推进护理领域的人工智能数据伦理:护理实践、研究和教育的未来方向。

JMIR nursing Pub Date : 2024-10-25 DOI:10.2196/62678
Patricia A Ball Dunlap, Martin Michalowski
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引用次数: 0

摘要

无标签:由于算法偏见、不透明、信任问题、数据安全和公平性等问题,人工智能(AI)的伦理问题日益受到关注。具体来说,机器学习算法是人工智能技术的核心,对于努力建立模仿人类智能的伦理健全系统至关重要。这些技术在很大程度上依赖于数据,而这些数据在复杂的系统中往往是模糊不清的,因此必须优先进行符合伦理的收集、处理和使用。数据伦理对实现负责任的人工智能的重要意义,首先在更广泛的医疗保健领域得到强调,随后又在护理领域得到强调。这一观点借鉴了通过正式文献综述确定的相关框架和策略,探讨了数据伦理的原则。这些原则适用于人工智能和机器学习环境中的真实世界数据和合成数据。此外,本文还简要探讨了以数据为中心的人工智能范式,强调其重点在于数据质量以及结合以人为本的领域专业知识的人工智能解决方案的伦理开发。此外,还讨论了护理领域特有的伦理考虑因素,包括对护理实践、研究和教育未来方向的 4 项建议,以及 2 个以护士为重点的假设伦理案例研究。主要目的是让护士积极参与人工智能和数据伦理,从而为机器学习应用创建高质量的相关数据做出贡献。
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Advancing AI Data Ethics in Nursing: Future Directions for Nursing Practice, Research, and Education.

Unlabelled: The ethics of artificial intelligence (AI) are increasingly recognized due to concerns such as algorithmic bias, opacity, trust issues, data security, and fairness. Specifically, machine learning algorithms, central to AI technologies, are essential in striving for ethically sound systems that mimic human intelligence. These technologies rely heavily on data, which often remain obscured within complex systems and must be prioritized for ethical collection, processing, and usage. The significance of data ethics in achieving responsible AI was first highlighted in the broader context of health care and subsequently in nursing. This viewpoint explores the principles of data ethics, drawing on relevant frameworks and strategies identified through a formal literature review. These principles apply to real-world and synthetic data in AI and machine-learning contexts. Additionally, the data-centric AI paradigm is briefly examined, emphasizing its focus on data quality and the ethical development of AI solutions that integrate human-centered domain expertise. The ethical considerations specific to nursing are addressed, including 4 recommendations for future directions in nursing practice, research, and education and 2 hypothetical nurse-focused ethical case studies. The primary objectives are to position nurses to actively participate in AI and data ethics, thereby contributing to creating high-quality and relevant data for machine learning applications.

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来源期刊
CiteScore
5.20
自引率
0.00%
发文量
0
审稿时长
16 weeks
期刊最新文献
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