期刊文献+
共找到2,040篇文章
< 1 2 102 >
每页显示 20 50 100
Generation of SARS-CoV-2 dual-target candidate inhibitors through 3D equivariant conditional generative neural networks 被引量:1
1
作者 Zhong-Xing Zhou Hong-Xing Zhang Qingchuan Zheng 《Journal of Pharmaceutical Analysis》 2025年第6期1291-1310,共20页
Severe acute respiratory syndrome coronavirus 2(SARS-CoV-2)mutations are influenced by random and uncontrollable factors,and the risk of the next widespread epidemic remains.Dual-target drugs that synergistically act ... Severe acute respiratory syndrome coronavirus 2(SARS-CoV-2)mutations are influenced by random and uncontrollable factors,and the risk of the next widespread epidemic remains.Dual-target drugs that synergistically act on two targets exhibit strong therapeutic effects and advantages against mutations.In this study,a novel computational workflow was developed to design dual-target SARS-CoV-2 candidate inhibitors with the Envelope protein and Main protease selected as the two target proteins.The drug-like molecules of our self-constructed 3D scaffold database were used as high-throughput molecular docking probes for feature extraction of two target protein pockets.A multi-layer perceptron(MLP)was employed to embed the binding affinities into a latent space as conditional vectors to control conditional distribution.Utilizing a conditional generative neural network,cG-SchNet,with 3D Euclidean group(E3)symmetries,the conditional probability distributions of molecular 3D structures were acquired and a set of novel SARS-CoV-2 dual-target candidate inhibitors were generated.The 1D probability,2D joint probability,and 2D cumulative probability distribution results indicate that the generated sets are significantly enhanced compared to the training set in the high binding affinity area.Among the 201 generated molecules,42 molecules exhibited a sum binding affinity exceeding 17.0 kcal/mol while 9 of them having a sum binding affinity exceeding 19.0 kcal/mol,demonstrating structure diversity along with strong dual-target affinities,good absorption,distribution,metabolism,excretion,and toxicity(ADMET)properties,and ease of synthesis.Dual-target drugs are rare and difficult to find,and our“high-throughput docking-multi-conditional generation”workflow offers a wide range of options for designing or optimizing potent dual-target SARS-CoV-2 inhibitors. 展开更多
关键词 SARS-CoV-2 Dual-target drug 3D generative neural networks Drug design
暂未订购
Association between antidiabetic drugs and cancer risk in patients with type 2 diabetes mellitus: A systematic review and network metaanalysis
2
作者 Xue-Dong An Li-Yun Duan +3 位作者 Yue-Hong Zhang Qian-You Jia Yan-Min Zhang Yun Qiao 《World Journal of Diabetes》 2025年第10期370-384,共15页
BACKGROUND Current evidence suggests that commonly used antidiabetic drugs have varying effects on cancer risk.Some antidiabetics offer protective effects against cancer,whereas others may increase risk in specific po... BACKGROUND Current evidence suggests that commonly used antidiabetic drugs have varying effects on cancer risk.Some antidiabetics offer protective effects against cancer,whereas others may increase risk in specific populations.AIM To comprehensively compare the effects of different antidiabetic drugs on the risk of various cancers in patients with type 2 diabetes mellitus(T2DM)through a systematic review and network meta-analysis.METHODS Four databases(PubMed,EMBASE,Cochrane Library,and Web of Science)were searched from their inception until April 11,2025.Published randomized controlled trials that enrolled at least 100 participants and had an intervention duration of at least 1 year were included.The inclusion criteria were studies involving adult patients with T2DM and interventions that compared different classes of antidiabetic drugs with a placebo or another antidiabetic drug.Network meta-analysis was conducted using Stata 17.0 software.Confidence in network meta-analysis