pp Temporomandibular disorders : a translational approach from basic science to clinical applicability By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319572475 (electronic bk.) Full Article
pp Systems approaches to making change : a practical guide By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9781447174721 (electronic bk.) Full Article
pp Salt, fat and sugar reduction : sensory approaches for nutritional reformulation of foods and beverages By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: O'Sullivan, Maurice G., authorCallnumber: OnlineISBN: 9780128226124 (electronic bk.) Full Article
pp Plant-fire interactions : applying ecophysiology to wildfire management By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Resco de Dios, Víctor, authorCallnumber: OnlineISBN: 9783030411923 (electronic book) Full Article
pp Plant small RNA : biogenesis, regulation and application By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9780128173367 (electronic bk.) Full Article
pp Phytoremediation : in-situ applications By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030000998 (electronic bk.) Full Article
pp Natural materials and products from insects : chemistry and applications By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030366100 (electronic bk.) Full Article
pp Nanobiomaterial engineering : concepts and their applications in biomedicine and diagnostics By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9789813298408 (electronic bk.) Full Article
pp Models of tree and stand dynamics : theory, formulation and application By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Mäkelä, Annikki, authorCallnumber: OnlineISBN: 9783030357610 Full Article
pp Microbial endophytes : functional biology and applications By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9780128196540 (print) Full Article
pp Maxillofacial cone beam computed tomography : principles, techniques and clinical applications By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319620619 (electronic bk.) Full Article
pp Landscape modelling and decision support By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030374211 (electronic bk.) Full Article
pp Irwin and Rippe's intensive care medicine By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9781496306081 hardcover Full Article
pp Intelligent wavelet based techniques for advanced multimedia applications By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Singh, Rajiv, authorCallnumber: OnlineISBN: 9783030318734 (electronic bk.) Full Article
pp Geriatric Medicine : a Problem-Based Approach By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9789811032530 Full Article
pp Extra-coronal restorations : concepts and clinical application By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319790930 (electronic bk.) Full Article
pp Deep learning in medical image analysis : challenges and applications By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030331283 (electronic bk.) Full Article
pp Current microbiological research in Africa : selected applications for sustainable environmental management By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030352967 (electronic bk.) Full Article
pp Conservation genetics in mammals : integrative research using novel approaches By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030333348 (electronic bk.) Full Article
pp Complexity and approximation : in memory of Ker-I Ko By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030416720 (electronic bk.) Full Article
pp Clinical approaches in endodontic regeneration : current and emerging therapeutic perspectives By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319968483 (electronic bk.) Full Article
pp Cellular internet of things : from massive deployments to critical 5G applications By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Liberg, Olof, 1943- author.Callnumber: OnlineISBN: 9780081029039 (electronic bk.) Full Article
pp Carotenoids : properties, processing and applications By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9780128173145 (electronic bk.) Full Article
pp Bioremediation and biotechnology : sustainable approaches to pollution degradation By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030356910 (electronic bk.) Full Article
pp Binary code fingerprinting for cybersecurity : application to malicious code fingerprinting By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Alrabaee, Saed, authiorCallnumber: OnlineISBN: 9783030342388 (electronic bk.) Full Article
pp Apical periodontitis in root-filled teeth : endodontic retreatment and alternative approaches By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319572505 (electronic bk.) Full Article
pp Advances in applied microbiology. By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 1282169459 Full Article
pp Advances in applied microbiology. By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 1282169416 Full Article
pp A handbook of nuclear applications in humans' lives By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Tabbakh, Farshid, author.Callnumber: OnlineISBN: 9781527544512 (electronic bk.) Full Article
