A machine-learning framework for robust and reliable prediction of short- and long-term treatment response in initially antipsychotic-naïve schizophrenia patients based on multimodal neuropsychiatric data
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Egill Rostrup | Nikolaj Bak | Bob Oranje | Christos Pantelis | L. K. Hansen | Søren R. Christensen | Lars Arvastson | Karen S. Ambrosen | Martin W. Skjerbæk | Jonathan Foldager | Martin C. Axelsen | Louise B. Johansen | Jayachandra M. Raghava | Mette Ø. Nielsen | Merete Osler | Birgitte Fagerlund | Bruce J. Kinon | Birte Y. Glenthøj | Lars K. Hansen | Bjørn H. Ebdrup | E. Rostrup | C. Pantelis | M. Osler | B. Glenthøj | B. Oranje | B. Fagerlund | S. Christensen | B. Kinon | B. Ebdrup | L. Arvastson | M. Nielsen | N. Bak | J. Raghava | K. Ambrosen | L. B. Johansen | Jonathan Foldager | M. C. Axelsen
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