Background and aims: Clinical staff are typically poor at predicting alcohol dependence treatment outcomes. Machine learning (ML) offers the potential to model complex clinical data more effectively. This study tested the predictive accuracy of ML algorithms demonstrated to be effective in predicting alcohol dependence outcomes, compared with clinical judgement and traditional linear regression. Design: Prospective study. ML models were trained on 1016 previously treated patients (training-set) who attended a hospital-based alcohol and drug clinic. ML models (n = 27), clinical psychologists (n = 10) and a ‘traditional’ logistic regression model (n = 1) predicted treatment outcome during the initial treatment session of an alcohol dependence...
The detrimental effects of alcoholism on society have stimulated the growth of addiction treatment ...
Long abstract: Substance use disorders (SUDs) are complex, highly dimensional conditions that are in...
OBJECTIVE: Substance use disorder is a critical public health issue. Discovering the synergies among...
Background and aims: Clinical staff are typically poor at predicting alcohol dependence treatment ou...
Clinical staff are typically poor at predicting alcohol dependence treatment outcomes. Machine learn...
Background and objectives: Clinical staff providing addiction treatment predict patient outcome poor...
Background and objectives Clinical staff providing addiction treatment predict patient outcome poorl...
With few exceptions, research in the addictive sciences has relied on linear statistics and methodol...
BACKGROUND: Accurate clinical prediction supports the effective treatment of alcohol use disorder (A...
Alcohol use disorders (AUD) are very common in the developed world [1], yet only a minority of indiv...
BackgroundDigital self-help interventions for reducing the use of alcohol tobacco and other drugs (A...
Aims: Likelihood of alcohol dependence (AD) is increased among people who transition to greater leve...
Objective: Relapse rates are consistently high for stimulant user disorders. In order to obtain prog...
ObjectiveRelapse rates are consistently high for stimulant user disorders. In order to obtain progno...
Background Alcohol use disorder (AUD) is a chronic disease with a higher recurrence rate than that o...
The detrimental effects of alcoholism on society have stimulated the growth of addiction treatment ...
Long abstract: Substance use disorders (SUDs) are complex, highly dimensional conditions that are in...
OBJECTIVE: Substance use disorder is a critical public health issue. Discovering the synergies among...
Background and aims: Clinical staff are typically poor at predicting alcohol dependence treatment ou...
Clinical staff are typically poor at predicting alcohol dependence treatment outcomes. Machine learn...
Background and objectives: Clinical staff providing addiction treatment predict patient outcome poor...
Background and objectives Clinical staff providing addiction treatment predict patient outcome poorl...
With few exceptions, research in the addictive sciences has relied on linear statistics and methodol...
BACKGROUND: Accurate clinical prediction supports the effective treatment of alcohol use disorder (A...
Alcohol use disorders (AUD) are very common in the developed world [1], yet only a minority of indiv...
BackgroundDigital self-help interventions for reducing the use of alcohol tobacco and other drugs (A...
Aims: Likelihood of alcohol dependence (AD) is increased among people who transition to greater leve...
Objective: Relapse rates are consistently high for stimulant user disorders. In order to obtain prog...
ObjectiveRelapse rates are consistently high for stimulant user disorders. In order to obtain progno...
Background Alcohol use disorder (AUD) is a chronic disease with a higher recurrence rate than that o...
The detrimental effects of alcoholism on society have stimulated the growth of addiction treatment ...
Long abstract: Substance use disorders (SUDs) are complex, highly dimensional conditions that are in...
OBJECTIVE: Substance use disorder is a critical public health issue. Discovering the synergies among...