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Dissertations on leading philosophical topics / by Alexander Bain.

London : Longmans, Green, 1903.




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Dr Pereira's elements of materia medica and therapeutics : abridged and adapted for the use of medical and pharmaceutical practitioners and students, and comprising all the medicines of the British pharmacopoeia, with such others as are frequently ord

London : Longmans, Green, 1872.




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Du molluscum : recherches critiques sur les formes, la nature et le traitement des affections cutanées de ce nom, suivies de la description détaillée d'une nouvelle variété / par Maximilien Maurice Jacobovics.

Londres : Paris, 1840.




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The Edinburgh stereoscopic atlas of obstetrics / edited by G.F. Barbour Simpson and Edward Burnet ; with a preface by Sir J. Halliday Croom.

London : Caxton Pub. Co, 1908-1909.




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Eighth annual report of the directors of the Glasgow Asylum for Lunatics, submitted, in terms of their charter, to a general meeting of contributors, 3rd January, 1822.

Glasgow : Hedderwick, 1822.




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Electricity : its application in medicine and surgery : a brief and practical exposition of modern scientific electro-therapeutics / by Wellington Adams.

Detroit, Mich. : G.S. Davis, 1891.




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Electro-therapeutics of neurasthenia / by W.F. Robinson.

Detroit, Mich. : G.S. Davis, 1893.




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Elementary ophthalmic optics / by Freeland Fergus.

London : Blackie, 1903.




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An elementary treatise on kinematics and dynamics / by James Gordon MacGregor.

London : Macmillan, 1902.




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Elementary treatise on physics, experimental and applied : for the use of colleges and schools / translated and edited from Ganot's Éléments de physique (with the author's sanction) by E. Atkinson.

London : Longmans, Green, 1868.




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Elements of pathology and therapeutics being the outlines of a work, intended to ascertain the nature, causes, and most efficacious modes of prevention and cure, of the greater number of the diseases incidental to the human frame : illustrated by numerous

Bath : And sold by Underwood, London, 1825.




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Elements of pharmacy, materia medica, and therapeutics / by William Whitla.

London : H. Renshaw, 1898.




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Elements of pharmacy, materia medica, and therapeutics / by Sir William Whitla.

London : Bailliere, Tindall and Cox, 1910.




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Entoptics, with its uses in physiology and medicine / by James Jago.

London : J. Churchill, 1864.




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Entwicklungsgeschichte des Gehirns : nach Untersuchungen an höheren Wirbelthieren und dem Menschen / dargestellt von Victor v. Mihalkovics.

Leipzig : W. Engelmann, 1877.




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An epitome of the reports of the medical officers to the Chinese imperial maritime customs service, from 1871 to 1882 : with chapters on the history of medicine in China; materia medica; epidemics; famine; ethnology; and chronology in relation to medicine

London : Bailliere, Tindall and Cox, 1884.




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Iowa Caucuses Offer Students a Laboratory for Civics Education

With their state’s caucuses the first official marker in the 2020 presidential contest, Iowa teenagers are in a unique position to observe and participate.




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Could Testing Wreck Civics Education?

As civic education undergoes a renaissance in schools, educators are looking beyond standardized tests to determine whether the lessons empower students to embrace civic behaviors, like voting or volunteering.




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How 3 States Are Digging In on Civics Education

As growing numbers of states jump on the civics-learning bandwagon, a coalition of 90 national groups warns that some strategies are better than others. Here's a look at three states working toward a comprehensive approach to the topic.




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More Than Phonics: How to Boost Comprehension for Early Readers

Learning how to decode words is essential to becoming a reader. But research shows that building a strong vocabulary and knowledge-base is crucial as well.




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Tuberculosis statistics : summary of the report / addressed by Dr. S. Rosenfeld (Vienna) to the Health Committee of the Leage of Nations.

England : League of Nations, 1925.




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Oh Luna Fortuna : the story of how the ethics of polyamory helped my rescue dog and me heal from trauma / graphic memoir comic by Stacy Bias.

London : Stacy Bias, 2019.




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New approaches to treatment of chronic pain : a review of multidisciplinary pain clinics and pain centers / editor, Lorenz K.Y. Ng.

