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               <dc:title>Machine learning for anxiety and depression profiling and risk assessment in the aftermath of an emergency</dc:title>
               <dc:creator>Villanueva Benito, Guillermo</dc:creator>
               <dc:creator>Goldberg, Ximena</dc:creator>
               <dc:creator>Brachowicz, Nicolai</dc:creator>
               <dc:creator>Castaño Vinyals, Gemma</dc:creator>
               <dc:creator>Blay, Natalia</dc:creator>
               <dc:creator>Espinosa, Ana</dc:creator>
               <dc:creator>Davidhi, Flavia</dc:creator>
               <dc:creator>Torres, Diego</dc:creator>
               <dc:creator>Kogevinas, Manolis</dc:creator>
               <dc:creator>Cid Ibeas, Rafael de</dc:creator>
               <dc:creator>Petrone, Paula M.</dc:creator>
               <dc:subject>COVID-19</dc:subject>
               <dc:subject>Machine learning</dc:subject>
               <dc:subject>Mental health</dc:subject>
               <dc:subject>Preparedness</dc:subject>
               <dc:description>Background &amp;amp; objectives: Mental health disorders pose an increasing public health challenge worsened by the COVID-19 pandemic. The pandemic highlighted gaps in preparedness, emphasizing the need for early identification of at-risk groups and targeted interventions. This study aims to develop a risk assessment tool for anxiety, depression, and self-perceived stress using machine learning (ML) and explainable AI to identify key risk factors and stratify the population into meaningful risk profiles. Methods: We utilized a cohort of 9291 individuals from Northern Spain, with extensive post-COVID-19 mental health surveys. ML classification algorithms predicted depression, anxiety, and self-reported stress in three classes: healthy, mild, and severe outcomes. A novel combination of SHAP (SHapley Additive exPlanations) and UMAP (Uniform Manifold Approximation and Projection) was employed to interpret model predictions and facilitate the identification of high-risk phenotypic clusters. Results: The mean macro-averaged one-vs-one AUROC was 0.77 (± 0.01) for depression, 0.72 (± 0.01) for anxiety, and 0.73 (± 0.02) for self-perceived stress. Key risk factors included poor self-reported health, chronic mental health conditions, and poor social support. High-risk profiles, such as women with reduced sleep hours, were identified for self-perceived stress. Binary classification of healthy vs. at-risk classes yielded F1-Scores over 0.70. Conclusions: Combining SHAP with UMAP for risk profile stratification offers valuable insights for developing effective interventions and shaping public health policies. This data-driven approach to mental health preparedness, when validated in real-world scenarios, can significantly address the mental health impact of public health crises like COVID-19.</dc:description>
               <dc:date>2024-11-26T07:34:50Z</dc:date>
               <dc:date>2024-11-26T07:34:50Z</dc:date>
               <dc:date>2024</dc:date>
               <dc:type>info:eu-repo/semantics/article</dc:type>
               <dc:type>info:eu-repo/semantics/publishedVersion</dc:type>
               <dc:relation>Artif Intell Med. 2024 Nov;157:102991</dc:relation>
               <dc:rights>© 2024 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).</dc:rights>
               <dc:rights>http://creativecommons.org/licenses/by-nc-nd/4.0/</dc:rights>
               <dc:rights>info:eu-repo/semantics/openAccess</dc:rights>
               <dc:publisher>Elsevier</dc:publisher>
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