arXiv Open Access 2025

Bias Detection in Emergency Psychiatry: Linking Negative Language to Diagnostic Disparities

Alissa A. Valentine Lauren A. Lepow Lili Chan Alexander W. Charney Isotta Landi
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Abstrak

The emergency department (ED) is a high stress environment with increased risk of clinician bias exposure. In the United States, Black patients are more likely than other racial/ethnic groups to obtain their first schizophrenia (SCZ) diagnosis in the ED, a highly stigmatizing disorder. Therefore, understanding the link between clinician bias exposure and psychiatric outcomes is critical for promoting nondiscriminatory decision-making in the ED. This study examines the association between clinician bias exposure and psychiatric diagnosis using a sample of patients with anxiety, bipolar, depression, trauma, and SCZ diagnoses (N=29,005) from a diverse, large medical center. Clinician bias exposure was quantified as the ratio of negative to total number of sentences in psychiatric notes, labeled using a large language model (Mistral). We utilized logistic regression to predict SCZ diagnosis when controlling for patient demographics, risk factors, and negative sentence ratio (NSR). A high NSR significantly increased one's odds of obtaining a SCZ diagnosis and attenuated the effects of patient race. Black male patients with high NSR had the highest odds of being diagnosed with SCZ. Our findings suggest sentiment-based metrics can operationalize clinician bias exposure with real world data and reveal disparities beyond race or ethnicity.

Topik & Kata Kunci

Penulis (5)

A

Alissa A. Valentine

L

Lauren A. Lepow

L

Lili Chan

A

Alexander W. Charney

I

Isotta Landi

Format Sitasi

Valentine, A.A., Lepow, L.A., Chan, L., Charney, A.W., Landi, I. (2025). Bias Detection in Emergency Psychiatry: Linking Negative Language to Diagnostic Disparities. https://arxiv.org/abs/2509.02651

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