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基于24Model的动火作业事故致因文本挖掘 被引量:1
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作者 牛茂辉 李威君 +1 位作者 刘音 王璐 《中国安全科学学报》 北大核心 2025年第3期151-158,共8页
为探究工业动火作业事故的根源,提出一种基于“2-4”模型(24Model)的文本挖掘方法。首先,收集整理220篇动火作业事故报告,并作为数据集,构建基于来自变换器的双向编码器表征量(BERT)的24Model分类器,使用预训练模型训练和评估事故报告... 为探究工业动火作业事故的根源,提出一种基于“2-4”模型(24Model)的文本挖掘方法。首先,收集整理220篇动火作业事故报告,并作为数据集,构建基于来自变换器的双向编码器表征量(BERT)的24Model分类器,使用预训练模型训练和评估事故报告数据集,构建分类模型;然后,通过基于BERT的关键字提取算法(KeyBERT)和词频-逆文档频率(TF-IDF)算法的组合权重,结合24Model框架,建立动火作业事故文本关键词指标体系;最后,通过文本挖掘关键词之间的网络共现关系,分析得到事故致因之间的相互关联。结果显示,基于BERT的24Model分类器模型能够系统准确地判定动火作业事故致因类别,通过组合权重筛选得到4个层级关键词指标体系,其中安全管理体系的权重最大,结合共现网络分析得到动火作业事故的7项关键致因。 展开更多
关键词 2-4”模型(24model) 动火作业 事故致因 文本挖掘 指标体系
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二氧化碳地质封存盖层力学建模及其封闭性研究——以辽河油田CCUS试验区S229块为例
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作者 施玉华 梁飞 +2 位作者 田梅 张雪涛 蒋星达 《石油物探》 北大核心 2026年第1期182-194,共13页
碳捕集、利用与封存(carbon capture,utilization and storage,CCUS)在应对全球气候变化、减少温室气体排放方面具有重要意义。二氧化碳(CO_(2))地质封存是一个动态过程,极易引起地质体应力场改变,诱发盖层岩石力学破坏,造成CO_(2)泄露... 碳捕集、利用与封存(carbon capture,utilization and storage,CCUS)在应对全球气候变化、减少温室气体排放方面具有重要意义。二氧化碳(CO_(2))地质封存是一个动态过程,极易引起地质体应力场改变,诱发盖层岩石力学破坏,造成CO_(2)泄露。因此,盖层封闭性研究是CCUS项目实施中的关键研究内容之一。以辽河油田CCUS试验区S229区块为例,针对二氧化碳地质封存过程中盖层封闭性评价需求,基于地质、测井及岩心实验数据,采用三维地质力学建模技术,结合毛细管压力理论和摩尔-库伦破坏准则,计算盖层最大CO_(2)羽流柱高度,并分析盖层张性破坏压力与剪切破坏压力。提取注入井点位置的破坏压力阈值,实现盖层封闭性定点定量评价,明确研究区块CO_(2)注入井极限压力。分析表明,研究区盖层泥岩毛细管封闭能力较好,所能封闭的最大CO_(2)羽流柱高度为379.08 m;盖层张性破裂压力范围为58.3~62.1 MPa,剪切破裂压力范围为54.8~60.9 MPa;井36-70附近盖层剪切破坏风险最高,极限井底压力为58.09 MPa。研究结果表明,S229区块盖层具备较好的封闭性能,但需严格控制CO_(2)注入压力以避免力学破坏。研究成果为研究区CCUS项目注入参数优化及安全实施提供了指导。 展开更多
关键词 CCUS 地质力学建模 盖层封闭评价 CO_(2)羽流柱高度 破坏压力
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GPT2-ICC:A data-driven approach for accurate ion channel identification using pre-trained large language models 被引量:1
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作者 Zihan Zhou Yang Yu +9 位作者 Chengji Yang Leyan Cao Shaoying Zhang Junnan Li Yingnan Zhang Huayun Han Guoliang Shi Qiansen Zhang Juwen Shen Huaiyu Yang 《Journal of Pharmaceutical Analysis》 2025年第8期1800-1809,共10页
Current experimental and computational methods have limitations in accurately and efficiently classifying ion channels within vast protein spaces.Here we have developed a deep learning algorithm,GPT2 Ion Channel Class... Current experimental and computational methods have limitations in accurately and efficiently classifying ion channels within vast protein spaces.Here we have developed a deep learning algorithm,GPT2 Ion Channel Classifier(GPT2-ICC),which effectively distinguishing ion channels from a test set containing approximately 239 times more non-ion-channel proteins.GPT2-ICC integrates representation learning with a large language model(LLM)-based classifier,enabling highly accurate identification of potential ion channels.Several potential ion channels were predicated from the unannotated human proteome,further demonstrating GPT2-ICC’s generalization ability.This study marks a significant advancement in artificial-intelligence-driven ion channel research,highlighting the adaptability and effectiveness of combining representation learning with LLMs to address the challenges of imbalanced protein sequence data.Moreover,it provides a valuable computational tool for uncovering previously uncharacterized ion channels. 展开更多
关键词 Ion channel Artificial intelligence Representation learning GPT2 Protein language model
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High-throughput screening of CO_(2) cycloaddition MOF catalyst with an explainable machine learning model
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作者 Xuefeng Bai Yi Li +3 位作者 Yabo Xie Qiancheng Chen Xin Zhang Jian-Rong Li 《Green Energy & Environment》 SCIE EI CAS 2025年第1期132-138,共7页
