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Eunyoung Im,Bomi Kim,Sunghoon Kang et al. Eunyoung Im et al.
This study demonstrates the feasibility of using LLMs to reduce manual workload and accelerate evidence-based research practices.
Claudia Crimi,Annalisa Carlucci,Lara Pisani et al. Claudia Crimi et al.
Physicians reported a high workload for management of patients on LTH-NIV, but felt that many therapy management tasks could be performed by other providers, especially outpatient pulmonologists and homecare providers.
Adam Alomari,Jessica McCann,April J Damian et al. Adam Alomari et al.
Key findings include the clinical readiness of graduates from comprehensive training programs, the need for standardized career pathways, and the importance of addressing workload disparities.
K Jane Muir,Alexandra Maye,Matthew D McHugh et al. K Jane Muir et al.
Importance: It is unknown if virtual nursing (VN) enhances care quality or improves the workload of bedside nurses in hospitals....Objective: To describe what services VNs provide to patients and nurses in hospitals; to evaluate whether the presence of VNs improves nurse workload and patient care quality; and to examine bedside nurses' experiences with VNs....Main outcomes and measures: Bedside nurses reported the services provided by VNs and answered questions about VNs' impact on workload and quality of care.
S Kritikou,A Zafeiridis,A Markopoulou et al. S Kritikou et al.
The PR-intervention resulted in improved VO₂peak (p=0.01), CPET duration and peak workload (p=0.02). HADS anxiety/depression scores decreased (p=0.01; p
Juhua Ye,Junwu Huang Juhua Ye
ORs nurses believe that AI and robotic nursing applications will significantly reduce the workload of nurses with OR: 75.73, 95% CI: 8.28-692.86; p = 0.0001....Conclusion: Majority of the nurses believe that AI and robotic nursing applications will significantly reduce the workload of nurses, they believe that AI will significantly revolutionize in the field of nursing, and they believe that robotic technologies are very important.
Jiyoon Oh,You Rim Kim,Yong Ju Lee et al. Jiyoon Oh et al.
A high false alarm rate can lead to alarm fatigue among nurses, increasing workload and stress....This study aimed to improve the accuracy of arrhythmia detection by enhancing the noise detection algorithm in patient monitoring systems and to determine whether false alarm rate and workload decreased through clinical trials.
David Putzer,Adriana Palacio Giraldo,Julian Lair et al. David Putzer et al.
Robotic assistance in total knee arthroplasty (TKA) improves surgical precision but may alter intraoperative stress and workload among staff. This study evaluated these effects in 60 robot-assisted procedures involving surgeons, scrub technicians, circulators, and technicians....Postoperatively, satisfaction and confidence were high across groups, though scrub technicians reported the greatest workload from added robotic tasks.
Stella Arakelyan,Atul Anand,Stewart W Mercer et al. Stella Arakelyan et al.
Results: Three themes were identified: legitimation of risk prediction tools, workload implications of risk prediction and reconfiguration of risk prediction tools....They stressed increased workload implications of new tools and the need for seamless integration, clearer guidance on how to respond to prediction, and inclusion of psychosocial factors and meaningful outcomes....Conclusions: There was some support for using AI-informed tools for risk stratification, provided they have no workload implications, complement clinical judgment, and account for patient clinical complexity and preferences.
Eric Luneau,Vianney Rozand,Juan Manuel Murias et al. Eric Luneau et al.
Results For a given workload (i.e., last common stage, LCS), MVC in percentage of baseline was lower in VOM (84.6% ± 9.2%) compared to YM (94.0% ± 7.0%; p < 0.001) and OM (91.7% ± 6.3%; p < 0.01). At LCS, Tw was lower in VOM (89.3% ± 12.7%) compared to OM (99.7% ± 10.5%; p < 0.05)....VOM, but not OM, was more fatigued than YM for a given submaximal workload but the opposite was true at exhaustion. Fatigability in VOM was due to peripheral factors and was correlated with aerobic capacity.
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