Background: The amount of plant data such as taxonomical classification, morphological characteristics, ecological attributes and geological distribution in textual and image forms has increased rapidly due to emerging research and technologies. Therefore, it is crucial for experts as well as the public to discern meaningful relationships from this vast amount of data using appropriate methods. The data are often presented in lengthy texts and tables, which make gaining new insights difficult. The study proposes a visual-based representation to display data to users in a meaningful way. This method emphasises the relationships between different data sets.
Method: This study involves four main steps which translate text-based results from Extensible Markup Language (XML) serialisation format into graphs. The four steps include: (1) conversion of ontological dataset as graph model data; (2) query from graph model data; (3) transformation of text-based results in XML serialisation format into a graphical form; and (4) display of results to the user via a graphical user interface (GUI). Ontological data for plants and samples of trees and shrubs were used as the dataset to demonstrate how plant-based data could be integrated into the proposed data visualisation.
Results: A visualisation system named plant visualisation system was developed. This system provides a GUI that enables users to perform the query process, as well as a graphical viewer to display the results of the query in the form of a network graph. The efficiency of the developed visualisation system was measured by performing two types of user evaluations: a usability heuristics evaluation, and a query and visualisation evaluation.
Discussion: The relationships between the data were visualised, enabling the users to easily infer the knowledge and correlations between data. The results from the user evaluation show that the proposed visualisation system is suitable for both expert and novice users, with or without computer skills. This technique demonstrates the practicability of using a computer assisted-tool by providing cognitive analysis for understanding relationships between data. Therefore, the results benefit not only botanists, but also novice users, especially those that are interested to know more about plants.
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http://dx.doi.org/10.7717/peerj.5579 | DOI Listing |
J Clin Endocrinol Metab
March 2025
Department of Metabolic Medicine, Faculty of Life Sciences, Kumamoto University. 1-1-1 Honjo, Chuo-ku, Kumamoto 860-8556, Japan.
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Methods: Sensor glucose (SG) concentrations were measured by Dexcom G7 (G7) from 6 days prior to camp.
Sci Adv
March 2025
Department of Molecular Biology, Massachusetts General Hospital, Boston, MA, USA.
In vertebrate Hedgehog (Hh) signaling, the precise output of the final effectors, GLI (glioma-associated oncogene) transcription factors, depends on the primary cilium. Upon pathway initiation, generating the precise levels of the activator form of GLI depends on its concentration at the cilium tip. The mechanisms underlying this critical step in Hh signaling are unclear.
View Article and Find Full Text PDFJMIR Med Inform
March 2025
Center for General Practice at Aalborg University, Department of Clinical Medicine, Aalborg University, Selma Lagerløfs vej 249, Aalborg, 9260 Gistrup, Denmark, 45 29807944.
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Maternal and Fetal Research Group, Vall d'Hebron Research Institute (VHIR), Barcelona, Spain.
This study investigated the use of group body mapping as a methodological tool to explore experiences of obstetric violence among migrant women from Senegal, Morocco, and Pakistan in Catalonia. The research aimed to assess the effectiveness of group body mapping in identifying the barriers these women faced during pregnancy, childbirth, and the postpartum period, while also highlighting the intersectional dimensions of obstetric violence. The study identified seven key codes-Issues/Barriers, Trust, Gender, Body/Embodiment, Significant Relationships, Employment, and Gender-Based Violence-which were analyzed from an intersectional perspective.
View Article and Find Full Text PDFIEEE Trans Neural Syst Rehabil Eng
March 2025
Spatial division multiple access (SDMA) is a way of encoding BCI systems based on spatial distribution of brain signal characteristics. However, SDMA-BCI based on EEG had poor system performance limited by spatial resolution. MEG-EEG fusion modality analysis can help solve this problem.
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