迈向疾病数据模型共享和评估的通用架构

Amr M. T. Ali-Eldin, E. Hafez
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引用次数: 2

摘要

通常,医学研究人员发现找到适合他们的研究实验要求的疾病数据概况是很麻烦的。在本文中,我们提出了一种功能架构,医学研究人员可以在删除患者的敏感信息后共享疾病数据档案。此外,所提出的架构还配备了一些促进研究人员之间协作讨论的功能。此外,还采用了一些机器学习技术对疾病数据集进行分析和建模。通过这种方式,医学研究人员可以更好地协作,在更大的患者样本上进行研究,获得更准确和更具代表性的结果。介绍了该体系结构的主要功能。该体系结构的一个组成部分是评估引擎,使用Matlab实现,显示了其作为研究人员工具的优势。分析一个模型的慢性疾病称为青少年特发性关节炎的情况下进行了研究。仿真结果表明了该方法的适用性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a universal architecture for disease data models sharing and evaluation
Usually, medical researchers find it cumbersome to find disease data profiles that suit their research experiments requirements. In this paper, we propose a functional architecture where medical researchers can share disease data profiles after removing patients' sensitive information. In addition, the proposed architecture is equipped with some features that facilitate collaborative discussions among researchers. Besides, some machine learning techniques are adopted for analysis and modelling of disease datasets. This way, it is expected that medical researchers can better collaborate together and perform their researches on larger patient samples obtaining more accurate and representative results. The main functionalities of the architecture are introduced. One component of the architecture, which is the evaluation engine, was implemented using Matlab showing its advantages as a tool for researchers. The case of analyzing a model for a chronic disease known as Juvenile idiopathic arthritis has been studied. Obtained results show the applicability and effectiveness of the proposed approach.
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