Risk prediction model

风险预测模型
  • 文章类型: Journal Article
    本研究旨在开发一种综合动态列线图,包括N端原B型天然肽(NT-proBNP)和估算的肾小球滤过率(eGFR),用于预测HFmrEF患者全因死亡率的风险。
    790例HFmrEF患者被前瞻性纳入模型的发展队列。采用最小绝对收缩和选择算子(LASSO)回归和随机生存森林(RSF)来选择全因死亡率的预测因子。开发基于Cox比例风险模型的列线图,用于预测长期死亡率(1-,3-,和5年)在HFmrEF。使用Bootstrap进行内部验证,最终模型在338例连续成年患者的外部队列中得到验证.通过计算时间依赖性一致性指数(C指数)来评估辨别和预测性能,ROC曲线下面积(AUC),和校准曲线,通过决策曲线分析(DCA)评估临床价值。综合鉴别改善(IDI)和净重新分类改善(NRI)用于评估NT-proBNP和eGFR对列线图的贡献。最后,使用“Dynnom”包开发动态列线图。
    全因死亡率的最佳独立预测因子(APSELNH:A:血管紧张素转换酶抑制剂/血管紧张素受体阻滞剂/血管紧张素受体-脑啡肽抑制剂(ACEI/ARB/ARNI),P:经皮冠状动脉介入治疗/冠状动脉旁路移植术(PCI/CABG),S:行程,E:eGFR,L:lgNT-proBNP,N:NYHA,H:医疗保健)被纳入动态列线图。开发队列和验证队列的C指数分别为0.858和0.826,AUC超过0.8,具有良好的辨别力和预测能力。DCA曲线和校准曲线证明了临床适用性和列线图的良好一致性。NT-proBNP和eGFR为列线图提供了显著的净益处。
    在这项研究中,开发的动态APSELNH列线图用作可访问的,功能,和有效的临床决策支持计算器,为HFmrEF患者提供准确的预后评估。
    UNASSIGNED: This study aimed to develop an integrative dynamic nomogram, including N-terminal pro-B type natural peptide (NT-proBNP) and estimated glomerular filtration rate (eGFR), for predicting the risk of all-cause mortality in HFmrEF patients.
    UNASSIGNED: 790 HFmrEF patients were prospectively enrolled in the development cohort for the model. The least absolute shrinkage and selection operator (LASSO) regression and Random Survival Forest (RSF) were employed to select predictors for all-cause mortality. Develop a nomogram based on the Cox proportional hazard model for predicting long-term mortality (1-, 3-, and 5-year) in HFmrEF. Internal validation was conducted using Bootstrap, and the final model was validated in an external cohort of 338 consecutive adult patients. Discrimination and predictive performance were evaluated by calculating the time-dependent concordance index (C-index), area under the ROC curve (AUC), and calibration curve, with clinical value assessed via decision curve analysis (DCA). Integrated discrimination improvement (IDI) and net reclassification improvement (NRI) were used to assess the contributions of NT-proBNP and eGFR to the nomogram. Finally, develop a dynamic nomogram using the \"Dynnom\" package.
    UNASSIGNED: The optimal independent predictors for all-cause mortality (APSELNH: A: angiotensin-converting enzyme inhibitors/angiotensin receptor blockers/angiotensin receptor-neprilysin inhibitor (ACEI/ARB/ARNI), P: percutaneous coronary intervention/coronary artery bypass graft (PCI/CABG), S: stroke, E: eGFR, L: lg of NT-proBNP, N: NYHA, H: healthcare) were incorporated into the dynamic nomogram. The C-index in the development cohort and validation cohort were 0.858 and 0.826, respectively, with AUCs exceeding 0.8, indicating good discrimination and predictive ability. DCA curves and calibration curves demonstrated clinical applicability and good consistency of the nomogram. NT-proBNP and eGFR provided significant net benefits to the nomogram.
