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Detecting departures from the conditional independence assumption in diagnostic latent class models: a simulation study. 诊断潜类模型中检测偏离条件独立假设:一项模拟研究。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-12-05 DOI: 10.1186/s12874-024-02432-x
Yasin Okkaoglu, Nicky J Welton, Hayley E Jones

Background: Latent class models can be used to estimate diagnostic accuracy without a gold standard test. Early studies often assumed independence between tests given the true disease state, however this can lead to biased estimates when there are inter-test dependencies. Residual correlation plots and chi-squared statistics have been commonly utilized to assess the validity of the conditional independence assumption and, when it does not hold, identify which test pairs are conditionally dependent. We aimed to assess the performance of these tools with a simulation study covering a wide range of scenarios.

Methods: We generated data sets from a model with four tests and a dependence between tests 1 and 2 within the diseased group. We varied sample size, prevalence, covariance, sensitivity and specificity, with 504 combinations of these in total, and 1000 data sets for each combination. We fitted the conditional independence model in a Bayesian framework, and reported absolute bias, coverage, and how often the residual correlation plots, G 2 and χ 2 statistics indicated lack-of-fit globally or for each test pair.

Results: Across all settings, residual correlation plots, pairwise G 2 and χ 2 detected the correct correlated pair of tests only 12.1%, 10.3%, and 10.3% of the time, respectively, but incorrectly suggested dependence between tests 3 and 4 64.9%, 49.7%, and 49.5% of the time. We observed some variation in this across parameter settings, with these tools appearing to perform more as intended when tests 3 and 4 were both much more accurate than tests 1 and 2. Residual correlation plots, G 2 and χ 2 statistics identified a lack of overall fit in 74.3%, 64.5% and 67.5% of models, respectively. The conditional independence model tended to overestimate the sensitivities of the correlated tests (median bias across all scenarios 0.094, 2.5th and 97.5th percentiles -0.003, 0.397) and underestimate prevalence and the specificities of the uncorrelated tests.

Conclusions: Residual correlation plots and chi-squared statistics cannot be relied upon to identify which tests are conditionally dependent, and also have relatively low power to detect lack of overall fit. This is important since failure to account for conditional dependence can lead to highly biased parameter estimates.

背景:潜在类别模型可用于估计诊断准确性,而无需金标准检验。早期的研究通常假设在给定真实疾病状态的测试之间是独立的,然而,当存在测试之间的依赖关系时,这可能导致有偏差的估计。残差相关图和卡方统计量通常用于评估条件独立假设的有效性,当它不成立时,确定哪些检验对是条件相关的。我们的目标是通过涵盖广泛场景的模拟研究来评估这些工具的性能。方法:我们从一个包含四项测试的模型中生成数据集,并且在患病组中测试1和测试2之间存在依赖性。我们改变了样本量、患病率、协方差、敏感性和特异性,总共有504种组合,每种组合有1000个数据集。我们在贝叶斯框架中拟合了条件独立模型,并报告了绝对偏差、覆盖率以及残差相关图、g2和χ 2统计量显示全局或每个检验对缺乏拟合的频率。结果:在所有设置中,残差相关图、成对g2和χ 2分别仅在12.1%、10.3%和10.3%的时间内检测到正确的相关检验对,但错误地提示检验3和4之间的相关性为64.9%、49.7%和49.5%。我们观察到不同参数设置之间存在一些差异,当测试3和4都比测试1和2更准确时,这些工具似乎更符合预期。残差相关图、g2和χ 2统计分别发现74.3%、64.5%和67.5%的模型缺乏整体拟合。条件独立模型倾向于高估相关检验的敏感性(所有情景的中位偏差为0.094、2.5和97.5百分位数-0.003、0.397),低估不相关检验的患病率和特异性。结论:残差相关图和卡方统计量不能用来确定哪些检验是有条件依赖的,而且检测总体拟合缺乏的能力也相对较低。这一点很重要,因为不考虑条件依赖性可能导致参数估计高度偏倚。
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引用次数: 0
Facilitating comprehensive child health monitoring within REDCap - an open-source code for real-time Z-score assessments. 在REDCap中促进全面的儿童健康监测-用于实时z分数评估的开源代码。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-12-05 DOI: 10.1186/s12874-024-02405-0
Priyanka Mendon, Michael Witsch, Marianne Becker, Aurélie Adamski, Michel Vaillant

Background: Monitoring of somatic development through the assessment of anthropometric variables such as weight, height, and BMI is vital for evaluating the physical development and nutritional status of children. This approach aids in the early identification of somatic developmental disorders, enabling timely medical interventions. It traditionally relies on Z-scores, which compare anthropometric variables with reference standards. In addition to somatic development monitoring, the early detection and management of pediatric and adolescent hypertension are crucial due to potential long-term health risks. However, manual calculations of Z-scores are time-consuming and error-prone, impeding timely interventions for at-risk children. This article introduces an innovative open-code solution for real-time Z-score assessments directly within the electronic data capture platform, Research Electronic Data Capture, (REDCap™), aiming to streamline the monitoring of somatic development in children.

