journal
https://read.qxmd.com/read/37886808/signal-detection-statistics-of-adverse-drug-events-in-hierarchical-structure-for-matched-case-control-data
#21
JOURNAL ARTICLE
Seok-Jae Heo, Sohee Jeong, Dagyeom Jung, Inkyung Jung
The tree-based scan statistic is a data mining method used to identify signals of adverse drug reactions in a database of spontaneous reporting systems. It is particularly beneficial when dealing with hierarchical data structures. One may use a retrospective case-control study design from spontaneous reporting systems (SRS) to investigate whether a specific adverse event of interest is associated with certain drugs. However, the existing Bernoulli model of the tree-based scan statistic may not be suitable as it fails to adequately account for dependencies within matched pairs...
October 26, 2023: Biostatistics
https://read.qxmd.com/read/37850938/a-controlled-effects-approach-to-assessing-immune-correlates-of-protection
#22
JOURNAL ARTICLE
Peter B Gilbert, Youyi Fong, Avi Kenny, Marco Carone
An immune correlate of risk (CoR) is an immunologic biomarker in vaccine recipients associated with an infectious disease clinical endpoint. An immune correlate of protection (CoP) is a CoR that can be used to reliably predict vaccine efficacy (VE) against the clinical endpoint and hence is accepted as a surrogate endpoint that can be used for accelerated approval or guide use of vaccines. In randomized, placebo-controlled trials, CoR analysis is limited by not assessing a causal vaccine effect. To address this limitation, we construct the controlled risk curve of a biomarker, which provides the causal risk of an endpoint if all participants are assigned vaccine and the biomarker is set to different levels...
October 18, 2023: Biostatistics
https://read.qxmd.com/read/37805939/joint-modeling-in-presence-of-informative-censoring-on-the-retrospective-time-scale-with-application-to-palliative-care-research
#23
JOURNAL ARTICLE
Quran Wu, Michael Daniels, Areej El-Jawahri, Marie Bakitas, Zhigang Li
Joint modeling of longitudinal data such as quality of life data and survival data is important for palliative care researchers to draw efficient inferences because it can account for the associations between those two types of data. Modeling quality of life on a retrospective from death time scale is useful for investigators to interpret the analysis results of palliative care studies which have relatively short life expectancies. However, informative censoring remains a complex challenge for modeling quality of life on the retrospective time scale although it has been addressed for joint models on the prospective time scale...
October 6, 2023: Biostatistics
https://read.qxmd.com/read/37805937/improved-fmri-based-pain-prediction-using-bayesian-group-wise-functional-registration
#24
JOURNAL ARTICLE
Guoqing Wang, Abhirup Datta, Martin A Lindquist
In recent years, the field of neuroimaging has undergone a paradigm shift, moving away from the traditional brain mapping approach towards the development of integrated, multivariate brain models that can predict categories of mental events. However, large interindividual differences in both brain anatomy and functional localization after standard anatomical alignment remain a major limitation in performing this type of analysis, as it leads to feature misalignment across subjects in subsequent predictive models...
October 6, 2023: Biostatistics
https://read.qxmd.com/read/37811675/a-bayesian-nonparametric-approach-to-correct-for-underreporting-in-count-data
#25
JOURNAL ARTICLE
Serena Arima, Silvia Polettini, Giuseppe Pasculli, Loreto Gesualdo, Francesco Pesce, Deni-Aldo Procaccini
We propose a nonparametric compound Poisson model for underreported count data that introduces a latent clustering structure for the reporting probabilities. The latter are estimated with the model's parameters based on experts' opinion and exploiting a proxy for the reporting process. The proposed model is used to estimate the prevalence of chronic kidney disease in Apulia, Italy, based on a unique statistical database covering information on m = 258 municipalities obtained by integrating multisource register information...