    UNASSIGNED: In this study, the dynamic APSELNH nomogram developed serves as an accessible, functional, and effective clinical decision support calculator, offering accurate prognostic assessment for patients with HFmrEF.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    创伤患者的预后高度依赖于早期医学诊断。通过构建列线图模型,不良后果的风险可以直观和单独地显示,这对医学诊断具有重要的临床意义。
    开发和评估可用于中国不同数据可用性设置的创伤不良结局患者预测模型。
    这是一项回顾性预后研究,使用2018年中国8家公立三甲医院的数据。将数据随机分为开发集和验证集。简单,开发了预测不良结局的改进和扩展模型,不良结局定义为院内死亡或ICU转移,和患者的临床特征,生命体征,诊断,和实验室测试值作为预测因子。模型的结果以列线图的形式呈现,并使用接受者工作特征曲线下面积(ROC-AUC)评估性能,精度-召回(PR)曲线(PR-AUC),Hosmer-Lemeshow拟合优度测试,校正曲线,和决策曲线分析(DCA)。
    我们的最终数据集包括18,629名患者(40.2%为女性,平均年龄52.3),其中1,089人(5.85%)导致不良后果。在外部验证集中,三个模型的ROC-AUC分别为0.872、0.881和0.903,PR-AUC分别为0.339、0.337和0.403。就校准曲线和DCA而言,模型也表现良好。
    这项预后研究发现,包括患者临床特征在内的三种预测模型和列线图,生命体征,诊断,和实验室检测值可以支持临床医生基于数据可用性更准确地识别在不同环境中存在不良结局风险的患者.
    UNASSIGNED: The prognosis of trauma patients is highly dependent on early medical diagnosis. By constructing a nomogram model, the risk of adverse outcomes can be displayed intuitively and individually, which has important clinical implications for medical diagnosis.
    UNASSIGNED: To develop and evaluate models for predicting patients with adverse outcomes of trauma that can be used in different data availability settings in China.
    UNASSIGNED: This was a retrospective prognostic study using data from 8 public tertiary hospitals in China from 2018. The data were randomly divided into a development set and a validation set. Simple, improved and extended models predicting adverse outcomes were developed, with adverse outcomes defined as in-hospital death or ICU transfer, and patient clinical characteristics, vital signs, diagnoses, and laboratory test values as predictors. The results of the models were presented in the form of nomograms, and performance was evaluated using area under the receiver operating characteristic curve (ROC-AUC), precision-recall (PR) curves (PR-AUC), Hosmer-Lemeshow goodness-of-fit test, calibration curve, and decision curve analysis (DCA).
    UNASSIGNED: Our final dataset consisted of 18,629 patients (40.2% female, mean age of 52.3), 1,089 (5.85%) of whom resulted in adverse outcomes. In the external validation set, three models achieved ROC-AUC of 0.872, 0.881, and 0.903, and a PR-AUC of 0.339, 0.337, and 0.403, respectively. In terms of the calibration curves and DCA, the models also performed well.
    UNASSIGNED: This prognostic study found that three prediction models and nomograms including the patient clinical characteristics, vital signs, diagnoses, and laboratory test values can support clinicians in more accurately identifying patients who are at risk of adverse outcomes in different settings based on data availability.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    非自杀自我伤害(NSSI)是一个重大的社会问题,尤其是在患有重度抑郁症(MDD)的青少年中。本研究旨在利用机器学习(ML)算法构建风险预测模型,如XGBoost和随机森林,确定针对青少年MDD的医疗保健专业人员的干预措施。
    这项研究调查了488名患有MDD的青少年。将青少年随机分为75%的训练集和25%的测试集,以证明风险预测模型的预测价值。利用XGBoost和随机森林算法构建预测模型。我们评估了受试者工作特征曲线下面积(AUC),灵敏度,特异性,准确度,召回,F两种模型的得分,用于比较两种模型的性能。
    有161名(33.00%)参与者患有NSSI。与没有NSSI相比,性别差异有统计学意义(P=0.035),年龄(P=0.036),抑郁症状(P=0.042),睡眠质量(P=0.030),功能失调的态度(P=0.048),儿童创伤(P=0.046),人际关系问题(P=0.047),精神病性(P)(P=0.049),神经质(N)(P=0.044),NSSI的惩罚和严厉(F2)(P=0.045)和过度干预和保护(M2)(P=0.047)。随机森林和XGBoost的AUC值分别为0.780和0.807。两种机器学习方法确定的前五名最重要的风险预测因子是功能失调的态度,童年创伤,抑郁症状,F2和M2。
    该研究证明了基于ML的预测模型对中国青少年MDD患者NSSI行为的适用性。该模型改善了工作的医疗保健专业人员对患有MDD的青少年NSSI的评估。这为与这些青少年合作的卫生保健专业人员的重点预防和干预提供了基础。
    UNASSIGNED: Non-suicidal self-injury (NSSI) is a significant social issue, especially among adolescents with major depressive disorder (MDD). This study aimed to construct a risk prediction model using machine learning (ML) algorithms, such as XGBoost and random forest, to identify interventions for healthcare professionals working with adolescents with MDD.
    UNASSIGNED: This study investigated 488 adolescents with MDD. Adolescents was randomly divided into 75% training set and 25% test set to testify the predictive value of risk prediction model. The prediction model was constructed using XGBoost and random forest algorithms. We evaluated the area under the receiver operating characteristic curve (AUC), sensitivity, specificity, accuracy, recall, F Score of the two models for comparing the performance of the two models.