Methods: Leveraging the World Health Organization (WHO) growth standards and National Health and Nutrition Examination Survey (NHANES) references, our approach integrates Z-score computations directly into REDCap, providing a secure and user-friendly environment for healthcare professionals and researchers. We employed Bland-Altman analyses to compare our method with established calculators (Knirps and Growth XP™) using synthetic data values for all variables.

Results: Bland-Altman plots demonstrated strong agreement between our REDCap calculations and the Knirps and Growth XP systems. Z-scores for height, BMI, and blood pressure consistently aligned, affirming the accuracy of our approach across the measurement range.

Conclusion: The integration with REDCap streamlines data collection and analysis, eliminating the need for separate software and data exports. Moreover, our solution uses the World Health Organization (WHO) growth standards and National Health and Nutrition Examination Survey (NHANES) references. This not only ensures calculation accuracy but also enhances its suitability for diverse research contexts. The Bland-Altman analyses establish the reliability of our method, contributing to a more effective approach to child growth and blood pressure monitoring.

背景:通过评估体重、身高和BMI等人体测量变量来监测身体发育对于评估儿童的身体发育和营养状况至关重要。这种方法有助于早期识别躯体发育障碍,从而能够及时进行医疗干预。它传统上依赖于z分数,将人体测量变量与参考标准进行比较。除了身体发育监测外,由于潜在的长期健康风险,儿童和青少年高血压的早期发现和管理至关重要。然而,手工计算z分数既耗时又容易出错,阻碍了对有风险儿童的及时干预。本文介绍了一种创新的开放代码解决方案,直接在电子数据捕获平台Research electronic data capture (REDCap™)中进行实时Z-score评估,旨在简化对儿童身体发育的监测。方法:利用世界卫生组织(WHO)生长标准和国家健康与营养检查调查(NHANES)参考资料,我们的方法将z分数计算直接集成到REDCap中,为医疗保健专业人员和研究人员提供了一个安全且用户友好的环境。我们采用Bland-Altman分析,将我们的方法与现有的计算器(Knirps和Growth XP™)进行比较,使用所有变量的合成数据值。结果:Bland-Altman图显示了我们的REDCap计算与Knirps和Growth XP系统之间的强烈一致性。身高、体重指数和血压的z分数一致,证实了我们的方法在整个测量范围内的准确性。结论:与REDCap的集成简化了数据收集和分析,不再需要单独的软件和数据导出。此外,我们的解决方案采用了世界卫生组织(WHO)生长标准和国家健康与营养检查调查(NHANES)的参考资料。这不仅保证了计算的准确性,而且提高了其对不同研究背景的适用性。Bland-Altman分析建立了我们方法的可靠性,为儿童生长和血压监测提供了更有效的方法。
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引用次数: 0
Participant engagement and involvement in longitudinal cohort studies: qualitative insights from a selection of pregnancy and birth, twin, and family-based population cohort studies. 参与者参与和参与纵向队列研究:从妊娠和分娩、双胞胎和基于家庭的人口队列研究中获得的定性见解。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-12-03 DOI: 10.1186/s12874-024-02419-8
Isabelle Budin-Ljøsne, Nanna A G Fredheim, Charlotte Alison Jevne, Bojana Milanovic Kleven, Marie Aline Charles, Janine F Felix, Robin Flaig, María Paz García, Alexandra Havdahl, Shahid Islam, Shona M Kerr, Inger Kristine Meder, Lynn Molloy, Susan M B Morton, Costanza Pizzi, Aamnah Rahman, Gonneke Willemsen, Diane Wood, Jennifer R Harris

Background: Longitudinal cohort studies are pivotal to understand how socioeconomic, environmental, biological, and lifestyle factors influence health and disease. The added value of cohort studies increases as they accumulate life course data and expand across generations. Ensuring that participants stay motivated to contribute over decades of follow-up is, however, challenging. Participant engagement and involvement (PEI) aims to secure the long-term commitment of participants and promote researcher-participant interaction. This study explored PEI practices in a selection of pregnancy and birth, twin, and family-based population cohort studies.

Methods: Purposive sampling was used to identify cohorts in Europe, Australia and New Zealand. Fourteen semi-structured digital interviews were conducted with cohort study representatives to explore strategies for participant recruitment, informed consent, communication of general and individual information to participants, data collection, and participant involvement. Experiences, resources allocated to PEI, and reflections on future PEI, were discussed. The interview data were analyzed using a content analysis approach and summary results were reviewed and discussed by the representatives.

Results: The cohort studies used various strategies to recruit participants including support from health professionals and organizations combined with information on the studies' web sites and social media. New approaches such as intra-cohort recruitment, were being investigated. Most cohorts transitioned from paper-based to digital solutions to collect the participants' consent and data. While digital solutions increased efficiency, they also brought new challenges. The studies experimented with the use of participant advisory panels and focus groups to involve participants in making decisions, although their success varied across age and socio-economic background. Most representatives reported PEI resources to be limited and called for more human, technical, educational and financial resources to maximize the positive effects of PEI.

