2020
DOI: 10.1038/s41380-020-00892-3
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Identifying and validating subtypes within major psychiatric disorders based on frontal–posterior functional imbalance via deep learning

Abstract: Converging evidence increasingly implicates shared etiologic and pathophysiological characteristics among major psychiatric disorders (MPDs), such as schizophrenia (SZ), bipolar disorder (BD), and major depressive disorder (MDD). Examining the neurobiology of the psychotic-affective spectrum may greatly advance biological determination of psychiatric diagnosis, which is critical for the development of more effective treatments. In this study, ensemble clustering was developed to identify subtypes within a tran… Show more

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Cited by 51 publications
(49 citation statements)
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“…We also examined the effects of medication on symptom severity (from clinical data) to elucidate pharmacologic effects within each subtype. These validation analyses showed significant alignment between the subtyping results and these other biological features [2]. Much effort has been devoted to developing null models for clustering, as discussed in the whole Chapter 4 of the book by Bezdek [7].…”
Section: Cluster Validitymentioning
confidence: 76%
See 1 more Smart Citation
“…We also examined the effects of medication on symptom severity (from clinical data) to elucidate pharmacologic effects within each subtype. These validation analyses showed significant alignment between the subtyping results and these other biological features [2]. Much effort has been devoted to developing null models for clustering, as discussed in the whole Chapter 4 of the book by Bezdek [7].…”
Section: Cluster Validitymentioning
confidence: 76%
“…
TO THE EDITOR:Recently, Winter and Hahn [1] commented on our work on identifying subtypes of major psychiatry disorders (MPDs) based on neurobiological features using machine learning [2]. They questioned the generalizability of our methods and the statistical significance, stability, and overfitting of the results, and proposed a pipeline for disease subtyping.
…”
mentioning
confidence: 99%
“…While the current study supports the usage of i-ECO to classify fMRI participants according to diagnostic groups, considering previous discussed views offered by the clinical setting, the potential of a dimensional approach seems warranted. According to previous research in fact, neuroimaging biomarkers may have the potential to find different correspondences of psychopathology (Kebets et al, 2019;McTeague et al, 2017), in order to arrive to a more specific definition of cornerstone symptoms, their biological correlates and overall classifications supported by experimental results (Chang et al, 2020;Iravani et al, 2021;Schilbach et al, 2015;Tokuda et al, 2018). An integrated approach to neuroimaging has the potential for direct implications in the treatment of mental suffering and psychiatric practice (Iravani et al, 2021;Price et al, 2018), through a coordination of theoretical models for general psychiatry, psychotherapy, and neuroimaginge.g.…”
Section: Clinical Significance and Future Prospectsmentioning
confidence: 97%
“…By stacking multiple layers of autoencoders, a deep autoencoder model is formed to discover more complicated and potentially nonlinear feature patterns. The deep autoencoder model has been applied to extract lowdimensional features from the amplitude of low-frequency fluctuations in fMRI [139]. Clustering analysis with the latent features uncovered by the deep autoencoder successfully identified two subtypes within major psychiatric disorders including schizophrenia, bipolar disorder, and major depressive disorder.…”
Section: Deep Learningmentioning
confidence: 99%