Literature DB >> 34127797

Identification of transdiagnostic psychiatric disorder subtypes using unsupervised learning.

Helena Pelin1,2, Marcus Ising3, Frederike Stein4,5, Susanne Meinert6, Tina Meller4,5, Katharina Brosch4,5, Nils R Winter6, Axel Krug4,7, Ramona Leenings6, Hannah Lemke6, Igor Nenadić4,5, Stefanie Heilmann-Heimbach8, Andreas J Forstner8,9,10, Markus M Nöthen8, Nils Opel6, Jonathan Repple6, Julia Pfarr4, Kai Ringwald4,5, Simon Schmitt4,5, Katharina Thiel6, Lena Waltemate6, Alexandra Winter6, Fabian Streit11, Stephanie Witt11, Marcella Rietschel11, Udo Dannlowski6, Tilo Kircher4,5, Tim Hahn6, Bertram Müller-Myhsok3,12,13, Till F M Andlauer14,15,16.   

Abstract

Psychiatric disorders show heterogeneous symptoms and trajectories, with current nosology not accurately reflecting their molecular etiology and the variability and symptomatic overlap within and between diagnostic classes. This heterogeneity impedes timely and targeted treatment. Our study aimed to identify psychiatric patient clusters that share clinical and genetic features and may profit from similar therapies. We used high-dimensional data clustering on deep clinical data to identify transdiagnostic groups in a discovery sample (N = 1250) of healthy controls and patients diagnosed with depression, bipolar disorder, schizophrenia, schizoaffective disorder, and other psychiatric disorders. We observed five diagnostically mixed clusters and ordered them based on severity. The least impaired cluster 0, containing most healthy controls, showed general well-being. Clusters 1-3 differed predominantly regarding levels of maltreatment, depression, daily functioning, and parental bonding. Cluster 4 contained most patients diagnosed with psychotic disorders and exhibited the highest severity in many dimensions, including medication load. Depressed patients were present in all clusters, indicating that we captured different disease stages or subtypes. We replicated all but the smallest cluster 1 in an independent sample (N = 622). Next, we analyzed genetic differences between clusters using polygenic scores (PGS) and the psychiatric family history. These genetic variables differed mainly between clusters 0 and 4 (prediction area under the receiver operating characteristic curve (AUC) = 81%; significant PGS: cross-disorder psychiatric risk, schizophrenia, and educational attainment). Our results confirm that psychiatric disorders consist of heterogeneous subtypes sharing molecular factors and symptoms. The identification of transdiagnostic clusters advances our understanding of the heterogeneity of psychiatric disorders and may support the development of personalized treatments.

Entities:  

Year:  2021        PMID: 34127797     DOI: 10.1038/s41386-021-01051-0

Source DB:  PubMed          Journal:  Neuropsychopharmacology        ISSN: 0893-133X            Impact factor:   7.853


  57 in total

1.  Neurostructural Heterogeneity in Youths With Internalizing Symptoms.

Authors:  Antonia N Kaczkurkin; Aristeidis Sotiras; Erica B Baller; Ran Barzilay; Monica E Calkins; Ganesh B Chand; Zaixu Cui; Guray Erus; Yong Fan; Raquel E Gur; Ruben C Gur; Tyler M Moore; David R Roalf; Adon F G Rosen; Kosha Ruparel; Russell T Shinohara; Erdem Varol; Daniel H Wolf; Christos Davatzikos; Theodore D Satterthwaite
Journal:  Biol Psychiatry       Date:  2019-09-18       Impact factor: 13.382

2.  Data-Driven Clustering Reveals a Link Between Symptoms and Functional Brain Connectivity in Depression.

Authors:  Luigi A Maglanoc; Nils Inge Landrø; Rune Jonassen; Tobias Kaufmann; Aldo Córdova-Palomera; Eva Hilland; Lars T Westlye
Journal:  Biol Psychiatry Cogn Neurosci Neuroimaging       Date:  2018-05-30

3.  Premorbid adjustment trajectories in schizophrenia and bipolar disorder: A transdiagnostic cluster analysis.

Authors:  Chi C Chan; Megan Shanahan; Luz H Ospina; Emmett M Larsen; Katherine E Burdick
Journal:  Psychiatry Res       Date:  2018-12-31       Impact factor: 3.222

4.  Social cognitive impairments and negative symptoms in schizophrenia: are there subtypes with distinct functional correlates?

Authors:  Morris D Bell; Silvia Corbera; Jason K Johannesen; Joanna M Fiszdon; Bruce E Wexler
Journal:  Schizophr Bull       Date:  2011-10-05       Impact factor: 9.306

Review 5.  The continuity of psychotic experiences in the general population.