pp Wine Retailers Seek Alcohol Shipping Compromise with 18 States By www.prweb.com Published On :: National Association of Wine Retailers Release Letter Delivered to Attorneys General and Alcohol Regulatory Chiefs Concerning Unconstitutional and Unenforceable Wine Shipping Bans(PRWeb April 15, 2020)Read the full story at https://www.prweb.com/releases/wine_retailers_seek_alcohol_shipping_compromise_with_18_states/prweb17050617.htm Full Article
pp Asymptotic genealogies of interacting particle systems with an application to sequential Monte Carlo By projecteuclid.org Published On :: Mon, 17 Feb 2020 04:02 EST Jere Koskela, Paul A. Jenkins, Adam M. Johansen, Dario Spanò. Source: The Annals of Statistics, Volume 48, Number 1, 560--583.Abstract: We study weighted particle systems in which new generations are resampled from current particles with probabilities proportional to their weights. This covers a broad class of sequential Monte Carlo (SMC) methods, widely-used in applied statistics and cognate disciplines. We consider the genealogical tree embedded into such particle systems, and identify conditions, as well as an appropriate time-scaling, under which they converge to the Kingman $n$-coalescent in the infinite system size limit in the sense of finite-dimensional distributions. Thus, the tractable $n$-coalescent can be used to predict the shape and size of SMC genealogies, as we illustrate by characterising the limiting mean and variance of the tree height. SMC genealogies are known to be connected to algorithm performance, so that our results are likely to have applications in the design of new methods as well. Our conditions for convergence are strong, but we show by simulation that they do not appear to be necessary. Full Article
pp Detecting relevant changes in the mean of nonstationary processes—A mass excess approach By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Holger Dette, Weichi Wu. Source: The Annals of Statistics, Volume 47, Number 6, 3578--3608.Abstract: This paper considers the problem of testing if a sequence of means $(mu_{t})_{t=1,ldots ,n}$ of a nonstationary time series $(X_{t})_{t=1,ldots ,n}$ is stable in the sense that the difference of the means $mu_{1}$ and $mu_{t}$ between the initial time $t=1$ and any other time is smaller than a given threshold, that is $|mu_{1}-mu_{t}|leq c$ for all $t=1,ldots ,n$. A test for hypotheses of this type is developed using a bias corrected monotone rearranged local linear estimator and asymptotic normality of the corresponding test statistic is established. As the asymptotic variance depends on the location of the roots of the equation $|mu_{1}-mu_{t}|=c$ a new bootstrap procedure is proposed to obtain critical values and its consistency is established. As a consequence we are able to quantitatively describe relevant deviations of a nonstationary sequence from its initial value. The results are illustrated by means of a simulation study and by analyzing data examples. Full Article
pp Joint convergence of sample autocovariance matrices when $p/n o 0$ with application By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Monika Bhattacharjee, Arup Bose. Source: The Annals of Statistics, Volume 47, Number 6, 3470--3503.Abstract: Consider a high-dimensional linear time series model where the dimension $p$ and the sample size $n$ grow in such a way that $p/n o 0$. Let $hat{Gamma }_{u}$ be the $u$th order sample autocovariance matrix. We first show that the LSD of any symmetric polynomial in ${hat{Gamma }_{u},hat{Gamma }_{u}^{*},ugeq 0}$ exists under independence and moment assumptions on the driving sequence together with weak assumptions on the coefficient matrices. This LSD result, with some additional effort, implies the asymptotic normality of the trace of any polynomial in ${hat{Gamma }_{u},hat{Gamma }_{u}^{*},ugeq 0}$. We also study similar results for several independent MA processes. We show applications of the above results to statistical inference problems such as in estimation of the unknown order of a high-dimensional MA process and in graphical and significance tests for hypotheses on coefficient matrices of one or several such independent processes. Full Article
pp Bootstrapping and sample splitting for high-dimensional, assumption-lean inference By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Alessandro Rinaldo, Larry Wasserman, Max G’Sell. Source: The Annals of Statistics, Volume 47, Number 6, 3438--3469.Abstract: Several new methods have been recently proposed for performing valid inference after model selection. An older method is sample splitting: use part of the data for model selection and the rest for inference. In this paper, we revisit sample splitting combined with the bootstrap (or the Normal approximation). We show that this leads to a simple, assumption-lean approach to inference and we establish results on the accuracy of the method. In fact, we find new bounds on the accuracy of the bootstrap and the Normal approximation for general nonlinear parameters with increasing dimension which we then use to assess the accuracy of regression inference. We define new parameters that measure variable importance and that can be inferred with greater accuracy than the usual regression coefficients. Finally, we elucidate an inference-prediction trade-off: splitting increases the accuracy and robustness of inference but can decrease the accuracy of the predictions. Full Article
