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Tag: Tsinghua University Press

  • In-Depth Colonoscopy Analysis: New Deep-Learning Approach Unveiled

    In-Depth Colonoscopy Analysis: New Deep-Learning Approach Unveiled

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    Newswise — Researchers have developed a pair of modules that gives a boost to the use of artificial neural networks to identify potentially cancerous growths in colonoscopy imagery, traditionally plagued by image noise resulting from the colonoscopy insertion and rotation process itself.

    A paper describing the approach was published in the journal CAAI Artificial Intelligence Research on June 30.

    Colonoscopy is the gold standard for detecting colorectal growths or ‘polyps’ in the inner lining of your colon, also known as the large intestine. Via analysis of the images captured by a colonoscopy camera, medical professionals can identify polyps early on before they spread and cause rectal cancer. The identification process involves what is called ‘polyp segmentation,’ or differentiating the segments within an image that belong to a polyp from those segments of the image that are normal layers of mucous membrane, tissue and muscle in the colon.

    Humans traditionally performed the whole of the image analysis, but in recent years, the task of polyp segmentation has become the purview of computer algorithms that perform pixel-by-pixel labelling of what appears in the image. To do this, computational models mainly rely on characteristics of the colon and polyps such as texture and geometry.

    “These algorithms have been a great aid to medical professionals, but it is still challenging for them to locate the boundaries of polyps,” said Bo Dong, a computer scientist with the College of Computer Science at Nankai University and lead author of the paper. “Polyp segmentation needed an assist from artificial intelligence.”

    With the application of deep learning in recent years, polyp segmentation has achieved great progress over cruder traditional methods. But even here, there remain two main challenges.

    First, there is a great deal of image ‘noise’ that polyp segmentation deep learning efforts struggle with. When capturing images, the colonoscope lens rotates within the intestinal tract to capture polyp images from various angles. This rotational movement often leads to motion blur and reflection issues. This complicates the segmentation task by obscuring the boundaries of the polyps.

    The second challenge comes from the inherent camouflage of polyps. The color and texture of polyps often closely resemble that of the surrounding tissues, resulting in low contrast and strong camouflage. This similarity makes it difficult to distinguish polyps from the background tissue accurately. The lack of distinctive features hampers the identification process and adds complexity to the segmentation task.

    To address these challenges, the researchers developed two deep learning modules. The first, a “Similarity Aggregation Module,” or SAM, tackles the rotational noise issues, and the second, Camouflage Identification Module, or CIM, addresses camouflage.

    The SAM extracts information from both individual pixels in an image, and via “semantic cues” given by the image as a whole. In computer vision, it is important not merely to identify what objects are in an image, but also the relationships between objects. For example, if in a picture of a street, there is a red, three-foot high, cylindrical object on a sidewalk next to the road, the relationships between that red cylinder and both the sidewalk and road give the viewer additional information beyond the object itself that aid in identification of the object as a fire hydrant. Those relationships are semantic cues. They can be represented as a series of labels that are used to assign a category to each pixel or region of pixels in an image.

    The novelty of the SAM however is that it extracts both local pixel information and these more global semantic cues via use of non-local and graph convolutional layers. Graph convolutional layers in this case consider the mathematical structure of relationships between all parts of an image, and non-local layers are a type of node in a neural network that assesses more long-range relationships between different parts of an image.

    The SAM enabled the researchers to achieve a 2.6 percent increase in performance compared to other state-of-the-art polyp segmentation models when tested on five different colonoscopy image datasets widely used for deep learning training.

    To overcome the camouflage difficulties, the CIM captures subtle polyp clues that are often concealed within low-level image features—the fine-grained visual information that is present in an image, such as the edges, corners, and textures of an object. However, in the context of polyp segmentation, low-level features can also include noise, artifacts, and other irrelevant information that can interfere with accurate segmentation. The CIM is able to identify the low-level information that is not relevant to the segmentation task, and filters it out. With the integration of the CIM, the researchers were able to achieve an additional 1.8% improvement compared to other state-of-the-art polyp segmentation models.

    The researchers now want to refine and optimize their approach to reduce its significant computational demand. By implementing a range of techniques including model compression, they hope to reduce the computational complexity sufficient for application in real-world medical contexts.

     

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  • Next-gen SF6-free equipment: Eco-friendly gas advances

    Next-gen SF6-free equipment: Eco-friendly gas advances

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    Newswise — Gas-insulated equipment (GIE) that utilizes the most potent greenhouse gas sulfur hexafluoride (SF6) as insulation and arc-quenching medium has been widely used in the power industry. Seeking eco-friendly insulating gas with advanced performance for next-generation SF6-free GIE is significant for the “net-zero” goal and sustainable development.

    A research team led by Xiaoxing Zhang of Hubei University of Technology in China and scientists from Wuhan University, Southeast University, North China Electric Power University, Université de Toulouse, Xi’an University of Technology, Schneider Electric and South China University of Technology recently summarized the advances in Eco-friendly gas insulating medium for next-generation SF6-free equipment. The review report was published in the journal iEnergy as the cover article on March 31, 2023.

