Usta Miraç Barış, KarabekİroĞlu Koray
Department of Child and Adolescent Psychiatry, Ondokuz Mayıs University, School of Medicine, Samsun, Turkey.
Noro Psikiyatr Ars. 2020 Sep 21;57(4):265-269. doi: 10.29399/npa.25074. eCollection 2020 Dec.
Parental psychopathology has been defined in respect of psychopathological development in early childhood. This study aimed to investigate the effects of parental psychopathologies on social and emotional problems in the age range of 1-3 years and to determine children at risk.
The study data were obtained from the 2009 Early Childhood Mental Health Profile taking population distribution into consideration with the properties representing Turkey. The primary caregiver of the child completed the Psychiatric Evaluation Form for 1-3 years, the Brief Infant-Toddler Social Emotional Assessment (BITSEA), the Ages and Stages Questionnaire (ASQ), and the Brief Symptom Inventory (BSI) for themselves. Machine learning models used for prediction. The performance of prediction models was evaluated with the ten-fold cross-validation method. Area Under Curve (AUC) values were calculated with Receiver Operating Characteristic (ROC) curves to evaluate the performance of each model.
The evaluation was made of the data of 2775 children, comprising 1507 (54.3%) males and 1268 (45.7%) females with a mean age of 26.19±9.11 months (range, 10-48 months). A total of 106 children were identified as at risk, as they were above the clinical cut-off point (1.5 standard deviations) of the BITSEA points and below the cut-off points of any one of the developmental areas of the ASQ. Modeling was applied to the data of these 106 children. The Support Vector Machines (SVM) model was selected for prediction with the automatically optimized highest AUC value. Weighting for the SVM algorithm showed mothers' BSI scores, fathers' education and health problems, duration of breastfeeding, unplanned pregnancy are significant for predicting BITSEA-problem scores in the model.
To be able to understand the complex relationship with parental psychopathology and behavioral problems, machine learning methods were used successfully in this study. Further studies with more massive data sets, more extended follow-up periods, and stronger algorithms will be able to identify risk groups earlier and allow early interventions to be implemented.
父母的精神病理学是根据幼儿期的精神病理发展来定义的。本研究旨在调查父母精神病理学对1至3岁儿童社交和情感问题的影响,并确定有风险的儿童。
研究数据来自2009年幼儿心理健康概况,该概况考虑了代表土耳其的人口分布情况。孩子的主要照顾者完成了1至3岁的精神科评估表、简短婴幼儿社会情感评估(BITSEA)、年龄与阶段问卷(ASQ)以及他们自己的简短症状清单(BSI)。使用机器学习模型进行预测。预测模型的性能采用十折交叉验证法进行评估。通过接收者操作特征(ROC)曲线计算曲线下面积(AUC)值,以评估每个模型的性能。
对2775名儿童的数据进行了评估,其中包括1507名(54.3%)男性和1268名(45.7%)女性,平均年龄为26.19±9.11个月(范围为10至48个月)。共有106名儿童被确定为有风险,因为他们的BITSEA得分高于临床临界点(1.5个标准差),且低于ASQ任何一个发育领域的临界点。对这106名儿童的数据进行了建模。选择支持向量机(SVM)模型进行预测,其AUC值自动优化后最高。SVM算法的加权显示,母亲的BSI得分、父亲的教育程度和健康问题、母乳喂养持续时间、意外怀孕对预测模型中的BITSEA问题得分具有重要意义。
为了能够理解与父母精神病理学和行为问题的复杂关系,本研究成功使用了机器学习方法。进一步使用更大规模数据集、更长随访期和更强算法的研究将能够更早地识别风险群体,并允许实施早期干预。