The high porosity and tunable chemical functionality of metal-organic frameworks(MOFs)make it a promising catalyst design platform.High-throughput screening of catalytic performance is feasible since the large MOF str... The high porosity and tunable chemical functionality of metal-organic frameworks(MOFs)make it a promising catalyst design platform.High-throughput screening of catalytic performance is feasible since the large MOF structure database is available.In this study,we report a machine learning model for high-throughput screening of MOF catalysts for the CO_(2) cycloaddition reaction.The descriptors for model training were judiciously chosen according to the reaction mechanism,which leads to high accuracy up to 97%for the 75%quantile of the training set as the classification criterion.The feature contribution was further evaluated with SHAP and PDP analysis to provide a certain physical understanding.12,415 hypothetical MOF structures and 100 reported MOFs were evaluated under 100℃ and 1 bar within one day using the model,and 239 potentially efficient catalysts were discovered.Among them,MOF-76(Y)achieved the top performance experimentally among reported MOFs,in good agreement with the prediction. 展开更多
关键词 Metal-organic frameworks High-throughput screening Machine learning Explainable model CO_(2)cycloaddition
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基于24Model与RF算法的冰雪天气高速公路交通事故影响因素研究
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作者 王俊诚 解学才 孙世梅 《安全》 2025年第11期55-60,共6页
为提升冰雪天气下高速公路的行车安全水平,本文融合事故致因“2-4”模型(24Model)与机器学习方法,构建事故严重程度预测模型并识别关键致因因素。首先,以全国109起冰雪天气高速公路交通事故为样本,基于24Model系统提取15项影响因素,构... 为提升冰雪天气下高速公路的行车安全水平,本文融合事故致因“2-4”模型(24Model)与机器学习方法,构建事故严重程度预测模型并识别关键致因因素。首先,以全国109起冰雪天气高速公路交通事故为样本,基于24Model系统提取15项影响因素,构建适用于机器学习的数据集;然后,对比随机森林(RF)、K近邻与BP神经网络,建立预测模型,并对最优者实施超参数搜索与交叉验证;最后,结合重要度分析,识别影响事故严重程度的关键因素。结果表明:RF模型准确率达到0.8182,且性能最稳定;组织文化缺失为首要致因,驾驶员安全意识不足、低能见度不良天气条件及大型车辆混入亦显著加剧事故严重性。可从优化低能见度路段交通标志与照明设施、完善安全管理体系等方面提出针对性改进对策,为冰雪天气高速公路安全治理提供理论依据与管理参考。 展开更多
关键词 冰雪天气 事故致因“2-4”模型(24model) 事故严重程度 随机森林算法(RF)
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Establishment of a humanized SCA2 mouse model carrying a CAA disruption preventing CAG repeat expansion in pathogenic genes
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作者 Yao Zhang Yufei Li +7 位作者 Lin Zhang Zhaoqing Li Keqin Lin Kai Huang Zhaoqing Yang Shaohui Ma Hao Sun Xiaochao Zhang 《Animal Models and Experimental Medicine》 2025年第9期1677-1687,共11页
Background:Spinocerebellar ataxia type 2(SCA2)is a neurodegenerative disease marked by significant clinical and genetic heterogeneity,primarily caused by expanded CAG mutations in the ATXN2 gene.The unstable expansion... Background:Spinocerebellar ataxia type 2(SCA2)is a neurodegenerative disease marked by significant clinical and genetic heterogeneity,primarily caused by expanded CAG mutations in the ATXN2 gene.The unstable expansion of CAG repeats disrupts the genetic stability of animal models,which is detrimental to disease research.Methods:In this study,we established a mouse model in which CAG repeats do not undergo microsatellite instability(MSI)across generations.A humanized ATXN2 cDNA with four CAA interruptions within 73 CAG expansions was inserted into the Rosa26 locus of C57BL/6J mice.A 23 CAG control mouse model was also generated to verify ATXN2 integration and expression.Results:In our model,the number of CAG repeats remained stable during transmission,with no CAG repeat expansion observed in 64 parent-to-offspring transmissions.Compared with SCA2-Q23 mice,SCA2-Q73 mice exhibited progressive motor impairment,reduced Purkinje cell count and volume(indicative of cell atrophy),and muscle atrophy.These observations in the mice suggest that the behavioral and neuropathological phenotypes may reflect the features of SCA2 patients.RNA-seq analysis of the gastrocnemius muscle in SCA2-Q73 mice showed significant changes in muscle differentiation and development gene expression at 56 weeks,with no significant differences at 16 weeks compared to SCA2-Q23 mice.The expression level of the Myf6 gene significantly changed in the muscles of aged mice.Conclusion:In summary,the establishment of this model not only provides a stable animal model for studying CAG transmission in SCA2 but also indicates that the lack of long-term neural stimulation leads to muscle atrophy. 展开更多
关键词 ATXN2 CAA interruption genetic stability mouse model SCA2
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Comparison of the pathogenicity of multiple SARS-CoV-2 variants in mouse models
