Predictive health monitoring: Leveraging artificial intelligence for early detection of infectious diseases in nursing home residents through discontinuous vital signs analysis

被引:1
作者
Garcés-Jiménez A. [1 ]
Polo-Luque M.-L. [2 ]
Gómez-Pulido J.A. [3 ]
Rodríguez-Puyol D. [4 ]
Gómez-Pulido J.M. [1 ]
机构
[1] Department of Computer Science, Universidad de Alcalá, Politechnic School, Alcala de Henares
[2] Department of Nursing and Physiotherapy, Universidad de Alcalá, Faculty of Medicine and Health Sciences, Alcala de Henares
[3] Department of Technologies of Computers and Communications, Universidad de Extremadura, School of Technology, Cáceres
[4] Department of Medicine and Medical Specialties, Research Foundation of the University Hospital Príncipe de Asturias, Campus Científico Tecnológico, Alcala de Henares
关键词
Artificial intelligence; Elderly; Infectious disease; Machine learning; Nursing home; Prognosis; Remote patient monitoring;
D O I
10.1016/j.compbiomed.2024.108469
中图分类号
学科分类号
摘要
This research addresses the problem of detecting acute respiratory, urinary tract, and other infectious diseases in elderly nursing home residents using machine learning algorithms. The study analyzes data extracted from multiple vital signs and other contextual information for diagnostic purposes. The daily data collection process encounters sampling constraints due to weekends, holidays, shift changes, staff turnover, and equipment breakdowns, resulting in numerous nulls, repeated readings, outliers, and meaningless values. The short time series generated also pose a challenge to analysis, preventing the extraction of seasonal information or consistent trends. Blind data collection results in most of the data coming from periods when residents are healthy, resulting in excessively imbalanced data. This study proposes a data cleaning process and then builds a mechanism that reproduces the basal activity of the residents to improve the classification of the disease. The results show that the proposed basal module-assisted machine learning techniques allow anticipating diagnostics 2, 3 or 4 days before doctors decide to start treatment with antibiotics, achieving a performance measured by the area-under-the-curve metric of 0.857. The contributions of this work are: (1) a new data cleaning process; (2) the analysis of contextual information to improve data quality; (3) the generation of a baseline measure for relative comparison; and (4) the use of either binary (disease/no disease) or multiclass classification, differentiating among types of infections and showing the advantages of multiclass versus binary classification. From a medical point of view, the anticipated detection of infectious diseases in institutionalized individuals is brand new. © 2024 The Author(s)
引用
收藏
相关论文
共 37 条
  • [1] Garces-Jimenez A., Calderon-Gomez H., Gomez-Pulido J.M., Gomez-Pulido J.A., Vargas-Lombardo M., Castillo-Sequera J.L., Aguirre M.P., Sanz-Moreno J., Polo-Luque M.-L., Rodriguez-Puyol D., Medical prognosis of infectious diseases in nursing homes by applying machine learning on clinical data collected in cloud microservices, Int. J. Environ. Res. Public Health, 18, 24, (2021)
  • [2] Gomez J., Garces-Jimenez A., Castillo-Sequera J., Gutierrez-Martinez J.-M., Pospelova V., Luque M., Cloud Data Base Construction Method for Speed Diagnosis of Infectious Diseases,, (2018)
  • [3] Sanz-Moreno J., Gomez-Pulido J., Garces A., Calderon-Gomez H., Vargas-Lombardo M., Castillo-Sequera J.L., Luque M.L.P., Toro R., Sencion-Martinez G., Mhealth system for the early detection of infectious diseases using biomedical signals, Advances in Automation and Robotics Research, pp. 203-213, (2020)
  • [4] Calderon-Gomez H., Mendoza-Pitti L., Vargas-Lombardo M., Gomez-Pulido J.M., Castillo-Sequera J.L., Sanz-Moreno J., Sencion G., Telemonitoring system for infectious disease prediction in elderly people based on a novel microservice architecture, IEEE Access, 8, pp. 118340-118354, (2020)
  • [5] Calderon-Gomez H., Navarro-Marin F., Gomez J., Castillo-Sequera J., Garces-Jimenez A., Polo-Luque M.-L., Sanz-Moreno J., Sencion-Martinez G., Vargas-Lombardo M., Desarrollo de aplicaciones ehealth basadas en microservicios en una arquitectura de cloud, RISTI - Rev. Iber. Sist. Tecnol. Inf., 2019, pp. 81-93, (2019)
  • [6] Gomez-Pulido J.A., Romero-Muelas J.M., Gomez-Pulido J.M., Castillo Sequera J.L., Sanz Moreno J., Polo-Luque M.-L., Garces-Jimenez A., Predicting infectious diseases by using machine learning classifiers, Bioinformatics and Biomedical Engineering: 8th International Work-Conference, IWBBIO 2020, Granada, Spain, May 6–8, 2020, Proceedings, pp. 590-599, (2020)
  • [7] Calderon-Gomez H., Garces-Jimenez A., Vargas-Lombardo M., Gomez-Pulido J.M., Polo-Luque M.-L., Castillo J.L., Sencion G., Moreno J.S., Proposal Using the Cloud Architecture in System for the Early Detection of Infectious Diseases in Elderly People Fed by Biosensors Records,, 2019 7th International Engineering, Sciences and Technology Conference, IESTEC, pp. 631-634, (2019)
  • [8] Baldominos A., Ogul H., Colomo-Palacios R., Sanz-Moreno J., Gomez-Pulido J.M., Infection prediction using physiological and social data in social environments, Inf. Process. Manage., 57, 3, (2020)
  • [9] Baldominos A., Ogul H., Colomo-Palacios R., Infection Diagnosis using Biomedical Signals in Small Data Scenarios,, 2019 IEEE 32nd International Symposium on Computer-Based Medical Systems, CBMS, pp. 38-43, (2019)
  • [10] Ogul H., Baldominos A., Asuroglu T., Colomo-Palacios R., On Computer-Aided Prognosis of Septic Shock from Vital Signs,, IEEE 32nd International Symposium on Computer-Based Medical Systems, CBMS, pp. 87-92, (2019)