causal inference

因果推理
  • 文章类型: Journal Article
    这项研究通过将实验得出的因果先验集成到神经网络中,引入了一种新颖的运输建模方法。我们使用二甲双胍的案例研究来说明这种范式,一种无处不在的新兴药物污染物,以及它在沙质介质中的运输行为。具体来说,来自二甲双胍沙质柱传输实验的数据用于通过基于物理的模型Hydrus-1D估计不可观察的参数,然后是数据增强,以产生更全面的数据集。构造了一个包含关键变量的因果图,帮助识别有影响的变量并估计它们的因果动态或“因果先验”。“从增强数据集中提取的因果先验包括未充分开发的系统参数,如1型吸附分数F,一阶反应速率系数α,和运输系统规模。它们对运输过程的中等影响已进行了定量评估(分别为归一化因果效应0.0423,-0.1447和-0.0351),并首次考虑了足够的混杂因素。先验后来通过两种方法嵌入到多层神经网络中:因果权重初始化和因果先验正则化。根据AutoML超参数调整实验的结果,同时使用两种嵌入方法作为一种更有利的实践,因为我们提出的因果权重初始化技术可以增强模型的稳定性,特别是当与因果先验正则化结合使用时。在利用这两种技术的实验中,R平方值在0.881达到峰值。这项研究展示了专家知识和数据驱动方法之间的平衡方法,在黑盒模型中提供增强的可解释性,例如用于环境建模的神经网络。
    This study introduces a novel approach to transport modelling by integrating experimentally derived causal priors into neural networks. We illustrate this paradigm using a case study of metformin, a ubiquitous pharmaceutical emerging pollutant, and its transport behaviour in sandy media. Specifically, data from metformin\'s sandy column transport experiment was used to estimate unobservable parameters through a physics-based model Hydrus-1D, followed by a data augmentation to produce a more comprehensive dataset. A causal graph incorporating key variables was constructed, aiding in identifying impactful variables and estimating their causal dynamics or \"causal prior.\" The causal priors extracted from the augmented dataset included underexplored system parameters such as the type-1 sorption fraction F, first-order reaction rate coefficient α, and transport system scale. Their moderate impact on the transport process has been quantitatively evaluated (normalized causal effect 0.0423, -0.1447 and -0.0351, respectively) with adequate confounders considered for the first time. The prior was later embedded into multilayer neural networks via two methods: causal weight initialization and causal prior regularization. Based on the results from AutoML hyperparameter tuning experiments, using two embedding methods simultaneously emerged as a more advantageous practice since our proposed causal weight initialization technique can enhance model stability, particularly when used in conjunction with causal prior regularization. amongst those experiments utilizing both techniques, the R-squared values peaked at 0.881. This study demonstrates a balanced approach between expert knowledge and data-driven methods, providing enhanced interpretability in black-box models such as neural networks for environmental modelling.
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  • 文章类型: Journal Article
    在此更新中,我们讨论了最近的美国FDA指南,该指南提供了有关适当研究设计和分析的更具体的指南,以支持非干预性研究的因果推断,以及欧洲药品管理局(EMA)和药品管理局负责人(HMA)公共电子目录的发布.我们还重点介绍了一篇文章,该文章建议在协议最终确定之前评估数据质量和适用性,以及美国医学会杂志认可的框架,用于在发布现实世界的证据研究时使用因果语言。最后,我们探索大型语言模型在自动化开发卫生经济模型方面的潜力。
    In this update, we discuss recent US FDA guidance offering more specific guidelines on appropriate study design and analysis to support causal inference for non-interventional studies and the launch of the European Medicines Agency (EMA) and the Heads of Medicines Agencies (HMA) public electronic catalogues. We also highlight an article recommending assessing data quality and suitability prior to protocol finalization and a Journal of the American Medical Association-endorsed framework for using causal language when publishing real-world evidence studies. Finally, we explore the potential of large language models to automate the development of health economic models.