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作者 Qi Lv Ming Liu +10 位作者 Feifei Qi Mingya Liu Fengdi Li Ran Deng Xujian Liang Yanfeng Xu Zhiqi Song Yiwei Yan Shuyue Li Guocui Mou Linlin Bao 《Animal Models and Experimental Medicine》 2025年第7期1302-1312,共11页
Background:New variants of severe acute respiratory syndrome coronavirus 2(SARS-CoV-2)continue to drive global epidemics and pose significant health risks.The pathogenicity of these variants evolves under immune press... Background:New variants of severe acute respiratory syndrome coronavirus 2(SARS-CoV-2)continue to drive global epidemics and pose significant health risks.The pathogenicity of these variants evolves under immune pressure and host factors.Understanding these changes is crucial for epidemic control and variant research.Methods:Human angiotensin-converting enzyme 2(hACE2)transgenic mice were in-tranasally challenged with the original strain WH-09 and the variants Delta,Beta,and Omicron BA.1,while BALB/c mice were challenged with Omicron subvariants BA.5,BF.7,and XBB.1.To compare the pathogenicity differences among variants,we con-ducted a comprehensive analysis that included clinical symptom observation,meas-urement of viral loads in the trachea and lungs,evaluation of pulmonary pathology,analysis of immune cell infiltration,and quantification of cytokine levels.Results:In hACE2 mice,the Beta variant caused significant weight loss,severe lung inflammation,increased inflammatory and chemotactic factor secretion,greater mac-rophage and neutrophil infiltration in the lungs,and higher viral loads with prolonged shedding duration.In contrast,BA.1 showed a significant reduction in pathogenicity.The BA.5,BF.7,and XBB.1 variants were less pathogenic than the WH-09,Beta,and Delta variants when infected in BALB/c mice.This was evidenced by reduced weight loss,diminished pulmonary pathology,decreased secretion of inflammatory factors and chemokines,reduced macrophage and neutrophil infiltration,as well as lower viral loads in both the trachea and lungs.Conclusion:In hACE2 mice,the Omicron variant demonstrated the lowest pathogenic-ity,while the Beta variant exhibited the highest.Pathogenicity of the Delta variant was comparable to the original WH-09 strain.Among BALB/c mice,Omicron subvari-ants BA.5,BF.7,and XBB.1 showed no statistically significant differences in virulence. 展开更多
关键词 mice model PATHOGENICITY SARS-CoV-2 VARIANTS
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Kinetic modeling and multi-objective optimization of an industrial hydrocracking process with an improved SPEA2-PE algorithm
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作者 Chen Fan Xindong Wang +1 位作者 Gaochao Li Jian Long 《Chinese Journal of Chemical Engineering》 2025年第4期130-146,共17页
Hydrocracking is one of the most important petroleum refining processes that converts heavy oils into gases,naphtha,diesel,and other products through cracking reactions.Multi-objective optimization algorithms can help... Hydrocracking is one of the most important petroleum refining processes that converts heavy oils into gases,naphtha,diesel,and other products through cracking reactions.Multi-objective optimization algorithms can help refining enterprises determine the optimal operating parameters to maximize product quality while ensuring product yield,or to increase product yield while reducing energy consumption.This paper presents a multi-objective optimization scheme for hydrocracking based on an improved SPEA2-PE algorithm,which combines path evolution operator and adaptive step strategy to accelerate the convergence speed and improve the computational accuracy of the algorithm.The reactor model used in this article is simulated based on a twenty-five lumped kinetic model.Through model and test function verification,the proposed optimization scheme exhibits significant advantages in the multiobjective optimization process of hydrocracking. 展开更多
关键词 HYDROCRACKING Multi-objective optimization Improved SPEA2 Kinetic modeling
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Simulation of capacitively coupled Ar/O_(2)discharges based on global/equivalent circuit model and an extended reaction set
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作者 Yi Wang Wan Dong +2 位作者 Yi-Fan Zhang Liu-Qin Song Yuan-Hong Song 《Chinese Physics B》 2025年第8期623-635,共13页
