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Qualitative dyadic analysis in care partnership research: a scoping review. 护理伙伴关系研究中的定性二元分析:范围综述。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-11 DOI: 10.1186/s12874-025-02722-y
Andrea S E Parks, Lesley Gotlib Conn, Bahar Aria, Manisha Reza Paul, Allan Li, Agessandro Abrahao, Lorne Zinman, Joanna E M Sale

Background: Chronic illness impacts not only individuals affected by it, but also those who care for them. Care partnerships recognize that health conditions are often shared, dyadic experiences. Qualitative dyadic analysis, which foregrounds the dyad as the unit of analysis, is a method that can enhance understanding of illness as a joint experience. However, when perspectives of dyad members are collected separately, their subsequent analysis as a unit can be challenging.

Objective: To review and summarize qualitative literature where data have been collected through separate individual interviews with patient and care partner dyads and analyzed at the dyadic level.

Methods: A scoping review guided by Joanna Briggs Institute methodology was undertaken. Databases (Ovid's Medline, Embase, and PsycINFO; EBSCO CINAHL; and ProQuest Sociological Abstracts) were searched in February 2024. Eligible articles included peer-reviewed literature published in English from 2010 onwards documenting qualitative dyadic analysis of individual interviews collected from patient and care partner dyads. Title and abstracts were screened and the full text of all potentially eligible articles was reviewed by two independent reviewers. Data were extracted using a table and results were summarized using frequency counts and qualitative content analysis.

Results: 7,494 records were identified and screened. 113 reports of 112 unique studies fulfilled eligibility criteria and were included. Numerous methodologies and analytic methods were reported, many of which incorporated methods from different qualitative traditions, often with variable sequencing of analytic steps that were infrequently well described. Studies were not routinely conceptualized at the dyadic level and underlying epistemological assumptions were rarely discussed despite their essential role in grounding dyadic analysis.

Conclusions: When conducting qualitative dyadic analysis, researchers should consider dyadic study conceptualization from study outset. The purpose of the analysis, the analytic steps taken, and their alignment with underlying epistemology and other incorporated methodologies should be clearly documented and reported.

背景:慢性疾病不仅影响受其影响的个人,也影响那些照顾他们的人。保健伙伴关系认识到,健康状况往往是共同的、双重的经历。定性的二元分析,将二元作为分析的单位,是一种可以增强对疾病作为一种共同经验的理解的方法。然而,当两组成员的观点被单独收集时,他们作为一个整体的后续分析可能具有挑战性。目的:回顾和总结定性文献中收集的数据,这些数据是通过对患者和护理伙伴的单独访谈收集的,并在二元水平上进行分析。方法:采用乔安娜布里格斯研究所的方法进行范围审查。数据库(Ovid's Medline, Embase和PsycINFO; EBSCO CINAHL;和ProQuest社会学摘要)于2024年2月检索。符合条件的文章包括2010年以来发表的同行评议的英文文献,记录了从患者和护理伙伴中收集的个体访谈的定性二元分析。对标题和摘要进行筛选,并由两名独立审稿人对所有可能符合条件的文章的全文进行审查。使用表格提取数据,并使用频率计数和定性内容分析对结果进行总结。结果:共筛选出7494条记录。112项独特研究的113份报告符合入选标准。报告了许多方法论和分析方法,其中许多结合了来自不同定性传统的方法,通常具有不同的分析步骤顺序,这些步骤很少被很好地描述。研究通常不会在二元水平上概念化,并且很少讨论潜在的认识论假设,尽管它们在二元分析的基础中起着重要作用。结论:在进行定性二元分析时,研究者应从研究一开始就考虑二元研究的概念化。分析的目的,所采取的分析步骤,以及它们与基本认识论和其他综合方法的一致性,应该清楚地记录和报告。
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引用次数: 0
Identifying, handling and impact of immortal time bias on addressing treatment effects in observational studies using routinely collected data. 在使用常规收集数据的观察性研究中,识别、处理和处理不朽时间偏差对治疗效果的影响。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-11 DOI: 10.1186/s12874-025-02739-3
Shuangyi Xie, Jiayue Xu, Qiao He, Yuning Wang, Qianrui Li, Xia Zhang, Yunxiang Huang, Yuanjin Zhang, Wen Wang, Xin Sun

Background: Immortal time bias (ITB) represents a methodological challenge in evaluating treatment effects in observational studies using routinely collected data (RCD). However, the prevalence of ITB, the strategies used to address ITB and its impact remain inadequate. This study aimed to investigate how ITB was identified and handled in observational studies using RCD, and to assess its impact on treatment effect estimates.

