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izvor podataka: crosbi

Borderline and depression: A thin EEG line (CROSBI ID 327956)

Prilog u časopisu | ostalo | međunarodna recenzija

Vukojević, Jakša ; Mulc, Damir ; Kinder, Ivana ; Jovičić, Eda ; Friganović, Krešimir ; Savić, Aleksandar ; Cifrek, Mario ; Vidović, Domagoj Borderline and depression: A thin EEG line // Clinical eeg and neuroscience, (2021), doi: 10.1177/15500594211060830

Podaci o odgovornosti

Vukojević, Jakša ; Mulc, Damir ; Kinder, Ivana ; Jovičić, Eda ; Friganović, Krešimir ; Savić, Aleksandar ; Cifrek, Mario ; Vidović, Domagoj

engleski

Borderline and depression: A thin EEG line

In everyday clinical practice, there is an ongoing debate about the nature of major depressive disorder (MDD) in patients with borderline personality disorder (BPD). The underlying research does not give us a clear distinction between those 2 entities, although depression is among the most frequent comorbid diagnosis in borderline personality patients. The notion that depression can be a distinct disorder but also a symptom in other psychopathologies led our team to try and delineate those 2 entities using 146 EEG recordings and machine learning. The utilized algorithms, developed solely for this purpose, could not differentiate those 2 entities, meaning that patients suffering from MDD did not have significantly different EEG in terms of patients diagnosed with MDD and BPD respecting the given data and methods used. By increasing the data set and the spatiotemporal specificity, one could have a more sensitive diagnostic approach when using EEG recordings. To our knowledge, this is the first study that used EEG recordings and advanced machine learning techniques and further confirmed the close interrelationship between those 2 entities.

EEG ; machine learning ; biomarker ; BPD ; MDD ; depression

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Podaci o izdanju

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2021.

rani pristup (online first)

1550-0594

2169-5202

10.1177/15500594211060830

Povezanost rada

Kliničke medicinske znanosti, Kognitivna znanost (prirodne, tehničke, biomedicina i zdravstvo, društvene i humanističke znanosti), Računarstvo

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