    UNASSIGNED: There were 161 (33.00%) participants having NSSI. Compared without NSSI, there were statistically significant differences in gender (P=0.035), age (P=0.036), depressive symptoms (P=0.042), sleep quality (P=0.030), dysfunctional attitudes (P=0.048), childhood trauma (P=0.046), interpersonal problems (P=0.047), psychoticism (P) (P=0.049), neuroticism (N) (P=0.044), punishing and Severe (F2) (P=0.045) and Overly-intervening and Protecting (M2) (P=0.047) with NSSI. The AUC values for random forest and XGBoost were 0.780 and 0.807, respectively. The top five most important risk predictors identified by both machine learning methods were dysfunctional attitude, childhood trauma, depressive symptoms, F2 and M2.
    UNASSIGNED: The study demonstrates the suitability of prediction models for predicting NSSI behavior in Chinese adolescents with MDD based on ML. This model improves the assessment of NSSI in adolescents with MDD by health care professionals working. This provides a foundation for focused prevention and interventions by health care professionals working with these adolescents.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    中国大约有200万成人先天性心脏病患者,中度和重度患者的数量正在增加。然而,很少有研究调查导管插入后严重不良事件(SAE)的风险.这项研究的目的是确定与心导管插入相关的SAE的危险因素,并提供预测SAE的风险评分模型。
    回顾性收集2018年1月至2022年1月在武汉科技大学附属武汉亚洲心脏医院行心导管插入术的中重度成人先天性心脏病(ACHD)患者690例,随后分为建模组和验证组。对已识别的SAE危险因素进行了单变量分析,然后将显著因素纳入多因素logistic回归模型以筛选SAE的独立预测因子.受试者工作特性曲线(ROC)和Hosmer-Lemeshow试验用于评估模型的鉴别和校准,分别。
    符合纳入标准的690例导管插入手术中有69例(10.0%)发生SAE。建立的SAE风险计算公式为logit(p)=-6.1340.992×肺动脉高压(是)+1.459×疾病严重程度(严重)+2.324×手术类型(诊断和介入)+1.436×cTnI(≥0.028μg/L)+1.537×NT-proBNP(≥126.65pg/mL)。基于各预测因子效应大小的最终风险评分模型总分为0~7分,涉及肺动脉高压(1分),疾病严重程度(1分),程序类型(2分),cTnI(1分)和NT-proBNP(2分),得分大于3表示高风险。推导和验证队列的ROC曲线下面积的C统计量为0.840和0.911,分别。根据Hosmer-Lemeshow测试,模型组和验证组的p值分别为0.064和0.868.
    本研究建立的风险预测模型具有很高的辨别力和校准性,可为临床预测和评估中重度ACHD患者心导管术后SAE风险提供参考。
    UNASSIGNED: There are almost 2 million adult patients with congenital heart disease in China, and the number of moderate and severe patients is increasing. However, few studies have investigated the risk of serious adverse events (SAE) after catheterization among them. The aim of this study was to identify risk factors for SAE related to cardiac catheterization and to provide the risk scoring model for predicting SAE.
    UNASSIGNED: A total of 690 patients with moderate and severe adult patients with congenital heart disease (ACHD) who underwent cardiac catheterization in Wuhan Asian Heart Hospital Affiliated to Wuhan University of Science and Technology from January 2018 to January 2022 were retrospectively collected and subsequently divided into a modeling group and a verification group. A univariate analysis was performed on the identified SAE risk factors, and then significant factors were included in the multivariate logistic regression model to screen for independent predictors of SAE. The receiver operating characteristic curve (ROC) and the Hosmer-Lemeshow test were used to evaluate the discrimination and calibration of the model, respectively.
    UNASSIGNED: A SAE occurred in 69 (10.0%) of the 690 catheterization procedures meeting inclusion criteria. The established SAE risk calculation formula was logit(p) = -6.134 + 0.992 × pulmonary artery hypertension (yes) + 1.459 × disease severity (severe) + 2.324 × procedure type (diagnostic and interventional) + 1.436 × cTnI ( ≥ 0.028 μ g/L) + 1.537 × NT-proBNP ( ≥ 126.65 pg/mL). The total score of the final risk score model based on the effect size of each predictor was 0 to 7, involving pulmonary artery hypertension (1 point), disease severity (1 point), procedure type (2 points), cTnI (1 point) and NT-proBNP (2 points), and the score greater than 3 means high risk. The C-statistic of the area under the ROC curve was 0.840 and 0.911 for the derivation and validation cohorts, respectively. According to the Hosmer-Lemeshow test, the p values in the modeling group and the verification group were 0.064 and 0.868, respectively.