Methods: A systematic search was performed in PubMed for observational studies published from 2018 to 2020 that used RCD to evaluate drug treatment effects. We examined the synchronization of three time points (eligibility, treatment assignment, and the start of follow-up) to identify ITB and assessed the risk of ITB. For low-risk studies, we summarized the handling approaches. For high-risk studies, we conducted quantitative bias analyses to correct for ITB and calculate ITB-controlled estimates. These ITB-controlled estimates were then compared with original estimates to quantify the impact of ITB.

Results: Among the 256 studies initially identified, 162 cohort studies with time-to-event outcomes were included. 13 studies (8.0%) lacked sufficient reporting to assess ITB. Of the remaining studies, 35 studies (21.6%) were classified as high risk for ITB, while 114 studies (70.4%) were classified as low risk, with 15 having naturally synchronized time points and 99 using design or analytical approaches to synchronize them. For the 99 low-risk studies, the commonly employed approaches were the active comparator new-user design and the time-varying exposure definition, accounting for 56.6% and 19.2%, respectively. Of the 35 high-risk studies, 16 studies that provided sufficient information for correction were included in the quantitative bias analyses. Among these, 4 studies (25%) showed statistically significant differences between ITB-controlled and original estimates, and 4 studies (25%) yielded conflicting conclusions regarding the statistical significance of these two estimates. Only 5 of the 35 high-risk studies (14.3%) discussed that the results may be affected by ITB.

Conclusions: ITB is a critical methodological issue in observational studies using RCD, with the potential to significantly distort conclusions. To enhance the validity of treatment effect estimates, researchers should thoroughly examine the presence of ITB and employ appropriate strategies to mitigate its impact.

背景:在使用常规收集数据(RCD)的观察性研究中,不朽时间偏差(ITB)代表了评估治疗效果的方法学挑战。然而,ITB的流行、用于解决ITB及其影响的战略仍然不足。本研究旨在探讨如何在使用RCD的观察性研究中识别和处理ITB,并评估其对治疗效果估计的影响。方法:在PubMed中系统检索2018年至2020年发表的观察性研究,这些研究使用RCD评估药物治疗效果。我们检查了三个时间点(资格、治疗分配和随访开始)的同步性,以确定ITB并评估ITB的风险。对于低风险研究,我们总结了处理方法。对于高风险研究,我们进行了定量偏倚分析以校正ITB并计算ITB控制的估计值。然后将这些ITB控制的估计与原始估计进行比较,以量化ITB的影响。结果:在最初确定的256项研究中,纳入了162项具有事件发生时间结局的队列研究。13项研究(8.0%)缺乏足够的报告来评估ITB。在剩余的研究中,35项研究(21.6%)被归类为ITB高风险,114项研究(70.4%)被归类为低风险,其中15项研究具有自然同步的时间点,99项研究使用设计或分析方法来同步它们。99项低风险研究中,常用的方法是主动比较器新用户设计法和时变暴露定义法,分别占56.6%和19.2%。在35项高风险研究中,有16项研究提供了足够的校正信息,被纳入定量偏倚分析。其中,4项研究(25%)显示itb控制和原始估计之间的统计显著性差异,4项研究(25%)对这两种估计的统计显著性得出了相互矛盾的结论。35项高危研究中只有5项(14.3%)讨论了ITB可能影响结果。结论:在使用RCD的观察性研究中,ITB是一个关键的方法学问题,有可能严重扭曲结论。为了提高治疗效果评估的有效性,研究人员应该彻底检查ITB的存在,并采取适当的策略来减轻其影响。
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引用次数: 0
Penalized regression with negative-unlabeled data: an approach to developing a Long COVID research index. 负未标记数据的惩罚回归:开发长COVID研究指数的方法。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-09 DOI: 10.1186/s12874-025-02737-5
Harrison T Reeder, Tanayott Thaweethai, Andrea S Foulkes

Background: Moderate to severe Long COVID is estimated to impact as many as 10% of SARS-CoV-2 infected individuals, representing a chronic condition with a substantial public health burden. An expansive literature has identified over 200 persistent symptoms associated with a history of SARS-CoV-2 infection; yet, there remains to be a clear consensus on a syndrome definition. Long COVID thus represents a "negative-unlabeled" outcome where those without prior infection must be Long COVID "negative" but those with prior infection have unknown or "unlabeled" Long COVID status. Despite this lack of a gold standard definition or biomarker, developing and evaluating an approach to characterizing Long COVID is a critical first step in future studies of risk and resiliency factors, mechanisms of disease, and interventions for both treatment and prevention.

