Characterizing Autism Spectrum Disorder and Predicting Suicide Risk for Pediatric Psychiatric Emergency Services Encounters.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Katherine A Brown, Kathleen R Donise, Mary Kathryn Cancilliere, Dilum P Aluthge, Elizabeth S Chen
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Abstract

Individuals diagnosed with autism spectrum disorder (ASD) are at a higher risk for mental health concerns including suicidal thoughts and behaviors (STB). Limited studies have focused on suicidal risk factors that are more prevalent or unique to the population with ASD. This study sought to characterize and classify youth presenting to the psychiatric emergency department (ED) for a chief complaint of STB. The results of this study validated that a high number of patients with ASD present to the ED with STB. There were important differences in clinical characteristics to those with ASD versus those without. Clinical features that showed important impact in predicting high suicide risk in the ASD cases include elements of the mental status exam such as affect, trauma symptoms, abuse history, and auditory hallucinations. Focused attention is needed on these unique differences in ASD cases so that suicide risk level can be appropriately and promptly addressed.

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确定自闭症谱系障碍的特征并预测儿科精神科急诊就诊者的自杀风险。
被诊断患有自闭症谱系障碍(ASD)的人有更高的心理健康风险,包括自杀想法和行为(STB)。有关自闭症谱系障碍人群更普遍或更独特的自杀风险因素的研究十分有限。本研究旨在对因 STB 主诉而到精神科急诊室(ED)就诊的青少年进行特征描述和分类。研究结果证实,有大量 ASD 患者因 STB 到急诊科就诊。患有 ASD 的患者与未患有 ASD 的患者在临床特征上存在重要差异。在 ASD 病例中,对预测高自杀风险有重要影响的临床特征包括精神状态检查的要素,如情感、创伤症状、虐待史和幻听。我们需要重点关注 ASD 病例中的这些独特差异,以便适当、及时地应对自杀风险水平。
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