验室生成的数据可以模拟“交通”的变化和差异。比较LSTM与ANN模型,第一种模型能够更好地输出峰值,但考虑到没有发生的平均值。对于给定的上下文,预测峰值是至关重要的,因此LSTM是正确的选择,并且使用较少的性能良好的特征。
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CiteScore
3.20
自引率
0.00%
发文量
43
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