Showing 241 - 260 results of 5,704 for search '((((spine OR (pinga OR sping)) OR (sshingna OR sshingna)) OR find) OR ((sspingn OR ling) OR pin))', query time: 0.18s Refine Results
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    Health and disease phenotyping in old age using a cluster network analysis by Valenzuela, Jesus Felix, Monterola, Christopher, Tong, Victor Joo Chuan, Ng, Tze Pin, Larbi, Anis

    Published 2018
    “…Hierarchical ordering of these clusters identified six common themes based on interactions with physiological systems and common underlying substrates of age-associated morbidity and disease chronicity, functional disability, and quality of life. These findings provide a starting point for indepth analyses of ageing that incorporate immunologic, metabolomic and proteomic biomarkers, and ultimately offer low-level-based typologies of healthy and unhealthy ageing.…”
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    Journal Article
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    Deadweight costs and optimal capital structure. by Liang, Huijun., Lim, Wei Ling.

    Published 2011
    “…In this paper, our model is consistent with those empirical findings. However, we shall go deeper in exploring how the presence of deadweight costs affect a MNC’s (1) optimal capital structure, and (2) optimal renegotiation strategy. …”
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    Final Year Project (FYP)
  18. 258

    Deep learning-based microcirculation performance classification using multispectral photoacoustic technology by Chua, Hui Ling, Huong, Audrey

    Published 2024
    “…The ultrasonic waves collected from their posterior left arm under two experimental settings, namely at rest (i.e., control) and with arterial blood flow occlusions, were used to predict the microcirculation changes in tissue using the deep networks. Our findings showed the superiority of the hybrid model over the Alexnet and LSTM, with an average testing accuracy of 95.7 % and precision of 98.2 %, making it an ideal deep learning model for the task. …”
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    Article
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