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Accelerated Brain Aging in Schizophrenia and Beyond: a Neuroanatomical Marker of Psychiatric Disorders

Abstract

Structural brain abnormalities are central to schizophrenia (SZ), but it remains unknown whether they are linked to dysmaturational processes crossing diagnostic boundaries, aggravating across disease stages, and driving the neurodiagnostic signature of the illness. Therefore, we investigated whether patients with SZ (N = 141), major depression (MD; N = 104), borderline personality disorder (BPD; N = 57), and individuals in at-risk mental states for psychosis (ARMS; N = 89) deviated from the trajectory of normal brain maturation. This deviation was measured as difference between chronological and the neuroanatomical age (brain age gap estimation [BrainAGE]). Neuroanatomical age was determined by a machine learning system trained to individually estimate age from the structural magnetic resonance imagings of 800 healthy controls. Group-level analyses showed that BrainAGE was highest in SZ (+5.5 y) group, followed by MD (+4.0), BPD (+3.1), and the ARMS (+1.7) groups. Earlier disease onset in MD and BPD groups correlated with more pronounced BrainAGE, reaching effect sizes of the SZ group. Second, BrainAGE increased across at-risk, recent onset, and recurrent states of SZ. Finally, BrainAGE predicted both patient status as well as negative and disorganized symptoms. These findings suggest that an individually quantifiable "accelerated aging" effect may particularly impact on the neuroanatomical signature of SZ but may extend also to other mental disorders.

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References
1.
Pantelis C, Yucel M, Wood S, Velakoulis D, Sun D, Berger G . Structural brain imaging evidence for multiple pathological processes at different stages of brain development in schizophrenia. Schizophr Bull. 2005; 31(3):672-96. DOI: 10.1093/schbul/sbi034. View

2.
Koutsouleris N, Gaser C, Bottlender R, Davatzikos C, Decker P, Jager M . Use of neuroanatomical pattern regression to predict the structural brain dynamics of vulnerability and transition to psychosis. Schizophr Res. 2010; 123(2-3):175-87. DOI: 10.1016/j.schres.2010.08.032. View

3.
Korten N, Comijs H, Lamers F, Penninx B . Early and late onset depression in young and middle aged adults: differential symptomatology, characteristics and risk factors?. J Affect Disord. 2012; 138(3):259-67. DOI: 10.1016/j.jad.2012.01.042. View

4.
Noble W . What is a support vector machine?. Nat Biotechnol. 2006; 24(12):1565-7. DOI: 10.1038/nbt1206-1565. View

5.
Koutsouleris N, Patschurek-Kliche K, Scheuerecker J, Decker P, Bottlender R, Schmitt G . Neuroanatomical correlates of executive dysfunction in the at-risk mental state for psychosis. Schizophr Res. 2010; 123(2-3):160-74. DOI: 10.1016/j.schres.2010.08.026. View