3,559 research outputs found

    Medical Ultrasound Imaging and Interventional Component (MUSiiC) Framework for Advanced Ultrasound Image-guided Therapy

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    Medical ultrasound (US) imaging is a popular and convenient medical imaging modality thanks to its mobility, non-ionizing radiation, ease-of-use, and real-time data acquisition. Conventional US brightness mode (B-Mode) is one type of diagnostic medical imaging modality that represents tissue morphology by collecting and displaying the intensity information of a reflected acoustic wave. Moreover, US B-Mode imaging is frequently integrated with tracking systems and robotic systems in image-guided therapy (IGT) systems. Recently, these systems have also begun to incorporate advanced US imaging such as US elasticity imaging, photoacoustic imaging, and thermal imaging. Several software frameworks and toolkits have been developed for US imaging research and the integration of US data acquisition, processing and display with existing IGT systems. However, there is no software framework or toolkit that supports advanced US imaging research and advanced US IGT systems by providing low-level US data (channel data or radio-frequency (RF) data) essential for advanced US imaging. In this dissertation, we propose a new medical US imaging and interventional component framework for advanced US image-guided therapy based on networkdistributed modularity, real-time computation and communication, and open-interface design specifications. Consequently, the framework can provide a modular research environment by supporting communication interfaces between heterogeneous systems to allow for flexible interventional US imaging research, and easy reconfiguration of an entire interventional US imaging system by adding or removing devices or equipment specific to each therapy. In addition, our proposed framework offers real-time synchronization between data from multiple data acquisition devices for advanced iii interventional US imaging research and integration of the US imaging system with other IGT systems. Moreover, we can easily implement and test new advanced ultrasound imaging techniques inside the proposed framework in real-time because our software framework is designed and optimized for advanced ultrasound research. The system’s flexibility, real-time performance, and open-interface are demonstrated and evaluated through performing experimental tests for several applications

    Nanoscale Heat Transfer from Magnetic Nanoparticles and Ferritin in an Alternating Magnetic Field

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    Recent suggestions of nanoscale heat confinement on the surface of synthetic and biogenic magnetic nanoparticles during heating by radio frequency-alternating magnetic fields have generated intense interest because of the potential utility of this phenomenon for noninvasive control of biomolecular and cellular function. However, such confinement would represent a significant departure from the classical heat transfer theory. Here, we report an experimental investigation of nanoscale heat confinement on the surface of several types of iron oxide nanoparticles commonly used in biological research, using an all-optical method devoid of the potential artifacts present in previous studies. By simultaneously measuring the fluorescence of distinct thermochromic dyes attached to the particle surface or dissolved in the surrounding fluid during radio frequency magnetic stimulation, we found no measurable difference between the nanoparticle surface temperature and that of the surrounding fluid for three distinct nanoparticle types. Furthermore, the metalloprotein ferritin produced no temperature increase on the protein surface nor in the surrounding fluid. Experiments mimicking the designs of previous studies revealed potential sources of the artifacts. These findings inform the use of magnetic nanoparticle hyperthermia in engineered cellular and molecular systems

    Synthesizing Photorealistic Virtual Humans Through Cross-modal Disentanglement

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    Over the last few decades, many aspects of human life have been enhanced with virtual domains, from the advent of digital assistants such as Amazon's Alexa and Apple's Siri to the latest metaverse efforts of the rebranded Meta. These trends underscore the importance of generating photorealistic visual depictions of humans. This has led to the rapid growth of so-called deepfake and talking-head generation methods in recent years. Despite their impressive results and popularity, they usually lack certain qualitative aspects such as texture quality, lips synchronization, or resolution, and practical aspects such as the ability to run in real-time. To allow for virtual human avatars to be used in practical scenarios, we propose an end-to-end framework for synthesizing high-quality virtual human faces capable of speaking with accurate lip motion with a special emphasis on performance. We introduce a novel network utilizing visemes as an intermediate audio representation and a novel data augmentation strategy employing a hierarchical image synthesis approach that allows disentanglement of the different modalities used to control the global head motion. Our method runs in real-time, and is able to deliver superior results compared to the current state-of-the-art

    Andro-Simnet: Android Malware Family Classification Using Social Network Analysis

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    While the rapid adaptation of mobile devices changes our daily life more conveniently, the threat derived from malware is also increased. There are lots of research to detect malware to protect mobile devices, but most of them adopt only signature-based malware detection method that can be easily bypassed by polymorphic and metamorphic malware. To detect malware and its variants, it is essential to adopt behavior-based detection for efficient malware classification. This paper presents a system that classifies malware by using common behavioral characteristics along with malware families. We measure the similarity between malware families with carefully chosen features commonly appeared in the same family. With the proposed similarity measure, we can classify malware by malware's attack behavior pattern and tactical characteristics. Also, we apply a community detection algorithm to increase the modularity within each malware family network aggregation. To maintain high classification accuracy, we propose a process to derive the optimal weights of the selected features in the proposed similarity measure. During this process, we find out which features are significant for representing the similarity between malware samples. Finally, we provide an intuitive graph visualization of malware samples which is helpful to understand the distribution and likeness of the malware networks. In the experiment, the proposed system achieved 97% accuracy for malware classification and 95% accuracy for prediction by K-fold cross-validation using the real malware dataset.Comment: 13 pages, 11 figures, dataset link: http://ocslab.hksecurity.net/Datasets/andro-simnet , demo video: https://youtu.be/JmfS-ZtCbg4 , In Proceedings of the 16th Annual Conference on Privacy, Security and Trust (PST), 201
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