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Risk factors for paternal perinatal depression in Chinese advanced maternal age couples:A regression mixture model
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作者 Xing Yin Juan Du +1 位作者 Shao-Lian Cai Xing-Qiang Chen 《World Journal of Psychiatry》 2026年第1期267-277,共11页
BACKGROUND Paternal perinatal depression(PPD)is closely associated with maternal mental health challenges,marital strain,and adverse child developmental outcomes.Despite its significant impact,PPD remains under-recogn... BACKGROUND Paternal perinatal depression(PPD)is closely associated with maternal mental health challenges,marital strain,and adverse child developmental outcomes.Despite its significant impact,PPD remains under-recognized in family-centered clinical practice.Concurrently,against the backdrop of rising rates of delayed marriage and China’s Maternity Incentive Policy,the proportion of women giving birth at an advanced maternal age is increasing.Nevertheless,research specifically examining PPD among spouses of older mothers remains critically scarce,both in China and globally.AIM To investigate PPD and its influencing factors in Chinese advanced maternal age families.METHODS This cross-sectional study included 358 participants;it was conducted among fathers of pregnant women of advanced maternal age at five hospitals in the Pearl River Delta region of China from September 2023 to June 2024.Data were collected via a general information questionnaire,the Social Support Rating Scale,and the Edinburgh Postnatal Depression Scale.Latent profile analysis and regression mixture models(RMMs)were adopted to analyze the latent PPD types and factors that influenced PPD.RESULTS The incidence of PPD was 16.48%,and three profiles were identified:Low-symptomatic(175 cases,48.89%),monophasic(140 cases,39.10%),and high-symptomatic(43 cases,12.01%).The RMM analysis revealed that first pregnancy,low income(<¥3000/month),part-time work,and a history of abnormal pregnancy were positively associated with the high-symptomatic type(P<0.05).Conversely,high subjective support and support utilization were negatively associated with the high-symptomatic type compared with the low-symptomatic type(P<0.05).Good couple relationships,high objective and subjective support,and high support utilization were negatively associated with monophasic disorder(P<0.05).CONCLUSION PPD incidence is high among Chinese fathers with advanced maternal age partners,and the characteristics of depression are varied.Healthcare practitioners should prioritize individuals with low levels of social support. 展开更多
关键词 Advanced maternal age Paternal perinatal depression Fathers’mental health regression mixture model Advanced-age pregnancy Latent profile analysis
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Analytical equations for thermal and electrical conductivity prediction in as-cast magnesium alloys:A symbolic regression approach
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作者 Junwei Chen Jun Luan +3 位作者 Shuai Jiang Zhigang Yu Yunying Fan Kuochih Chou 《Journal of Magnesium and Alloys》 2026年第1期490-504,共15页
The thermal and electrical conductivities of magnesium alloys are highly sensitive to composition and microstructure,with thermal conductivity varying by up to 20-fold across different as-cast alloy systems,making rap... The thermal and electrical conductivities of magnesium alloys are highly sensitive to composition and microstructure,with thermal conductivity varying by up to 20-fold across different as-cast alloy systems,making rapid and accurate prediction crucial for high-throughput screening and development of high-performance alloys.This study introduces a physics-informed symbolic regression approach that addresses the limitations of traditional methods,including the high computational cost of first-principles calculations and the poor interpretability of machine learning models.Comprehensive datasets comprising 1512 data points from 60 literature sources were analyzed,including thermal conductivity measurements from 52 alloy systems and electrical conductivity measurements from 36 systems.The derived symbolic regression model achieved Mean Absolute Percentage Errors(MAPEs)of 11.2%and 11.4%for thermal conductivity in low and high-component systems,respectively.When integrated with the Smith-Palmer equation,electrical conductivity predictions reached MAPEs of 15.6%and 16.4%.Independent validation on an entirely separate dataset of 554 data points from 53 additional literature sources,including 37 previously unseen alloy systems,confirmed model generalizability with MAPEs of 10.7%-15.2%.Shapley Additive Explanations(SHAP)analysis was employed to evaluate the relative importance of different features affecting conductivity,while equation decomposition quantified the contribution of individual functional terms.This methodology bridges data-driven prediction with mechanistic understanding,establishing a foundation for knowledge-based design of magnesium alloys with tailored transport properties. 展开更多