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  • 文章类型: Journal Article
    三阴性乳腺癌(TNBC)患者的辅助化疗存在潜在的不确定性和过度治疗。
    本研究旨在探讨深度学习(DL)模型在个性化化疗选择中的表现,并量化基线特征对治疗疗效的影响。
    将接受模型推荐治疗的患者与未接受治疗的患者进行比较。根据模型推荐的治疗总生存期是主要结果。为了减轻偏见,采用逆概率治疗加权(IPTW)。采用混合效应多元线性回归来可视化患者某些基线特征对化疗选择的影响。
    共有10070名女性TNBC患者符合纳入标准。根据生存数据模型推荐的自我正常化平衡(SNB)个体治疗效果进行治疗与生存获益相关(IPTW调整后的风险比:0.53,95%CI,0.32-8.60;IPTW调整后的风险差异:12.90,95%CI,6.99-19.01;IPTW调整后的受限平均生存时间差异:5.54,95%CI,1.36-8.61),这超过了其他模型和国家综合癌症网络指南。对于不推荐接受这种治疗的患者,没有观察到化疗的生存益处。SNB预测具有较大肿瘤和更多阳性淋巴结的老年患者是化疗的最佳候选者。
    这些研究结果表明,SNB模型可以识别TNBC患者,他们可以从化疗中获益。这种新颖的分析方法可以提供偏见的个体生存信息和治疗建议。需要进一步的研究以在具有更多特征和结果测量的临床环境中验证这些模型。
    UNASSIGNED: Potential uncertainties and overtreatment exist in adjuvant chemotherapy for triple-negative breast cancer (TNBC) patients.
    UNASSIGNED: This study aims to explore the performance of deep learning (DL) models in personalized chemotherapy selection and quantify the impact of baseline characteristics on treatment efficacy.
    UNASSIGNED: Patients who received treatment recommended by models were compared to those who did not. Overall survival for treatment according to model recommendations was the primary outcome. To mitigate bias, inverse probability treatment weighting (IPTW) was employed. A mixed-effect multivariate linear regression was employed to visualize the influence of certain baseline features of patients on chemotherapy selection.
    UNASSIGNED: A total of 10,070 female TNBC patients met the inclusion criteria. Treatment according to Self-Normalizing Balanced (SNB) individual treatment effect for survival data model recommendations was associated with a survival benefit (IPTW-adjusted hazard ratio: 0.53, 95% CI, 0.32-8.60; IPTW-adjusted risk difference: 12.90, 95% CI, 6.99-19.01; IPTW-adjusted the difference in restricted mean survival time: 5.54, 95% CI, 1.36-8.61), which surpassed other models and the National Comprehensive Cancer Network guidelines. No survival benefit for chemotherapy was seen for patients not recommended to receive this treatment. SNB predicted older patients with larger tumors and more positive lymph nodes are the optimal candidates for chemotherapy.
    UNASSIGNED: These findings suggest that the SNB model may identify patients with TNBC who could benefit from chemotherapy. This novel analytical approach may provide debiased individual survival information and treatment recommendations. Further research is required to validate these models in clinical settings with more features and outcome measurements.
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  • 文章类型: Editorial
    了解麻醉提供者的性别对患者结局的影响需要仔细的统计分析和许多假设的有效性。英国麻醉杂志最近的一项研究调查了麻醉提供者性别对患者预后的影响,使用来自美国两个学术医疗保健网络的数据。作者表明,女性提供者的性别与术中并发症的风险较低有关。他们还表明,男性和女性提供者在术后结果方面没有有意义的差异。最近有几项研究考虑了医疗保健提供者性别对结果的影响。我们将讨论这些结果的解释以及基本假设的有效性。
    Unravelling the impact of the sex of the anaesthesia provider on the outcomes of patients requires careful statistical analysis and the validity of many assumptions. A recent study in the British Journal of Anaesthesia investigates the effect of anaesthesia provider sex on patient outcomes, using data from two academic healthcare networks in the USA. The authors show that female provider sex was associated with a lower risk of intraoperative complications. They also show that there was no meaningful difference between male and female providers with respect to postoperative outcomes. There have been several recent studies considering the effect of healthcare provider sex on outcomes. We will discuss the interpretation of these results and the validity of the underlying assumptions.
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  • 文章类型: Journal Article
    暂无摘要。
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  • 文章类型: Journal Article
    目的:本研究调查了参加自助小组对接受阿片类药物使用障碍(MOUD)治疗的个体完成治疗的影响。考虑到MOUD的次优依从性和保留率,本研究旨在研究治疗完成与患者水平因素之间的关联.具体来说,对于接受MOUD的患者,我们评估了自助小组参与和完成治疗之间的因果关系.
