Ir al contenido

Documat


Antimicrobial Resistance Prediction in Intensive Care Unit for Pseudomonas Aeruginosa using Temporal Data-Driven Models

  • Àlvar Hernàndez-Carnerero [1] ; Miquel Sànchez-Marrè [1] ; Inmaculada Mora-Jiménez [2] ; Cristina Soguero-Ruiz [2] ; Sergio Martínez-Agüero [2] ; Joaquín Álvarez-Rodríguez [3]
    1. [1] Universitat Politècnica de Catalunya

      Universitat Politècnica de Catalunya

      Barcelona, España

    2. [2] Rey Juan Carlos University, Madrid
    3. [3] University Hospital of Fuenlabrada
  • Localización: IJIMAI, ISSN-e 1989-1660, Vol. 6, Nº. 5, 2021, págs. 119-133
  • Idioma: inglés
  • DOI: 10.9781/ijimai.2021.02.012
  • Enlaces
  • Resumen
    • One threatening medical problem for human beings is the increasing antimicrobial resistance of some microorganisms. This problem is especially difficult in Intensive Care Units (ICUs) of hospitals due to the vulnerable state of patients. Knowing in advance whether a concrete bacterium is resistant or susceptible to an antibiotic is a crux step for clinicians to determine an effective antibiotic treatment. This usual clinical procedure takes approximately 48 hours and it is named antibiogram. It tests the bacterium resistance to one or more antimicrobial families (six of them considered in this work). This article focuses on cultures of the Pseudomonas Aeruginosa bacterium because is one of the most dangerous in the ICU. Several temporal data-driven models are proposed and analyzed to predict the resistance or susceptibility to a determined antibiotic family previously to know the antibiogram result and only using the available past information from a data set. This data set is formed by anonymized electronic health records data from more than 3300 ICU patients during 15 years. Several data-driven classifier methods are used in combination with several temporal modeling approaches. The results show that our predictions are reasonably accurate for some antimicrobial families, and could be used by clinicians to determine the best antibiotic therapy in advance. This early prediction can save valuable time to start the adequate treatment for an ICU patient. This study corroborates the results of a previous work pointing that the antimicrobial resistance of bacteria in the ICU is related to other recent resistance tests of ICU patients. This information is very valuable for making accurate antimicrobial resistance predictions.

  • Referencias bibliográficas
    • W. H. Organization, et al., “Antimicrobial resistance,” Weekly Epidemiological Record= Relevé épidémiologique hebdomadaire, vol. 75, no....
    • Infectious Diseases Society of America (IDSA), “Combating antimicrobial resistance: policy recommendations to save lives,” Clinical Infectious...
    • M. Mendelson, M. P. Matsoso, “The world health organization global action plan for antimicrobial resistance,” SAMJ: South African Medical...
    • B. K. English, A. H. Gaur, “The use and abuse of antibiotics and the development of antibiotic resistance,” in Hot topics in infection and...
    • S. Joshi, et al., “Hospital antibiogram: a necessity,” Indian journal of medical microbiology, vol. 28, no. 4, p. 277, 2010.
    • A. Tsymbal, M. Pechenizkiy, P. Cunningham, S. Puuronen, “Handling local concept drift with dynamic integration of classifiers: Domain of antibiotic...
    • A. Lorenz, M. Preuße, S. Bruchmann, V. Pawar, N. Grahl, M. C. Pils, L. M. Nolan, A. Filloux, S. Weiss, S. Häussler, “Importance of flagella...
    • G. Meletis, M. Bagkeri, “Pseudomonas aeruginosa: Multi-drug-resistance development and treatment options,” Infection Control, pp. 33–56, 2013.
    • M. W. Pesesky, T. Hussain, M. Wallace, S. Patel, S. Andleeb, C.-A. D. Burnham, G. Dantas, “Evaluation of machine learning and rulesbased approaches...
    • M. Ellington, O. Ekelund, F. M. Aarestrup, R. Canton, M. Doumith, C. Giske, H. Grundman, H. Hasman, M. Holden, K. L. Hopkins, et al., “The...
    • G. Arango-Argoty, E. Garner, A. Pruden, L. S. Heath, P. Vikesland, L. Zhang, “Deeparg: a deep learning approach for predicting antibiotic...
    • M. Nguyen, S. W. Long, P. F. McDermott, R. J. Olsen, R. Olson, R. L. Stevens, G. H. Tyson, S. Zhao, J. J. Davis, “Using machine learning to...
    • M. Tlachac, E. A. Rundensteiner, K. Barton, S. Troppy, K. Beaulac, S. Doron, “Predicting future antibiotic susceptibility using regressionbased...
    • S. Martínez-Agüero, I. Mora-Jiménez, J. Lérida-García, J. ÁlvarezRodríguez, C. Soguero-Ruiz, “Machine learning techniques to identify antimicrobial...
    • À. Hernàndez-Carnerero, M. Sànchez-Marrè, I. Mora-Jiménez, C. Soguero-Ruiz, S. Martínez-Agüero, J. Álvarez Rodríguez, “Modelling temporal...
    • S. Martínez-Agüero, I. Mora-Jiménez, A. García-Marqués, J. Álvarez Rodríguez, C. Soguero-Ruiz, “Applying lstm networks to predict multidrug...
    • G. Eickelberg, L. N. Sanchez-Pinto, Y. Luo, “Predictive modeling of bacterial infections and antibiotic therapy needs in critically ill adults,”...
    • O. Lewin-Epstein, S. Baruch, L. Hadany, G. Y. Stein, U. Obolski, “Predicting antibiotic resistance in hospitalized patients by applying machine...
    • Ó. Escudero-Arnanz, I. Mora-Jiménez, S. Martínez-Agüero, J. Álvarez Rodríguez, C. Soguero-Ruiz, “Temporal feature selection for characterizing...
    • T. M. Cover, J. A. Thomas, “Elements of information theory,” 2012.
    • A. T. Azar, H. I. Elshazly, A. E. Hassanien, A. M. Elkorany, “A random forest classifier for lymph diseases,” Computer methods and programs...
    • P. Revuelta-Zamorano, A. Sánchez, J. L. Rojo-Álvarez, J. ÁlvarezRodríguez, J. Ramos-López, C. Soguero-Ruiz, “Prediction of healthcare associated...

Fundación Dialnet

Mi Documat

Opciones de artículo

Opciones de compartir

Opciones de entorno