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利用机器学习技术检测儿童发育迟缓

Detection of pediatric developmental delay with machine learning technologies.

作者信息

Chen Shin-Bo, Huang Chi-Hung, Weng Sheng-Chin, Oyang Yen-Jen

机构信息

Graduate Institute of Biomedical Electronics and Bioinformatics, National Taiwan University, Taipei City, Taiwan (R.O.C.

Department of Rehabilitation, En Chu Kong Hospital, New Taipei City, Taiwan (R.O.C.).

出版信息

PLoS One. 2025 May 20;20(5):e0324204. doi: 10.1371/journal.pone.0324204. eCollection 2025.

Abstract

OBJECTIVE

Accurate identification of children who will develop delay (DD) is challenging for therapists because recent studies have reported that children who underwent early intervention achieved more favorable outcomes than those who did not. In this study, we have investigated how the frequencies of three types of therapy, namely the physical therapy, the occupational therapy, and the speech therapy, received by a child can be exploited to predict whether the child suffers from DD or not. The effectiveness of the proposed approach is of high interest as these features can be obtained with essentially no cost and therefore a prediction model built accordingly can be employed to screen the subjects who may develop DD before advanced and costly diagnoses are carried out.

METHODS

This study has been conducted based on a data set comprising the records of 2,552 outpatients (N = 34,862 visits, mean age = 72.34 months) collected at a hospital in Taiwan from 2012 to 2016. We then built 3 types of machine learning based prediction models, namely the deep neural network models (DNN), the support vector machine (SVM) models, and the decision tree (DT) models, to evaluate the effectiveness of the proposed approach.

RESULTS

Experimental results reveal that in terms of the F1 score, which is the harmonic mean of the sensitivity and the positive predictive value, the DT models outperformed the DNN models and the SVM models, if a high level of sensitivity is desired. In particular, the DT model developed in this study delivered the sensitivity at 0.902 and the positive predictive value at 0.723.

CONCLUSIONS

What has been learned from this study is that the frequencies of the therapies that a child has received provide valuable information for predicting whether the child suffers from DD. Due to the performance observed in the experiments and the fact that these features can be obtained essentially without any cost, it is conceivable that the prediction models built accordingly can be wide exploited in clinical practices and significantly improve the treatment outcomes of the children who develop DD.

摘要

目的

准确识别即将出现发育迟缓(DD)的儿童对治疗师来说具有挑战性,因为最近的研究报告称,接受早期干预的儿童比未接受早期干预的儿童取得了更有利的结果。在本研究中,我们调查了如何利用儿童接受的三种治疗(即物理治疗、职业治疗和言语治疗)的频率来预测该儿童是否患有发育迟缓。由于这些特征基本上可以免费获得,因此相应构建的预测模型可用于在进行先进且昂贵的诊断之前筛选可能出现发育迟缓的受试者,所以所提出方法的有效性备受关注。

方法

本研究基于2012年至2016年在台湾一家医院收集的包含2552名门诊患者记录(N = 34862次就诊,平均年龄 = 72.34个月)的数据集进行。然后我们构建了3种基于机器学习的预测模型,即深度神经网络模型(DNN)、支持向量机(SVM)模型和决策树(DT)模型,以评估所提出方法的有效性。

结果

实验结果表明,就F1分数(即敏感度和阳性预测值的调和平均值)而言,如果需要高敏感度,DT模型优于DNN模型和SVM模型。特别是,本研究中开发的DT模型的敏感度为0.902,阳性预测值为0.723。

结论

从本研究中可知,儿童接受治疗的频率为预测儿童是否患有发育迟缓提供了有价值的信息。鉴于实验中观察到的性能以及这些特征基本上可以免费获得这一事实,可以想象相应构建的预测模型可在临床实践中广泛应用,并显著改善出现发育迟缓儿童的治疗效果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cb11/12091767/869610712f2b/pone.0324204.g001.jpg

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