2023
DOI: 10.1101/2023.10.23.23297438
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Predicting new onset thought disorder in early adolescence with optimized deep learning implicates environmental-putamen interactions

Nina de Lacy,
Michael J. Ramshaw

Abstract: Background: Thought disorder (TD) is a sensitive and specific marker of risk for schizophrenia onset. Specifying factors that predict TD onset in adolescence is important to early identification of youth at risk. However, there is a paucity of studies prospectively predicting TD onset in unstratified youth populations. Study Design: We used deep learning optimized with artificial intelligence (AI) to analyze 5,777 multimodal features obtained at 9-10 years from youth and their parents in the ABCD study, includ… Show more

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