Methods: We recently applied a strategy for defining a numeric Long COVID research index (LCRI) using Lasso-penalized logistic regression, leveraging information on history of SARS-CoV-2 infection as a pseudo-label. In the current manuscript we formalize and evaluate this approach in a simulation framework for the occurrence of infection, Long COVID onset, and symptomatology. We evaluate its performance selecting symptoms associated with Long COVID and distinguishing individuals with Long COVID, in the presence of symptom correlations and demographic confounders. We compare the LCRI method to a simpler index defined by counting Long COVID symptoms, and assess these methods in a reanalysis of data on participants enrolled in the Adult Cohort of the Researching COVID to Enhance Recovery (RECOVER) study.

Results: Simulation results demonstrate that the Lasso-penalized LCRI methodology appropriately selects symptoms associated with Long COVID, and that the LCRI has high discriminatory power to distinguish Long COVID, outperforming symptom count. This performance was robust to correlation between symptoms, and weighting methods are shown to successfully address potential confounding by demographic characteristics. Analysis of RECOVER data showed the LCRI outperforming symptom count by misclassifying fewer uninfected individuals as having Long COVID.

Conclusions: As the LCRI is increasingly used to characterize LC in research settings, this paper represents an important step in understanding its operating characteristics and developing general methodology for settings with negative-unlabeled data.

背景:据估计,中度至重度长冠肺炎会影响多达10%的SARS-CoV-2感染者,这是一种具有重大公共卫生负担的慢性疾病。大量文献已经确定了200多种与SARS-CoV-2感染史相关的持续症状;然而,对综合征的定义仍有待明确的共识。因此,长COVID代表了一种“阴性-未标记”的结果,即没有先前感染的人必须是长COVID“阴性”,而先前感染的人则是未知或“未标记”的长COVID状态。尽管缺乏黄金标准定义或生物标志物,但开发和评估表征长冠状病毒的方法是未来研究风险和弹性因素、疾病机制以及治疗和预防干预措施的关键第一步。方法:我们最近采用了一种策略,利用SARS-CoV-2感染史信息作为伪标签,使用lasso惩罚逻辑回归来定义数字长COVID研究指数(LCRI)。在当前的手稿中,我们在感染发生、长时间发病和症状学的模拟框架中形式化并评估了这种方法。在存在症状相关性和人口统计学混杂因素的情况下,我们评估了其选择与长COVID相关的症状和区分长COVID个体的性能。我们将LCRI方法与通过计算长COVID症状定义的更简单的指数进行比较,并在重新分析研究COVID以增强恢复(RECOVER)研究的成人队列参与者的数据中对这些方法进行评估。结果:仿真结果表明,lasso惩罚LCRI方法恰当地选择了与长COVID相关的症状,并且LCRI具有较高的区分长COVID的能力,优于症状计数。这种表现对症状之间的相关性是稳健的,加权方法被证明可以成功地解决人口统计学特征造成的潜在混淆。对RECOVER数据的分析显示,LCRI通过将较少的未感染个体误分类为长COVID而优于症状计数。结论:随着LCRI在研究环境中越来越多地用于表征LC,本文代表了理解其操作特征和开发具有负未标记数据设置的一般方法的重要一步。
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引用次数: 0
Federated generalized additive models for location, scale and shape. 位置、尺度和形状的联邦广义加性模型。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-09 DOI: 10.1186/s12874-025-02735-7
Annika Swenne, Timm Intemann, Luis A Moreno, Iris Pigeot

Background: The generalized additive model for location, scale and shape (GAMLSS) is a flexible regression model with a wide range of applications. In particular, it is the standard method to estimate age-specific percentile curves for clinical parameters for children and adolescents. Deriving international percentile curves requires large datasets that cover a diverse population. Such datasets are typically obtained by pooling data from multiple studies. However, due to ethical and legal constraints, physically sharing and pooling sensitive individual-level data might not always be permitted. Therefore, we aimed to develop a privacy-enhancing method to fit a GAMLSS.

