Objective: Relapse rates are consistently high for stimulant user disorders. In order to obtain prognostic information about individuals in treatment, machine learning models have been applied to neuroimaging and clinical data. Yet few efforts have been made to test these models in independent samples or show that they can outperform linear models. In this exploratory study, we examine whether machine learning models relative to linear models provide greater predictive accuracy and less overfitting. Method: This longitudinal study included 63 methamphetamine-dependent (training sample) and 29 cocaine-dependent (test sample) individuals who completed an MRI scan during residential treatment. Linear and machine learning models predicting rela...
In this paper, we used two approaches to examine predictors of relapse to methamphetamine use follow...
Drug abuse has become so paramount among members of society. Although, the initial decision to take ...
Functional magnetic resonance imaging (fMRI) has become one of the most widely used noninvasive neur...
ObjectiveRelapse rates are consistently high for stimulant user disorders. In order to obtain progno...
Methamphetamine use disorder is associated with a high likelihood of relapse. Identifying robust pre...
BackgroundNearly half of individuals with substance use disorders relapse in the year after treatmen...
Background and objectives Clinical staff providing addiction treatment predict patient outcome poorl...
Background and objectives: Clinical staff providing addiction treatment predict patient outcome poor...
Clinical staff are typically poor at predicting alcohol dependence treatment outcomes. Machine learn...
Background and aims: Clinical staff are typically poor at predicting alcohol dependence treatment ou...
Delineating the processes that contribute to the progression and maintenance of substance dependence...
Long abstract: Substance use disorders (SUDs) are complex, highly dimensional conditions that are in...
Background: Identifying objective and accurate markers of cocaine dependence (CD) can innovate its p...
One of the major challenges in addiction treatment is relapse prevention, as rates of relapse follow...
Identifying predictive brain structure features in alcohol dependent subjects Sage Hahn, Nicholas Al...
In this paper, we used two approaches to examine predictors of relapse to methamphetamine use follow...
Drug abuse has become so paramount among members of society. Although, the initial decision to take ...
Functional magnetic resonance imaging (fMRI) has become one of the most widely used noninvasive neur...
ObjectiveRelapse rates are consistently high for stimulant user disorders. In order to obtain progno...
Methamphetamine use disorder is associated with a high likelihood of relapse. Identifying robust pre...
BackgroundNearly half of individuals with substance use disorders relapse in the year after treatmen...
Background and objectives Clinical staff providing addiction treatment predict patient outcome poorl...
Background and objectives: Clinical staff providing addiction treatment predict patient outcome poor...
Clinical staff are typically poor at predicting alcohol dependence treatment outcomes. Machine learn...
Background and aims: Clinical staff are typically poor at predicting alcohol dependence treatment ou...
Delineating the processes that contribute to the progression and maintenance of substance dependence...
Long abstract: Substance use disorders (SUDs) are complex, highly dimensional conditions that are in...
Background: Identifying objective and accurate markers of cocaine dependence (CD) can innovate its p...
One of the major challenges in addiction treatment is relapse prevention, as rates of relapse follow...
Identifying predictive brain structure features in alcohol dependent subjects Sage Hahn, Nicholas Al...
In this paper, we used two approaches to examine predictors of relapse to methamphetamine use follow...
Drug abuse has become so paramount among members of society. Although, the initial decision to take ...
Functional magnetic resonance imaging (fMRI) has become one of the most widely used noninvasive neur...