4.6 Article

Predicting the Severity of Lockdown-Induced Psychiatric Symptoms with Machine Learning

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DIAGNOSTICS
卷 12, 期 4, 页码 -

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MDPI
DOI: 10.3390/diagnostics12040957

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machine learning; COVID-19; prediction; obsessive-compulsive disorder; depression; anxiety

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During the COVID-19 pandemic, there has been an increase in psychiatric disorders in the general population and severity of symptoms in psychiatric patients. Anxiety and depression symptoms were most commonly observed, especially during extended lockdowns. This study used supervised machine learning to predict the severity of psychiatric symptoms during the Italian lockdown. The results showed up to 92% accuracy in predicting depression, anxiety, and obsessive-compulsive symptoms based on demographic and clinical characteristics collected before the pandemic. This methodology can be used to predict psychiatric prognosis and support clinical decisions during large-scale lockdowns.
During the COVID-19 pandemic, an increase in the incidence of psychiatric disorders in the general population and an increase in the severity of symptoms in psychiatric patients have been reported. Anxiety and depression symptoms are the most commonly observed during large-scale dramatic events such as pandemics and wars, especially when these implicate an extended lockdown. The early detection of higher risk clinical and non-clinical individuals would help prevent the new onset and/or deterioration of these symptoms. This in turn would lead to the implementation of public policies aimed at protecting vulnerable populations during these dramatic contingencies, therefore optimising the effectiveness of interventions and saving the resources of national healthcare systems. We used a supervised machine learning method to identify the predictors of the severity of psychiatric symptoms during the Italian lockdown due to the COVID-19 pandemic. Via a case study, we applied this methodology to a small sample of healthy individuals, obsessive-compulsive disorder patients, and adjustment disorder patients. Our preliminary results show that our models were able to predict depression, anxiety, and obsessive-compulsive symptoms during the lockdown with up to 92% accuracy based on demographic and clinical characteristics collected before the pandemic. The presented methodology may be used to predict the psychiatric prognosis of individuals under a large-scale lockdown and thus supporting the related clinical decisions.

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