MORPHER - A Platform to Support Modeling of Outcome and Risk Prediction in Health Research

H. F. D. Cruz, Benjamin Bergner, Orhan Konak, F. Schneider, Philipp Bode, Conrad Lempert, M. Schapranow
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引用次数: 1

Abstract

Machine learning is rapidly becoming a mainstay in research and industry. Particularly for clinical predictive modeling, these approaches are being increasingly applied, as evidenced by the growth in the number of related publications. While different computer tools exist that support rapid prototyping, we observe that the state of the art is lacking in the extent to which the needs of research clinicians are addressed. This leads to an increase in the time needed for development and validation of such models. In this paper, we outline the requirements and challenges inherent to this domain and present a platform for rapid prototyping tailored to the specific needs of clinical modeling for outcome and risk prediction. We argue that a move towards hybrid solutions, i.e., a mix of cloud and on-premise infrastructure, constitutes a viable way to reduce the time needed to develop and validate clinical predictive models in a standardized, reproducible fashion.
MORPHER -一个支持健康研究结果和风险预测建模的平台
机器学习正在迅速成为研究和工业的支柱。特别是在临床预测建模方面,这些方法正越来越多地被应用,相关出版物数量的增长证明了这一点。虽然存在不同的计算机工具来支持快速原型,但我们观察到,在满足临床医生研究需求的程度上,目前的技术水平是缺乏的。这将导致开发和验证这些模型所需的时间增加。在本文中,我们概述了该领域固有的要求和挑战,并提出了一个针对临床结果和风险预测建模的特定需求量身定制的快速原型平台。我们认为,向混合解决方案(即云和本地基础设施的混合)的转变,是一种可行的方式,可以减少以标准化、可重复的方式开发和验证临床预测模型所需的时间。
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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