Radio frequency capacitively coupled plasmas(RF CCPs)operated in Ar/O_(2)gas mixtures which are widely adopted in microelectronics,display,and photovoltaic industry,are investigated based on an equivalent circuit mode... Radio frequency capacitively coupled plasmas(RF CCPs)operated in Ar/O_(2)gas mixtures which are widely adopted in microelectronics,display,and photovoltaic industry,are investigated based on an equivalent circuit model coupled with a global model.This study focuses on the effects of singlet metastable molecule O_(2)(b^(1)∑_(8)^(+)),highly excited Herzberg states O_(2)(A^(3)∑_(u)^(+),A^(3)△_(u),c^(1)∑_(u)^(-)),and the negative ion O_(2)^(-),which are usually neglected in simulation studies.Specifically,their impact on particle densities,electronegativity,electron temperature,voltage drop across the sheath,and absorbed power in the discharge is analyzed.The results indicate that O_(2)(b^(1)∑_(8)^(+))and O_(2)^(-)exhibit relatively high densities in argon-oxygen discharges.While O_(2)(A^(3)∑_(u)^(+),A^(3)△_(u),c^(1)∑_(u)^(-))play a critical role in O_(2)b1S+g production,especially at higher pressure.The inclusion of these particles reduces the electronegativity,electron temperature,and key species densities,especially the O^(-)and O^(*)densities.Moreover,the sheath voltage drop,as well as the inductance and resistance of the plasma bulk are enhanced,while the sheath dissipation power and total absorbed power decrease slightly.With the increasing pressure,the influence of these particles on the discharge properties becomes more significant.The study also explores the generation and loss of main neutral species and charged particles within the pressure range of 20 mTorr-100 mTorr(1 Torr=1.33322×10^(2)Pa),offering insights into essential and non-essential reactions for future low-pressure O_(2)and Ar/O_(2)CCP discharge modeling. 展开更多
关键词 Ar/O_(2)CCP discharges reaction set equivalent circuit model global model
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Comparison of the pathogenicity and neutrophil and monocyte response between SARS-CoV-2 prototype and Omicron BA.1 in a lethal mouse model
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作者 Na Rong Jing Wu +6 位作者 Binbin Zhao Wanjun Peng Hekai Yang Gengxin Zhang Dangting Ruan Xiaohui Wei Jiangning Liu 《Animal Models and Experimental Medicine》 2025年第4期707-717,共11页
Background:SARS-CoV-2,first identified in late 2019,has given rise to numerous variants of concern(VOCs),posing a significant threat to human health.The emer-gence of Omicron BA.1.1 towards the end of 2021 led to a pa... Background:SARS-CoV-2,first identified in late 2019,has given rise to numerous variants of concern(VOCs),posing a significant threat to human health.The emer-gence of Omicron BA.1.1 towards the end of 2021 led to a pandemic in early 2022.At present,the lethal mouse model for the study of SARS-CoV-2 needs supplementation,and the alterations in neutrophils and monocytes caused by different strains remain to be elucidated.Methods:Human ACE2 transgenic mice were inoculated with the SARS-CoV-2 proto-type and Omicron BA.1,respectively.The pathogenicity of the two strains was evalu-ated by observing clinical symptoms,viral load and pathology.Complete blood count,immunohistochemistry and flow cytometry were performed to detect the alterations of neutrophils and monocytes caused by the two strains.Results:Our findings revealed that Omicron BA.1 exhibited significantly lower vir-ulence compared to the SARS-CoV-2 prototype in the mouse model.Additionally,we observed a significant increase in the proportion of neutrophils late in infection with the SARS-CoV-2 prototype and Omicron BA.1.We found that the proportion of monocytes increased at first and then decreased.The trends in the changes in the proportions of neutrophils and monocytes induced by the two strains were similar.Conclusion:Our study provides valuable insights into the utility of mouse models for simulating the severe disease of SARS-CoV-2 prototype infection and the milder manifestation associated with Omicron BA.1.SARS-CoV-2 prototype and Omicron BA.1 resulted in similar trends in the changes in neutrophils and monocytes. 展开更多