September 16, 2023: Biostatistics
https://read.qxmd.com/read/37697901/semi-supervised-mixture-multi-source-exchangeability-model-for-leveraging-real-world-data-in-clinical-trials
#26
JOURNAL ARTICLE
Lillian M F Haine, Thomas A Murry, Raquel Nahra, Giota Touloumi, Eduardo Fernández-Cruz, Kathy Petoumenos, Joseph S Koopmeiners
The traditional trial paradigm is often criticized as being slow, inefficient, and costly. Statistical approaches that leverage external trial data have emerged to make trials more efficient by augmenting the sample size. However, these approaches assume that external data are from previously conducted trials, leaving a rich source of untapped real-world data (RWD) that cannot yet be effectively leveraged. We propose a semi-supervised mixture (SS-MIX) multisource exchangeability model (MEM); a flexible, two-step Bayesian approach for incorporating RWD into randomized controlled trial analyses...
September 11, 2023: Biostatistics
https://read.qxmd.com/read/37669215/bayesian-joint-models-for-multi-regional-clinical-trials
#27
JOURNAL ARTICLE
Nathan W Bean, Joseph G Ibrahim, Matthew A Psioda
In recent years, multi-regional clinical trials (MRCTs) have increased in popularity in the pharmaceutical industry due to their ability to accelerate the global drug development process. To address potential challenges with MRCTs, the International Council for Harmonisation released the E17 guidance document which suggests the use of statistical methods that utilize information borrowing across regions if regional sample sizes are small. We develop an approach that allows for information borrowing via Bayesian model averaging in the context of a joint analysis of survival and longitudinal data from MRCTs...
September 5, 2023: Biostatistics
https://read.qxmd.com/read/37660312/variable-selection-in-high-dimensions-for-discrete-outcome-individualized-treatment-rules-reducing-severity-of-depression-symptoms
#28
JOURNAL ARTICLE
Erica E M Moodie, Zeyu Bian, Janie Coulombe, Yi Lian, Archer Y Yang, Susan M Shortreed
Despite growing interest in estimating individualized treatment rules, little attention has been given the binary outcome setting. Estimation is challenging with nonlinear link functions, especially when variable selection is needed. We use a new computational approach to solve a recently proposed doubly robust regularized estimating equation to accomplish this difficult task in a case study of depression treatment. We demonstrate an application of this new approach in combination with a weighted and penalized estimating equation to this challenging binary outcome setting...
August 31, 2023: Biostatistics
https://read.qxmd.com/read/37660301/an-intersectional-framework-for-counterfactual-fairness-in-risk-prediction
#29
JOURNAL ARTICLE
Solvejg Wastvedt, Jared D Huling, Julian Wolfson
Along with the increasing availability of health data has come the rise of data-driven models to inform decision making and policy. These models have the potential to benefit both patients and health care providers but can also exacerbate health inequities. Existing "algorithmic fairness" methods for measuring and correcting model bias fall short of what is needed for health policy in two key ways. First, methods typically focus on a single grouping along which discrimination may occur rather than considering multiple, intersecting groups...
August 31, 2023: Biostatistics
https://read.qxmd.com/read/37542423/identifying-predictors-of-resilience-to-stressors-in-single-arm-studies-of-pre-post-change
#30
JOURNAL ARTICLE
Ravi Varadhan, Jiafeng Zhu, Karen Bandeen-Roche
Many older adults experience a major stressor at some point in their lives. The ability to recover well after a major stressor is known as resilience. An important goal of geriatric research is to identify factors that influence resilience to stressors. Studies of resilience in older adults are typically conducted with a single-arm where everyone experiences the stressor. The simplistic approach of regressing change versus baseline yields biased estimates due to mathematical coupling and regression to the mean (RTM)...
August 5, 2023: Biostatistics
https://read.qxmd.com/read/37531621/blurring-cluster-randomized-trials-and-observational-studies-two-stage-tmle-for-subsampling-missingness-and-few-independent-units
#31
JOURNAL ARTICLE
Joshua R Nugent, Carina Marquez, Edwin D Charlebois, Rachel Abbott, Laura B Balzer
Cluster randomized trials (CRTs) often enroll large numbers of participants; yet due to resource constraints, only a subset of participants may be selected for outcome assessment, and those sampled may not be representative of all cluster members. Missing data also present a challenge: if sampled individuals with measured outcomes are dissimilar from those with missing outcomes, unadjusted estimates of arm-specific endpoints and the intervention effect may be biased. Further, CRTs often enroll and randomize few clusters, limiting statistical power and raising concerns about finite sample performance...
