基于粒子群融合机器学习的高尿酸血症风险预测仅依赖于常规血液检查。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Min Fang, Chengjie Pan, Xiaoyi Yu, Wenjuan Li, Ben Wang, Huajian Zhou, Zhenying Xu, Genyuan Yang
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引用次数: 0

摘要

近年来,高尿酸血症的发病率持续上升,患者呈年轻化趋势,对人类健康构成严重威胁,凸显了利用技术手段进行疾病风险预测的紧迫性。现有的高尿酸血症风险预测模型通常包括两大类指标:常规血液检查和生化检查。仅使用常规血液检查进行预测的潜力尚未得到探索。因此,本文提出了一种将粒子群优化(PSO)与机器学习相结合的高尿酸血症风险预测模型,该模型仅依靠常规血液数据就能准确评估高尿酸血症风险。此外,还引入了一种基于可解释人工智能(Explainable Artificial Intelligence, XAI)的可解释性方法,帮助医护人员和患者理解模型如何做出决策。本文采用Cohen’s d值比较高尿酸血症与非高尿酸血症患者各项指标的差异,并通过多变量logistic回归识别危险因素。随后,利用粒子群算法对5个机器学习模型进行参数优化,构建了风险预测模型。所提出的粒子群融合叠加模型的准确率和灵敏度分别达到97.8%和97.6%,与现有模型相比,准确率提高了11%以上。最后,利用XAI方法对影响预测结果的因素进行敏感性分析。本文还开发了一个健康画像平台,该平台集成了提出的风险预测模型,实现了实时在线健康风险评估。由于仅使用常规血液检测数据,因此新模型具有更好的可行性和可扩展性,为评估高尿酸血症发生风险提供了有价值的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk prediction of hyperuricemia based on particle swarm fusion machine learning solely dependent on routine blood tests.

Hyperuricemia has seen a continuous increase in incidence and a trend towards younger patients in recent years, posing a serious threat to human health and highlighting the urgency of using technological means for disease risk prediction. Existing risk prediction models for hyperuricemia typically include two major categories of indicators: routine blood tests and biochemical tests. The potential of using routine blood tests alone for prediction has not yet been explored. Therefore, this paper proposes a hyperuricemia risk prediction model that integrates Particle Swarm Optimization (PSO) with machine learning, which can accurately assess the risk of hyperuricemia by relying solely on routine blood data. In addition, an interpretability method based on Explainable Artificial Intelligence(XAI) is introduced to help medical staff and patients understand how the model makes decisions. This paper uses Cohen's d value to compare the differences in indicators between hyperuricemia and non-hyperuricemia patients and identifies risk factors through multivariate logistic regression. Subsequently, a risk prediction model is constructed based on the parameter optimization of five machine learning models using the PSO algorithm. The accuracy and sensitivity of the proposed particle swarm fusion Stacking model reach 97.8% and 97.6%, marking an improvement in accuracy of over 11% compared to the state-of-the-art models. Finally, a sensitivity analysis of factors affecting the prediction results is conducted using the XAI method. This paper has also developed a Health Portrait Platform that integrates the proposed risk prediction models, enabling real-time online health risk assessment. Since only routine blood test data are used, the new model has better feasibility and scalability, providing a valuable reference for assessing the risk of hyperuricemia occurrence.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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