journal
MENU ▼
Read by QxMD icon Read
search

Biostatistics

journal
https://www.readbyqxmd.com/read/29462286/the-c-index-is-not-proper-for-the-evaluation-of-t-year-predicted-risks
#1
Paul Blanche, Michael W Kattan, Thomas A Gerds
We show that the widely used concordance index for time to event outcome is not proper when interest is in predicting a $t$-year risk of an event, for example 10-year mortality. In the situation with a fixed prediction horizon, the concordance index can be higher for a misspecified model than for a correctly specified model. Impropriety happens because the concordance index assesses the order of the event times and not the order of the event status at the prediction horizon. The time-dependent area under the receiver operating characteristic curve does not have this problem and is proper in this context...
February 16, 2018: Biostatistics
https://www.readbyqxmd.com/read/29462283/erratum-methods-for-handling-longitudinal-outcome-processes-truncated-by-dropout-and-death
#2
Lan Wen, Graciela Muniz Terrera, Shaun R Seaman
No abstract text is available yet for this article.
February 15, 2018: Biostatistics
https://www.readbyqxmd.com/read/29447357/analysis-of-cluster-randomized-test-negative-designs-cluster-level-methods
#3
Nicholas P Jewell, Suzanne Dufault, Zoe Cutcher, Cameron P Simmons, Katherine L Anders
Intervention trials of vector control methods often require community level randomization with appropriate inferential methods. For many interventions, the possibility of confounding due to the effects of health-care seeking behavior on disease ascertainment remains a concern. The test-negative design, a variant of the case-control method, was introduced to mitigate this issue in the assessment of the efficacy of influenza vaccination (measured at an individual level) on influenza infection. Here, we introduce a cluster-randomized test-negative design that includes randomization of the intervention at a group level...
February 12, 2018: Biostatistics
https://www.readbyqxmd.com/read/29447346/penalized-estimation-of-complex-non-linear-exposure-lag-response-associations
#4
Andreas Bender, Fabian Scheipl, Wolfgang Hartl, Andrew G Day, Helmut Küchenhoff
We propose a novel approach for the flexible modeling of complex exposure-lag-response associations in time-to-event data, where multiple past exposures within a defined time window are cumulatively associated with the hazard. Our method allows for the estimation of a wide variety of effects, including potentially smooth and smoothly time-varying effects as well as cumulative effects with leads and lags, taking advantage of the inference methods that have recently been developed for generalized additive mixed models...
February 12, 2018: Biostatistics
https://www.readbyqxmd.com/read/29420686/marginal-false-discovery-rates-for-penalized-regression-models
#5
Patrick J Breheny
Penalized regression methods are an attractive tool for high-dimensional data analysis, but their widespread adoption has been hampered by the difficulty of applying inferential tools. In particular, the question "How reliable is the selection of those features?" has proved difficult to address. In part, this difficulty arises from defining false discoveries in the classical, fully conditional sense, which is possible in low dimensions but does not scale well to high-dimensional settings. Here, we consider the analysis of marginal false discovery rates (mFDRs) for penalized regression methods...
February 6, 2018: Biostatistics
https://www.readbyqxmd.com/read/29415194/a-semiparametric-model-for-wearable-sensor-based-physical-activity-monitoring-data-with-informative-device-wear
#6
Jaejoon Song, Michael D Swartz, Kelley Pettee Gabriel, Karen Basen-Engquist
Wearable sensors provide an exceptional opportunity in collecting real-time behavioral data in free living conditions. However, wearable sensor data from observational studies often suffer from information bias, since participants' willingness to wear the monitoring devices may be associated with the underlying behavior of interest. The aim of this study was to introduce a semiparametric statistical approach for modeling wearable sensor-based physical activity monitoring data with informative device wear. Our simulation study indicated that estimates from the generalized estimating equations showed ignorable bias when device wear patterns were independent of the participants physical activity process, but incrementally more biased when the patterns of device non-wear times were increasingly associated with the physical activity process...
February 5, 2018: Biostatistics
https://www.readbyqxmd.com/read/29394327/estimation-of-clinical-trial-success-rates-and-related-parameters
#7
Chi Heem Wong, Kien Wei Siah, Andrew W Lo
Previous estimates of drug development success rates rely on relatively small samples from databases curated by the pharmaceutical industry and are subject to potential selection biases. Using a sample of 406 038 entries of clinical trial data for over 21 143 compounds from January 1, 2000 to October 31, 2015, we estimate aggregate clinical trial success rates and durations. We also compute disaggregated estimates across several trial features including disease type, clinical phase, industry or academic sponsor, biomarker presence, lead indication status, and time...
January 31, 2018: Biostatistics
https://www.readbyqxmd.com/read/29365040/adjusting-for-unmeasured-spatial-confounding-with-distance-adjusted-propensity-score-matching
#8
Georgia Papadogeorgou, Christine Choirat, Corwin M Zigler