关键词 animal model SARS-CoV-2 Omicron BA.1 MONOCYTE NEUTROPHIL
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Construction of a risk prediction model for hypertension in type 2 diabetes:Independent risk factors and nomogram
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作者 Jian-Yong Zhao Jia-Qing Dou Ming-Wei Chen 《World Journal of Diabetes》 2025年第5期182-191,共10页
BACKGROUND Type 2 diabetes mellitus(T2DM)is a prevalent metabolic disorder increasingly linked with hypertension,posing significant health risks.The need for a predictive model tailored for T2DM patients is evident,as... BACKGROUND Type 2 diabetes mellitus(T2DM)is a prevalent metabolic disorder increasingly linked with hypertension,posing significant health risks.The need for a predictive model tailored for T2DM patients is evident,as current tools may not fully capture the unique risks in this population.This study hypothesizes that a nomogram incorporating specific risk factors will improve hypertension risk prediction in T2DM patients.AIM To develop and validate a nomogram prediction model for hypertension in T2DM patients.METHODS A retrospective observational study was conducted using data from 26850 T2DM patients from the Anhui Provincial Primary Medical and Health Information Management System(2022 to 2024).The study included patients aged 18 and above with available data on key variables.Exclusion criteria were type 1 diabetes,gestational diabetes,insufficient data,secondary hypertension,and abnormal liver and kidney function.The Least Absolute Shrinkage and Selection Operator regression and multivariate logistic regression were used to construct the nomogram,which was validated on separate datasets.RESULTS The developed nomogram for T2DM patients incorporated age,low-density lipoprotein,body mass index,diabetes duration,and urine protein levels as key predictive factors.In the training dataset,the model demonstrated a high discriminative power with an area under the receiver operating characteristic curve(AUC)of 0.823,indicating strong predictive accuracy.The validation dataset confirmed these findings with an AUC of 0.812.The calibration curve analysis showed excellent agreement between predicted and observed outcomes,with absolute errors of 0.017 for the training set and 0.031 for the validation set.The Hosmer-Lemeshow test yielded non-significant results for both sets(χ^(2)=7.066,P=0.562 for training;χ^(2)=6.122,P=0.709 for validation),suggesting good model fit.CONCLUSION The nomogram effectively predicts hypertension risk in T2DM patients,offering a valuable tool for personalized risk assessment and guiding targeted interventions.This model provides a significant advancement in the management of T2DM and hypertension comorbidity. 展开更多
关键词 Type 2 diabetes mellitus HYPERTENSION Risk factors NOMOGRAM Prediction model
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Risk factors and a predictive model of diabetic foot in hospitalized patients with type 2 diabetes
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作者 Ming-Zhuo Li Fang Tang +6 位作者 Ya-Fei Liu Jia-Hui Lao Yang Yang Jia Cao Ru Song Peng Wu Yi-Bing Wang 《World Journal of Diabetes》 2025年第3期44-54,共11页
BACKGROUND The risk factors and prediction models for diabetic foot(DF)remain incompletely understood,with several potential factors still requiring in-depth investigations.AIM To identify risk factors for new-onset D... BACKGROUND The risk factors and prediction models for diabetic foot(DF)remain incompletely understood,with several potential factors still requiring in-depth investigations.AIM To identify risk factors for new-onset DF and develop a robust prediction model for hospitalized patients with type 2 diabetes.METHODS We included 6301 hospitalized patients with type 2 diabetes from January 2016 to December 2021.A univariate Cox model and least absolute shrinkage and selection operator analyses were applied to select the appropriate predictors.Nonlinear associations between continuous variables and the risk of DF were explored using restricted cubic spline functions.The Cox model was further employed to evaluate the impact of risk factors on DF.The area under the curve(AUC)was measured to evaluate the accuracy of the prediction