Recent Advances and Future Perspectives in the Use of Machine Learning and Mathematical Models in Nephrology

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Paulo Paneque Galuzio, Alhaji Cherif
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引用次数: 0

Abstract

We reviewed some of the latest advancements in the use of mathematical models in nephrology. We looked over 2 distinct categories of mathematical models that are widely used in biological research and pointed out some of their strengths and weaknesses when applied to health care, especially in the context of nephrology. A mechanistic dynamical system allows the representation of causal relations among the system variables but with a more complex and longer development/implementation phase. Artificial intelligence/machine learning provides predictive tools that allow identifying correlative patterns in large data sets, but they are usually harder-to-interpret black boxes. Chronic kidney disease (CKD), a major worldwide health problem, generates copious quantities of data that can be leveraged by choice of the appropriate model; also, there is a large number of dialysis parameters that need to be determined at every treatment session that can benefit from predictive mechanistic models. Following important steps in the use of mathematical methods in medical science might be in the intersection of seemingly antagonistic frameworks, by leveraging the strength of each to provide better care.

机器学习和数学模型在肾脏病学应用的最新进展和未来展望
我们回顾了一些在肾脏学中使用数学模型的最新进展。我们研究了在生物学研究中广泛使用的两种不同类型的数学模型,并指出了它们在应用于医疗保健时的一些优点和缺点,特别是在肾脏病学的背景下。机械动力系统允许表示系统变量之间的因果关系,但具有更复杂和更长的开发/实施阶段。人工智能/机器学习提供了预测工具,可以识别大型数据集中的相关模式,但它们通常更难以解释黑盒子。慢性肾脏疾病(CKD)是一个全球性的主要健康问题,它产生了大量的数据,可以通过选择适当的模型加以利用;此外,在每个治疗阶段都需要确定大量的透析参数,这些参数可以从预测机制模型中受益。在医学科学中使用数学方法的重要步骤可能是在看似对立的框架的交叉点上,通过利用每个框架的优势来提供更好的护理。
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
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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