Rockville, Maryland : National Institute on Drug Abuse, 1981.




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Prenatal drug exposure : kinetics and dynamics / editors, C. Nora Chiang, Charles C. Lee.

Rockville, Maryland : National Institute on Drug Abuse, 1985.




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Drug abuse treatment client characteristics and pretreatment behaviors : 1979-1981 TOPS admission cohorts / Robert L. Hubbard, Robert M. Bray, Elizabeth R. Cavanaugh, J. Valley Rachal, S. Gail Craddock, James J. Collins, Margaret Allison ; Research Triang

Rockville, Maryland : National Institute on Drug Abuse, 1986.




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Addicted women : family dynamics, self perceptions, and support systems.

Rockville, Maryland : National Institute on Drug Abuse, 1979.




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Psychosocial characteristics of drug-abusing women / by Marvin R. Burt, principal investigator ; Thomas J. Glynn, Barbara J. Sowder ; Burt Associates, Inc.

Rockville, Maryland : National Institute on Drug Abuse, 1979.




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New essays on abortion and bioethics / volume editor, Rem B. Edwards.

Greenwich, Conn. : Jai Press Inc., 1997.




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Asymptotics and optimal bandwidth for nonparametric estimation of density level sets

Wanli Qiao.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 302--344.

Abstract:
Bandwidth selection is crucial in the kernel estimation of density level sets. A risk based on the symmetric difference between the estimated and true level sets is usually used to measure their proximity. In this paper we provide an asymptotic $L^{p}$ approximation to this risk, where $p$ is characterized by the weight function in the risk. In particular the excess risk corresponds to an $L^{2}$ type of risk, and is adopted to derive an optimal bandwidth for nonparametric level set estimation of $d$-dimensional density functions ($dgeq 1$). A direct plug-in bandwidth selector is developed for kernel density level set estimation and its efficacy is verified in numerical studies.




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Kaplan-Meier V- and U-statistics

Tamara Fernández, Nicolás Rivera.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1872--1916.

Abstract:
In this paper, we study Kaplan-Meier V- and U-statistics respectively defined as $ heta (widehat{F}_{n})=sum _{i,j}K(X_{[i:n]},X_{[j:n]})W_{i}W_{j}$ and $ heta _{U}(widehat{F}_{n})=sum _{i eq j}K(X_{[i:n]},X_{[j:n]})W_{i}W_{j}/sum _{i eq j}W_{i}W_{j}$, where $widehat{F}_{n}$ is the Kaplan-Meier estimator, ${W_{1},ldots ,W_{n}}$ are the Kaplan-Meier weights and $K:(0,infty )^{2} o mathbb{R}$ is a symmetric kernel. As in the canonical setting of uncensored data, we differentiate between two asymptotic behaviours for $ heta (widehat{F}_{n})$ and $ heta _{U}(widehat{F}_{n})$. Additionally, we derive an asymptotic canonical V-statistic representation of the Kaplan-Meier V- and U-statistics. By using this representation we study properties of the asymptotic distribution. Applications to hypothesis testing are given.




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Modal clustering asymptotics with applications to bandwidth selection

Alessandro Casa, José E. Chacón, Giovanna Menardi.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 835--856.

Abstract:
Density-based clustering relies on the idea of linking groups to some specific features of the probability distribution underlying the data. The reference to a true, yet unknown, population structure allows framing the clustering problem in a standard inferential setting, where the concept of ideal population clustering is defined as the partition induced by the true density function. The nonparametric formulation of this approach, known as modal clustering, draws a correspondence between the groups and the domains of attraction of the density modes. Operationally, a nonparametric density estimate is required and a proper selection of the amount of smoothing, governing the shape of the density and hence possibly the modal structure, is crucial to identify the final partition. In this work, we address the issue of density estimation for modal clustering from an asymptotic perspective. A natural and easy to interpret metric to measure the distance between density-based partitions is discussed, its asymptotic approximation explored, and employed to study the problem of bandwidth selection for nonparametric modal clustering.




