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Conceptualising Artificial Intelligence as a Digital Healthcare Innovation: An Introductory Review

机译:概念性化人工智能作为数字医疗保健创新:介绍性审查

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Artificial intelligence (AI) is widely recognised as a transformative innovation and is already proving capable of outperforming human clinicians in the diagnosis of specific medical conditions, especially in image analysis within dermatology and radiology. These abilities are enhanced by the capacity of AI systems to learn from patient records, genomic information and real-time patient data. Uses of AI range from integrating with robotics to creating training material for clinicians. Whilst AI research is mounting, less attention has been paid to the practical implications on healthcare services and potential barriers to implementation. AI is recognised as a “Software as a Medical Device (SaMD)” and is increasingly becoming a topic of interest for regulators. Unless the introduction of AI is carefully considered and gradual, there are risks of automation bias, overdependence and long-term staffing problems. This is in addition to already well-documented generic risks associated with AI, such as data privacy, algorithmic biases and corrigibility. AI is able to potentiate innovations which preceded it, using Internet of Things, digitisation of patient records and genetic data as data sources. These synergies are important in both realising the potential of AI and utilising the potential of the data. As machine learning systems begin to cross-examine an array of databases, we must ensure that clinicians retain autonomy over the diagnostic process and understand the algorithmic processes generating diagnoses. This review uses established management literature to explore artificial intelligence as a digital healthcare innovation and highlight potential risks and opportunities.
机译:人工智能(AI)被广泛认为是转型性创新,并且已经证明能够优于人类临床医生在诊断特定医疗病症中,特别是皮肤病学和放射学的图像分析。通过AI系统从患者记录,基因组信息和实时患者数据学习的能力,这些能力增强。使用AI系列的用途与机器人集成到为临床医生创建培训材料。虽然AI研究正在安装,但对医疗服务和实施潜在障碍的实际意义造成了不太关注。 AI被认为是“作为医疗设备(SAMD)的软件”,越来越成为监管机构感兴趣的话题。除非仔细考虑和渐进引入AI,否则自动化偏见,过度依存和长期人员配置问题存在风险。这是已经与AI相关的已经有关的已良好记载的通用风险,例如数据隐私,算法偏差和易燃性。 AI能够强化在其前面的创新,使用互联网,患者记录和遗传数据的数字化作为数据来源。这些协同作用对于实现AI的潜力并利用数据的潜力来说很重要。由于机器学习系统开始交叉检查数据库数组,我们必须确保临床医生在诊断过程中保留自主权,并理解生成诊断的算法过程。该评价采用建立的管理文献,探讨人工智能作为数字医疗创新,并突出潜在的风险和机遇。

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