    An overview of the SF6-based GIE, the emission and reduction policies of SF6 were introduced firstly to clarify the necessity of seeking eco-friendly insulating gas. “SF6 is one of the most potent greenhouse gases with a global warming potential of 25200 and an atmospheric lifetime of 3200 years. The power industry accounts for 80% of the SF6 consumption, which value reaches over 7000 tons in China. Various countries have established regulations on the use, recovery and treatment of SF6, promoting the development of eco-friendly insulating gas” said Prof. Zhang.

    Basic requirements for eco-friendly gas including environmental features, insulation & arc-quenching performance, stability, material compatibility, biosafety were proposed and the main categories containing traditional gas (CO2, N2, air), Perfluorocarbons and Trifluoroiodomethane, Fluorinated-nitrile(C4F7N), Fluorinated-ketones(C5F10O, C6F12O), Hydrofluro-Olefins (HFO-1234ze(E), HFO-1336mzz(E)) were introduced. The molecular design method of eco-friendly gas was also provided.

    Recent progress of various eco-friendly insulating gas in terms of dielectric insulation (in terms of AC/DC breakdown, LI breakdown, partial discharge, surface flashover), arc-quenching (in terms of particle compositions, thermodynamic properties, transport coefficients, radiation coefficients, post-arc dielectric breakdown properties), stability and decomposition (in terms of thermal, discharge stability, decomposition mechanism), materials compatibility (in terms of metal, epoxy resin, elastomer, Adsorbent), biosafety (in terms of LC50, target organ toxicity, by-products toxicity) were highlighted.

    Besides, the latest application of eco-friendly insulating gas in medium-voltage (MV), high-voltage (HV) scenarios as well as relevant maintenance-related technologies were summarized. “The C4F7N/CO2, C5F10O/air based gas insulated switchgear, gas insulated transmission line, ring main units, etc. have been developed by GE, ABB since 2016. The other fluorinated-free technology roadmap using technical air combined with vacuum interruption also have been focused.” Said Prof. Zhang.

    Although substantial efforts have been made in the field, several significant challenges remain that call for more solutions to achieve the next-generation SF6-free GIE in the future. The improvement of stability, interruption capacity, material compatibility is highly desired. The SF6 control and recycling, insulation coordination, scientific management of PFAS, etc. will hopefully steer the development of eco-friendly insulating gas and GIE.

    Prof. Zhang is currently the Dean of School of Electrical and Electronic Engineering, Hubei University of Technology. His research focuses on high voltage engineering and low-carbon electrical materials, including eco-friendly gas, SF6 disposal and resource conversion, degradable dielectric materials. He received the National Award for Technological Invention in 2014 and the Cheungkong Scholars Program in 2020.

     

    iEnergy, has multiple meanings, intelligent energy, innovation for energy, internet of energy, and electrical energy due to “i” is the symbol of current. iEnergy, publishing quarterly, is a cross disciplinary journal aimed at disseminating frontiers of technologies and solutions of power and energy. The journal publishes original research on exploring all aspects of power and energy, including any kind of technologies and applications from power generation, transmission, distribution, to conversion, utilization, and storage. iEnergy provides a platform for delivering cutting-edge advancements of sciences and technologies for the future-generation power and energy systems.

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  • Outperforms state-of-the-art algorithms in deep learning tasks

    Outperforms state-of-the-art algorithms in deep learning tasks

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    Newswise — Deep learning based semi-supervised learning algorithms have shown promising results in recent years. However, they are not yet practical in real semi-supervised learning scenarios, such as  medical image processing, hyper-spectral image classification, network traffic recognition, and document recognition. In these types of scenarios, the labeled data is scarce for hyper-parameter search, because they introduce multiple tunable hyper-parameters.  A research team has proposed a novel meta-learning based semi-supervised learning algorithm called Meta-Semi, that requires tuning only one additional hyper-parameter. Their Meta-Semi approach outperforms state-of-the-art semi-supervised learning algorithms.

    The team published their work in the journal CAAI Artificial Intelligence Research on March 10.

    Deep learning, a machine learning technique where computers learn by example, is showing success in supervised tasks. However, the process of data labeling, where the raw data is identified and labeled, is time-consuming and costly. Deep learning in supervised tasks can be successful when there is plenty of annotated training data available. Yet in many real-world applications, only a small subset of all the available training data are associated with labels.

    “The recent success of deep learning in supervised tasks is fueled by abundant annotated training data,” said Gao Huang, associate professor with the Department of Automation at Tsinghua University. However, the time-consuming, costly collection of precise labels is a challenge researchers have to overcome. “Meta-semi, as a state-of-the-art semi-supervised learning approach, can effectively train deep models with a small number of labeled samples,” said Huang.

    With the research team’s Meta-Semi classification algorithm, they efficiently exploit the labeled data, while requiring only one additional hyper-parameter to achieve impressive performance under various conditions. In machine learning, a hyper-parameter is a parameter whose value can be used to direct the learning process. “Most deep learning based semi-supervised learning algorithms introduce multiple tunable hyper-parameters, making them less practical in real semi-supervised learning scenarios where the labeled data is scarce for extensive hyper-parameter search,” said Huang.