    UNASSIGNED: The risk prediction model developed in this study has high discrimination and calibration, which can provide reference for clinical prediction and evaluation of SAE risk after cardiac catheterization in patients with moderate and severe ACHD.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    目的:本研究的主要目的是综合住院患者压力性损伤的流行预测模型,目的是确定与住院患者压力损伤相关的常见预测因素。这项努力有可能为临床护士提供有价值的参考,为高风险患者提供有针对性的护理。
    背景:压力伤害(PI)是全世界经常发生的健康问题。关于已报告和发表的PI风险预测模型的研究越来越多。然而,模型的预测性能尚不清楚。
    方法:系统评价和荟萃分析:Cochrane图书馆,PubMed,Embase,CINAHL,WebofScience和中国数据库,包括CNKI(中国国家知识基础设施),万方数据库,维普数据库和CBM(中国生物医学)。
    方法:本系统评价是根据PRISMA的建议进行的。Cochrane图书馆的数据库,PubMed,Embase,CINAHL,WebofScience,和CNKI,Weipu数据库,搜索了2023年9月之前发表的所有研究的万方数据库和煤层气。我们纳入了队列研究,案例控制设计,报告风险模型的发展,并已在住院患者中进行外部和内部验证。两名研究人员根据纳入和排除标准选择了检索到的研究,并根据CHARMS清单严格评估研究质量。PRISMA指南用于报告系统评价和荟萃分析。
    结果:纳入了62项研究,其中包含99个压力伤害风险预测模型。据报道,32个预测模型的AUC(ROC曲线下面积)范围为.70至.99,而38个模型的验证AUC范围为.70至.98。性别(OR=1.41,CI:.99~1.31),年龄(WMD=8.81,CI:8.11~9.57),糖尿病(OR=1.64,CI:1.36~1.99),机械通气(OR=2.71,CI:2.05~3.57),住院时间(WMD=7.65,CI:7.24~8.05)是压力性损伤最常见的预测因素。
    结论:住院患者PIs风险预测模型研究具有较高的研究质量,风险预测模型也具有良好的预测性能。然而,一些纳入的研究缺乏内部或外部建模验证,影响了稳定性和可扩展性。老年人,ICU的男性患者,白蛋白,血细胞比容,低血红蛋白水平,糖尿病,机械通气和住院时间是住院患者压力性损伤的高危因素。在未来,建议临床护士,在实践中,选择性能较好的预测模型,根据实际情况识别高危患者,并针对高危因素提供护理,以预防疾病的发生。
    结论:风险预测模型是一种有效的工具,用于识别有发生PIs风险的患者。借助风险预测工具,护士可以识别高危患者和常见的预测因素,预测发展PI的可能性,然后提供具体的预防措施,以改善这些患者的预后。
    CRD42023445258。
    OBJECTIVE: The main aim of this study is to synthesize the prevalent predictive models for pressure injuries in hospitalized patients, with the goal of identifying common predictive factors linked to pressure injuries in hospitalized patients. This endeavour holds the potential to provide clinical nurses with a valuable reference for providing targeted care to high-risk patients.
    BACKGROUND: Pressure injuries (PIs) are a frequently occurring health problem throughout the world. There are mounting studies about risk prediction model of PIs reported and published. However, the prediction performance of the models is still unclear.
    METHODS: Systematic review and meta-analysis: The Cochrane Library, PubMed, Embase, CINAHL, Web of Science and Chinese databases including CNKI (China National Knowledge Infrastructure), Wanfang Database, Weipu Database and CBM (China Biology Medicine).
    METHODS: This systematic review was conducted following PRISMA recommendations. The databases of Cochrane Library, PubMed, Embase, CINAHL, Web of Science, and CNKI, Weipu Database, Wanfang Database and CBM were searched for all studies published before September 2023. We included studies with cohort, case-control designs, reporting the development of risk model and have been validated externally and internally among the hospitalized patients. Two researchers selected the retrieved studies according to the inclusion and exclusion criteria, and critically evaluated the quality of studies based on the CHARMS checklist. The PRISMA guideline was used to report the systematic review and meta-analysis.
    RESULTS: Sixty-two studies were included, which contained 99 pressure injuries risk prediction models. The AUC (area under ROC curve) of modelling in 32 prediction models were reported ranged from .70 to .99, while the AUC of verification in 38 models were reported ranged from .70 to .98. Gender (OR = 1.41, CI: .99 ~ 1.31), age (WMD = 8.81, CI: 8.11 ~ 9.57), diabetes mellitus (OR = 1.64, CI: 1.36 ~ 1.99), mechanical ventilation (OR = 2.71, CI: 2.05 ~ 3.57), length of hospital stay (WMD = 7.65, CI: 7.24 ~ 8.05) were the most common predictors of pressure injuries.