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Neyman-Pearson classification: parametrics and sample size requirement

The Neyman-Pearson (NP) paradigm in binary classification seeks classifiers that achieve a minimal type II error while enforcing the prioritized type I error controlled under some user-specified level $alpha$. This paradigm serves naturally in applications such as severe disease diagnosis and spam detection, where people have clear priorities among the two error types. Recently, Tong, Feng, and Li (2018) proposed a nonparametric umbrella algorithm that adapts all scoring-type classification methods (e.g., logistic regression, support vector machines, random forest) to respect the given type I error (i.e., conditional probability of classifying a class $0$ observation as class $1$ under the 0-1 coding) upper bound $alpha$ with high probability, without specific distributional assumptions on the features and the responses. Universal the umbrella algorithm is, it demands an explicit minimum sample size requirement on class $0$, which is often the more scarce class, such as in rare disease diagnosis applications. In this work, we employ the parametric linear discriminant analysis (LDA) model and propose a new parametric thresholding algorithm, which does not need the minimum sample size requirements on class $0$ observations and thus is suitable for small sample applications such as rare disease diagnosis. Leveraging both the existing nonparametric and the newly proposed parametric thresholding rules, we propose four LDA-based NP classifiers, for both low- and high-dimensional settings. On the theoretical front, we prove NP oracle inequalities for one proposed classifier, where the rate for excess type II error benefits from the explicit parametric model assumption. Furthermore, as NP classifiers involve a sample splitting step of class $0$ observations, we construct a new adaptive sample splitting scheme that can be applied universally to NP classifiers, and this adaptive strategy reduces the type II error of these classifiers. The proposed NP classifiers are implemented in the R package nproc.




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On Stationary-Point Hitting Time and Ergodicity of Stochastic Gradient Langevin Dynamics

Stochastic gradient Langevin dynamics (SGLD) is a fundamental algorithm in stochastic optimization. Recent work by Zhang et al. (2017) presents an analysis for the hitting time of SGLD for the first and second order stationary points. The proof in Zhang et al. (2017) is a two-stage procedure through bounding the Cheeger's constant, which is rather complicated and leads to loose bounds. In this paper, using intuitions from stochastic differential equations, we provide a direct analysis for the hitting times of SGLD to the first and second order stationary points. Our analysis is straightforward. It only relies on basic linear algebra and probability theory tools. Our direct analysis also leads to tighter bounds comparing to Zhang et al. (2017) and shows the explicit dependence of the hitting time on different factors, including dimensionality, smoothness, noise strength, and step size effects. Under suitable conditions, we show that the hitting time of SGLD to first-order stationary points can be dimension-independent. Moreover, we apply our analysis to study several important online estimation problems in machine learning, including linear regression, matrix factorization, and online PCA.




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Pitfalls of significance testing and $p$-value variability: An econometrics perspective

Norbert Hirschauer, Sven Grüner, Oliver Mußhoff, Claudia Becker.

Source: Statistics Surveys, Volume 12, 136--172.

Abstract:
Data on how many scientific findings are reproducible are generally bleak and a wealth of papers have warned against misuses of the $p$-value and resulting false findings in recent years. This paper discusses the question of what we can(not) learn from the $p$-value, which is still widely considered as the gold standard of statistical validity. We aim to provide a non-technical and easily accessible resource for statistical practitioners who wish to spot and avoid misinterpretations and misuses of statistical significance tests. For this purpose, we first classify and describe the most widely discussed (“classical”) pitfalls of significance testing, and review published work on these misuses with a focus on regression-based “confirmatory” study. This includes a description of the single-study bias and a simulation-based illustration of how proper meta-analysis compares to misleading significance counts (“vote counting”). Going beyond the classical pitfalls, we also use simulation to provide intuition that relying on the statistical estimate “$p$-value” as a measure of evidence without considering its sample-to-sample variability falls short of the mark even within an otherwise appropriate interpretation. We conclude with a discussion of the exigencies of informed approaches to statistical inference and corresponding institutional reforms.




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Analyzing complex functional brain networks: Fusing statistics and network science to understand the brain

Sean L. Simpson, F. DuBois Bowman, Paul J. Laurienti

Source: Statist. Surv., Volume 7, 1--36.