    The team developed their algorithm working from the assumption that the network could be trained effectively with the correctly pseudo-labeled unannotated samples. First they generated soft pseudo labels for the unlabeled data online during the training process based on the network predictions. Then they filtered out the samples whose pseudo labels were incorrect or unreliable and trained the model using the remaining data with relatively reliable pseudo labels. Their process naturally yielded a meta-learning formulation where the correctly pseudo-labeled data had a similar distribution to the labeled data. In their process, if the network is trained with the pseudo-labeled data, the final loss on the labeled data should be minimized as well.

    The team’s Meta-Semi algorithm achieved competitive performance under various conditions of semi-supervised learning. “Empirically, Meta-Semi outperforms state-of-the-art semi-supervised learning algorithms significantly on the challenging semi-supervised CIFAR-100 and STL-10 tasks, and achieves competitive performance on CIFAR-10 and SVHN,” said Huang. CIFAR-10, STL-10, and SVHN are datasets, or collections of images, that are frequently used in training machine learning algorithms. “We also show theoretically that Meta-Semi converges to the stationary point of the loss function on labeled data under mild conditions,” said Huang. Compared to existing deep semi-supervised learning algorithms, Meta-Semi requires much less effort for tuning hyper-parameters, but achieves state-of-the-art performance on the four competitive datasets.

    Looking ahead to future work, the research team’s aim is to develop an effective, practical and robust semi-supervised learning algorithm. “The algorithm should require a minimal number of data annotations, minimal efforts of hyper-parameter tuning, and a minimized training time. To attain this goal, our future work may focus on reducing the training cost of Meta-Semi,” said Huang.

    The research team includes Yulin Wang, Jiayi Guo, Cheng Wu, Shiji Song, and Gao Huang from the Department of Automation, Tsinghua University, and Jiangshan Wang from the Tsinghua Shenzhen International Graduate School, Tsinghua University.

    This research is funded by the National Key R&D Program of China, the National Natural Science Foundation of China, and the National Defense Basic Science and Technology Strengthening Program of China.

     

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    About CAAI Artificial Intelligence Reseach 

    CAAI Artificial Intelligence Reseach is a peer-reviewed journal jointly sponsored by Chinese Association for Artificial Intelligence (CAAI) and Tsinghua University. The journal aims to reflect the state-of-the-art achievement in the field of artificial intelligence and its application, including knowledge intelligence, perceptual intelligence, machine learning, behavioral intelligence, brain and cognition, and AI chips and applications, etc. Original research and review articles from all over the world are welcome for rigorous peer-review and professional publishing support.

     

    About SciOpen

    SciOpen is a professional open access resource for discovery of scientific and technical content published by the Tsinghua University Press and its publishing partners, providing the scholarly publishing community with innovative technology and market-leading capabilities. SciOpen provides end-to-end services across manuscript submission, peer review, content hosting, analytics, and identity management and expert advice to ensure each journal’s development by offering a range of options across all functions as Journal Layout, Production Services, Editorial Services, Marketing and Promotions, Online Functionality, etc. By digitalizing the publishing process, SciOpen widens the reach, deepens the impact, and accelerates the exchange of ideas.

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  • An exploration of calibrating activity-based mobility demand of travelers with bounded rationality

    An exploration of calibrating activity-based mobility demand of travelers with bounded rationality

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    Newswise — Parameter calibration of the traffic assignment models is vital to travel demand analysis and management. As an extension of the conventional traffic assignment, boundedly rational activity-travel assignment (BR-ATA) combines activity-based modeling and traffic assignment endogenously and can capture the interdependencies between high dimensional choice facets along the activity-travel patterns. The inclusion of multiple episodes of activity participation and bounded rationality behavior enlarges the choice space and poses a challenge for calibrating the BR-ATA models. Till now, no formulation and solution approach for the parameter calibration of BR-ATA has hitherto been developed. To solve this problem, Dong Wang and Feixiong Liao formulated BR-ATA calibration as an optimization problem and used a simultaneous perturbation stochastic approximation method to solve it.

    They published their study on January 20, 2023, in Communications in Transportation Research (https://doi.org/10.1016/j.commtr.2023.100092).

    “In virtue of the multi-state supernetwork, we formulate the BR-ATA calibration as an optimization problem and analyze the influence of the two additional components on the calibration problem. Considering the temporal dimension, we also propose a dynamic formulation of the BR-ATA calibration problem. The simultaneous perturbation stochastic approximation algorithm is adopted to solve the proposed calibration problems. Numerical examples are presented to calibrate the activity-based travel demand for illustrations.”, says Dr. Feixiong Liao, a transportation scientist from the Urban Planning and Transportation Group at Eindhoven University of Technology (the Netherlands).

    The BR parameter and activity participation affect the calibrations

    The running times fall within [0.30, 0.40] hours when the BR parameter takes different values. Note that the ATA calibration problem needs more than 2 hours to reach the stopping condition. Regarding the influence of the number of activities, the running time decrease with the increase in the number of activities.

    “We can conclude that the running times with the BR-related parameter falling within [0.05, 0.2] are relatively stable and shorter than that with a smaller parameter (i.e., 0.01 or ATA calibration problem). Besides, fewer activities always result in flows being concentrated in a specific period of time and link. The link congestion leads to more ATPs to equilibrate the OD demands.” Dong Wang, an associate professor at Qingdao University (China), explains.