关键词 Electrical conductivity Interpretable modeling Magnesium alloys Symbolic regression Thermal conductivity
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基于Lasso-Logistic回归构建机器人辅助经皮椎弓根螺钉内固定术患者术中低体温的预测模型
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作者 李希颖 刘绍侠 刘颖 《机器人外科学杂志(中英文)》 2026年第1期85-92,共8页
目的:基于Lasso-Logistic回归构建机器人辅助经皮椎弓根螺钉内固定术(RPPSIF)患者术中低体温的预测模型。方法:选取2022年1月—2024年6月于首都医科大学附属北京同仁医院收治的234例RPPSIF患者。采用Lasso-Logistic回归分析患者术中低... 目的:基于Lasso-Logistic回归构建机器人辅助经皮椎弓根螺钉内固定术(RPPSIF)患者术中低体温的预测模型。方法:选取2022年1月—2024年6月于首都医科大学附属北京同仁医院收治的234例RPPSIF患者。采用Lasso-Logistic回归分析患者术中低体温的影响因素,构建列线图预测模型。结果:根据患者是否发生术中低体温分为发生组(91例)和未发生组(143例)。Lasso-Logistic回归分析显示,年龄≥70岁、BMI<24 kg/m^(2)、手术时间>2 h、术中失血量>150 mL、手术室温度≤24℃、术中输注液体量>2000 mL、术中冲洗液用量>1000 mL、未采取术中保温措施、麻醉时间>2 h、医护人员存在不良操作是RPPSIF患者术中低体温的独立危险因素。ROC曲线AUC值为0.862(95%CI:0.832~0.893),敏感度为77.73%,特异度为81.97%。结论:RPPSIF患者术中低体温的危险因素较多,应用Lasso-Logistic回归方法构建的预测模型具有显著的临床应用价值。 展开更多
关键词 lasso-logistic回归模型 机器人辅助经皮椎弓根螺钉固定术 低体温 预测模型
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A Unified Feature Selection Framework Combining Mutual Information and Regression Optimization for Multi-Label Learning
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作者 Hyunki Lim 《Computers, Materials & Continua》 2026年第4期1262-1281,共20页
High-dimensional data causes difficulties in machine learning due to high time consumption and large memory requirements.In particular,in amulti-label environment,higher complexity is required asmuch as the number of ... High-dimensional data causes difficulties in machine learning due to high time consumption and large memory requirements.In particular,in amulti-label environment,higher complexity is required asmuch as the number of labels.Moreover,an optimization problem that fully considers all dependencies between features and labels is difficult to solve.In this study,we propose a novel regression-basedmulti-label feature selectionmethod that integrates mutual information to better exploit the underlying data structure.By incorporating mutual information into the regression formulation,the model captures not only linear relationships but also complex non-linear dependencies.The proposed objective function simultaneously considers three types of relationships:(1)feature redundancy,(2)featurelabel relevance,and(3)inter-label dependency.These three quantities are computed usingmutual information,allowing the proposed formulation to capture nonlinear dependencies among variables.These three types of relationships are key factors in multi-label feature selection,and our method expresses them within a unified formulation,enabling efficient optimization while simultaneously accounting for all of them.To efficiently solve the proposed optimization problem under non-negativity constraints,we develop a gradient-based optimization algorithm with fast convergence.Theexperimental results on sevenmulti-label datasets show that the proposed method outperforms existingmulti-label feature selection techniques. 展开更多
关键词 feature selection multi-label learning regression model optimization mutual information
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基于LASSO-logistic回归构建腹腔镜睾丸下降固定术后睾丸萎缩的预测模型并验证
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作者 杨斌 刘彩霞 +5 位作者 王会瑟 赵子健 王祎 张欢雲 祝红变 高浩洋 《广东医学》 2026年第1期122-128,共7页
目的探究与睾丸萎缩发生相关的影响因素,基于LASSO-logistic回归构建腹腔镜睾丸下降固定术后睾丸萎缩的预测模型,并对其进行验证。方法选取2020年6月至2024年6月于首都医科大学附属北京儿童医院保定医院收治的行腹腔镜睾丸下降固定术的... 目的探究与睾丸萎缩发生相关的影响因素,基于LASSO-logistic回归构建腹腔镜睾丸下降固定术后睾丸萎缩的预测模型,并对其进行验证。方法选取2020年6月至2024年6月于首都医科大学附属北京儿童医院保定医院收治的行腹腔镜睾丸下降固定术的术后患儿457例为研究对象,建模组320例,验模组137例,建模组均根据是否发生睾丸萎缩分为发生组(n=49)和未发生组(n=271)。收集患者临床资料。采用最小绝对收缩和选择算子(LASSO)进行数据降维、变量筛选,logistic回归方程分析腹腔镜睾丸下降固定术后睾丸萎缩的影响因素,构建列线图模型并验证其临床效能。结果LASSO-logistic回归显示年龄、睾丸位置、术前睾丸体积比、合并畸形、胎龄、睾丸血运是患儿术后发生睾丸萎缩的独立因素。受试者工作(receiver operating characteristic,ROC)曲线分析结果显示,建模组曲线下面积(AUC)=0.920(95%CI:0.882~0.959),验证组AUC=0.941(95%CI:0.895~0.986);校准曲线分析结果显示,建模组C-index为0.920(95%CI:0.881~0.959),验证组C-index为0.909(95%CI:0.851~0.966);建模组中H-L拟合优度检验为χ^(2)=8.436,P=0.392;验证组中H-L拟合优度检验为χ^(2)=2.995,P=0.935,表明该模型具有较好的校准能力。建模组决策曲线分析(decision curve analysis,DCA)结果显示,利用该模型对接受腹腔镜睾丸下降固定手术的患儿是否会发生睾丸萎缩进行预测可获得较高的正向净收益。结论年龄、睾丸位置、术前睾丸体积比、合并畸形、胎龄、睾丸血运是患儿术后发生睾丸萎缩的独立因素,据此构建的列线图模型预测效能较好,有助于指导临床诊治。 展开更多
