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Four-dimensional conebeam computed tomography (4D CBCT) is an efficient technique to overcome motion artifacts caused by organ motion during breathing. 4D CBCT reconstruction in a single scan usually divides projections into different groups of sparsely sampled data based on the respiratory phases. The reconstructed images within each group present poor image quality due to the limited number of projections. To improve the image quality of 4D CBCT in a single scan, we propose a novel reconstruction scheme that combines prior knowledge with motion compensation. We apply the reconstructed images of the full projections within a single routine as prior knowledge, providing structural information for the network to enhance the restoration structure. The prior network (PN-Net) is proposed to extract features of prior knowledge and fuse them with the sparsely sampled data using an attention mechanism. The prior knowledge guides the reconstruction process to restore the approximate organ structure and alleviates severe streaking artifacts. The deformation vector field (DVF) extracted using deformable image registration among different phases is then applied in the motion-compensated ordered-subset simultaneous algebraic reconstruction algorithm to generate 4D CBCT images. Proposed method has been evaluated using simulated and clinical datasets and has shown promising results by comparative experiment. Compared with previous methods, our approach exhibits significant improvements across various evaluation metrics.
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http://dx.doi.org/10.1016/j.compbiomed.2024.108145 | DOI Listing |
Memory
September 2025
The Psychology Research Institute (INPSY), Masaryk University, Brno, Czech Republic.
This study explores the relationship between cultural life scripts and actual life stories of Czechs and Slovaks, building on prior research by Štěpánková et al. (2020. Czech and Slovak life scripts: The rare case of two countries that used to be one.
View Article and Find Full Text PDFJ Physician Assist Educ
September 2025
Rachel Ditoro, EdD, MSPAS, PA-C, is a professor, program director of Salus at Drexel University PA Program, at Drexel University, Elkins Park, Pennsylvania.
Introduction: Physician assistant programs use summative evaluations to assess near graduates, with many using the PA Education Association (PAEA) End of Curriculum (EOC) exam to assess the medical knowledge component. Accurate identification of those students at risk of low Physician Assistant National Certifying Examination (PANCE) performance is imperative. The purpose of this study was to evaluate the relationship between the outcomes of the PAEA EOC exam and the PANCE.
View Article and Find Full Text PDFJ Surg Case Rep
September 2025
Department of Pathology, Tishreen University Hospital, Lattakia, Syria.
Endometriosis is a chronic gynecological condition characterized by the presence of endometrial-like tissue outside the uterine cavity. Although commonly associated with pelvic pain and infertility, its incidental discovery during a cesarean section is rare. To our knowledge, we report the first documented case of decidualized endometriosis identified on the anterior peritoneum during an emergency cesarean section in a 28-year-old woman with only one previous cesarean delivery and no prior symptoms.
View Article and Find Full Text PDFBeilstein J Nanotechnol
August 2025
School of Physics and Astronomy, University of Leeds, Leeds LS2 9JT, United Kingdom.
Atomic resolution scanning probe microscopy, and in particular scanning tunnelling microscopy (STM) allows for high-spatial-resolution imaging and also spectroscopic analysis of small organic molecules. However, preparation and characterisation of the probe apex in situ by a human operator is one of the major barriers to high-throughput experimentation and to reproducibility between experiments. Characterisation of the probe apex is usually accomplished via assessment of the imaging quality on the target molecule and also the characteristics of the scanning tunnelling spectra (STS) on clean metal surfaces.
View Article and Find Full Text PDFBayesian Anal
January 2025
Department of Statistics, University of Washington, Seattle, USA.
We introduce the BREASE framework for the Bayesian analysis of randomized controlled trials with binary treatment and outcome. Approaching the problem from a causal inference perspective, we propose parameterizing the likelihood in terms of the aseline isk, fficacy, and dverse ide ffects of the treatment, along with a flexible, yet intuitive and tractable jointly independent beta prior distribution on these parameters, which we show to be a generalization of the Dirichlet prior for the joint distribution of potential outcomes. Our approach has a number of desirable characteristics when compared to current mainstream alternatives: (i) it naturally induces prior dependence between expected outcomes in the treatment and control groups; (ii) as the baseline risk, efficacy and risk of adverse side effects are quantities commonly present in the clinicians' vocabulary, the hyperparameters of the prior are directly interpretable, thus facilitating the elicitation of prior knowledge and sensitivity analysis; and (iii) we provide analytical formulae for the marginal likelihood, Bayes factor, and other posterior quantities, as well as an exact posterior sampling algorithm and an accurate and fast data-augmented Gibbs sampler in cases where traditional MCMC fails.
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