Showing 8,821 - 8,840 results of 20,442 for search '(functional OR function) data analysis', query time: 0.47s Refine Results
  1. 8821
  2. 8822
  3. 8823

    Neuropsychological and clinical variables associated with cognitive trajectories in patients with Alzheimer's disease by Marianna Riello, Monica Moroni, Stefano Bovo, Flavio Ragni, Manuela Buganza, Raffaella Di Giacopo, Marco Chierici, Lorenzo Gios, Matteo Pardini, Matteo Pardini, Federico Massa, Federico Massa, Monica Dallabona, Elisa Vanzetta, Cristina Campi, Cristina Campi, Michele Piana, Michele Piana, Sara Garbarino, Manuela Marenco, Venet Osmani, Giuseppe Jurman, Antonio Uccelli, Antonio Uccelli, Bruno Giometto, Bruno Giometto, NeuroArtP3 Network, Filippo Gerli, Guido Pasquini, Claudia Niccolai, Matteo Betti, Emilio Portaccio, Maria Pia Amato, Rossi Andrea, Parodi Costanza, Ramaglia Antonia, Tortora Domenico, Severino Mariasavina, Andrea Falini, Antonella Castellano, Nicolò Pecco, Paola Scifo, Sonia Calloni

    Published 2025-05-01
    “…Model interpretability analysis revealed that the global cognitive state progression in AD patients is associated with: low spatial memory (Corsi block-tapping), verbal episodic long-term memory (Babcock's story recall) and working memory (Stroop Color) performances, the presence of hypertension, the absence of hypercholesterolemia, and functional skills inabilities at the IADL scores at baseline.ConclusionThis is the first AI study to predict cognitive trajectories of AD patients using routinely collected clinical data, while at the same time providing explainability of factors contributing to these trajectories. …”
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    Article
  4. 8824

    White Matter Imaging Phenotypes Mediate the Negative Causality of Mitochondrial DNA Copy Number on Sleep Apnea: A Bidirectional Mendelian Randomization Study and Mediation Analysis by Ying Q, Wang M, Zhao Z, Wu Y, Sun C, Huang X, Zhang X, Guo J

    Published 2024-12-01
    “…Mitochondrial DNA copy number (mtDNA-CN), an easily accessible biomarker in blood, reflects mitochondrial function. However, the causal relationship between mtDNA-CN and SA remains unclear. …”
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    Article
  5. 8825

    Smooth Moves: Comparing Log Dimensionless Jerk Metrics from Body Center of Mass Trajectory and Wearable Sensor Acceleration During Walking by Paolo Brasiliano, Gaspare Pavei, Elena Bergamini

    Published 2025-02-01
    “…Movement smoothness is a critical metric for evaluating motor control and sensorimotor impairments, with increasing relevance in neurorehabilitation and everyday functional assessments. This study investigates the correlation between two smoothness metrics (Log Dimensionless Jerk): LDLJV, derived from body center of mass (BCoM) trajectories using a gold-standard stereophotogrammetric system, and LDLJA, calculated from acceleration data recorded via an inertial measurement unit (IMU) placed at the L1–L2 level. …”
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  6. 8826
  7. 8827

    MRI-based differentiation of Parkinson's disease by cerebellar gray matter volume by Dacong Zhao, Jiang Guo, Guanghua Lu, Rui Jiang, Chao Tian, Xu Liang

    Published 2025-04-01
    “…This study aimed to explore the potential of cerebellar gray matter volume, related to motor control function, as a neuroimaging biomarker to classify patients with PD and healthy controls (HC) by using voxel-based morphometric (VBM) measurements and support vector machine (SVM) methods based on independent component analysis (ICA). …”
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  8. 8828

    Wind Turbine Static Errors Related to Yaw, Pitch or Anemometer Apparatus: Guidelines for the Diagnosis and Related Performance Assessment by Davide Astolfi, Silvia Iuliano, Antony Vasile, Marco Pasetti, Salvatore Dello Iacono, Alfredo Vaccaro

    Published 2024-12-01
    “…Based on this, finally, a rigorous work flow is formulated for detecting static errors and discriminating among them through SCADA data analysis. Nevertheless, methods based on additional information sources (like further sensors or meteorological data) are also discussed. …”
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  9. 8829