关键词 lasso-logistic回归 腹腔镜 睾丸下降固定术 睾丸萎缩 预测模型
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基于LASSO-logistic回归模型构建脓毒症相关性脑病的风险预测模型
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作者 王琦 马宏炜 +3 位作者 刘皓 范仲敏 李婧 张西京 《解放军医学杂志》 北大核心 2026年第1期38-48,共11页
目的采用LASSO-logistic回归及递归特征消除(RFE)等方法筛选脓毒症相关性脑病(SAE)发生的危险因素,构建相应的临床预测模型并予以验证。方法纳入来自公开、去标识化重症监护医学数据库(MIMIC-Ⅳ,v2.2)的6258例脓毒症患者进行回顾性分析... 目的采用LASSO-logistic回归及递归特征消除(RFE)等方法筛选脓毒症相关性脑病(SAE)发生的危险因素,构建相应的临床预测模型并予以验证。方法纳入来自公开、去标识化重症监护医学数据库(MIMIC-Ⅳ,v2.2)的6258例脓毒症患者进行回顾性分析。根据在ICU期间是否发生SAE,患者被分为SAE组(n=3196)与非SAE组(n=3062),对这两组患者的临床基线资料进行比较。然后,将所有患者按7:3比例随机划分为训练集(n=4380)与内部验证集(n=1878)。在训练集内部采用多阶段变量筛选策略:先通过LASSO回归结合单因素logistic回归(P<0.05)进行特征初筛,再应用RFE和Spearman相关性分析(|r|<0.5)进一步精炼变量,最终利用多因素logistic回归构建预测模型。采用列线图实现模型的可视化。在独立的内部验证集上对模型性能进行综合评价:通过受试者操作特征(ROC)曲线下面积(AUC)评估其区分度,通过校准曲线评估其校准度,并采用决策曲线分析(DCA)评估其临床净收益。最后,利用EICU数据库中的13330例脓毒症患者组成的外部验证队列进行验证。结果经过多阶段筛选(包括单因素分析、LASSO、RFE和Spearman相关性分析),最终纳入预测模型的危险因素有连续性肾脏替代治疗(CRRT)、急性肾损伤(AKI)、机械通气、血氧饱和度(SpO_(2))、全身炎症反应综合征(SIRS)评分、血钠浓度、肾脏疾病、收缩压、恶性肿瘤、体温、血小板计数、年龄、截瘫、血钾浓度及周围血管疾病共15个变量。LASSO-Logistic回归模型公式为:logit(P)=-6.533+1.807×CRRT+0.824×AKI+0.697×机械通气+0.024×SpO_(2)+0.243×SIRS评分+0.036×血钠-0.476×肾脏疾病+0.003×收缩压-0.298×恶性肿瘤-0.108×体温+0.001×血小板计数+0.002×年龄+0.766×截瘫+0.200×血钾+0.238×周围血管疾病;P=1/(1+e^((-logit(P))))。该LASSO-logistic回归预测模型在训练集中展现出良好的区分度,其AUC为0.701(95%CI 0.685~0.716);列线图实现了该模型的可视化,在内部验证集上AUC为0.693(95%CI0.671~0.716)。校准曲线显示模型具有良好的校准度。DCA分析显示,当阈值概率覆盖一个广泛的范围(0~50%)时,该模型均能提供显著的临床净收益。在EICU外部验证队列中,模型AUC为0.674(95%CI 0.664~0.684),具有良好的泛化能力与一定的跨中心适用性。结论CRRT、AKI、机械通气、SpO_(2)、SIRS评分、血钠浓度、肾脏疾病、收缩压、恶性肿瘤、体温、血小板计数、年龄、截瘫、血钾浓度及周围血管疾病为SAE发生的危险因素。以此构建的预测模型具有良好的区分度及校准度,可为临床医师提供可靠的诊治依据。 展开更多
关键词 脓毒症相关性脑病 脓毒症 预测模型 LASSO回归 列线图
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Temperature error compensation method for fiber optic gyroscope based on a composite model of k-means,support vector regression and particle swarm optimization 被引量:1
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作者 CAO Yin LI Lijing LIANG Sheng 《Journal of Systems Engineering and Electronics》 2025年第2期510-522,共13页
As the core component of inertial navigation systems, fiber optic gyroscope (FOG), with technical advantages such as low power consumption, long lifespan, fast startup speed, and flexible structural design, are widely... As the core component of inertial navigation systems, fiber optic gyroscope (FOG), with technical advantages such as low power consumption, long lifespan, fast startup speed, and flexible structural design, are widely used in aerospace, unmanned driving, and other fields. However, due to the temper-ature sensitivity of optical devices, the influence of environmen-tal temperature causes errors in FOG, thereby greatly limiting their output accuracy. This work researches on machine-learn-ing based temperature error compensation techniques for FOG. Specifically, it focuses on compensating for the bias errors gen-erated in the fiber ring due to the Shupe effect. This work pro-poses a composite model based on k-means clustering, sup-port vector regression, and particle swarm optimization algo-rithms. And it significantly reduced redundancy within the sam-ples by adopting the interval sequence sample. Moreover, met-rics such as root mean square error (RMSE), mean absolute error (MAE), bias stability, and Allan variance, are selected to evaluate the model’s performance and compensation effective-ness. This work effectively enhances the consistency between data and models across different temperature ranges and tem-perature gradients, improving the bias stability of the FOG from 0.022 °/h to 0.006 °/h. Compared to the existing methods utiliz-ing a single machine learning model, the proposed method increases the bias stability of the compensated FOG from 57.11% to 71.98%, and enhances the suppression of rate ramp noise coefficient from 2.29% to 14.83%. This work improves the accuracy of FOG after compensation, providing theoretical guid-ance and technical references for sensors error compensation work in other fields. 展开更多
关键词 fiber optic gyroscope(FOG) temperature error com-pensation composite model machine learning CLUSTERING regression.