Propensity score matching is a common tool for adjusting for observed confounding in observational studies, but is known to have limitations in the presence of unmeasured confounding. In many settings, researchers are confronted with spatially-indexed data where the relative locations of the observational units may serve as a useful proxy for unmeasured confounding that varies according to a spatial pattern. We develop a new method, termed distance adjusted propensity score matching (DAPSm) that incorporates information on units' spatial proximity into a propensity score matching procedure...
January 20, 2018: Biostatistics
https://www.readbyqxmd.com/read/29360946/nonparametric-bayesian-inference-for-mean-residual-life-functions-in-survival-analysis
#9
Valerie Poynor, Athanasios Kottas
Modeling and inference for survival analysis problems typically revolves around different functions related to the survival distribution. Here, we focus on the mean residual life (MRL) function, which provides the expected remaining lifetime given that a subject has survived (i.e. is event-free) up to a particular time. This function is of direct interest in reliability, medical, and actuarial fields. In addition to its practical interpretation, the MRL function characterizes the survival distribution. We develop general Bayesian nonparametric inference for MRL functions built from a Dirichlet process mixture model for the associated survival distribution...
January 19, 2018: Biostatistics
https://www.readbyqxmd.com/read/29325029/neuroconductor-an-r-platform-for-medical-imaging-analysis
#10
John Muschelli, Adrian Gherman, Jean-Philippe Fortin, Brian Avants, Brandon Whitcher, Jonathan D Clayden, Brian S Caffo, Ciprian M Crainiceanu
Neuroconductor (https://neuroconductor.org) is an open-source platform for rapid testing and dissemination of reproducible computational imaging software. The goals of the project are to: (i) provide a centralized repository of R software dedicated to image analysis, (ii) disseminate software updates quickly, (iii) train a large, diverse community of scientists using detailed tutorials and short courses, (iv) increase software quality via automatic and manual quality controls, and (v) promote reproducibility of image data analysis...
January 6, 2018: Biostatistics
https://www.readbyqxmd.com/read/29315363/modeling-the-rate-of-hiv-testing-from-repeated-binary-data-amidst-potential-never-testers
#11
John D Rice, Brent A Johnson, Robert L Strawderman
Many longitudinal studies with a binary outcome measure involve a fraction of subjects with a homogeneous response profile. In our motivating data set, a study on the rate of human immunodeficiency virus (HIV) self-testing in a population of men who have sex with men (MSM), a substantial proportion of the subjects did not self-test during the follow-up study. The observed data in this context consist of a binary sequence for each subject indicating whether or not that subject experienced any events between consecutive observation time points, so subjects who never self-tested were observed to have a response vector consisting entirely of zeros...
January 4, 2018: Biostatistics
https://www.readbyqxmd.com/read/29309528/modeling-the-cumulative-incidence-function-of-multivariate-competing-risks-data-allowing-for-within-cluster-dependence-of-risk-and-timing
#12
Luise Cederkvist, Klaus K Holst, Klaus K Andersen, Thomas H Scheike
We propose to model the cause-specific cumulative incidence function of multivariate competing risks data using a random effects model that allows for within-cluster dependence of both risk and timing. The model contains parameters that makes it possible to assess how the two are connected, e.g. if high-risk is related to early onset. Under the proposed model, the cumulative incidences of all failure causes are modeled and all cause-specific and cross-cause associations specified. Consequently, left-truncation and right-censoring are easily dealt with...
January 4, 2018: Biostatistics
https://www.readbyqxmd.com/read/29309512/monte-carlo-local-likelihood-approximation
#13
Minjeong Jeon, Cari Kaufman, Sophia Rabe-Hesketh
We propose the Monte Carlo local likelihood (MCLL) method for approximating maximum likelihood estimation (MLE). MCLL initially treats model parameters as random variables, sampling them from the posterior distribution as in a Bayesian model. The likelihood function is then approximated up to a constant by fitting a density to the posterior samples and dividing the approximate posterior density by the prior. In the MCLL algorithm, the posterior density is estimated using local likelihood density estimation, in which the log-density is locally approximated by a polynomial function...
January 4, 2018: Biostatistics
https://www.readbyqxmd.com/read/29293896/it-s-all-about-balance-propensity-score-matching-in-the-context-of-complex-survey-data
#14
David Lenis, Trang Quynh Nguyen, Nianbo Dong, Elizabeth A Stuart
Many research studies aim to draw causal inferences using data from large, nationally representative survey samples, and many of these studies use propensity score matching to make those causal inferences as rigorous as possible given the non-experimental nature of the data. However, very few applied studies are careful about incorporating the survey design with the propensity score analysis, which may mean that the results do not generate population inferences. This may be because few methodological studies examine how to best combine these methods...
December 27, 2017: Biostatistics
https://www.readbyqxmd.com/read/29309509/time-varying-proportional-odds-model-for-mega-analysis-of-clustered-event-times
#15
Tanya P Garcia, Karen Marder, Yuanjia Wang
