Accurate Prediction of Children's ADHD Severity Using Family Burden Information: A Neural Lasso Approach

The deep lasso algorithm (dlasso) is introduced as a neural version of the statistical linear lasso algorithm that holds benefits from both methodologies: feature selection and automatic optimization of the parameters (including the regularization parameter). This last property makes dlasso particularly attractive for feature selection on small samples. In the two first conducted experiments, it was observed that dlasso is capable of obtaining better performance than its non-neuronal version (traditional lasso), in terms of predictive error and correct variable selection. Once that dlasso performance has been assessed, it is used to determine whether it is possible to predict the severity of symptoms in children with ADHD from four scales that measure family burden, family functioning, parental satisfaction, and parental mental health. Results show that dlasso is able to predict parents' assessment of the severity of their children's inattention from only seven items from the previous scales. These items are related to parents' satisfaction and degree of parental burden.

[1]  V. Harpin,et al.  The effect of ADHD on the life of an individual, their family, and community from preschool to adult life , 2005, Archives of Disease in Childhood.

[2]  G. Smilkstein,et al.  The family APGAR: a proposal for a family function test and its use by physicians. , 1978, The Journal of family practice.

[3]  M. P. Sánchez-López,et al.  The 12-Item General Health Questionnaire (GHQ-12): reliability, external validity and factor structure in the Spanish population. , 2008, Psicothema.

[4]  Fan Zhang,et al.  The Cluster Elastic Net for High-Dimensional Regression With Unknown Variable Grouping , 2014, Technometrics.

[5]  Ji Zhu,et al.  A ug 2 01 0 Group Variable Selection via a Hierarchical Lasso and Its Oracle Property Nengfeng Zhou Consumer Credit Risk Solutions Bank of America Charlotte , NC 28255 , 2010 .

[6]  Erik Cambria,et al.  Recent Trends in Deep Learning Based Natural Language Processing , 2017, IEEE Comput. Intell. Mag..

[7]  M. Timmerman,et al.  Predictors of discrepancies between fathers and mothers in rating behaviors of preschool children with and without ADHD , 2016, European Child & Adolescent Psychiatry.

[8]  Trevor Hastie,et al.  Regularization Paths for Generalized Linear Models via Coordinate Descent. , 2010, Journal of statistical software.

[9]  H. Zou,et al.  Regularization and variable selection via the elastic net , 2005 .

[10]  J. Friedman Fast sparse regression and classification , 2012 .

[11]  P. Emmelkamp,et al.  The association between parenting stress, depressed mood and informant agreement in ADHD and ODD. , 2006, Behaviour research and therapy.

[12]  Marc Teboulle,et al.  A Fast Iterative Shrinkage-Thresholding Algorithm for Linear Inverse Problems , 2009, SIAM J. Imaging Sci..

[13]  Niels Richard Hansen,et al.  Sparse group lasso and high dimensional multinomial classification , 2012, Comput. Stat. Data Anal..

[14]  Robert D. Nowak,et al.  Classification With the Sparse Group Lasso , 2016, IEEE Transactions on Signal Processing.

[15]  S. Zarit,et al.  Assessing family caregiver's mental health using a statistically derived cut-off score for the Zarit Burden Interview , 2006, Aging & mental health.

[16]  J. Olsen,et al.  Depression-related distortions in maternal reports of child behaviour problems , 2019, European Child & Adolescent Psychiatry.

[17]  Marc Teboulle,et al.  Gradient-based algorithms with applications to signal-recovery problems , 2010, Convex Optimization in Signal Processing and Communications.

[18]  Guigang Zhang,et al.  Deep Learning , 2016, Int. J. Semantic Comput..

[19]  Yuan Yu,et al.  TensorFlow: A system for large-scale machine learning , 2016, OSDI.

[20]  Kimberley D. Lakes,et al.  Categorical and Dimensional Definitions and Evaluations of Symptoms of ADHD: History of the SNAP and the SWAN Rating Scales. , 2012, The International journal of educational and psychological assessment.

[21]  Matti Pietikäinen,et al.  Deep Learning for Generic Object Detection: A Survey , 2018, International Journal of Computer Vision.

[22]  E. Harvey,et al.  Predictors of discrepancies between informants' ratings of preschool-aged children's behavior: An examination of ethnicity, child characteristics, and family functioning. , 2013, Early childhood research quarterly.

[23]  M. Sibley,et al.  Predictors of Informant Discrepancies Between Mother and Middle School Teacher ADHD Ratings , 2016, School mental health.

[24]  S. Gau,et al.  Relationship between parenting stress and informant discrepancies on symptoms of ADHD/ODD and internalizing behaviors in preschool children , 2017, PloS one.

[25]  S. Hinshaw,et al.  Mother–Child Relationships of Children with ADHD: The Role of Maternal Depressive Symptoms and Depression-Related Distortions , 2002, Journal of abnormal child psychology.

[26]  D. Molloy,et al.  The Zarit Burden Interview: a new short version and screening version. , 2001, The Gerontologist.

[27]  R. Lillo,et al.  An Iterative Sparse-Group Lasso , 2019, Journal of Computational and Graphical Statistics.

[28]  Noah Simon,et al.  A Sparse-Group Lasso , 2013 .

[29]  W. Iacono,et al.  Prospective effects of attention-deficit/hyperactivity disorder, conduct disorder, and sex on adolescent substance use and abuse. , 2007, Archives of general psychiatry.

[30]  V. Harpin,et al.  Long-Term Outcomes of ADHD , 2016, Journal of attention disorders.

[31]  P. Glasziou,et al.  Prevalence of Attention-De fi cit/ Hyperactivity Disorder: A Systematic Review and Meta-analysis , 2022 .

[32]  D. Lynam,et al.  ADHD Combined Type and ADHD Predominantly Inattentive Type Are Distinct and Unrelated Disorders , 2006 .

[33]  R. Tibshirani Regression Shrinkage and Selection via the Lasso , 1996 .

[34]  C. Brayne,et al.  Using the GHQ-12 to screen for mental health problems among primary care patients: psychometrics and practical considerations , 2020, International Journal of Mental Health Systems.

[35]  Weihua Zhao,et al.  Sparse group variable selection based on quantile hierarchical Lasso , 2014 .

[36]  S. Evans,et al.  Sources of Bias in Teacher Ratings of Adolescents with ADHD , 2012 .

[37]  Khaled Shaalan,et al.  Speech Recognition Using Deep Neural Networks: A Systematic Review , 2019, IEEE Access.

[38]  Jimmy Ba,et al.  Adam: A Method for Stochastic Optimization , 2014, ICLR.

[39]  Margaret Thompson,et al.  Early detection and intervention for attention-deficit/hyperactivity disorder , 2011, Expert review of neurotherapeutics.