was used to assess the quality of evidence regarding the risk of cancer associated with different antidiabetic drugs.RESULTS A total of 13535 articles were identified.After applying the inclusion and exclusion criteria,87 high-quality studies involving 216106 patients and 26 different drugs across seven classes were included in this study.Indirect evidence from network meta-analysis revealed some heterogeneity;however,this did not affect the reliability of the results.The results indicated that antidiabetic drugs did not increase the overall risk of cancer compared with placebo.In contrast,some antidiabetic medications demonstrated a more pronounced advantage in reducing cancer risk,such as dipeptidyl peptidase-4 inhibitors for thyroid and rectal cancers;sodium-glucose co-transporter type 2 inhibitors for lung and bronchial cancers;sulfonylureas for gastric and colon cancers;biguanides for pancreatic cancer;insulin for bladder cancer;glucagon-like peptide-1 receptor agonists for prostate,uterine,hepatocellular,renal,and hematologic cancers;and thiazolidinediones for breast cancer.CONCLUSION Antidiabetic drugs reduce cancer risk in patients with T2DM.However,given the limitations in the number and quality of the included studies,our conclusions should be interpreted with caution.More large-scale,high-quality clinical trials are required to validate our findings towards the optimization of comprehensive cancer management strategies for patients with T2DM. 展开更多
关键词 Antidiabetic drugs Type 2 diabetes mellitus Cancer risk Systematic review network meta-analysis
暂未订购
Effects of Oral Vitamin D Supplementation on Vitamin D Levels and Glycemic Parameters in Patients with Type 2 Diabetes Mellitus:A Systematic Review and Network Meta-Analysis
3
作者 Xiujuan Zhang Hongfei Wang +1 位作者 Xia Gao Yang Zhao 《Biomedical and Environmental Sciences》 2025年第6期716-726,共11页
Objective Epidemiological studies have shown that vitamin D status affects glycemic control in individuals with type 2 diabetes mellitus(T2DM).However,findings from intervention studies remain inconsistent.Therefore,a... Objective Epidemiological studies have shown that vitamin D status affects glycemic control in individuals with type 2 diabetes mellitus(T2DM).However,findings from intervention studies remain inconsistent.Therefore,a network meta-analysis was conducted to evaluate the comparative efficacy of various vitamin D supplementation strategies on glucose indicators in adults with T2DM.Methods Eligible studies published before September 12,2024,were retrieved from PubMed,EMBASE,Cochrane Library,and Web of Science.A network meta-analysis of multiple dosage strategies—low(<1,000 IU/day,LDS),medium(1,000–2,000 IU/day,MDS),high(2,000–4,000 IU/day,HDS),and extremely high(≥4,000 IU/day,EHDS)—was performed.Results The network meta-analysis of 40 RCTs indicated that,compared with placebo,vitamin D_(3)supplementation increased 25-hydroxyvitamin D[25-(OH)-D]levels,with pooled mean difference(MD)showing a stepwise increase from LDS to EHDS.Ranking probabilities showed a corresponding rise in 25-(OH)-D levels from LDS(46.7%)to EHDS(91.2%).EHDS reduced fasting blood glucose(FBG)relative to no treatment.LDS significantly decreased hemoglobin A1c(HbA1c),and vitamin D_(2) significantly affected FBG levels.MDS led to a significant change in fasting insulin(FIN)compared to both placebo(MD:-4.76;95%CI-8.91 to-0.61)and no treatment(MD:-7.30;95%CI-14.44 to-0.17).Conclusion The findings suggest that vitamin D supplementation may be a viable approach for improving glycemic control in adults with T2DM,with lower doses potentially offering benefit.The analysis also showed a dose-dependent increase in 25-(OH)-D levels. 展开更多
关键词 network meta-analysis Vitamin D supplementation Type 2 diabetes mellitus Glycemic biomarkers
暂未订购
A Study on Polyp Dataset Expansion Algorithm Based on Improved Pix2Pix
4