Authors:  L C Johns; J van Os
Journal:  Clin Psychol Rev       Date:  2001-11

6.  Resting-state connectivity biomarkers define neurophysiological subtypes of depression.

Authors:  Andrew T Drysdale; Logan Grosenick; Jonathan Downar; Katharine Dunlop; Farrokh Mansouri; Yue Meng; Robert N Fetcho; Benjamin Zebley; Desmond J Oathes; Amit Etkin; Alan F Schatzberg; Keith Sudheimer; Jennifer Keller; Helen S Mayberg; Faith M Gunning; George S Alexopoulos; Michael D Fox; Alvaro Pascual-Leone; Henning U Voss; B J Casey; Marc J Dubin; Conor Liston
Journal:  Nat Med       Date:  2016-12-05       Impact factor: 53.440

Review 7.  A systematic review and meta-analysis of the psychosis continuum: evidence for a psychosis proneness-persistence-impairment model of psychotic disorder.

Authors:  J van Os; R J Linscott; I Myin-Germeys; P Delespaul; L Krabbendam
Journal:  Psychol Med       Date:  2008-07-08       Impact factor: 7.723

8.  Delineation of early and later adult onset depression by diffusion tensor imaging.

Authors:  Yuqi Cheng; Jian Xu; Hongjun Yu; Binbin Nie; Na Li; Chunrong Luo; Haijun Li; Fang Liu; Yan Bai; Baoci Shan; Lin Xu; Xiufeng Xu
Journal:  PLoS One       Date:  2014-11-13       Impact factor: 3.240

9.  Multivariate neuroanatomical classification of cognitive subtypes in schizophrenia: a support vector machine learning approach.

Authors:  Ian C Gould; Alana M Shepherd; Kristin R Laurens; Murray J Cairns; Vaughan J Carr; Melissa J Green
Journal:  Neuroimage Clin       Date:  2014-09-18       Impact factor: 4.881

10.  Correct recognition and continuum belief of mental disorders in a nursing student population.

Authors:  Lee Seng Esmond Seow; Boon Yiang Chua; Huiting Xie; Jia Wang; Hui Lin Ong; Edimansyah Abdin; Siow Ann Chong; Mythily Subramaniam
Journal:  BMC Psychiatry       Date:  2017-08-07       Impact factor: 3.630

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  3 in total

1.  Investigating the phenotypic and genetic associations between personality traits and suicidal behavior across major mental health diagnoses.

Authors:  Thomas G Schulze; Sergi Papiol; Janos L Kalman; Tomoya Yoshida; Till F M Andlauer; Eva C Schulte; Kristina Adorjan; Martin Alda; Raffaela Ardau; Jean-Michel Aubry; Katharina Brosch; Monika Budde; Caterina Chillotti; Piotr M Czerski; Raymond J DePaulo; Andreas Forstner; Fernando S Goes; Maria Grigoroiu-Serbanescu; Paul Grof; Dominik Grotegerd; Tim Hahn; Maria Heilbronner; Roland Hasler; Urs Heilbronner; Stefanie Heilmann-Heimbach; Pawel Kapelski; Tadafumi Kato; Mojtaba Oraki Kohshour; Susanne Meinert; Tina Meller; Igor Nenadić; Markus M Nöthen; Tomas Novak; Nils Opel; Joanna Pawlak; Julia-Katharina Pfarr; James B Potash; Daniela Reich-Erkelenz; Jonathan Repple; Hélène Richard-Lepouriel; Marcella Rietschel; Kai G Ringwald; Guy Rouleau; Sabrina Schaupp; Fanny Senner; Giovanni Severino; Alessio Squassina; Frederike Stein; Pavla Stopkova; Fabian Streit; Katharina Thiel; Florian Thomas-Odenthal; Gustavo Turecki; Joanna Twarowska-Hauser; Alexandra Winter; Peter P Zandi; John R Kelsoe; Peter Falkai; Udo Dannlowski; Tilo Kircher
Journal:  Eur Arch Psychiatry Clin Neurosci       Date:  2022-02-10       Impact factor: 5.270

Review 2.  How genetic analysis may contribute to the understanding of avoidant/restrictive food intake disorder (ARFID).

Authors:  Hannah L Kennedy; Lisa Dinkler; Martin A Kennedy; Cynthia M Bulik; Jennifer Jordan
Journal:  J Eat Disord       Date:  2022-04-15

3.  Transdiagnostic connectome signatures from resting-state fMRI predict individual-level intellectual capacity.

Authors:  Xiaoyu Tong; Hua Xie; Nancy Carlisle; Gregory A Fonzo; Desmond J Oathes; Jing Jiang; Yu Zhang
Journal:  Transl Psychiatry       Date:  2022-09-06       Impact factor: 7.989

  3 in total

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