    Genome-Wide Analysis of the <i>CDPK</i> Gene Family in <i>Populus tomentosa</i> and Their Expressions in Response to Arsenic Stress and Arbuscular Mycorrhizal Fungi Colonization by Minggui Gong, Jiajie Su, Shuaihui Wang, Youjia Wang, Weipeng Wang, Xuedong Chen, Qiaoming Zhang

    Published 2025-07-01
    “…However, there is still limited knowledge regarding the genes of the <i>Populus tomentosa CDPK</i> family and their underlying functions in response to arsenic (As) stress and arbuscular mycorrhizal fungi (AMF) colonization. …”
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  10. 8830
  11. 8831

    Elucidating the causal associations and mechanisms between circulating immune cells and idiopathic pulmonary fibrosis: new insights from Mendelian randomization and transcriptomics by Han Yang, Xuanyu Wu, Xiang Xiao, Jiajing Chen, Xiaomin Yu, Wen Zhao, Fei Wang

    Published 2025-01-01
    “…Subsequently, SNP-nearest genes combined with the transcriptomics data of IPF were subjected to multiple bioinformatics analyses such as TIMER, WGCNA, functional enrichment analysis, protein-protein interaction analysis, and ROC to identify IPF biomarkers. …”
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  12. 8832
  13. 8833

    Genome-Wide Identification and Expression Analyses of the MADS-Box Gene During Flowering in <i>Primulina huaijiensis</i> by Jie Zhang, Xinxia Cai, Qin Liu, Ziyi Lei, Chen Feng

    Published 2025-06-01
    “…The results of qRT-PCR analysis of selected genes further validated the RNA-seq findings, suggesting these genes may exert distinct functional roles during floral development. …”
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  14. 8834

    Integrating advanced neural network architectures with privacy enhanced encryption for secure and intelligent healthcare analytics by C. Ramesh Babu Durai, S. Dhanasekaran, M. Jamuna Rani, Sindhu Chandra Sekharan

    Published 2025-08-01
    “…Detailed evaluation accepts the performance of structure in maintaining privacy through providing high-demonstration analysis for healthcare data protection. Organized testing and comparative analysis suggest that neuroshield not only improves data security, but also provides excellent accuracy with better performing results in healthcare analytics.…”
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  15. 8835

    Identification of Coal Mine Infrastructure Facilities with Inefficient Power Consumption by Belyaevsky R.V., Ahmetgareev A.R.

    Published 2025-06-01
    “…The analysis was conducted using Mathcad 15, which allows the calculation of confidence intervals via the inverse Laplace function. …”
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  16. 8836

    Sleep Disorders in Pediatric Patients Affected by Neurofibromatosis Type 1: Reports of a Questionnaire and an Apple Watch Sleep Assessment by Alessia Migliore, Manuela Lo Bianco, Roberta Leonardi, Stefania Salafia, Claudia Di Napoli, Martino Ruggieri, Agata Polizzi, Andrea D. Praticò

    Published 2025-04-01
    “…<b>Introduction:</b> Sleep is a fundamental biological function critical for physical and mental health. Chronic sleep disturbances can significantly impair cognitive, emotional, and social functioning, leading to deficits in attention, alertness, and executive function, alongside increased irritability, anxiety, and depression. …”
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  17. 8837

    Spatial Correlation Network Characteristics of Comprehensive Transportation Green Efficiency in China by Qifei Ma, Sujuan Li, Zhenchao Zhang

    Published 2025-04-01
    “…This study employs the slacks-based measure-data envelopment analysis (SBM-DEA) model to assess the CTGE of China. …”
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  18. 8838
  19. 8839

    A spatial bearing fault classification method based on improved APSMOTE-WKMFA by CHEN Chao, YANG Chenhao, XU Haosen, WAN Ouying, HAN Liling

    Published 2025-01-01
    “…Secondly, the projection mapping was performed using the kernel marginal Fisher analysis based on the wavelet function. Finally, the <italic>k</italic>-nearest neighbor classifier algorithm was used to train the classification model on the transformed low-dimensional features. …”
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  20. 8840