journal
https://read.qxmd.com/read/38637330/population-average-mediation-analysis-for-zero-inflated-count-outcomes
#1
JOURNAL ARTICLE
Andrew Sims, D Leann Long, Hemant K Tiwari, Jinhong Cui, Dustin M Long, Todd M Brown, Melissa J Smith, Emily B Levitan
Mediation analysis is an increasingly popular statistical method for explaining causal pathways to inform intervention. While methods have increased, there is still a dearth of robust mediation methods for count outcomes with excess zeroes. Current mediation methods addressing this issue are computationally intensive, biased, or challenging to interpret. To overcome these limitations, we propose a new mediation methodology for zero-inflated count outcomes using the marginalized zero-inflated Poisson (MZIP) model and the counterfactual approach to mediation...
April 18, 2024: Statistics in Medicine
https://read.qxmd.com/read/38636557/variance-components-tests-for-genetic-association-with-multiple-interval-censored-outcomes
#2
JOURNAL ARTICLE
Jaihee Choi, Zhichao Xu, Ryan Sun
Massive genetic compendiums such as the UK Biobank have become an invaluable resource for identifying genetic variants that are associated with complex diseases. Due to the difficulties of massive data collection, a common practice of these compendiums is to collect interval-censored data. One challenge in analyzing such data is the lack of methodology available for genetic association studies with interval-censored data. Genetic effects are difficult to detect because of their rare and weak nature, and often the time-to-event outcomes are transformed to binary phenotypes for access to more powerful signal detection approaches...
April 18, 2024: Statistics in Medicine
https://read.qxmd.com/read/38622063/on-variance-estimation-of-the-inverse-probability-of-treatment-weighting-estimator-a-tutorial-for-different-types-of-propensity-score-weights
#3
JOURNAL ARTICLE
Andriana Kostouraki, David Hajage, Bernard Rachet, Elizabeth J Williamson, Guillaume Chauvet, Aurélien Belot, Clémence Leyrat
Propensity score methods, such as inverse probability-of-treatment weighting (IPTW), have been increasingly used for covariate balancing in both observational studies and randomized trials, allowing the control of both systematic and chance imbalances. Approaches using IPTW are based on two steps: (i) estimation of the individual propensity scores (PS), and (ii) estimation of the treatment effect by applying PS weights. Thus, a variance estimator that accounts for both steps is crucial for correct inference...
April 15, 2024: Statistics in Medicine
https://read.qxmd.com/read/38621856/finding-the-best-subgroup-with-differential-treatment-effect-with-multiple-outcomes
#4
JOURNAL ARTICLE
Beibo Zhao, Jason Fine, Anastasia Ivanova
Precision medicine aims to identify specific patient subgroups that may benefit the most from a particular treatment than the whole population. Existing definitions for the best subgroup in subgroup analysis are based on a single outcome and do not consider multiple outcomes; specifically, outcomes of different types. In this article, we introduce a definition for the best subgroup under a multiple-outcome setting with continuous, binary, and censored time-to-event outcomes. Our definition provides a trade-off between the subgroup size and the conditional average treatment effects (CATE) in the subgroup with respect to each of the outcomes while taking the relative contribution of the outcomes into account...
April 15, 2024: Statistics in Medicine
https://read.qxmd.com/read/38618705/multiblock-partial-least-squares-and-rank-aggregation-applications-to-detection-of-bacteriophages-associated-with-antimicrobial-resistance-in-the-presence-of-potential-confounding-factors
#5
JOURNAL ARTICLE
Shoumi Sarkar, Samuel Anyaso-Samuel, Peihua Qiu, Somnath Datta
Urban environments, characterized by bustling mass transit systems and high population density, host a complex web of microorganisms that impact microbial interactions. These urban microbiomes, influenced by diverse demographics and constant human movement, are vital for understanding microbial dynamics. We explore urban metagenomics, utilizing an extensive dataset from the Metagenomics & Metadesign of Subways & Urban Biomes (MetaSUB) consortium, and investigate antimicrobial resistance (AMR) patterns...
April 15, 2024: Statistics in Medicine
https://read.qxmd.com/read/38616718/order-selection-for-heterogeneous-semiparametric-hidden-markov-models
#6
JOURNAL ARTICLE
Yudan Zou, Xinyuan Song, Qian Zhao
Hidden Markov models (HMMs), which can characterize dynamic heterogeneity, are valuable tools for analyzing longitudinal data. The order of HMMs (ie, the number of hidden states) is typically assumed to be known or predetermined by some model selection criterion in conventional analysis. As prior information about the order frequently lacks, pairwise comparisons under criterion-based methods become computationally expensive with the model space growing. A few studies have conducted order selection and parameter estimation simultaneously, but they only considered homogeneous parametric instances...