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基于LASSO-logistic回归构建维持性血液透析患者睡眠障碍风险预测模型
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作者 汪晶晶 江茜茜 +1 位作者 高炬 周叶苹 《临床荟萃》 2026年第2期148-154,共7页
目的探讨维持性血液透析(maintenance hemodialysis,MHD)患者睡眠障碍的危险因素,并构建风险预测模型,为临床早期识别高危人群提供参考。方法纳入2024年6月-2025年6月在常州市肿瘤医院接受MHD治疗的患者222例,收集其人口学特征、临床资... 目的探讨维持性血液透析(maintenance hemodialysis,MHD)患者睡眠障碍的危险因素,并构建风险预测模型,为临床早期识别高危人群提供参考。方法纳入2024年6月-2025年6月在常州市肿瘤医院接受MHD治疗的患者222例,收集其人口学特征、临床资料及实验室指标。采用匹兹堡睡眠质量指数(PSQI)评估近期睡眠状况,以PSQI≥7判定存在睡眠障碍。采用最小绝对收缩与选择算子(LASSO)回归进行变量压缩与筛选,将进入模型的变量纳入多因素logistic回归分析,构建列线图预测模型。通过受试者工作特征(ROC)曲线、C指数(C-index)、Bootstrap内部验证、校准曲线及决策曲线分析(DCA)综合评价模型的区分度、校准度及临床净获益。结果MHD患者睡眠障碍发生率为56.31%(125/222)。LASSO-logistic回归结果显示,年龄、透析病程、焦虑、抑郁、尿毒症瘙痒及不安腿综合征为睡眠障碍的独立危险因素,而血钙水平为保护因素(P值均<0.05)。基于上述因素构建的列线图预测模型ROC曲线下面积为0.928(95%CI:0.894~0.962),校准曲线显示模型预测值与实际观察值拟合良好,Hosmer-Lemeshow检验(χ^(2)=4.14,P=0.844)提示模型具有较好的校准性能。DCA显示,在阈值概率0.05~0.75范围内,该模型均可获得较高的临床净获益。结论基于年龄、透析病程、焦虑、抑郁、尿毒症瘙痒、不安腿综合征及血钙水平构建的列线图预测模型可较好预测MHD患者睡眠障碍风险,有助于实现高危人群的早期识别与干预,为临床精细化管理提供参考依据。 展开更多
关键词 睡眠觉醒障碍 维持性血液透析 LASSO回归 LOGISTIC回归 列线图 风险预测模型
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基于Lasso-Logistic回归分析全子宫切除术后盆底功能障碍的危险因素并构建nomogram预测模型
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作者 宋晓翠 李硕 李倩 《东南大学学报(医学版)》 2026年第1期60-68,共9页
目的:基于Lasso-Logistic回归分析全子宫切除术后盆底功能障碍(PFD)的危险因素,并构建nomogram预测模型。方法:将本院2023年8月至2024年12月收治的行全子宫切除术的310例患者随机分为建模组(n=217)和验证组(n=93),根据术后6个月内PFD发... 目的:基于Lasso-Logistic回归分析全子宫切除术后盆底功能障碍(PFD)的危险因素,并构建nomogram预测模型。方法:将本院2023年8月至2024年12月收治的行全子宫切除术的310例患者随机分为建模组(n=217)和验证组(n=93),根据术后6个月内PFD发生情况将建模组患者分为非PFD组和PFD组。术后PFD的影响因素通过Lasso-Logistic回归分析筛选;nomogram模型的预测效能通过受试者工作特征(ROC)曲线及校准曲线评估,临床应用价值通过决策曲线分析(DCA)评估。结果:310例患者全子宫切除术后PFD发生率为26.77%。建模组非PFD组与PFD组在年龄、体质量指数(BMI)、产次、经阴道分娩次数、术后短期并发症发生情况、术后盆底功能训练情况及术后是否早期负重方面差异均有统计学意义(P<0.05)。Lasso-Logistic回归分析表明,年龄升高(OR=1.200,95%CI:1.110~1.297)和BMI升高(OR=1.479,95%CI:1.215~1.800)、产次>2次(OR=3.502,95%CI:1.506~8.144)、术后发生短期并发症(OR=4.553,95%CI:1.896~10.936)及术后未有效进行盆底功能训练(OR=5.770,95%CI:2.447~13.606)为全子宫切除术后PFD的危险因素(P<0.05)。nomogram模型显示,模型总得分越高,术后PFD发生风险越高。ROC分析显示,建模组、验证组的AUC分别为0.853(95%CI:0.801~0.904)、0.850(95%CI:0.763~0.938),且校准曲线提示模型的预测一致性较高。DCA曲线显示,模型的模型具有较高的临床实用性。结论:全子宫切除术后PFD的发生与年龄、BMI、产次、术后有无短期并发症及术后是否有效进行盆底功能训练密切相关,基于这几个因素构建的nomogram模型具有较高的预测效能及临床应用价值。 展开更多
关键词 全子宫切除术 盆底功能障碍 lasso-logistic回归 影响因素 nomogram模型
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Subgroup Analysis of a Single-Index Threshold Penalty Quantile Regression Model Based on Variable Selection
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作者 QI Hui XUE Yaxin 《Wuhan University Journal of Natural Sciences》 2025年第2期169-183,共15页
In clinical research,subgroup analysis can help identify patient groups that respond better or worse to specific treatments,improve therapeutic effect and safety,and is of great significance in precision medicine.This... In clinical research,subgroup analysis can help identify patient groups that respond better or worse to specific treatments,improve therapeutic effect and safety,and is of great significance in precision medicine.This article considers subgroup analysis methods for longitudinal data containing multiple covariates and biomarkers.We divide subgroups based on whether a linear combination of these biomarkers exceeds a predetermined threshold,and assess the heterogeneity of treatment effects across subgroups using the interaction between subgroups and exposure variables.Quantile regression is used to better characterize the global distribution of the response variable and sparsity penalties are imposed to achieve variable selection of covariates and biomarkers.The effectiveness of our proposed methodology for both variable selection and parameter estimation is verified through random simulations.Finally,we demonstrate the application of this method by analyzing data from the PA.3 trial,further illustrating the practicality of the method proposed in this paper. 展开更多
关键词 longitudinal data subgroup analysis threshold model quantile regression variable selection
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Assessing Ecological Impacts of Urban Land Valuation:AI and Regression Models for Sustainable Land Management