    CONCLUSIONS: Studies of PIs risk prediction model in hospitalized patients had high research quality, and the risk prediction models also had good predictive performance. However, some of the included studies lacked of internal or external validation in modelling, which affected the stability and extendibility. The aged, male patient in ICU, albumin, haematocrit, low haemoglobin level, diabetes, mechanical ventilation and length of stay in hospital were high-risk factors for pressure injuries in hospitalized patients. In the future, it is recommended that clinical nurses, in practice, select predictive models with better performance to identify high-risk patients based on the actual situation and provide care targeting the high-risk factors to prevent the occurrence of diseases.
    CONCLUSIONS: The risk prediction model is an effective tool for identifying patients at the risk of developing PIs. With the help of risk prediction tool, nurses can identify the high-risk patients and common predictive factors, predict the probability of developing PIs, then provide specific preventive measures to improve the outcomes of these patients.
    UNASSIGNED: CRD42023445258.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    目的:进行系统评价,以评估糖尿病视网膜病变(DR)风险预测模型中的药物暴露处理,进行网络荟萃分析以确定与DR相关的药物,并进行荟萃分析以确定哪些药物有助于增强模型性能.
    方法:系统评价和荟萃分析。
    方法:我们纳入了以药物暴露为预测因子的DR模型研究。我们搜索了EMBASE,MEDLINE和SCOPUS从成立到2023年12月。我们使用预测模型偏差风险评估工具和使用GRADE的确定性评估研究质量。我们进行了网络荟萃分析和荟萃分析,以估计优势比(OR)和合并的C统计量,分别,和95%置信区间(CI)(PROSPERO:CRD42022349764)。
    结果:在确定的5,653条记录中,我们纳入了678,837名1型或2型糖尿病参与者的28项研究,其中38,579(5.7%)有DR。共有19项、3项和7项研究处于高位,不清楚,低偏见风险,分别。模型中作为预测因子的药物包括:胰岛素(n=24),抗高血压药(n=5),口服抗糖尿病药(n=12),降脂药物(n=7),抗血小板(n=2)。药物暴露主要被建模为分类变量(n=23项研究)。两项研究将药物暴露作为时变协变量处理,和一个作为时间依赖的协变量。胰岛素与DR风险增加相关(OR=2.50;95%-CI:1.61-3.86)。包含胰岛素的模型(n=9)具有较高的合并C统计量(C统计量=0.84,CI:0.80-0.88),与将药物与胰岛素结合在一起的模型(n=9)相比(C统计量=0.79,CI:0.74-0.84),以及不包括胰岛素的模型(n=3)(C统计量=0.70,CI:0.64-0.75)。局限性包括在综述的研究中偏倚的高风险和显著的异质性。
    结论:这是评估DR预测模型中药物暴露处理的第一篇综述。药物暴露主要被建模为分类变量,胰岛素与改善模型性能相关。然而,由于药物处理欠佳,其他药物与模型性能之间的关联可能被忽视了。这篇综述对未来的DR预测模型提出了以下几点:1)评估药物暴露作为变量,2)使用时变方法,3)考虑药物方案细节。改善药物暴露处理可能会揭示能够显着增强预测模型预测能力的新变量。
    OBJECTIVE: To conduct a systematic review to assess drug exposure handling in diabetic retinopathy (DR) risk prediction models, a network-meta-analysis to identify drugs associated with DR and a meta-analysis to determine which drugs contributed to enhanced model performance.
    METHODS: Systematic review and meta-analysis.
    METHODS: We included studies presenting DR models incorporating drug exposure as a predictor. We searched EMBASE, MEDLINE, and SCOPUS from inception to December 2023. We evaluated the quality of studies using the Prediction model Risk of Bias Assessment Tool and certainty using GRADE. We conducted network meta-analysis and meta-analysis to estimate the odds ratio (OR) and pooled C-statistic, respectively, and 95% confidence intervals (CI) (PROSPERO: CRD42022349764).