August 2, 2023: Biostatistics
https://read.qxmd.com/read/37531620/fast-and-flexible-inference-for-joint-models-of-multivariate-longitudinal-and-survival-data-using-integrated-nested-laplace-approximations
#32
JOURNAL ARTICLE
Denis Rustand, Janet van Niekerk, Elias Teixeira Krainski, Håvard Rue, Cécile Proust-Lima
Modeling longitudinal and survival data jointly offers many advantages such as addressing measurement error and missing data in the longitudinal processes, understanding and quantifying the association between the longitudinal markers and the survival events, and predicting the risk of events based on the longitudinal markers. A joint model involves multiple submodels (one for each longitudinal/survival outcome) usually linked together through correlated or shared random effects. Their estimation is computationally expensive (particularly due to a multidimensional integration of the likelihood over the random effects distribution) so that inference methods become rapidly intractable, and restricts applications of joint models to a small number of longitudinal markers and/or random effects...
August 2, 2023: Biostatistics
https://read.qxmd.com/read/37531618/correction-to-a-transformation-perspective-on-marginal-and-conditional-models
#33
(no author information available yet)
No abstract text is available yet for this article.
August 2, 2023: Biostatistics
https://read.qxmd.com/read/37494883/an-integrative-latent-class-model-of-heterogeneous-data-modalities-for-diagnosing-kidney-obstruction
#34
JOURNAL ARTICLE
Jeong Hoon Jang, Changgee Chang, Amita K Manatunga, Andrew T Taylor, Qi Long
Radionuclide imaging plays a critical role in the diagnosis and management of kidney obstruction. However, most practicing radiologists in US hospitals have insufficient time and resources to acquire training and experience needed to interpret radionuclide images, leading to increased diagnostic errors. To tackle this problem, Emory University embarked on a study that aims to develop a computer-assisted diagnostic (CAD) tool for kidney obstruction by mining and analyzing patient data comprised of renogram curves, ordinal expert ratings on the obstruction status, pharmacokinetic variables, and demographic information...
July 26, 2023: Biostatistics
https://read.qxmd.com/read/37490631/a-joint-bayesian-hierarchical-model-for-estimating-sars-cov-2-genomic-and-subgenomic-rna-viral-dynamics-and-seroconversion
#35
JOURNAL ARTICLE
Tracy Q Dong, Elizabeth R Brown
Understanding the viral dynamics of and natural immunity to the severe acute respiratory syndrome coronavirus 2 is crucial for devising better therapeutic and prevention strategies for coronavirus disease 2019 (COVID-19). Here, we present a Bayesian hierarchical model that jointly estimates the genomic RNA viral load, the subgenomic RNA (sgRNA) viral load (correlated to active viral replication), and the rate and timing of seroconversion (correlated to presence of antibodies). Our proposed method accounts for the dynamical relationship and correlation structure between the two types of viral load, allows for borrowing of information between viral load and antibody data, and identifies potential correlates of viral load characteristics and propensity for seroconversion...
July 25, 2023: Biostatistics
https://read.qxmd.com/read/37475638/tree-based-subgroup-discovery-using-electronic-health-record-data-heterogeneity-of-treatment-effects-for-dtg-containing-therapies
#36
JOURNAL ARTICLE
Jiabei Yang, Ann W Mwangi, Rami Kantor, Issa J Dahabreh, Monicah Nyambura, Allison Delong, Joseph W Hogan, Jon A Steingrimsson
The rich longitudinal individual level data available from electronic health records (EHRs) can be used to examine treatment effect heterogeneity. However, estimating treatment effects using EHR data poses several challenges, including time-varying confounding, repeated and temporally non-aligned measurements of covariates, treatment assignments and outcomes, and loss-to-follow-up due to dropout. Here, we develop the subgroup discovery for longitudinal data algorithm, a tree-based algorithm for discovering subgroups with heterogeneous treatment effects using longitudinal data by combining the generalized interaction tree algorithm, a general data-driven method for subgroup discovery, with longitudinal targeted maximum likelihood estimation...