model.RESULTS Seventy-five diabetic inpatients experienced DF.The incidence density of DF was 4.5/1000 person-years.A long duration of diabetes,lower extremity arterial disease,lower serum albumin,fasting plasma glucose(FPG),and diabetic nephropathy were independently associated with DF.Among these risk factors,the serum albumin concentration was inversely associated with DF,with a hazard ratio(HR)and 95%confidence interval(CI)of 0.91(0.88-0.95)(P<0.001).Additionally,a U-shaped nonlinear relationship was observed between the FPG level and DF.After adjusting for other variables,the HRs and 95%CI for FPG<4.4 mmol/L and≥7.0 mmol/L were 3.99(1.55-10.25)(P=0.004)and 3.12(1.66-5.87)(P<0.001),respectively,which was greater than the mid-range level(4.4-6.9 mmol/L).The AUC for predicting DF over 3 years was 0.797.CONCLUSION FPG demonstrated a U-shaped relationship with DF.Serum albumin levels were negatively associated with DF.The prediction nomogram model of DF showed good discrimination ability using diabetes duration,lower extremity arterial disease,serum albumin,FPG,and diabetic nephropathy(Clinicaltrial.gov NCT05519163). 展开更多
关键词 Type 2 diabetes Diabetic foot Nonlinear association Prediction model Retrospective cohort
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Exploration of Curriculum Reform Based on ADDIO2OE Blended Teaching Model
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作者 Hongqiang Zhao Kun Li +1 位作者 Li Li Min Liu 《Journal of Contemporary Educational Research》 2025年第5期102-106,共5页
Blended learning is an important practice of teaching reform in universities,which effectively integrates online and offline teaching resources.Through the participation of teachers in the learning process and helping... Blended learning is an important practice of teaching reform in universities,which effectively integrates online and offline teaching resources.Through the participation of teachers in the learning process and helping students construct knowledge,the teaching philosophy of“learning as the center”is realized,which plays an important role in improving the quality of teaching courses and cultivating professional talents.This article analyzes the problems in course teaching,proposes a hybrid teaching design strategy based on the ADDIO2OE model,analyzes the specific requirements of each stage,and conducts research and discussion to form a complete teaching model,aiming to deepen teaching reform and improve teaching quality. 展开更多
关键词 Blended learning ADDIO2OE model Course design Teaching reform
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Clinical Application of Patient Participation Health Model in the Health Management of Patients with Type 2 Diabetes
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作者 Xiyu Jiang 《Journal of Clinical and Nursing Research》 2025年第1期188-193,共6页
Objective: To analyze the clinical effects of the patient participation health model in the health management of type 2 diabetes mellitus. Methods: A total of 124 patients with type 2 diabetes admitted to the hospital... Objective: To analyze the clinical effects of the patient participation health model in the health management of type 2 diabetes mellitus. Methods: A total of 124 patients with type 2 diabetes admitted to the hospital from June 2023 to June 2024 were randomly assigned to either the control group (64 patients) or the intervention group (60 patients). Patients in the control group received routine health management, while those in the intervention group were managed using a patient-participation health model with progressive, stage-based interventions. Outcomes were assessed based on blood glucose control, disease awareness, and self-management behaviors. Adverse reactions during health management were closely monitored in both groups. Results: Patients in the intervention group showed significantly better outcomes in blood glucose control, disease awareness, and self-management behaviors compared to the control group. Conclusion: The patient participation health model demonstrated significant clinical value, effectively enhancing self-management abilities, improving glycemic control, and increasing disease awareness. This model is recommended for widespread adoption in the health management of type 2 diabetes to achieve better therapeutic outcomes and improve patient quality of life. 展开更多