    RESULTS: Of 5,653 records identified, we included 28 studies of 678,837 type 1 or 2 diabetes participants, of which 38,579 (5.7%) had DR. A total of 19, 3, and 7 studies were at high, unclear, and low risk of bias, respectively. Drugs included in models as predictors were: insulin (n = 24), antihypertensives (n = 5), oral antidiabetics (n = 12), lipid-lowering drugs (n = 7), antiplatelets (n = 2). Drug exposure was modelled primarily as a categorical variable (n = 23 studies). Two studies handled drug exposure as time-varying covariates, and one as a time-dependent covariate. Insulin was associated with an increased risk of DR (OR = 2.50; 95% CI: 1.61-3.86). Models that included insulin (n = 9) had a higher pooled C-statistic (C-statistic = 0.84, CI: 0.80-0.88), compared to models (n = 9) that incorporated a combination of drugs alongside insulin (C-statistic = 0.79, CI: 0.74-0.84), as well as models (n = 3) not including insulin (C-statistic = 0.70, CI: 0.64-0.75). Limitations include the high risk of bias and significant heterogeneity in reviewed studies.
    CONCLUSIONS: This is the first review assessing drug exposure handling in DR prediction models. Drug exposure was primarily modelled as a categorical variable, with insulin associated with improved model performance. However, due to suboptimal drug handling, associations between other drugs and model performance may have been overlooked. This review proposes the following for future DR prediction models: (1) evaluation of drug exposure as a variable, (2) use of time-varying methodologies, and (3) consideration of drug regimen details. Improving drug exposure handling could potentially unveil novel variables capable of significantly enhancing the predictive capability of prediction models.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    背景:通过预测模型确定有呼吸机相关性肺炎(VAP)风险的患者可以促进医疗决策。我们的目的是系统评估机械通气(MV)患者的VAP模型。
    方法:从建立到2024年3月6日系统地检索了9个数据库。两名独立的审阅者进行了研究选择,数据提取,和质量评估,分别。利用偏差预测模型风险评估工具对模型偏差风险和适用性进行评估。Stata17.0用于进行模型验证判别的荟萃分析。
    结果:共纳入34项研究,报告了52个预测模型。超过50%的模型是使用逻辑回归开发的,纳入模型的AUC范围为0.509至0.982。在模型中出现更频繁的预测因素是MV持续时间,ICU住院时间,年龄。每个研究基本上被认为具有总体的高风险偏倚。对17项研究进行了荟萃分析,其中包含33个模型,并具有经过验证和完整的数据,合并AUC为0.80(95%CI:0.78-0.83)。
    结论:尽管模型的性能相对出色,模型开发过程存在较高的偏差风险。提高方法质量,揭示研究过程的细节,尤其是外部验证,模型的实际应用和优化问题亟待关注。
    BACKGROUND: Identifying patients at risk of ventilator-associated pneumonia through prediction models can facilitate medical decision-making. Our objective was to evaluate the current models for ventilator-associated pneumonia in patients with mechanical ventilation.
    METHODS: Nine databases systematically retrieved from establishment to March 6, 2024. Two independent reviewers performed study selection, data extraction, and quality assessment, respectively. The Prediction Model Risk of Bias Assessment Tool was used to evaluate the risk of model bias and applicability. Stata 17.0 was used to conduct a meta-analysis of discrimination of model validation.
    RESULTS: The total of 34 studies were included, with reported 52 prediction models. The most frequent predictors in the models were mechanical ventilation duration, length of intensive care unit stay, and age. Each study was essentially considered having a high risk of bias. A meta-analysis of 17 studies containing 33 models with validation was performed with a pooled area under the receiver-operating curve of 0.80 (95% confidence interval: 0.78-0.83).
    CONCLUSIONS: Despite the relatively excellent performance of the models, there is a high risk of bias of the model development process. Enhancing the methodological quality, especially the external validation, practical application, and optimization of the models need urgent attention.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Systematic Review
    这项研究系统回顾和荟萃分析了2型糖尿病患者中糖尿病肾病(DKD)的现有风险预测模型,旨在为我国学者开发更高质量的风险预测模型提供参考。
    我们搜索了包括中国国家知识基础设施(CNKI)在内的数据库,万方数据,VIP中国科技期刊数据库,中国生物医学文献数据库(CBM),PubMed,WebofScience,Embase,和Cochrane图书馆研究2型糖尿病患者DKD风险预测模型的构建,直到2023年12月28日。两名研究人员独立筛选了文献,并根据数据提取表和偏倚风险评估工具对信息进行了提取和评估,以进行预测模型研究。使用STATA14.0软件对模型的曲线下面积(AUC)值进行荟萃分析。
    共纳入32项研究,31进行内部验证和22报告校准。2型糖尿病患者中DKD的发生率为6.0%~62.3%。AUC范围为0.713至0.949,表明预测模型具有公平至优异的预测准确性。纳入研究的整体适用性良好;然而,总体上有很高的偏见风险,主要是由于大多数研究的回顾性性质,不合理的样本量,和在一个中心进行的研究。模型的荟萃分析得出的联合AUC为0.810(95%CI:0.780-0.840),表明良好的预测性能。
    我国2型糖尿病患者DKD风险预测模型研究尚处于起步阶段,总体偏倚风险较高,缺乏临床应用。未来的努力可以集中在建设高性能,基于可解释的机器学习方法的易于使用的预测模型,并将其应用于临床环境。
    本系统评价和荟萃分析是根据系统评价和荟萃分析(PRISMA)声明的首选报告项目进行的。这种研究的公认指南。
    https://www.crd.约克。AC.英国/普华永道/,标识符CRD42024498015。
    UNASSIGNED: This study systematically reviews and meta-analyzes existing risk prediction models for diabetic kidney disease (DKD) among patients with type 2 diabetes, aiming to provide references for scholars in China to develop higher-quality risk prediction models.
