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  1. 481
  2. 482

    Characterizing the Flow and Interaction of Microbubbles in a 2D Capillary Network for Targeted Drug Delivery: A Simulation Study by Sadegh Shurche, Akram Shahidani, Roghaye Bodaghi Hossein Abadi

    Published 2025-01-01
    “…Materials and Methods: We designed the capillary network based on the tree pattern employed in quantitative studies per Murray’s minimum work rule and the cardiovascular network to simulate the hemodynamics of the vessels. …”
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    Article
  3. 483

    Rootstocks for Florida Stone Fruit by Ali Sarkhosh, Mercy Olmstead, Jose Chaparro, Thomas Beckman

    Published 2018-11-01
    “… Rootstocks have been used in many tree fruit systems to provide growth advantages and/or pest and disease resistance without affecting (or sometimes improving) productivity and fruit quality. …”
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    Article
  4. 484

    Impact of climate change over distribution and potential range of chestnut in the Iberian Peninsula by Pedro Álvarez-Álvarez, Adrián Aviñoa-Arias, Adrián Aviñoa-Arias, Emilio Díaz-Varela, José Vicente López-Bao, José Carlos Pérez-Girón

    Published 2025-02-01
    “…Optimal conditions for chestnut trees include precipitation exceeding 800 mm/year and mean temperature ranging from 10-15°C. …”
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    Article
  5. 485

    Detection of serum composition in pediatric inflammatory multisystem syndrome associated with SARS-CoV-2 and the response for the treatment by FTIR by Joanna Depciuch, Izabela Sieminska, Pawel Jakubczyk, Bartosz Klebowski, Katarzyna Ptak, Izabela Szymońska, Przemko Kwinta, Maciej Siedlar, Jan Jakub Kęsik, Magdalena Parlinska-Wojtan, Jarek Baran

    Published 2025-02-01
    “…Indeed, the obtained medical data clearly showed a decrease of C-reactive protein (CRP) and Procalcitonin (PCT) concentration in serum after the treatment. The decision tree showed that peak 1455 cm− 1 could be used as a potential FTIR PIMS marker. …”
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    Article
  6. 486

    Exploration of analgesic and anthelmintic activities of Artocarpus chaplasha ROXB. leaves supported by in silico molecular docking by S M Sohag, Sharmin Nur Toma, Md. Niaj Morshed, Md. Al Imran Imon, Md. Monirul Islam, Md. Ibnul Piash, Naznin Shahria, Imran Mahmud

    Published 2025-05-01
    “…Aartocarpus chaplasha is a medicinal tree native to tropical regions, valued for its diverse therapeutic properties and bioactive compounds found in its leaves, bark, and fruit. …”
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    Article
  7. 487

    Cacao floral traits are shaped by the interaction of flower position with genotype by Seunghyun Lim, Insuck Baek, Seok Min Hong, Yoonjung Lee, Silvas Kirubakaran, Moon S. Kim, Lyndel W. Meinhardt, Sunchung Park, Ezekiel Ahn

    Published 2025-02-01
    “…We measured flower size (lateral area, length, width, and perimeter), shape, and abundance at different developmental stages and vertical tree heights. Significant variations were observed between genotypes and across vertical positions, highlighting the roles of genetic and environmental factors in cacao reproductive biology. …”
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    Article
  8. 488

    Remote sensing applications for managing a large-scale restoration dynamics project throughout the City of Gold Coast conservation estate by Jean-Marc Hero, Luke Shoo, Michael Duncan, Darren Roche, Jesse Kenny, Howard Taylor, Tim Robson, Sanjeev Kumar Srivastava, Josh Veitch-Michaelis

    Published 2025-03-01
    “…Unassisted, weeds can persist for decades, and intervention (ANR) is required for the recovery of native vegetation. CNR (tree-planting) provides canopy cover, however, lacks species diversity in the shrub layer. …”
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  9. 489
  10. 490
  11. 491

    Identification of Plasma Proteins Associated with Alzheimer's Disease Using Feature Selection Techniques and Machine Learning Algorithms by Zakaria Mokadem, Mohamed Djerioui, Bilal Attallah, Youcef Brik

    Published 2025-02-01
    “…The SBFS technique generated all possible combinations of protein groups from the 146 proteins, which were then trained and tested using five machine learning models: Decision Tree, Random Forest, Extremely Randomized Trees, Extreme Gradient Boosting, and Adaptive Boosting. …”
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  12. 492

