| Literature DB >> 35024859 |
Aviv Y Landau1, Susi Ferrarello2, Ashley Blanchard3, Kenrick Cato4, Nia Atkins5, Stephanie Salazar6, Desmond U Patton6, Maxim Topaz7.
Abstract
Child abuse and neglect are public health issues impacting communities throughout the United States. The broad adoption of electronic health records (EHR) in health care supports the development of machine learning-based models to help identify child abuse and neglect. Employing EHR data for child abuse and neglect detection raises several critical ethical considerations. This article applied a phenomenological approach to discuss and provide recommendations for key ethical issues related to machine learning-based risk models development and evaluation: (1) biases in the data; (2) clinical documentation system design issues; (3) lack of centralized evidence base for child abuse and neglect; (4) lack of "gold standard "in assessment and diagnosis of child abuse and neglect; (5) challenges in evaluation of risk prediction performance; (6) challenges in testing predictive models in practice; and (7) challenges in presentation of machine learning-based prediction to clinicians and patients. We provide recommended solutions to each of the 7 ethical challenges and identify several areas for further policy and research.Entities:
Keywords: child abuse and neglect; electronic health records; machine learning–based risk models; pediatric emergency departments; phenomenological ethics
Mesh:
Year: 2022 PMID: 35024859 PMCID: PMC8800514 DOI: 10.1093/jamia/ocab286
Source DB: PubMed Journal: J Am Med Inform Assoc ISSN: 1067-5027 Impact factor: 4.497