Thinner cortex is associated with psychosis onset in individuals at Clinical High Risk for Developing Psychosis: An ENIGMA Working Group mega-analysis

Abstract Importance: The ENIGMA clinical high risk for psychosis (CHR) initiative, the largest pooled CHR-neuroimaging sample to date, aims to discover robust neurobiological markers of psychosis risk in a sample with known heterogeneous outcomes. Objective: We investigated baseline structural neuroimaging differences between CHR subjects and healthy controls (HC), and between CHR participants who later developed a psychotic disorder (CHR-PS+) and those who did not (CHR-PS-). We assessed associations with age by group and conversion status, and similarities between the patterns of effect size maps for psychosis conversion and those found in other large-scale psychosis studies. Design, Setting, and Participants. Baseline T1-weighted MRI data were pooled from 31 international sites participating in the ENIGMA CHR Working Group. MRI scans were processed using harmonized protocols and analyzed within a mega- and meta-analysis framework from January-October 2020. Main Outcome(s) and Measure(s): Measures of regional cortical thickness (CT), surface area (SA), and subcortical volumes were extracted from T1-weighted MRI scans. Independent variables were group (CHR, HC) and conversion status (CHR-PS+, CHR-PS-, HC). Results: The final dataset consisted of 3,169 participants (CHR=1,792, HC=1,377, age range: 9.5 to 39.8 years, 45% female). Using longitudinal clinical information, we identified CHR-PS+ (N=253) and CHR-PS- (N=1,234). CHR exhibited widespread thinner cortex compared to HC (average d=-0.125, range: -0.09 to -0.17), but not SA or subcortical volume. Thinner cortex in the fusiform, superior temporal, and paracentral regions was associated with psychosis conversion (average d=-0.22). Age showed a stronger negative association with left fusiform and left paracentral CT in HC, compared to CHR-PS+. Regional CT psychosis conversion effect sizes resembled patterns of CT alterations observed in other ENIGMA studies of psychosis. Conclusions and Relevance: We provide evidence for widespread subtle CT reductions in CHR. The pattern of regions displaying greater CT alterations in CHR-PS+ were similar to those reported in other large-scale investigations of psychosis. Additionally, a subset of these regions displayed abnormal age associations. Widespread CT disruptions coupled with abnormal age associations in CHR may point to disruptions in postnatal brain developmental processes.

Kristen M. Haut | O. Andreassen | M. Kaess | D. Mathalon | J. Turner | T. V. van Erp | J. Schiffman | K. Heekeren | D. Hubl | D. Salisbury | J. Kwon | S. Lawrie | H. Yamasue | K. Kasai | M. Chee | T. van Amelsvoort | L. Westlye | P. Uhlhaas | I. Agartz | F. Schlagenhauf | J. Zhou | J. Waltz | F. Resch | I. Baeza | G. Sugranyes | C. Pantelis | B. Roach | P. M. Thompson | C. K. Tamnes | M. Nordentoft | R. Mizrahi | T. Colibazzi | C. Corcoran | C. Hooker | P. Fusar-Poli | M. Jalbrzikowski | D. Velakoulis | Tsutomu Takahashi | S. Wood | Michio Suzuki | K. Brønnick | A. Yung | P. McGorry | L. de Haan | B. Glenthøj | S. Vinogradov | B. Nelson | K. Cho | M. Harris | J. Pariente | D. Hernaus | P. Rasser | U. Schall | P. McGuire | W. Rössler | C. Bartholomeusz | A. Lin | E. Via | Jinsong Tang | Xiaogang Chen | A. Schmidt | A. Heinz | Lukasz Smigielski | Jimmy Lee | A. Tomyshev | Minah Kim | Y. Kwak | S. Haas | S. Koike | H. Hamilton | P. Bachman | Ying He | Xiaoqian Ma | Liu Yuan | R. Loewy | V. Cropley | B. Ebdrup | J. Kindler | K. Oppedal | A. Theodoridou | R. Hayes | I. Lemmers-Jansen | D. Sasabayashi | Naoyuki Katagiri | M. Mizuno | W. Hwang | D. Muñoz-Samons | T. Nemoto | J. Raghava | D. Nordholm | L. Glenthøj | Helen Baldwin | C. Michel | Mallory J. Klaunig | I. Lebedeva | Wenche Ten Velden Hegelstad | C. de la Fuente-Sandoval | P. Allen | K. Atkinson | Sabrina Catalano | Rebecca Cooper | M. Dolz | A. Fortea | T. D. Kristensen | P. León-Ortíz | P. Møller | Tomás Moncada-Habib | M. Omelchenko | Lijun Ouyang | Francisco Reyes-Madrigal | J. Røssberg | Mikkel E. Sørensen | J. Tor | Tor G Vaernes | Gloria D. Venegoni | C. Wenneberg | Koppel | Borgwardt | L. Smigielski | Imke L. J. Lemmers-Jansen | G. Venegoni | H. Baldwin | W. Ten Velden Hegelstad | A. Lin | S. Wood

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