pp A smeary central limit theorem for manifolds with application to high-dimensional spheres By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Benjamin Eltzner, Stephan F. Huckemann. Source: The Annals of Statistics, Volume 47, Number 6, 3360--3381.Abstract: The (CLT) central limit theorems for generalized Fréchet means (data descriptors assuming values in manifolds, such as intrinsic means, geodesics, etc.) on manifolds from the literature are only valid if a certain empirical process of Hessians of the Fréchet function converges suitably, as in the proof of the prototypical BP-CLT [ Ann. Statist. 33 (2005) 1225–1259]. This is not valid in many realistic scenarios and we provide for a new very general CLT. In particular, this includes scenarios where, in a suitable chart, the sample mean fluctuates asymptotically at a scale $n^{alpha }$ with exponents $alpha <1/2$ with a nonnormal distribution. As the BP-CLT yields only fluctuations that are, rescaled with $n^{1/2}$, asymptotically normal, just as the classical CLT for random vectors, these lower rates, somewhat loosely called smeariness, had to date been observed only on the circle. We make the concept of smeariness on manifolds precise, give an example for two-smeariness on spheres of arbitrary dimension, and show that smeariness, although “almost never” occurring, may have serious statistical implications on a continuum of sample scenarios nearby. In fact, this effect increases with dimension, striking in particular in high dimension low sample size scenarios. Full Article
pp Exact lower bounds for the agnostic probably-approximately-correct (PAC) machine learning model By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Aryeh Kontorovich, Iosif Pinelis. Source: The Annals of Statistics, Volume 47, Number 5, 2822--2854.Abstract: We provide an exact nonasymptotic lower bound on the minimax expected excess risk (EER) in the agnostic probably-approximately-correct (PAC) machine learning classification model and identify minimax learning algorithms as certain maximally symmetric and minimally randomized “voting” procedures. Based on this result, an exact asymptotic lower bound on the minimax EER is provided. This bound is of the simple form $c_{infty}/sqrt{ u}$ as $ u oinfty$, where $c_{infty}=0.16997dots$ is a universal constant, $ u=m/d$, $m$ is the size of the training sample and $d$ is the Vapnik–Chervonenkis dimension of the hypothesis class. It is shown that the differences between these asymptotic and nonasymptotic bounds, as well as the differences between these two bounds and the maximum EER of any learning algorithms that minimize the empirical risk, are asymptotically negligible, and all these differences are due to ties in the mentioned “voting” procedures. A few easy to compute nonasymptotic lower bounds on the minimax EER are also obtained, which are shown to be close to the exact asymptotic lower bound $c_{infty}/sqrt{ u}$ even for rather small values of the ratio $ u=m/d$. As an application of these results, we substantially improve existing lower bounds on the tail probability of the excess risk. Among the tools used are Bayes estimation and apparently new identities and inequalities for binomial distributions. Full Article
pp An operator theoretic approach to nonparametric mixture models By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Robert A. Vandermeulen, Clayton D. Scott. Source: The Annals of Statistics, Volume 47, Number 5, 2704--2733.Abstract: When estimating finite mixture models, it is common to make assumptions on the mixture components, such as parametric assumptions. In this work, we make no distributional assumptions on the mixture components and instead assume that observations from the mixture model are grouped, such that observations in the same group are known to be drawn from the same mixture component. We precisely characterize the number of observations $n$ per group needed for the mixture model to be identifiable, as a function of the number $m$ of mixture components. In addition to our assumption-free analysis, we also study the settings where the mixture components are either linearly independent or jointly irreducible. Furthermore, our analysis considers two kinds of identifiability, where the mixture model is the simplest one explaining the data, and where it is the only one. As an application of these results, we precisely characterize identifiability of multinomial mixture models. Our analysis relies on an operator-theoretic framework that associates mixture models in the grouped-sample setting with certain infinite-dimensional tensors. Based on this framework, we introduce a general spectral algorithm for recovering the mixture components. Full Article
