scholarly journals Comparative Analysis of Relaxation Time Interval and Integrated Relaxation Pressure as Risk Factors for Aspiration in Patients With Oropharyngeal Dysphagia

2021 ◽  
Vol 27 (4) ◽  
pp. 518-524
Author(s):  
Jung Ho Park ◽  
Chong-Il Sohn ◽  
Kyung Jae Yoon ◽  
Jung Hwan Park
Author(s):  
R. Rakhmanov ◽  
E. Bogomolova ◽  
A. Tarasov ◽  
S. Zaytseva

Comparative analysis of the incidence was conducted for the leading classes – “Respiratory diseases” and “Diseases of the skin and subcutaneous tissue” – among cadets of two military schools studying in the same climatic region. General features in prevalence, indicators, structure, trends by years of study, and general features in the seasonality of increase in annual incidence are revealed. Role of the influence of synergistic risk factors for health is determined.


2021 ◽  
Vol 16 (1) ◽  
Author(s):  
Indrawati Hadi ◽  
Daniel Reitz ◽  
Raphael Bodensohn ◽  
Olarn Roengvoraphoj ◽  
Stefanie Lietke ◽  
...  

Abstract Purpose Frequency and risk profile of radiation necrosis (RN) in patients with glioma undergoing either upfront stereotactic brachytherapy (SBT) and additional salvage external beam radiotherapy (EBRT) after tumor recurrence or vice versa remains unknown. Methods Patients with glioma treated with low-activity temporary iodine-125 SBT at the University of Munich between 1999 and 2016 who had either additional upfront or salvage EBRT were included. Biologically effective doses (BED) were calculated. RN was diagnosed using stereotactic biopsy and/or metabolic imaging. The rate of RN was estimated with the Kaplan Meier method. Risk factors were obtained from logistic regression models. Results Eighty-six patients (49 male, 37 female, median age 47 years) were included. 38 patients suffered from low-grade and 48 from high-grade glioma. Median follow-up was 15 months after second treatment. Fifty-eight patients received upfront EBRT (median total dose: 60 Gy), and 28 upfront SBT (median reference dose: 54 Gy, median dose rate: 10.0 cGy/h). Median time interval between treatments was 19 months. RN was diagnosed in 8/75 patients. The 1- and 2-year risk of RN was 5.1% and 11.7%, respectively. Tumor volume and irradiation time of SBT, number of implanted seeds, and salvage EBRT were risk factors for RN. Neither of the BED values nor the time interval between both treatments gained prognostic influence. Conclusion The combination of upfront EBRT and salvage SBT or vice versa is feasible for glioma patients. The risk of RN is mainly determined by the treatment volume but not by the interval between therapies.


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Konstantin S. Sharov

AbstractThe article presents a comparative analysis of SARS-CoV-2 viral load (VL), T lymphocyte count and respiratory index PaO2:FiO2 ratio as prospective markers of COVID-19 course severity and prognosis. 8806 patients and asymptomatic carriers were investigated in time interval 15 March–19 December 2020. T cell count demonstrated better applicability as a marker of aggravating COVID-19 clinical course and unfavourable disease prognosis than SARS-CoV-2 VL or PaO2:FiO2 ratio taken alone. Using T cell count in clinical practice may provide an opportunity of early prediction of deteriorating a patient’s state.


2013 ◽  
Vol 8 (8) ◽  
pp. 606-611 ◽  
Author(s):  
Karice K. Hyun ◽  
Rachel R. Huxley ◽  
Hisatomi Arima ◽  
Jean Woo ◽  
Tai Hing Lam ◽  
...  

Antibiotics ◽  
2021 ◽  
Vol 10 (3) ◽  
pp. 239
Author(s):  
Inmaculada Mora-Jiménez ◽  
Jorge Tarancón-Rey ◽  
Joaquín Álvarez-Rodríguez ◽  
Cristina Soguero-Ruiz

Multi-drug resistance (MDR) is one of the most current and greatest threats to the global health system nowadays. This situation is especially relevant in Intensive Care Units (ICUs), where the critical health status of these patients makes them more vulnerable. Since MDR confirmation by the microbiology laboratory usually takes 48 h, we propose several artificial intelligence approaches to get insights of MDR risk factors during the first 48 h from the ICU admission. We considered clinical and demographic features, mechanical ventilation and the antibiotics taken by the patients during this time interval. Three feature selection strategies were applied to identify statistically significant differences between MDR and non-MDR patient episodes, ending up in 24 selected features. Among them, SAPS III and Apache II scores, the age and the department of origin were identified. Considering these features, we analyzed the potential of machine learning methods for predicting whether a patient will develop a MDR germ during the first 48 h from the ICU admission. Though the results presented here are just a first incursion into this problem, artificial intelligence approaches have a great impact in this scenario, especially when enriching the set of features from the electronic health records.


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