Conclusions: This study of PEI among well-established cohort studies underscores the importance of PEI for project sustainability and highlights key factors to consider in developing PEI. Our analysis shows that knowledge gaps exist regarding which approaches have highest impact on retention rates and are best suited for different participant groups. Research is needed to support the development of best practices for PEI as well as knowledge exchange between cohorts through network building.

背景:纵向队列研究是了解社会经济、环境、生物和生活方式因素如何影响健康和疾病的关键。队列研究的附加价值随着它们积累生命历程数据和跨代扩展而增加。然而,确保参与者在几十年的后续行动中保持积极性是一项挑战。参与者参与和参与(PEI)旨在确保参与者的长期承诺,促进研究人员与参与者的互动。本研究探讨了PEI在妊娠和分娩、双胞胎和基于家庭的人群队列研究中的实践。方法:目的抽样在欧洲、澳大利亚和新西兰确定队列。与队列研究代表进行了14次半结构化的数字访谈,以探索参与者招募、知情同意、向参与者传达一般和个人信息、数据收集和参与者参与的策略。讨论了PEI的经验、资源分配以及对未来PEI的思考。访谈数据采用内容分析法进行分析,并由代表对总结结果进行审查和讨论。结果:队列研究采用了各种策略来招募参与者,包括来自卫生专业人员和组织的支持,以及研究网站和社交媒体上的信息。正在研究新的办法,例如队列内征聘。大多数队列从基于纸张的解决方案过渡到数字解决方案,以收集参与者的同意和数据。虽然数字解决方案提高了效率,但也带来了新的挑战。这些研究尝试使用参与者咨询小组和焦点小组来让参与者参与决策,尽管他们的成功因年龄和社会经济背景而异。大多数代表报告说,PEI的资源是有限的,并呼吁更多的人力、技术、教育和财政资源,以最大限度地发挥PEI的积极作用。结论:本研究在成熟的队列研究中强调了PEI对项目可持续性的重要性,并强调了发展PEI需要考虑的关键因素。我们的分析表明,关于哪种方法对保留率影响最大,最适合不同的参与者群体,存在知识差距。需要进行研究,以支持制定PEI的最佳做法,并通过网络建设促进群组之间的知识交流。
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引用次数: 0
Causal effect of chemotherapy received dose intensity on survival outcome: a retrospective study in osteosarcoma. 化疗剂量强度对生存结果的因果影响:骨肉瘤的回顾性研究。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-12-03 DOI: 10.1186/s12874-024-02416-x
Marta Spreafico, Francesca Ieva, Marta Fiocco

Background: This study aims to analyse the effects of reducing Received Dose Intensity (RDI) in chemotherapy treatment for osteosarcoma patients on their survival by using a novel approach. Previous research has highlighted discrepancies between planned and actual RDI, even among patients randomized to the same treatment regimen. To mitigate toxic side effects, treatment adjustments, such as dose reduction or delayed courses, are necessary. Toxicities are therefore risk factors for mortality and predictors of future exposure levels. Toxicity introduces post-assignment confounding when assessing the causal effect of chemotherapy RDI on survival outcomes, a topic of ongoing debate.

Methods: Chemotherapy administration data from BO03 and BO06 Randomized Clinical Trials (RCTs) in ostosarcoma are employed to emulate a target trial with three RDI-based exposure strategies: 1) standard, 2) reduced, and 3) highly-reduced RDI. Investigations are conducted between subgroups of patients characterised by poor or good Histological Responses (HRe), i.e., the strongest known prognostic factor for survival in osteosarcoma. Inverse Probability of Treatment Weighting (IPTW) is first used to transform the original population into a pseudo-population which mimics the target randomized cohort. Then, a Marginal Structural Cox Model with effect modification is employed. Conditional Average Treatment Effects (CATEs) are ultimately measured as the difference between the Restricted Mean Survival Time of reduced/highly-reduced RDI strategy and the standard one. Confidence Intervals for CATEs are obtained using a novel IPTW-based bootstrap procedure.

Results: Significant effect modifications based on HRe were found. Increasing RDI-reductions led to contrasting trends for poor and good responders: the higher the reduction, the better (worsen) was the survival in poor (good) reponders. Due to their intrinsic resistance to chemotherapy, poor reponders could benefit from reduced RDI, with an average gain of 10.2 and 15.4 months at 5-year for reduced and highly-reduced exposures, respectively.

Conclusions: This study introduces a novel approach to (i) comprehensively address the challenges related to the analysis of chemotherapy data, (ii) mitigate the toxicity-treatment-adjustment bias, and (iii) repurpose existing RCT data for retrospective analyses extending beyond the original trials' intended scopes.