作者 Ziji Xiao Kaibo Yang +3 位作者 Mingen Zhong Kang Fan Jiawei Tan Zhiying Deng 《Computers, Materials & Continua》 2025年第2期2665-2686,共22页
The polyp dataset involves the confidentiality of medical records, so it might be difficult to obtain datasets with accurate annotations. This problem can be effectively solved by expanding the polyp data set with alg... The polyp dataset involves the confidentiality of medical records, so it might be difficult to obtain datasets with accurate annotations. This problem can be effectively solved by expanding the polyp data set with algorithms. The traditional polyp dataset expansion scheme usually requires the use of two models or traditional visual methods. These methods are both tedious and difficult to provide new polyp features for training data. Therefore, our research aims to efficiently generate high-quality polyp samples, so as to effectively expand the polyp dataset. In this study, we first added the attention mechanism to the generation model and improved the loss function to reduce the interference caused by reflection in the image generation process. Meanwhile, we used the improved generation model to remove polyps from the original image. In addition, we used masks of different shapes generated by random combinations to generate polyps with more characteristic information. The same generation model was used for the removal and generation of polyps. The generated polyp image has its own annotation, which is conducive to us directly using the expanded data set for training. Finally, we verified the effectiveness of the improved model and the dataset expansion scheme through a series of comparative experiments on the public dataset. The results showed that using the dataset we generate for training can significantly optimize the main performance indicators. 展开更多
关键词 Polyp formation polyp detection image synthesis generative adversarial network Pix2Pix
在线阅读 下载PDF
Resource Allocation in V2X Networks:A Double Deep Q-Network Approach with Graph Neural Networks
5
作者 Zhengda Huan Jian Sun +3 位作者 Zeyu Chen Ziyi Zhang Xiao Sun Zenghui Xiao 《Computers, Materials & Continua》 2025年第9期5427-5443,共17页
With the advancement of Vehicle-to-Everything(V2X)technology,efficient resource allocation in dynamic vehicular networks has become a critical challenge for achieving optimal performance.Existing methods suffer from h... With the advancement of Vehicle-to-Everything(V2X)technology,efficient resource allocation in dynamic vehicular networks has become a critical challenge for achieving optimal performance.Existing methods suffer from high computational complexity and decision latency under high-density traffic and heterogeneous network conditions.To address these challenges,this study presents an innovative framework that combines Graph Neural Networks(GNNs)with a Double Deep Q-Network(DDQN),utilizing dynamic graph structures and reinforcement learning.An adaptive neighbor sampling mechanism is introduced to dynamically select the most relevant neighbors based on interference levels and network topology,thereby improving decision accuracy and efficiency.Meanwhile,the framework models communication links as nodes and interference relationships as edges,effectively capturing the direct impact of interference on resource allocation while reducing computational complexity and preserving critical interaction information.Employing an aggregation mechanism based on the Graph Attention Network(GAT),it dynamically adjusts the neighbor sampling scope and performs attention-weighted aggregation based on node importance,ensuring more efficient and adaptive resource management.This design ensures reliable Vehicle-to-Vehicle(V2V)communication while maintaining high Vehicle-to-Infrastructure(V2I)throughput.The framework retains the global feature learning capabilities of GNNs and supports distributed network deployment,allowing vehicles to extract low-dimensional graph embeddings from local observations for real-time resource decisions.Experimental results demonstrate that the proposed method significantly reduces computational overhead,mitigates latency,and improves resource utilization efficiency in vehicular networks under complex traffic scenarios.This research not only provides a novel solution to resource allocation challenges in V2X networks but also advances the application of DDQN in intelligent transportation systems,offering substantial theoretical significance and practical value. 展开更多
