Enrique Maldonado Belmonte, Salvador Oton-Tortosa, J. Gutierrez-Martinez, Ana Castillo-Martinez
{"title":"An Intelligent Model and Methodology for Predicting Length of Stay and Survival in a Critical Care Hospital Unit","authors":"Enrique Maldonado Belmonte, Salvador Oton-Tortosa, J. Gutierrez-Martinez, Ana Castillo-Martinez","doi":"10.3390/informatics11020034","DOIUrl":null,"url":null,"abstract":"This paper describes the design and methodology for the development and validation of an intelligent model in the healthcare domain. The generated model relies on artificial intelligence techniques, aiming to predict the length of stay and survival rate of patients admitted to a critical care hospitalization unit with better results than predictive systems using scoring. The proposed methodology is based on the following stages: preliminary data analysis, analysis of the architecture and systems integration model, the big data model approach, information structure and process development, and the application of machine learning techniques. This investigation substantiates that automated machine learning models significantly surpass traditional prediction techniques for patient outcomes within critical care settings. Specifically, the machine learning-based model attained an F1 score of 0.351 for mortality forecast and 0.615 for length of stay, in contrast to the traditional scoring model’s F1 scores of 0.112 for mortality and 0.412 for length of stay. These results strongly support the advantages of integrating advanced computational techniques in critical healthcare environments. It is also shown that the use of integration architectures allows for improving the quality of the information by providing a data repository large enough to generate intelligent models. From a clinical point of view, obtaining more accurate results in the estimation of the ICU stay and survival offers the possibility of expanding the uses of the model to the identification and prioritization of patients who are candidates for admission to the ICU, as well as the management of patients with specific conditions.","PeriodicalId":507941,"journal":{"name":"Informatics","volume":"1 4","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-05-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Informatics","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3390/informatics11020034","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
This paper describes the design and methodology for the development and validation of an intelligent model in the healthcare domain. The generated model relies on artificial intelligence techniques, aiming to predict the length of stay and survival rate of patients admitted to a critical care hospitalization unit with better results than predictive systems using scoring. The proposed methodology is based on the following stages: preliminary data analysis, analysis of the architecture and systems integration model, the big data model approach, information structure and process development, and the application of machine learning techniques. This investigation substantiates that automated machine learning models significantly surpass traditional prediction techniques for patient outcomes within critical care settings. Specifically, the machine learning-based model attained an F1 score of 0.351 for mortality forecast and 0.615 for length of stay, in contrast to the traditional scoring model’s F1 scores of 0.112 for mortality and 0.412 for length of stay. These results strongly support the advantages of integrating advanced computational techniques in critical healthcare environments. It is also shown that the use of integration architectures allows for improving the quality of the information by providing a data repository large enough to generate intelligent models. From a clinical point of view, obtaining more accurate results in the estimation of the ICU stay and survival offers the possibility of expanding the uses of the model to the identification and prioritization of patients who are candidates for admission to the ICU, as well as the management of patients with specific conditions.
本文介绍了开发和验证医疗保健领域智能模型的设计和方法。生成的模型依赖于人工智能技术,旨在预测重症监护病房住院患者的住院时间和存活率,其结果优于使用评分的预测系统。所提出的方法基于以下阶段:初步数据分析、架构和系统集成模型分析、大数据模型方法、信息结构和流程开发,以及机器学习技术的应用。这项调查证实,在重症监护环境下,自动机器学习模型大大超过了传统的患者预后预测技术。具体来说,基于机器学习的模型在死亡率预测方面的 F1 得分为 0.351,在住院时间方面的 F1 得分为 0.615,而传统评分模型在死亡率方面的 F1 得分为 0.112,在住院时间方面的 F1 得分为 0.412。这些结果有力地证明了在关键医疗环境中整合先进计算技术的优势。研究还表明,使用集成架构可以提供足够大的数据存储库来生成智能模型,从而提高信息质量。从临床角度来看,在估计重症监护室的住院时间和存活率方面获得更准确的结果,为将模型的用途扩展到识别和优先考虑重症监护室的候选病人以及管理患有特殊疾病的病人提供了可能性。