Methods: We developed a federated version of the GAMLSS algorithm which allows to co-analyze data from different sources, without physically transferring the data. Instead, data are analyzed locally within their secure home environments and only non-disclosive analysis results are shared. We implemented our method in DataSHIELD, an open-source software infrastructure for federated analysis in R, and investigated its theoretical properties. Considering two different use cases, we applied our algorithm to physically separated epidemiological study data and compared its results with the ones obtained by fitting a GAMLSS to the physically-pooled data. Furthermore, we evaluated the runtime of the federated GAMLSS against the original GAMLSS algorithm for varying number of observations and DataSHIELD servers.

Results: We proved that, in theory, the federated GAMLSS yields identical results as the original GAMLSS algorithm, using the additivity of matrix multiplication in the fitting algorithm. Furthermore, we provided an implementation of the proposed algorithm and demonstrated that the federated GAMLSS implementation yielded the same results as the pooled GAMLSS in our examples, with only minor differences attributable to numerical computation. However, the runtime was more than 1000 times higher for fitting the federated compared to the pooled GAMLSS.

Conclusions: In this paper, we propose a privacy-enhancing federated GAMLSS that yields virtually identical results as the original GAMLSS algorithm, without the need to physically pool the data.

背景:广义位置、尺度和形状加性模型(GAMLSS)是一种灵活的回归模型,具有广泛的应用前景。特别是,它是估计儿童和青少年临床参数的年龄特定百分位数曲线的标准方法。导出国际百分位曲线需要覆盖不同人口的大型数据集。这些数据集通常是通过汇总多个研究的数据获得的。然而,由于道德和法律的限制,物理上共享和汇集敏感的个人数据可能并不总是允许的。因此,我们的目标是开发一种隐私增强方法来适应GAMLSS。方法:我们开发了一个联邦版本的GAMLSS算法,允许共同分析来自不同来源的数据,而无需物理传输数据。相反,数据在他们安全的家庭环境中进行本地分析,并且只共享非公开的分析结果。我们在DataSHIELD中实现了我们的方法,DataSHIELD是R中用于联邦分析的开源软件基础设施,并研究了它的理论性质。考虑到两种不同的用例,我们将该算法应用于物理分离的流行病学研究数据,并将其结果与通过GAMLSS拟合物理池数据获得的结果进行比较。此外,我们针对不同数量的观测值和DataSHIELD服务器,评估了联邦GAMLSS与原始GAMLSS算法的运行时。结果:在理论上,我们证明了在拟合算法中使用矩阵乘法的可加性,联邦GAMLSS产生与原始GAMLSS算法相同的结果。此外,我们提供了所提出算法的实现,并演示了联邦GAMLSS实现与我们示例中的池化GAMLSS产生相同的结果,只有细微的差异可归因于数值计算。但是,与池化的GAMLSS相比,用于拟合联邦的运行时要高出1000倍以上。结论:在本文中,我们提出了一种增强隐私的联邦GAMLSS,它产生的结果与原始GAMLSS算法几乎相同,而不需要物理地汇集数据。
{"title":"Federated generalized additive models for location, scale and shape.","authors":"Annika Swenne, Timm Intemann, Luis A Moreno, Iris Pigeot","doi":"10.1186/s12874-025-02735-7","DOIUrl":"10.1186/s12874-025-02735-7","url":null,"abstract":"<p><strong>Background: </strong>The generalized additive model for location, scale and shape (GAMLSS) is a flexible regression model with a wide range of applications. In particular, it is the standard method to estimate age-specific percentile curves for clinical parameters for children and adolescents. Deriving international percentile curves requires large datasets that cover a diverse population. Such datasets are typically obtained by pooling data from multiple studies. However, due to ethical and legal constraints, physically sharing and pooling sensitive individual-level data might not always be permitted. Therefore, we aimed to develop a privacy-enhancing method to fit a GAMLSS.</p><p><strong>Methods: </strong>We developed a federated version of the GAMLSS algorithm which allows to co-analyze data from different sources, without physically transferring the data. Instead, data are analyzed locally within their secure home environments and only non-disclosive analysis results are shared. We implemented our method in DataSHIELD, an open-source software infrastructure for federated analysis in R, and investigated its theoretical properties. Considering two different use cases, we applied our algorithm to physically separated epidemiological study data and compared its results with the ones obtained by fitting a GAMLSS to the physically-pooled data. Furthermore, we evaluated the runtime of the federated GAMLSS against the original GAMLSS algorithm for varying number of observations and DataSHIELD servers.