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Big data and machine learning in critical care: Opportunities for collaborative research.
Núñez Reiz, Antonio; Martínez Sagasti, Fernando; Álvarez González, Manuel; Blesa Malpica, Antonio; Martín Benítez, Juan Carlos; Nieto Cabrera, Mercedes; Del Pino Ramírez, Ángela; Gil Perdomo, José Miguel; Prada Alonso, Jesús; Celi, Leo Anthony; Armengol de la Hoz, Miguel Ángel; Deliberato, Rodrigo; Paik, Kenneth; Pollard, Tom; Raffa, Jesse; Torres, Felipe; Mayol, Julio; Chafer, Joan; González Ferrer, Arturo; Rey, Ángel; González Luengo, Henar; Fico, Giuseppe; Lombroni, Ivana; Hernandez, Liss; López, Laura; Merino, Beatriz; Cabrera, María Fernanda; Arredondo, María Teresa; Bodí, María; Gómez, Josep; Rodríguez, Alejandro; Sánchez García, Miguel.
Afiliação
  • Núñez Reiz A; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España. Electronic address: anunezreiz@gmail.com.
  • Martínez Sagasti F; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España.
  • Álvarez González M; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España.
  • Blesa Malpica A; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España.
  • Martín Benítez JC; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España.
  • Nieto Cabrera M; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España.
  • Del Pino Ramírez Á; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España.
  • Gil Perdomo JM; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España.
  • Prada Alonso J; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España.
  • Celi LA; MIT Critical Data, Laboratory for Computational Physiology, Harvard-MIT Health Sciences & Technology, MIT, Cambridge, Massachusetts, United States.
  • Armengol de la Hoz MÁ; MIT Critical Data, Laboratory for Computational Physiology, Harvard-MIT Health Sciences & Technology, MIT, Cambridge, Massachusetts, United States; Division of Clinical Informatics, Department of Medicine, Beth Israel Deaconess Medical Center, Boston, Massachusetts, United States; Harvard Medica
  • Deliberato R; MIT Critical Data, Laboratory for Computational Physiology, Harvard-MIT Health Sciences & Technology, MIT, Cambridge, Massachusetts, United States.
  • Paik K; MIT Critical Data, Laboratory for Computational Physiology, Harvard-MIT Health Sciences & Technology, MIT, Cambridge, Massachusetts, United States.
  • Pollard T; MIT Critical Data, Laboratory for Computational Physiology, Harvard-MIT Health Sciences & Technology, MIT, Cambridge, Massachusetts, United States.
  • Raffa J; MIT Critical Data, Laboratory for Computational Physiology, Harvard-MIT Health Sciences & Technology, MIT, Cambridge, Massachusetts, United States.
  • Torres F; MIT Critical Data, Laboratory for Computational Physiology, Harvard-MIT Health Sciences & Technology, MIT, Cambridge, Massachusetts, United States.
  • Mayol J; Department of Surgery, Hospital Clinico San Carlos de Madrid, Instituto de Investigación Sanitaria San Carlos, Universidad Complutense de Madrid, Madrid, Spain.
  • Chafer J; Unidad de Innovación, Hospital Clínico San Carlos, Instituto de Investigación Sanitaria del Hospital Clínico San Carlos (IdISSC), Madrid, Spain.
  • González Ferrer A; Unidad de Innovación, Hospital Clínico San Carlos, Instituto de Investigación Sanitaria del Hospital Clínico San Carlos (IdISSC), Madrid, Spain.
  • Rey Á; Unidad de Innovación, Hospital Clínico San Carlos, Instituto de Investigación Sanitaria del Hospital Clínico San Carlos (IdISSC), Madrid, Spain.
  • González Luengo H; Unidad de Innovación, Hospital Clínico San Carlos, Instituto de Investigación Sanitaria del Hospital Clínico San Carlos (IdISSC), Madrid, Spain.
  • Fico G; Life Supporting Technologies, epartamento de Tecnología Fotónica y Bioingeniería, Universidad Politècnica de Madrid, Madrid, Spain.