pp The two-to-infinity norm and singular subspace geometry with applications to high-dimensional statistics By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Joshua Cape, Minh Tang, Carey E. Priebe. Source: The Annals of Statistics, Volume 47, Number 5, 2405--2439.Abstract: The singular value matrix decomposition plays a ubiquitous role throughout statistics and related fields. Myriad applications including clustering, classification, and dimensionality reduction involve studying and exploiting the geometric structure of singular values and singular vectors. This paper provides a novel collection of technical and theoretical tools for studying the geometry of singular subspaces using the two-to-infinity norm. Motivated by preliminary deterministic Procrustes analysis, we consider a general matrix perturbation setting in which we derive a new Procrustean matrix decomposition. Together with flexible machinery developed for the two-to-infinity norm, this allows us to conduct a refined analysis of the induced perturbation geometry with respect to the underlying singular vectors even in the presence of singular value multiplicity. Our analysis yields singular vector entrywise perturbation bounds for a range of popular matrix noise models, each of which has a meaningful associated statistical inference task. In addition, we demonstrate how the two-to-infinity norm is the preferred norm in certain statistical settings. Specific applications discussed in this paper include covariance estimation, singular subspace recovery, and multiple graph inference. Both our Procrustean matrix decomposition and the technical machinery developed for the two-to-infinity norm may be of independent interest. Full Article
pp Regression for copula-linked compound distributions with applications in modeling aggregate insurance claims By projecteuclid.org Published On :: Wed, 15 Apr 2020 22:05 EDT Peng Shi, Zifeng Zhao. Source: The Annals of Applied Statistics, Volume 14, Number 1, 357--380.Abstract: In actuarial research a task of particular interest and importance is to predict the loss cost for individual risks so that informative decisions are made in various insurance operations such as underwriting, ratemaking and capital management. The loss cost is typically viewed to follow a compound distribution where the summation of the severity variables is stopped by the frequency variable. A challenging issue in modeling such outcomes is to accommodate the potential dependence between the number of claims and the size of each individual claim. In this article we introduce a novel regression framework for compound distributions that uses a copula to accommodate the association between the frequency and the severity variables and, thus, allows for arbitrary dependence between the two components. We further show that the new model is very flexible and is easily modified to account for incomplete data due to censoring or truncation. The flexibility of the proposed model is illustrated using both simulated and real data sets. In the analysis of granular claims data from property insurance, we find substantive negative relationship between the number and the size of insurance claims. In addition, we demonstrate that ignoring the frequency-severity association could lead to biased decision-making in insurance operations. Full Article
pp Feature selection for generalized varying coefficient mixed-effect models with application to obesity GWAS By projecteuclid.org Published On :: Wed, 15 Apr 2020 22:05 EDT Wanghuan Chu, Runze Li, Jingyuan Liu, Matthew Reimherr. Source: The Annals of Applied Statistics, Volume 14, Number 1, 276--298.Abstract: Motivated by an empirical analysis of data from a genome-wide association study on obesity, measured by the body mass index (BMI), we propose a two-step gene-detection procedure for generalized varying coefficient mixed-effects models with ultrahigh dimensional covariates. The proposed procedure selects significant single nucleotide polymorphisms (SNPs) impacting the mean BMI trend, some of which have already been biologically proven to be “fat genes.” The method also discovers SNPs that significantly influence the age-dependent variability of BMI. The proposed procedure takes into account individual variations of genetic effects and can also be directly applied to longitudinal data with continuous, binary or count responses. We employ Monte Carlo simulation studies to assess the performance of the proposed method and further carry out causal inference for the selected SNPs. Full Article
pp Integrative survival analysis with uncertain event times in application to a suicide risk study By projecteuclid.org Published On :: Wed, 15 Apr 2020 22:05 EDT Wenjie Wang, Robert Aseltine, Kun Chen, Jun Yan. Source: The Annals of Applied Statistics, Volume 14, Number 1, 51--73.Abstract: The concept of integrating data from disparate sources to accelerate scientific discovery has generated tremendous excitement in many fields. The potential benefits from data integration, however, may be compromised by the uncertainty due to incomplete/imperfect record linkage. Motivated by a suicide risk study, we propose an approach for analyzing survival data with uncertain event times arising from data integration. Specifically, in our problem deaths identified from the hospital discharge records together with reported suicidal deaths determined by the Office of Medical Examiner may still not include all the death events of patients, and the missing deaths can be recovered from a complete database of death records. Since the hospital discharge data can only be linked to the death record data by matching basic patient characteristics, a patient with a censored death time from the first dataset could be linked to multiple potential event records in the second dataset. We develop an integrative Cox proportional hazards regression in which the uncertainty in the matched event times is modeled probabilistically. The estimation procedure combines the ideas of profile likelihood and the expectation conditional maximization algorithm (ECM). Simulation studies demonstrate that under realistic settings of imperfect data linkage the proposed method outperforms several competing approaches including multiple imputation. A marginal screening analysis using the proposed integrative Cox model is performed to identify risk factors associated with death following suicide-related hospitalization in Connecticut. The identified diagnostics codes are consistent with existing literature and provide several new insights on suicide risk, prediction and prevention. Full Article