关键词 Resource allocation V2X double deep Q-network graph neural network
在线阅读 下载PDF
Cross-feature fusion speech emotion recognition based on attention mask residual network and Wav2vec 2.0
6
作者 Xiaoke Li Zufan Zhang 《Digital Communications and Networks》 2025年第5期1567-1577,共11页
Speech Emotion Recognition(SER)has received widespread attention as a crucial way for understanding human emotional states.However,the impact of irrelevant information on speech signals and data sparsity limit the dev... Speech Emotion Recognition(SER)has received widespread attention as a crucial way for understanding human emotional states.However,the impact of irrelevant information on speech signals and data sparsity limit the development of SER system.To address these issues,this paper proposes a framework that incorporates the Attentive Mask Residual Network(AM-ResNet)and the self-supervised learning model Wav2vec 2.0 to obtain AM-ResNet features and Wav2vec 2.0 features respectively,together with a cross-attention module to interact and fuse these two features.The AM-ResNet branch mainly consists of maximum amplitude difference detection,mask residual block,and an attention mechanism.Among them,the maximum amplitude difference detection and the mask residual block act on the pre-processing and the network,respectively,to reduce the impact of silent frames,and the attention mechanism assigns different weights to unvoiced and voiced speech to reduce redundant emotional information caused by unvoiced speech.In the Wav2vec 2.0 branch,this model is introduced as a feature extractor to obtain general speech features(Wav2vec 2.0 features)through pre-training with a large amount of unlabeled speech data,which can assist the SER task and cope with data sparsity problems.In the cross-attention module,AM-ResNet features and Wav2vec 2.0 features are interacted with and fused to obtain the cross-fused features,which are used to predict the final emotion.Furthermore,multi-label learning is also used to add ambiguous emotion utterances to deal with data limitations.Finally,experimental results illustrate the usefulness and superiority of our proposed framework over existing state-of-the-art approaches. 展开更多
关键词 Speech emotion recognition Residual network MASK ATTENTION Wav2vec 2.0 Cross-feature fusion
在线阅读 下载PDF
SC-GAN:A Spectrum Cartography with Satellite Internet Based on Pix2Pix Generative Adversarial Network
7
作者 Zhen Pan Zhang Bangning +2 位作者 Wang Heng MaWenfeng Guo Daoxing 《China Communications》 2025年第2期47-61,共15页
The increasing demand for radioauthorized applications in the 6G era necessitates enhanced monitoring and management of radio resources,particularly for precise control over the electromagnetic environment.The radio m... The increasing demand for radioauthorized applications in the 6G era necessitates enhanced monitoring and management of radio resources,particularly for precise control over the electromagnetic environment.The radio map serves as a crucial tool for describing signal strength distribution within the current electromagnetic environment.However,most existing algorithms rely on sparse measurements of radio strength,disregarding the impact of building information.In this paper,we propose a spectrum cartography(SC)algorithm that eliminates the need for relying on sparse ground-based radio strength measurements by utilizing a satellite network to collect data on buildings and transmitters.Our algorithm leverages Pix2Pix Generative Adversarial Network(GAN)to construct accurate radio maps using transmitter information within real geographical environments.Finally,simulation results demonstrate that our algorithm exhibits superior accuracy compared to previously proposed methods. 展开更多
