机器学习医学时代的系统性狼疮

IF 3.7 2区 医学 Q1 RHEUMATOLOGY
Kevin Zhan, Katherine A Buhler, Irene Y Chen, Marvin J Fritzler, May Y Choi
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引用次数: 0

摘要

人工智能和机器学习应用正在成为医学领域的变革性技术。随着对各种大数据集的访问越来越多,研究人员正在转向使用这些强大的技术进行数据分析。与传统统计方法相比,机器学习能更准确、更高效地揭示大型复杂数据集中变量之间的模式和相互作用。机器学习方法为研究系统性红斑狼疮这种多因素、高度异质性的复杂疾病提供了新的可能性。在此,我们将讨论机器学习方法如何迅速融入系统性红斑狼疮研究领域。最近的报道主要集中在利用监督和非监督技术建立预测模型和/或识别新型生物标志物,以了解疾病的发病机制、早期诊断和预后。在本综述中,我们将概述机器学习技术,讨论系统性红斑狼疮研究目前存在的差距、挑战和机遇。在临床应用之前,大多数预测模型仍需要外部验证。利用深度学习模型、获取其他健康数据源以及提高对医学中使用人工智能的伦理、管理和法规的认识,将有助于推动这一令人兴奋的领域向前发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Systemic lupus in the era of machine learning medicine
Artificial intelligence and machine learning applications are emerging as transformative technologies in medicine. With greater access to a diverse range of big datasets, researchers are turning to these powerful techniques for data analysis. Machine learning can reveal patterns and interactions between variables in large and complex datasets more accurately and efficiently than traditional statistical methods. Machine learning approaches open new possibilities for studying SLE, a multifactorial, highly heterogeneous and complex disease. Here, we discuss how machine learning methods are rapidly being integrated into the field of SLE research. Recent reports have focused on building prediction models and/or identifying novel biomarkers using both supervised and unsupervised techniques for understanding disease pathogenesis, early diagnosis and prognosis of disease. In this review, we will provide an overview of machine learning techniques to discuss current gaps, challenges and opportunities for SLE studies. External validation of most prediction models is still needed before clinical adoption. Utilisation of deep learning models, access to alternative sources of health data and increased awareness of the ethics, governance and regulations surrounding the use of artificial intelligence in medicine will help propel this exciting field forward.
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来源期刊
Lupus Science & Medicine
Lupus Science & Medicine RHEUMATOLOGY-
CiteScore
5.30
自引率
7.70%
发文量
88
审稿时长
15 weeks
期刊介绍: Lupus Science & Medicine is a global, peer reviewed, open access online journal that provides a central point for publication of basic, clinical, translational, and epidemiological studies of all aspects of lupus and related diseases. It is the first lupus-specific open access journal in the world and was developed in response to the need for a barrier-free forum for publication of groundbreaking studies in lupus. The journal publishes research on lupus from fields including, but not limited to: rheumatology, dermatology, nephrology, immunology, pediatrics, cardiology, hepatology, pulmonology, obstetrics and gynecology, and psychiatry.
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