关键词 Type 2 diabetes Health management Patient participation health model Clinical application
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碳酸盐岩气藏注CO_(2)提高采收率与埋存潜力评价指标研究
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作者 赵梓寒 彭先 +9 位作者 王梦雨 周源 李隆新 罗瑜 徐世昊 汪永朝 任运波 熊伟 赵玉龙 曹成 《油气藏评价与开发》 北大核心 2026年第1期74-83,共10页
碳酸盐岩气藏注二氧化碳(CO_(2))在提高甲烷(CH_(4))采收率的同时能够实现CO_(2)的地质埋存。针对孔隙-裂缝型碳酸盐岩气藏流体渗流表征不准确的问题,采用PR(Peng-Robinson)状态方程计算流体物性,建立考虑对流与扩散的双孔双渗数值模型... 碳酸盐岩气藏注二氧化碳(CO_(2))在提高甲烷(CH_(4))采收率的同时能够实现CO_(2)的地质埋存。针对孔隙-裂缝型碳酸盐岩气藏流体渗流表征不准确的问题,采用PR(Peng-Robinson)状态方程计算流体物性,建立考虑对流与扩散的双孔双渗数值模型,分析裂缝渗透率、储层倾角、裂缝孔隙度、基质孔隙度、注气速度等因素对CH_(4)采收率和CO_(2)埋存量的影响规律。数值模拟结果表明:裂缝渗透率越高,早期CH_(4)的产气量就越高,但CO_(2)突破后,CH_(4)产气量迅速下降;裂缝孔隙度和基质孔隙度的增加显著提高了CH_(4)采收率与CO_(2)埋存量;储层倾角增加,CH_(4)采收率和CO_(2)埋存量受重力分异影响也随之提高;注气速度越快,增压补能效果越显著,CH_(4)与CO_(2)产气量越高,CH_(4)采收率和CO_(2)埋存量下降;基质渗透率、注气时机及5%O_(2)对提采与埋存的影响较小。基于数值模拟结果,采用变异系数法和专家赋权法确定影响因素权重,通过层次分析法构建了碳酸盐岩气藏注CO_(2)提采与埋存的评价指标体系,并对WLH气藏的不同区块开展综合评价。综合评价结果表明,不同区块的储层物性差异显著,裂缝渗透率、裂缝孔隙度和储层倾角等指标的权重对评价结果有直接影响,但整体趋势与模型分析一致,验证了评价指标体系的有效性和正确性。研究成果为裂缝性碳酸盐岩气藏注CO_(2)提高气藏采收率协同碳埋存提供了理论依据与有效的评价指标体系。 展开更多
关键词 CCUS 碳酸盐岩气藏 CO_(2)提高采收率 评价指标 双孔双渗模型
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Development of a capillary bundle evaporation advanced mathematical modeling for 1,2-propylene glycol-glycerin mixtures in porous media
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作者 Bingbing Li Jiantong Li +3 位作者 Side Ren Shuo Gu Zhanjian Liu Liyan Liu 《Chinese Journal of Chemical Engineering》 2025年第4期261-273,共13页
Porous liquid-conducting micro-heat exchangers have garnered considerable attention for their role in efficient heat dissipation in small electronic devices.This demand highlights the need for advanced mathematical mo... Porous liquid-conducting micro-heat exchangers have garnered considerable attention for their role in efficient heat dissipation in small electronic devices.This demand highlights the need for advanced mathematical models to optimize the selection of mixed heat exchange media and equipment design.A capillary bundle evaporation model for porous liquid-conducting media was developed based on the conjugate mass transfer evaporation rate prediction model of a single capillary tube,supplemented by mercury injection experimental data.Theoretical and experimental comparisons were conducted using 1,2-propanediol-glycerol(PG-VG)mixtures at molar ratios of 1:9,3:7,5:5,and 7:3 at 120,150,and 180℃.The Jouyban-Acree model was implemented to enhance the evaporation rate predictions.For the 7:3 PG-VG mixture at 180℃under the experimental conditions of the thermal medium,the model's error reduced from 16.75%to 10.84%post-correction.Overall,the mean relative error decreased from 11.76%to 5.98%after correction. 展开更多
关键词 Evaporation in porous media Capillary bundle model 1 2-propylene glycol-glycerin Evaporation rate
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Systematic calibration of a 2-m Ring Solar Telescope based on local interferometry and model comparison
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作者 Renai Liu Jinpeng Li +2 位作者 Zuozifei Song Changyu Zeng Yichun Dai 《Astronomical Techniques and Instruments》 2025年第3期175-185,共11页
To address the installation challenges of a 2-m ring Gregorian telescope system,and similar optical systems with a small width-to-radius ratio,we propose a detection method combining local interferometry with a compar... To address the installation challenges of a 2-m ring Gregorian telescope system,and similar optical systems with a small width-to-radius ratio,we propose a detection method combining local interferometry with a comparison model.This method enhances the precision of system calibration by establishing a dataset that delineates the relationship between secondary mirror misalignment and wavefront aberration,subsequently inferring the misalignment from interferometric detection results during the calibration process.For the 2-m ring telescope,we develop a detection model using five local sub-apertures,enabling a root-mean-square detection accuracy of 0:0225λ(λ=632:8 nm)for full-aperture wavefront aberration.The calibration results for the 2-m Ring Solar Telescope system indicate that the root-mean-square value of sub-aperture wavefront aberration reaches 0.104λ,and the root-mean-square value of spliced full-aperture measurement yields reaches 0.112λ.This method offers a novel approach for calibrating small width-toradius ratio telescope systems and can be applied to the calibration of other irregular-aperture optical systems. 展开更多
