BACKGROUND: Early recovery of functioning is critical for favorable outcomes in psychotic and affective disorders. Transdiagnostic brain activity patterns may capture pathways for poor outcomes before clinical manifestation, thereby supporting timely prevention and intervention. METHODS: Using machine learning, we evaluated the transdiagnostic prognostic value of resting-state functional magnetic resonance imaging fractional amplitude of low-frequency fluctuations (fALFF) (slow-5 and slow-4 sub- bands) for functional outcomes in patients at clinical high risk for psychosis (n = 217) or with recent-onset depression (n = 198) from the multisite PRONIA (Prognostic Tools for Early Psychosis Management) study. Leave- site-out cross-validation assessed the geographic generalizability of models across disability and symptom domains, with outcomes defined as snapshots at 9- or 18-month follow-up or across both time points. We examined diagnosis-specific performance, generalization to recent-onset psychosis (n = 140), and negative symptoms and the added value of fALFF over clinical prognostication. RESULTS: Transdiagnostic models predicting stable good functioning across follow-ups showed up to 10% higher balanced accuracy (BAC) than snapshot models. Decreased slow-5 fALFFs in the default mode network, executive control network (ECN), and dorsal attentional network (DAN) and increased fALFF in the salience network, ECN, and DAN predicted impairment with BAC = 67% (sensitivity = 65%, specificity = 70%, p , .001). This model generalized to recent-onset psychosis (BAC = 62%, sensitivity = 64%, specificity = 59%, p , .001) and predicted (BAC = 65%, sensitivity = 66%, specificity = 65%, p , .001) and was mediated by negative symptoms. Slow-5–based models improved prognostic accuracy over expert ratings in disability (BACraters = 66%, BACraters1slow-5 = 75%, W = 1680, p , .001) and symptom (BACraters = 61%, BACraters1slow-5 = 71%, W = 1444, p , .001) domains. CONCLUSIONS: We highlighted the prognostic value of fALFF for functional impairment in psychosis risk and early depression. Leveraging trajectorial information, we identified candidate imaging biomarkers to improve prognosti- cation, thereby supporting personalized prevention and recovery strategies.
From Snapshots to Stable Outcomes: Resting-State Functional Magnetic Resonance Imaging–Based Prognosis of Functioning in Patients With Psychosis Risk or Recent-Onset Depression / M. Buciuman, S.S. Haas, L.A. Antonucci, E. Sarisik, A. Khuntia, T. Lichtenstein, M. Rosen, J. Kambeitz, C. Pantelis, R. Lencer, A. Bertolino, P. Brambilla, R. Upthegrove, S.J. Wood, P. Falkai, A. Riecher-Rössler, S. Ruhrmann, F. Schultze-Lutter, E. Meisenzahl, J. Hietala, R.K.R. Salokangas, S. Borgwardt, D.B. Dwyer, L. Kambeitz-Ilankovic, N. Koutsouleris. - In: BIOLOGICAL PSYCHIATRY. - ISSN 0006-3223. - 99:8(2026 Apr 15), pp. 692-705. [10.1016/j.biopsych.2025.07.003]
From Snapshots to Stable Outcomes: Resting-State Functional Magnetic Resonance Imaging–Based Prognosis of Functioning in Patients With Psychosis Risk or Recent-Onset Depression
P. Brambilla;
2026
Abstract
BACKGROUND: Early recovery of functioning is critical for favorable outcomes in psychotic and affective disorders. Transdiagnostic brain activity patterns may capture pathways for poor outcomes before clinical manifestation, thereby supporting timely prevention and intervention. METHODS: Using machine learning, we evaluated the transdiagnostic prognostic value of resting-state functional magnetic resonance imaging fractional amplitude of low-frequency fluctuations (fALFF) (slow-5 and slow-4 sub- bands) for functional outcomes in patients at clinical high risk for psychosis (n = 217) or with recent-onset depression (n = 198) from the multisite PRONIA (Prognostic Tools for Early Psychosis Management) study. Leave- site-out cross-validation assessed the geographic generalizability of models across disability and symptom domains, with outcomes defined as snapshots at 9- or 18-month follow-up or across both time points. We examined diagnosis-specific performance, generalization to recent-onset psychosis (n = 140), and negative symptoms and the added value of fALFF over clinical prognostication. RESULTS: Transdiagnostic models predicting stable good functioning across follow-ups showed up to 10% higher balanced accuracy (BAC) than snapshot models. Decreased slow-5 fALFFs in the default mode network, executive control network (ECN), and dorsal attentional network (DAN) and increased fALFF in the salience network, ECN, and DAN predicted impairment with BAC = 67% (sensitivity = 65%, specificity = 70%, p , .001). This model generalized to recent-onset psychosis (BAC = 62%, sensitivity = 64%, specificity = 59%, p , .001) and predicted (BAC = 65%, sensitivity = 66%, specificity = 65%, p , .001) and was mediated by negative symptoms. Slow-5–based models improved prognostic accuracy over expert ratings in disability (BACraters = 66%, BACraters1slow-5 = 75%, W = 1680, p , .001) and symptom (BACraters = 61%, BACraters1slow-5 = 71%, W = 1444, p , .001) domains. CONCLUSIONS: We highlighted the prognostic value of fALFF for functional impairment in psychosis risk and early depression. Leveraging trajectorial information, we identified candidate imaging biomarkers to improve prognosti- cation, thereby supporting personalized prevention and recovery strategies.| File | Dimensione | Formato | |
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