Lutz, WolfgangWolfgangLutzArndt, AliceAliceArndtRubel, JulianJulianRubelBerger, ThomasThomasBerger0000-0002-2432-7791Schröder, JohannaJohannaSchröderSpäth, ChristinaChristinaSpäthMeyer, BjörnBjörnMeyerGreiner, WolfgangWolfgangGreinerGräfe, ViolaViolaGräfeHautzinger, MartinMartinHautzingerFuhr, KristinaKristinaFuhrRose, MatthiasMatthiasRoseNolte, SandraSandraNolteLöwe, BerndBerndLöweHohagen, FritzFritzHohagenKlein, Jan PhilippJan PhilippKleinMoritz, SteffenSteffenMoritz2024-10-252024-10-252017https://boris-portal.unibe.ch/handle/20.500.12422/159787BACKGROUND: Web-based interventions for individuals with depressive disorders have been a recent focus of research and may be an effective adjunct to face-to-face psychotherapy or pharmacological treatment. OBJECTIVE: The aim of our study was to examine the early change patterns in Web-based interventions to identify differential effects. METHODS: We applied piecewise growth mixture modeling (PGMM) to identify different latent classes of early change in individuals with mild-to-moderate depression (n=409) who underwent a CBT-based web intervention for depression. RESULTS: Overall, three latent classes were identified (N=409): Two early response classes (n=158, n=185) and one early deterioration class (n=66). Latent classes differed in terms of outcome (P<.001) and adherence (P=.03) in regard to the number of modules (number of modules with a duration of at least 10 minutes) and the number of assessments (P<.001), but not in regard to the overall amount of time using the system. Class membership significantly improved outcome prediction by 24.8% over patient intake characteristics (P<.001) and significantly added to the prediction of adherence (P=.04). CONCLUSIONS: These findings suggest that in Web-based interventions outcome and adherence can be predicted by patterns of early change, which can inform treatment decisions and potentially help optimize the allocation of scarce clinical resources.en100 - Philosophy::150 - Psychology600 - Technology::610 - Medicine & healthDefining and Predicting Patterns of Early Response in a Web-Based Intervention for Depressionarticle10.7892/boris.1135542860027810.2196/jmir.7367