关键词 electromagnetic situation Pix2Pix generative adversarial network radio map satellite internet spectrum cartography
在线阅读 下载PDF
Network pharmacology-based study on the mechanism of Tangfukang formula(糖复康方) against type 2 diabetes mellitus
8
作者 YAN Kai WANG Wei +2 位作者 WANG Yan GAO Huijuan FENG Xingzhong 《Journal of Traditional Chinese Medicine》 2025年第1期76-88,共13页
OBJECTIVE:To explore the mechanism of Tangfukang formula(糖复康方,TFK)in treating type 2 diabetes mellitus(T2DM).METHODS:We employed network pharmacology combined with experimental validation to explore the potential ... OBJECTIVE:To explore the mechanism of Tangfukang formula(糖复康方,TFK)in treating type 2 diabetes mellitus(T2DM).METHODS:We employed network pharmacology combined with experimental validation to explore the potential mechanism of TFK against T2DM.Initially,we filtered bioactive compounds with the Traditional Chinese Medicine Systems Pharmacology Database and Analysis Platform(TCMSP)and Symptom Mapping(Sym Map),and gathered targets of TFK and T2DM.Subsequently,we constructed a protein-protein interaction(PPI)network,enriched core targets through Gene Ontology(GO)and Kyoto Encyclopedia of Genes and Genomes(KEGG),and adopted molecular docking to study the binding mode of compounds and the signaling pathway.Finally,we employed a KKAy mice model to investigate the effect and mechanism of TFK against T2DM.Biochemical assay,histology assay,and Western blot(WB)were used to assess the mechanism.RESULTS:There were 492 bioactive compounds of TFK screened,and 1226 overlapping targets of TFK against T2DM identified.A compound-T2DM-related target network with 997 nodes and 4439 edges was constructed.KEGG enrichment analysis identified some core pathways related to T2DM,including adenosine 5-monophosphate-activated protein kinase(AMPK)signaling pathway.Molecular docking study revealed that compounds of TFK,including citric acid,could bind to the active pocket of AMPK crystal structure with free binding energy of-4.8,-8 and-7.9,respectively.Animal experiments indicated that TFK decreased body weight,fasting blood glucose,fasting serum insulin,homeostasis model of insulin resistance,glycosylated serum protein,total cholesterol,triglyceride,and low-density lipoprotein cholesterol,and improve oral glucose tolerance test results.TFK reduced steatosis in liver tissue,and infiltration of inflammatory cells,and protected liver cells to a certain extent.WB analysis revealed that,TFK upregulated the phosphorylation of AMPK and branchedchainα-ketoacid dehydrogenase proteins.CONCLUSION:TFK has the potential to effectively manage T2DM,possibly by regulating the AMPK signaling pathway.The present study lays a new foundation for the therapeutic application of TFK in the treatment of T2DM. 展开更多
关键词 network pharmacology diabetes mellitus type 2 AMP-activated protein kinase kinases signal transduction MECHANICS Tangfukang formula
原文传递
Graph neural network-driven prediction of high-performance CO_(2)reduction catalysts based on Cu-based high-entropy alloys
9
作者 Zihao Jiao Chengyi Zhang +2 位作者 Ya Liu Liejin Guo Ziyun Wang 《Chinese Journal of Catalysis》 2025年第4期197-207,共11页
