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根据自闭症服务机构所接收人群的儿童期和青少年期数据预测不确定的多维成年期结果

Predicting Uncertain Multi-Dimensional Adulthood Outcomes From Childhood and Adolescent Data in People Referred to Autism Services.

作者信息

Forbes Gordon, Lord Catherine, Elias Rebecca, Pickles Andrew

机构信息

Department of Biostatistics and Health Informatics, Institute of Psychiatry, Psychology and Neuroscience, King's College London, London, United Kingdom.

Department of Psychiatry, University of California, Los Angeles, Los Angeles, CA, United States.

出版信息

Front Psychol. 2021 Feb 9;12:594462. doi: 10.3389/fpsyg.2021.594462. eCollection 2021.

Abstract

INTRODUCTION

Autism spectrum disorder is a highly heterogeneous diagnosis. When a child is referred to autism services or receives a diagnosis of autism spectrum disorder it is not known what their potential adult outcomes could be. We consider the challenge of making predictions of an individual child's long-term multi-facetted adult outcome, focussing on which aspects are predictable and which are not.

METHODS

We used data from 123 adults participating in the Autism Early Diagnosis Cohort. Participants were recruited from age 2 and followed up repeatedly through childhood and adolescence to adulthood. We predicted 14 adult outcome measures including cognitive, behavioral and well-being measures. Continuous outcomes were modeled using lasso regression and ordinal outcomes were modeled using proportional odds regression. Optimism corrected predictive performance was calculated using cross-validation or bootstrap. We also illustrated the prediction of an overall composite formed by weighting outcome measures by priorities elicited from parents.

RESULTS

We found good predictive performance from age 9 for verbal and non-verbal IQ, and daily living skills. Predictions for symptom severity, hyperactivity and irritability improved with inclusion of behavioral data collected in adolescence but remained modest. For other outcomes covering well-being, depression, and positive and negative affect we found no ability to predict adult outcomes at any age. Predictions of composites based on parental priorities differed in magnitude and precision depending on which parts of the adult outcome were given more weight.

CONCLUSION

Verbal and non-verbal IQ, and daily living skills can be predicted well from assessments made in childhood. For other adult outcomes, it is challenging to make meaningful predictions from assessments made in childhood and adolescence using the measures employed in this study. Future work should replicate and validate the present findings in different samples, investigate whether the availability of different measures in childhood and adolescence can improve predictions, and consider systematic differences in priorities.

摘要

引言

自闭症谱系障碍是一种高度异质性的诊断。当一个孩子被转介到自闭症服务机构或被诊断为自闭症谱系障碍时,他们成年后的潜在结果是未知的。我们考虑了预测个体儿童长期多方面成年结果的挑战,重点关注哪些方面是可预测的,哪些是不可预测的。

方法

我们使用了来自123名参与自闭症早期诊断队列的成年人的数据。参与者从2岁开始招募,并在童年和青少年时期反复随访至成年。我们预测了14项成人结果指标,包括认知、行为和幸福感指标。连续结果使用套索回归建模,有序结果使用比例优势回归建模。使用交叉验证或自助法计算乐观校正预测性能。我们还展示了通过对父母提出的优先事项对结果指标进行加权而形成的总体综合指标的预测。

结果

我们发现,从9岁起,对言语和非言语智商以及日常生活技能具有良好的预测性能。纳入青少年时期收集的行为数据后,对症状严重程度、多动和易怒的预测有所改善,但仍然有限。对于其他涵盖幸福感、抑郁以及积极和消极情绪的结果,我们发现在任何年龄都无法预测成人结果。基于父母优先事项的综合指标预测在大小和精度上有所不同,这取决于成人结果的哪些部分被赋予了更大的权重。

结论

根据童年时期的评估可以很好地预测言语和非言语智商以及日常生活技能。对于其他成人结果,使用本研究中采用的测量方法,从童年和青少年时期的评估中做出有意义的预测具有挑战性。未来的工作应该在不同样本中重复和验证本研究结果,研究童年和青少年时期不同测量方法的可用性是否可以改善预测,并考虑优先事项的系统差异。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c6e6/7900001/685b20409c4e/fpsyg-12-594462-g001.jpg

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