    方法:我们使用了药物滥用和精神卫生服务管理局(SAMHSA)治疗事件数据集:2015年至2019年出院(TEDS-D)。数据根据患者的阿片类药物使用史进行过滤,人口统计,治疗方式,以及其他相关信息。在这项观察性研究中,机器学习模型(Lasso回归,决策树,随机森林,和XGBoost)被开发来预测治疗完成。结果自适应弹性网(OAENet)用于选择混杂因素和结果预测因子,使用稳健的McNemars检验来评估自助小组参与与MOUD治疗完成之间的因果关系。
    结果:机器学习模型显示参与自助小组和完成治疗之间有很强的关联。我们的因果分析表明,对于稳健的McNemars检验,对治疗(ATT)的平均治疗效果为0.260,p值<0.0001。
    结论:我们的研究表明参加自助团体对接受MOUD治疗的人的重要性。我们发现,与单独的MOUD相比,参加MOUD以及自助小组导致治疗完成的机会更高。这表明政策制定者应考虑进一步将自助小组纳入OUD的治疗方案,以提高依从性和完成率。
    OBJECTIVE: This study investigates the impact of participation in self-help groups on treatment completion among individuals undergoing medication for opioid use disorder (MOUD) treatment. Given the suboptimal adherence and retention rates for MOUD, this research seeks to examine the association between treatment completion and patient-level factors. Specifically, we evaluated the causal relationship between self-help group participation and treatment completion for patients undergoing MOUD.
    METHODS: We used the Substance Abuse and Mental Health Services Administration\'s (SAMHSA) Treatment Episode Data Set: Discharges (TEDS-D) from 2015 to 2019. The data are filtered by the patient\'s opioid use history, demographics, treatment modality, and other relevant information. In this observational study, machine learning models (Lasso Regression, Decision Trees, Random Forest, and XGBoost) were developed to predict treatment completion. Outcome Adaptive Elastic Net (OAENet) was used to select confounders and outcome predictors, and the robust McNemars test was used to evaluate the causal relationship between self-help group participation and MOUD treatment completion.
    RESULTS: The machine-learning models showed a strong association between participation in self-help groups and treatment completion. Our causal analysis demonstrated an average treatment effect on treated (ATT) of 0.260 and a p-value < 0.0001 for the robust McNemars test.
    CONCLUSIONS: Our study demonstrates the importance of participation in self-help groups for MOUD treatment recipients. We found that participation in MOUD along with self-help groups caused higher chances of treatment completion than MOUD alone. This suggests that policymakers should consider further integrating self-help groups into the treatment for OUD to improve the adherence and completion rate.
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  • 文章类型: Journal Article
    心理学家利用纵向设计来检查焦点预测因子的因果效应(即,治疗或暴露)随着时间的推移。但是,自然观察到的时变治疗的因果推断因治疗依赖性混杂而变得复杂,其中早期治疗会影响后期治疗的混杂因素。在本教程文章中,我们从因果推理文献中向心理学家介绍这个问题的既定解决方案:参数g计算公式。我们解释了为什么g公式在处理依赖治疗的混杂因素方面是有效的。我们证明了参数g公式在概念上是直观的,易于实现,非常适合心理学研究。我们首先澄清,参数g公式实质上利用了一系列统计模型来估计所有治疗后变量的联合分布。这些统计模型可以很容易地指定为标准的多元线性回归函数。我们利用这种洞察力来实现使用lavaan的参数g公式,一种广泛采用的用于结构方程建模的R包。此外,我们描述了如何使用参数g公式来估计边际结构模型,其因果参数解析地编码时变治疗效果。我们希望对参数g公式的这种可访问的介绍将为心理学家提供一种分析工具,以使用纵向数据解决他们的因果查询。
    Psychologists leverage longitudinal designs to examine the causal effects of a focal predictor (i.e., treatment or exposure) over time. But causal inference of naturally observed time-varying treatments is complicated by treatment-dependent confounding in which earlier treatments affect confounders of later treatments. In this tutorial article, we introduce psychologists to an established solution to this problem from the causal inference literature: the parametric g-computation formula. We explain why the g-formula is effective at handling treatment-dependent confounding. We demonstrate that the parametric g-formula is conceptually intuitive, easy to implement, and well-suited for psychological research. We first clarify that the parametric g-formula essentially utilizes a series of statistical models to estimate the joint distribution of all post-treatment variables. These statistical models can be readily specified as standard multiple linear regression functions. We leverage this insight to implement the parametric g-formula using lavaan, a widely adopted R package for structural equation modeling. Moreover, we describe how the parametric g-formula may be used to estimate a marginal structural model whose causal parameters parsimoniously encode time-varying treatment effects. We hope this accessible introduction to the parametric g-formula will equip psychologists with an analytic tool to address their causal inquiries using longitudinal data.
