keyword
https://read.qxmd.com/read/38681752/neighbert-medical-entity-linking-using-relation-induced-dense-retrieval
#41
JOURNAL ARTICLE
Ayush Singh, Saranya Krishnamoorthy, John E Ortega
UNLABELLED: One of the common tasks in clinical natural language processing is medical entity linking (MEL) which involves mention detection followed by linking the mention to an entity in a knowledge base. One reason that MEL has not been solved is due to a problem that occurs in language where ambiguous texts can be resolved to several named entities. This problem is exacerbated when processing the text found in electronic health records. Recent work has shown that deep learning models based on transformers outperform previous methods on linking at higher rates of performance...
June 2024: Journal of Healthcare Informatics Research
https://read.qxmd.com/read/38681525/a-novel-method-for-vegetable-and-fruit-classification-based-on-using-diffusion-maps-and-machine-learning
#42
JOURNAL ARTICLE
Wenbo Wang, Aimin Zhu, Hongjiang Wei, Lijuan Yu
Vegetable and fruit classification can help all links of agricultural product circulation to better carry out inventory management, logistics planning and supply chain coordination, and improve the efficiency and response speed of the supply chain. However, the current classification of vegetables and fruits mainly relies on manual classification, which inevitably introduces the influence of human subjective factors, resulting in errors and misjudgments in the classification of vegetables and fruits. In response to this serious problem, this research proposes an efficient and reproducible novel model to classify multiple vegetables and fruits using handcrafted features...
2024: Current research in food science
https://read.qxmd.com/read/38681140/an-epilepsy-detection-method-based-on-multi-dimensional-feature-extraction-and-dual-branch-hypergraph-convolutional-network
#43
JOURNAL ARTICLE
Jiacen Liu, Yong Yang, Feng Li, Jing Luo
Epilepsy is a disease caused by abnormal neural discharge, which severely harms the health of patients. Its pathogenesis is complex and variable with various forms of seizures, leading to significant differences in epilepsy manifestations among different patients. The changes of brain network are strongly correlated with related pathologies. Therefore, it is crucial to effectively and deeply explore the intrinsic features of epilepsy signals to reveal the rules of epilepsy occurrence and achieve accurate detection...
2024: Frontiers in Physiology
https://read.qxmd.com/read/38680619/outline-of-an-evolutionary-morphology-generator-towards-the-modular-design-of-a-biohybrid-catheter
#44
JOURNAL ARTICLE
Michail-Antisthenis Tsompanas, Igor Balaz
Biohybrid machines (BHMs) are an amalgam of actuators composed of living cells with synthetic materials. They are engineered in order to improve autonomy, adaptability and energy efficiency beyond what conventional robots can offer. However, designing these machines is no trivial task for humans, provided the field's short history and, thus, the limited experience and expertise on designing and controlling similar entities, such as soft robots. To unveil the advantages of BHMs, we propose to overcome the hindrances of their design process by developing a modular modeling and simulation framework for the digital design of BHMs that incorporates Artificial Intelligence powered algorithms...
2024: Frontiers in Robotics and AI
https://read.qxmd.com/read/38680214/a-game-based-learning-approach-to-sleep-hygiene-education-a-pilot-investigation
#45
JOURNAL ARTICLE
Christine Seaver, Clint Bowers, Deborah Beidel, Lisa Holt, Sridhar Ramakrishnan
INTRODUCTION: Sleep hygiene education (SHE) consists of environmental and behavioral practices primarily intended to reduce sleep problems. Currently considered ineffective as a stand-alone treatment, the manner in which the education is typically delivered may be ineffective for the acquisition of new knowledge. The purpose of this study was to determine if a more engaging teaching medium may improve the efficacy of sleep hygiene education. This study examined the use of game-based learning to teach SHE to individuals with sleep problems...