背景:本研究旨在通过一种新颖的方法分析降低骨肉瘤患者化疗中接受剂量强度(RDI)对其生存的影响。先前的研究强调了计划和实际RDI之间的差异,即使在随机分配到相同治疗方案的患者中也是如此。为了减轻毒副作用,必须调整治疗,如减少剂量或延迟疗程。因此,毒性是死亡率的危险因素和未来接触水平的预测因素。在评估化疗RDI对生存结果的因果关系时,毒性引入了分配后的混淆,这是一个持续争论的话题。方法:采用BO03和BO06随机临床试验(rct)的骨肉瘤化疗给药数据,模拟三种基于RDI暴露策略的靶试验:1)标准,2)降低RDI, 3)高度降低RDI。研究在以组织学反应(HRe)差或好为特征的患者亚组之间进行,HRe是骨肉瘤患者生存的已知最强预后因素。首先利用处理加权逆概率(IPTW)将原始群体转化为模拟目标随机队列的伪群体。然后,采用效应修正的边际结构Cox模型。条件平均治疗效果(Conditional Average Treatment Effects, CATEs)最终被衡量为减少/高度减少RDI策略与标准策略的限制平均生存时间之间的差异。利用一种新颖的基于iptw的自举方法获得了CATEs的置信区间。结果:以HRe为基础的改良效果显著。rdi减少的增加导致了不良反应和良好反应的不同趋势:减少的越高,不良(良好)反应者的生存越好(越差)。由于对化疗的内在抗性,反应不良的患者可以从减少RDI中获益,减少和高度减少暴露的患者在5年的平均获益分别为10.2和15.4个月。结论:本研究引入了一种新的方法来(i)全面解决与化疗数据分析相关的挑战,(ii)减轻毒性-治疗-调整偏差,以及(iii)重新利用现有的RCT数据进行回顾性分析,扩展到原始试验的预期范围。
{"title":"Causal effect of chemotherapy received dose intensity on survival outcome: a retrospective study in osteosarcoma.","authors":"Marta Spreafico, Francesca Ieva, Marta Fiocco","doi":"10.1186/s12874-024-02416-x","DOIUrl":"10.1186/s12874-024-02416-x","url":null,"abstract":"<p><strong>Background: </strong>This study aims to analyse the effects of reducing Received Dose Intensity (RDI) in chemotherapy treatment for osteosarcoma patients on their survival by using a novel approach. Previous research has highlighted discrepancies between planned and actual RDI, even among patients randomized to the same treatment regimen. To mitigate toxic side effects, treatment adjustments, such as dose reduction or delayed courses, are necessary. Toxicities are therefore risk factors for mortality and predictors of future exposure levels. Toxicity introduces post-assignment confounding when assessing the causal effect of chemotherapy RDI on survival outcomes, a topic of ongoing debate.</p><p><strong>Methods: </strong>Chemotherapy administration data from BO03 and BO06 Randomized Clinical Trials (RCTs) in ostosarcoma are employed to emulate a target trial with three RDI-based exposure strategies: 1) standard, 2) reduced, and 3) highly-reduced RDI. Investigations are conducted between subgroups of patients characterised by poor or good Histological Responses (HRe), i.e., the strongest known prognostic factor for survival in osteosarcoma. Inverse Probability of Treatment Weighting (IPTW) is first used to transform the original population into a pseudo-population which mimics the target randomized cohort. Then, a Marginal Structural Cox Model with effect modification is employed. Conditional Average Treatment Effects (CATEs) are ultimately measured as the difference between the Restricted Mean Survival Time of reduced/highly-reduced RDI strategy and the standard one. Confidence Intervals for CATEs are obtained using a novel IPTW-based bootstrap procedure.</p><p><strong>Results: </strong>Significant effect modifications based on HRe were found. Increasing RDI-reductions led to contrasting trends for poor and good responders: the higher the reduction, the better (worsen) was the survival in poor (good) reponders. Due to their intrinsic resistance to chemotherapy, poor reponders could benefit from reduced RDI, with an average gain of 10.2 and 15.4 months at 5-year for reduced and highly-reduced exposures, respectively.</p><p><strong>Conclusions: </strong>This study introduces a novel approach to (i) comprehensively address the challenges related to the analysis of chemotherapy data, (ii) mitigate the toxicity-treatment-adjustment bias, and (iii) repurpose existing RCT data for retrospective analyses extending beyond the original trials' intended scopes.</p>","PeriodicalId":9114,"journal":{"name":"BMC Medical Research Methodology","volume":"24 1","pages":"296"},"PeriodicalIF":3.9,"publicationDate":"2024-12-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11613923/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142766298","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
Understanding the impact of covariates on the classification of implementation units for soil-transmitted helminths control: a case study from Kenya. 了解协变量对土壤传播蠕虫控制实施单位分类的影响:来自肯尼亚的案例研究。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-11-29 DOI: 10.1186/s12874-024-02420-1
Amitha Puranik, Peter J Diggle, Maurice R Odiere, Katherine Gass, Stella Kepha, Collins Okoyo, Charles Mwandawiro, Florence Wakesho, Wycliff Omondi, Hadley Matendechero Sultani, Emanuele Giorgi

Background: Soil-transmitted helminthiasis (STH) are a parasitic infection that predominantly affects impoverished regions. Model-based geostatistics (MBG) has been established as a set of modern statistical methods that enable mapping of disease risk in a geographical area of interest. We investigate how the use of remotely sensed covariates can help to improve the predictive inferences on STH prevalence using MBG methods. In particular, we focus on how the covariates impact on the classification of areas into distinct class of STH prevalence.