    UNASSIGNED: We searched databases including China National Knowledge Infrastructure (CNKI), Wanfang Data, VIP Chinese Science and Technology Journal Database, Chinese Biomedical Literature Database (CBM), PubMed, Web of Science, Embase, and the Cochrane Library for studies on the construction of DKD risk prediction models among type 2 diabetes patients, up until 28 December 2023. Two researchers independently screened the literature and extracted and evaluated information according to a data extraction form and bias risk assessment tool for prediction model studies. The area under the curve (AUC) values of the models were meta-analyzed using STATA 14.0 software.
    UNASSIGNED: A total of 32 studies were included, with 31 performing internal validation and 22 reporting calibration. The incidence rate of DKD among patients with type 2 diabetes ranged from 6.0% to 62.3%. The AUC ranged from 0.713 to 0.949, indicating the prediction models have fair to excellent prediction accuracy. The overall applicability of the included studies was good; however, there was a high overall risk of bias, mainly due to the retrospective nature of most studies, unreasonable sample sizes, and studies conducted in a single center. Meta-analysis of the models yielded a combined AUC of 0.810 (95% CI: 0.780-0.840), indicating good predictive performance.
    UNASSIGNED: Research on DKD risk prediction models for patients with type 2 diabetes in China is still in its initial stages, with a high overall risk of bias and a lack of clinical application. Future efforts could focus on constructing high-performance, easy-to-use prediction models based on interpretable machine learning methods and applying them in clinical settings.
    UNASSIGNED: This systematic review and meta-analysis was conducted following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) statement, a recognized guideline for such research.
    UNASSIGNED: https://www.crd.york.ac.uk/prospero/, identifier CRD42024498015.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    背景:重症监护病房(ICU)获得性虚弱(ICU-AW)是一种严重的并发症,可显著恶化患者的预后。人们普遍认为,可以利用风险预测模型来指导预防性干预。虽然ICU-AW风险预测模型的数量在增加,这些模型在临床实践中的质量和适用性尚不清楚.
    目的:本研究的目的是系统回顾已发表的关于ICU-AW风险预测模型的研究。
    方法:我们搜索了电子数据库(PubMed,WebofScience,科克伦图书馆,Embase,护理和相关健康文献累积指数(CINAHL),中国国家知识基础设施(CNKI),中国科技期刊数据库(VIP),和万方数据库)从成立到2023年10月,用于ICU-AW风险预测模型的研究。两名独立研究人员筛选了文献,提取的数据,并评估纳入研究的偏倚风险和适用性。
    结果:共确认2709篇。筛选后,选择了25篇文章,包含25个风险预测模型。这些模型的曲线下面积范围为0.681至0.926。对偏差风险的评估表明,所有包含的模型都表现出很高的偏差风险,三个模型的适用性较差。这些模型中的前五个预测因子是机械通气持续时间,年龄,急性生理学和慢性健康评估II评分,血乳酸水平,和ICU住院时间。十种验证模型的组合曲线下面积为0.83(95%置信区间:0.77-0.88),表明有很强的辨别能力。
    结论:总体而言,ICU-AW风险预测模型显示出良好的判别能力。然而,需要进一步优化来解决限制,包括数据源异构,研究设计中的潜在偏见,以及对稳健的统计验证的需求。未来的努力应优先考虑现有模型的外部验证或开发具有卓越性能的高质量预测模型。
    背景:本研究的方案已在国际前瞻性系统审查注册中心注册(注册号:CRD42023453187)。
    BACKGROUND: Intensive care unit (ICU)-acquired weakness (ICU-AW) is a critical complication that significantly worsens patient prognosis. It is widely thought that risk prediction models can be harnessed to guide preventive interventions. While the number of ICU-AW risk prediction models is increasing, the quality and applicability of these models in clinical practice remain unclear.
