A model based on artificial intelligence for the prediction, prevention and patient-centred approach for non-communicable diseases related to metabolic syndrome.

IF 3.9 3区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Alejandro Clarós, Andreea Ciudin, Jordi Muria, Lluis Llull, Jose Àngel Mola, Martí Pons, Javier Castán, Juan Carlos Cruz, Rafael Simó
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引用次数: 0

Abstract

Metabolic syndrome (MetS) is related to non-communicable diseases (NCDs) such as type 2 diabetes (T2D), metabolic-associated steatotic liver disease (MASLD), atherogenic dyslipidaemia (ATD), and chronic kidney disease (CKD). The absence of reliable tools for early diagnosis and risk stratification leads to delayed detection, preventable hospitalizations, and increased healthcare costs. This study evaluates the impact of Transformer-based artificial intelligence (AI) model in predicting and managing MetS-related NCDs compared to classical machine learning models. Electronical medical data registered in the MIMIC-IV v2.2database from 183 958 patients with at least two recorded medical visits were analysed. A two-stage AI approach was implemented: (1) pretraining on 60% of the dataset to capture disease progression patterns, and (2) fine-tuning on the remaining 40% for disease-specific predictions. Transformer-based models was compared with traditional machine learning approaches (Random Forest and Linear Support Vector Classifier [SVC]), evaluating predictive performance through AUC and F1-score. The Transformer-based model significantly outperformed classical models, achieving higher AUC values across all diseases. It also identified a substantial number of undiagnosed cases compared to documented diagnoses fold increase for CKD 2.58, T2D 0.78, dyslipidaemia 1.89, hypertension 3.33, MASLD 5.78, and obesity 4.07. Diagnosis delays ranged from 90 to 500 days, with 35% of missed intervention opportunities occurring within the first five appointments. These delays correlated with an 84% increase in hospitalizations and a 69% rise in medical procedures. This study demonstrates that Transformer-based AI models offer superior predictive accuracy over traditional methods by capturing complex temporal disease patterns. Their integration into clinical workflows and public health strategies could enable scalable, proactive MetS management, reducing undiagnosed cases, optimizing resource allocation, and improving population health outcomes.

基于人工智能的与代谢综合征相关的非传染性疾病的预测、预防和以患者为中心的方法模型。
代谢综合征(MetS)与非传染性疾病(NCDs)有关,如2型糖尿病(T2D)、代谢相关脂肪变性肝病(MASLD)、动脉粥样硬化性血脂异常血症(ATD)和慢性肾脏疾病(CKD)。缺乏可靠的早期诊断和风险分层工具,导致检测延迟、可预防的住院治疗和医疗费用增加。与经典机器学习模型相比,本研究评估了基于transformer的人工智能(AI)模型在预测和管理与met相关的非传染性疾病方面的影响。对在MIMIC-IV v2.2数据库中登记的183 958名至少有两次就诊记录的患者的电子医疗数据进行了分析。采用了两阶段人工智能方法:(1)对60%的数据集进行预训练,以捕获疾病进展模式;(2)对剩余40%的数据集进行微调,以进行疾病特异性预测。将基于变压器的模型与传统机器学习方法(随机森林和线性支持向量分类器[SVC])进行比较,通过AUC和f1评分评估预测性能。基于transformer的模型明显优于经典模型,在所有疾病中获得更高的AUC值。与记录的诊断相比,该研究还发现了大量未确诊病例,CKD 2.58例,T2D 0.78例,血脂异常1.89例,高血压3.33例,MASLD 5.78例,肥胖4.07例。诊断延误从90天到500天不等,35%的错过干预机会发生在前5次预约中。这些延误与住院人数增加84%和医疗程序增加69%相关。这项研究表明,通过捕捉复杂的时间疾病模式,基于transformer的人工智能模型比传统方法具有更高的预测准确性。将它们整合到临床工作流程和公共卫生战略中,可以实现可扩展的、主动的MetS管理,减少未诊断病例,优化资源分配,并改善人口健康结果。
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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来源期刊
European Journal of Public Health
European Journal of Public Health 医学-公共卫生、环境卫生与职业卫生
CiteScore
5.60
自引率
2.30%
发文量
2039
审稿时长
3-8 weeks
期刊介绍: The European Journal of Public Health (EJPH) is a multidisciplinary journal aimed at attracting contributions from epidemiology, health services research, health economics, social sciences, management sciences, ethics and law, environmental health sciences, and other disciplines of relevance to public health. The journal provides a forum for discussion and debate of current international public health issues, with a focus on the European Region. Bi-monthly issues contain peer-reviewed original articles, editorials, commentaries, book reviews, news, letters to the editor, announcements of events, and various other features.
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