Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Classification of Schizophrenia, Bipolar Disorder and Major Depressive Disorder with Comorbid Traits and Deep Learning Algorithms

View through CrossRef
Abstract Recent GWASs have demonstrated that comorbid disorders share genetic liabilities. But whether and how these shared liabilities can be used for the classification and differentiation of comorbid disorders remains unclear. In this study, we use polygenic risk scores (PRSs) estimated from 42 comorbid traits and the deep neural networks (DNN) architecture to classify and differentiate schizophrenia (SCZ), bipolar disorder (BIP) and major depressive disorder (MDD). Multiple PRSs were obtained for individuals from the schizophrenia (SCZ) (cases = 6,317, controls = 7,240), bipolar disorder (BIP) (cases = 2,634, controls 4,425) and major depressive disorder (MDD) (cases = 1,704, controls = 3,357) datasets, and classification models were constructed with and without the inclusion of PRSs of the target (SCZ, BIP or MDD). Models with the inclusion of target PRSs performed well as expected. Surprisingly, we found that SCZ could be classified with only the PRSs from 35 comorbid traits (not including the target SCZ and directly related traits) (accuracy 0.760 ± 0.007, AUC 0.843 ± 0.005). Similar results were obtained for BIP (33 traits, accuracy 0.768 ± 0.007, AUC 0.848 ± 0.009), and MDD (36 traits, accuracy 0.794 ± 0.010, AUC 0.869 ± 0.004). Furthermore, these PRSs from comorbid traits alone could effectively differentiate unaffected controls, SCZ, BIP, and MDD patients (average categorical accuracy 0.861 ± 0.003, average AUC 0.961 ± 0.041). These results suggest that the shared liabilities from comorbid traits alone may be sufficient to classify SCZ, BIP and MDD. More importantly, these results imply that a data-driven and objective diagnosis and differentiation of SCZ, BIP and MDD may be feasible.
Title: Classification of Schizophrenia, Bipolar Disorder and Major Depressive Disorder with Comorbid Traits and Deep Learning Algorithms
Description:
Abstract Recent GWASs have demonstrated that comorbid disorders share genetic liabilities.
But whether and how these shared liabilities can be used for the classification and differentiation of comorbid disorders remains unclear.
In this study, we use polygenic risk scores (PRSs) estimated from 42 comorbid traits and the deep neural networks (DNN) architecture to classify and differentiate schizophrenia (SCZ), bipolar disorder (BIP) and major depressive disorder (MDD).
Multiple PRSs were obtained for individuals from the schizophrenia (SCZ) (cases = 6,317, controls = 7,240), bipolar disorder (BIP) (cases = 2,634, controls 4,425) and major depressive disorder (MDD) (cases = 1,704, controls = 3,357) datasets, and classification models were constructed with and without the inclusion of PRSs of the target (SCZ, BIP or MDD).
Models with the inclusion of target PRSs performed well as expected.
Surprisingly, we found that SCZ could be classified with only the PRSs from 35 comorbid traits (not including the target SCZ and directly related traits) (accuracy 0.
760 ± 0.
007, AUC 0.
843 ± 0.
005).
Similar results were obtained for BIP (33 traits, accuracy 0.
768 ± 0.
007, AUC 0.
848 ± 0.
009), and MDD (36 traits, accuracy 0.
794 ± 0.
010, AUC 0.
869 ± 0.
004).
Furthermore, these PRSs from comorbid traits alone could effectively differentiate unaffected controls, SCZ, BIP, and MDD patients (average categorical accuracy 0.
861 ± 0.
003, average AUC 0.
961 ± 0.
041).
These results suggest that the shared liabilities from comorbid traits alone may be sufficient to classify SCZ, BIP and MDD.
More importantly, these results imply that a data-driven and objective diagnosis and differentiation of SCZ, BIP and MDD may be feasible.

Related Results

Misdiagnosis, detection rate, and associated factors of severe psychiatric disorders in specialized psychiatry centers in Ethiopia
Misdiagnosis, detection rate, and associated factors of severe psychiatric disorders in specialized psychiatry centers in Ethiopia
Abstract Background There are limited studies regarding the magnitude of misdiagnosis as well as underdiagnosis in a specialized psychiatric setting. Thus far, to the best ...
Analisis Penyalahgunaan Zat sebagai Faktor Risiko Kejadian Gangguan Bipolar pada Orang Dewasa
Analisis Penyalahgunaan Zat sebagai Faktor Risiko Kejadian Gangguan Bipolar pada Orang Dewasa
Abstract. Bipolar disorder is an emotional disorder with recurrent episodes of mood swings and depression, followed by changes in activity or energy and associated with characteris...
Migraine in bipolar disorder and schizophrenia: The hidden pain
Migraine in bipolar disorder and schizophrenia: The hidden pain
Objective This study examined the prevalence of comorbid migraine in patients with bipolar disorder and those with schizophrenia and also examined the associati...
Depressive disorder, bipolar disorder, and associated factors among adults, in the Eastern part of Ethiopia
Depressive disorder, bipolar disorder, and associated factors among adults, in the Eastern part of Ethiopia
Abstract Background Depressive disorder is one of the severe and common mental illnesses in the general population. Bipolar disorder is a severe, pe...
Diagnosis of disruptive mood dysregulation disorder in offsprings of bipolar parents
Diagnosis of disruptive mood dysregulation disorder in offsprings of bipolar parents
Abstract Background Disruptive mood dysregulation disorder (DMDD) was introduced in (DSM-5) as a new diagnostic category to get control on the exagg...
Bipolar disorders and suicidal behaviour
Bipolar disorders and suicidal behaviour
Rihmer Z, Kiss K. Bipolar disorders and suicidal behaviour. 
Bipolar Disord 2002: 4(Suppl. 1): 21–25. © Blackwell Munksgaard, 2002Major depressive disorder is the leading cause of ...

Back to Top