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was superior, suggesting that modeling interactions among predictors is essential for predicting treatment response</image:caption></image:image><image:image><image:loc>https://gloriathan.com/wp-content/uploads/2022/09/abdominal-pain-model-comparison-1.png</image:loc><image:title>abdominal-pain-model-comparison-1</image:title><image:caption>Model comparison study investigating different machine learning algorithms for predicting individualized treatment response to CBT for pediatric chronic pain</image:caption></image:image><image:image><image:loc>https://gloriathan.com/wp-content/uploads/2022/09/networkplot-4.png</image:loc><image:title>networkplot-4</image:title><image:caption>Using network analysis to understand connections between autism-related approach-withdrawal behaviors and co-occurring psychiatric conditions (Han, Kala, ..., McPartland, under 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