The detailed anatomical information of the brain provided by 3D magnetic resonance imaging (MRI) enables various neuroscience research. However, due to the long scan time for 3D MR images, 2D images are mainly obtained in clinical environments. The purpose of this study is to generate 3D images from a sparsely sampled 2D images using an inpainting deep neural network that has a U-net-like structure and DenseNet sub-blocks. To train the network, not only fidelity loss but also perceptual loss based on the VGG network were considered. Various methods were used to assess the overall similarity between the inpainted and original 3D data. In addition, morphological analyzes were performed to investigate whether the inpainted data produced local features similar to the original 3D data. The diagnostic ability using the inpainted data was also evaluated by investigating the pattern of morphological changes in disease groups. Brain anatomy details were efficiently recovered by the proposed neural network. In voxel-based analysis to assess gray matter volume and cortical thickness, differences between the inpainted data and the original 3D data were observed only in small clusters. The proposed method will be useful for utilizing advanced neuroimaging techniques with 2D MRI data.
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http://dx.doi.org/10.1038/s41598-020-80930-w | DOI Listing |
J Med Internet Res
January 2025
Trinity College Dublin, Dublin, Ireland.
Background: Scientific implementation findings relevant to the implementation of internet-delivered cognitive behavioral therapy (iCBT) for depression and anxiety in adults remain sparse and scattered across different sources of published information. Identifying evidence-based factors that influence the implementation of iCBT is key to successfully using iCBT in real-world clinical settings.
Objective: This systematic review evaluated the following: (1) aspects that research articles postulate as important for the implementation of iCBT and (2) aspects relevant to the day-to-day running of iCBT services.
Purpose: This study explores uses of artificial intelligence (AI) in health professions education for non-psychomotor skills training at undergraduate, postgraduate, and continuing health professions education levels for education program development, delivery, and evaluation.
Method: This scoping review was conducted in 5 stages: (1) planning and research, (2) search strategy, (3) screening and selection, (4) review and recording data, and (5) synthesis. Seven bibliographic databases were searched using the main search terms artificial intelligence and continuing health professional education for articles that used AI for the purposes of non-psychomotor skills training for health professions education and involved health care professionals and/or trainees.
PLoS One
January 2025
Population Health Sciences, Bristol Medical School, University of Bristol, Bristol, United Kingdom.
Background: Financial incentives may be important for improving response rates to data collection activities and for retaining participants in longitudinal studies. However, for large studies, this introduces significant additional costs. We sought to determine whether an opt-in or an opt-out option for receiving financial incentives when completing questionnaires offers any cost saving measures.
View Article and Find Full Text PDFPlant Dis
January 2025
INRA Bordeaux, UMR 1332 Biologie du Fruit et Pathologie, INRA - Université de Bordeaux, CS20032, Villenave d'Ornon , France, 33882 cedex;
Privet leaf blotch-associated virus (PLBaV) is an Idaeovirus discovered by high-throughput sequencing (HTS) in privet (Ligustrum japonicum L) in southern Italy in 2017 (Navarro et al., 2017). In privet, it causes a leaf blotch disease with yellowish or whitish chlorotic blotches or ringspots.
View Article and Find Full Text PDFJ Health Organ Manag
January 2025
Department of Health Business Administration, Fooyin University, Kaohsiung, Taiwan.
Purpose: This study aims to build a typology of patient-driven health services innovation (PDHSI) and propose their relationships with healthcare quality.
Design/methodology/approach: Guided by value co-creation theory (VCC), this study adopted in-depth interviews and focus groups to collect qualitative data in Taiwan's health services sector. The collected data were analyzed using manual thematic analysis, following the standard procedures for transcribing, encoding and identifying themes.
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