    Temporal and spatial dimension extensions to the BR-ATA calibration problem

    The SPSA takes 8.2 hours to reach the stopping condition for the BR-ATA calibration problem in the Sioux Falls network and the calibrated demands approximate a priori values. Taking one home location for example, the study observes that the calibrated demand has a relative error of 0.01. For the BR-DATA calibration problem in the Sioux Falls network, the running time is 0.92 hours and the number of iterations is 647. All the calibrated demands approach a priori values. To further illustrate scalability in a larger network, the calibration of the BR-DATA model was carried out with the Eastern Massachusetts network. The SPSA takes more than 10 hours to complete 1000 iterations and the corresponding RMSN (a measurement of error) is as small as  0.06.

    “The results demonstrate that the SPSA algorithm is feasible for the BR-ATA and BR-DATA calibration problems in sizable networks.”, Feixiong Liao says. “Nevertheless, a more effective algorithm is needed for large-scale real-world applications”, he adds.

    The above research is published in Communications in Transportation Research (COMMTR), which is a fully open access journal co-published by Tsinghua University Press and Elsevier. COMMTR publishes peer-reviewed high-quality research representing important advances of significance to emerging transport systems. COMMTR is also among the first transportation journals to make the Replication Package mandatory to facilitate researchers, practitioners, and the general public in understanding and advancing existing knowledge. At its discretion, Tsinghua University Press will pay the open access fee for all published papers from 2021 to 2025.

     

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    About Communications in Transportation Research

    Communications in Transportation Research publishes peer-reviewed high-quality research representing important advances of significance to emerging transport systems. The mission is to provide fair, fast, and expert peer review to authors and insightful theories, impactful advances, and interesting discoveries to readers. We welcome submissions of significant and general topics, of inter-disciplinary nature (transport, civil, control, artificial intelligence, social science, psychological science, medical services, etc.), of complex and inter-related system of systems, of strong evidence of data strength, of visionary analysis and forecasts towards the way forward, and of potentially implementable and utilizable policies/practices. Communications in Transportation Research is indexed in Scopus ten months after its launch.

    Communications in Transportation Research is a fully open access journal. It is co-published by Tsinghua University Press and Elsevier, and co-sponsored by the State Key Laboratory of Automotive Safety and Energy (Tsinghua University) and China Intelligent Transportation Systems Association (ITS China). At its discretion, Tsinghua University Press will pay the open access fee for all published papers from 2021 to 2025.

     

    About Tsinghua University Press

    Established in 1980, belonging to Tsinghua University, Tsinghua University Press (TUP) is a leading comprehensive higher education and professional publisher in China. Committed to building a top-level global cultural brand, after 41 years of development, TUP has established an outstanding managerial system and enterprise structure, and delivered multimedia and multi-dimensional publications covering books, audio, video, electronic products, journals and digital publications. In addition, TUP actively carries out its strategic transformation from educational publishing to content development and service for teaching & learning and was named First-class National Publisher for achieving remarkable results.

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  • Electricity harvesting from evaporation, raindrops and moisture inspired by nature

    Electricity harvesting from evaporation, raindrops and moisture inspired by nature

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    Newswise — Raindrops, evaporating water, and even moisture in the air are all potentially sources of decentralized clean electricity generation, but many of the technologies that take advantage of this ambient and vast source of energy—many of which are inspired by the electricity harvesting techniques of plants and animals—remain at the lab-bench stage. A group of researchers and engineers have put together a survey of the opportunities and challenges this very young field face.

    Their review paper was published in the journal Nano Research Energy on November 30, 2022.

    Enormous hydroelectric dams are perhaps the first thing one thinks of when considering sustainable electricity generation, or possibly large tidal barrages. If one is very familiar with the state of play in clean energy development, one might also be aware of wave-energy converters on the sea surface or seabed that convert the energy from high-intensity waves into usable electricity.

    All of these options depend upon heavy, bulky and above all centralized forms of harvesting of the energy contained in water. Yet there are a myriad of other potential technology pathways that can harvest electricity from water in much more decentralized fashion, taking advantage of water’s ubiquitous presence almost everywhere on the Earth. These would produce usable electricity from processes of evaporation, condensation, rainfall, moisture, and even minute flows of water at the scale of a droplet falling off a leaf, and the very tiniest of waves.

    Proposed technologies along these lines take advantage of various physical phenomena, including the piezoelectric effect (whereby electric charge accumulates in response to the application of stress or pressure), triboelectricity (in which certain materials become electrically charged after they are separated from a different material with which they had been in contact), thermoelectricity (the conversion of heat to electricity and vice versa), and the hydrovoltaic effect (in which electricity is generated via interaction between water and nanomaterials).

    “Water is everywhere. It is ambiently available like no other entity. So all this clean energy is just sitting there, unused and waiting for us to take advantage of it,” said Zuankai Wang, paper author of the review and researcher with the Department of Mechanical Engineering at the City University of Hong Kong. “It makes sense for us to tap into this vast reservoir of energy not just for bulk electricity production, but for a range of applications such as sensors and wearable devices where a micro-scale of energy harvesting is much more appropriate to the use it is being put to.”