Methods: This study uses secondary data obtained from a sample of 1551 schools in Kenya, gathered through a combination of longitudinal and cross-sectional surveys. We compare the performance of two geostatistical models: one that does not make use of any spatially referenced covariate; and a second model that uses remotely sensed covariates to assist STH prevalence prediction. We also carry out a simulation study in which we compare the performance of the two models in the classifications of areal units with varying sample sizes and prevalence levels.

Results: The model with covariates generated lower levels of uncertainty and was able to classify 88 more districts into prevalence classes than the model without covariates, which instead left those as "unclassified". The simulation study showed that the model with covariates also yielded a higher proportion of correct classification of at least 40% for all sub-counties.

Conclusion: Covariates can substantially reduce the uncertainty of the predictive inference generated from geostatistical models. Using covariates can thus contribute to the design of more effective STH control strategies by reducing sample sizes without compromising the predictive performance of geostatistical models.

背景:土壤传播性寄生虫病是一种主要影响贫困地区的寄生虫感染。基于模型的地质统计学(MBG)已被确立为一套现代统计方法,能够在感兴趣的地理区域绘制疾病风险图。我们研究了如何使用遥感协变量来帮助改进MBG方法对STH患病率的预测推断。我们特别关注协变量如何影响将STH流行程度划分为不同类别的地区。方法:本研究使用从肯尼亚1551所学校样本中获得的二手数据,通过纵向和横断面调查相结合收集。我们比较了两种地质统计模型的性能:一种不使用任何空间参考协变量;第二个模型使用遥感协变量来协助STH流行预测。我们还进行了一项模拟研究,在该研究中,我们比较了两种模型在不同样本量和流行水平的面积单位分类中的性能。结果:与没有协变量的模型相比,有协变量的模型产生的不确定性水平较低,并且能够将88个地区划分为患病率类别,而不是将这些地区划分为“未分类”。模拟研究表明,带有协变量的模型对所有子县的正确分类比例也更高,至少为40%。结论:协变量可以大大降低地统计模型预测推理的不确定性。因此,使用协变量可以在不影响地质统计模型预测性能的情况下减少样本量,从而有助于设计更有效的STH控制策略。
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引用次数: 0
Tips from an expert panel on the development of a clinical research protocol. 专家小组对临床研究方案制定的建议。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-11-29 DOI: 10.1186/s12874-024-02315-1
Abdelrahman M Makram, Randa Elsheikh, Omar M Makram, Nguyen Thanh Van, Nguyen Hai Nam, Nguyen Khoi Quan, Nguyen Tran Minh Duc, Ngoc Quynh Tram Nguyen, Gibson Omwansa Javes, Sara S Elsheikh, Atsuko Imoto, Peter Lee, Norio Ohmagari, Hirotsugu Aiga, Yasuhiko Kamiya, Patricia Takako Endo, Nguyen Tien Huy

A research protocol is a document that outlines the proposed research idea and is submitted to funding agencies, institutions, or journals for approval. Writing a research protocol represents a challenge, particularly for early-career researchers. In this guide, we aim to provide detailed guidance with the key components and offer practical tips for crafting a research protocol in line with the various study designs. Specifically, the structure of a research protocol should contain the following items: (1) a title that is specific, catchy, and impressive within the word limitation; (2) an abstract that briefs the critical points of the study; (3) an introduction highlighting the study context from broad to narrow and defining the knowledge gap; (4) a justification underlining the significance of the proposed study; (5) Specific, Measurable, Attainable, Relevant, and Time-bound (SMART) objective(s) and aim(s); (6) a methodology covering seven sub-items, including [i] study design and settings, [ii] study subjects, [iii] sample size calculation and sampling, [iv] participants recruitment and follow-up, [v] questionnaire development, [vi] potential variables and outcomes, and [vii] data analysis plan; (7) dissemination of the results; (8) ethics and conflict of interests; (9) budgets analysis/ funding disclosure; and (10) references. This guide will give an overview of these steps and provide clear and concise tips on how to successfully draft a scientific protocol. With careful planning and appropriate guidance, it is possible to develop a well-structured and compelling protocol to obtain approval for the conduction of the study or funding from agencies, institutions, or organizations.