High-entropy alloy(HEA)offer tunable composition and surface structures,enabling the creation of novel active sites that enhance catalytic performance in renewable energy application.However,the inherent surface compl... High-entropy alloy(HEA)offer tunable composition and surface structures,enabling the creation of novel active sites that enhance catalytic performance in renewable energy application.However,the inherent surface complexity and tendency for elemental segregation,which results in discrepancies between bulk and surface compositions,pose challenges for direct investigation via density functional theory.To address this,Monte Carlo simulations combined with molecular dynamics were employed to model surface segregation across a broad range of elements,including Cu,Ag,Au,Pt,Pd,and Al.The analysis revealed a trend in surface segregation propensity following the order Ag>Au>Al>Cu>Pd>Pt.To capture the correlation between surface site characteristics and the free energy of multi-dentate CO_(2)reduction intermediates,a graph neural network was designed,where adsorbates were transformed into pseudo-atoms at their centers of mass.This model achieved mean absolute errors of 0.08–0.15 eV for the free energies of C_(2)intermediates,enabling precise site activity quantification.Results indicated that increasing the concentration of Cu,Ag,and Al significantly boosts activity for CO and C_(2)formation,whereas Au,Pd,and Pt exhibit negative effects.By screening stable composition space,promising HEA bulk compositions for CO,HCOOH,and C_(2)products were predicted,offering superior catalytic activity compared to pure Cu catalysts. 展开更多
关键词 Density functional theory Machine learning CO_(2)reduction High entropy alloys Graph neural network
在线阅读 下载PDF
Mobility-Aware Edge Caching with Transformer-DQN in D2D-Enabled Heterogeneous Networks
10
作者 Yiming Guo Hongyu Ma 《Computers, Materials & Continua》 2025年第11期3485-3505,共21页
In dynamic 5G network environments,user mobility and heterogeneous network topologies pose dual challenges to the effort of improving performance of mobile edge caching.Existing studies often overlook the dynamic natu... In dynamic 5G network environments,user mobility and heterogeneous network topologies pose dual challenges to the effort of improving performance of mobile edge caching.Existing studies often overlook the dynamic nature of user locations and the potential of device-to-device(D2D)cooperative caching,limiting the reduction of transmission latency.To address this issue,this paper proposes a joint optimization scheme for edge caching that integrates user mobility prediction with deep reinforcement learning.First,a Transformer-based geolocation prediction model is designed,leveraging multi-head attention mechanisms to capture correlations in historical user trajectories for accurate future location prediction.Then,within a three-tier heterogeneous network,we formulate a latency minimization problem under a D2D cooperative caching architecture and develop a mobility-aware Deep Q-Network(DQN)caching strategy.This strategy takes predicted location information as state input and dynamically adjusts the content distribution across small base stations(SBSs)andmobile users(MUs)to reduce end-to-end delay inmulti-hop content retrieval.Simulation results show that the proposed DQN-based method outperforms other baseline strategies across variousmetrics,achieving a 17.2%reduction in transmission delay compared to DQNmethods withoutmobility integration,thus validating the effectiveness of the joint optimization of location prediction and caching decisions. 展开更多
关键词 Mobile edge caching D2D heterogeneous networks deep reinforcement learning transformer model transmission delay optimization
在线阅读 下载PDF
The transcriptomic-based disease network reveals synergistic therapeutic effect of total alkaloids from Coptis chinensis and total ginsenosides from Panax ginseng on type 2 diabetes mellitus
11
作者 Qian Chen Shuying Zhang +6 位作者 Xuanxi Jiang Jie Liao Xin Shao Xin Peng Zheng Wang Xiaoyan Lu Xiaohui Fan 《Chinese Journal of Natural Medicines》 2025年第8期997-1008,共12页