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  • 文章类型: Journal Article
    背景:在医疗机构中感知到的歧视会对少数群体的心理健康产生不利影响。然而,感知到的歧视和心理健康之间的关联容易产生无法衡量的混淆。该研究旨在定量评估未测量的混杂因素在这种关联中的影响,使用g估计。
    方法:在一个以非洲裔美国人为主的群体中,我们应用g估计来估计感知歧视和心理健康之间的关系,对测量的混杂因素进行调整和未调整。心理健康是通过焦虑的临床诊断来衡量的,抑郁症和双相情感障碍。感知到的歧视被测量为医疗保健机构中患者报告的歧视事件的数量。测量的混杂因素包括人口统计,社会经济,居住和健康特征。根据g估计,混杂的影响表示为α1。我们比较了测量和未测量混杂的α1。
    结果:观察到卫生保健机构中感知的歧视与心理健康结果之间存在很强的关联。对于焦虑,未对测量的混杂因素进行调整和调整的比值比(95%置信区间)为1.30(1.21,1.39)和1.26(1.17,1.36),分别。测量的混杂的α1为-0.066。未测量的混杂与α1=0.200,这是测量混杂的三倍以上,对应于1.12(1.01,1.24)的赔率比。其他心理健康结果也观察到了类似的结果。
    结论:与测量的混杂因素相比,未测量的三倍测量混杂不足以解释感知歧视和心理健康之间的关联,表明这种关联对未测量的混杂是稳健的。这项研究提供了一个新的框架来定量评估未测量的混杂。
    BACKGROUND: Perceived discrimination in health care settings can have adverse consequences on mental health in minority groups. However, the association between perceived discrimination and mental health is prone to unmeasured confounding. The study aims to quantitatively evaluate the influence of unmeasured confounding in this association, using g-estimation.
    METHODS: In a predominantly African American cohort, we applied g-estimation to estimate the association between perceived discrimination and mental health, adjusted and unadjusted for measured confounders. Mental health was measured using clinical diagnoses of anxiety, depression and bipolar disorder. Perceived discrimination was measured as the number of patient-reported discrimination events in health care settings. Measured confounders included demographic, socioeconomic, residential and health characteristics. The influence of confounding was denoted as α1 from g-estimation. We compared α1 for measured and unmeasured confounding.
    RESULTS: Strong associations between perceived discrimination in health care settings and mental health outcomes were observed. For anxiety, the odds ratio (95% confidence interval) unadjusted and adjusted for measured confounders were 1.30 (1.21, 1.39) and 1.26 (1.17, 1.36), respectively. The α1 for measured confounding was -0.066. Unmeasured confounding with α1=0.200, which was over three times that of measured confounding, corresponds to an odds ratio of 1.12 (1.01, 1.24). Similar results were observed for other mental health outcomes.
    CONCLUSIONS: Compared with measured confounding, unmeasured that was three times measured confounding was not enough to explain away the association between perceived discrimination and mental health, suggesting that this association is robust to unmeasured confounding. This study provides a novel framework to quantitatively evaluate unmeasured confounding.
