Using machine learning with passive wearable sensors to pilot the detection of eating disorder behaviors in everyday life.
Christina Ralph-NearmanLuis E Sandoval-AraujoA KaremClaire E CusackS GlattMadison A HooperC Rodriguez PenaD CohenS AllenElizabeth D CashK WelchCheri A LevinsonPublished in: Psychological medicine (2023)
This evidence suggests the ability to build idiographic ML models that detect ED behaviors from physiological indices within everyday life with a high level of accuracy. The novel use of ML with wearable sensors to detect physiological patterns of ED behavior pre-onset can lead to just-in-time clinical interventions to disrupt problematic behaviors and promote ED recovery.