Publications by authors named "Chi-Hieu Pham"

Background And Objective: The Internet of medical things is enhancing smart healthcare services using physical wearable sensor-based devices connected to the Internet. Machine learning techniques play an important role in the core of these services for remotely consulting patients thanks to the pattern recognition from on-device data, which is transferred to the central servers from local devices. However, transferring personally identifiable information data to servers could become a source for hackers to steal from, manipulate and perform illegal activities.

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In recent years, the rapid development of deep learning approaches has paved the way to explore the underlying factors that explain the data. In particular, several methods have been proposed to learn to identify and disentangle these underlying explanatory factors in order to improve the learning process and model generalization. However, extracting this representation with little or no supervision remains a key challenge in machine learning.

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Article Synopsis
  • The study addresses the challenge of low anisotropic resolution in neonatal brain MRI analysis by proposing a method that combines high-resolution reconstruction and image segmentation simultaneously using generative adversarial networks.
  • The paper details the architecture and implementation of the network, with additional resources available on GitHub, and demonstrates its effectiveness in analyzing cortical structures from neonatal MR images.
  • The results show strong performance metrics and usability for medical applications, with the software being freely available for anyone to use on their own MR image datasets.
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Article Synopsis
  • - The paper explores using deep 3D convolutional neural networks for improving the quality of brain MRI images by reconstructing higher-resolution images from lower-resolution scans through advanced post-processing techniques.
  • - It analyzes various factors influencing the effectiveness of these networks, including optimization methods, network architecture, and training strategies, showing that a single network can adapt to different scaling requirements.
  • - Additionally, the research extends to multimodal super-resolution and investigates the benefits of transfer learning, demonstrating that these deep learning models can significantly enhance real clinical MRI images.
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