研究方案是一份概述拟议研究想法的文件,并提交给资助机构、机构或期刊审批。编写研究方案是一项挑战,特别是对早期的研究人员来说。在本指南中,我们的目标是提供详细的指导与关键组成部分,并提供实用的技巧,以制定符合各种研究设计的研究方案。具体而言,研究方案的结构应包含以下项目:(1)在字数限制内,标题要具体、醒目、令人印象深刻;(2)简要说明研究要点的摘要;(3)绪论,由宽到窄,突出研究背景,界定知识差距;(4)论证建议研究的重要性;(5)具体的、可衡量的、可实现的、相关的和有时限的(SMART)目标和目的;(6)包含七个分项的方法论,包括[i]研究设计和设置,[ii]研究对象,[iii]样本量计算和抽样,[iv]参与者招募和随访,[v]问卷编制,[vi]潜在变量和结果,以及[vii]数据分析计划;(七)结果的传播;(8)道德和利益冲突;(九)预算分析/资金披露;(10)参考文献。本指南将概述这些步骤,并就如何成功起草科学方案提供清晰简明的提示。有了仔细的计划和适当的指导,就有可能制定出结构良好且令人信服的方案,以获得机构、机构或组织对研究进行的批准或资助。
{"title":"Tips from an expert panel on the development of a clinical research protocol.","authors":"Abdelrahman M Makram, Randa Elsheikh, Omar M Makram, Nguyen Thanh Van, Nguyen Hai Nam, Nguyen Khoi Quan, Nguyen Tran Minh Duc, Ngoc Quynh Tram Nguyen, Gibson Omwansa Javes, Sara S Elsheikh, Atsuko Imoto, Peter Lee, Norio Ohmagari, Hirotsugu Aiga, Yasuhiko Kamiya, Patricia Takako Endo, Nguyen Tien Huy","doi":"10.1186/s12874-024-02315-1","DOIUrl":"10.1186/s12874-024-02315-1","url":null,"abstract":"<p><p>A research protocol is a document that outlines the proposed research idea and is submitted to funding agencies, institutions, or journals for approval. Writing a research protocol represents a challenge, particularly for early-career researchers. In this guide, we aim to provide detailed guidance with the key components and offer practical tips for crafting a research protocol in line with the various study designs. Specifically, the structure of a research protocol should contain the following items: (1) a title that is specific, catchy, and impressive within the word limitation; (2) an abstract that briefs the critical points of the study; (3) an introduction highlighting the study context from broad to narrow and defining the knowledge gap; (4) a justification underlining the significance of the proposed study; (5) Specific, Measurable, Attainable, Relevant, and Time-bound (SMART) objective(s) and aim(s); (6) a methodology covering seven sub-items, including [i] study design and settings, [ii] study subjects, [iii] sample size calculation and sampling, [iv] participants recruitment and follow-up, [v] questionnaire development, [vi] potential variables and outcomes, and [vii] data analysis plan; (7) dissemination of the results; (8) ethics and conflict of interests; (9) budgets analysis/ funding disclosure; and (10) references. This guide will give an overview of these steps and provide clear and concise tips on how to successfully draft a scientific protocol. With careful planning and appropriate guidance, it is possible to develop a well-structured and compelling protocol to obtain approval for the conduction of the study or funding from agencies, institutions, or organizations.</p>","PeriodicalId":9114,"journal":{"name":"BMC Medical Research Methodology","volume":"24 1","pages":"293"},"PeriodicalIF":3.9,"publicationDate":"2024-11-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11606108/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142754672","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
Predicting the time to get back to work using statistical models and machine learning approaches. 使用统计模型和机器学习方法预测重返工作岗位的时间。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-11-29 DOI: 10.1186/s12874-024-02390-4
George Bouliotis, M Underwood, R Froud

Background: Whether machine learning approaches are superior to classical statistical models for survival analyses, especially in the case of lack of proportionality, is unknown.

Objectives: To compare model performance and predictive accuracy of classic regressions and machine learning approaches using data from the Inspiring Families programme.

Methods: The Inspiring Families programme aims to support members of families with complex issues to return to work. We explored predictors of time to return to work with proportional hazards (Semi-Parametric Cox in Stata) and (Flexible Parametric Parmar-Royston in Stata) against the Survival penalised regression with Elastic Net penalty (scikit-survival), (conditional) Survival Forest algorithm (pySurvival), and (kernel) Survival Support Vector Machine (pySurvival).

Results: At baseline we obtained data on 61 binary variables from all 3161 participants. No model appeared superior, with a low predictive power (concordance index between 0.51 and 0.61). The median time for finding the first job was about 254 days. The top five contributing variables were 'family issues and additional barriers', 'restriction of hours', 'available CV', 'self-employment considered' and 'education'. The Harrell's Concordance index was range from 0.60 (Cox model) to 0.71 (Random Survival Forest) suggesting a better fit for the machine learning approaches. However, the comparison for predicting median time on a selected scenario based showed only minor differences.

Conclusion: Implementing a series of survival models with and without proportional hazards background provides a useful insight as well as better interpretation of the coefficients affected by non-linearities. However, that better fit does not translate to substantially higher predictive power and accuracy from using machine learning approaches. Further tuning of the machine learning algorithms may provide improved results.

背景:机器学习方法是否优于经典的生存分析统计模型,特别是在缺乏比例性的情况下,是未知的。目的:比较经典回归和机器学习方法的模型性能和预测准确性,使用来自激励家庭计划的数据。方法:激励家庭方案旨在支持有复杂问题的家庭成员重返工作岗位。我们探索了使用比例风险(Stata中的半参数Cox)和(Stata中的柔性参数Parmar-Royston)来预测回归工作时间的预测因子,以对抗弹性网络惩罚(scikit-survival)、(条件)生存森林算法(pySurvival)和(内核)生存支持向量机(pySurvival)的生存惩罚回归。结果:在基线时,我们获得了来自所有3161名参与者的61个二进制变量的数据。没有模型表现出优势,预测能力较低(一致性指数在0.51 ~ 0.61之间)。找到第一份工作的平均时间约为254天。前五大影响因素是“家庭问题和其他障碍”、“工作时间限制”、“可用简历”、“考虑自主创业”和“教育程度”。Harrell’s Concordance指数的范围从0.60 (Cox模型)到0.71(随机生存森林),这表明更适合机器学习方法。然而,预测中位时间的比较在一个选定的方案基础上显示只有微小的差异。结论:实施一系列具有和不具有比例风险背景的生存模型提供了有用的见解,并更好地解释了受非线性影响的系数。然而,更好的拟合并不能转化为使用机器学习方法的更高的预测能力和准确性。进一步调整机器学习算法可能会提供更好的结果。
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引用次数: 0
Non-collapsibility and built-in selection bias of period-specific and conventional hazard ratio in randomized controlled trials. 随机对照试验中特定时期危险比和常规危险比的不可比性和内在选择偏差。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-11-26 DOI: 10.1186/s12874-024-02402-3
Helen Bian, Menglan Pang, Guanbo Wang, Zihang Lu