    Much of the work in the development of such distributed water-energy technologies remains very much in its infancy however. Many of these lab-bench concepts for distributed water-energy harvesting techniques suffer from poor durability, poor scalability and, worst of all, low energy conversion. This latter problem means that for all the effort put into harvesting energy out of such processes, not much is squeezed out.

    The development of generators that are driven by water vapor in the air for example uses materials that so far exhibit poor capacity for water adsorption (adhesion to the surface), resulting in incomplete interaction between the water and the material, producing low electrical output, and declining even more in the face of harsh environments.

    “And yet the rest of nature has figured out thousands of different ways to do exactly this,” added Wang. “Evolution has basically perfected the process of extracting energy from ambient hydrologic processes in ways that are extremely efficient.”

    The lotus leaf for example at the micro and nano scale enjoys an extreme hydrophobic structure that allows droplets of water to roll across its surface with extremely low resistance—essentially on a cushion of air.  This phenomenon has inspired engineers to study textured superhydrophobic surfaces. The asymmetric 3D ratchets of the Araucaria leaf causes liquids with varying surface tensions to flow in different directions. And the ability of nepenthes, the group of carnivorous plants also known as pitcher plants, to direct liquid through its surface structure, inspired the authors of the review paper to develop a ‘slippery liquid-infused porous surface’ (SLIPS) system that can repel liquid extremely efficiently. A water-energy generator with durable SLIPS allows for constant electrical output from droplets in harsh environments with high humidity, high concentrations of salt, and even ultralow temperature.

    And it’s not just plants. As water-driven electricity generators are well suited for harvesting energy from human motion due to their deformability and compact size, another group of researchers inspired by electric eel membranes developed artificial electric organs making use of hydrogel arrays (highly absorbent polymers that do not dissolve in water) that work as analogues of the eel membrane components.

    Despite the explosion in development of such bio-inspired engineering, or ‘bionics’, for water-energy harvesting, the current generation of water-driven electricity generators remains largely ad hoc. The researchers felt that a comprehensive review of the field was urgently needed to place it on a firmer theoretical foundation and identify research gaps in order to better guide design of systems and development of novel materials.

    The review covers the main mechanisms of electricity production for bio-inspired water-driven generators. It also offers a tour d’horizon of the various bio-inspired devices that have been developed, specifically evaporation, moisture, rainwater, and wave and flow-driven generators, covering three use cases: sensors, wearable electricity generators, and self-powered electronics.

    The researchers concluded that the underlying structures of water-driven electricity generation remains undertheorized, in particular that of charge transport and transfer, as well as of energy conversion. Most notably, there is no general theory of charge transfer at the interface of solid materials and water, and proposed mechanisms for this remain hotly debated.

    In addition, liquid residues on solid surfaces can significantly reduce electrical output, and so how to avoid or reduce such residues is one of the most vital avenues of research for the field. Most efforts have focussed on textural microstructures in materials that produces a super-hydrophobic surface in order to achieve an incomplete contact between liquid and solid. While this produces the desired water residue reduction, it also inevitably limits the solid-liquid contact area, reducing charge induction and thus lowering electrical output, producing the same result as a residue.

    In other areas, improving the ability to absorb water from the environment will be key to improving electricity generation. The researchers recommended that a greater focus be applied to the study of organisms that have evolved over a long period of time in extremely arid areas, such as deserts.

    Finally, the authors noted that much of the design of bio-inspired water-driven electricity generators remains at the lab-bench stage, with such devices confronting only a fairly mild experimental setting rather than the rough and tumble of real-world conditions.

    The life-span of these technologies even in the laboratory only survive a few days or at most a few months. This compares poorly to roughly 25-year life-span of a solar panel or the half-century or longer of a nuclear plant or hydro dam. There may be use cases, perhaps in medical applications, where a short lifespan poses few problems or is even desirable, but for wider adoption of the technology, such unsatisfactory lifespans will need to be overcome.

     

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    About Nano Research Energy 

    Nano Research Energy is launched by Tsinghua University Press, aiming at being an international, open-access and interdisciplinary journal. We will publish research on cutting-edge advanced nanomaterials and nanotechnology for energy. It is dedicated to exploring various aspects of energy-related research that utilizes nanomaterials and nanotechnology, including but not limited to energy generation, conversion, storage, conservation, clean energy, etc. Nano Research Energy will publish four types of manuscripts, that is, Communications, Research Articles, Reviews, and Perspectives in an open-access form.

     

    About SciOpen 

    SciOpen is a professional open access resource for discovery of scientific and technical content published by the Tsinghua University Press and its publishing partners, providing the scholarly publishing community with innovative technology and market-leading capabilities. SciOpen provides end-to-end services across manuscript submission, peer review, content hosting, analytics, and identity management and expert advice to ensure each journal’s development by offering a range of options across all functions as Journal Layout, Production Services, Editorial Services, Marketing and Promotions, Online Functionality, etc. By digitalizing the publishing process, SciOpen widens the reach, deepens the impact, and accelerates the exchange of ideas.