2024: Frontiers in digital health
https://read.qxmd.com/read/38678958/autism-spectrum-disorder-diagnosis-with-eeg-signals-using-time-series-maps-of-brain-functional-connectivity-and-a-combined-cnn-lstm-model
#46
JOURNAL ARTICLE
Yongjie Xu, Zengjie Yu, Yisheng Li, Yuehan Liu, Ye Li, Yishan Wang
BACKGROUND AND OBJECTIVE: People with autism spectrum disorder (ASD) often have cognitive impairments. Effective connectivity between different areas of the brain is essential for normal cognition. Electroencephalography (EEG) has been widely used in the detection of neurological diseases. Previous studies on detecting ASD with EEG data have focused on frequency-related features. Most of these studies have augmented data by splitting the dataset into time slices or sliding windows. However, such approaches to data augmentation may cause the testing data to be contaminated by the training data...
April 24, 2024: Computer Methods and Programs in Biomedicine
https://read.qxmd.com/read/38676612/solving-intractable-chemical-problems-by-tensor-decomposition
#47
JOURNAL ARTICLE
Nina Glaser, Markus Reiher
Many complex chemical problems encoded in terms of physics-based models become computationally intractable for traditional numerical approaches due to their unfavorable scaling with increasing molecular size. Tensor decomposition techniques can overcome such challenges by decomposing unattainably large numerical representations of chemical problems into smaller, tractable ones. In the first two decades of this century, algorithms based on such tensor factorizations have become state-of-the-art methods in various branches of computational chemistry, ranging from molecular quantum dynamics to electronic structure theory and machine learning...
April 24, 2024: Chimia
https://read.qxmd.com/read/38676274/adaptive-cruise-control-based-on-safe-deep-reinforcement-learning
#48
JOURNAL ARTICLE
Rui Zhao, Kui Wang, Wenbo Che, Yun Li, Yuze Fan, Fei Gao
Adaptive cruise control (ACC) enables efficient, safe, and intelligent vehicle control by autonomously adjusting speed and ensuring a safe following distance from the vehicle in front. This paper proposes a novel adaptive cruise system, namely the Safety-First Reinforcement Learning Adaptive Cruise Control (SFRL-ACC). This system aims to leverage the model-free nature and high real-time inference efficiency of Deep Reinforcement Learning (DRL) to overcome the challenges of modeling difficulties and lower computational efficiency faced by current optimization control-based ACC methods while simultaneously maintaining safety advantages and optimizing ride comfort...
April 22, 2024: Sensors
https://read.qxmd.com/read/38676232/structural-damage-detection-based-on-the-correlation-of-variational-autoencoder-neural-networks-using-limited-sensors
#49
JOURNAL ARTICLE
Jun Lin, Hongwei Ma
Identifying the structural state without baseline data is an important engineering problem in the field of structural health monitoring, which is crucial for assessing the safety condition of structures. In the context of limited accelerometers available, this paper proposes a correlation-based damage identification method using Variational Autoencoder neural networks. The approach involves initially constructing a Variational Autoencoder network model for bridge damage detection, optimizing parameters such as loss functions and learning rates for the model, and ultimately utilizing response data from limited sensors for model training analysis to determine the structural state...
April 19, 2024: Sensors
https://read.qxmd.com/read/38676197/adaptive-dataset-management-scheme-for-lightweight-federated-learning-in-mobile-edge-computing
#50
JOURNAL ARTICLE
Jingyeom Kim, Juneseok Bang, Joohyung Lee
Federated learning (FL) in mobile edge computing has emerged as a promising machine-learning paradigm in the Internet of Things, enabling distributed training without exposing private data. It allows multiple mobile devices (MDs) to collaboratively create a global model. FL not only addresses the issue of private data exposure but also alleviates the burden on a centralized server, which is common in conventional centralized learning. However, a critical issue in FL is the imposed computing for local training on multiple MDs, which often have limited computing capabilities...