关键词 Local aperture model comparison 2-m Ring Solar Telescope System calibration Splicing algorithm
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基于随机森林算法的2型糖尿病共病病人焦虑和抑郁影响因素研究
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作者 邵梦瑶 潘欣欣 +1 位作者 陆敏 王艳梅 《护理研究》 北大核心 2026年第2期185-192,共8页
目的:基于随机森林算法探讨2型糖尿病(T2DM)共病病人的焦虑及抑郁现状,并分析其影响因素。方法:于2023年11月—2024年4月,采用便利抽样法选取上海市浦东新区某三级医院及3所社区医院的1652例T2DM共病病人作为研究对象。采用一般资料调... 目的:基于随机森林算法探讨2型糖尿病(T2DM)共病病人的焦虑及抑郁现状,并分析其影响因素。方法:于2023年11月—2024年4月,采用便利抽样法选取上海市浦东新区某三级医院及3所社区医院的1652例T2DM共病病人作为研究对象。采用一般资料调查表、广泛性焦虑障碍量表(GAD-7)、病人健康问卷抑郁症状群量表(PHQ-9)进行调查。采用随机森林算法筛选重要影响因素,采用Logistic回归分析探究T2DM共病病人发生焦虑、抑郁的影响因素。结果:1652例病人中,382例(23.1%)发生焦虑,565例(34.2%)发生抑郁。焦虑的影响因素为6个,重要性由高到低依次为婚姻状况、工作状态、年龄、合并症数量、糖尿病家族史、饮酒史。抑郁的影响因素为9个,重要性由高到低依次为年龄、糖尿病家族史、工作状态、受教育程度、婚姻状况、家庭月均收入、合并症数量、病程、体质指数(BMI)。Logistic回归分析结果显示,年龄、婚姻状况、工作状态、糖尿病家族史、合并症数量是T2DM共病病人发生焦虑及抑郁的共同影响因素(P<0.05);饮酒史是其发生焦虑的影响因素(P<0.05);BMI、受教育程度、家庭月均收入、病程是其发生抑郁的影响因素(P<0.05)。结论:T2DM共病病人焦虑及抑郁发生率均较高,其影响因素较多,医护人员应及早识别并实施针对性的干预措施,提高病人心理健康水平,改善病人结局。 展开更多
关键词 2型糖尿病 糖尿病共病 焦虑 抑郁 随机森林模型 LOGISTIC回归 影响因素
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Advances in thermo-hydro-mechanical-chemical modelling for CO_(2)geological storage and utilization
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作者 Nanlin Zhang Liangliang Jiang +8 位作者 Fushen Liu Yuhao Luo Lele Feng Yiwen Ju Allegra Hosford Scheirer Jiansheng Zhang Birol Dindoruk S.M.Farouq Ali Zhangxin Chen 《International Journal of Mining Science and Technology》 2025年第8期1379-1397,共19页
Geological storage and utilization of CO_(2)involve complex interactions among Thermo-hydromechanical-chemical(THMC)coupling processes,which significantly affect storage integrity and efficiency.To address the challen... Geological storage and utilization of CO_(2)involve complex interactions among Thermo-hydromechanical-chemical(THMC)coupling processes,which significantly affect storage integrity and efficiency.To address the challenges in accurately simulating these coupled phenomena,this paper systematically reviews recent advances in the mathematical modeling and numerical solution of THMC coupling in CO_(2)geological storage.The study focuses on the derivation and structure of governing and constitutive equations,the classification and comparative performance of fully coupled,iteratively coupled,and explicitly coupled solution methods,and the modeling of dynamic changes in porosity,permeability,and fracture evolution induced by multi-field interactions.Furthermore,the paper evaluates the capabilities,application scenarios,and limitations of major simulation platforms,including TOUGH,CMG-GEM,and COMSOL.By establishing a comparative framework integrating model formulations and solver strategies,this work clarifies the strengths and gaps of current approaches and contributes to the development of robust,scalable,and mechanism-oriented numerical models for long-term prediction of CO_(2)behavior in geological formations. 展开更多
关键词 CO_(2)capture Utilization and storage THMC coupling Numerical models Carbon-resilient world
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基于傅里叶神经算子的CO_(2)驱油藏数值模拟代理模型
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作者 杨泽鹏 廖新维 +2 位作者 董鹏 王晓晨 张铃丰 《大庆石油地质与开发》 北大核心 2026年第1期109-117,共9页
在CO_(2)驱油藏开发过程中明确储层压力、CO_(2)摩尔分数及含油饱和度的分布至关重要,利用数值模拟器求解CO_(2)驱组分模型的计算成本很高,在需要进行大量模拟运算的场景中尤为明显。基于傅里叶神经算子(FNO)建立油藏数值模拟代理模型,... 在CO_(2)驱油藏开发过程中明确储层压力、CO_(2)摩尔分数及含油饱和度的分布至关重要,利用数值模拟器求解CO_(2)驱组分模型的计算成本很高,在需要进行大量模拟运算的场景中尤为明显。基于傅里叶神经算子(FNO)建立油藏数值模拟代理模型,对二维非均质CO_(2)驱油藏压力分布、CO_(2)摩尔分数分布以及含油饱和度分布进行预测。结果表明:代理模型能够通过储层及注采参数准确预测不同时间步下各属性的场图分布,同时具有良好的泛化能力;训练后的代理模型计算效率相较于数值模拟器提高了3个数量级,在案例应用研究中能够快速准确地对CO_(2)驱油藏开发过程中的重要属性分布进行预测。研究成果可提高需要大量数值模拟运算工程问题的解决效率。 展开更多
关键词 傅里叶神经算子 油藏数值模拟 代理模型 CO_(2)驱 深度学习
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