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Statistics in Medicine

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https://www.readbyqxmd.com/read/28815681/meta-analytical-synthesis-of-regression-coefficients-under-different-categorization-scheme-of-continuous-covariates
#1
Daisuke Yoneoka, Masayuki Henmi
Recently, the number of clinical prediction models sharing the same regression task has increased in the medical literature. However, evidence synthesis methodologies that use the results of these regression models have not been sufficiently studied, particularly in meta-analysis settings where only regression coefficients are available. One of the difficulties lies in the differences between the categorization schemes of continuous covariates across different studies. In general, categorization methods using cutoff values are study specific across available models, even if they focus on the same covariates of interest...
August 16, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28815680/study-of-coverage-of-confidence-intervals-for-the-standardized-mortality-ratio-in-studies-with-missing-death-certificates
#2
Jana Timkova, Lukas Kotik, Ladislav Tomasek
This paper assesses the coverage probability of commonly used confidence intervals for the standardized mortality ratio (SMR) when death certificates are missing. It also proposes alternative confidence interval approaches with coverage probabilities close to .95. In epidemiology, the SMR is an important measure of risk of disease mortality (or incidence) to compare a specific group to a reference population. The appropriate confidence interval for the SMR is crucial, especially when the SMR is close to 1.0 and the statistical significance of the risk needs to be determined...
August 16, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28815655/a-clinical-trial-design-using-the-concept-of-proportional-time-using-the-generalized-gamma-ratio-distribution
#3
Milind A Phadnis, James B Wetmore, Matthew S Mayo
Traditional methods of sample size and power calculations in clinical trials with a time-to-event end point are based on the logrank test (and its variations), Cox proportional hazards (PH) assumption, or comparison of means of 2 exponential distributions. Of these, sample size calculation based on PH assumption is likely the most common and allows adjusting for the effect of one or more covariates. However, when designing a trial, there are situations when the assumption of PH may not be appropriate. Additionally, when it is known that there is a rapid decline in the survival curve for a control group, such as from previously conducted observational studies, a design based on the PH assumption may confer only a minor statistical improvement for the treatment group that is neither clinically nor practically meaningful...
August 16, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28815652/a-comparison-of-20-heterogeneity-variance-estimators-in-statistical-synthesis-of-results-from-studies-a-simulation-study
#4
Maria Petropoulou, Dimitris Mavridis
When we synthesize research findings via meta-analysis, it is common to assume that the true underlying effect differs across studies. Total variability consists of the within-study and between-study variances (heterogeneity). There have been established measures, such as I(2) , to quantify the proportion of the total variation attributed to heterogeneity. There is a plethora of estimation methods available for estimating heterogeneity. The widely used DerSimonian and Laird estimation method has been challenged, but knowledge of the overall performance of heterogeneity estimators is incomplete...
August 16, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28809051/mediation-analysis-for-a-survival-outcome-with-time-varying-exposures-mediators-and-confounders
#5
Sheng-Hsuan Lin, Jessica G Young, Roger Logan, Tyler J VanderWeele
We propose an approach to conduct mediation analysis for survival data with time-varying exposures, mediators, and confounders. We identify certain interventional direct and indirect effects through a survival mediational g-formula and describe the required assumptions. We also provide a feasible parametric approach along with an algorithm and software to estimate these effects. We apply this method to analyze the Framingham Heart Study data to investigate the causal mechanism of smoking on mortality through coronary artery disease...
August 15, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28809042/notes-on-the-overlap-measure-as-an-alternative-to-the-youden-index-how-are-they-related
#6
Hani M Samawi, Jingjing Yin, Haresh Rochani, Viral Panchal
The receiver operating characteristic (ROC) curve is frequently used to evaluate and compare diagnostic tests. As one of the ROC summary indices, the Youden index measures the effectiveness of a diagnostic marker and enables the selection of an optimal threshold value (cut-off point) for the marker. Recently, the overlap coefficient, which captures the similarity between 2 distributions directly, has been considered as an alternative index for determining the diagnostic performance of markers. In this case, a larger overlap indicates worse diagnostic accuracy, and vice versa...
August 15, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28795420/inference-for-multimarker-adaptive-enrichment-trials
#7
Richard Simon, Noah Simon
Identification of treatment selection biomarkers has become very important in cancer drug development. Adaptive enrichment designs have been developed for situations where a unique treatment selection biomarker is not apparent based on the mechanism of action of the drug. With such designs, the eligibility rules may be adaptively modified at interim analysis times to exclude patients who are unlikely to benefit from the test treatment.We consider a recently proposed, particularly flexible approach that permits development of model-based multifeature predictive classifiers as well as optimized cut-points for continuous biomarkers...