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  • 文章类型: Journal Article
    在研究政策干预或自然实验对空气污染的影响时,例如新的环境政策和开放或关闭工业设施,需要进行仔细的统计分析,以将因果变化与其他混杂因素分开.使用COVID-19封锁作为案例研究,我们提出了一个全面的框架来估计和验证这种扰动的因果变化。我们建议使用基于灵活机器学习的比较中断时间序列(CITS)模型来估计这种因果效应。我们概述了识别因果效应所需的假设,表明许多常见的方法依赖于机器学习模型放松的强假设。为了进行实证验证,我们还提出了一个简单的诊断标准,在没有干预的情况下,在基线年防范虚假效应。该框架用于研究COVID-19封锁对美国东部NO2的影响。机器学习方法比普通方法更好地防止错误效应,并建议波士顿的NO2减少。纽约市,巴尔的摩,和华盛顿特区该研究展示了我们的验证框架在选择合适的方法方面的重要性,以及基于机器学习的CITS模型在研究空气污染时间序列的因果变化方面的实用性。
    When studying the impact of policy interventions or natural experiments on air pollution, such as new environmental policies and opening or closing an industrial facility, careful statistical analysis is needed to separate causal changes from other confounding factors. Using COVID-19 lockdowns as a case-study, we present a comprehensive framework for estimating and validating causal changes from such perturbations. We propose using flexible machine learning-based comparative interrupted time series (CITS) models for estimating such a causal effect. We outline the assumptions required to identify causal effects, showing that many common methods rely on strong assumptions that are relaxed by machine learning models. For empirical validation, we also propose a simple diagnostic criterion, guarding against false effects in baseline years when there was no intervention. The framework is applied to study the impact of COVID-19 lockdowns on NO2 in the eastern US. The machine learning approaches guard against false effects better than common methods and suggest decreases in NO2 in Boston, New York City, Baltimore, and Washington D.C. The study showcases the importance of our validation framework in selecting a suitable method and the utility of a machine learning based CITS model for studying causal changes in air pollution time series.
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  • 文章类型: Journal Article
    非苯二氮卓催眠药(“Z-药物”)用于治疗失眠,但可能会增加老年人的机动车碰撞(MVC)的风险,通过长时间的嗜睡和延迟的反应时间。我们在序贯目标试验模拟中估计了开始Z-药物治疗对12周MVC风险的影响。在将新泽西州的驾驶执照和警方报告的MVC数据与Medicare索赔联系起来之后,我们每周模拟一项新的目标试验(2007年7月1日-2017年10月7日),其中Medicare按服务付费受益人在基线时被分类为Z-药物治疗或未治疗,并随访MVC.我们使用逆概率治疗和审查加权合并逻辑回归模型来估计风险比(RR)和风险差异与95%自举置信区间(CLs)。共有257,554项个人试验,其中103,371是Z-药物处理的,154,183是未经处理的,产生976个和1,249个MVC,分别。意向治疗RR为1.06(95%CLs0.95,1.16)。对于每个协议的估计,在治疗和未治疗的个人试验中有800个MVCs和1,241个MVCs,分别,提示持续Z-药物治疗降低MVC风险(RR0.83[95%CLs0.74,0.92])。应该明智地向老年患者开Z-药物,但不要因为担心MVC风险而完全保留。
    Non-benzodiazepine hypnotics ( \"Z-drugs\") are prescribed for insomnia, but might increase risk of motor vehicle crash (MVC) among older adults through prolonged drowsiness and delayed reaction times. We estimated the effect of initiating Z-drug treatment on the 12-week risk of MVC in a sequential target trial emulation. After linking New Jersey driver licensing and police-reported MVC data to Medicare claims, we emulated a new target trial each week (July 1, 2007 - October 7, 2017) in which Medicare fee-for-service beneficiaries were classified as Z-drug-treated or untreated at baseline and followed for an MVC. We used inverse probability of treatment and censoring weighted pooled logistic regression models to estimate risk ratios (RR) and risk differences with 95% bootstrap confidence limits (CLs). There were 257,554 person-trials, of which 103,371 were Z-drug-treated and 154,183 untreated, giving rise to 976 and 1,249 MVCs, respectively. The intention-to-treat RR was 1.06 (95%CLs 0.95, 1.16). For the per-protocol estimand, there were 800 MVCs and 1,241 MVCs among treated and untreated person-trials, respectively, suggesting a reduced MVC risk (RR 0.83 [95%CLs 0.74, 0.92]) with sustained Z-drug treatment. Z-drugs should be prescribed to older patients judiciously but not withheld entirely over concerns about MVC risk.
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