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Neural-Network-Based Outcome Classification for Nursing Care

机译:神经网络的护理结果分类

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摘要

As the number of aging populations grows rapidly, the demands of nursing care increase sharply. How to guarantee the nursing care quality becomes a great issue. Traditional formulation of nursing care plans relies on numerous experiences and professional knowledges. However, there are not enough qualified nursing workers. The development of nursing informatization and artificial intelligence provides a feasible solution. In this paper, we aim to build the machine learning model to predict the outcome domain only based on outcome indictors, so that when the nurses obtain the indictors after the evaluation, the model could output the predicted domain to guide the nursing care plan formulation. We extracted outcome domains and the corresponding outcome indictors from the guidelines. Then we applied the TF-IDF method to transform the indictors into numerical vectors, which were further used to train an artificial neural network (ANN) model. In the experiments, 481 outcomes were extracted, which belonged to 6 domains. Besides, to validate the model, we compared it with KNN, Support Vector Machine, and Random Forest. 10-folds results showed that ANN achieved the best accuracy, i.e. 84%, which proves the feasibility of predicting the outcome classification only based on the indicators, and using machine learning to help make nursing plans.
机译:随着老龄化人群的数量迅速增长,护理的需求急剧增加。如何保证护理质量成为一个很好的问题。护理护理计划的传统制定依赖于众多经验和专业知识。但是,没有足够的合格护理工人。护理信息化和人工智能的发展提供了可行的解决方案。在本文中,我们的目标是建立机器学习模型,以预测结果域名仅基于成果标识,使得当护士获得评估后获得标记,该模型可以输出预测域以指导护理计划制定。我们从指南提取了结果域名和相应的结果标识。然后,我们应用了TF-IDF方法将标识转换为数字向量,该数字向量进一步用于训练人工神经网络(ANN)模型。在实验中,提取481个结果,属于6个结构域。此外,为了验证模型,我们将其与KNN,支持向量机和随机森林进行比较。 10倍的结果表明,ANN实现了最佳准确性,即84%,这证明了仅根据指标预测结果分类的可行性,并使用机器学习帮助进行护理计划。

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