Abstract

BackgroundBipolar disorder onset peaks over early adulthood and confirmed family history is a robust risk factor. However, penetrance within families varies and most children of bipolar parents will not develop the illness. Individualized risk prediction would be helpful for identifying those young people most at risk and to inform targeted intervention. Using prospectively collected data from the Canadian Flourish High-risk Offspring cohort study available in routine practice, we explored the use of a neural network, known as the Partial Logistic Artificial Neural Network (PLANN) to predict the time to diagnosis of major mood disorders in 1, 3 and 5-year intervals.ResultsOverall, for predictive performance, PLANN outperformed the more traditional discrete survival model for 3-year and 5-year predictions. PLANN was better able to discriminate or rank individuals based on their risk of developing a major mood disorder, better able to predict the probability of developing a major mood disorder and better able to identify individuals who would be diagnosed in future time intervals. The average AUC achieved by PLANN for 5-year prediction was 0.74, which indicates good discrimination.ConclusionsThis evaluation of PLANN is a useful step in the investigation of using neural networks as tools in the prediction of mood disorders in at-risk individuals and the potential that neural networks have in this field. Future research is needed to replicate these findings in a separate high-risk offspring sample.

Highlights

  • Bipolar disorder onset peaks over early adulthood and confirmed family history is a robust risk factor

  • Bipolar disorder runs in families, and the children of bipolar parents are an identifiable high-risk group ideally suited for risk prediction studies (Duffy et al 2017)

  • The purpose of this article is to explore the use of a neural network known as Partial Logistic Artificial Neural Network (PLANN) (Biganzoli et al 1998), to predict the time to diagnosis of bipolar-related major mood disorders in the offspring of parents with confirmed bipolar disorder

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Summary

Introduction

Bipolar disorder onset peaks over early adulthood and confirmed family history is a robust risk factor. Penetrance within families varies and most children of bipolar parents will not develop the illness. Using prospectively collected data from the Canadian Flourish High-risk Offspring cohort study available in routine practice, we explored the use of a neural network, known as the Partial Logistic Artificial Neural Network (PLANN) to predict the time to diagnosis of major mood disorders in 1, 3 and 5-year intervals. Bipolar disorder runs in families, and the children of bipolar parents are an identifiable high-risk group ideally suited for risk prediction studies (Duffy et al 2017). The penetrance and spectrum of phenotypes vary between families and according to the subtype of bipolar illness.

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