April 15, 2024: Statistics in Medicine
https://read.qxmd.com/read/38606437/mediation-analysis-using-incomplete-information-from-publicly-available-data-sources
#7
JOURNAL ARTICLE
Andriy Derkach, Elizabeth D Kantor, Joshua N Sampson, Ruth M Pfeiffer
Our work was motivated by the question whether, and to what extent, well-established risk factors mediate the racial disparity observed for colorectal cancer (CRC) incidence in the United States. Mediation analysis examines the relationships between an exposure, a mediator and an outcome. All available methods require access to a single complete data set with these three variables. However, because population-based studies usually include few non-White participants, these approaches have limited utility in answering our motivating question...
April 12, 2024: Statistics in Medicine
https://read.qxmd.com/read/38605556/statistical-considerations-in-model-based-dose-finding-for-binary-responses-under-model-uncertainty
#8
JOURNAL ARTICLE
Zhiwu Yan, Min Yang
The statistical methodology for model-based dose finding under model uncertainty has attracted increasing attention in recent years. While the underlying principles are simple and easy to understand, developing and implementing an efficient approach for binary responses can be a formidable task in practice. Motivated by the statistical challenges encountered in a phase II dose finding study, we explore several key design and analysis issues related to the hybrid testing-modeling approaches for binary responses...
April 11, 2024: Statistics in Medicine
https://read.qxmd.com/read/38599784/a-discrete-approximation-method-for-modeling-interval-censored-multistate-data
#9
JOURNAL ARTICLE
Lu You, Xiang Liu, Jeffrey Krischer
Many longitudinal studies are designed to monitor participants for major events related to the progression of diseases. Data arising from such longitudinal studies are usually subject to interval censoring since the events are only known to occur between two monitoring visits. In this work, we propose a new method to handle interval-censored multistate data within a proportional hazards model framework where the hazard rate of events is modeled by a nonparametric function of time and the covariates affect the hazard rate proportionally...
April 10, 2024: Statistics in Medicine
https://read.qxmd.com/read/38594809/a-bayesian-platform-trial-design-with-hybrid-control-based-on-multisource-exchangeability-modelling
#10
JOURNAL ARTICLE
Wei Wei, Ondrej Blaha, Denise Esserman, Daniel Zelterman, Michael Kane, Rachael Liu, Jianchang Lin
Enrolling patients to the standard of care (SOC) arm in randomized clinical trials, especially for rare diseases, can be very challenging due to the lack of resources, restricted patient population availability, and ethical considerations. As the therapeutic effect for the SOC is often well documented in historical trials, we propose a Bayesian platform trial design with hybrid control based on the multisource exchangeability modelling (MEM) framework to harness historical control data. The MEM approach provides a computationally efficient method to formally evaluate the exchangeability of study outcomes between different data sources and allows us to make better informed data borrowing decisions based on the exchangeability between historical and concurrent data...
April 9, 2024: Statistics in Medicine
https://read.qxmd.com/read/38590087/individualized-empirical-null-estimation-for-exact-tests-of-healthcare-quality
#11
JOURNAL ARTICLE
Nicholas Hartman, Kevin He
United States federal agencies evaluate healthcare providers to identify, flag, and potentially penalize those that deliver low-quality care compared to national expectations. In practice, evaluation metrics are inevitably impacted by unobserved confounding factors, which reduce flagging accuracy and cause the statistics to be overdispersed relative to the theoretical null distributions. In response to this issue, several authors have proposed individualized empirical null (IEN) methods to estimate an appropriate null distribution for each provider's evaluation statistic while taking into account the provider's effective size...
April 8, 2024: Statistics in Medicine
https://read.qxmd.com/read/38589978/bayesian-federated-inference-for-estimating-statistical-models-based-on-non-shared-multicenter-data-sets
#12
JOURNAL ARTICLE
Marianne A Jonker, Hassan Pazira, Anthony Cc Coolen
Identifying predictive factors for an outcome of interest via a multivariable analysis is often difficult when the data set is small. Combining data from different medical centers into a single (larger) database would alleviate this problem, but is in practice challenging due to regulatory and logistic problems. Federated learning (FL) is a machine learning approach that aims to construct from local inferences in separate data centers what would have been inferred had the data sets been merged. It seeks to harvest the statistical power of larger data sets without actually creating them...
April 8, 2024: Statistics in Medicine
https://read.qxmd.com/read/38573319/beyond-the-two-trials-rule
#13
JOURNAL ARTICLE
Leonhard Held
The two-trials rule for drug approval requires "at least two adequate and well-controlled studies, each convincing on its own, to establish effectiveness." This is usually implemented by requiring two significant pivotal trials and is the standard regulatory requirement to provide evidence for a new drug's efficacy. However, there is need to develop suitable alternatives to this rule for a number of reasons, including the possible availability of data from more than two trials. I consider the case of up to three studies and stress the importance to control the partial Type-I error rate, where only some studies have a true null effect, while maintaining the overall Type-I error rate of the two-trials rule, where all studies have a null effect...