Background: The hazard ratio of the Cox proportional hazards model is widely used in randomized controlled trials to assess treatment effects. However, two properties of the hazard ratio including the non-collapsibility and built-in selection bias need to be further investigated.

Methods: We conduct simulations to differentiate the non-collapsibility effect and built-in selection bias from the difference between the marginal and the conditional hazard ratio. Meanwhile, we explore the performance of the Cox model with inverse probability of treatment weighting for covariate adjustment when estimating the marginal hazard ratio. The built-in selection bias is further assessed in the period-specific hazard ratio.

Results: The conditional hazard ratio is a biased estimate of the marginal effect due to the non-collapsibility property. In contrast, the hazard ratio estimated from the inverse probability of treatment weighting Cox model provides an unbiased estimate of the true marginal hazard ratio. The built-in selection bias only manifests in the period-specific hazard ratios even when the proportional hazards assumption is satisfied. The Cox model with inverse probability of treatment weighting can be used to account for confounding bias and provide an unbiased effect under the randomized controlled trials setting when the parameter of interest is the marginal effect.

Conclusions: We propose that the period-specific hazard ratios should always be avoided due to the profound effects of built-in selection bias.

背景:随机对照试验中广泛使用 Cox 比例危险模型的危险比来评估治疗效果。然而,需要进一步研究危险比的两个特性,包括非可比性和内置选择偏差:方法:我们通过模拟,从边际危险比和条件危险比之间的差异来区分非可比性效应和内置选择偏差。同时,我们还探讨了在估计边际危险比时,采用治疗反概率加权的 Cox 模型的协变量调整性能。我们还进一步评估了特定时期危险比的内在选择偏差:结果:由于非可比性,条件危险比对边际效应的估计存在偏差。相比之下,根据治疗加权逆概率考克斯模型估算的危害比对真正的边际危害比的估算是无偏的。即使在满足比例危害假设的情况下,内置的选择偏差也只表现在特定时期的危害比上。当感兴趣的参数是边际效应时,具有治疗逆概率加权的 Cox 模型可用于考虑混杂偏差,并在随机对照试验设置下提供无偏效应:我们建议,由于内在选择偏差的深远影响,应始终避免使用特定时期危险比。
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引用次数: 0
Exploring the characteristics, methods and reporting of systematic reviews with meta-analyses of time-to-event outcomes: a meta-epidemiological study. 通过对时间到事件结果的荟萃分析探索系统综述的特点、方法和报告:一项荟萃流行病学研究。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-11-25 DOI: 10.1186/s12874-024-02401-4
Marius Goldkuhle, Caroline Hirsch, Claire Iannizzi, Ana-Mihaela Zorger, Ralf Bender, Elvira C van Dalen, Lars G Hemkens, Ina Monsef, Nina Kreuzberger, Nicole Skoetz

Background: Time-to-event analysis is associated with methodological complexities. Previous research identified flaws in the reporting of time-to-event analyses in randomized trial publications. These hardships impose challenges for meta-analyses of time-to-event outcomes based on aggregate data. We examined the characteristics, reporting and methods of systematic reviews including such analyses.

Methods: Through a systematic search (02/2017-08/2020), we identified 50 Cochrane Reviews with ≥ 1 meta-analysis based on the hazard ratio (HR) and a corresponding random sample (n = 50) from core clinical journals (Medline; 08/02/2021). Data was extracted in duplicate and included outcome definitions, general and time-to-event specific methods and handling of time-to-event relevant trial characteristics.

Results: The included reviews analyzed 217 time-to-event outcomes (Median: 2; IQR 1-2), most frequently overall survival (41%). Outcome definitions were provided for less than half of time-to-event outcomes (48%). Few reviews specified general methods, e.g., included analysis types (intention-to-treat, per protocol) (35%) and adjustment of effect estimates (12%). Sources that review authors used for retrieval of time-to-event summary data from publications varied substantially. Most frequently reported were direct inclusion of HRs (64%) and reference to established guidance without further specification (46%). Study characteristics important to time-to-event analysis, such as variable follow-up, informative censoring or proportional hazards, were rarely reported. If presented, complementary absolute effect estimates calculated based on the pooled HR were incorrectly calculated (14%) or correct but falsely labeled (11%) in several reviews.