August 10, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28795415/joint-bayesian-weight-and-height-postnatal-growth-model-to-study-the-effects-of-maternal-smoking-during-pregnancy
#8
Sophie Carles, Marie-Aline Charles, Barbara Heude, Ismaïl Ahmed, Jérémie Botton
Growth models used for describing the dynamics of body weight and height generally consider each trait independently. We proposed modeling height and weight trajectories jointly with a nonlinear heteroscedastic mixed model based on the Jenss-Bayley growth function with correlated individual random effects and using Bayesian inference techniques. Simulations showed that our model provides good estimates of the growth parameters. We illustrated how it can be used to assess the associations between maternal smoking during pregnancy, an early-life factor potentially involved in prenatal programming of obesity, and children's growth from birth to 5 years of age...
August 10, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28795414/joint-two-part-tobit-models-for-longitudinal-and-time-to-event-data
#9
Getachew A Dagne
In this article, we show how Tobit models can address problems of identifying characteristics of subjects having left-censored outcomes in the context of developing a method for jointly analyzing time-to-event and longitudinal data. There are some methods for handling these types of data separately, but they may not be appropriate when time to event is dependent on the longitudinal outcome, and a substantial portion of values are reported to be below the limits of detection. An alternative approach is to develop a joint model for the time-to-event outcome and a two-part longitudinal outcome, linking them through random effects...
August 10, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28791722/blood-pressure-and-the-risk-of-chronic-kidney-disease-progression-using-multistate-marginal-structural-models-in-the-cric-study
#10
Alisa J Stephens-Shields, Andrew J Spieker, Amanda Anderson, Paul Drawz, Michael Fischer, Stephen M Sozio, Harold Feldman, Marshall Joffe, Wei Yang, Tom Greene
In patients with chronic kidney disease (CKD), clinical interest often centers on determining treatments and exposures that are causally related to renal progression. Analyses of longitudinal clinical data in this population are often complicated by clinical competing events, such as end-stage renal disease (ESRD) and death, and time-dependent confounding, where patient factors that are predictive of later exposures and outcomes are affected by past exposures. We developed multistate marginal structural models (MS-MSMs) to assess the effect of time-varying systolic blood pressure on disease progression in subjects with CKD...
August 9, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28791726/subgroup-detection-and-sample-size-calculation-with-proportional-hazards-regression-for-survival-data
#11
Suhyun Kang, Wenbin Lu, Rui Song
In this paper, we propose a testing procedure for detecting and estimating the subgroup with an enhanced treatment effect in survival data analysis. Here, we consider a new proportional hazard model that includes a nonparametric component for the covariate effect in the control group and a subgroup-treatment-interaction effect defined by a change plane. We develop a score-type test for detecting the existence of the subgroup, which is doubly robust against misspecification of the baseline effect model or the propensity score but not both under mild assumptions for censoring...
August 8, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28786236/stepped-wedge-designs-insights-from-a-design-of-experiments-perspective
#12
J N S Matthews, A B Forbes
Stepped wedge designs (SWDs) have received considerable attention recently, as they are potentially a useful way to assess new treatments in areas such as health services implementation. Because allocation is usually by cluster, SWDs are often viewed as a form of cluster-randomized trial. However, since the treatment within a cluster changes during the course of the study, they can also be viewed as a form of crossover design. This article explores SWDs from the perspective of crossover trials and designed experiments more generally...
August 8, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28786135/comparing-sampling-methods-for-pharmacokinetic-studies-using-model-averaged-derived-parameters
#13
Helen Yvette Barnett, Helena Geys, Tom Jacobs, Thomas Jaki
Pharmacokinetic studies aim to study how a compound is absorbed, distributed, metabolised, and excreted. The concentration of the compound in the blood or plasma is measured at different time points after administration and pharmacokinetic parameters such as the area under the curve (AUC) or maximum concentration (Cmax ) are derived from the resulting concentration time profile. In this paper, we want to compare different methods for collecting concentration measurements (traditional sampling versus microsampling) on the basis of these derived parameters...
August 8, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28786131/links-between-causal-effects-and-causal-association-for-surrogacy-evaluation-in-a-gaussian-setting
#14
Anna Conlon, Jeremy Taylor, Yun Li, Karla Diaz-Ordaz, Michael Elliott
Two paradigms for the evaluation of surrogate markers in randomized clinical trials have been proposed: the causal effects paradigm and the causal association paradigm. Each of these paradigms rely on assumptions that must be made to proceed with estimation and to validate a candidate surrogate marker (S) for the true outcome of interest (T). We consider the setting in which S and T are Gaussian and are generated from structural models that include an unobserved confounder. Under the assumed structural models, we relate the quantities used to evaluate surrogacy within both the causal effects and causal association frameworks...
