Improving the assessment of older adults using feature selection and machine learning models

Q3 Nursing
J. Rojo, J. García-Alonso, J. M. Murillo, S. Helal
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引用次数: 0

Abstract

Purpose The growing capacity of healthcare systems to digitize patient information is enabling the creation of large repositories of patient health data, facilitating the use of Artificial Intelligence techniques, especifically Machine Learning, to analyze this data for insights and discovery. Thanks to this, unprecedented predictions and accurate diagnosis of certain diseases are possible to achieve today. However, this increasing morass of information is a double-edged sword as it makes it difficult for health professionals to navigate and determine which information is most crucial to examine for a given pathology or health condition. Feature Selection techniques have been applied for years to help Machine Learning prediction models to determine which information is most relevant to diagnoses, as demonstrated in Remeseiro et al. (2019). Consequently, these techniques help reduce the amount of information that health professionals need to collect, reducing laborious work while making them aware of which factors are more important for the assessment in contrast with what they initially considered to be important or relevant
使用特征选择和机器学习模型改进对老年人的评估
目的医疗保健系统数字化患者信息的能力不断增强,有助于创建大型患者健康数据存储库,促进使用人工智能技术,特别是机器学习,分析这些数据以获得见解和发现。正因为如此,今天才有可能实现对某些疾病前所未有的预测和准确诊断。然而,这种信息的不断增加是一把双刃剑,因为它使卫生专业人员很难导航和确定哪些信息对特定的病理学或健康状况最重要。多年来,特征选择技术一直被应用于帮助机器学习预测模型确定哪些信息与诊断最相关,如Remeseiro等人所述。(2019)。因此,这些技术有助于减少卫生专业人员需要收集的信息量,减少繁重的工作,同时让他们意识到与最初认为重要或相关的因素相比,哪些因素对评估更重要
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
Gerontechnology
Gerontechnology Nursing-Gerontology
CiteScore
1.00
自引率
0.00%
发文量
260
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