Conclusions: Our findings indicate that limitations in reporting of trial time-to-event analyses translate to the review level as well. Inconsistent reporting of meta-analyses of time-to-event outcomes necessitates additional reporting standards.

背景:时间到事件分析与复杂的方法论有关。以往的研究发现,随机试验出版物中的时间到事件分析报告存在缺陷。这些缺陷给基于综合数据的时间到事件结果荟萃分析带来了挑战。我们研究了包含此类分析的系统综述的特点、报告和方法:通过系统检索(02/2017-08/2020),我们从核心临床期刊(Medline; 08/02/2021)中确定了50篇Cochrane综述,其中基于危险比(HR)的荟萃分析≥1项,并确定了相应的随机样本(n = 50)。数据提取一式两份,包括结果定义、一般方法和特定时间到事件的方法,以及对时间到事件相关试验特征的处理:结果:纳入的综述分析了 217 项时间到事件结果(中位数:2;IQR 1-2),其中最常见的是总生存率(41%)。不到一半的时间到事件结果(48%)提供了结果定义。很少有综述说明一般方法,例如包括分析类型(意向治疗、按方案)(35%)和效果估计值调整(12%)。综述作者从出版物中检索时间到事件汇总数据的来源差别很大。报道最多的是直接纳入 HRs(64%)和参考既定指南而不做进一步说明(46%)。对于时间到事件分析非常重要的研究特征,如随访时间不固定、信息性普查或比例危险度,很少有报道。在几篇综述中,根据汇总HR计算的补充绝对效应估计值如果出现错误计算(14%)或正确但被错误标注(11%):我们的研究结果表明,试验时间到事件分析报告的局限性也会转化到综述层面。时间到事件结果的荟萃分析报告不一致,因此有必要制定更多的报告标准。
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引用次数: 0
The role of the estimand framework in the analysis of patient-reported outcomes in single-arm trials: a case study in oncology. 在单臂试验中分析患者报告结果时使用估计值框架的作用:肿瘤学案例研究。
IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-11-23 DOI: 10.1186/s12874-024-02408-x
Doranne Thomassen, Satrajit Roychoudhury, Cecilie Delphin Amdal, Dries Reynders, Jammbe Z Musoro, Willi Sauerbrei, Els Goetghebeur, Saskia le Cessie

Background: Patient-reported outcomes (PROs) play an increasing role in the evaluation of oncology treatments. At the same time, single-arm trials are commonly included in regulatory approval submissions. Because of the high risk of biases, results from single-arm trials require careful interpretation. This benefits from a clearly defined estimand, or target of estimation. In this case study, we demonstrated how the ICH E9 (R1) estimand framework can be implemented in SATs with PRO endpoints.

Methods: For the global quality of life outcome in a real single-arm lung cancer trial, a range of possible estimands was defined. We focused on the choice of the variable of interest and strategies to deal with intercurrent events (death, treatment discontinuation and disease progression). Statistical methods were described for each estimand and the corresponding results on the trial data were shown.

Results: Each intercurrent event handling strategy resulted in its own estimated mean global quality of life over time, with a specific interpretation, suitable for a corresponding clinical research aim. In the setting of this case study, a 'while alive' strategy for death and a 'treatment policy' strategy for non-terminal intercurrent events were deemed aligned with a descriptive research aim to inform clinicians and patients about expected quality of life after the start of treatment.

Conclusions: The results show that decisions made in the estimand framework are not trivial. Trial results and their interpretation strongly depend on the chosen estimand. The estimand framework provides a structure to match a research question with a clear target of estimation, supporting specific clinical decisions. Adherence to this framework can help improve the quality of data collection, analysis and reporting of PROs in SATs, impacting decision making in clinical practice.

背景:患者报告结果(PROs)在肿瘤治疗评估中发挥着越来越重要的作用。与此同时,单臂试验通常被纳入监管部门的审批申请中。由于存在偏差的高风险,单臂试验的结果需要仔细解读。这得益于明确定义的估算对象或估算目标。在本案例研究中,我们展示了如何将 ICH E9 (R1) 估计指标框架应用于具有 PRO 终点的 SAT:方法:对于一项真实的单臂肺癌试验中的总体生活质量结果,我们定义了一系列可能的估计值。我们重点关注了相关变量的选择以及处理并发症(死亡、治疗中止和疾病进展)的策略。我们介绍了每种估计值的统计方法,并显示了试验数据的相应结果:结果:每种处理并发症的策略都能估算出一段时间内的总体生活质量平均值,并根据相应的临床研究目标做出具体解释。在本案例研究中,针对死亡的 "存活时 "策略和针对非终末期并发症的 "治疗政策 "策略被认为符合描述性研究的目的,即告知临床医生和患者开始治疗后的预期生活质量:研究结果表明,在估计值框架内做出的决定并非微不足道。试验结果及其解释在很大程度上取决于所选择的估计指标。估算指标框架提供了一个结构,使研究问题与明确的估算目标相匹配,从而为具体的临床决策提供支持。遵守这一框架有助于提高 SAT 中 PROs 的数据收集、分析和报告质量,从而影响临床实践中的决策制定。
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引用次数: 0
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