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基于机器学习的规范性模型在临床决策中的案例研究。

Case studies of clinical decision-making through prescriptive models based on machine learning.

作者信息

Hoyos William, Aguilar Jose, Raciny Mayra, Toro Mauricio

机构信息

Grupo de Investigaciones Microbiológicas y Biomédicas de Córdoba, Universidad de Córdoba, Montería, Colombia; Grupo de Investigación en I+D+i en TIC, Universidad EAFIT, Medellín, Colombia.

Grupo de Investigación en I+D+i en TIC, Universidad EAFIT, Medellín, Colombia; Centro de Estudios en Microelectrónica y Sistemas Distribuidos, Universidad de Los Andes, Merida, Venezuela; IMDEA Networks Institute, Madrid, Spain.

出版信息

Comput Methods Programs Biomed. 2023 Dec;242:107829. doi: 10.1016/j.cmpb.2023.107829. Epub 2023 Oct 4.

Abstract

BACKGROUND

The development of computational methodologies to support clinical decision-making is of vital importance to reduce morbidity and mortality rates. Specifically, prescriptive analytic is a promising area to support decision-making in the monitoring, treatment and prevention of diseases. These aspects remain a challenge for medical professionals and health authorities.

MATERIALS AND METHODS

In this study, we propose a methodology for the development of prescriptive models to support decision-making in clinical settings. The prescriptive model requires a predictive model to build the prescriptions. The predictive model is developed using fuzzy cognitive maps and the particle swarm optimization algorithm, while the prescriptive model is developed with an extension of fuzzy cognitive maps that combines them with genetic algorithms. We evaluated the proposed approach in three case studies related to monitoring (warfarin dose estimation), treatment (severe dengue) and prevention (geohelminthiasis) of diseases.

RESULTS

The performance of the developed prescriptive models demonstrated the ability to estimate warfarin doses in coagulated patients, prescribe treatment for severe dengue and generate actions aimed at the prevention of geohelminthiasis. Additionally, the predictive models can predict coagulation indices, severe dengue mortality and soil-transmitted helminth infections.

CONCLUSIONS

The developed models performed well to prescribe actions aimed to monitor, treat and prevent diseases. This type of strategy allows supporting decision-making in clinical settings. However, validations in health institutions are required for their implementation.

摘要

背景

开发支持临床决策的计算方法对于降低发病率和死亡率至关重要。具体而言,规范性分析是支持疾病监测、治疗和预防决策的一个有前景的领域。这些方面对医学专业人员和卫生当局来说仍然是一项挑战。

材料与方法

在本研究中,我们提出了一种开发规范性模型以支持临床环境中决策的方法。规范性模型需要一个预测模型来构建处方。预测模型使用模糊认知图和粒子群优化算法开发,而规范性模型则通过将模糊认知图与遗传算法相结合的扩展来开发。我们在与疾病监测(华法林剂量估计)、治疗(重症登革热)和预防(土源性蠕虫病)相关的三个案例研究中评估了所提出的方法。

结果

所开发的规范性模型的性能证明了其能够估计凝血患者的华法林剂量、为重症登革热开出处方以及生成旨在预防土源性蠕虫病的行动。此外,预测模型可以预测凝血指标、重症登革热死亡率和土壤传播的蠕虫感染。

结论

所开发的模型在开出处方以监测、治疗和预防疾病方面表现良好。这种类型的策略允许在临床环境中支持决策。然而,其实施需要在卫生机构进行验证。

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