pp SHOPPER: A probabilistic model of consumer choice with substitutes and complements By projecteuclid.org Published On :: Wed, 15 Apr 2020 22:05 EDT Francisco J. R. Ruiz, Susan Athey, David M. Blei. Source: The Annals of Applied Statistics, Volume 14, Number 1, 1--27.Abstract: We develop SHOPPER, a sequential probabilistic model of shopping data. SHOPPER uses interpretable components to model the forces that drive how a customer chooses products; in particular, we designed SHOPPER to capture how items interact with other items. We develop an efficient posterior inference algorithm to estimate these forces from large-scale data, and we analyze a large dataset from a major chain grocery store. We are interested in answering counterfactual queries about changes in prices. We found that SHOPPER provides accurate predictions even under price interventions, and that it helps identify complementary and substitutable pairs of products. Full Article
pp Bayesian indicator variable selection to incorporate hierarchical overlapping group structure in multi-omics applications By projecteuclid.org Published On :: Wed, 27 Nov 2019 22:01 EST Li Zhu, Zhiguang Huo, Tianzhou Ma, Steffi Oesterreich, George C. Tseng. Source: The Annals of Applied Statistics, Volume 13, Number 4, 2611--2636.Abstract: Variable selection is a pervasive problem in modern high-dimensional data analysis where the number of features often exceeds the sample size (a.k.a. small-n-large-p problem). Incorporation of group structure knowledge to improve variable selection has been widely studied. Here, we consider prior knowledge of a hierarchical overlapping group structure to improve variable selection in regression setting. In genomics applications, for instance, a biological pathway contains tens to hundreds of genes and a gene can be mapped to multiple experimentally measured features (such as its mRNA expression, copy number variation and methylation levels of possibly multiple sites). In addition to the hierarchical structure, the groups at the same level may overlap (e.g., two pathways can share common genes). Incorporating such hierarchical overlapping groups in traditional penalized regression setting remains a difficult optimization problem. Alternatively, we propose a Bayesian indicator model that can elegantly serve the purpose. We evaluate the model in simulations and two breast cancer examples, and demonstrate its superior performance over existing models. The result not only enhances prediction accuracy but also improves variable selection and model interpretation that lead to deeper biological insight of the disease. Full Article
pp A hierarchical curve-based approach to the analysis of manifold data By projecteuclid.org Published On :: Wed, 27 Nov 2019 22:01 EST Liberty Vittert, Adrian W. Bowman, Stanislav Katina. Source: The Annals of Applied Statistics, Volume 13, Number 4, 2539--2563.Abstract: One of the data structures generated by medical imaging technology is high resolution point clouds representing anatomical surfaces. Stereophotogrammetry and laser scanning are two widely available sources of this kind of data. A standardised surface representation is required to provide a meaningful correspondence across different images as a basis for statistical analysis. Point locations with anatomical definitions, referred to as landmarks, have been the traditional approach. Landmarks can also be taken as the starting point for more general surface representations, often using templates which are warped on to an observed surface by matching landmark positions and subsequent local adjustment of the surface. The aim of the present paper is to provide a new approach which places anatomical curves at the heart of the surface representation and its analysis. Curves provide intermediate structures which capture the principal features of the manifold (surface) of interest through its ridges and valleys. As landmarks are often available these are used as anchoring points, but surface curvature information is the principal guide in estimating the curve locations. The surface patches between these curves are relatively flat and can be represented in a standardised manner by appropriate surface transects to give a complete surface model. This new approach does not require the use of a template, reference sample or any external information to guide the method and, when compared with a surface based approach, the estimation of curves is shown to have improved performance. In addition, examples involving applications to mussel shells and human faces show that the analysis of curve information can deliver more targeted and effective insight than the use of full surface information. Full Article