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作者 Yana Volkova Elena Bykowa +9 位作者 Oksana Pirogova Sergey Barykin Dmitriy Rodionov Ilya Sonts Angela Mottaeva Alexey Mikhaylov Dmitry Morkovkin N.B.A.Yousif Tomonobu Senjyu Farooq Ahmed Shah 《Research in Ecology》 2025年第2期192-208,共17页
The results of mass appraisal in many countries are used as a basis for calculating the amount of real estate tax,therefore,regardless of the methods used to calculate it,the resulting value should be as close as poss... The results of mass appraisal in many countries are used as a basis for calculating the amount of real estate tax,therefore,regardless of the methods used to calculate it,the resulting value should be as close as possible to the market value of the real estate to maintain a balance of interests between the state and the rights holders.In practice,this condition is not always met,since,firstly,the quality of market data is often very low,and secondly,some markets are characterized by low activity,which is expressed in a deficit of information on asking prices.The aim of the work is ecological valuation of land use:how regression-based mass appraisal can inform ecological conservation,land degradation,and sustainable land management.Four multiple regression models were constructed for AI generated map of land plots for recreational use in St.Petersburg(Russia)with different volumes of market information(32,30,20 and 15 units of market information with four price-forming factors).During the analysis of the quality of the models,it was revealed that the best result is shown by the model built on the maximum sample size,then the model based on 15 analogs,which proves that a larger number of analog objects does not always allow us to achieve better results,since the more analog objects there are. 展开更多
关键词 Land Use Sustainability Ecological Valuation regression modeling AI in Ecology Landscape Conservation
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Logistic regression-based risk prediction of aortic adverse remodeling following thoracic endovascular aortic repair in patients with aortic dissection
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作者 Lian-Feng Wang Hong-Jiang Zhu +2 位作者 Cong Wang Feng Yan Chang-Zhen Qu 《World Journal of Cardiology》 2025年第12期94-102,共9页
BACKGROUND Aortic adverse remodeling remains a critical complication following thoracic endovascular aortic repair(TEVAR)for Stanford type B aortic dissection(TBAD),significantly impacting long-term survival.Accurate ... BACKGROUND Aortic adverse remodeling remains a critical complication following thoracic endovascular aortic repair(TEVAR)for Stanford type B aortic dissection(TBAD),significantly impacting long-term survival.Accurate risk prediction is essential for optimized clinical management.AIM To develop and validate a logistic regression-based risk prediction model for aortic adverse remodeling following TEVAR in patients with TBAD.METHODS This retrospective observational cohort study analyzed 140 TBAD patients undergoing TEVAR at a tertiary center(2019–2024).Based on European guidelines,patients were categorized into adverse remodeling(aortic growth rate>2.9 mm/year,n=45)and favorable remodeling groups(n=95).Comprehensive variables(clinical/imaging/surgical)were analyzed using multivariable logistic regression to develop a predictive model.Model performance was assessed via receiver operating characteristic-area under the curve(AUC)and Hosmer-Lemeshow tests.RESULTS Multivariable analysis identified several strong independent predictors of negative aortic remodeling.Larger false lumen diameter at the primary entry tear[odds ratio(OR):1.561,95%CI:1.197–2.035;P=0.001]and patency of the false lumen(OR:5.639,95%CI:4.372-8.181;P=0.004)were significant risk factors.False lumen involvement extending to the thoracoabdominal aorta was identified as the strongest predictor,significantly increasing the risk of adverse remodeling(OR:11.751,95%CI:9.841-15.612;P=0.001).Conversely,false lumen involvement confined to the thoracic aorta demonstrated a significant protective effect(OR:0.925,95%CI:0.614–0.831;P=0.015).The prediction model exhibited excellent discrimination(AUC=0.968)and calibration(Hosmer-Lemeshow P=0.824).CONCLUSION This validated risk prediction model identifies aortic adverse remodeling with high accuracy using routinely available clinical parameters.False lumen involvement thoracoabdominal aorta is the strongest predictor(11.751-fold increased risk).The tool enables preoperative risk stratification to guide tailored TEVAR strategies and improve long-term outcomes. 展开更多
