青光眼视野测试中的大数据。

IF 1 Q4 OPHTHALMOLOGY Taiwan Journal of Ophthalmology Pub Date : 2024-09-13 eCollection Date: 2024-07-01 DOI:10.4103/tjo.TJO-D-24-00059
Alex T Pham, Annabelle A Pan, Jithin Yohannan
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引用次数: 0

摘要

近年来,医疗保健领域的技术进步和不断增长的数据库推动了 "大数据 "分析法的出现。大数据有可能彻底改变医疗保健行业,尤其是眼科,因为眼科是数据密集型的医学专业。青光眼是导致全球不可逆转性失明的主要原因之一,它是一种眼科疾病,在眼科护理领域的创新发展中备受关注。青光眼最重要的数据来源之一是视野(VF)检测,它是诊断和管理该疾病的基石。随着大型视野数据库可访问性的不断扩大,调查大数据分析在青光眼中的各种应用的研究激增。在本研究中,我们回顾了大数据在以下方面的应用:评估VF测试的可靠性、深入了解真实世界的临床实践和结果、了解新的疾病关联和风险因素、描述VF丧失的模式、定义青光眼的结构-功能关系、加强早期诊断或更早发现病情发展、为临床决策提供信息以及改进临床试验。同样重要的是,我们将讨论当前大数据分析面临的挑战和未来的改进方向。
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Big data in visual field testing for glaucoma.

Recent technological advancements and the advent of ever-growing databases in health care have fueled the emergence of "big data" analytics. Big data has the potential to revolutionize health care, particularly ophthalmology, given the data-intensive nature of the medical specialty. As one of the leading causes of irreversible blindness worldwide, glaucoma is an ocular disease that receives significant interest for developing innovations in eye care. Among the most vital sources of data in glaucoma is visual field (VF) testing, which stands as a cornerstone for diagnosing and managing the disease. The expanding accessibility of large VF databases has led to a surge in studies investigating various applications of big data analytics in glaucoma. In this study, we review the use of big data for evaluating the reliability of VF tests, gaining insights into real-world clinical practices and outcomes, understanding new disease associations and risk factors, characterizing the patterns of VF loss, defining the structure-function relationship of glaucoma, enhancing early diagnosis or earlier detection of progression, informing clinical decisions, and improving clinical trials. Equally important, we discuss current challenges in big data analytics and future directions for improvement.

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来源期刊
CiteScore
1.80
自引率
9.10%
发文量
68
审稿时长
19 weeks
期刊最新文献
Advancing glaucoma care with big data and artificial intelligence innovations. Application of artificial intelligence in glaucoma care: An updated review. Artificial intelligence and big data integration in anterior segment imaging for glaucoma. Big data and electronic health records for glaucoma research. Big data for imaging assessment in glaucoma.
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