Autism Scale Application for Identifying the Risk of Mental Development Disorders among Children Ages 3 And 4

IF 0.3 Q4 PSYCHOLOGY, MULTIDISCIPLINARY
A. Nasledov, S. Miroshnikov, O. Zashchirinskaia, Lyubov' О. Tkacheva, Natalia N. Kompanets
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引用次数: 2

Abstract

In this study, we continued the development of diagnostic tools for the rapid identification (screening) of the risk of developing autism (ASD) in children ages 3 and 4. In 2020, we conducted a study on a sample population of 324 children ages 3 and 4, including 116 children with ASD. As a result, an Autism Scale was developed and standardized, consisting of 40 points (symptoms of autism) predicting the child's tendency to ASD within an accuracy of 86.73 - 89.9%. The scale forms into 4 factors (subscales) giving degrees in which children with ASD differ from children without ASD. The objectives of this study were: to test the validity and effectiveness of the developed Autism Scale on a wider sample; study of errors in diagnosing the risk of ASD and the possibility of improving the developed methodology; development of a full-fledged diagnostic technique suitable for practical use. The issues studied in this article cover such aspects of ASD as: the synchronism of the manifestation of ASD symptoms; homogeneity/heterogeneity of the sample for these symptoms; differences between ASD, DD and Normal, and what points allow you to identify these differences. The sample of this study included 178 children with ASD, 124 children with mental retardation, and 203 children with normal development, that is without a clinical diagnosis (Normal). Via an online survey, data was collected on the children with pre-diagnosed symptoms by using a specially designed questionnaire given to 32 specialists (psychologists, defectolo-gists) who worked with these children. The expanded sampling resulted in confirmation of validity, reliability and effectiveness of the developed autism scale, which includes 4 subscales: "Emotional disorders", "Sensory disorders", "Communication disorders" and "Disinhibition". The accuracy of the scale is 88.91% (sensitivity 92.1%, specificity 87.2%). Instructions, stimulus material and test norms for the practical application of the scale were created. Using a 2-stage cluster analysis, 4 groups (clusters) of children with ASD were identified, with significantly different symptom profiles. At the same time, one of these groups (26% of the ASD sample) in terms of symptom profile is the closest to the DD group, and it accounts for 90% of the errors when predicting the risk of ASD. For the remaining clusters, the prediction accuracy of ASD risk is 98.6%. It was found that the main source of errors in predicting the risk of ASD is that in 28.5% of cases children with DD are attributed with ASD symptoms. Our further prospective research is clarification of the typology of ASD symptoms.
自闭症量表在3、4岁儿童精神发育障碍风险识别中的应用
在这项研究中,我们继续开发诊断工具,用于快速识别(筛选)3岁和4岁儿童患自闭症(ASD)的风险。2020年,我们对324名3岁和4岁的儿童进行了一项研究,其中包括116名自闭症儿童。因此,自闭症量表被开发和标准化,由40个点(自闭症症状)组成,预测儿童的ASD倾向,准确度为86.73 - 89.9%。该量表分为4个因素(子量表),给出自闭症儿童与非自闭症儿童的不同程度。本研究的目的是:在更广泛的样本上检验发达自闭症量表的效度和有效性;研究诊断ASD风险的错误及改进现有方法的可能性;发展适合实际使用的成熟诊断技术。本文研究的问题涉及ASD的几个方面:ASD症状表现的同步性;这些症状样本的同质性/异质性;ASD, DD和正常之间的差异,以及哪些点可以让你识别这些差异。本研究的样本包括178名ASD儿童,124名智力迟钝儿童和203名发育正常的儿童,即没有临床诊断(正常)。通过一项在线调查,通过向与这些儿童一起工作的32名专家(心理学家、缺陷学家)提供一份专门设计的问卷,收集了具有预先诊断症状的儿童的数据。经扩大抽样,发达自闭症量表的效度、信度和有效性得到了证实。该量表包括“情绪障碍”、“感觉障碍”、“沟通障碍”和“去抑制”4个子量表。量表准确率为88.91%(灵敏度92.1%,特异度87.2%)。制定了量表实际应用的说明、刺激材料和测试规范。采用两阶段聚类分析,确定了4组ASD儿童,其症状特征有显著差异。与此同时,其中一组(占ASD样本的26%)在症状特征方面与DD组最接近,并且在预测ASD风险时占90%的错误。对于其余的聚类,ASD风险的预测准确率为98.6%。研究发现,预测ASD风险的主要错误来源是28.5%的DD患儿被归因于ASD症状。我们进一步的前瞻性研究是澄清ASD症状的类型。
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CiteScore
0.60
自引率
50.00%
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