    A Fourfold Bi-Filter and Permuted Bi-Quad-Wrapper Feature Selection Method for Finding Optimal Moments of Multi-Trajectory Transient Records in Transient Analysis by Seyed Alireza Bashiri Mosavi, Omid Khalaf Beigi

    Published 2025-01-01
    “…In the case of wrapper methods, hyperplane-based classifiers (HCs), namely support vector machine (SVM) and twin SVM (TWSVM), play the main role in IWSS and IWSSr tree formation. Due to kernel-based learning necessity in NTES, embedding the radial basis function (RBF), dynamic time warping (DTW), and polynomial (POL) kernels into dual HCs is on the agenda. …”
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  13. 493

    Predicting pregnancy loss and its determinants among reproductive-aged women using supervised machine learning algorithms in Sub-Saharan Africa by Tirualem Zeleke Yehuala, Sara Beyene Mengesha, Nebebe Demis Baykemagn

    Published 2025-02-01
    “…Python software was used to process the data, and machine learning techniques such as Random Forest, Decision Tree, Logistic Regression, Extreme Gradient Boosting, and Gaussian were applied. …”
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    Article
  14. 494

    DATA MINING ALGORITHMS FOR PREDICTION OF STUDENT TEACHERS’ PERFORMANCE IN ICT: A SYSTEMATIC LITERATURE REVIEW by Juma Habibu Shindo, Mohamedi Mohamedi Mjahidi, Mohamed Dewa Waziri

    Published 2023-09-01
    “…Considering the specific study findings represented quantitatively, Decision Trees and Naive Bayes were found to be the most commonly used Data Mining algorithms, with a count of 20.6% each. …”
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  15. 495
  16. 496

    Trends in vegetation cover changes in Bonny area of the Niger Delta by A Adoki

    Published 2013-07-01
    “…The one–layered forest has mangrove trees of 3-14 m high without undergrowth forming the only layer while the two-layered forest has a top layer made up of Rhizophora species (3-32 m high) depending on the height of trees at each site and a ground layer composed mainly of the fern Acrostichum aureum and seedlings of the tree species. …”
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  17. 497

    Genome wide identification of Dof transcription factors in Carmine radish reveals RsDof33 role in cadmium stress and anthocyanin biosynthesis by Caiming Gou, Jia Li, Bo Chen, Guoting Cheng, Zhangfei Zheng, Hua Peng, Ahmed H. El-Sappah

    Published 2025-02-01
    “…The radish genome has 59 RsDofs, which are divided into nine clusters (A: 8, B1: 10, B2: 10, C1: 3, C2.1: 5, C2.2: 4, C3: 11, D1: 4, and D2: 4). Phylogenetic tree analysis revealed significant Dof gene family resemblance between Arabidopsis thaliana and Brassica napus. …”
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  18. 498

    Complete mitogenome characteristics and phylogenetic analysis of traditional Chinese medicinal plant Tinospora sagittata (Oliv.) Gagnep. from the Menispermaceae family by Jing Zhao, Zi-Han Chen, Peng-Cheng Huang, Liu-Wei Chen, Ming-Xian Zhang, Li-Hua Wang, You-Yong Zhu, Jia-Guan Wang, Yu Zhao

    Published 2025-02-01
    “…Phylogenetic analysis identified a tree that was basically consistent with the phylogeny of Ranunculales described in the APG IV system. …”
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  19. 499

    Distribution and Main Influencing Factors of Net Ecosystem Carbon Exchange in Typical Vegetation Ecosystems of Southern China by Yike Wang, Xia Liu, Weijia Lan, Shuxian Yin, Liya Fan, Boru Mai, Xuejiao Deng

    Published 2024-05-01
    “…This study investigated the NEE characteristics of typical evergreen coniferous forest ecosystems (ECFEs), tree-and-crop mixed ecosystems (TCMEs), and coastal crop ecosystems (CCEs) in southern China. …”
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  20. 500

    Own Experience in the Use of Artificial Intelligence Technologies in the Diagnosis of Esophageal Achalasia by O. A. Storonova, N. I. Kanevskii, A. S. Trukhmanov, V. T. Ivashkin

    Published 2024-12-01
    “…Its technical characteristics were “decision trees” and branching depth the number of which was 14 and 5 respectively. …”
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