Stigma, biomarkers, and algorithmic bias: recommendations for precision behavioral health with artificial intelligence

污名、生物标志物和算法偏差:利用人工智能实现精准行为健康的建议

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Abstract

Effective implementation of artificial intelligence in behavioral healthcare delivery depends on overcoming challenges that are pronounced in this domain. Self and social stigma contribute to under-reported symptoms, and under-coding worsens ascertainment. Health disparities contribute to algorithmic bias. Lack of reliable biological and clinical markers hinders model development, and model explainability challenges impede trust among users. In this perspective, we describe these challenges and discuss design and implementation recommendations to overcome them in intelligent systems for behavioral and mental health.

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