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告知自闭症儿童的发育里程碑成就:机器学习方法。

Informing Developmental Milestone Achievement for Children With Autism: Machine Learning Approach.

作者信息

Haque Munirul M, Rabbani Masud, Dipal Dipranjan Das, Zarif Md Ishrak Islam, Iqbal Anik, Schwichtenberg Amy, Bansal Naveen, Soron Tanjir Rashid, Ahmed Syed Ishtiaque, Ahamed Sheikh Iqbal

机构信息

R.B. Annis School of Engineering, University of Indianapolis, Indianapolis, IN, United States.

Ubicomp Lab, Department of Computer Science, Marquette University, Milwaukee, WI, United States.

出版信息

JMIR Med Inform. 2021 Jun 8;9(6):e29242. doi: 10.2196/29242.

Abstract

BACKGROUND

Care for children with autism spectrum disorder (ASD) can be challenging for families and medical care systems. This is especially true in low- and- middle-income countries such as Bangladesh. To improve family-practitioner communication and developmental monitoring of children with ASD, mCARE (Mobile-Based Care for Children with Autism Spectrum Disorder Using Remote Experience Sampling Method) was developed. Within this study, mCARE was used to track child milestone achievement and family sociodemographic assets to inform mCARE feasibility/scalability and family asset-informed practitioner recommendations.

OBJECTIVE

The objectives of this paper are threefold. First, it documents how mCARE can be used to monitor child milestone achievement. Second, it demonstrates how advanced machine learning models can inform our understanding of milestone achievement in children with ASD. Third, it describes family/child sociodemographic factors that are associated with earlier milestone achievement in children with ASD (across 5 machine learning models).

METHODS

Using mCARE-collected data, this study assessed milestone achievement in 300 children with ASD from Bangladesh. In this study, we used 4 supervised machine learning algorithms (decision tree, logistic regression, K-nearest neighbor [KNN], and artificial neural network [ANN]) and 1 unsupervised machine learning algorithm (K-means clustering) to build models of milestone achievement based on family/child sociodemographic details. For analyses, the sample was randomly divided in half to train the machine learning models and then their accuracy was estimated based on the other half of the sample. Each model was specified for the following milestones: Brushes teeth, Asks to use the toilet, Urinates in the toilet or potty, and Buttons large buttons.

RESULTS

This study aimed to find a suitable machine learning algorithm for milestone prediction/achievement for children with ASD using family/child sociodemographic characteristics. For Brushes teeth, the 3 supervised machine learning models met or exceeded an accuracy of 95% with logistic regression, KNN, and ANN as the most robust sociodemographic predictors. For Asks to use toilet, 84.00% accuracy was achieved with the KNN and ANN models. For these models, the family sociodemographic predictors of "family expenditure" and "parents' age" accounted for most of the model variability. The last 2 parameters, Urinates in toilet or potty and Buttons large buttons, had an accuracy of 91.00% and 76.00%, respectively, in ANN. Overall, the ANN had a higher accuracy (above ~80% on average) among the other algorithms for all the parameters. Across the models and milestones, "family expenditure," "family size/type," "living places," and "parent's age and occupation" were the most influential family/child sociodemographic factors.

CONCLUSIONS

mCARE was successfully deployed in a low- and middle-income country (ie, Bangladesh), providing parents and care practitioners a mechanism to share detailed information on child milestones achievement. Using advanced modeling techniques this study demonstrates how family/child sociodemographic elements can inform child milestone achievement. Specifically, families with fewer sociodemographic resources reported later milestone attainment. Developmental science theories highlight how family/systems can directly influence child development and this study provides a clear link between family resources and child developmental progress. Clinical implications for this work could include supporting the larger family system to improve child milestone achievement.

摘要

背景

对于家庭和医疗保健系统而言,照顾自闭症谱系障碍(ASD)儿童颇具挑战性。在孟加拉国等低收入和中等收入国家,情况尤其如此。为了改善家庭与从业者之间的沟通以及对ASD儿童的发育监测,开发了mCARE(基于移动设备的自闭症谱系障碍儿童护理,采用远程经验抽样方法)。在本研究中,mCARE被用于追踪儿童发育里程碑的达成情况以及家庭社会人口统计学资产,以了解mCARE的可行性/可扩展性以及基于家庭资产为从业者提供建议。

目的

本文的目的有三个。第一,记录mCARE如何用于监测儿童发育里程碑的达成情况。第二,展示先进的机器学习模型如何增进我们对ASD儿童发育里程碑达成情况的理解。第三,描述与ASD儿童更早达成发育里程碑相关的家庭/儿童社会人口统计学因素(涵盖5种机器学习模型)。

方法

利用mCARE收集的数据,本研究评估了来自孟加拉国的300名ASD儿童的发育里程碑达成情况。在本研究中,我们使用了4种监督式机器学习算法(决策树、逻辑回归、K近邻算法[KNN]和人工神经网络[ANN])以及1种无监督式机器学习算法(K均值聚类),根据家庭/儿童社会人口统计学细节构建发育里程碑达成情况模型。为了进行分析,样本被随机分成两半以训练机器学习模型,然后根据另一半样本估计其准确性。每个模型针对以下发育里程碑进行设定:刷牙、要求使用厕所、在厕所或便盆中排尿以及扣上大纽扣。

结果

本研究旨在利用家庭/儿童社会人口统计学特征,为ASD儿童的发育里程碑预测/达成情况找到合适的机器学习算法。对于刷牙,3种监督式机器学习模型达到或超过了95%的准确率,其中逻辑回归、KNN和ANN是最可靠的社会人口统计学预测指标。对于要求使用厕所,KNN和ANN模型的准确率达到了84.00%。对于这些模型,“家庭支出”和“父母年龄”这两个家庭社会人口统计学预测指标占模型变异性的大部分。最后两个指标,即在厕所或便盆中排尿和扣上大纽扣,在人工神经网络中的准确率分别为91.00%和76.00%。总体而言,在所有参数方面,人工神经网络在其他算法中具有更高的准确率(平均约80%以上)。在所有模型和发育里程碑中,“家庭支出”“家庭规模/类型”“居住地点”以及“父母年龄和职业”是最具影响力的家庭/儿童社会人口统计学因素。

结论

mCARE已在低收入和中等收入国家(即孟加拉国)成功部署,为家长和护理从业者提供了一种分享儿童发育里程碑达成情况详细信息的机制。通过使用先进的建模技术,本研究展示了家庭/儿童社会人口统计学因素如何影响儿童发育里程碑的达成情况。具体而言,社会人口统计学资源较少的家庭报告其儿童发育里程碑的达成时间较晚。发展科学理论强调了家庭/系统如何直接影响儿童发展,而本研究提供了家庭资源与儿童发展进程之间的明确联系。这项工作的临床意义可能包括支持更大的家庭系统以改善儿童发育里程碑的达成情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2080/8262602/faf89bf81a06/medinform_v9i6e29242_fig1.jpg

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