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首页> 外文期刊>Informatics in Medicine Unlocked >AI applications in robotics, diagnostic image analysis and precision medicine: Current limitations, future trends, guidelines on CAD systems for medicine
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AI applications in robotics, diagnostic image analysis and precision medicine: Current limitations, future trends, guidelines on CAD systems for medicine

机译:机器人中的AI应用,诊断图像分析和精密药:当前限制,未来趋势,医学CAD系统的指导方针

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BackgroundAI in medicine has been recognized by both academia and industry in revolutionizing how healthcare services will be offered by providers and perceived by all stakeholders.ObjectivesWe aim to review recent tendencies in building AI applications for medicine and foster its further development by outlining obstacles. Sub-objectives: (1) to highlight AI techniques that we have identified as key areas of AI-related research in healthcare; (2) to offer guidelines on building reliable AI-based CAD-systems for medicine; and (3) to reveal open research questions, challenges, and directions for future research.MethodsTo address the tasks, we performed a systematic review of the references on the main branches of AI applications for medical purposes. We focused primarily on limitations of the reviewed studies.ConclusionsThis study provides a summary of AI-related research in healthcare, it discusses the challenges and proposes open research questions for further research. Robotics has taken huge leaps in improving the healthcare services in a variety of medical sectors, including oncology and surgical interventions. In addition, robots are now replacing human assistants as they learn to become more sociable and reliable. However, there are challenges that must still be addressed to enable the use of medical robots in diagnostics and interventions. AI for medical imaging eliminates subjectivity in a visual diagnostic procedure and allows for the combining of medical imaging with clinical data, lifestyle risks and demographics. Disadvantages of AI solutions for radiology include both a lack of transparency and dedication to narrowed diagnostic questions. Designing an optimal automatic classifier should incorporate both expert knowledge on a disease and state-of-the-art computer vision techniques. AI in precision medicine and oncology allows for risk stratification due to genomics aberrations discovered on molecular testing. To summarize, AI cannot substitute a medical doctor. However, medicine may benefit from robotics, a CAD, and AI-based personalized approach.
机译:在医学中的背景下,学术界和行业都得到了彻底改变医疗保健服务如何由提供者提供并由所有利益相关者所察觉。旨在审查最近在建立AI医学申请的趋势,并通过概述障碍培养其进一步发展的趋势。子目标:(1)突出显示我们已被确定为Healthcare相关的AI相关研究的关键领域的技术; (2)提供有关建立可靠的AI基CAD系统的准则; (3)揭示未来研究的开放研究问题,挑战和方向.Thodsto解决任务,我们对医疗目的的AI应用主要分支机构进行了系统审查。我们主要专注于审查研究的局限性。结论司令部研究提供了与医疗保健相关的AI相关研究摘要,讨论了挑战,并提出了开放的研究问题以获得进一步研究。机器人在改善各种医疗领域的医疗保健服务方面取得了巨大的突飞猛进,包括肿瘤学和外科手术。此外,机器人现在正在取代人类助理,因为他们学会变得更具交易和可靠。但是,仍有挑战必须解决,以便在诊断和干预中使用医疗机器人。用于医学成像的AI消除了视觉诊断程序中的主观性,并允许与临床数据,生活方式风险和人口统计学的医学成像组合。 AI解吸解决方案的缺点包括缺乏透明度和致力于缩小诊断问题。设计最佳的自动分类器应纳入疾病和最先进的计算机视觉技术的专家知识。精确药物和肿瘤学中的AI允许由于在分子测试上发现的基因组学等离子体等离子体等离子体的风险分层。总而言之,AI不能替代医生。然而,药物可能会受益于机器人,CAD和基于AI的个性化方法。

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