health prediction

  • 文章类型: Journal Article
    人工智能(AI)的发展彻底改变了医疗系统,使医疗保健专业人员能够分析复杂的非线性大数据并识别隐藏的模式,促进明智的决策。在过去的十年里,人工智能的研究有一个显著的趋势,机器学习(ML)以及它们在健康和医疗系统中的相关算法。这些方法改变了医疗保健系统,提高效率,准确度,个性化治疗,和决策。认识到主题领域研究的重要性和发展趋势,本文对健康和医疗系统中的人工智能进行了文献计量分析。本文利用了WebofScience(WoS)核心收藏数据库,考虑过去四十年在主题领域发表的文件。从1983年到2022年,共确认了64,063篇论文。本文从不同角度对文献计量数据进行了评价,例如发表的年度论文,年度引文,被高度引用的论文,和大多数生产性机构,和国家。本文通过呈现作者关键词的书目耦合和共同出现,将各种科学行为者之间的关系可视化。分析表明,该领域在1970年代末和1980年代初开始了显着的增长,2019年以来大幅增长。最有影响力的机构在美国和中国。该研究还表明,科学界的热门关键词包括“ML”,\'深度学习\',和“人工智能”。
    The development of artificial intelligence (AI) has revolutionised the medical system, empowering healthcare professionals to analyse complex nonlinear big data and identify hidden patterns, facilitating well-informed decisions. Over the last decade, there has been a notable trend of research in AI, machine learning (ML), and their associated algorithms in health and medical systems. These approaches have transformed the healthcare system, enhancing efficiency, accuracy, personalised treatment, and decision-making. Recognising the importance and growing trend of research in the topic area, this paper presents a bibliometric analysis of AI in health and medical systems. The paper utilises the Web of Science (WoS) Core Collection database, considering documents published in the topic area for the last four decades. A total of 64,063 papers were identified from 1983 to 2022. The paper evaluates the bibliometric data from various perspectives, such as annual papers published, annual citations, highly cited papers, and most productive institutions, and countries. The paper visualises the relationship among various scientific actors by presenting bibliographic coupling and co-occurrences of the author\'s keywords. The analysis indicates that the field began its significant growth in the late 1970s and early 1980s, with significant growth since 2019. The most influential institutions are in the USA and China. The study also reveals that the scientific community\'s top keywords include \'ML\', \'Deep Learning\', and \'Artificial Intelligence\'.
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  • 文章类型: Journal Article
    背景:人工智能的空前发展彻底改变了医疗保健行业。在下一代医疗保健系统中,自我诊断将是个性化医疗服务的关键。在COVID-19大流行期间,移动医疗等新的筛查和诊断方法在减少疾病传播和克服地理障碍方面处于有利地位。本文提出了一种非侵入性筛查方法,可以使用机器学习技术从视觉上可观察的特征中预测人的健康状况。使用相机或移动设备获取患者的面部和皮肤表面等图像,并对其进行分析,以得出临床推理和对患者健康的预测。方法:具体而言,提出了一种两级分类方法。所提出的分层模型通过在层次结构的节点处训练二元分类器来选择类。然后使用一组特定于类别的简化特征集进行预测。结果:一级和二级分类的测试准确率分别为86.87%和76.84%。实证结果表明,所提出的方法产生了良好的预测结果,同时大大减少了计算时间。结论:研究表明,使用具有成本效益的机器学习方法,可以根据一个人的面部外观来预测他/她的健康状况。
    Background: The unprecedented development of Artificial Intelligence has revolutionised the healthcare industry. In the next generation of healthcare systems, self-diagnosis will be pivotal to personalised healthcare services. During the COVID-19 pandemic, new screening and diagnostic approaches like mobile health are well-positioned to reduce disease spread and overcome geographical barriers. This paper presents a non-invasive screening approach to predict the health of a person from visually observable features using machine learning techniques. Images like face and skin surface of the patients are acquired using camera or mobile devices and analysed to derive clinical reasoning and prediction of the person\'s health. Methods: In specific, a two-level classification approach is presented. The proposed hierarchical model chooses a class by training a binary classifier at the node of the hierarchy. Prediction is then made using a set of class-specific reduced feature set. Results: Testing accuracies of 86.87% and 76.84% are reported for the first and second-level classification. Empirical results demonstrate that the proposed approach yields favourable prediction results while greatly reduces the computational time. Conclusions: The study suggests that it is possible to predict the health condition of a person based on his/her face appearance using cost-effective machine learning approaches.
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  • 文章类型: Journal Article
    Health and social care services are crucial to old people. The provision of services to the elderly with care needs requires more accurate predictions of the health status of the elderly to rationalize the allocation of the limited social care resources. The traditional analytical methods have proved incapable of predicting the demands of today\'s society, compared to which machine learning methods can more accurately capture the nonlinear relationships between the variables. To ascertain visually the performance of these machine learning methods regarding the prediction of the elderly\'s care needs, we designed and verified the experiment.
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