Leveraging Predictive Analytics Within Social Networks to Maximize Drug and Alcohol Treatment Efficacy and Relapse Prevention
Sober Grid, Inc., Cleveland OH
Investigators
Linked publications & trials
Abstract
Sober Grid has built a smartphone-based, recovery-focused social network already in use by 50,297 recovering addicts and 13 addiction treatment facilities to help users achieve better health outcomes and reduce rates of relapse. The goal of this phase I SBIR study is to determine the feasibility of leveraging predictive analytics within the context of an addiction recovery focused social network to enable the system to identify users who are in need of support before they relapse. The specific aim is to assess the feasibility of using predictive modeling to identify those most vulnerable to relapse in order to advance phase II efforts. Sober Grid will work with a team of addiction researchers including co-investigator Dr. Brenda Curtis, Assistant Professor at the Perlman School of Medicine at the University of Pennsylvania (U Penn), and consultant Dr. Warren Bickel, Director of Addiction Recovery Research Center and Professor of Psychiatry and Behavioral Medicine at the Virginia Tech Carilion School of Medicine (and Sober Grid advisor), to compile a database of known triggers (e.g., life stressors, environment/life changes, etc.), words and phrases, topics and lexica associated with relapse. The team will mine the data in order to identify the factors that correspond with relapse measures (e.g., change in sobriety status, content indicative of relapse, etc.) and employ supervised learning through support vector networks with labeled data as well as unsupervised learning through support vector clustering to identify patterns indicative of relapse within our unlabeled data. The team will build models on a training data set and assess them for prediction accuracy. Understanding the feasibility of mobile-based predictive capabilities and integrating the real-time adaptive interventions proposed shows significant potential for reducing relapse rates in populations regardless of whether they have attended treatment programs. These capabilities will not only increase treatment efficacy, they will also help to reduce overall costs within the healthcare system, including the Veteran?s Administration, and relieve pressure on already overburdened clinicians ? a significant commercial opportunity for Sober Grid.
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