    OBJECTIVE: The objective of this study was to systematically review published studies on risk prediction models for ICU-AW.
    METHODS: We searched electronic databases (PubMed, Web of Science, The Cochrane Library, Embase, Cumulative Index to Nursing and Allied Health Literature (CINAHL), China National Knowledge Infrastructure (CNKI), China Science and Technology Periodical Database (VIP), and Wanfang Database) from inception to October 2023 for studies on ICU-AW risk prediction models. Two independent researchers screened the literature, extracted data, and assessed the risk of bias and applicability of the included studies.
    RESULTS: A total of 2709 articles were identified. After screening, 25 articles were selected, encompassing 25 risk prediction models. The area under the curve for these models ranged from 0.681 to 0.926. Evaluation of bias risk indicated that all included models exhibited a high risk of bias, with three models demonstrating poor applicability. The top five predictors among these models were mechanical ventilation duration, age, Acute Physiology and Chronic Health Evaluation II score, blood lactate levels, and the length of ICU stay. The combined area under the curve of the ten validation models was 0.83 (95% confidence interval: 0.77-0.88), indicating a strong discriminative ability.
    CONCLUSIONS: Overall, ICU-AW risk prediction models demonstrate promising discriminative ability. However, further optimisation is needed to address limitations, including data source heterogeneity, potential biases in study design, and the need for robust statistical validation. Future efforts should prioritise external validation of existing models or the development of high-quality predictive models with superior performance.
    BACKGROUND: The protocol for this study is registered with the International Prospective Register of Systematic Reviews (registration number: CRD42023453187).
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    背景:糖尿病足溃疡是最普遍的,严肃,糖尿病的代价高昂的后果,常伴有周围神经病变和外周动脉疾病。这些溃疡导致患者的高残疾和死亡率,并对临床管理构成重大挑战。
    目的:系统评价糖尿病足溃疡(DFU)患者愈合后复发的风险预测模型,从而为临床工作人员选择合适的预测模型提供参考。
    方法:作者搜索了五个数据库(CochraneLibrary,PubMed,WebofScience,EMBASE,和中国生物医学数据库)从成立到2023年9月23日,获取相关文献。数据提取后,使用预测模型研究偏差风险和适宜性评估工具(PROBAST)评估文献质量。采用STATA17.0软件进行Meta分析。
    结果:共纳入9项研究,涉及5956例患者。DFU愈合后的复发率为6.2%至41.4%。九项研究建立了15种风险预测模型,曲线下面积(AUC)为0.660~0.940,其中12个模型的AUC≥0.7,预测性能良好。9个验证模型的联合AUC值为0.83(95%置信区间:0.79-0.88)。对10个型号进行了Hosmer-Lemeshow测试,5个模型的外部验证,和6个模型的内部验证。荟萃分析表明,14个预测因子,比如年龄和独自生活,可以预测DFU患者愈合后的复发(p<0.05)。
    结论:为了提高这些风险预测模型的质量,在后续持续时间方面,未来有可能有所改善,模型校准,和验证过程。
    BACKGROUND: Diabetic foot ulcer is one of the most prevalent, serious, and costly consequences of diabetes, often associated with peripheral neuropathy and peripheral arterial disease. These ulcers contribute to high disability and mortality rates in patients and pose a major challenge to clinical management.
    OBJECTIVE: To systematically review the risk prediction models for post-healing recurrence in diabetic foot ulcer (DFU) patients, so as to provide a reference for clinical staff to choose appropriate prediction models.
    METHODS: The authors searched five databases (Cochrane Library, PubMed, Web of Science, EMBASE, and Chinese Biomedical Database) from their inception to September 23, 2023, for relevant literature. After data extraction, the quality of the literature was evaluated using the Predictive Model Research Bias Risk and Suitability Assessment tool (PROBAST). Meta-analysis was performed using STATA 17.0 software.
    RESULTS: A total of 9 studies involving 5956 patients were included. The recurrence rate after DFU healing ranged from 6.2 % to 41.4 %. Nine studies established 15 risk prediction models, and the area under the curve (AUC) ranged from 0.660 to 0.940, of which 12 models had an AUC≥0.7, indicating good prediction performance. The combined AUC value of the 9 validation models was 0.83 (95 % confidence interval: 0.79-0.88). Hosmer-Lemeshow test was performed for 10 models, external validation for 5 models, and internal validation for 6 models. Meta-analysis showed that 14 predictors, such as age and living alone, could predict post-healing recurrence in DFU patients (p < 0.05).
    CONCLUSIONS: To enhance the quality of these risk prediction models, there is potential for future improvements in terms of follow-up duration, model calibration, and validation processes.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

公众号