Critically ill children frequently encounter the most common and potentially life-threatening electrolyte disturbances, i.e., hyponatremia. It is an independent risk factor for prolonged hospitalization in the intensive care unit and increased in-hospital mortality. Hyponatremia occurs in up to 20%-30% of admissions in the pediatric intensive care unit (PICU). This observational study was conducted in the PICU of a tertiary care hospital in a developing country from September 2018 to September 2019. Admission criteria in our PICU are the need for mechanical ventilation, fulminant hepatic failure, vasopressor support, respiratory failure and poorly controlled seizure. We studied 256 children, aged 1 month to 18 years, with normal serum sodium at admission. In our study, 72 (28.1%) children developed hyponatremia, and about two third (n=48, 66.7%) of them developed withi 72 hours of admission in PICU. The majority of children ( = 46, 63.9%) in the hyponatremic group were below 5 years. Wasted children ( = 68, 26.6%) in the hyponatremic and isonatremic groups were 20 (27.8%) and 48 (26%), respectively. The most common etiology of hyponatremia was cerebral salt wasting syndrome ( = 20, 27.8%) followed by drug-induced cases ( = 19, 26.4%). The drugs responsible were diuretics and anti-epileptics. In our study, multiorgan failure (OR = 5.05, 95%CI = 1.90-13.43; = 0.0001), shock (OR = 7.38, 95%CI = 3.56-12.28; = 0.0001), vasopressor use (OR = 6.74, 95%CI = 3.45-13.17; = 0.0001) and coagulopathy (OR = 6.74, 95%CI = 3.45-13.17; = 0.0001) were the risk factors for the development of hyponatremia. Mortality among the hyponatremic group (44.4%) was significantly higher than in the isonatremic group (21.7%). Hyponatremia is a common electrolyte disturbance found in critically ill patients and is associated with prolonged hospitalization and increased mortality.
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http://dx.doi.org/10.24911/SJP.106-1672832695 | DOI Listing |
Am J Respir Crit Care Med
January 2025
Hosp Sabadell, critical care, sabadell, Spain;
Pediatr Crit Care Med
January 2025
Department of Pediatrics, UPMC Children's Hospital of Pittsburgh, Pittsburgh, PA.
Objectives: To report the feasibility of a fluid management practice bundle and describe the pre- vs. post-implementation prevalence and odds of cumulative fluid balance greater than 10% in critically ill pediatric patients with respiratory failure.
Design: Retrospective cohort from May 2022 to December 2022.
Am J Respir Crit Care Med
January 2025
Radbound Univeristy Medical Center, Nijmegen, Netherlands;
Rationale: In critically ill patients receiving invasive mechanical ventilation, switching from controlled to assisted ventilation is a crucial milestone towards ventilator liberation. The optimal timing for switching to assisted ventilation has not been studied.
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Infect Drug Resist
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Department of Public Health, School of Allied Health Sciences, Kampala International University, Western Campus, Uganda.
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January 2025
Department of General Surgery, Wuxi People's Hospital Affiliated to Nanjing Medical University, Wuxi, China.
Background: Gastroparesis following complete mesocolic excision (CME) can precipitate a cascade of severe complications, which may significantly hinder postoperative recovery and diminish the patient's quality of life. In the present study, four advanced machine learning algorithms-Extreme Gradient Boosting (XGBoost), Random Forest (RF), Support Vector Machine (SVM), and -nearest neighbor (KNN)-were employed to develop predictive models. The clinical data of critically ill patients transferred to the intensive care unit (ICU) post-CME were meticulously analyzed to identify key risk factors associated with the development of gastroparesis.
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