The COVID-19 pandemic with its new variants has severely affected the whole world socially and economically. This study presents a novel data analysis approach to predict the spread of COVID-19. SIR and logistic models are commonly used to determine the duration at the end of the pandemic. Results show that these well-known models may provide unrealistic predictions for countries that have pandemics spread with multiple peaks and waves. A new prediction approach based on the sigmoidal transition (ST) model provided better estimates than the traditional models. In this study, a multiple-term sigmoidal transition (MTST) model was developed and validated for several countries with multiple peaks and waves. This approach proved to fit the actual data better and allowed the spread of the pandemic to be accurately tracked. The UK, Italy, Saudi Arabia, and Tunisia, which experienced several peaks of COVID-19, were used as case studies. The MTST model was validated for these countries for the data of more than 500 days. The results show that the correlating model provided good fits with regression coefficients (R2) > 0.999. The estimated model parameters were obtained with narrow 95% confidence interval bounds. It has been found that the optimum number of terms to be used in the MTST model corresponds to the highest R, the least RMSE, and the narrowest 95% confidence interval having positive bounds.
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http://dx.doi.org/10.1016/j.idm.2022.06.008 | DOI Listing |
Rev Esp Enferm Dig
January 2025
Gastroenterology, Yokkaichi Municipal Hospital.
Background: Colorectal obstruction is a critical condition requiring prompt diagnosis and intervention. Gastrografin, a water-soluble contrast agent, combines diagnostic and therapeutic benefits, facilitating bowel cleansing and enhancing intestinal motility. This study assessed the safety and effectiveness of Gastrografin enemas in emergency settings.
View Article and Find Full Text PDFPaediatr Anaesth
January 2025
Department of Anaesthesia, Starship Children's Hospital, Auckland, New Zealand.
Brachytherapy
December 2024
Medical Affairs, Varian Medical Systems, Inc., Palo Alto, CA; Department of Radiation Oncology, Allegheny Health Network Cancer Institute, Pittsburgh, PA. Electronic address:
Aim: To demonstrate how workshop and mentoring across a network of radiotherapy centers helped in transitioning from point A to volume-based image guided brachytherapy in carcinoma cervix.
Materials And Methods: Based on discussion with different centers across the network, the lapses in cervical cancer treatment were identified and a workshop was designed to change the practice pattern. The main focus of the workshop was to streamline EBRT dose prescription protocols and implement volume based image guided brachytherapy through mentoring and hands on training.
Int J Surg Case Rep
January 2025
Department of Visceral and Digestive Surgery, Monastir University Hospital, Monastir, Tunisia.
Introduction And Importance: This case report aims to highlight the clinical presentation, diagnostic challenges, surgical intervention, and subsequent management strategies of ISK during Ramadan fasting.
Case Presentation: 52-Year-old male with a three-day history of symptoms of intestinal obstruction. He complained of abdominal distention, vomiting, and absolute constipation.
J Neural Eng
December 2024
Muir Maxwell Epilepsy Centre, University of Edinburgh, Edinburgh, United Kingdom.
. Accurate seizure prediction could prove critical for improving patient safety and quality of life in drug-resistant epilepsy. While deep learning-based approaches have shown promising performance using scalp electroencephalogram (EEG) signals, the incomplete understanding and variability of the preictal state imposes challenges in identifying the optimal preictal period (OPP) for labeling the EEG segments.
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