用人工智能模型预测 2 型糖尿病患者罹患中风、心血管疾病和外周血管疾病的风险:系统综述和荟萃分析

Aqsha Nur, Sydney Tjandra, Defin Allevia Yumnanisha, Arnold Keane, Adang Bachtiar
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摘要

研究目的本系统综述和荟萃分析旨在探讨机器学习算法在预测 T2DM 患者大血管并发症风险方面的性能,特别是人工智能模型在预测低收入国家中风、心血管疾病和心血管疾病方面的预测能力。设计:对有关 T2DM 患者大血管并发症人工智能预测模型的研究报告进行系统回顾和荟萃分析。研究背景:综述包括在各种医疗环境中进行的研究,主要来自低收入国家、中高收入国家和高收入国家。参与者:共纳入 46 项研究,共计 184 个人工智能模型。参与者的年龄、性别和地理位置各不相同,反映了广泛的医疗保健环境。干预措施:分析的干预措施是应用人工智能模型(包括机器学习算法)预测中风、心血管疾病和心血管疾病等大血管并发症。主要和次要结果测量:主要结果是人工智能模型的预测性能,以接收者操作特征曲线下面积(AUROC)衡量。次要结果包括基于预测因子类型的亚组分析以及对人工智能模型在低资源环境中适用性的评估。结果:纳入的 12 项研究产生了 184 个人工智能模型,总体 AUROC 为 0.753 (95%CI: 0.74-0.766; I2=99.99%; p<0.001)。在 80 个心血管疾病结局模型中,AUROC 为 0.741(95%CI:0.721-0.76;I2=99.78%;p<0.001)。同时,25 个外周血管疾病模型和 38 个脑血管疾病模型的 AUROC 分别为 0.794 (95%CI: 0.758-0.831; I2=97.23%; p<0.001) 和 0.77 (95%CI: 0.743-0.797; I2=99.73%; p<0.001)。分组分析表明,仅有实验室预测因子的模型优于有混合或无实验室预测因子的模型。这表明仅病史采集和体格检查数据缺乏人工智能能力,而这主要是在低资源环境中才能获得。结论人工智能在预测糖尿病并发症方面大有可为。不过,未来的研究应探索在低资源环境中可获得的特征,并采用外部验证来确保预测模型的稳健性。
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Predicting the risks for stroke, cardiovascular disease, and peripheral vascular disease among people with type 2 diabetes with artificial intelligence models: a systematic review and meta-analysis
Objectives: This systematic review and meta-analysis aim to explore the performance of machine learning algorithms in predicting the risk of macrovascular complications among individuals with T2DM, specifically, the predictive capabilities of AI models in forecasting stroke, CVD, and PVD in LMICs. Design: Systematic review and meta-analysis of studies reporting on AI prediction models for macrovascular complications in T2DM patients. Setting: The review included studies conducted in various healthcare settings, primarily from LMICs, upper-middle-income countries (UMICs), and high-income countries (HICs). Participants: 46 studies were included, with a total of 184 AI models. Participants were diverse in age, sex, and geographical locations, reflecting a broad range of healthcare settings. Interventions: The intervention analyzed was the application of AI models, including machine learning algorithms, to predict macrovascular complications such as stroke, CVD, and PVD. Primary and Secondary Outcome Measures: The primary outcome was the predictive performance of AI models, measured by the area under the receiver operating characteristic curve (AUROC). Secondary outcomes included subgroup analyses based on predictor types and an assessment of AI model applicability in low-resource settings. Results: Twelve included studies yielded 184 AI models with an overall AUROC of 0.753 (95%CI: 0.74-0.766; I2=99.99%; p<0.001). For 80 models of cardiovascular outcomes, an AUROC of 0.741 (95%CI: 0.721-0.76; I2=99.78%; p<0.001) was obtained. Meanwhile, 25 models of peripheral vascular disease and 38 models of cerebrovascular diseases obtained AUROCs of 0.794 (95%CI: 0.758-0.831; I2=97.23%; p<0.001) and 0.77 (95%CI: 0.743-0.797; I2=99.73%; p<0.001) respectively. Subgroup analysis revealed that models with lab-only predictors were superior to those with mixed or no-lab predictors. This signalled the lack of AI capability for history-taking and physical examination data alone, primarily available in low-resource settings. Conclusions: Artificial intelligence is promising in predicting diabetes complications. Nevertheless, future studies should explore accessible features in low-resource settings and employ external validation to ensure the robustness of the prediction models.
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