If a patient can be discharged from an intensive care unit (ICU) is usually decided by the treating physicians based on their clinical experience. However, nowadays limited capacities and growing socioeconomic burden of our health systems increase the pressure to discharge patients as early as possible, which may lead to higher readmission rates and potentially fatal consequences for the patients. Therefore, here we present a long short-term memory-based deep learning model (LSTM) trained on time series data from Medical Information Mart for Intensive Care (MIMIC-III) dataset to assist physicians in making decisions if patients can be safely discharged from cardiovascular ICUs. To underline the strengths of our LSTM we compare its performance with a logistic regression model, a random forest, extra trees, a feedforward neural network and with an already known, more complex LSTM as well as an LSTM combined with a convolutional neural network. The results of our evaluation show that our LSTM outperforms most of the above models in terms of area under receiver operating characteristic curve. Moreover, our LSTM shows the best performance with respect to the area under precision-recall curve. The deep learning solution presented in this article can help physicians decide on patient discharge from the ICU. This may not only help to increase the quality of patient care, but may also help to reduce costs and to optimize ICU resources. Further, the presented LSTM-based approach may help to improve existing and develop new medical machine learning prediction models.
Download full-text PDF |
Source |
---|---|
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9834934 | PMC |
http://dx.doi.org/10.1177/20552076221149529 | DOI Listing |
Am J Manag Care
January 2025
RAND, 1776 Main St, Santa Monica, CA 90401. Email:
Objectives: Patient experience surveys are essential to measuring patient-centered care, a key component of health care quality. Low response rates in underserved groups may limit their representation in overall measure performance and hamper efforts to assess health equity. Telephone follow-up improves response rates in many health care settings, yet little recent work has examined this for surveys of Medicare enrollees, including those with Medicare Advantage.
View Article and Find Full Text PDFAm J Manag Care
January 2025
Institute of Health Policy and Management and Master of Public Health Program, College of Public Health, National Taiwan University, No. 17 Xu-Zhou Road, Taipei 100, Taiwan. Email:
Objectives: Patients who revisit the emergency department (ED) shortly after discharge are a high-risk group for complications and death, and these revisits may have been seriously affected by the COVID-19 pandemic. Detecting suspected COVID-19 cases in EDs is resource intensive. We examined the associations of screening workload for suspected COVID-19 cases with in-hospital mortality and intensive care unit (ICU) admission during short-term ED revisits.
View Article and Find Full Text PDFAm J Respir Crit Care Med
January 2025
National and Kapodistrian University of Athens, Athens, Greece;
Am J Respir Crit Care Med
January 2025
Shanghai Jiao Tong University Medical School Affiliated Ruijin Hospital, Respiratory and Critical Care Medicine, Shanghai, China;
Adv Neonatal Care
January 2025
Author Affiliations: Neonatal Intensive Care Unit, Seattle Children's Hospital, Seattle, WA (Mrs LaBella, Ms Kelly, Mrs Carlin, and Dr Walsh); and Seattle Children's Research Institute, Seattle, WA (Mrs Carlin and Dr Walsh).
Background: Finding an accurate and simple method of thermometry in the neonatal intensive care unit is important. The temporal artery thermometer (TAT) has been recommended for all ages by the manufacturer; however, there is insufficient evidence for the use of TAT in infants, especially to detect hypothermia.
Purpose: To assess the accuracy of the TAT in hypothermic neonates in comparison to a rectal thermometer.
Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!