关键词 Thoracic endovascular aortic repair Aortic dissection Adverse remodeling Risk prediction model False lumen Thoracoabdominal involvement Endovascular repair Logistic regression
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Stability analysis of distributed Kalman filtering algorithm for stochastic regression model
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作者 Siyu Xie Die Gan Zhixin Liu 《Control Theory and Technology》 2025年第2期161-175,共15页
The work proposes a distributed Kalman filtering(KF)algorithm to track a time-varying unknown signal process for a stochastic regression model over network systems in a cooperative way.We provide the stability analysi... The work proposes a distributed Kalman filtering(KF)algorithm to track a time-varying unknown signal process for a stochastic regression model over network systems in a cooperative way.We provide the stability analysis of the proposed distributed KF algorithm without independent and stationary signal assumptions,which implies that the theoretical results are able to be applied to stochastic feedback systems.Note that the main difficulty of stability analysis lies in analyzing the properties of the product of non-independent and non-stationary random matrices involved in the error equation.We employ analysis techniques such as stochastic Lyapunov function,stability theory of stochastic systems,and algebraic graph theory to deal with the above issue.The stochastic spatio-temporal cooperative information condition shows the cooperative property of multiple sensors that even though any local sensor cannot track the time-varying unknown signal,the distributed KF algorithm can be utilized to finish the filtering task in a cooperative way.At last,we illustrate the property of the proposed distributed KF algorithm by a simulation example. 展开更多
关键词 Distributed Kalman filtering algorithm Stochastic cooperative information condition Sensor networks (L_(p))-exponential stability Stochastic regression model
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Genetic Regression Model for Dam Safety Monitoring 被引量:2
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作者 马震岳 陈维江 董毓新 《Transactions of Tianjin University》 EI CAS 2002年第3期196-199,共4页
Under-fitting problems usually occur in regression models for dam safety monitoring.To overcome the local convergence of the regression, a genetic algorithm (GA) was proposed using a real parameter coding, a ranking s... Under-fitting problems usually occur in regression models for dam safety monitoring.To overcome the local convergence of the regression, a genetic algorithm (GA) was proposed using a real parameter coding, a ranking selection operator, an arithmetical crossover operator and a uniform mutation operator, and calculated the least-square error of the observed and computed values as its fitness function. The elitist strategy was used to improve the speed of the convergence. After that, the modified genetic algorithm was applied to reassess the coefficients of the regression model and a genetic regression model was set up. As an example, a slotted gravity dam in the Northeast of China was introduced. The computational results show that the genetic regression model can solve the under-fitting problems perfectly. 展开更多
关键词 dam safety monitoring under-fitting genetic regression model
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RBF neural network regression model based on fuzzy observations 被引量:2
