Mohsin Khan Muhammad, Shah Noman, Shaikh Nissar, Thabet Abdulnasser, Alrabayah Talal, Belkhair Sirajeddin
Neurosurgery Department, Hamad General Hospital, Qatar.
Neurosurgery Department, Abbottabad Medical Complex, Pakistan.
Int J Med Inform. 2025 Mar;195:105780. doi: 10.1016/j.ijmedinf.2024.105780. Epub 2024 Dec 30.
Artificial Intelligence is in the phase of health care, with transformative innovations in diagnostics, personalized treatment, and operational efficiency. While having potential, critical challenges are apparent in areas of safety, trust, security, and ethical governance. The development of these challenges is important for promoting the responsible adoption of AI technologies into healthcare systems.
This systematic review of studies published between 2010 and 2023 addressed the applications of AI in healthcare and their implications for safety, transparency, and ethics. A comprehensive search was performed in PubMed, IEEE Xplore, Scopus, and Google Scholar. Those studies that met the inclusion criteria provided empirical evidence, theoretical insights, or systematic evaluations addressing trust, security, and ethical considerations.
The analysis brought out both the innovative technologies and the continued challenges. Explainable AI (XAI) emerged as one of the significant developments. It made it possible for healthcare professionals to understand AI-driven recommendations, by this means increasing transparency and trust. Still, challenges in adversarial attacks, algorithmic bias, and variable regulatory frameworks remain strong. According to several studies, more than 60 % of healthcare professionals have expressed their hesitation in adopting AI systems due to a lack of transparency and fear of data insecurity. Moreover, the 2024 WotNot data breach uncovered weaknesses in AI technologies and highlighted the dire requirement for robust cybersecurity.
Full understanding of the potential of AI will be possible only with putting into practice of ethical and technical maintains in healthcare systems. Effective strategies would include integrating bias mitigation methods, strengthening cybersecurity protocols to prevent breaches. Also by adopting interdisciplinary collaboration with the goal of forming transparent regulatory guidelines. These are very important steps toward earning trust and ensuring that AI systems are safe, reliable, and fair.
AI can bring transformative opportunities to improve healthcare outcomes, but successful implementation will depend on overcoming the challenges of trust, security, and ethics. Future research should focus on testing these technologies in multiple real-world settings, enhance their scalability, and fine-tune regulations to facilitate accountability. Only by combining technological innovations with ethical principles and strong governance can AI reshape healthcare, ensuring at the same time safety and trustworthiness.
人工智能正处于医疗保健阶段,在诊断、个性化治疗和运营效率方面带来了变革性创新。虽然具有潜力,但在安全、信任、安保和伦理治理等领域,严峻的挑战显而易见。应对这些挑战对于推动人工智能技术在医疗系统中的负责任应用至关重要。
对2010年至2023年间发表的研究进行的这项系统综述,探讨了人工智能在医疗保健中的应用及其对安全、透明度和伦理的影响。在PubMed、IEEE Xplore、Scopus和谷歌学术上进行了全面搜索。那些符合纳入标准的研究提供了关于信任、安保和伦理考量的实证证据、理论见解或系统评估。
分析揭示了创新技术以及持续存在的挑战。可解释人工智能(XAI)成为重大进展之一。它使医疗保健专业人员能够理解人工智能驱动的建议,从而提高透明度和信任度。然而,对抗性攻击、算法偏差和多变的监管框架方面的挑战依然严峻。根据多项研究,超过60%的医疗保健专业人员因缺乏透明度和担心数据不安全而对采用人工智能系统表示犹豫。此外,2024年WotNot数据泄露事件揭示了人工智能技术的弱点,并凸显了对强大网络安全的迫切需求。
只有在医疗系统中实施伦理和技术维护,才能全面理解人工智能的潜力。有效的策略将包括整合偏差缓解方法、加强网络安全协议以防止数据泄露。还包括通过开展跨学科合作以形成透明的监管指南。这些都是赢得信任并确保人工智能系统安全、可靠和公平的非常重要的步骤。
人工智能可以带来改善医疗保健结果的变革性机遇,但成功实施将取决于克服信任、安全和伦理方面的挑战。未来的研究应侧重于在多个现实世界环境中测试这些技术,提高其可扩展性,并微调法规以促进问责制。只有将技术创新与伦理原则和强有力的治理相结合,人工智能才能重塑医疗保健,同时确保安全性和可信度。