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Early Identification of Patients at Risk of Sepsis in a Hospital Environment
Cesario, Everton Osnei; Gumiel, Yohan Bonescki; Martins, Marcia Cristina Marins; Dias, Viviane Maria de Carvalho Hessel; Moro, Claudia; Carvalho, Deborah Ribeiro.
  • Cesario, Everton Osnei; Pontifícia Universidade Católica do Paraná. Graduate Program on Health Technology. Curitiba. BR
  • Gumiel, Yohan Bonescki; Pontifícia Universidade Católica do Paraná. Graduate Program on Health Technology. Curitiba. BR
  • Martins, Marcia Cristina Marins; Pontifícia Universidade Católica do Paraná. Graduate Program on Health Technology. Curitiba. BR
  • Dias, Viviane Maria de Carvalho Hessel; Hospital Nossa Senhora das Graças. Curitiba. BR
  • Moro, Claudia; Pontifícia Universidade Católica do Paraná. Graduate Program on Health Technology. Curitiba. BR
  • Carvalho, Deborah Ribeiro; Pontifícia Universidade Católica do Paraná. Graduate Program on Health Technology. Curitiba. BR
Braz. arch. biol. technol ; 64(spe): e21210142, 2021. tab, graf
Artigo em Inglês | LILACS-Express | LILACS | ID: biblio-1350282
ABSTRACT
Abstract Sepsis is a systematic response to an infectious disease, being a concerning factor because of the increase in the mortality ratio for every delayed hour in the identification and start of patient's treatment. Studies that aim to identify sepsis early are valuable for the healthcare domain. Further, studies that propose machine learning-based models to identify sepsis risk are scarce for the Brazilian scenario. Hence, we propose the early identification of sepsis considering data from a Brazilian hospital. We developed a temporal series based on LSTM to predict sepsis in patients considering a three-day timestep. The patients were selected using both criteria, ICD-10, and qSOFA, where we supplemented qSOFA with the additional identification of words referring to infections in the clinical texts. Additionally, we tested a Random Forest classifier to classify patients with sepsis with a single timestep before the sepsis event, evaluating the most relevant features. We achieved an accuracy of 0.907, a sensitivity of 0.912, and a specificity of 0.971 when considering a three-day timestep with LSTM. The Random Forest classifier achieved an accuracy of 0.971, a sensitivity of 0.611, and a specificity of 0.998. The features age, blood glucose, systolic blood pressure, diastolic blood pressure, heart rate, respiratory rate, and admission days had the most influence over the algorithm classification, with age being the most relevant feature. We achieved satisfactory results compared with the literature considering a scenario of spaced measures and a high amount of missing data.


Texto completo: DisponíveL Índice: LILACS (Américas) Idioma: Inglês Revista: Braz. arch. biol. technol Assunto da revista: Biologia Ano de publicação: 2021 Tipo de documento: Artigo País de afiliação: Brasil Instituição/País de afiliação: Hospital Nossa Senhora das Graças/BR / Pontifícia Universidade Católica do Paraná/BR

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Texto completo: DisponíveL Índice: LILACS (Américas) Idioma: Inglês Revista: Braz. arch. biol. technol Assunto da revista: Biologia Ano de publicação: 2021 Tipo de documento: Artigo País de afiliação: Brasil Instituição/País de afiliação: Hospital Nossa Senhora das Graças/BR / Pontifícia Universidade Católica do Paraná/BR