April 18, 2024: Sensors
https://read.qxmd.com/read/38676175/time-frequency-aliased-signal-identification-based-on-multimodal-feature-fusion
#51
JOURNAL ARTICLE
Hailong Zhang, Lichun Li, Hongyi Pan, Weinian Li, Siyao Tian
The identification of multi-source signals with time-frequency aliasing is a complex problem in wideband signal reception. The traditional method of first separation and identification especially fails due to the significant separation error under underdetermined conditions when the degree of time-frequency aliasing is high. The single-mode recognition method does not need to be separated first. However, the single-mode features contain less signal information, making it challenging to identify time-frequency aliasing signals accurately...
April 16, 2024: Sensors
https://read.qxmd.com/read/38676169/rceau-net-cascade-multi-scale-convolution-and-attention-mechanism-based-network-for-laser-beam-target-image-segmentation-with-complex-background-in-coal-mine
#52
JOURNAL ARTICLE
Wenjuan Yang, Yanqun Wang, Xuhui Zhang, Le Zhu, Zhiteng Ren, Yang Ji, Long Li, Yanbin Xie
Accurate and reliable pose estimation of boom-type roadheaders is the key to the forming quality of the tunneling face in coal mines, which is of great importance to improve tunneling efficiency and ensure the safety of coal mine production. The multi-laser-beam target-based visual localization method is an effective way to realize accurate and reliable pose estimation of a roadheader body. However, the complex background interference in coal mines brings great challenges to the stable and accurate segmentation and extraction of laser beam features, which has become the main problem faced by the long-distance visual positioning method of underground equipment...
April 16, 2024: Sensors
https://read.qxmd.com/read/38676143/inspection-robot-navigation-based-on-improved-td3-algorithm
#53
JOURNAL ARTICLE
Bo Huang, Jiacheng Xie, Jiawei Yan
The swift advancements in robotics have rendered navigation an essential task for mobile robots. While map-based navigation methods depend on global environmental maps for decision-making, their efficacy in unfamiliar or dynamic settings falls short. Current deep reinforcement learning navigation strategies can navigate successfully without pre-existing map data, yet they grapple with issues like inefficient training, slow convergence, and infrequent rewards. To tackle these challenges, this study introduces an improved two-delay depth deterministic policy gradient algorithm (LP-TD3) for local planning navigation...
April 15, 2024: Sensors
https://read.qxmd.com/read/38676106/robust-offloading-for-edge-computing-assisted-sensing-and-communication-systems-a-deep-reinforcement-learning-approach
#54
JOURNAL ARTICLE
Li Shen, Bin Li, Xiaojie Zhu
In this paper, we consider an integrated sensing, communication, and computation (ISCC) system to alleviate the spectrum congestion and computation burden problem. Specifically, while serving communication users, a base station (BS) actively engages in sensing targets and collaborates seamlessly with the edge server to concurrently process the acquired sensing data for efficient target recognition. A significant challenge in edge computing systems arises from the inherent uncertainty in computations, mainly stemming from the unpredictable complexity of tasks...
April 12, 2024: Sensors
https://read.qxmd.com/read/38676080/reinforcement-learning-algorithms-and-applications-in-healthcare-and-robotics-a-comprehensive-and-systematic-review
#55
REVIEW
Mokhaled N A Al-Hamadani, Mohammed A Fadhel, Laith Alzubaidi, Harangi Balazs
Reinforcement learning (RL) has emerged as a dynamic and transformative paradigm in artificial intelligence, offering the promise of intelligent decision-making in complex and dynamic environments. This unique feature enables RL to address sequential decision-making problems with simultaneous sampling, evaluation, and feedback. As a result, RL techniques have become suitable candidates for developing powerful solutions in various domains. In this study, we present a comprehensive and systematic review of RL algorithms and applications...