April 4, 2024: Statistics in Medicine
https://read.qxmd.com/read/38565328/confidence-intervals-for-odds-ratio-from-multistage-randomized-phase-ii-trials
#14
JOURNAL ARTICLE
Shiwei Cao, Sin-Ho Jung
A multi-stage randomized trial design can significantly improve efficiency by allowing early termination of the trial when the experimental arm exhibits either low or high efficacy compared to the control arm during the study. However, proper inference methods are necessary because the underlying distribution of the target statistic changes due to the multi-stage structure. This article focuses on multi-stage randomized phase II trials with a dichotomous outcome, such as treatment response, and proposes exact conditional confidence intervals for the odds ratio...
April 2, 2024: Statistics in Medicine
https://read.qxmd.com/read/38564226/a-two-stage-group-sequential-design-for-delayed-treatment-responses-with-the-possibility-of-trial-restart
#15
JOURNAL ARTICLE
Stephen Schüürhuis, Frank Konietschke, Cornelia Ursula Kunz
Common statistical theory applicable to confirmatory phase III trial designs usually assumes that patients are enrolled simultaneously and there is no time gap between enrollment and outcome observation. However, in practice, patients are enrolled successively and there is a lag between the enrollment of a patient and the measurement of the primary outcome. For single-stage designs, the difference between theory and practice only impacts on the trial duration but not on the statistical analysis and its interpretation...
April 2, 2024: Statistics in Medicine
https://read.qxmd.com/read/38564224/a-joint-frailty-model-for-recurrent-and-competing-terminal-events-application-to-delirium-in-the-icu
#16
JOURNAL ARTICLE
Lacey H Etzkorn, Quentin Le Coënt, Mark van den Boogaard, Virginie Rondeau, Elizabeth Colantuoni
Joint models linking longitudinal biomarkers or recurrent event processes with a terminal event, for example, mortality, have been studied extensively. Motivated by studies of recurrent delirium events in patients receiving care in an intensive care unit (ICU), we devise a joint model for a recurrent event process and multiple terminal events. Being discharged alive from the ICU or experiencing mortality may be associated with a patient's hazard of delirium, violating the assumption of independent censoring...
April 2, 2024: Statistics in Medicine
https://read.qxmd.com/read/38561927/assessing-efficacy-in-non-inferiority-trials-with-non-adherence-to-interventions-are-intention-to-treat-and-per-protocol-analyses-fit-for-purpose
#17
JOURNAL ARTICLE
Matthew Dodd, James Carpenter, Jennifer A Thompson, Elizabeth Williamson, Katherine Fielding, Diana Elbourne
BACKGROUND: Non-inferiority trials comparing different active drugs are often subject to treatment non-adherence. Intention-to-treat (ITT) and per-protocol (PP) analyses have been advocated in such studies but are not guaranteed to be unbiased in the presence of differential non-adherence. METHODS: The REMoxTB trial evaluated two 4-month experimental regimens compared with a 6-month control regimen for newly diagnosed drug-susceptible TB. The primary endpoint was a composite unfavorable outcome of treatment failure or recurrence within 18 months post-randomization...
April 1, 2024: Statistics in Medicine
https://read.qxmd.com/read/38558286/approximate-balancing-weights-for-clustered-observational-study-designs
#18
JOURNAL ARTICLE
Eli Ben-Michael, Lindsay Page, Luke Keele
In a clustered observational study, a treatment is assigned to groups and all units within the group are exposed to the treatment. We develop a new method for statistical adjustment in clustered observational studies using approximate balancing weights, a generalization of inverse propensity score weights that solve a convex optimization problem to find a set of weights that directly minimize a measure of covariate imbalance, subject to an additional penalty on the variance of the weights. We tailor the approximate balancing weights optimization problem to the clustered observational study setting by deriving an upper bound on the mean square error and finding weights that minimize this upper bound, linking the level of covariate balance to a bound on the bias...
April 1, 2024: Statistics in Medicine
https://read.qxmd.com/read/38556761/causal-mediation-analysis-with-mediator-values-below-an-assay-limit
#19
JOURNAL ARTICLE
Ariel Chernofsky, Ronald J Bosch, Judith J Lok
Causal indirect and direct effects provide an interpretable method for decomposing the total effect of an exposure on an outcome into the indirect effect through a mediator and the direct effect through all other pathways. A natural choice for a mediator in a randomized clinical trial is the treatment's targeted biomarker. However, when the mediator is a biomarker, values can be subject to an assay lower limit. The mediator is affected by the treatment and is a putative cause of the outcome, so the assay lower limit presents a compounded problem in mediation analysis...
March 31, 2024: Statistics in Medicine
https://read.qxmd.com/read/38553996/information-incorporated-sparse-hierarchical-cancer-heterogeneity-analysis
#20
JOURNAL ARTICLE
Wei Han, Sanguo Zhang, Shuangge Ma, Mingyang Ren
Cancer heterogeneity analysis is essential for precision medicine. Most of the existing heterogeneity analyses only consider a single type of data and ignore the possible sparsity of important features. In cancer clinical practice, it has been suggested that two types of data, pathological imaging and omics data, are commonly collected and can produce hierarchical heterogeneous structures, in which the refined sub-subgroup structure determined by omics features can be nested in the rough subgroup structure determined by the imaging features...
March 30, 2024: Statistics in Medicine
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