Navigating the Ethical Landscape: Implementing Machine Learning in Smart Healthcare Informatics

IF 0.2 Q4 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Indian Journal of Community Health Pub Date : 2024-02-29 DOI:10.47203/ijch.2024.v36i01.024
Animesh Kumar Sharma, Rahul Sharma
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Abstract

The integration of Machine Learning (ML) into healthcare informatics holds immense promise, revolutionizing patient care and treatment strategies. However, as this technology advances, it brings forth ethical challenges crucial for careful navigation. ML offers unprecedented abilities to analyze vast healthcare data, leading to personalized medicine and improved outcomes. Yet, ethical concerns emerge, notably in privacy protection, algorithm bias, transparency, informed consent, and data quality. Transparency, explainability, and patient autonomy in decision-making processes are crucial to foster trust and accountability. Striking a balance between innovation and compliance, ensuring data quality, and promoting human-AI collaboration are essential. Addressing these challenges demands adherence to ethical frameworks, continuous monitoring, multidisciplinary governance, education, and regulatory compliance. To fully harness ML's potential in healthcare while upholding ethical standards, collaboration among stakeholders is imperative, ensuring patient welfare remains central amid technological advancements. Ethical considerations must be embedded at every stage of ML implementation to maintain an ethical, equitable, and patient-centered healthcare system.
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驾驭伦理环境:在智能医疗信息学中实施机器学习
将机器学习(ML)融入医疗信息学大有可为,它将彻底改变患者护理和治疗策略。然而,随着这项技术的不断进步,它也带来了伦理方面的挑战,这对谨慎操作至关重要。ML 提供了前所未有的能力来分析庞大的医疗数据,从而实现个性化医疗并改善治疗效果。然而,伦理问题也随之而来,尤其是在隐私保护、算法偏差、透明度、知情同意和数据质量方面。决策过程中的透明度、可解释性和患者自主权对于促进信任和问责制至关重要。在创新与合规之间取得平衡、确保数据质量以及促进人类与人工智能的合作至关重要。应对这些挑战需要遵守道德框架、持续监控、多学科治理、教育和监管合规。要充分利用人工智能在医疗保健领域的潜力,同时坚持道德标准,利益相关者之间的合作势在必行,确保在技术进步的同时,患者的福利仍然是核心。在实施人工智能的每个阶段都必须考虑道德因素,以维护一个合乎道德、公平和以患者为中心的医疗保健系统。
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来源期刊
Indian Journal of Community Health
Indian Journal of Community Health PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
0.60
自引率
0.00%
发文量
89
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