Literature DB >> 31826827

Predicting response to electroconvulsive therapy combined with antipsychotics in schizophrenia using multi-parametric magnetic resonance imaging.

Jie Gong1, Long-Biao Cui2, Yi-Bin Xi3, Ying-Song Zhao1, Xue-Juan Yang1, Zi-Liang Xu1, Jin-Bo Sun1, Peng Liu1, Jie Jia4, Ping Li5, Hong Yin6, Wei Qin7.   

Abstract

Electroconvulsive therapy (ECT) has been shown to be effective in schizophrenia, particularly when rapid symptom reduction is needed or in cases of resistance to drug treatment. However, there are no markers available to predict response to ECT. Here, we examine whether multi-parametric magnetic resonance imaging (MRI)-based radiomic features can predict response to ECT for individual patients. A total of 57 treatment-resistant schizophrenia patients, or schizophrenia patients with an acute episode or suicide attempts were randomly divided into primary (42 patients) and test (15 patients) cohorts. We collected T1-weighted structural MRI and diffusion MRI for 57 patients before receiving ECT and extracted 600 radiomic features for feature selection and prediction. To predict a continuous improvement in symptoms (ΔPANSS), the prediction process was performed with a support vector regression model based on a leave-one-out cross-validation framework in primary cohort and was tested in test cohort. The multi-parametric MRI-based radiomic model, including four structural MRI feature from left inferior frontal gyrus, right insula, left middle temporal gyrus and right superior temporal gyrus respectively and six diffusion MRI features from tracts connecting frontal or temporal gyrus possessed a low root mean square error of 15.183 in primary cohort and 14.980 in test cohort. The Pearson's correlation coefficients between predicted and actual values were 0.671 and 0.777 respectively. These results demonstrate that multi-parametric MRI-based radiomic features may predict response to ECT for individual patients. Such features could serve as prognostic neuroimaging biomarkers that provide a critical step toward individualized treatment response prediction in schizophrenia.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Diffusion magnetic resonance imaging; Electroconvulsive therapy; Prediction; Radiomics; Schizophrenia; Structural magnetic resonance imaging

Mesh:

Substances:

Year:  2019        PMID: 31826827     DOI: 10.1016/j.schres.2019.11.046

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


  9 in total

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2.  Neuroanatomical Features That Predict Response to Electroconvulsive Therapy Combined With Antipsychotics in Schizophrenia: A Magnetic Resonance Imaging Study Using Radiomics Strategy.

Authors:  Yi-Bin Xi; Long-Biao Cui; Jie Gong; Yu-Fei Fu; Xu-Sha Wu; Fan Guo; Xuejuan Yang; Chen Li; Xing-Rui Wang; Ping Li; Wei Qin; Hong Yin
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5.  Robustness of radiomics to variations in segmentation methods in multimodal brain MRI.

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6.  Commentary: Targeting the MRI-mapped psychopathology of major psychiatric disorders with neurostimulation.

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7.  Systematic Review of the Neural Effect of Electroconvulsive Therapy in Patients with Schizophrenia: Hippocampus and Insula as the Key Regions of Modulation.

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Authors:  Long-Biao Cui; Ya-Juan Zhang; Hong-Liang Lu; Lin Liu; Hai-Jun Zhang; Yu-Fei Fu; Xu-Sha Wu; Yong-Qiang Xu; Xiao-Sa Li; Yu-Ting Qiao; Wei Qin; Hong Yin; Feng Cao
Journal:  Front Neurosci       Date:  2021-07-05       Impact factor: 4.677

  9 in total

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