Literature DB >> 31455518

Identifying schizophrenia subgroups using clustering and supervised learning.

Alexandra Talpalaru1, Nikhil Bhagwat2, Gabriel A Devenyi3, Martin Lepage3, M Mallar Chakravarty4.   

Abstract

Schizophrenia has a 1% incidence rate world-wide and those diagnosed present with positive (e.g. hallucinations, delusions), negative (e.g. apathy, asociality), and cognitive symptoms. However, both symptom burden and associated brain alterations are highly heterogeneous and intimately linked to prognosis. In this study, we present a method to predict individual symptom profiles by first deriving clinical subgroups and then using machine learning methods to perform subject-level classification based on magnetic resonance imaging (MRI) derived neuroanatomical measures. Symptomatic and MRI data of 167 subjects were used. Subgroups were defined using hierarchical clustering of clinical data resulting in 3 stable clusters: 1) high symptom burden, 2) predominantly positive symptom burden, and 3) mild symptom burden. Cortical thickness estimates were obtained in 78 regions of interest and were input, along with demographic data, into three machine learning models (logistic regression, support vector machine, and random forest) to predict subgroups. Random forest performance metrics for predicting the group membership of the high and mild symptom burden groups exceeded those of the baseline comparison of the entire schizophrenia population versus normal controls (AUC: 0.81 and 0.78 vs. 0.75). Additionally, an analysis of the most important features in the random forest classification demonstrated consistencies with previous findings of regional impairments and symptoms of schizophrenia.
Copyright © 2019. Published by Elsevier B.V.

Entities:  

Keywords:  Clustering; Heterogeneity; MRI; Machine learning; Schizophrenia; Single-subject prediction

Year:  2019        PMID: 31455518     DOI: 10.1016/j.schres.2019.05.044

Source DB:  PubMed          Journal:  Schizophr Res        ISSN: 0920-9964            Impact factor:   4.939


  8 in total

1.  Identification of minimal hepatic encephalopathy based on dynamic functional connectivity.

Authors:  Yue Cheng; Gaoyan Zhang; Xiaodong Zhang; Yuexuan Li; Jingli Li; Jiamin Zhou; Lixiang Huang; Shuangshuang Xie; Wen Shen
Journal:  Brain Imaging Behav       Date:  2021-03-23       Impact factor: 3.978

2.  Prediction of Early Symptom Remission in Two Independent Samples of First-Episode Psychosis Patients Using Machine Learning.

Authors:  Rigas F Soldatos; Micah Cearns; Mette Ø Nielsen; Costas Kollias; Lida-Alkisti Xenaki; Pentagiotissa Stefanatou; Irene Ralli; Stefanos Dimitrakopoulos; Alex Hatzimanolis; Ioannis Kosteletos; Ilias I Vlachos; Mirjana Selakovic; Stefania Foteli; Nikolaos Nianiakas; Leonidas Mantonakis; Theoni F Triantafyllou; Aggeliki Ntigridaki; Vanessa Ermiliou; Marina Voulgaraki; Evaggelia Psarra; Mikkel E Sørensen; Kirsten B Bojesen; Karen Tangmose; Anne M Sigvard; Karen S Ambrosen; Toni Meritt; Warda Syeda; Birte Y Glenthøj; Nikolaos Koutsouleris; Christos Pantelis; Bjørn H Ebdrup; Nikos Stefanis
Journal:  Schizophr Bull       Date:  2022-01-21       Impact factor: 7.348

3.  A Cross-Sectional Study on Associations Between BDNF, CRP, IL-6 and Clinical Symptoms, Cognitive and Personal Performance in Patients With Paranoid Schizophrenia.

Authors:  Egor Chumakov; Mariia Dorofeikova; Kristina Tsyrenova; Nataliia Petrova
Journal:  Front Psychiatry       Date:  2022-07-06       Impact factor: 5.435

Review 4.  Challenges and Future Prospects of Precision Medicine in Psychiatry.

Authors:  Mirko Manchia; Claudia Pisanu; Alessio Squassina; Bernardo Carpiniello
Journal:  Pharmgenomics Pers Med       Date:  2020-04-23

5.  Discriminative Analysis of Schizophrenia Patients Using Topological Properties of Structural and Functional Brain Networks: A Multimodal Magnetic Resonance Imaging Study.

Authors:  Jing Wang; Pengfei Ke; Jinyu Zang; Fengchun Wu; Kai Wu
Journal:  Front Neurosci       Date:  2022-01-11       Impact factor: 4.677

6.  Advances in Using MRI to Estimate the Risk of Future Outcomes in Mental Health - Are We Getting There?

Authors:  Aleix Solanes; Joaquim Radua
Journal:  Front Psychiatry       Date:  2022-04-12       Impact factor: 5.435

7.  Deep learning-based integration of genetics with registry data for stratification of schizophrenia and depression.

Authors:  Rosa Lundbye Allesøe; Ron Nudel; Wesley K Thompson; Yunpeng Wang; Merete Nordentoft; Anders D Børglum; David M Hougaard; Thomas Werge; Simon Rasmussen; Michael Eriksen Benros
Journal:  Sci Adv       Date:  2022-06-29       Impact factor: 14.957

Review 8.  A systematic review and narrative synthesis of data-driven studies in schizophrenia symptoms and cognitive deficits.

Authors:  Tesfa Dejenie Habtewold; Lyan H Rodijk; Edith J Liemburg; Grigory Sidorenkov; H Marike Boezen; Richard Bruggeman; Behrooz Z Alizadeh
Journal:  Transl Psychiatry       Date:  2020-07-21       Impact factor: 6.222

  8 in total

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