Abstract:
Complex functional brain network analyses have exploded over the last decade, gaining traction due to their profound clinical implications. The application of network science (an interdisciplinary offshoot of graph theory) has facilitated these analyses and enabled examining the brain as an integrated system that produces complex behaviors. While the field of statistics has been integral in advancing activation analyses and some connectivity analyses in functional neuroimaging research, it has yet to play a commensurate role in complex network analyses. Fusing novel statistical methods with network-based functional neuroimage analysis will engender powerful analytical tools that will aid in our understanding of normal brain function as well as alterations due to various brain disorders. Here we survey widely used statistical and network science tools for analyzing fMRI network data and discuss the challenges faced in filling some of the remaining methodological gaps. When applied and interpreted correctly, the fusion of network scientific and statistical methods has a chance to revolutionize the understanding of brain function.




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Risk-Aware Energy Scheduling for Edge Computing with Microgrid: A Multi-Agent Deep Reinforcement Learning Approach. (arXiv:2003.02157v2 [physics.soc-ph] UPDATED)

In recent years, multi-access edge computing (MEC) is a key enabler for handling the massive expansion of Internet of Things (IoT) applications and services. However, energy consumption of a MEC network depends on volatile tasks that induces risk for energy demand estimations. As an energy supplier, a microgrid can facilitate seamless energy supply. However, the risk associated with energy supply is also increased due to unpredictable energy generation from renewable and non-renewable sources. Especially, the risk of energy shortfall is involved with uncertainties in both energy consumption and generation. In this paper, we study a risk-aware energy scheduling problem for a microgrid-powered MEC network. First, we formulate an optimization problem considering the conditional value-at-risk (CVaR) measurement for both energy consumption and generation, where the objective is to minimize the loss of energy shortfall of the MEC networks and we show this problem is an NP-hard problem. Second, we analyze our formulated problem using a multi-agent stochastic game that ensures the joint policy Nash equilibrium, and show the convergence of the proposed model. Third, we derive the solution by applying a multi-agent deep reinforcement learning (MADRL)-based asynchronous advantage actor-critic (A3C) algorithm with shared neural networks. This method mitigates the curse of dimensionality of the state space and chooses the best policy among the agents for the proposed problem. Finally, the experimental results establish a significant performance gain by considering CVaR for high accuracy energy scheduling of the proposed model than both the single and random agent models.




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Mnemonics Training: Multi-Class Incremental Learning without Forgetting. (arXiv:2002.10211v3 [cs.CV] UPDATED)

Multi-Class Incremental Learning (MCIL) aims to learn new concepts by incrementally updating a model trained on previous concepts. However, there is an inherent trade-off to effectively learning new concepts without catastrophic forgetting of previous ones. To alleviate this issue, it has been proposed to keep around a few examples of the previous concepts but the effectiveness of this approach heavily depends on the representativeness of these examples. This paper proposes a novel and automatic framework we call mnemonics, where we parameterize exemplars and make them optimizable in an end-to-end manner. We train the framework through bilevel optimizations, i.e., model-level and exemplar-level. We conduct extensive experiments on three MCIL benchmarks, CIFAR-100, ImageNet-Subset and ImageNet, and show that using mnemonics exemplars can surpass the state-of-the-art by a large margin. Interestingly and quite intriguingly, the mnemonics exemplars tend to be on the boundaries between different classes.




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On the impact of selected modern deep-learning techniques to the performance and celerity of classification models in an experimental high-energy physics use case. (arXiv:2002.01427v3 [physics.data-an] UPDATED)

Beginning from a basic neural-network architecture, we test the potential benefits offered by a range of advanced techniques for machine learning, in particular deep learning, in the context of a typical classification problem encountered in the domain of high-energy physics, using a well-studied dataset: the 2014 Higgs ML Kaggle dataset. The advantages are evaluated in terms of both performance metrics and the time required to train and apply the resulting models. Techniques examined include domain-specific data-augmentation, learning rate and momentum scheduling, (advanced) ensembling in both model-space and weight-space, and alternative architectures and connection methods.

Following the investigation, we arrive at a model which achieves equal performance to the winning solution of the original Kaggle challenge, whilst being significantly quicker to train and apply, and being suitable for use with both GPU and CPU hardware setups. These reductions in timing and hardware requirements potentially allow the use of more powerful algorithms in HEP analyses, where models must be retrained frequently, sometimes at short notice, by small groups of researchers with limited hardware resources. Additionally, a new wrapper library for PyTorch called LUMINis presented, which incorporates all of the techniques studied.