pp A latent discrete Markov random field approach to identifying and classifying historical forest communities based on spatial multivariate tree species counts By projecteuclid.org Published On :: Wed, 27 Nov 2019 22:01 EST Stephen Berg, Jun Zhu, Murray K. Clayton, Monika E. Shea, David J. Mladenoff. Source: The Annals of Applied Statistics, Volume 13, Number 4, 2312--2340.Abstract: The Wisconsin Public Land Survey database describes historical forest composition at high spatial resolution and is of interest in ecological studies of forest composition in Wisconsin just prior to significant Euro-American settlement. For such studies it is useful to identify recurring subpopulations of tree species known as communities, but standard clustering approaches for subpopulation identification do not account for dependence between spatially nearby observations. Here, we develop and fit a latent discrete Markov random field model for the purpose of identifying and classifying historical forest communities based on spatially referenced multivariate tree species counts across Wisconsin. We show empirically for the actual dataset and through simulation that our latent Markov random field modeling approach improves prediction and parameter estimation performance. For model fitting we introduce a new stochastic approximation algorithm which enables computationally efficient estimation and classification of large amounts of spatial multivariate count data. Full Article
pp Microsimulation model calibration using incremental mixture approximate Bayesian computation By projecteuclid.org Published On :: Wed, 27 Nov 2019 22:01 EST Carolyn M. Rutter, Jonathan Ozik, Maria DeYoreo, Nicholson Collier. Source: The Annals of Applied Statistics, Volume 13, Number 4, 2189--2212.Abstract: Microsimulation models (MSMs) are used to inform policy by predicting population-level outcomes under different scenarios. MSMs simulate individual-level event histories that mark the disease process (such as the development of cancer) and the effect of policy actions (such as screening) on these events. MSMs often have many unknown parameters; calibration is the process of searching the parameter space to select parameters that result in accurate MSM prediction of a wide range of targets. We develop Incremental Mixture Approximate Bayesian Computation (IMABC) for MSM calibration which results in a simulated sample from the posterior distribution of model parameters given calibration targets. IMABC begins with a rejection-based ABC step, drawing a sample of points from the prior distribution of model parameters and accepting points that result in simulated targets that are near observed targets. Next, the sample is iteratively updated by drawing additional points from a mixture of multivariate normal distributions and accepting points that result in accurate predictions. Posterior estimates are obtained by weighting the final set of accepted points to account for the adaptive sampling scheme. We demonstrate IMABC by calibrating CRC-SPIN 2.0, an updated version of a MSM for colorectal cancer (CRC) that has been used to inform national CRC screening guidelines. Full Article
pp Joint model of accelerated failure time and mechanistic nonlinear model for censored covariates, with application in HIV/AIDS By projecteuclid.org Published On :: Wed, 27 Nov 2019 22:01 EST Hongbin Zhang, Lang Wu. Source: The Annals of Applied Statistics, Volume 13, Number 4, 2140--2157.Abstract: For a time-to-event outcome with censored time-varying covariates, a joint Cox model with a linear mixed effects model is the standard modeling approach. In some applications such as AIDS studies, mechanistic nonlinear models are available for some covariate process such as viral load during anti-HIV treatments, derived from the underlying data-generation mechanisms and disease progression. Such a mechanistic nonlinear covariate model may provide better-predicted values when the covariates are left censored or mismeasured. When the focus is on the impact of the time-varying covariate process on the survival outcome, an accelerated failure time (AFT) model provides an excellent alternative to the Cox proportional hazard model since an AFT model is formulated to allow the influence of the outcome by the entire covariate process. In this article, we consider a nonlinear mixed effects model for the censored covariates in an AFT model, implemented using a Monte Carlo EM algorithm, under the framework of a joint model for simultaneous inference. We apply the joint model to an HIV/AIDS data to gain insights for assessing the association between viral load and immunological restoration during antiretroviral therapy. Simulation is conducted to compare model performance when the covariate model and the survival model are misspecified. Full Article
