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NICeSim:一种基于机器学习技术的开源模拟器,用于支持产前和围产期护理决策的医学研究。

NICeSim: an open-source simulator based on machine learning techniques to support medical research on prenatal and perinatal care decision making.

作者信息

Cerqueira Fabio Ribeiro, Ferreira Tiago Geraldo, de Paiva Oliveira Alcione, Augusto Douglas Adriano, Krempser Eduardo, Corrêa Barbosa Helio José, do Carmo Castro Franceschini Sylvia, de Freitas Brunnella Alcantara Chagas, Gomes Andreia Patricia, Siqueira-Batista Rodrigo

机构信息

Department of Informatics, Universidade Federal de Viçosa, Av. PH Rolfs - s/n, CEP 36570-900 Minas Gerais, Brazil.

Department of Informatics, Universidade Federal de Viçosa, Av. PH Rolfs - s/n, CEP 36570-900 Minas Gerais, Brazil.

出版信息

Artif Intell Med. 2014 Nov;62(3):193-201. doi: 10.1016/j.artmed.2014.10.001. Epub 2014 Oct 22.

Abstract

OBJECTIVE

This paper describes NICeSim, an open-source simulator that uses machine learning (ML) techniques to aid health professionals to better understand the treatment and prognosis of premature newborns.

METHODS

The application was developed and tested using data collected in a Brazilian hospital. The available data were used to feed an ML pipeline that was designed to create a simulator capable of predicting the outcome (death probability) for newborns admitted to neonatal intensive care units. However, unlike previous scoring systems, our computational tool is not intended to be used at the patients bedside, although it is possible. Our primary goal is to deliver a computational system to aid medical research in understanding the correlation of key variables with the studied outcome so that new standards can be established for future clinical decisions. In the implemented simulation environment, the values of key attributes can be changed using a user-friendly interface, where the impact of each change on the outcome is immediately reported, allowing a quantitative analysis, in addition to a qualitative investigation, and delivering a totally interactive computational tool that facilitates hypothesis construction and testing.

RESULTS

Our statistical experiments showed that the resulting model for death prediction could achieve an accuracy of 86.7% and an area under the receiver operating characteristic curve of 0.84 for the positive class. Using this model, three physicians and a neonatal nutritionist performed simulations with key variables correlated with chance of death. The results indicated important tendencies for the effect of each variable and the combination of variables on prognosis. We could also observe values of gestational age and birth weight for which a low Apgar score and the occurrence of respiratory distress syndrome (RDS) could be less or more severe. For instance, we have noticed that for a newborn with 2000 g or more the occurrence of RDS is far less problematic than for neonates weighing less.

CONCLUSIONS

The significant accuracy demonstrated by our predictive model shows that NICeSim might be used for hypothesis testing to minimize in vivo experiments. We observed that the model delivers predictions that are in very good agreement with the literature, demonstrating that NICeSim might be an important tool for supporting decision making in medical practice. Other very important characteristics of NICeSim are its flexibility and dynamism. NICeSim is flexible because it allows the inclusion and deletion of variables according to the requirements of a particular study. It is also dynamic because it trains a just-in-time model. Therefore, the system is improved as data from new patients become available. Finally, NICeSim can be extended in a cooperative manner because it is an open-source system.

摘要

目的

本文介绍了NICeSim,这是一款开源模拟器,它使用机器学习(ML)技术来帮助医疗专业人员更好地理解早产新生儿的治疗和预后情况。

方法

该应用程序是利用巴西一家医院收集的数据开发并测试的。可用数据被用于为一个ML管道提供输入,该管道旨在创建一个能够预测入住新生儿重症监护病房的新生儿结局(死亡概率)的模拟器。然而,与以往的评分系统不同,我们的计算工具并非用于在患者床边使用,尽管这是有可能的。我们的主要目标是提供一个计算系统,以帮助医学研究理解关键变量与所研究结局之间的相关性,从而能够为未来的临床决策制定新的标准。在已实现的模拟环境中,可以使用用户友好的界面来更改关键属性的值,在该界面中,每次更改对结局的影响会立即报告出来,这除了能进行定性研究外,还允许进行定量分析,并提供一个完全交互式的计算工具,便于构建和检验假设。

结果

我们的统计实验表明,所得的死亡预测模型对于阳性类别能够实现86.7%的准确率以及0.84的受试者工作特征曲线下面积。使用该模型,三名医生和一名新生儿营养师对与死亡几率相关的关键变量进行了模拟。结果表明了每个变量以及变量组合对预后影响的重要趋势。我们还能够观察到对于不同的胎龄和出生体重值,低阿氏评分和呼吸窘迫综合征(RDS)的发生情况可能会或多或少地严重。例如,我们注意到对于体重2000克或以上的新生儿,RDS的发生问题远低于体重较轻的新生儿。

结论

我们的预测模型所展示的显著准确率表明,NICeSim可用于假设检验,以尽量减少体内实验。我们观察到该模型给出的预测结果与文献非常吻合,这表明NICeSim可能是支持医疗实践中决策制定的一个重要工具。NICeSim的其他非常重要的特性是其灵活性和动态性。NICeSim具有灵活性,因为它允许根据特定研究的要求包含和删除变量。它也具有动态性,因为它会训练一个即时模型。因此,随着新患者数据的可得,系统会得到改进。最后,由于NICeSim是一个开源系统,它可以以合作的方式进行扩展。

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