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  • Team undertakes study of two-dimensional transition metal chalcogenides

    Team undertakes study of two-dimensional transition metal chalcogenides

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    Newswise — Two-dimensional materials, like transition metal dichalcogenide, have applications in public health because of their large surface area and high surface sensitivities, along with their unique electrical, optical, and electrochemical properties. A research team has undertaken a review study of methods used to modulate the properties of two-dimensional transition metal dichalcogenide (TMD). These methods have important biomedical applications, including biosensing.

    The team’s work is published in the journal Nano Research Energy on November 23, 2022.

    The team’s goal is to present a comprehensive summarization of this promising field and show challenges and opportunities available in this research area. “In this review, we focus on the state-of-the-art methods to modulate properties of two-dimensional TMD and their applications in biosensing. In particular, we thoroughly discuss the structure, intrinsic properties, property modulation methods, and biosensing applications of TMD,” said Yu Lei, an assistant professor at the Institute of Materials Research, Shenzhen International Graduate School, Tsinghua University.

    Since graphene was discovered in 2004, two-dimensional materials, such as TMD, have attracted significant attention. Because of its unique properties, two-dimensional TMD can serve as the atomically thin platforms for energy storage and conversion, photoelectric conversion, catalysis, and biosensing. TMD also displays a wide band structure and has unusual optical properties. Yet another benefit of two-dimensional TMD is that it can be produced in large quantities at a low cost.

    In public health, reliable and affordable in vitro and in vivo detection of biomolecules is essential for disease prevention and diagnosis. Especially during the COVID-19 pandemic, people have suffered not only from the physical disease, but also from the psychological problems related to extensive exposure to stress. Extensive stress can result in abnormal levels in biomarkers such as serotonin, dopamine, cortisol, and epinephrine. So, it is essential that scientists find non-invasive ways to monitor these biomarkers in body fluids, such as sweat, tears, and saliva. In order for health care professionals to quickly and accurately assess a person’s stress and diagnose psychological disease, biosensors are of significant importance in the diagnostics, environmental monitoring, and forensic industries.

    The team reviewed the use of two-dimensional TMD as the functional material for biosensing, the approaches to modulate the properties of TMD, and different types of TMD-based biosensors including electric, optical, and electrochemical sensors. “Public health study is always a major task in preventing, diagnosing, and fighting off the diseases. Developing ultrasensitive and selective biosensors is critical for diseases prevention and diagnosing,” said Bilu Liu, an associate professor and a principal investigator at Shenzhen Geim Graphene Center, Shenzhen International Graduate School, Tsinghua University.

    Two-dimensional TMD is a very sensitive platform for biosensing. These two-dimensional TMD based electrical/optical/electrochemical sensors have been readily used for biosensors ranging from small ions and molecules, such as Ca2+, H+, H2O2, NO2, NH3, to biomolecules such as dopamine and cortisol, that are related to central nervous disease, and all the way to molecule complexities, such as bacteria, virus, and protein.

    The research team determined that despite the remarkable potentials, many challenges related to TMD-based biosensors still need to be solved before they can make a real impact. They suggest several possible research directions. The team recommends that the feedback loop assisted by machine learning be used to reduce the testing time needed to build the database needed for finding the proper biomolecules and TMD pairs. Their second recommendation is the use of a feedback loop assisted by machine learning to achieve the on-demand property modulation and biomolecules/TMD database. Knowing that TMD-based composites exhibit excellent performance when constructed into devices, their third recommendation is that surface modifications, such as defects and vacancies, be adopted to improve the activity of the TMD-based composites. Their last recommendation is that low-cost manufacturing methods at low temperature be developed to prepare TMD. The current chemical vapor deposition method used to prepare TMD can lead to cracks and wrinkles. A low-cost, low-temperature method would improve the quality of the films. “As the key technical issues are solved, the devices based on two-dimensional TMD will be the overarching candidates for the new healthcare technologies,” said Lei.

    The Tsinghua University team includes Yichao Bai and Linxuan Sun, and Yu Lei from the Institute of Materials Research, Tsinghua Shenzhen International Graduate School and the Guangdong Provincial Key Laboratory of Thermal Management Engineering and Materials, Tsinghua Shenzhen International Graduate School; along with Qiangmin Yu and Bilu Liu from the Institute of Materials Research, Tsinghua Shenzhen International Graduate School, and the Shenzhen Geim Graphene Center, Tsinghua-Berkeley Shenzhen Institute & Institute of Materials Research, Tsinghua Shenzhen International Graduate School.

    This research is funded by the National Natural Science Foundation of China, the National Science Fund for Distinguished Young Scholars, Guangdong Innovative and Entrepreneurial Research Team Program, the Shenzhen Basic Research Project, the Scientific Research Start-up Funds at Tsinghua Shenzhen International Graduate School, and Shenzhen Basic Research Project.

     

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    About Nano Research Energy 

    Nano Research Energy is launched by Tsinghua University Press, aiming at being an international, open-access and interdisciplinary journal. We will publish research on cutting-edge advanced nanomaterials and nanotechnology for energy. It is dedicated to exploring various aspects of energy-related research that utilizes nanomaterials and nanotechnology, including but not limited to energy generation, conversion, storage, conservation, clean energy, etc. Nano Research Energy will publish four types of manuscripts, that is, Communications, Research Articles, Reviews, and Perspectives in an open-access form.

