tailieunhanh - Assessing socioeconomic bias in machine learning algorithms in health care: A case study of the HOUSES index

Artificial intelligence (AI) models may propagate harmful biases in performance and hence negatively affect the underserved. We aimed to assess the degree to which data quality of electronic health records (EHRs) affected by inequities related to low socioeconomic status (SES), results in differential performance of AI models across SES. |

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