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基于时间机器学习方法的测量数据胎儿出生体重预测。

Fetal birthweight prediction with measured data by a temporal machine learning method.

机构信息

Department of Obstetrics and Gynecology, The Affiliated Hangzhou People's Hospital of Nanjing Medical University, Hangzhou, China.

Department of Obstetrics and Gynecology, Hangzhou Women's Hospital, Hangzhou, China.

出版信息

BMC Med Inform Decis Mak. 2021 Jan 25;21(1):26. doi: 10.1186/s12911-021-01388-y.

Abstract

BACKGROUND

Birthweight is an important indicator during the fetal development process to protect the maternal and infant safety. However, birthweight is difficult to be directly measured, and is usually roughly estimated by the empirical formulas according to the experience of the doctors in clinical practice.

METHODS

This study attempts to combine multiple electronic medical records with the B-ultrasonic examination of pregnant women to construct a hybrid birth weight predicting classifier based on long short-term memory (LSTM) networks. The clinical data were collected from 5,759 Chinese pregnant women who have given birth, with more than 57,000 obstetric electronic medical records. We evaluated the prediction by the mean relative error (MRE) and the accuracy rate of different machine learning classifiers at different predicting periods for first delivery and multiple deliveries. Additionally, we evaluated the classification accuracies of different classifiers respectively for the Small-for-Gestational-age (SGA), Large-for-Gestational-Age (LGA) and Appropriate-for-Gestational-Age (AGA) groups.

RESULTS

The results show that the accuracy rate of the prediction model using Convolutional Neuron Networks (CNN), Random Forest (RF), Linear-Regression, Support Vector Regression (SVR), Back Propagation Neural Network(BPNN), and the proposed hybrid-LSTM at the 40th pregnancy week for first delivery were 0.498, 0.662, 0.670, 0.680, 0.705 and 0.793, respectively. Among the groups of less than 39th pregnancy week, the 39th pregnancy week and more than 40th week, the hybrid-LSTM model obtained the best accuracy and almost the least MRE compared with those of machine learning models. Not surprisingly, all the machine learning models performed better than the empirical formula. In the SGA, LGA and AGA group experiments, the average accuracy by the empirical formula, logistic regression (LR), BPNN, CNN, RF and Hybrid-LSTM were 0.780, 0.855, 0.890, 0.906, 0.916 and 0.933, respectively.

CONCLUSIONS

The results of this study are helpful for the birthweight prediction and development of guidelines for clinical delivery treatments. It is also useful for the implementation of a decision support system using the temporal machine learning prediction model, as it can assist the clinicians to make correct decisions during the obstetric examinations and remind pregnant women to manage their weight.

摘要

背景

出生体重是胎儿发育过程中保护母婴安全的一个重要指标。然而,出生体重很难直接测量,通常根据医生在临床实践中的经验,通过经验公式进行大致估算。

方法

本研究试图将多个电子病历与孕妇的 B 超检查相结合,基于长短时记忆(LSTM)网络构建混合出生体重预测分类器。临床数据来自 5759 名中国分娩的孕妇,有超过 57000 份产科电子病历。我们通过平均相对误差(MRE)和不同机器学习分类器在不同预测期对初产妇和多产妇的预测准确率来评估预测结果。此外,我们还分别评估了不同分类器对小胎龄儿(SGA)、大胎龄儿(LGA)和适于胎龄儿(AGA)组的分类准确率。

结果

结果表明,在初产妇第 40 孕周使用卷积神经网络(CNN)、随机森林(RF)、线性回归、支持向量回归(SVR)、反向传播神经网络(BPNN)和所提出的混合-LSTM 预测模型的准确率分别为 0.498、0.662、0.670、0.680、0.705 和 0.793。在第 39 孕周和第 40 孕周以下、第 39 孕周和第 40 孕周以上的组中,混合-LSTM 模型与机器学习模型相比,获得了最佳的准确率和几乎最小的 MRE。毫不奇怪,所有的机器学习模型都比经验公式表现得更好。在 SGA、LGA 和 AGA 组实验中,经验公式、逻辑回归(LR)、BPNN、CNN、RF 和混合-LSTM 的平均准确率分别为 0.780、0.855、0.890、0.906、0.916 和 0.933。

结论

本研究结果有助于出生体重预测和临床分娩治疗指南的制定。它对于使用时间机器学习预测模型的决策支持系统的实施也很有用,因为它可以帮助临床医生在产科检查中做出正确的决策,并提醒孕妇管理体重。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c5a0/7836146/10db0c9ff2d2/12911_2021_1388_Fig1_HTML.jpg

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