
Credit: Unsplash/CC0 Public Domain
Highly accurate model uses factors across biopsychosocial domains
Conduct disorder (CD) is a common yet complex psychiatric disorder featuring aggressive and destructive behavior. Factors contributing to the development of CD span biological, psychological, and social domains. Researchers have identified a myriad of risk factors that could help predict CD, but they are often considered in isolation. Now, a new study uses a machine-learning approach for the first time to assess risk factors across all three domains in combination and predict later development of CD with high accuracy.
The study appears in Biological Psychiatry: Cognitive Neuroscience and Neuroimaging, published by Elsevier.
The researchers used baseline data from over 2,300 children aged 9 to 10 enrolled in the Adolescent Brain Cognitive Development (ABCD) Study, a longitudinal study following the biopsychosocial development of children. The researchers “trained” their machine-learning model using previously identified risk factors from across multiple biopsychosocial domains. For example, measures included brain imaging (biological), cognitive abilities (psychological), and family characteristics (social). The model correctly predicted the development of CD two years later with over 90% accuracy.
Cameron Carter, MD, Editor of Biological Psychiatry: Cognitive Neuroscience and Neuroimaging, said of the study: “These striking results using task-based functional MRI to investigate the function of the reward system suggest that risk for later depression in children of depressed mothers may depend more on mothers’ responses to their children’s emotional behavior than on the mother’s mood per se.”
The ability to accurately predict who might develop CD would aid researchers and healthcare workers in designing interventions for at-risk youth with the potential to minimize or even prevent the harmful effects of CD on children and their families.
“Findings from our study highlight the added value of combining neural, social, and psychological factors to predict conduct disorder, a burdensome psychiatric problem in youth,” said senior author Arielle Baskin-Sommers, PhD at Yale University, New Haven, CT, USA. “These findings offer promise for developing more precise identification and intervention approaches that consider the multiple factors that contribute to this disorder. They also highlight the utility of leveraging large, open-access datasets, such as ABCD, that collect measures about the individual across levels of analysis.”
Original Article: Machine learning predicts conduct disorder in kids
More from: Yale University | University of California Davis
The Latest Updates from Bing News & Google News
Go deeper with Bing News on:
Conduct disorder
- Rare Disorders NZ wants new Minister for Pharmac to act swiftly to remove Pharmac Chair
Rare Disorders NZ has today written to the new Minister for Pharmac, David Seymour, reiterating their call for the removal of Pharmac’s Chair, Steve Maharey. Rare Disorders NZ is appalled no action ...
- How addressing early signs may help arrest trend
Surge in juvenile delinquency is attributed to socio-economic conditions, family dynamics, peer influence, and mental health disorders. Conduct disorders in children, marked by aggressive behavior ...
- Past Trauma, Intermittent Explosive Disorder Could Have Led Teen To Stab Minor Boy 55 Times, Say Experts
The 16-year-old accused attacked the victim in east Delhi’s Welcome colony after being refused money to buy biryani.
- Conduct and Its Disorders, Biologically Considered - Softcover
Unlike some other reproductions of classic texts (1) We have not used OCR(Optical Character Recognition), as this leads to bad quality books with introduced typos. (2) In books where there are images ...
- Psychiatric Disorders Spike After Gun Violence
The rise in disorders that was documented in this analysis is also ... Gun deaths also disproportionately affect communities of color. Song’s team hopes to conduct future analyses with government ...
Go deeper with Google Headlines on:
Conduct disorder
[google_news title=”” keyword=”conduct disorder” num_posts=”5″ blurb_length=”0″ show_thumb=”left”]
Go deeper with Bing News on:
Predicting conduct disorder
- XRP (XRP) Price Prediction 2023, 2024, 2025–2030
According to our XRP price prediction, XRP is forecasted to trade within a price range of $ 0.618205 and $ 0.701297 this week. XRP will increase by 13.44% and reach $ 0.701297 by Dec 03, 2023 if it ...
- Race Cannot Be Used to Predict Heart Disease, Scientists Say
The American Heart Association will release a new clinical tool that removes race as a factor in predicting who will have heart attacks or strokes.
- Predicting New-Onset Psychiatric Disorders Throughout the COVID-19 Pandemic: A Machine Learning Approach.
The investigators estimated new-onset psychiatric disorders (PsyDs) throughout the COVID-19 pandemic in Italian adults without preexisting PsyDs and developed a machine learning (ML) model predictive ...
- Previous Depressive Episodes and Residual Symptoms Predict Depression Relapse
For patients on long-term maintenance antidepressants, previous depressive episodes and residual depressive symptoms were associated with a higher likelihood of relapse. Depression relapse is ...
- Conduct Disorder and Callous–Unemotional Traits in Youth
Although there has been minimal research on the long-term stability of brain dysfunction in conduct disorder, biologic markers assessed at one point in time have been shown to predict the long ...
Go deeper with Google Headlines on:
Predicting conduct disorder
[google_news title=”” keyword=”predicting conduct disorder” num_posts=”5″ blurb_length=”0″ show_thumb=”left”]