</p><p><strong>Results: </strong>We proved that, in theory, the federated GAMLSS yields identical results as the original GAMLSS algorithm, using the additivity of matrix multiplication in the fitting algorithm. Furthermore, we provided an implementation of the proposed algorithm and demonstrated that the federated GAMLSS implementation yielded the same results as the pooled GAMLSS in our examples, with only minor differences attributable to numerical computation. However, the runtime was more than 1000 times higher for fitting the federated compared to the pooled GAMLSS.</p><p><strong>Conclusions: </strong>In this paper, we propose a privacy-enhancing federated GAMLSS that yields virtually identical results as the original GAMLSS algorithm, without the need to physically pool the data.</p>","PeriodicalId":9114,"journal":{"name":"BMC Medical Research Methodology","volume":" ","pages":"276"},"PeriodicalIF":3.4,"publicationDate":"2025-12-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12696945/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145707264","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":3,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Applications of survival analysis and learning curves methods in neurosurgical stroke data and simulations to account for provider heterogeneity. 生存分析和学习曲线方法在神经外科中风数据和模拟中的应用,以解释提供者的异质性。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-09 DOI: 10.1186/s12874-025-02724-w
Usha S Govindarajulu, Rivera Daniel, Reynolds Eric, Brown Cole, Zhang Jack, Cohen Daniel, Schupper Alex
{"title":"Applications of survival analysis and learning curves methods in neurosurgical stroke data and simulations to account for provider heterogeneity.","authors":"Usha S Govindarajulu, Rivera Daniel, Reynolds Eric, Brown Cole, Zhang Jack, Cohen Daniel, Schupper Alex","doi":"10.1186/s12874-025-02724-w","DOIUrl":"10.1186/s12874-025-02724-w","url":null,"abstract":"","PeriodicalId":9114,"journal":{"name":"BMC Medical Research Methodology","volume":" ","pages":"4"},"PeriodicalIF":3.4,"publicationDate":"2025-12-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12790127/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145713295","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":3,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Inclusive methodological awareness for equity and diversity in biomedical research. 对生物医学研究的公平性和多样性具有包容性的方法意识。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-09 DOI: 10.1186/s12874-025-02731-x
Elochukwu Ezenwankwo, Rosemary M Caron
{"title":"Inclusive methodological awareness for equity and diversity in biomedical research.","authors":"Elochukwu Ezenwankwo, Rosemary M Caron","doi":"10.1186/s12874-025-02731-x","DOIUrl":"10.1186/s12874-025-02731-x","url":null,"abstract":"","PeriodicalId":9114,"journal":{"name":"BMC Medical Research Methodology","volume":"25 1","pages":"273"},"PeriodicalIF":3.4,"publicationDate":"2025-12-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12687508/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145713314","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":3,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Beyond prediction intervals in meta-analysis: reporting the expected proportion of comparable studies with clinically relevant benefit or harm. meta分析中超出预测区间:报告具有临床相关益处或危害的可比研究的预期比例。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-07 DOI: 10.1186/s12874-025-02733-9
W Siemens, M Borenstein, T Evrenoglou, J J Meerpohl, G Schwarzer

Background: In a meta-analysis where the effect size varies substantially between studies it is important to report the extent of the variation. Critically, we want to know if the treatment is always helpful or sometimes harmful. The statistic that addresses this is the prediction interval (PI), which gives the range of true effects for all studies comparable to those in the meta-analysis.

Methods: In addition to the PI's upper and lower limits, we propose to report the expected proportion of comparable studies that are expected to have an effect in a given range. If we define for example thresholds corresponding to minimal clinically important benefit and harm, we can report the expected proportion of comparable studies where the true effect is expected to exceed these thresholds.