April 11, 2024: Sensors
https://read.qxmd.com/read/38676062/centrifugal-pump-fault-detection-with-convolutional-neural-network-transfer-learning
#56
JOURNAL ARTICLE
Cem Ekin Sunal, Vladan Velisavljevic, Vladimir Dyo, Barry Newton, Jake Newton
The centrifugal pump is the workhorse of many industrial and domestic applications, such as water supply, wastewater treatment and heating. While modern pumps are reliable, their unexpected failures may jeopardise safety or lead to significant financial losses. Consequently, there is a strong demand for early fault diagnosis, detection and predictive monitoring systems. Most prior work on machine learning-based centrifugal pump fault detection is based on either synthetic data, simulations or data from test rigs in controlled laboratory conditions...
April 11, 2024: Sensors
https://read.qxmd.com/read/38673408/a-new-auto-regressive-multi-variable-modified-auto-encoder-for-multivariate-time-series-prediction-a-case-study-with-application-to-covid-19-pandemics
#57
JOURNAL ARTICLE
Emerson Vilar de Oliveira, Dunfrey Pires Aragão, Luiz Marcos Garcia Gonçalves
The SARS-CoV-2 global pandemic prompted governments, institutions, and researchers to investigate its impact, developing strategies based on general indicators to make the most precise predictions possible. Approaches based on epidemiological models were used but the outcomes demonstrated forecasting with uncertainty due to insufficient or missing data. Besides the lack of data, machine-learning models including random forest, support vector regression, LSTM, Auto-encoders, and traditional time-series models such as Prophet and ARIMA were employed in the task, achieving remarkable results with limited effectiveness...
April 18, 2024: International Journal of Environmental Research and Public Health
https://read.qxmd.com/read/38673229/decision-support-tool-in-the-selection-of-powder-for-3d-printing
#58
JOURNAL ARTICLE
Ewelina Szczupak, Marcin Małysza, Dorota Wilk-Kołodziejczyk, Krzysztof Jaśkowiec, Adam Bitka, Mirosław Głowacki, Łukasz Marcjan
The work presents a tool enabling the selection of powder for 3D printing. The project focused on three types of powders, such as steel, nickel- and cobalt-based and aluminum-based. An important aspect during the research was the possibility of obtaining the mechanical parameters. During the work, the possibility of using the selected algorithm based on artificial intelligence like Random Forest, Decision Tree, K-Nearest Neighbors, Fuzzy K-Nearest Neighbors, Gradient Boosting, XGBoost, AdaBoost was also checked...
April 18, 2024: Materials
https://read.qxmd.com/read/38672335/cow-behavior-recognition-based-on-wearable-nose-rings
#59
JOURNAL ARTICLE
Wenhan Feng, Daoerji Fan, Huijuan Wu, Wenqiang Yuan
This study introduces a novel device designed to monitor dairy cow behavior, with a particular focus on feeding, rumination, and other behaviors. This study investigates the association between the cow behaviors and acceleration data collected using a three-axis, nose-mounted accelerometer, as well as the feasibility of improving the behavioral classification accuracy through machine learning. A total of 11 cows were used. We utilized three-axis acceleration sensors that were fixed to the cow's nose, and these devices provided detailed and unique data corresponding to their activity; in particular, a recorder was installed on each nasal device to obtain acceleration data, which were then used to calculate activity levels and changes...
April 15, 2024: Animals: An Open Access Journal From MDPI
https://read.qxmd.com/read/38672032/ai-and-aphasia-in-the-digital-age-a-critical-review
#60
REVIEW
Adam John Privitera, Siew Hiang Sally Ng, Anthony Pak-Hin Kong, Brendan Stuart Weekes
Aphasiology has a long and rich tradition of contributing to understanding how culture, language, and social environment contribute to brain development and function. Recent breakthroughs in AI can transform the role of aphasiology in the digital age by leveraging speech data in all languages to model how damage to specific brain regions impacts linguistic universals such as grammar. These tools, including generative AI (ChatGPT) and natural language processing (NLP) models, could also inform practitioners working with clinical populations in the assessment and treatment of aphasia using AI-based interventions such as personalized therapy and adaptive platforms...
April 16, 2024: Brain Sciences
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