  • Lombroni I; Life Supporting Technologies, epartamento de Tecnología Fotónica y Bioingeniería, Universidad Politècnica de Madrid, Madrid, Spain.
  • Hernandez L; Life Supporting Technologies, epartamento de Tecnología Fotónica y Bioingeniería, Universidad Politècnica de Madrid, Madrid, Spain.
  • López L; Life Supporting Technologies, epartamento de Tecnología Fotónica y Bioingeniería, Universidad Politècnica de Madrid, Madrid, Spain.
  • Merino B; Life Supporting Technologies, epartamento de Tecnología Fotónica y Bioingeniería, Universidad Politècnica de Madrid, Madrid, Spain.
  • Cabrera MF; Life Supporting Technologies, epartamento de Tecnología Fotónica y Bioingeniería, Universidad Politècnica de Madrid, Madrid, Spain.
  • Arredondo MT; Life Supporting Technologies, epartamento de Tecnología Fotónica y Bioingeniería, Universidad Politècnica de Madrid, Madrid, Spain.
  • Bodí M; Service of Intensive Care Medicine, Hospital Universitari Joan XXIII, IISPV-URV, Tarragona, Spain.
  • Gómez J; Service of Intensive Care Medicine, Hospital Universitari Joan XXIII, IISPV-URV, Tarragona, Spain; Department of Electronic Engineering, Metabolomics Platform, Rovira i Virgili University, IISPV, Tarragona.
  • Rodríguez A; Service of Intensive Care Medicine, Hospital Universitari Joan XXIII, IISPV-URV, Tarragona, Spain.
  • Sánchez García M; Servicio de Medicina Intensiva, Hospital Universitario Clínico San Carlos, Madrid, España. Electronic address: miguel.sanchez@salud.madrid.org.
Med Intensiva (Engl Ed) ; 43(1): 52-57, 2019.
Article em En, Es | MEDLINE | ID: mdl-30077427
ABSTRACT
The introduction of clinical information systems (CIS) in Intensive Care Units (ICUs) offers the possibility of storing a huge amount of machine-ready clinical data that can be used to improve patient outcomes and the allocation of resources, as well as suggest topics for randomized clinical trials. Clinicians, however, usually lack the necessary training for the analysis of large databases. In addition, there are issues referred to patient privacy and consent, and data quality. Multidisciplinary collaboration among clinicians, data engineers, machine-learning experts, statisticians, epidemiologists and other information scientists may overcome these problems. A multidisciplinary event (Critical Care Datathon) was held in Madrid (Spain) from 1 to 3 December 2017. Under the auspices of the Spanish Critical Care Society (SEMICYUC), the event was organized by the Massachusetts Institute of Technology (MIT) Critical Data Group (Cambridge, MA, USA), the Innovation Unit and Critical Care Department of San Carlos Clinic Hospital, and the Life Supporting Technologies group of Madrid Polytechnic University. After presentations referred to big data in the critical care environment, clinicians, data scientists and other health data science enthusiasts and lawyers worked in collaboration using an anonymized database (MIMIC III). Eight groups were formed to answer different clinical research questions elaborated prior to the meeting. The event produced analyses for the questions posed and outlined several future clinical research opportunities. Foundations were laid to enable future use of ICU databases in Spain, and a timeline was established for future meetings, as an example of how big data analysis tools have tremendous potential in our field.
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Texto completo: 1 Eixos temáticos: Inovacao_tecnologica Base de dados: MEDLINE Assunto principal: Estado Terminal / Cuidados Críticos / Pesquisa Interdisciplinar / Aprendizado de Máquina / Big Data Tipo de estudo: Clinical_trials Limite: Humans País como assunto: Europa Idioma: En / Es Ano de publicação: 2019 Tipo de documento: Article

Texto completo: 1 Eixos temáticos: Inovacao_tecnologica Base de dados: MEDLINE Assunto principal: Estado Terminal / Cuidados Críticos / Pesquisa Interdisciplinar / Aprendizado de Máquina / Big Data Tipo de estudo: Clinical_trials Limite: Humans País como assunto: Europa Idioma: En / Es Ano de publicação: 2019 Tipo de documento: Article