Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Background: Physiologic data streaming and aggregation platforms such as Sickbay® and Etiometry are becoming increasingly used in the paediatric acute care setting. As these platforms gain popularity in clinical settings, there has been a parallel growth in scholarly interest. The primary aim of this study is to characterise research productivity utilising high-fidelity physiologic streaming data with Sickbay® or Etiometry in the acute care paediatric setting.

Methods: A systematic review of the literature was conducted to identify paediatric publications using data from Sickbay® or Etiometry. The resulting publications were reviewed to characterise them and identify trends in these publications.

Results: A total of 41 papers have been published over 9 years using either platform. This involved 179 authors across 21 institutions. Most studies utilised Sickbay®, involved cardiac patients, were single-centre, and did not utilise machine learning or artificial intelligence methods. The number of publications has been significantly increasing over the past 9 years, and the average number of citations for each publication was 7.9.

Conclusion: A total of 41 papers have been published over 9 years using Sickbay or Etiometry data in the paediatric setting. Although the majority of these are single-centre and pertain to cardiac patients, growth in publication volume suggests growing utilisation of high-fidelity physiologic data beyond clinical applications. Multicentre efforts may help increase the number of centres that can do such work and help drive improvements in clinical care.

Download full-text PDF

Source
http://dx.doi.org/10.1017/S1047951125109219DOI Listing

Publication Analysis

Top Keywords

high-fidelity physiologic
12
physiologic data
12
sickbay® etiometry
12
utilising high-fidelity
8
data streaming
8
sickbay etiometry
8
systematic review
8
acute care
8
data sickbay®
8
total papers
8

Similar Publications

Precision livestock farming increasingly relies on non-invasive, high-fidelity systems capable of monitoring cattle with minimal disruption to behavior or welfare. Conventional identification methods, such as ear tags and wearable sensors, often compromise animal comfort and produce inconsistent data under real-world farm conditions. This study introduces Dairy DigiD, a deep learning-based biometric classification framework that categorizes dairy cattle into four physiologically defineda groups-young, mature milking, pregnant, and dry cows-using high-resolution facial images.

View Article and Find Full Text PDF

Background: Physiologic data streaming and aggregation platforms such as Sickbay® and Etiometry are becoming increasingly used in the paediatric acute care setting. As these platforms gain popularity in clinical settings, there has been a parallel growth in scholarly interest. The primary aim of this study is to characterise research productivity utilising high-fidelity physiologic streaming data with Sickbay® or Etiometry in the acute care paediatric setting.

View Article and Find Full Text PDF

Design and motion control analysis of a hybrid-powered ankle rehabilitation robot.

Comput Methods Biomech Biomed Engin

September 2025

School of Information Engineering, Shaoguan University, Shaoguan, China.

This study presents a novel hybrid-powered ankle robot actuated from above (ARAA) designed to improve the smoothness and control of multiaxial movements in robot-assisted ankle rehabilitation. Addressing the limitations of existing systems, which often lack precise trajectory tracking and consistent force application, the proposed robot integrates pneumatic muscles for actuation along the X-axis and Y-axis, with a servo motor driving motion in the Z-axis. A PID-based posture controller is implemented to ensure accurate control during training, while a reconfigurable mechanism allows adjustment of motion parameters to accommodate individual physiological differences.

View Article and Find Full Text PDF

Heart in a knot: unraveling the impact of the nested tori myofiber architecture on ventricular mechanics.

Biomech Model Mechanobiol

September 2025

Department of BioMechanical Engineering, Faculty of Mechanical Engineering, Delft University of Technology, Delft, The Netherlands.

The intricate three-dimensional organization of cardiac myofibers and sheetlets plays a critical role in the mechanical behavior of the human heart. Despite extensive research and the development of various rule-based myofiber architecture surrogate models, the precise arrangement of these structures and their impact on cardiac function remain subjects of debate. In this study, we present a novel myofiber architecture surrogate inspired by Streeter's nested tori conjecture, modeling the left ventricle as a series of smoothly twisting toroidal surfaces populated by continuous myofiber and sheetlet fields.

View Article and Find Full Text PDF

Patient-derived tumor xenograft (PDX) models serve as powerful tools in oncology research owing to their ability to capture patient-specific tumor heterogeneity and clinical behavior. However, the conventional matrices derived from murine tumors, commonly used to generate PDX models, suffer from key limitations such as lack of tissue specificity, high production costs, and inconsistent batch quality. In response, our study investigates the use of decellularized liver extracellular matrix (Liver ECM) as a biomimetic alternative that more accurately recapitulates the native hepatic microenvironment.

View Article and Find Full Text PDF