Results: We apply our approach to two Cochrane Reviews assessing a dichotomous and a continuous outcome: caesarean section and health-related quality of life. This article shows how to plot the distribution of true study effects highlighting the expected proportion of comparable studies where the true effect is clinically beneficial or harmful. We also offer suggestions for how to report this information in scientific articles.

Conclusion: In addition to PIs, reporting the expected proportion of comparable studies with relevant benefit or harm as supplementary information could help physicians and other decision-makers to understand the potential utility of an intervention. However, these metrics must be interpreted with caution because the estimate of the between‑study heterogeneity [Formula: see text] may be imprecise when data are limited.

背景:在meta分析中,如果研究之间的效应大小有很大差异,报告差异的程度是很重要的。至关重要的是,我们想知道治疗是否总是有益的,或者有时是有害的。解决这个问题的统计量是预测区间(PI),它给出了所有研究的真实效果范围,与荟萃分析中的研究相比较。方法:除了PI的上限和下限外,我们建议报告在给定范围内预期会产生影响的可比研究的预期比例。例如,如果我们定义了与最小临床重要益处和危害相对应的阈值,我们就可以报告预计真实效果超过这些阈值的可比研究的预期比例。结果:我们将我们的方法应用于两篇Cochrane综述,评估了二分和连续的结果:剖腹产和健康相关的生活质量。本文展示了如何绘制真实研究效果的分布,突出了真实效果在临床有益或有害的可比研究中的预期比例。我们还提供了如何在科学文章中报告这些信息的建议。结论:除了pi之外,报告具有相关益处或危害的可比研究的预期比例作为补充信息可以帮助医生和其他决策者了解干预措施的潜在效用。然而,这些指标必须谨慎解释,因为当数据有限时,对研究间异质性的估计可能不精确。
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引用次数: 0
Trial Sequential Analysis for dichotomous outcomes - a practical guide for systematic review protocols. 二分类结果的试验序列分析-系统评价方案的实用指南。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-05 DOI: 10.1186/s12874-025-02716-w
Sophie Juul, Christian Gunge Riberholt, Markus Harboe Olsen, Joachim Birch Milan, Sigurlaug Hanna Hafliðadóttir, Jeppe Houmann Svanholm, Elisabeth Buck Pedersen, Charles Chin Han Lew, Mark Aninakwah Asante, Johanne Pereira Ribeiro, Vibeke Wagner, Buddheera W M B Kumburegama, Zheng-Yii Lee, Julie Perrine Schaug, Christina Madsen, Christian Gluud

Background: Trial Sequential Analysis (TSA) is a statistical method to control random errors in systematic reviews with meta-analyses of randomised clinical trials. In our results from the Major Mistakes and Errors in Trial Sequential Analysis (METSA) project, we systematically assessed the use of TSA across all medical fields and found significant mistakes in the preplanning and reporting of most TSAs. This article provides a practical guide for authors of systematic review protocols on what to consider when planning Trial Sequential Analysis for dichotomous outcomes.

Methods: This practical guide has been developed based on the TSA manual, the recommendations published previously by Jakobsen and colleagues and Wetterslev and colleagues along with the findings from our recently published results from the METSA project.

Results: The following five parameters should be clearly defined in a publicly available protocol before the review is undertaken: 1) the proportion of participants with an event in the control group; 2) the relative risk reduction or increase in the experimental group; 3) the risk of type I errors (alpha); 4) the risk of type II errors (beta); and 5) the diversity of the meta-analysis. Improving the planning and reporting of these parameters will improve the interpretation, reproducibility, and validity of Trial Sequential Analysis results used in systematic reviews.

Conclusions: We hope this practical guide will aid in improving pre-registration and reporting of TSAs of dichotomous outcomes within systematic review protocols with meta-analysis of randomised clinical trials in the future.

