使用机器学习方法改善痴呆症的早期预后

Georgios Katsimpras, F. Aisopos, P. Garrard, M. Vidal, G. Paliouras
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引用次数: 3

摘要

痴呆症的早期准确预后是一项关键的医学挑战。设计一个解决这个问题的最优计算模型,同时解释导致输出决策的潜在机制,是一个持续的挑战。在这项研究中,我们专注于评估个人在短期(明年)和长期(一到五年)转变为痴呆症的风险,只给出一些早期观察。我们的目标是开发一种机器学习模型,可以帮助从常规临床数据中预测痴呆症。结果表明,将各种机器学习技术结合在一起可以成功地确定在接下来的五年内识别患痴呆症风险的方法,其准确性大大高于平均水平。这些发现表明,准确开发的模型可以被认为是改善早期痴呆预后的有希望的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Early Prognosis of Dementia Using Machine Learning Methods
Early and precise prognosis of dementia is a critical medical challenge. The design of an optimal computational model that addresses this issue, and at the same time explains the underlying mechanisms that lead to output decisions, is an ongoing challenge. In this study, we focus on assessing the risk of an individual converting to Dementia in the short (next year) and long (one to five years) term, given only a few early-stage observations. Our goal is to develop a machine learning model that could assist the prediction of dementia from regular clinical data. The results show that combining various machine learning techniques together can successfully define ways to identify the risks of developing dementia over the following five years with accuracies considerably above average rates. These findings suggest that accurately developed models can be considered as a promising tool to improve early dementia prognosis.
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