12. CHARACTERIZING SEVERITY-BASED DEPRESSION SUBTYPES USING ELECTRONIC HEALTH RECORDS AND MACHINE LEARNING IN THE ESTONIAN BIOBANK
Siim Kurvits(University of Tartu), Kelli Lehto(University of Tartu), Toomas Haller(University of Tartu), Lili Milani(University of Tartu), Anu Reigo(University of Tartu), Hanna Maria Kariis(University of Tartu), Elis Haan(Vilnius College of Design), Urmo Võsa(University Medical Center Groningen), Tuuli Sedman(Tartu University Hospital)
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