利用人工智能来推进系统性硬化症、皮肤和肺部疾病的研究。

IF 4.3 2区 医学 Q1 RHEUMATOLOGY
Current opinion in rheumatology Pub Date : 2025-11-01 Epub Date: 2025-08-06 DOI:10.1097/BOR.0000000000001114
Kimberly S Lakin, Michael Parides, Jessica K Gordon
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引用次数: 0

摘要

综述目的:本综述的目的是总结到2024年人工智能在推进系统性硬化症(SSc)皮肤和肺部疾病研究中的应用。近年来,人工智能在SSc研究中的应用得到了显著扩展。最常见的人工智能方法是用于预测建模的监督机器学习。监督式机器学习使用带有已知结果标记的输入数据来训练模型,以便在遇到新数据时预测结果。使用机器学习辅助的特征选择和后训练特征重要性技术也突出了复杂数据集中的关键预测因素,为不同患者结果的可能机制提供了信息。此外,无监督机器学习方法已被用于识别具有不同临床轨迹的患者亚群。无监督机器学习识别数据集中具有相似特征的组,而不考虑特定的结果。使用深度学习的数字图像分析也被用于肺成像研究,以量化间质性肺病(ILD)的程度和自动化ILD亚型分类,以及皮肤活检分析,以量化组织学变化。这些可扩展的工具可以有效地自动化预测评估,以供不同地方专业知识的中心使用。摘要:人工智能代表了一种分析高维、复杂数据集的工具,即使在相对较小的SSc队列中也能得出稳健的结果。迄今为止,人工智能驱动的SSc皮肤和肺部疾病的见解主要集中在识别患者亚群,量化疾病严重程度以及建立预测模型以告知个性化患者护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing artificial intelligence to advance insights in systemic sclerosis skin and lung disease.

Purpose of review: The purpose of this review is to summarize the uses of artificial intelligence for advancing systemic sclerosis (SSc) skin and lung disease research through 2024.

Recent findings: Applications of AI in SSc research have expanded markedly in recent years. The most common artificial intelligence method identified was supervised machine learning for predictive modeling. Supervised machine learning uses input data labeled with a known outcome to train a model to predict outcomes when encountering new data. Using machine learningassisted feature selection and posttraining feature importance techniques also highlighted key predictors within complex datasets, informing possible mechanisms underlying heterogeneous patient outcomes. Additionally, unsupervised machine learning approaches have been used to identify patient subsets with distinct clinical trajectories. Unsupervised machine learning identifies groups with similar characteristics within a dataset, without considering a specific outcome. Digital image analysis using deep learning has also been undertaken in lung imaging studies to quantify interstitial lung disease (ILD) extent and automate ILD subtype classification, as well as skin biopsy analysis to quantify histologic changes. These scalable tools could efficiently automate prognostic assessments for use across centers of varying local expertise.

Summary: Artificial intelligence represents a tool for analyzing high-dimensional, complex datasets to derive robust results, even within relatively small SSc cohorts. To date, artificial intelligence driven insights to SSc skin and lung disease have focused on identifying patient subsets, quantifying disease severity, and building predictive models to inform personalized patient care.

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来源期刊
Current opinion in rheumatology
Current opinion in rheumatology 医学-风湿病学
CiteScore
9.70
自引率
2.00%
发文量
89
审稿时长
6-12 weeks
期刊介绍: A high impact review journal which boasts an international readership, Current Opinion in Rheumatology offers a broad-based perspective on the most recent and exciting developments within the field of rheumatology. Published bimonthly, each issue features insightful editorials and high quality invited reviews covering two or three key disciplines which include vasculitis syndromes, medical physiology and rheumatic diseases, crystal deposition diseases and rheumatoid arthritis. Each discipline introduces world renowned guest editors to ensure the journal is at the forefront of knowledge development and delivers balanced, expert assessments of advances from the previous year.
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