Abstract

Just-in-time adaptive interventions (JITAIs), typically smartphone apps, learn to deliver therapeutic content when users need it. The challenge is to “push” content at algorithmically chosen moments without making users trigger it with effortful input. We trained a randomForest algorithm to predict heroin craving, cocaine craving, or stress (reported via smartphone app 3x/day) 90 min into the future, using 16 weeks of field data from 189 outpatients being treated for opioid-use disorder. We used only one form of continuous input (along with person-level demographic data), collected passively: an indicator of environmental exposures along the past 5 h of movement, as assessed by GPS. Our models achieved excellent overall accuracy—as high as 0.93 by the end of 16 weeks of tailoring—but this was driven mostly by correct predictions of absence. For predictions of presence, “believability” (positive predictive value, PPV) usually peaked in the high 0.70s toward the end of the 16 weeks. When the prediction target was more rare, PPV was lower. Our findings complement those of other investigators who use machine learning with more broadly based “digital phenotyping” inputs to predict or detect mental and behavioral events. When target events are comparatively subtle, like stress or drug craving, accurate detection or prediction probably needs effortful input from users, not passive monitoring alone. We discuss ways in which accuracy is difficult to achieve or even assess, and warn that high overall accuracy (including high specificity) can mask the abundance of false alarms that low PPV reveals.

Highlights

  • “Digital medicine” has many meanings, but one of the most exciting is the prospect of treating chronic disorders with just-intime adaptive interventions (JITAIs).[1,2] JITAIs, which currently exist in various stages of development and validation, are mobile treatments that learn to deliver therapeutic content exactly when patients need it

  • In our pilot geographical momentary assessment (GMA) study, with 27 outpatients undergoing methadone maintenance for opioid-use disorder (OUD), we found that craving, stress, and mood were predicted by the past 5 h of exposure to visible signs of environmental disorder along a GPSderived track.[5] (The direction of the relationship was not always as we expected it to be, but, that finding is heuristically important, it is not relevant for case-by-case prediction, so we do not discuss it further here)

  • We focused on craving for cocaine as well as illicit opioids because, of the nonopioid drugs commonly used by people with OUD during treatment, cocaine is especially common and problematic.[17,18]

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Summary

Introduction

“Digital medicine” has many meanings, but one of the most exciting is the prospect of treating chronic disorders with just-intime adaptive interventions (JITAIs).[1,2] JITAIs, which currently exist in various stages of development and validation, are mobile treatments that learn to deliver therapeutic content exactly when patients need it. In our pilot GMA study, with 27 outpatients undergoing methadone maintenance for opioid-use disorder (OUD), we found that craving, stress, and mood were predicted by the past 5 h of exposure to visible signs of environmental disorder along a GPSderived track.[5] (The direction of the relationship was not always as we expected it to be, but, that finding is heuristically important, it is not relevant for case-by-case prediction, so we do not discuss it further here) For those analyses, we used traditional inferential statistics—multilevel models that assess overall associations in whole samples and subgroups. In each 0.47 with just one week of tailoring, and reaching 0.56 at week 8

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