Literature DB >> 32405822

Leveraging Machine Learning to Identify Predictors of Receiving Psychosocial Treatment for Attention Deficit/Hyperactivity Disorder.

Anne S Morrow1,2,3, Alexandro D Campos Vega4, Xin Zhao5,6, Michelle M Liriano5.   

Abstract

This study aimed to identify factors associated with receiving psychosocial treatment for ADHD in a nationally representative sample. Participants were 6630 youth with a parent-reported diagnosis of ADHD from the 2016-2017 National Survey of Children's Health. Machine learning analyses were performed to identify factors associated with receipt of psychosocial treatment for ADHD. We examined potentially associated factors in the broad categories of variables hypothesized to affect problem recognition (e.g., severity, mental health comorbidities); the decision to seek treatment; service selection (e.g., insurance coverage) and service use. We found that three machine learning models unanimously identified parent-reported ADHD severity (mild vs. moderate/severe) as the factor that best distinguishes between children who receive psychosocial treatment for ADHD and those who do not. Receive operating characteristic curve analysis revealed the following model performance: classification and regression tree analysis (area under the curve; AUC = .68); an ensemble model (AUC = .71); and a deep, multi-layer neural network (AUC = .72), as well as comparison to a logistic regression model (AUC = .69). Further, insurance coverage of mental/behavioral health needs emerged as a salient factor associated with the receipt of psychosocial treatment. Machine learning models identified risk and protective factors that predicted the receipt of psychosocial treatment for ADHD, such as ADHD severity and health insurance coverage.

Entities:  

Keywords:  ADHD; Health insurance coverage; Machine learning; National sample; Predictors; Psychosocial treatment

Year:  2020        PMID: 32405822     DOI: 10.1007/s10488-020-01045-y

Source DB:  PubMed          Journal:  Adm Policy Ment Health        ISSN: 0894-587X


  17 in total

1.  Prevalence and Characteristics of School Services for High School Students with Attention-Deficit/Hyperactivity Disorder.

Authors:  Desiree W Murray; Brooke S G Molina; Kelly Glew; Patricia Houck; Andrew Greiner; Dalea Fong; James Swanson; L Eugene Arnold; Marc Lerner; Lily Hechtman; Howard B Abikoff; Peter S Jensen
Journal:  School Ment Health       Date:  2014-12-01

2.  The use of machine learning in the study of suicidal and non-suicidal self-injurious thoughts and behaviors: A systematic review.

Authors:  Taylor A Burke; Brooke A Ammerman; Ross Jacobucci
Journal:  J Affect Disord       Date:  2018-11-12       Impact factor: 4.839

3.  Prevalence of Parent-Reported ADHD Diagnosis and Associated Treatment Among U.S. Children and Adolescents, 2016.

Authors:  Melissa L Danielson; Rebecca H Bitsko; Reem M Ghandour; Joseph R Holbrook; Michael D Kogan; Stephen J Blumberg
Journal:  J Clin Child Adolesc Psychol       Date:  2018-01-24

4.  A Latent Class Analysis to Identify Variation in Caregivers' Preferences for their Child's Attention-Deficit/Hyperactivity Disorder Treatment: Do Stated Preferences Match Current Treatment?

Authors:  Xinyi Ng; John F P Bridges; Melissa M Ross; Emily Frosch; Gloria Reeves; Charles E Cunningham; Susan dosReis
Journal:  Patient       Date:  2017-04       Impact factor: 3.883

5.  Predictors of Receipt of School Services in a National Sample of Youth With ADHD.

Authors:  George J DuPaul; Andrea Chronis-Tuscano; Melissa L Danielson; Susanna N Visser
Journal:  J Atten Disord       Date:  2018-12-10       Impact factor: 3.256

6.  Service Utilization among ethnic minority children with ADHD: a model of help-seeking behavior.

Authors:  Ricardo B Eiraldi; Laurie B Mazzuca; Angela T Clarke; Thomas J Power
Journal:  Adm Policy Ment Health       Date:  2006-09

7.  Young adult educational and vocational outcomes of children diagnosed with ADHD.

Authors:  Aparajita B Kuriyan; William E Pelham; Brooke S G Molina; Daniel A Waschbusch; Elizabeth M Gnagy; Margaret H Sibley; Dara E Babinski; Christine Walther; Jeewon Cheong; Jihnhee Yu; Kristine M Kent
Journal:  J Abnorm Child Psychol       Date:  2013-01

8.  The relationship between human smoking habits and death rates: a follow-up study of 187,766 men.

Authors:  E C HAMMOND; D HORN
Journal:  J Am Med Assoc       Date:  1954-08-07

9.  Predicting Methylphenidate Response in ADHD Using Machine Learning Approaches.

Authors:  Jae-Won Kim; Vinod Sharma; Neal D Ryan
Journal:  Int J Neuropsychopharmacol       Date:  2015-05-10       Impact factor: 5.176

10.  Delivering Cognitive Behavior Therapy to Young Adults With Symptoms of Depression and Anxiety Using a Fully Automated Conversational Agent (Woebot): A Randomized Controlled Trial.

Authors:  Kathleen Kara Fitzpatrick; Alison Darcy; Molly Vierhile
Journal:  JMIR Ment Health       Date:  2017-06-06
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  3 in total

1.  Mental Health Information Seeking Online: A Google Trends Analysis of ADHD.

Authors:  Xin Zhao; Stefany J Coxe; Adela C Timmons; Stacy L Frazier
Journal:  Adm Policy Ment Health       Date:  2021-09-22

Review 2.  A Review of Predictors of Psychosocial Service Utilization in Youth with Attention-Deficit/Hyperactivity Disorder.

Authors:  Cathrin D Green; Joshua M Langberg
Journal:  Clin Child Fam Psychol Rev       Date:  2021-09-08

3.  Festschrift for Leonard Bickman: Introduction to The Future of Children's Mental Health Services Special Issue.

Authors:  Sonja K Schoenwald; Catherine P Bradshaw; Kimberly Eaton Hoagwood; Marc S Atkins; Nicholas Ialongo; Susan R Douglas
Journal:  Adm Policy Ment Health       Date:  2020-09
  3 in total

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