     

    About SciOpen 

    SciOpen is a professional open access resource for discovery of scientific and technical content published by the Tsinghua University Press and its publishing partners, providing the scholarly publishing community with innovative technology and market-leading capabilities. SciOpen provides end-to-end services across manuscript submission, peer review, content hosting, analytics, and identity management and expert advice to ensure each journal’s development by offering a range of options across all functions as Journal Layout, Production Services, Editorial Services, Marketing and Promotions, Online Functionality, etc. By digitalizing the publishing process, SciOpen widens the reach, deepens the impact, and accelerates the exchange of ideas.

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  • Researchers identify potential mechanism underlying stress-induced different changes of amygdala neurons in mice

    Researchers identify potential mechanism underlying stress-induced different changes of amygdala neurons in mice

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    Newswise — Chronic stress can differentially change the neuronal structure and function in the brain, leading to anxiety disorders and other neuropsychiatric illness. Now, researchers may understand how the different change occurs.

    The team from Nanchang University published their findings on November 30 in Stress and Brain.

    “Prolonged stress alters the structure and function of only some neurons in the amygdala, a brain region essential for emotional regulation and a critical mediator of stress response and fear learning,” said corresponding author Jun-Yu Zhang, associate research fellow  in the Laboratory of Fear and Anxiety Disorders in Nanchang University’s Institute of Life Science. “In this study, we attempted to find the possible mechanism of the differential regulation by prolonged stress.”

    Neurons in the amygdala connect to other areas of the brain, including the prefrontal cortex — involved in cognitive control, the nucleus accumbens — helps translate motivation to action, and the hippocampus — which plays a significant role in memory and learning. In previous research, Zhang and her team found that the neurons connected to the hippocampus were drastically altered under chronic stress, while those linked to the prefrontal cortex and the nucleus accumbens remained unchanged.

    “These neurons integrated in different neural circuits are in almost the same microenvironment, but triggered different reactions to stress, suggesting that the remodeling shows obvious circuit selectivity in the process of chronic stressed-induced excessive anxiety, but the regulatory mechanism has remained unclear,” Zhang said. “Considering the critical role of glucocorticoids — a stress hormone — in the modulation of brain structure and function by stress, we hypothesized that the glucocorticoid receptor may be a potential mediator of the differential regulation of neurons by chronic stress.”

    To test this hypothesis, the researchers exposed four groups of mice to various durations of restraint stress. Over 10 days, the mice were put into a tube fitted to their bodies for either two hours one time, two hours on three days, two hours every day or not at all. The researchers examined how the levels of corticosterone (glucocorticoid in mice) and the expression of the glucocorticoid receptors changed throughout. They found that the levels of stress hormones in the mice increased continuously with restraint time, and they increased remarkably in the mice stressed every day. They also found that the chronic stress did not affect the number of neurons expressing glucocorticoid receptors, but that it did appear to significantly increase the intensity of expression only for neurons projecting into the hippocampus.

    “Our results indicate that the increase of stress hormone concentration in mice, caused by prolonged stress, only selectively causes the significantly up-regulated expression and excessive response of the receptor in the amygdala to hippocampus neurons, suggesting that this signaling pathway may play an essential role in the differential regulation of neurons in the amygdala,” Zhang said. “This study advances our understanding of the effects of chronic stress on the functional circuit of the amygdala, but the specific mechanisms of how the receptor mediates the differential regulation of chronic stress are not yet clear.”

    The researchers plan to further study the glucocorticoid receptor mechanism by examining the effects of chronic stress when the receptor is blocked or removed.

    “Our ultimate goal for this line of research is to understand as fully as possible the circuits and molecular mechanisms by which chronic stress reshapes the structure and function of amygdala neurons and causes excessive anxiety,” Zhang sad. “If possible, we also aim to find essential mediators that may serve as a possible target to precisely treat anxiety disorders.”

    Other contributors include Yuan-Pei Zhang, Chen-Ming Zhong and Bing-Xing Pan, Laboratory of Fear and Anxiety Disorders, Institute of Life Science, Nanchang University; and Long-Xin Wu, School of Life Sciences, Nanchang University.

    The National Natural Science Foundation of China and the Special Funds for Central Government to Guide Local Scientific and Technological Development supported this research.

     

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    About Stress and Brain 

    Brain is the central organ coping with the internal and external stress, and stress persistently affects the function and health of brain. Stress and Brain (Published by Tsinghua University Press) is an interdisciplinary journal publishing investigations related to the intercommunications between stress and nervous system that are of general interest to the community of brain researcher. Its scope is broad and includes reviewed papers and research articles dealing with basic, translational and clinical research on all aspects of stress neurobiology, with particular focus on the impact of stress on brain at levels ranging from genetics, molecular biology to brain imaging and behavior.

     

    About SciOpen

    SciOpen is a professional open access resource for discovery of scientific and technical content published by the Tsinghua University Press and its publishing partners, providing the scholarly publishing community with innovative technology and market-leading capabilities. SciOpen provides end-to-end services across manuscript submission, peer review, content hosting, analytics, and identity management and expert advice to ensure each journal’s development by offering a range of options across all functions as Journal Layout, Production Services, Editorial Services, Marketing and Promotions, Online Functionality, etc. By digitalizing the publishing process, SciOpen widens the reach, deepens the impact, and accelerates the exchange of ideas.

