识别叙利亚难民儿童心理创伤以进行早期干预:利用机器学习分析数字化绘画

Identifying psychological trauma among Syrian refugee children for early intervention: Analyzing digitized drawings using machine learning

Journal of Development Economics · 2022
被引 14
人大 AABS 3

中文导读

研究利用机器学习分析2480名叙利亚难民儿童的数字化绘画特征,发现其与心理创伤的关联,可作为危机环境中快速、低成本的诊断工具。

Abstract

Nearly 5.6 million Syrian refugees have been displaced by the country's civil war, of which roughly half are children. A digital analysis of features in children's drawings potentially represents a rapid, cost-effective, and non-invasive method for collecting information about children's mental health. Using data collected from free drawings and self-portraits from 2480 Syrian refugee children in Jordan across two distinct datasets, we use LASSO machine-learning techniques to understand the relationship between psychological trauma among refugee children and digitally coded features of their drawings. We find that children's drawing features retained using LASSO are consistent with historical correlations found between specific drawing features and psychological distress in clinical settings. We then use drawing features within LASSO to predict exposure to violence and refugee integration into host countries, with findings consistent with anticipated associations. Results serve as a proof-of-concept for the potential use of children's drawings as a diagnostic tool in human crisis settings.

叙利亚难民儿童心理创伤儿童绘画机器学习