Use of a Bayesian Network Model to predict psychiatric illness in individuals with 'at risk mental states' from a general population cohort. (23rd January 2022)
- Record Type:
- Journal Article
- Title:
- Use of a Bayesian Network Model to predict psychiatric illness in individuals with 'at risk mental states' from a general population cohort. (23rd January 2022)
- Main Title:
- Use of a Bayesian Network Model to predict psychiatric illness in individuals with 'at risk mental states' from a general population cohort
- Authors:
- Loch, Alexandre Andrade
Ara, Anderson
Hortêncio, Lucas
Hatagami Marques, Julia
Talib, Leda Leme
Andrade, Julio Cesar
Serpa, Mauricio Henriques
Sanchez, Luciano
Alves, Tania Maria
van de Bilt, Martinus Theodorus
Rössler, Wulf
Gattaz, Wagner Farid - Abstract:
- Highlights: Individuals with "at-risk mental states" (ARMS) present subclinical psychosis that can progress to psychiatric illnesses. In a populational sample (n = 2500), 83 ARMS individuals were assessed for 2.5 years. Bayesian Neural Network model was used in the sample to predict psychiatric illness. The model used clinical and biological factors, eliciting an accuracy of 85.51%. Childhood trauma, DRD2 related rs6277 and religiosity were the main predictors. Abstract: The 'at risk mental state' (ARMS) paradigm has been introduced in psychiatry to study prodromal phases of schizophrenia. With time it was seen that the ARMS state can also precede mental disorders other than schizophrenia, such as depression and anxiety. However, several problems hamper the paradigm's use in preventative medicine, such as varying transition rates across studies, the use of non-naturalistic samples, and the multifactorial nature of psychiatric disorders. To strengthen ARMS predictive power, there is a need for a holistic model incorporating—in an unbiased fashion—the small-effect factors that cause mental disorders. Bayesian networks, a probabilistic graphical model, was used in a populational cohort of 83 ARMS individuals to predict conversion to psychiatric illness. Nine predictors—including state, trait, biological and environmental factors—were inputted. Dopamine receptor 2 polymorphism, high private religiosity, and childhood trauma remained in the final model, which reached an 85.51%Highlights: Individuals with "at-risk mental states" (ARMS) present subclinical psychosis that can progress to psychiatric illnesses. In a populational sample (n = 2500), 83 ARMS individuals were assessed for 2.5 years. Bayesian Neural Network model was used in the sample to predict psychiatric illness. The model used clinical and biological factors, eliciting an accuracy of 85.51%. Childhood trauma, DRD2 related rs6277 and religiosity were the main predictors. Abstract: The 'at risk mental state' (ARMS) paradigm has been introduced in psychiatry to study prodromal phases of schizophrenia. With time it was seen that the ARMS state can also precede mental disorders other than schizophrenia, such as depression and anxiety. However, several problems hamper the paradigm's use in preventative medicine, such as varying transition rates across studies, the use of non-naturalistic samples, and the multifactorial nature of psychiatric disorders. To strengthen ARMS predictive power, there is a need for a holistic model incorporating—in an unbiased fashion—the small-effect factors that cause mental disorders. Bayesian networks, a probabilistic graphical model, was used in a populational cohort of 83 ARMS individuals to predict conversion to psychiatric illness. Nine predictors—including state, trait, biological and environmental factors—were inputted. Dopamine receptor 2 polymorphism, high private religiosity, and childhood trauma remained in the final model, which reached an 85.51% (SD = 0.1190) accuracy level in predicting conversion. This is the first time a robust model was produced with Bayesian networks to predict psychiatric illness among at risk individuals from the general population. This could be an important tool to strengthen predictive measures in psychiatry which should be replicated in larger samples to provide the model further learning. … (more)
- Is Part Of:
- Neuroscience letters. Volume 770(2022)
- Journal:
- Neuroscience letters
- Issue:
- Volume 770(2022)
- Issue Display:
- Volume 770, Issue 2022 (2022)
- Year:
- 2022
- Volume:
- 770
- Issue:
- 2022
- Issue Sort Value:
- 2022-0770-2022-0000
- Page Start:
- Page End:
- Publication Date:
- 2022-01-23
- Subjects:
- Schizophrenia -- Clinical high risk -- Dopamine -- Machine learning -- Religiosity
Neurology -- Periodicals
Neurology -- Periodicals
Research -- Periodicals
Neurologie -- Périodiques
Neuroanatomie -- Périodiques
Neuropharmacologie -- Périodiques
Neurophysiologie -- Périodiques
Neurology
Periodicals
Electronic journals
617.48 - Journal URLs:
- http://www.sciencedirect.com/science/journal/03043940 ↗
http://www.elsevier.com/journals ↗ - DOI:
- 10.1016/j.neulet.2021.136358 ↗
- Languages:
- English
- ISSNs:
- 0304-3940
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 6081.562000
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- 20680.xml