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Titlebook: Computational Science – ICCS 2024; 24th International C Leonardo Franco,Clélia de Mulatier,Peter M. A. Slo Conference proceedings 2024 The

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0302-9743 hich took place in Malaga, Spain, during July 2–4, 2024...The 155 full papers and 70 short papers included in these proceedings were carefully reviewed and selected from 430 submissions...They were organized in topical sections as follows:..Part I:. ICCS 2024 Main Track Full Papers;..Part II:. ICCS
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Antonio Campillo López,Luis Narváez Macarroatasets to construct a neural network classifier, refining it through iterative fine-tuning. Experimental results on three different datasets demonstrate that our approach optimally leverages unlabeled data, outperforming existing methods in terms of accuracy for medical image recognition.
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Identification of Domain Phases in Selected Lipid Membrane Compositionslogical organizations. Our investigation was mainly focused on two lipid systems: POPC/PSM/CHOL, and DPPC/DLIPC/CHOL. The study underscores the dynamic interaction between ordered and disordered phases within cellular membranes, with a pivotal role of cholesterol in inducing domain formation.
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MonoWeb: Cardiac Electrophysiology Web Simulatortes visualization and flexible configuration with an intuitive interface. Through communication with the . simulator, it allows the input of advanced parameters, and different cellular models, including selecting arrhythmia examples, and stimuli, with the goal of making this experience easier and practical for electrophysiology professionals.
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Integration of Self-supervised BYOL in Semi-supervised Medical Image Recognitionatasets to construct a neural network classifier, refining it through iterative fine-tuning. Experimental results on three different datasets demonstrate that our approach optimally leverages unlabeled data, outperforming existing methods in terms of accuracy for medical image recognition.
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