根据经验得出注意力缺陷/多动障碍成人患者的症状特征:无监督机器学习法

IF 1.4 4区 心理学 Q4 CLINICAL NEUROLOGY
Violeta J Rodriguez, John-Christopher A Finley, Qimin Liu, Demy Alfonso, Karen S Basurto, Alison Oh, Amanda Nili, Katherine C Paltell, Jennifer K Hoots, Gabriel P Ovsiew, Zachary J Resch, Devin M Ulrich, Jason R Soble
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引用次数: 0

摘要

背景:注意力缺陷/多动障碍(ADHD)伴有各种认知、行为和情绪症状,使诊断和治疗变得复杂。这些症状的异质性也可能因某些社会人口因素而异。因此,在多动症患者中建立更加同质化的症状谱并确定其与患者社会人口构成的关联非常重要。目前的研究使用无监督机器学习来识别成人多动症患者的各种认知、行为和情绪症状。然后研究了症状特征是否因相关的社会人口因素而有所不同:研究对象为 382 名因多动症而接受神经心理学评估的成年门诊患者(62% 为女性;51% 为非西班牙裔白人):结果:通过高斯混合模型,我们在成人多动症患者中发现了两种不同的症状特征:"ADHD-加症状特征 "和 "ADHD-主症状特征"。这些症状特征主要由内化性精神病理学(Cohen's d = 1.94-2.05)区分,而不是由多动症的主观行为和认知症状或神经认知测试成绩区分。在126名接受相同评估的无多动症成人子集中,无监督机器学习算法仅识别出一种症状特征。分组比较分析表明,女性患者最有可能出现ADHD-Plus症状特征(χ2 = 5.43,p < .001):本研究中使用的机器学习技术似乎是阐明综合 ADHD 评估中出现的症状特征的有效方法。这些发现进一步强调了在对成人多动症进行诊断和治疗时考虑内化症状和患者性别的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirically derived symptom profiles in adults with attention-Deficit/hyperactivity disorder: An unsupervised machine learning approach.

Background: Attention-deficit/hyperactivity disorder (ADHD) is associated with various cognitive, behavioral, and mood symptoms that complicate diagnosis and treatment. The heterogeneity of these symptoms may also vary depending on certain sociodemographic factors. It is therefore important to establish more homogenous symptom profiles in patients with ADHD and determine their association with the patient's sociodemographic makeup. The current study used unsupervised machine learning to identify symptom profiles across various cognitive, behavioral, and mood symptoms in adults with ADHD. It was then examined whether symptom profiles differed based on relevant sociodemographic factors.

Methods: Participants were 382 adult outpatients (62% female; 51% non-Hispanic White) referred for neuropsychological evaluation for ADHD.

Results: Employing Gaussian Mixture Modeling, we identified two distinct symptom profiles in adults with ADHD: "ADHD-Plus Symptom Profile" and "ADHD-Predominate Symptom Profile." These profiles were primarily differentiated by internalizing psychopathology (Cohen's d = 1.94-2.05), rather than by subjective behavioral and cognitive symptoms of ADHD or neurocognitive test performance. In a subset of 126 adults without ADHD who were referred for the same evaluation, the unsupervised machine learning algorithm only identified one symptom profile. Group comparison analyses indicated that female patients were most likely to present with an ADHD-Plus Symptom Profile (χ2 = 5.43, p < .001).

Conclusion: The machine learning technique used in this study appears to be an effective way to elucidate symptom profiles emerging from comprehensive ADHD evaluations. These findings further underscore the importance of considering internalizing symptoms and patients' sex when contextualizing adult ADHD diagnosis and treatment.

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来源期刊
Applied Neuropsychology-Adult
Applied Neuropsychology-Adult CLINICAL NEUROLOGY-PSYCHOLOGY
CiteScore
4.50
自引率
11.80%
发文量
134
期刊介绍: pplied Neuropsychology-Adult publishes clinical neuropsychological articles concerning assessment, brain functioning and neuroimaging, neuropsychological treatment, and rehabilitation in adults. Full-length articles and brief communications are included. Case studies of adult patients carefully assessing the nature, course, or treatment of clinical neuropsychological dysfunctions in the context of scientific literature, are suitable. Review manuscripts addressing critical issues are encouraged. Preference is given to papers of clinical relevance to others in the field. All submitted manuscripts are subject to initial appraisal by the Editor-in-Chief, and, if found suitable for further considerations are peer reviewed by independent, anonymous expert referees. All peer review is single-blind and submission is online via ScholarOne Manuscripts.
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