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作者 朱红霞 沈炯 苏志刚 《Journal of Southeast University(English Edition)》 EI CAS 2013年第4期400-406,共7页
A fuzzy observations-based radial basis function neural network (FORBFNN) is presented for modeling nonlinear systems in which the observations of response are imprecise but can be represented as fuzzy membership fu... A fuzzy observations-based radial basis function neural network (FORBFNN) is presented for modeling nonlinear systems in which the observations of response are imprecise but can be represented as fuzzy membership functions. In the FORBFNN model, the weight coefficients of nodes in the hidden layer are identified by using the fuzzy expectation-maximization ( EM ) algorithm, whereas the optimal number of these nodes as well as the centers and widths of radial basis functions are automatically constructed by using a data-driven method. Namely, the method starts with an initial node, and then a new node is added in a hidden layer according to some rules. This procedure is not terminated until the model meets the preset requirements. The method considers both the accuracy and complexity of the model. Numerical simulation results show that the modeling method is effective, and the established model has high prediction accuracy. 展开更多
关键词 radial basis function neural network (RBFNN) fuzzy membership function imprecise observation regression model
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基于LASSO-Logistic回归的儿童重症腺病毒肺炎死亡的临床预警模型构建与验证 被引量:2
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作者 段晴晴 李双双 赵婷 《中国急救复苏与灾害医学杂志》 2025年第5期650-653,666,共5页
目的构建基于LASSO-Logistic回归的儿童重症腺病毒肺炎(SAP)死亡的临床预警模型,并进行验证。方法选取2021年5月—2023年4月商洛市中心医院儿科收治的115例SAP患儿,以二八定律随机分为训练集(n=92)与验证集(n=23),随访至患儿出院,以患... 目的构建基于LASSO-Logistic回归的儿童重症腺病毒肺炎(SAP)死亡的临床预警模型,并进行验证。方法选取2021年5月—2023年4月商洛市中心医院儿科收治的115例SAP患儿,以二八定律随机分为训练集(n=92)与验证集(n=23),随访至患儿出院,以患儿预后将其分为存活组与死亡组。对比训练集死亡组与存活组的临床资料,采用LASSO回归法筛选预测变量,构建并验证SAP患儿死亡的预测模型。结果随访至出院,训练集92例患儿中病死率为32.61%(30/92),验证集23例患儿中病死率为30.43%(7/23)。训练集死亡组入儿童重症监护室(PICU)后发热时间长于存活组(t=7.953,P<0.05),训练集死亡组合并先天性心脏病、并发急性呼吸窘迫综合征(ARDS)、白细胞介素-6(IL-6)≥100 ng/L、氧合指数<300 mm/Hg、乳酸脱氢酶(LDH)≥1500 U/L、铁蛋白≥1000μg/L、肺叶受累个数≥5个、有严重肺外并发症比例高于存活组(均P<0.05)。根据LASSO回归法筛选的4个结果变量与预测变量构建Logistic回归模型,结果表明,严重肺外并发症、IL-6、并发ARDS、合并先天性心脏病为SAP患儿死亡的危险因素(均P<0.05)。训练集列线图模型预测SAP患儿死亡的灵敏度为86.67%(95%CI:0.683~0.956),特异度为93.55%(95%CI:0.835~0.979),曲线下面积(AUC)为0.904(95%CI:0.837~0.968);验证集列线图模型预测SAP患儿死亡的灵敏度为85.71%(95%CI:0.420~0.992),特异度为87.50%(95%CI:0.604~0.978),AUC为0.887(95%CI:0.812~0.943)。结论IL-6、合并先天性心脏病、严重肺外并发症、并发ARDS与SAP患儿死亡有关,基于上述指标构建列线图预测模型有助于早期甄别SAP患儿死亡风险。 展开更多
关键词 重症腺病毒肺炎 LASSO回归 LOGISTIC回归 儿童 死亡 预测模型
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基于LASSO-Logistic回归分析构建风险列线图模型评估妊娠糖尿病孕妇早期肾损伤的风险
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作者 高海燕 王国华 《中国妇产科临床杂志》 北大核心 2025年第3期235-238,共4页
目的基于LASSO-logistic回归分析构建妊娠糖尿病(GDM)孕妇早期肾损伤风险列线图模型,并评估该列线图模型预测效能。方法对2022年1月至2023年12月于连云港市第一人民医院产检并在孕24周筛查出的125例GDM孕妇进行病例对照研究。依据是否... 目的基于LASSO-logistic回归分析构建妊娠糖尿病(GDM)孕妇早期肾损伤风险列线图模型,并评估该列线图模型预测效能。方法对2022年1月至2023年12月于连云港市第一人民医院产检并在孕24周筛查出的125例GDM孕妇进行病例对照研究。依据是否并发早期肾损伤分为发生组和未发生组,并从医院电子病例系统调取入组孕妇临床资料。LASSO-Logistic回归分析法筛选影响GDM孕妇早期肾损伤发生危险因素,据此建立列线图模型,并评估列线图模型的预测效能。结果发生组伴高血压疾病比例、尿微量白蛋白/尿肌酐及同型半胱氨酸、血尿酸、血肌酐、胱抑素C水平均高于未发生组,差异有统计学意义(P<0.05)。LASSO-Logistic回归分析结果显示,有高血压疾病(OR=1.722)、尿微量白蛋白/尿肌酐(OR=1.899)、同型半胱氨酸(OR=1.774)、血尿酸(OR=1.790)、血肌酐(OR=1.794)、胱抑素C(OR=1.824)是影响GDM孕妇并发早期肾损伤的独立危险因素(P<0.05)。基于上述危险因素构建GDM孕妇并发早期肾损伤风险列线图模型,结果显示:列线图模型实测值与预测值基本一致(χ^(2)=1.751,P=0.284),C-index指数为0.895(95%CI:0.825~0.972),具有临床有效性。结论基于LASSO-Logistic回归分析筛选出影响GDM孕妇并发早期肾损伤的危险因素(高血压、尿微量白蛋白/尿肌酐、同型半胱氨酸、血尿酸、血肌酐、胱抑素C)构建的列线图模型预测效能较高,具有临床有效性。 展开更多
关键词 妊娠糖尿病 早期肾损伤 lasso-logistic回归分析 列线图模型
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Quality prediction of batch process using the global-local discriminant analysis based Gaussian process regression model
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作者 卢春红 顾晓峰 《Journal of Southeast University(English Edition)》 EI CAS 2015年第1期80-86,共7页
