2019
DOI: 10.1097/ta.0000000000002486
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Random forest modeling can predict infectious complications following trauma laparotomy

Abstract: BACKGROUND Identifying clinical and biomarker profiles of trauma patients may facilitate the creation of models that predict postoperative complications. We sought to determine the utility of modeling for predicting severe sepsis (SS) and organ space infections (OSI) following laparotomy for abdominal trauma. METHODS Clinical and molecular biomarker data were collected prospectively from patients undergoing exploratory laparotomy for abdominal trauma at… Show more

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Cited by 20 publications
(13 citation statements)
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“…The random Forest package in R software was used to perform a random forest classification of the data. [22][23][24] To assess the relationship between independent and dependent variables, COVID-19 severity was considered as the dependent variable and clinical characteristics as the independent variables. The number of classification trees was set at 1000.…”
Section: Discussionmentioning
confidence: 99%
“…The random Forest package in R software was used to perform a random forest classification of the data. [22][23][24] To assess the relationship between independent and dependent variables, COVID-19 severity was considered as the dependent variable and clinical characteristics as the independent variables. The number of classification trees was set at 1000.…”
Section: Discussionmentioning
confidence: 99%
“…Our technique has already been used to enhance the care of other disease states such as infection and injury. In 2019, Gelbard et al developed models using clinical data, cytokines, chemokines and growth factors that predicted severe sepsis and organ space infections following laparotomy for abdominal trauma (58). This modeling approach has expanded to combat trauma, where a predictive model composed of clinical features and immunologic biomarkers can accurately predict pneumonia in a predominantly blast-injured cohort of patients (59).…”
Section: Discussionmentioning
confidence: 99%
“…Clinical features alone have not shown adequate prognostic performance in SBE, despite having some predictive value (37,38,40,55,56). Combining clinical features with immunologic markers has been used to prognosticate outcomes in other disease states (57)(58)(59)(60). An improved understanding of the immunologic response combined with available clinical features in SBE could inform a prognostic model to predict severity and recovery in SBE.…”
mentioning
confidence: 99%
“…De acuerdo al índice de severidad de la lesión (ISS, por sus siglas en inglés) y al PATI, se ha demostrado que un puntaje mayor de 15 y de 25 respectivamente, se asocia con un mayor riesgo de complicaciones sépticas de origen abdominal 12,15,16 , siendo más frecuente cuando existe compromiso de colon (27,6 %); intestino delgado (20,9 %) y estómago (7,5 %), atribuido generalmente a la dehiscencia anastomótica. Otros factores relacionados con el de-sarrollo de sepsis abdominal son la cirugía de control de daños y el abdomen abierto 12,17 .…”
Section: Discussionunclassified