user-centric interface

  • 文章类型: Journal Article
    临床决策支持系统(CDSS)是当代医疗保健中必不可少的工具,提高临床医生的决策和患者的预后。人工智能(AI)的集成现在正在进一步彻底改变CDSS。这篇综述深入探讨了人工智能技术转变CDSS,它们在医疗保健决策中的应用,相关挑战,以及充分发挥AI-CDSS潜力的潜在轨迹。审查首先为CDSS的定义及其在医疗保健领域的功能奠定了基础。然后强调了人工智能在提高CDSS有效性和效率方面发挥的日益重要的作用,强调其在塑造医疗保健实践方面不断发展的突出地位。它研究了将AI技术集成到CDSS中,包括神经网络和决策树等机器学习算法,自然语言处理,和深度学习。它还解决了与AI集成相关的挑战,比如可解释性和偏见。然后,我们转向CDSS中的AI应用程序,通过人工智能驱动诊断的真实例子,个性化治疗建议,风险预测,早期干预,和AI辅助的临床文档。该评论强调在AI-CDSS集成中以用户为中心的设计,解决可用性,信任,工作流,以及道德和法律方面的考虑。它承认普遍存在的障碍,并提出了成功采用AI-CDSS的策略,强调工作流程调整和跨学科协作的必要性。审查最后总结了主要发现,强调AI在CDSS中的变革潜力,并倡导继续研究和创新。它强调需要共同努力,以实现未来的AI驱动的CDSS优化医疗保健服务并改善患者预后。
    Clinical Decision Support Systems (CDSS) are essential tools in contemporary healthcare, enhancing clinicians\' decisions and patient outcomes. The integration of artificial intelligence (AI) is now revolutionizing CDSS even further. This review delves into AI technologies transforming CDSS, their applications in healthcare decision-making, associated challenges, and the potential trajectory toward fully realizing AI-CDSS\'s potential. The review begins by laying the groundwork with a definition of CDSS and its function within the healthcare field. It then highlights the increasingly significant role that AI is playing in enhancing CDSS effectiveness and efficiency, underlining its evolving prominence in shaping healthcare practices. It examines the integration of AI technologies into CDSS, including machine learning algorithms like neural networks and decision trees, natural language processing, and deep learning. It also addresses the challenges associated with AI integration, such as interpretability and bias. We then shift to AI applications within CDSS, with real-life examples of AI-driven diagnostics, personalized treatment recommendations, risk prediction, early intervention, and AI-assisted clinical documentation. The review emphasizes user-centered design in AI-CDSS integration, addressing usability, trust, workflow, and ethical and legal considerations. It acknowledges prevailing obstacles and suggests strategies for successful AI-CDSS adoption, highlighting the need for workflow alignment and interdisciplinary collaboration. The review concludes by summarizing key findings, underscoring AI\'s transformative potential in CDSS, and advocating for continued research and innovation. It emphasizes the need for collaborative efforts to realize a future where AI-powered CDSS optimizes healthcare delivery and improves patient outcomes.
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  • 文章类型: Editorial
    人工智能(AI)在医疗保健中的整合是医学范式转变的原因。OpenAI最近增强了其具有语音和图像识别功能的生成预训练转换器(ChatGPT)大型语言模型(LLM)(OpenAI,特拉华州)为医疗保健提供了另一种潜在的变革工具。设想一个医疗保健环境,专业人员与ChatGPT进行动态交互,以应对非典型医疗场景的复杂性。在这个创新的景观中,从业者可以征求ChatGPT的专业知识,从与类似医疗条件有关的无数基于网络的资源中进行简洁的总结和有见地的推断。此外,想象一下,患者使用ChatGPT来识别医学图像或皮肤病变中的异常。虽然前景多样,音频质量欠佳和确保数据安全等挑战需要在医疗实践中谨慎整合。从以前的ChatGPT迭代中汲取见解可以为导航可能的挑战提供审慎的路线图。这篇社论探讨了ChatGPT在医疗保健中增强功能的一些可能的视野和潜在障碍,强调不断改进和保持警惕的重要性,以最大限度地提高收益,同时最大限度地降低风险。通过AI开发人员和医疗保健专业人员之间的合作,人工智能和医疗保健的另一种融合可以演变成丰富的患者护理和增强的医疗体验。
    The integration of artificial intelligence (AI) in healthcare is responsible for a paradigm shift in medicine. OpenAI\'s recent augmentation of their Generative Pre-trained Transformer (ChatGPT) large language model (LLM) with voice and image recognition capabilities (OpenAI, Delaware) presents another potential transformative tool for healthcare. Envision a healthcare setting where professionals engage in dynamic interactions with ChatGPT to navigate the complexities of atypical medical scenarios. In this innovative landscape, practitioners could solicit ChatGPT\'s expertise for concise summarizations and insightful extrapolations from a myriad of web-based resources pertaining to similar medical conditions. Furthermore, imagine patients using ChatGPT to identify abnormalities in medical images or skin lesions. While the prospects are diverse, challenges such as suboptimal audio quality and ensuring data security necessitate cautious integration in medical practice. Drawing insights from previous ChatGPT iterations could provide a prudent roadmap for navigating possible challenges. This editorial explores some possible horizons and potential hurdles of ChatGPT\'s enhanced functionalities in healthcare, emphasizing the importance of continued refinements and vigilance to maximize the benefits while minimizing risks. Through collaborative efforts between AI developers and healthcare professionals, another fusion of AI and healthcare can evolve into enriched patient care and enhanced medical experience.
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