The conventional single model strategy may be ill- suited due to the multiplicity of operation phases and system uncertainty. A novel global-local discriminant analysis (GLDA) based Gaussian process regression (GPR... The conventional single model strategy may be ill- suited due to the multiplicity of operation phases and system uncertainty. A novel global-local discriminant analysis (GLDA) based Gaussian process regression (GPR) approach is developed for the quality prediction of nonlinear and multiphase batch processes. After the collected data is preprocessed through batchwise unfolding, the hidden Markov model (HMM) is applied to identify different operation phases. A GLDA algorithm is also presented to extract the appropriate process variables highly correlated with the quality variables, decreasing the complexity of modeling. Besides, the multiple local GPR models are built in the reduced- dimensional space for all the identified operation phases. Furthermore, the HMM-based state estimation is used to classify each measurement sample of a test batch into a corresponding phase with the maximal likelihood estimation. Therefore, the local GPR model with respect to specific phase is selected for online prediction. The effectiveness of the proposed prediction approach is demonstrated through the multiphase penicillin fermentation process. The comparison results show that the proposed GLDA-GPR approach is superior to the regular GPR model and the GPR based on HMM (HMM-GPR) model. 展开更多
关键词 quality prediction global-local discriminantanalysis Gaussian process regression hidden Markov model soft sensor
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Selection of the Linear Regression Model According to the Parameter Estimation 被引量:35
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作者 Sun Dao-de Department of Computer, Fuyang Teachers College, Anhui 236032,China 《Wuhan University Journal of Natural Sciences》 EI CAS 2000年第4期400-405,共6页
In this paper, based on the theory of parameter estimation, we give a selection method and, in a sense of a good character of the parameter estimation, we think that it is very reasonable. Moreover, we offer a calcula... In this paper, based on the theory of parameter estimation, we give a selection method and, in a sense of a good character of the parameter estimation, we think that it is very reasonable. Moreover, we offer a calculation method of selection statistic and an applied example. 展开更多
关键词 parameter estimation linear regression model selection criterion mean square error
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Multiple linear regression models of urban runoff pollutant load and event mean concentration considering rainfall variables 被引量:28
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作者 Marla C.Maniquiz Soyoung Lee Lee-Hyung Kim 《Journal of Environmental Sciences》 SCIE EI CAS CSCD 2010年第6期946-952,共7页
Rainfall is an important factor in estimating the event mean concentration (EMC) which is used to quantify the washed-off pollutant concentrations from non-point sources (NPSs). Pollutant loads could also be calcu... Rainfall is an important factor in estimating the event mean concentration (EMC) which is used to quantify the washed-off pollutant concentrations from non-point sources (NPSs). Pollutant loads could also be calculated using rainfall, catchment area and runoff coefficient. In this study, runoff quantity and quality data gathered from a 28-month monitoring conducted on the road and parking lot sites in Korea were evaluated using multiple linear regression (MLR) to develop equations for estimating pollutant loads and EMCs as a function of rainfall variables. The results revealed that total event rainfall and average rainfall intensity are possible predictors of pollutant loads. Overall, the models are indicators of the high uncertainties of NPSs; perhaps estimation of EMCs and loads could be accurately obtained by means of water quality sampling or a long term monitoring is needed to gather more data that can be used for the development of estimation models. 展开更多
关键词 event mean concentration (EMC) multiple linear regression model LOAD non-point sources RAINFALL urban runoff
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