Trajectory Analysis for Identifying Classes of Attention Deficit Hyperactivity Disorder (ADHD) in Children of the United States.

Q2 Medicine Clinical Practice and Epidemiology in Mental Health Pub Date : 2024-05-21 eCollection Date: 2024-01-01 DOI:10.2174/0117450179298863240516070510
Yu-Sheng Lee, Matthew Evan Sprong, Junu Shrestha, Matthew P Smeltzer, Heaven Hollender
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Abstract

Background: Attention Deficit Hyperactivity Disorder (ADHD) is a mental health disorder that affects attention and behavior. People with ADHD frequently encounter challenges in social interactions, facing issues, like social rejection and difficulties in interpersonal relationships, due to their inattention, impulsivity, and hyperactivity.

Methods: A National Longitudinal Survey of Youth (NLSY) database was employed to identify patterns of ADHD symptoms. The children who were born to women in the NLSY study between 1986 and 2014 were included. A total of 1,847 children in the NLSY 1979 cohort whose hyperactivity/inattention score was calculated when they were four years old were eligible for this study. A trajectory modeling method was used to evaluate the trajectory classes. Sex, baseline antisocial score, baseline anxiety score, and baseline depression score were adjusted to build the trajectory model. We used stepwise multivariate logistic regression models to select the risk factors for the identified trajectories.

Results: The trajectory analysis identified six classes for ADHD, including (1) no sign class, (2) few signs since preschool being persistent class, (3) few signs in preschool but no signs later class, (4) few signs in preschool that magnified in elementary school class, (5) few signs in preschool that diminished later class, and (6) many signs since preschool being persistent class. The sensitivity analysis resulted in a similar trajectory pattern, except for the few signs since preschool that magnified later class. Children's race, breastfeeding status, headstrong score, immature dependent score, peer conflict score, educational level of the mother, baseline antisocial score, baseline anxious/depressed score, and smoking status 12 months prior to the birth of the child were found to be risk factors in the ADHD trajectory classes.

Conclusion: The trajectory classes findings obtained in the current study can (a) assist a researcher in evaluating an intervention (or combination of interventions) that best decreases the long-term impact of ADHD symptoms and (b) allow clinicians to better assess as to which class a child with ADHD belongs so that appropriate intervention can be employed.

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用于识别美国儿童注意力缺陷多动障碍 (ADHD) 类别的轨迹分析。
背景介绍注意力缺陷多动障碍(ADHD)是一种影响注意力和行为的精神疾病。由于注意力不集中、冲动和多动,ADHD 患者经常在社会交往中遇到挑战,面临社会排斥和人际关系困难等问题:方法:采用全国青少年纵向调查(NLSY)数据库来确定多动症症状的模式。研究对象包括1986年至2014年间参与NLSY研究的女性所生子女。在 NLSY 1979 年的队列中,共有 1847 名儿童在四岁时被计算出多动/注意力不集中得分,他们符合本研究的条件。研究采用轨迹建模法对轨迹等级进行评估。在建立轨迹模型时,对性别、基线反社会得分、基线焦虑得分和基线抑郁得分进行了调整。我们使用逐步多元逻辑回归模型来选择已确定轨迹的风险因素:轨迹分析确定了多动症的六个等级,包括:(1)无征兆等级;(2)自学龄前起征兆较少,但持续存在等级;(3)学龄前征兆较少,但后期无征兆等级;(4)学龄前征兆较少,但在小学阶段征兆扩大;(5)学龄前征兆较少,但后期征兆减少;以及(6)自学龄前起征兆较多,但持续存在等级。敏感性分析得出了类似的轨迹模式,除了从学前班开始出现的少数体征会在后来的班级中放大。儿童的种族、母乳喂养状况、任性评分、不成熟依赖评分、同伴冲突评分、母亲的教育水平、基线反社会评分、基线焦虑/抑郁评分以及孩子出生前12个月的吸烟状况被认为是多动症轨迹等级的风险因素:本研究获得的轨迹分级结果可以(a)帮助研究人员评估最能减少多动症症状长期影响的干预措施(或干预措施组合);(b)让临床医生更好地评估多动症儿童属于哪个分级,以便采取适当的干预措施。
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来源期刊
Clinical Practice and Epidemiology in Mental Health
Clinical Practice and Epidemiology in Mental Health Medicine-Psychiatry and Mental Health
CiteScore
5.30
自引率
0.00%
发文量
17
期刊介绍: Clinical Practice & Epidemiology in Mental Health is an open access online journal, which publishes Research articles, Reviews, Letters in all areas of clinical practice and epidemiology in mental health covering the following topics: Clinical and epidemiological research in psychiatry and mental health; diagnosis, prognosis and treatment of mental health conditions; and frequencies and determinants of mental health conditions in the community and the populations at risk; research and economic aspects of psychiatry, with special attention given to manuscripts presenting new results and methods in the area; and clinical epidemiologic investigation of pharmaceutical agents. Clinical Practice & Epidemiology in Mental Health, a peer reviewed journal, aims to provide the most complete and reliable source of information on current developments in the field. The emphasis will be on publishing quality articles rapidly and freely available worldwide.
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