pp Statistical inference for partially observed branching processes with application to cell lineage tracking of in vivo hematopoiesis By projecteuclid.org Published On :: Wed, 27 Nov 2019 22:01 EST Jason Xu, Samson Koelle, Peter Guttorp, Chuanfeng Wu, Cynthia Dunbar, Janis L. Abkowitz, Vladimir N. Minin. Source: The Annals of Applied Statistics, Volume 13, Number 4, 2091--2119.Abstract: Single-cell lineage tracking strategies enabled by recent experimental technologies have produced significant insights into cell fate decisions, but lack the quantitative framework necessary for rigorous statistical analysis of mechanistic models describing cell division and differentiation. In this paper, we develop such a framework with corresponding moment-based parameter estimation techniques for continuous-time, multi-type branching processes. Such processes provide a probabilistic model of how cells divide and differentiate, and we apply our method to study hematopoiesis , the mechanism of blood cell production. We derive closed-form expressions for higher moments in a general class of such models. These analytical results allow us to efficiently estimate parameters of much richer statistical models of hematopoiesis than those used in previous statistical studies. To our knowledge, the method provides the first rate inference procedure for fitting such models to time series data generated from cellular barcoding experiments. After validating the methodology in simulation studies, we apply our estimator to hematopoietic lineage tracking data from rhesus macaques. Our analysis provides a more complete understanding of cell fate decisions during hematopoiesis in nonhuman primates, which may be more relevant to human biology and clinical strategies than previous findings from murine studies. For example, in addition to previously estimated hematopoietic stem cell self-renewal rate, we are able to estimate fate decision probabilities and to compare structurally distinct models of hematopoiesis using cross validation. These estimates of fate decision probabilities and our model selection results should help biologists compare competing hypotheses about how progenitor cells differentiate. The methodology is transferrable to a large class of stochastic compartmental and multi-type branching models, commonly used in studies of cancer progression, epidemiology and many other fields. Full Article
pp Estimating the rate constant from biosensor data via an adaptive variational Bayesian approach By projecteuclid.org Published On :: Wed, 27 Nov 2019 22:01 EST Ye Zhang, Zhigang Yao, Patrik Forssén, Torgny Fornstedt. Source: The Annals of Applied Statistics, Volume 13, Number 4, 2011--2042.Abstract: The means to obtain the rate constants of a chemical reaction is a fundamental open problem in both science and the industry. Traditional techniques for finding rate constants require either chemical modifications of the reactants or indirect measurements. The rate constant map method is a modern technique to study binding equilibrium and kinetics in chemical reactions. Finding a rate constant map from biosensor data is an ill-posed inverse problem that is usually solved by regularization. In this work, rather than finding a deterministic regularized rate constant map that does not provide uncertainty quantification of the solution, we develop an adaptive variational Bayesian approach to estimate the distribution of the rate constant map, from which some intrinsic properties of a chemical reaction can be explored, including information about rate constants. Our new approach is more realistic than the existing approaches used for biosensors and allows us to estimate the dynamics of the interactions, which are usually hidden in a deterministic approximate solution. We verify the performance of the new proposed method by numerical simulations, and compare it with the Markov chain Monte Carlo algorithm. The results illustrate that the variational method can reliably capture the posterior distribution in a computationally efficient way. Finally, the developed method is also tested on the real biosensor data (parathyroid hormone), where we provide two novel analysis tools—the thresholding contour map and the high order moment map—to estimate the number of interactions as well as their rate constants. Full Article
pp A semiparametric modeling approach using Bayesian Additive Regression Trees with an application to evaluate heterogeneous treatment effects By projecteuclid.org Published On :: Wed, 16 Oct 2019 22:03 EDT Bret Zeldow, Vincent Lo Re III, Jason Roy. Source: The Annals of Applied Statistics, Volume 13, Number 3, 1989--2010.Abstract: Bayesian Additive Regression Trees (BART) is a flexible machine learning algorithm capable of capturing nonlinearities between an outcome and covariates and interactions among covariates. We extend BART to a semiparametric regression framework in which the conditional expectation of an outcome is a function of treatment, its effect modifiers, and confounders. The confounders are allowed to have unspecified functional form, while treatment and effect modifiers that are directly related to the research question are given a linear form. The result is a Bayesian semiparametric linear regression model where the posterior distribution of the parameters of the linear part can be interpreted as in parametric Bayesian regression. This is useful in situations where a subset of the variables are of substantive interest and the others are nuisance variables that we would like to control for. An example of this occurs in causal modeling with the structural mean model (SMM). Under certain causal assumptions, our method can be used as a Bayesian SMM. Our methods are demonstrated with simulation studies and an application to dataset involving adults with HIV/Hepatitis C coinfection who newly initiate antiretroviral therapy. The methods are available in an R package called semibart. Full Article