July 20, 2023: Biostatistics
https://read.qxmd.com/read/37433567/a-scalable-approach-for-continuous-time-markov-models-with-covariates
#37
JOURNAL ARTICLE
Farhad Hatami, Alex Ocampo, Gordon Graham, Thomas E Nichols, Habib Ganjgahi
Existing methods for fitting continuous time Markov models (CTMM) in the presence of covariates suffer from scalability issues due to high computational cost of matrix exponentials calculated for each observation. In this article, we propose an optimization technique for CTMM which uses a stochastic gradient descent algorithm combined with differentiation of the matrix exponential using a Padé approximation. This approach makes fitting large scale data feasible. We present two methods for computing standard errors, one novel approach using the Padé expansion and the other using power series expansion of the matrix exponential...
July 11, 2023: Biostatistics
https://read.qxmd.com/read/37337346/multivariate-spatiotemporal-functional-principal-component-analysis-for-modeling-hospitalization-and-mortality-rates-in-the-dialysis-population
#38
JOURNAL ARTICLE
Qi Qian, Danh V Nguyen, Donatello Telesca, Esra Kurum, Connie M Rhee, Sudipto Banerjee, Yihao Li, Damla Senturk
Dialysis patients experience frequent hospitalizations and a higher mortality rate compared to other Medicare populations, in whom hospitalizations are a major contributor to morbidity, mortality, and healthcare costs. Patients also typically remain on dialysis for the duration of their lives or until kidney transplantation. Hence, there is growing interest in studying the spatiotemporal trends in the correlated outcomes of hospitalization and mortality among dialysis patients as a function of time starting from transition to dialysis across the United States Utilizing national data from the United States Renal Data System (USRDS), we propose a novel multivariate spatiotemporal functional principal component analysis model to study the joint spatiotemporal patterns of hospitalization and mortality rates among dialysis patients...
June 20, 2023: Biostatistics
https://read.qxmd.com/read/37257175/quantification-and-statistical-modeling-of-droplet-based-single-nucleus-rna-sequencing-data
#39
JOURNAL ARTICLE
Albert Kuo, Kasper D Hansen, Stephanie C Hicks
In complex tissues containing cells that are difficult to dissociate, single-nucleus RNA-sequencing (snRNA-seq) has become the preferred experimental technology over single-cell RNA-sequencing (scRNA-seq) to measure gene expression. To accurately model these data in downstream analyses, previous work has shown that droplet-based scRNA-seq data are not zero-inflated, but whether droplet-based snRNA-seq data follow the same probability distributions has not been systematically evaluated. Using pseudonegative control data from nuclei in mouse cortex sequenced with the 10x Genomics Chromium system and mouse kidney sequenced with the DropSeq system, we found that droplet-based snRNA-seq data follow a negative binomial distribution, suggesting that parametric statistical models applied to scRNA-seq are transferable to snRNA-seq...
May 31, 2023: Biostatistics
https://read.qxmd.com/read/37230469/multiple-imputation-of-more-than-one-environmental-exposure-with-nondifferential-measurement-error
#40
JOURNAL ARTICLE
Yuanzhi Yu, Roderick J Little, Matthew Perzanowski, Qixuan Chen
Measurement error is common in environmental epidemiologic studies, but methods for correcting measurement error in regression models with multiple environmental exposures as covariates have not been well investigated. We consider a multiple imputation approach, combining external or internal calibration samples that contain information on both true and error-prone exposures with the main study data of multiple exposures measured with error. We propose a constrained chained equations multiple imputation (CEMI) algorithm that places constraints on the imputation model parameters in the chained equations imputation based on the assumptions of strong nondifferential measurement error...
May 25, 2023: Biostatistics
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