背景:试验序列分析(TSA)是一种在随机临床试验荟萃分析的系统评价中控制随机误差的统计方法。在我们的试验序列分析(METSA)项目的主要错误和错误的结果中,我们系统地评估了所有医学领域中TSA的使用,并发现了大多数TSA的预先计划和报告中的重大错误。本文为系统评价方案的作者提供了一个实用的指南,指导他们在规划二分类结果的试验序列分析时应该考虑什么。方法:本实用指南是根据交通安全管理局手册、Jakobsen及其同事和weterslev及其同事先前发表的建议以及我们最近发表的交通安全管理局项目结果的研究结果制定的。结果:在进行评价之前,在公开的方案中应明确以下五个参数:1)对照组中有事件的参与者的比例;2)实验组相对危险度降低或增加;3) I类错误的风险(alpha);4) II类错误的风险(β);5) meta分析的多样性。改进这些参数的计划和报告将改善系统评价中使用的试验序列分析结果的解释、可重复性和有效性。结论:我们希望本实用指南将有助于在未来随机临床试验荟萃分析的系统评价方案中改进二分结果tsa的预注册和报告。
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引用次数: 0
Omitting patients with no follow-up leads to bias when using inverse-intensity weighted GEEs to handle irregular and informative assessment times. 在使用负强度加权GEEs处理不规则且信息丰富的评估时间时,忽略无随访的患者会导致偏倚。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-04 DOI: 10.1186/s12874-025-02721-z
Xiawen Zhang, Anna Heath, Wei Xu, Eleanor Pullenayegum

Background: Longitudinal data can be used to study disease progression and are often collected at irregular intervals. When the assessment times are informative about the severity of the disease, regression analyses of the outcome trajectory over time based on Generalized Estimating Equations (GEEs) result in biased estimates of regression coefficients. Inverse-intensity weighted GEEs (IIW-GEEs) are a popular approach to account for informative assessment times and yield unbiased estimates of outcome model coefficients when the assessment times and outcomes are conditionally independent given previously observed data. However, a consequence of irregular assessment times is that some patients may have no follow-up assessments at all, and it is common practice to omit these patients from analyses when studying the outcome trajectory over time.

Methods: We show mathematically that IIW-GEEs yield biased estimates of regression coefficients when patients with no follow-up assessments are excluded from analyses. We design a simulation study to evaluate how the bias varies with sample size, assessment frequency, follow-up time, and the informativeness of the assessment time process. Using the STAR*D trial of treatments for major depressive disorder, we examine the extent of bias in practice.

Results: Our simulation results showed the bias incurred by omitting patients with no follow-up visits increased as visit frequency decreased and as the duration of follow-up decreased. In the STAR*D trial, omitting patients with no follow-up visits led to over-estimation of the rate of improvement in depressive symptoms.

Conclusions: Studies should be designed to ensure patients with no follow-up are included in the data. This can be achieved by a) creating inception cohorts; b) when taking sub-samples of existing cohorts, ensuring that patients without follow-up assessments are included; c) dropping exclusion criteria based on availability of follow-up visits.

背景:纵向数据可用于研究疾病进展,通常不定期收集。当评估时间是关于疾病严重程度的信息时,基于广义估计方程(GEEs)的结果轨迹随时间的回归分析导致回归系数的有偏估计。当给定先前观察到的数据,评估时间和结果是条件独立的时,逆强度加权GEEs (IIW-GEEs)是一种流行的方法,用于解释信息评估时间和结果模型系数的无偏估计。然而,不规则评估时间的一个后果是,一些患者可能根本没有随访评估,在研究结果轨迹时,通常会在分析中忽略这些患者。方法:我们从数学上证明,当没有随访评估的患者被排除在分析之外时,IIW-GEEs产生了回归系数的偏倚估计。我们设计了一项模拟研究来评估偏差如何随样本量、评估频率、随访时间和评估时间过程的信息量而变化。使用STAR*D治疗重度抑郁症的试验,我们检查了实践中的偏倚程度。结果:我们的模拟结果显示,随着随访次数的减少和随访时间的缩短,因遗漏未随访患者而产生的偏倚增加。在STAR*D试验中,忽略没有随访的患者导致对抑郁症状改善率的高估。结论:研究的设计应确保没有随访的患者被纳入数据。这可以通过a)创建初始队列来实现;B)在提取现有队列的子样本时,确保纳入未进行随访评估的患者;C)放弃基于随访的排除标准。
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引用次数: 0
Correction: A human-LLM collaborative annotation approach for screening articles on precision oncology randomized controlled trials. 更正:用于筛选精确肿瘤学随机对照试验文章的人类-法学硕士协作注释方法。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-12-03 DOI: 10.1186/s12874-025-02720-0
Hui Chen, Jiale Zhao, Sheng Zheng, Xinyu Zhang, Huilong Duan, Xudong Lu
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BMC Medical Research Methodology
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