基于多模态机器学习的标记可实现高尿酸血症的早期检测和预后预测

IF 14.3 1区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY Advanced Science Pub Date : 2024-07-08 DOI:10.1002/advs.202404047
Lin Zeng, Pengcheng Ma, Zeyang Li, Shengxing Liang, Chengkai Wu, Chang Hong, Yan Li, Hao Cui, Ruining Li, Jiaren Wang, Jingzhe He, Wenyuan Li, Lushan Xiao, Li Liu
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摘要

高尿酸血症(HUA)已成为第二大代谢性疾病,其特点是无症状期长,引发痛风和代谢相关的后果。对高尿酸血症和痛风的早期检测和预后预测对于预先干预至关重要。通过整合来自 421287 名英国生物库参与者和 8900 名南方医院参与者的遗传和临床数据,开发并验证了一个叠加的多模态机器学习模型,以综合其作为高尿酸血症(ISHUA)的体内定量标记物的概率。该模型在检测高尿酸血症方面表现令人满意,在训练集、内部测试集和外部测试集中的曲线下面积(AUC)分别为 0.859、0.836 和 0.779。ISHUA与痛风和代谢相关结果有明显关联,在训练集(AUC,0.815)和内部测试集(AUC,0.814)中有效地将个体分为痛风低风险组和高风险组。高风险组显示出对代谢相关结果的易感性增加,与生活方式不良的参与者相比,生活方式中等或良好的参与者患痛风的危险比分别为 0.75 和 0.53。其他代谢相关结果也有类似趋势。基于多模态机器学习的 ISHUA 标志可对痛风和代谢相关结果进行个性化风险分层,并揭示了改变生活方式可改善高风险人群的这些结果,为预防性干预措施提供指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Multimodal Machine Learning-Based Marker Enables Early Detection and Prognosis Prediction for Hyperuricemia.

Hyperuricemia (HUA) has emerged as the second most prevalent metabolic disorder characterized by prolonged and asymptomatic period, triggering gout and metabolism-related outcomes. Early detection and prognosis prediction for HUA and gout are crucial for pre-emptive interventions. Integrating genetic and clinical data from 421287 UK Biobank and 8900 Nanfang Hospital participants, a stacked multimodal machine learning model is developed and validated to synthesize its probabilities as an in-silico quantitative marker for hyperuricemia (ISHUA). The model demonstrates satisfactory performance in detecting HUA, exhibiting area under the curves (AUCs) of 0.859, 0.836, and 0.779 within the train, internal, and external test sets, respectively. ISHUA is significantly associated with gout and metabolism-related outcomes, effectively classifying individuals into low- and high-risk groups for gout in the train (AUC, 0.815) and internal test (AUC, 0.814) sets. The high-risk group shows increased susceptibility to metabolism-related outcomes, and participants with intermediate or favorable lifestyle profiles have hazard ratios of 0.75 and 0.53 for gout compared with those with unfavorable lifestyles. Similar trends are observed for other metabolism-related outcomes. The multimodal machine learning-based ISHUA marker enables personalized risk stratification for gout and metabolism-related outcomes, and it is unveiled that lifestyle changes can ameliorate these outcomes within high-risk group, providing guidance for preventive interventions.

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来源期刊
Advanced Science
Advanced Science CHEMISTRY, MULTIDISCIPLINARYNANOSCIENCE &-NANOSCIENCE & NANOTECHNOLOGY
CiteScore
18.90
自引率
2.60%
发文量
1602
审稿时长
1.9 months
期刊介绍: Advanced Science is a prestigious open access journal that focuses on interdisciplinary research in materials science, physics, chemistry, medical and life sciences, and engineering. The journal aims to promote cutting-edge research by employing a rigorous and impartial review process. It is committed to presenting research articles with the highest quality production standards, ensuring maximum accessibility of top scientific findings. With its vibrant and innovative publication platform, Advanced Science seeks to revolutionize the dissemination and organization of scientific knowledge.
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