Mega-analysis, or the meta-analysis of individual data, enables pooling and comparing multiple studies to enhance estimation and power. A challenge in mega-analysis is estimating the distribution for clustered, potentially censored event times where the dependency structure can introduce bias if ignored. We propose a new proportional odds model with unknown, time-varying coefficients, and random effects. The model directly captures event dependencies, handles censoring using pseudo-values, and permits a simple estimation by transforming the model into an easily estimable additive logistic mixed effect model...
December 22, 2017: Biostatistics
https://www.readbyqxmd.com/read/29267957/multivariate-generalized-linear-model-for-genetic-pleiotropy
#16
Daniel J Schaid, Xingwei Tong, Anthony Batzler, Jason P Sinnwell, Jiang Qing, Joanna M Biernacka
When a single gene influences more than one trait, known as pleiotropy, it is important to detect pleiotropy to improve the biological understanding of a gene. This can lead to improved screening, diagnosis, and treatment of diseases. Yet, most current multivariate methods to evaluate pleiotropy test the null hypothesis that none of the traits are associated with a variant; departures from the null could be driven by just one associated trait. A formal test of pleiotropy should assume a null hypothesis that one or fewer traits are associated with a genetic variant...
December 16, 2017: Biostatistics
https://www.readbyqxmd.com/read/29267874/fixed-choice-design-and-augmented-fixed-choice-design-for-network-data-with-missing-observations
#17
Miles Q Ott, Matthew T Harrison, Krista J Gile, Nancy P Barnett, Joseph W Hogan
The statistical analysis of social networks is increasingly used to understand social processes and patterns. The association between social relationships and individual behaviors is of particular interest to sociologists, psychologists, and public health researchers. Several recent network studies make use of the fixed choice design (FCD), which induces missing edges in the network data. Because of the complex dependence structure inherent in networks, missing data can pose very difficult problems for valid statistical inference...
December 16, 2017: Biostatistics
https://www.readbyqxmd.com/read/29267847/adjusting-for-bias-introduced-by-instrumental-variable-estimation-in-the-cox-proportional-hazards-model
#18
Pablo Martínez-Camblor, Todd Mackenzie, Douglas O Staiger, Philip P Goodney, A James O'Malley
Instrumental variable (IV) methods are widely used for estimating average treatment effects in the presence of unmeasured confounders. However, the capability of existing IV procedures, and most notably the two-stage residual inclusion (2SRI) algorithm recommended for use in non-linear contexts, to account for unmeasured confounders in the Cox proportional hazard model is unclear. We show that instrumenting an endogenous treatment induces an unmeasured covariate, referred to as an individual frailty in survival analysis parlance, which if not accounted for leads to bias...
December 16, 2017: Biostatistics
https://www.readbyqxmd.com/read/29165631/instrumental-variables-estimation-under-a-structural-cox-model
#19
Torben Martinussen, Ditte Nørbo Sørensen, Stijn Vansteelandt
Instrumental variable (IV) analysis is an increasingly popular tool for inferring the effect of an exposure on an outcome, as witnessed by the growing number of IV applications in epidemiology, for instance. The majority of IV analyses of time-to-event endpoints are, however, dominated by heuristic approaches. More rigorous proposals have either sidestepped the Cox model, or considered it within a restrictive context with dichotomous exposure and instrument, amongst other limitations. The aim of this article is to reconsider IV estimation under a structural Cox model, allowing for arbitrary exposure and instruments...
November 20, 2017: Biostatistics
https://www.readbyqxmd.com/read/29149240/z-scores-based-methods-and-their-application-to-biological-monitoring-an-example-in-professional-soccer-players
#20
Guillaume Saulière, Jérôme Dedecker, Laurie-Anne Marquet, Pierre Rochcongar, Jean-Francois Toussaint, Geoffroy Berthelot
The clinical and biological follow-up of individuals, such as the biological passport for athletes, is typically based on the individual and longitudinal monitoring of hematological or urine markers. These follow-ups aim to identify abnormal behavior by comparing the individual's biological samples to an established baseline. These comparisons may be done via different ways, but each of them requires an appropriate extra population to compute the significance levels, which is a non-trivial issue. Moreover, it is not necessarily relevant to compare the measures of a biomarker of a professional athlete to that of a reference population (even restricted to other athletes), and a reasonable alternative is to detect the abnormal values by considering only the other measurements of the same athlete...
November 15, 2017: Biostatistics
journal
journal
34811
1
2
Fetch more papers »
Fetching more papers... Fetching...
Read by QxMD. Sign in or create an account to discover new knowledge that matter to you.
Remove bar
Read by QxMD icon Read
×

Search Tips

Use Boolean operators: AND/OR

diabetic AND foot
diabetes OR diabetic

Exclude a word using the 'minus' sign

Virchow -triad

Use Parentheses

water AND (cup OR glass)

Add an asterisk (*) at end of a word to include word stems

Neuro* will search for Neurology, Neuroscientist, Neurological, and so on

Use quotes to search for an exact phrase

"primary prevention of cancer"
(heart or cardiac or cardio*) AND arrest -"American Heart Association"