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  • Scientists design electrolyte for lithium metal anodes for use in lithium metal batteries

    Scientists design electrolyte for lithium metal anodes for use in lithium metal batteries

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    Newswise — With the growing demand for electric vehicles, the need for high-safety, long-life batteries also rises. Yet the electric vehicles’ demand for high energy density batteries outpaces the capabilities of the current lithium-ion batteries. Scientists are looking to develop lithium metal batteries with lithium metal as the anode because these batteries have a much higher charging capacity. However, there are safety issues with lithium-metal batteries because dendrites—spiky, metallic microstructures—form during the charging process.

    A team of Chinese researchers set out to solve the problem of the lithium dendrite formation and to build high-safety, long-life lithium metal batteries. The team has successfully designed an electrolyte that suppresses the formation of the dendrites. This electrolyte delivers excellent performance in lithium metal batteries and offers solutions in the research toward building high-safety, long-life lithium metal batteries.

    The team’s findings are published in the journal Nano Research on October 3, 2022.

    While lithium metal anodes hold great potential for high-energy storage batteries, the uncontrollable lithium dendrite growth raises significant concerns. The dendrite growth occurs when the lithium ions move and convert to one specific location on the lithium metal surface. The dendrites cause poor cycling efficiency in the battery and are a severe safety issue.

    The team tackled the dendrite problem by combining the advantages of conventional electrolytes and high-concentration electrolytes. The high-concentration electrolytes overcome some of the shortcomings of conventional electrolytes, and hold strong promise for use in next-generation batteries. The electrolyte the team created delivers excellent electrochemical performance in lithium metal batteries and suppresses formation of dendrites. “Its unique structure not only promotes the uniform conversion of ions on the electrode surface but also ensures the rapid movement of ions in the electrolyte,” said Chunpeng Yang, a professor at Tianjin University.

    The researchers began their work by running numerical simulations to explore the effect of a negatively charged coating to induce the interfacial high-concentration electrolyte. Then as a proof-of-concept material, the researchers coated nitrogen- and oxygen-doped carbon nanosheets, that have surface negative charges, with nickel foam to create the electrode. The positively charged lithium ions are concentrated near the nitrogen- and oxygen-doped carbon electrode that is coated with nickel. This concentration of lithium ions promotes the charge transfer reactions on the electrode contribute to outstanding electrochemical cycling performances. The researchers conducted half-cell and full-cell tests on the electrode with excellent results. Their electrode performs much better than other electrodes based on pure nickel foam.

    “This provides a simple principle for suppressing the lithium dendrites by simultaneously taking into account the advantages of conventional electrolyte and high-concentration electrolyte for stable Li metal anode, which may be applied to other substrates for practical metal batteries,” said Yang.

    Beyond coating negatively surface-charged materials on the electrode to guide the formation of interfacial high-concentrated electrolytes, the team plans to look for other ways to obtain this unique electrolyte structure as means to achieving high-performance batteries. The researchers hope to achieve the commercial application of Li metal batteries with high energy density, high safety and long life, by systematically optimizing the battery components. “Our study results could be extended to more metal-battery systems, such as sodium, zinc and magnesium metal batteries, which will contribute to the realization of large-scale energy storage for sustainable energy supply,” said Yang

    The research team includes Haotian Lu, Feifei Wang, and Lu Wang from Tianjin University, the Haihe Laboratory of Sustainable Chemical Transformations, and the National University of Singapore; Chunpeng Yang, from Tianjin University and the Haihe Laboratory of Sustainable Chemical Transformations; Jinghong Zhou, from East China University of Science and Technology; Wei Chen, from  National University of Singapore; and Quan-Hong Yang from Tianjin University and the Haihe Laboratory of Sustainable Chemical Transformations.

    This research is funded by the National Key Research and Development Program of China, the Haihe Laboratory of Sustainable Chemical Transformations, and the Fundamental Research Funds for the Central Universities.

     

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    About Nano Research 

    Nano Research is a peer-reviewed, international and interdisciplinary research journal, publishes all aspects of nano science and technology, featured in rapid review and fast publishing, sponsored by Tsinghua University and the Chinese Chemical Society. It offers readers an attractive mix of authoritative and comprehensive reviews and original cutting-edge research papers. After 15 years of development, it has become one of the most influential academic journals in the nano field. In 2022 InCites Journal Citation Reports, Nano Research has an Impact Factor of 10.269 (9.136, 5 years), the total cites reached 29620, ranking first in China’s international academic journals, and the number of highly cited papers reached 120, ranked among the top 2.8% of over 9000 academic journals.

     

    About Tsinghua University Press

    Established in 1980, belonging to Tsinghua University, Tsinghua University Press (TUP) is a leading comprehensive higher education and professional publisher in China. Committed to building a top-level global cultural brand, after 41 years of development, TUP has established an outstanding managerial system and enterprise structure, and delivered multimedia and multi-dimensional publications covering books, audio, video, electronic products, journals and digital publications. In addition, TUP actively carries out its strategic transformation from educational publishing to content development and service for teaching & learning and was named First-class National Publisher for achieving remarkable results.

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