Coptis chinensis Franch.and Panax ginseng C.A.Mey.are traditional herbal medicines with millennia of documented use and broad therapeutic applications,including anti-diabetic properties.However,the synergistic effect ... Coptis chinensis Franch.and Panax ginseng C.A.Mey.are traditional herbal medicines with millennia of documented use and broad therapeutic applications,including anti-diabetic properties.However,the synergistic effect of total alkaloids from Coptis chinensis and total ginsenosides from Panax ginseng on type 2 diabetes mellitus(T2DM)and its underlying mechanism remain unclear.The research demonstrated that the optimal ratio of total alkaloids from Coptis chinensis and total ginsenosides from Panax ginseng was 4∶1,exhibiting maximal efficacy in improving insulin resistance and gluconeogenesis in primary mouse hepatocytes.This combination demonstrated significant synergistic effects in improving glucose tolerance,reducing fasting blood glucose(FBG),the weight ratio of epididymal white adipose tissue(eWAT),and the homeostasis model assessment of insulin resistance(HOMA-IR)in leptin receptor-deficient(db/db)mice.Subsequently,a T2DM liver-specific network was constructed based on RNA sequencing(RNA-seq)experiments and public databases by integrating transcriptional properties of disease-associated proteins and protein-protein interactions(PPIs).The network recovery index(NRI)score of the combined treatment group with a 4∶1 ratio exceeded that of groups treated with individual components.The research identified that activated adenosine 5'-monophosphate-activated protein kinase(AMPK)/acetyl-CoA carboxylase(ACC)signaling in the liver played a crucial role in the synergistic treatment of T2DM,as verified by western blot experiment in db/db mice.These findings demonstrate that the 4∶1 combination of total alkaloids from Coptis chinensis and total ginsenosides from Panax ginseng significantly improves insulin resistance and glucose and lipid metabolism disorders in db/db mice,surpassing the efficacy of individual treatments.The synergistic mechanism correlates with enhanced AMPK/ACC signaling pathway activity. 展开更多
关键词 Total alkaloids from Coptis chinensis ALKALOIDS Total ginsenosides from Panax ginseng Component compatibility network pharmacology Type 2 diabetes mellitus
原文传递
可解释反向传播神经网络在预测前哨淋巴结1~2枚阳性乳腺癌患者腋窝淋巴结负荷中的价值
12
作者 农盛 李湛雄 +4 位作者 张琪 卢振东 洪敏萍 陈武标 刘子霖 《实用医学杂志》 北大核心 2026年第1期45-55,共11页
目的 探讨基于临床及影像学特征的反向传播神经网络模型在预测前哨淋巴结活检1~2枚阳性乳腺癌患者腋窝淋巴结负荷水平中的准确性。方法 回顾性分析2021年1月至2024年12月在3家医疗机构接受腋窝淋巴结清扫的386例女性乳腺癌患者临床及影... 目的 探讨基于临床及影像学特征的反向传播神经网络模型在预测前哨淋巴结活检1~2枚阳性乳腺癌患者腋窝淋巴结负荷水平中的准确性。方法 回顾性分析2021年1月至2024年12月在3家医疗机构接受腋窝淋巴结清扫的386例女性乳腺癌患者临床及影像资料。根据病理检查结果将纳入患者分为腋窝淋巴结高负荷组(n=155)和腋窝淋巴结低负荷组(n=231)。将中心1和中心2(广东医科大学附属医院和广东医科大学附属阳江医院)共295例患者随机分为训练集(n=207)与验证集(n=88),将中心3(广东医科大学附属第二医院)的患者(n=91)作为外部验证集。在训练集上采用单因素、多因素逻辑回归筛选危险因素,并在此基础上应用逻辑回归、支持向量机、随机森林和BPNN四种算法构建风险预测模型,在内部验证集和外部验证集上评估模型的性能。结合Shapley可解释性算法对模型进行特征贡献度分析和可视化。结果 单因素和多因素逻辑回归分析显示中性粒细胞-淋巴细胞比值(neutrophil-to-lymphocyte ratio,NLR)、瘤周水肿及腋窝淋巴结皮质增厚为淋巴结负荷的独立危险因素。基于BPNN算法构建的预测模型显示良好预测性能,模型的曲线下面积为0.793。Shapley可解释性分析显示瘤周水肿具有最高贡献,其次为淋巴结皮质增厚和中性粒细胞-淋巴细胞比值。结论 整合临床及影像学特征的可解释BPNN模型能较准确预测腋窝淋巴结负荷水平,为乳腺癌腋窝管理和个体化治疗提供辅助决策。 展开更多
关键词 乳腺癌 腋窝淋巴结负荷 前哨淋巴结1~2枚阳性 反向传播神经网络 可解释性
暂未订购
页岩油储层前置CO_(2)压裂液体滞留效应研究进展
13
作者 张衍君 刘拯君 +5 位作者 徐豪 贺文杰 刘亚茹 邢亮 周德胜 王祯 《岩性油气藏》 北大核心 2026年第1期180-190,共11页
利用前置CO_(2)压裂技术开发页岩油储层优势明显,能够降低储层伤害、提高缝网复杂度及油气动用程度。通过大量文献调研和系统梳理,总结了前置CO_(2)压裂液体滞留机理及引起的储层物理-化学性质变化,并讨论了前置CO_(2)压裂液体滞留效应... 利用前置CO_(2)压裂技术开发页岩油储层优势明显,能够降低储层伤害、提高缝网复杂度及油气动用程度。通过大量文献调研和系统梳理,总结了前置CO_(2)压裂液体滞留机理及引起的储层物理-化学性质变化,并讨论了前置CO_(2)压裂液体滞留效应的阶段性及压裂工艺的适用性。研究结果表明:(1)页岩油储层前置CO_(2)压裂液滞留机理主要包括多级裂缝网络滞留、近缝面基质渗吸滞留、物理-化学作用引起滞留;主裂缝中重力主导滞留,分支及微裂缝的“闭锁”效应明显。(2)液体滞留引起储层物理-化学性质变化包括促进缝网形成、弱化水相圈闭、基质孔隙增压;CO_(2)通过影响表面张力进而影响近缝面基质液体的滞留,其强扩散效果及对岩石的溶蚀作用有利于形成复杂裂缝网络,以改善岩石的渗透性。(3)前置CO_(2)压裂液体滞留效应在裂缝扩展、闷井、返排、生产4个阶段差异明显,未来需加强前置CO_(2)压裂技术的迭代升级,发挥CO_(2)驱油与封存协同优势,发展智能调控优化储层多介质协同注入策略,实现油气增产与碳中和共同发展。 展开更多
关键词 页岩油 前置CO_(2)压裂 滞留效应 “闭锁”效应 表面张力 裂缝网络 渗透性 驱油效率
在线阅读 下载PDF
运用网络药理学和糖尿病大鼠模型研究荷芪散改善新诊断2型糖尿病胰岛素抵抗的作用机制
14
作者 连李荣 舒晓 +5 位作者 黄宝利 谢伟 何金莲 李润泽 赵恒侠 刘良 《中国新药杂志》 北大核心 2026年第2期183-192,共10页