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$V$-statistics and Variance Estimation. (arXiv:1912.01089v2 [stat.ML] UPDATED)

This paper develops a general framework for analyzing asymptotics of $V$-statistics. Previous literature on limiting distribution mainly focuses on the cases when $n o infty$ with fixed kernel size $k$. Under some regularity conditions, we demonstrate asymptotic normality when $k$ grows with $n$ by utilizing existing results for $U$-statistics. The key in our approach lies in a mathematical reduction to $U$-statistics by designing an equivalent kernel for $V$-statistics. We also provide a unified treatment on variance estimation for both $U$- and $V$-statistics by observing connections to existing methods and proposing an empirically more accurate estimator. Ensemble methods such as random forests, where multiple base learners are trained and aggregated for prediction purposes, serve as a running example throughout the paper because they are a natural and flexible application of $V$-statistics.




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Physics-informed neural network for ultrasound nondestructive quantification of surface breaking cracks. (arXiv:2005.03596v1 [cs.LG])

We introduce an optimized physics-informed neural network (PINN) trained to solve the problem of identifying and characterizing a surface breaking crack in a metal plate. PINNs are neural networks that can combine data and physics in the learning process by adding the residuals of a system of Partial Differential Equations to the loss function. Our PINN is supervised with realistic ultrasonic surface acoustic wave data acquired at a frequency of 5 MHz. The ultrasonic surface wave data is represented as a surface deformation on the top surface of a metal plate, measured by using the method of laser vibrometry. The PINN is physically informed by the acoustic wave equation and its convergence is sped up using adaptive activation functions. The adaptive activation function uses a scalable hyperparameter in the activation function, which is optimized to achieve best performance of the network as it changes dynamically the topology of the loss function involved in the optimization process. The usage of adaptive activation function significantly improves the convergence, notably observed in the current study. We use PINNs to estimate the speed of sound of the metal plate, which we do with an error of 1\%, and then, by allowing the speed of sound to be space dependent, we identify and characterize the crack as the positions where the speed of sound has decreased. Our study also shows the effect of sub-sampling of the data on the sensitivity of sound speed estimates. More broadly, the resulting model shows a promising deep neural network model for ill-posed inverse problems.




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A stochastic user-operator assignment game for microtransit service evaluation: A case study of Kussbus in Luxembourg. (arXiv:2005.03465v1 [physics.soc-ph])

This paper proposes a stochastic variant of the stable matching model from Rasulkhani and Chow [1] which allows microtransit operators to evaluate their operation policy and resource allocations. The proposed model takes into account the stochastic nature of users' travel utility perception, resulting in a probabilistic stable operation cost allocation outcome to design ticket price and ridership forecasting. We applied the model for the operation policy evaluation of a microtransit service in Luxembourg and its border area. The methodology for the model parameters estimation and calibration is developed. The results provide useful insights for the operator and the government to improve the ridership of the service.




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Theranostics approaches to gastric and colon cancer

9789811520174 (electronic bk.)




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Staying out of trouble in pediatric orthopaedics

Skaggs, David L., author.
9781975103958 (hardback)




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Radiomics and radiogenomics in neuro-oncology : First International Workshop, RNO-AI 2019, held in conjunction with MICCAI 2019, Shenzhen, China, October 13, proceedings

Radiomics and Radiogenomics in Neuro-oncology using AI Workshop (1st : 2019 : Shenzhen Shi, China)
9783030401245




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Population genomics : marine organisms

3030379361 electronic book




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Ocular therapeutics handbook : a clinical manual

Onofrey, Bruce E., author.
197510904X




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Nanobiomaterial engineering : concepts and their applications in biomedicine and diagnostics

9789813298408 (electronic bk.)




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Models of tree and stand dynamics : theory, formulation and application

Mäkelä, Annikki, author
9783030357610




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Methylotrophs : microbiology, biochemistry and genetics

9781351074513 (electronic bk.)




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Lovell and Winter's pediatric orthopaedics

9781975108663 (hardcover)