行动号召
心理健康
心理学
动作(物理)
认知心理学
应用心理学
精神科
量子力学
物理
业务
营销
作者
Adela C. Timmons,Jacqueline B. Duong,Natalia Simo Fiallo,Theodore Lee,Huong Phuc Quynh Vo,Matthew W. Ahle,Jonathan S. Comer,LaPrincess C. Brewer,Stacy L. Frazier,Theodora Chaspari
标识
DOI:10.1177/17456916221134490
摘要
Advances in computer science and data-analytic methods are driving a new era in mental health research and application. Artificial intelligence (AI) technologies hold the potential to enhance the assessment, diagnosis, and treatment of people experiencing mental health problems and to increase the reach and impact of mental health care. However, AI applications will not mitigate mental health disparities if they are built from historical data that reflect underlying social biases and inequities. AI models biased against sensitive classes could reinforce and even perpetuate existing inequities if these models create legacies that differentially impact who is diagnosed and treated, and how effectively. The current article reviews the health-equity implications of applying AI to mental health problems, outlines state-of-the-art methods for assessing and mitigating algorithmic bias, and presents a call to action to guide the development of
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