目的:本研究旨在探讨荷芪散改善新诊断2型糖尿病(type 2 diabetes mellitus,T2DM)胰岛素抵抗的作用及其潜在机制。方法:采用网络药理学方法预测荷芪散干预T2DM胰岛素抵抗的关键靶点与信号通路。随后构建T2DM胰岛素抵抗大鼠模型,设正常... 目的:本研究旨在探讨荷芪散改善新诊断2型糖尿病(type 2 diabetes mellitus,T2DM)胰岛素抵抗的作用及其潜在机制。方法:采用网络药理学方法预测荷芪散干预T2DM胰岛素抵抗的关键靶点与信号通路。随后构建T2DM胰岛素抵抗大鼠模型,设正常对照组、模型组、二甲双胍组、荷芪散高剂量组和低剂量组,评估荷芪散对血糖、胰岛素抵抗、血脂水平及肝脏病理变化的影响。采用Western blot与ELISA法检测肝组织及血清中相关蛋白和炎症因子的表达水平,进一步验证网络药理学预测关键通路的准确性。结果:网络药理学结果提示,荷芪散通过多成分、多靶点调控AGEs/RAGE/PI3K/AKT通路发挥作用。动物实验显示,荷芪散高剂量组可显著降低大鼠空腹血糖与HOMA-IR指数,改善胰岛素抵抗与血脂紊乱,减轻肝细胞脂肪变性。分子机制方面,荷芪散可抑制AGEs/RAGE表达与NF-κB活化,降低肿瘤坏死因子α(tumor necrosis factor-α,TNF-α)和白细胞介素6(interleukin-6,IL-6)炎症因子水平,解除PI3K/AKT通路抑制,提高葡萄糖转运蛋白2(glucose transporter-2,GLUT2)蛋白表达,增强肝糖代谢功能。结论:荷芪散通过调控AGEs/RAGE/PI3K/AKT信号通路改善胰岛素信号传导,减轻肝脏胰岛素抵抗,调节脂代谢与糖代谢,发挥降糖、调脂及护肝作用,为其用于新诊断T2DM胰岛素抵抗治疗提供实验依据。 展开更多
关键词 荷芪散 新诊断2型糖尿病 胰岛素抵抗 AGEs/RAGE/PI3K/AKT通路 网络药理学 糖脂代谢
原文传递
广域网中TASE.2协议的实现及现场应用 被引量:12
15
作者 彭晖 金午桥 +4 位作者 成海彦 崔恒志 董连武 张旭东 徐春雷 《电网技术》 EI CSCD 北大核心 2003年第5期43-46,共4页
随着电网的发展,省调、地调EMS间的通信量与日俱增,传统的远动通信方式由于其传输时延大,通信资源浪费,传输规约容量受限,规约不统一,而与需求之间的矛盾日趋激化,TASE.2协议已成为解决这一矛盾的理想选择。文中主要阐述了TASE.2协议在... 随着电网的发展,省调、地调EMS间的通信量与日俱增,传统的远动通信方式由于其传输时延大,通信资源浪费,传输规约容量受限,规约不统一,而与需求之间的矛盾日趋激化,TASE.2协议已成为解决这一矛盾的理想选择。文中主要阐述了TASE.2协议在广域网(MAN)方式下如何实现能量管理系统(EMS)间的通信、与传统通信方式的比较以及协议实现中的关键技术。文中还介绍了TASE.2协议在江苏、河北两省的具体实现情况。 展开更多
关键词 广域网 tase.2协议 通信协议 电网 电力系统 能量管理系统
在线阅读 下载PDF
基于TASE.2协议的数据通信转发在上海电网的实现 被引量:7
16
作者 张健 郭创新 +1 位作者 顾立新 秦杰 《电力系统自动化》 EI CSCD 北大核心 2006年第15期70-73,共4页
主要介绍目前已在上海电网内市调、地调及所有15个区调能量管理系统/监控与数据采集(EMS/SCADA)系统之间实现的基于TASE.2协议的数据通信转发的具体情况,阐述了其实现方案和关键技术。应用表明,系统给各级调度生产运行所需的数据通信... 主要介绍目前已在上海电网内市调、地调及所有15个区调能量管理系统/监控与数据采集(EMS/SCADA)系统之间实现的基于TASE.2协议的数据通信转发的具体情况,阐述了其实现方案和关键技术。应用表明,系统给各级调度生产运行所需的数据通信转发带来了极大便利及良好的可靠性和稳定性。 展开更多
关键词 tase.2协议 数据转发 互联平台 电力系统
在线阅读 下载PDF
基于ARIMA-LSTM模型的MSWI过程CO_(2)排放浓度多步预测
17
作者 汤健 王子 +2 位作者 夏恒 王天峥 乔俊飞 《北京工业大学学报》 北大核心 2026年第2期175-188,共14页
针对城市固废焚烧(municipal solid waste incineration,MSWI)过程CO_(2)排放兼具线性趋势与非线性波动的复杂动态特性,现有单一预测难以准确拟合的问题,提出基于差分整合移动平均自回归-长短期记忆(autoregressive integrated moving a... 针对城市固废焚烧(municipal solid waste incineration,MSWI)过程CO_(2)排放兼具线性趋势与非线性波动的复杂动态特性,现有单一预测难以准确拟合的问题,提出基于差分整合移动平均自回归-长短期记忆(autoregressive integrated moving average-long short-term memory,ARIMA-LSTM)模型的CO_(2)排放浓度的多步预测方法。首先,采用ARIMA算法构建线性主模型以进行CO_(2)排放浓度预测;然后,以主模型的预测残差为真值,采用LSTM算法构建非线性补偿模型;最后,将主模型和补偿模型的预测值进行组合得到超前多步的预测结果。基于北京某MSWI工厂的真实CO_(2)数据集验证了所构建混合模型的有效性。 展开更多
关键词 城市固废焚烧(municipal solid waste incineration MSWI) CO_(2)排放 多步预测 差分整合移动平均自回归模型 长短期记忆(long short-term memory LSTM)网络 混合模型
在线阅读 下载PDF
IEC61850和IEC60870-6(TASE.2)的比较 被引量:13
18
作者 谭文恕 《电网技术》 EI CSCD 北大核心 2001年第10期1-4,共4页
就基本远动任务的3个方面(即数据收集、事件报告和控制)进行了分析,可见TASE.2(IEC608 70-6)和IEC61850-8-1在工作原理上映射到MMS的PDU、PDU的选择项及功能方面存在差别,因而得出结论是... 就基本远动任务的3个方面(即数据收集、事件报告和控制)进行了分析,可见TASE.2(IEC608 70-6)和IEC61850-8-1在工作原理上映射到MMS的PDU、PDU的选择项及功能方面存在差别,因而得出结论是这2种标准用在变电站和控制中心之间的数据的传输时,不能兼容。 展开更多
关键词 通信协议 IEC61850 IEC60870-6(tase.2) 电力系统
在线阅读 下载PDF
Prediction of SO_2 Concentration in Urban Atmosphere Based on B-P Neural Network 被引量:1
19
作者 姚建 王丽梅 袁野 《Meteorological and Environmental Research》 CAS 2010年第11期9-11,14,共4页
Base on the principle and method of B-P neural network,the prediction model of SO2 concentration in urban atmosphere was established by using the statistical data of a city in southwest China from 1991 to 2009,so as t... Base on the principle and method of B-P neural network,the prediction model of SO2 concentration in urban atmosphere was established by using the statistical data of a city in southwest China from 1991 to 2009,so as to forecast atmospheric SO2 concentration in a city of southwest China.The results showed that B-P neural network applied in the prediction of SO2 concentration in urban atmosphere was reasonable and efficient with high accuracy and wide adaptability,so it was worthy to be popularized. 展开更多
关键词 B-P neural network SO2 concentration in urban atmospheric Prediction model China
在线阅读 下载PDF
TASE.2网络通信协议在广西电网能量管理系统中的应用探讨 被引量:2
20
作者 李劲 陈炳 《广西电力》 2004年第3期40-42,共3页
探讨远动信息传输方式的需求和发展 ,并对目前国际广泛使用的TASE 2网络通信协议作了详细的分析 ,针对广西电网区、地级能量管理系统的实际情况提出了该协议的实施方案。
关键词 网络通信 EMS系统 通信协议 tase.2
在线阅读 下载PDF
上一页 1 2 102 下一页 到第
使用帮助 返回顶部