Florida International University, United States.
Florida International University, United States.
Dev Cogn Neurosci. 2021 Jun;49:100966. doi: 10.1016/j.dcn.2021.100966. Epub 2021 May 21.
Given the negative trajectories of early behavior problems associated with ADHD, early diagnosis is considered critical to enable intervention and treatment. To this end, the current investigation employed machine learning to evaluate the relative predictive value of parent/teacher ratings, behavioral and neural measures of executive function (EF) in predicting ADHD in a sample consisting of 162 young children (ages 4-7, mean age 5.55, 82.6 % Hispanic/Latino). Among the target measures, teacher ratings of EF were the most predictive of ADHD. While a more extensive evaluation of neural measures, such as diffusion-weighted imaging, may provide more information as they relate to the underlying cognitive deficits associated with ADHD, the current study indicates that measures of cortical anatomy obtained in research studies, as well cognitive measures of EF often obtained in routine assessments, have little incremental value in differentiating typically developing children from those diagnosed with ADHD. It is important to note that the overlap between some of the EF questions in the BRIEF, and the ADHD symptoms could be enhancing this effect. Thus, future research evaluating the importance of such measures in predicting children's functional impairment in academic and social areas would provide additional insight into their contributing role in ADHD.
鉴于与 ADHD 相关的早期行为问题的负面轨迹,早期诊断被认为是至关重要的,以实现干预和治疗。为此,本研究采用机器学习来评估父母/教师评分、行为和执行功能(EF)的神经测量在预测 ADHD 方面的相对预测价值,该研究样本包括 162 名幼儿(年龄 4-7 岁,平均年龄 5.55 岁,82.6%为西班牙裔/拉丁裔)。在目标测量中,教师对 EF 的评价最能预测 ADHD。虽然更广泛地评估神经测量,如弥散加权成像,可以提供更多与 ADHD 相关的潜在认知缺陷相关的信息,但本研究表明,在研究中获得的皮质解剖学测量值,以及在常规评估中经常获得的 EF 认知测量值,在区分正常发育的儿童和被诊断为 ADHD 的儿童方面几乎没有额外的价值。需要注意的是,BRIEF 中的一些 EF 问题与 ADHD 症状之间的重叠可能会增强这种效果。因此,未来评估这些措施在预测儿童在学术和社会领域的功能障碍方面的重要性的研究,将为它们在 ADHD 中的作用提供更多的见解。