August 8, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28786223/an-evaluation-of-constrained-randomization-for-the-design-and-analysis-of-group-randomized-trials-with-binary-outcomes
#15
Fan Li, Elizabeth L Turner, Patrick J Heagerty, David M Murray, William M Vollmer, Elizabeth R DeLong
Group-randomized trials are randomized studies that allocate intact groups of individuals to different comparison arms. A frequent practical limitation to adopting such research designs is that only a limited number of groups may be available, and therefore, simple randomization is unable to adequately balance multiple group-level covariates between arms. Therefore, covariate-based constrained randomization was proposed as an allocation technique to achieve balance. Constrained randomization involves generating a large number of possible allocation schemes, calculating a balance score that assesses covariate imbalance, limiting the randomization space to a prespecified percentage of candidate allocations, and randomly selecting one scheme to implement...
August 7, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28786180/a-joint-modeling-and-estimation-method-for-multivariate-longitudinal-data-with-mixed-types-of-responses-to-analyze-physical-activity-data-generated-by-accelerometers
#16
Haocheng Li, Yukun Zhang, Raymond J Carroll, Sarah Kozey Keadle, Joshua N Sampson, Charles E Matthews
A mixed effect model is proposed to jointly analyze multivariate longitudinal data with continuous, proportion, count, and binary responses. The association of the variables is modeled through the correlation of random effects. We use a quasi-likelihood type approximation for nonlinear variables and transform the proposed model into a multivariate linear mixed model framework for estimation and inference. Via an extension to the EM approach, an efficient algorithm is developed to fit the model. The method is applied to physical activity data, which uses a wearable accelerometer device to measure daily movement and energy expenditure information...
August 7, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28786138/stein-a-simple-toxicity-and-efficacy-interval-design-for-seamless-phase-i-ii-clinical-trials
#17
Ruitao Lin, Guosheng Yin
Seamless phase I/II dose-finding trials are attracting increasing attention nowadays in early-phase drug development for oncology. Most existing phase I/II dose-finding methods use sophisticated yet untestable models to quantify dose-toxicity and dose-efficacy relationships, which always renders them difficult to implement in practice. To simplify the practical implementation, we extend the Bayesian optimal interval design from maximum tolerated dose finding to optimal biological dose finding in phase I/II trials...
August 7, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28786136/estimation-of-smooth-roc-curves-for-biomarkers-with-limits-of-detection
#18
Leonidas E Bantis, Qingxiang Yan, John V Tsimikas, Ziding Feng
Protein biomarkers found in plasma are commonly used for cancer screening and early detection. Measurements obtained by such markers are often based on different assays that may not support detection of accurate measurements due to a limit of detection. The ROC curve is the most popular statistical tool for the evaluation of a continuous biomarker. However, in situations where limits of detection exist, the empirical ROC curve fails to provide a valid estimate for the whole spectrum of the false positive rate (FPR)...
August 7, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28786130/bayesian-nonparametric-areal-wombling-for-small-scale-maps-with-an-application-to-urinary-bladder-cancer-data-from-connecticut
#19
Rajarshi Guhaniyogi
With increasingly abundant spatial data in the form of case counts or rates combined over areal regions (eg, ZIP codes, census tracts, or counties), interest turns to formal identification of difference "boundaries," or barriers on the map, in addition to the estimated statistical map itself. "Boundary" refers to a border that describes vastly disparate outcomes in the adjacent areal units, perhaps caused by latent risk factors. This article focuses on developing a model-based statistical tool, equipped to identify difference boundaries in maps with a small number of areal units, also referred to as small-scale maps...
August 7, 2017: Statistics in Medicine
https://www.readbyqxmd.com/read/28786129/quantile-causal-mediation-analysis-allowing-longitudinal-data
#20
M-A Bind, T J VanderWeele, J D Schwartz, B A Coull
Mediation analysis has mostly been conducted with mean regression models. With this approach modeling means, formulae for direct and indirect effects are based on changes in means, which may not capture effects that occur in units at the tails of mediator and outcome distributions. Individuals with extreme values of medical endpoints are often more susceptible to disease and can be missed if one investigates mean changes only. We derive the controlled direct and indirect effects of an exposure along percentiles of the mediator and outcome using quantile regression models and a causal framework...
August 7, 2017: Statistics in Medicine
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