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Des maladies mentales et nerveuses : pathologie, médecine légale, administration de asiles d’aliénés, etc. / par E. Billod.

Paris : G. Masson, 1882.




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Des vésanies, ou maladies mentales / par J.-R. Jacquelin-Dubuisson.

Paris : chez l'auteur, 1816.




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Diseases of the nervous system : being a treatise on spasmodic, paralytic, neuralgic and mental affections : for the use of students and practitioners of medicine / by Charles Porter Hart.

London : Boericke & Tafel, 1881.




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Electrical-psychology, or, The electrical philosophy of mental impressions, including a new philosophy of sleep and of consciousness / from the works of J.B. Dods and J.S. Grimes ; revised and edited by H.G. Darling.

London : John J. Griffin, 1851.




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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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Essai clinique et expérimental sur la fièvre des tuberculeux (toxicité des crachats, toxicité des urines) / par Le Docteur Edouard Chretien.

Paris : Steinheil, 1896.




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Essai sur le typhus, ou sur les fièvres dites malignes, putrides, bilieuses, muqueuses, jaune, la peste. Exposition analytique et expérimentale de la nature des fièvres en général ... / par J.F. Hernandez.

Paris : chez Mequignon-Marvis, 1816.




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Florida Mandates Mental Health Training for Students in Grades 6-12

After of a mandate approved by the State Board of Education, public schools in Florida will have to provide students at least five hours of mental health instruction starting in sixth grade.




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Critical and creative approaches to mental health practice




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Discover Asylum the radical mental health magazine




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10 Alternative mental health resources




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The radical mental health magazine.




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Evaluating drug information programs / Panel on the Impact of Information on Drug Use and Misuse, National Research Council ; prepared for National Institute of Mental Health.

Springfield, Virginia : National Technical Information Service, 1973.




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The nature and treatment of nonopiate abuse : a review of the literature. Volume 2 / Wynne Associates for Division of Research, National Institute on Drug Abuse, Alcohol, Drug Abuse and Mental Health Administration, Department of Health, Education and Wel

Washington, D.C. : Wynne Associates, 1974.




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Evaluation of treatment programs for abusers of nonopiate drugs : problems and approaches. Volume 3 / Wynne Associates for Division of Research, National Institute on Drug Abuse, Alcohol, Drug Abuse and Mental Health Administration, Department of Health,

Washington, D.C. : Wynne Associates, [1974]




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Fundamentals of cone regression

Mariella Dimiccoli.

Source: Statistics Surveys, Volume 10, 53--99.

Abstract:
Cone regression is a particular case of quadratic programming that minimizes a weighted sum of squared residuals under a set of linear inequality constraints. Several important statistical problems such as isotonic, concave regression or ANOVA under partial orderings, just to name a few, can be considered as particular instances of the cone regression problem. Given its relevance in Statistics, this paper aims to address the fundamentals of cone regression from a theoretical and practical point of view. Several formulations of the cone regression problem are considered and, focusing on the particular case of concave regression as an example, several algorithms are analyzed and compared both qualitatively and quantitatively through numerical simulations. Several improvements to enhance numerical stability and bound the computational cost are proposed. For each analyzed algorithm, the pseudo-code and its corresponding code in Matlab are provided. The results from this study demonstrate that the choice of the optimization approach strongly impacts the numerical performances. It is also shown that methods are not currently available to solve efficiently cone regression problems with large dimension (more than many thousands of points). We suggest further research to fill this gap by exploiting and adapting classical multi-scale strategy to compute an approximate solution.




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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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An Empirical Study of Incremental Learning in Neural Network with Noisy Training Set. (arXiv:2005.03266v1 [cs.LG])

The notion of incremental learning is to train an ANN algorithm in stages, as and when newer training data arrives. Incremental learning is becoming widespread in recent times with the advent of deep learning. Noise in the training data reduces the accuracy of the algorithm. In this paper, we make an empirical study of the effect of noise in the training phase. We numerically show that the accuracy of the algorithm is dependent more on the location of the error than the percentage of error. Using Perceptron, Feed Forward Neural Network and Radial Basis Function Neural Network, we show that for the same percentage of error, the accuracy of the algorithm significantly varies with the location of error. Furthermore, our results show that the dependence of the accuracy with the location of error is independent of the algorithm. However, the slope of the degradation curve decreases with more sophisticated algorithms




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On the Optimality of Randomization in Experimental Design: How to Randomize for Minimax Variance and Design-Based Inference. (arXiv:2005.03151v1 [stat.ME])

I study the minimax-optimal design for a two-arm controlled experiment where conditional mean outcomes may vary in a given set. When this set is permutation symmetric, the optimal design is complete randomization, and using a single partition (i.e., the design that only randomizes the treatment labels for each side of the partition) has minimax risk larger by a factor of $n-1$. More generally, the optimal design is shown to be the mixed-strategy optimal design (MSOD) of Kallus (2018). Notably, even when the set of conditional mean outcomes has structure (i.e., is not permutation symmetric), being minimax-optimal for variance still requires randomization beyond a single partition. Nonetheless, since this targets precision, it may still not ensure sufficient uniformity in randomization to enable randomization (i.e., design-based) inference by Fisher's exact test to appropriately detect violations of null. I therefore propose the inference-constrained MSOD, which is minimax-optimal among all designs subject to such uniformity constraints. On the way, I discuss Johansson et al. (2020) who recently compared rerandomization of Morgan and Rubin (2012) and the pure-strategy optimal design (PSOD) of Kallus (2018). I point out some errors therein and set straight that randomization is minimax-optimal and that the "no free lunch" theorem and example in Kallus (2018) are correct.




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Technology and adolescent mental health

9783319696386 (electronic bk.)




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Plastic waste and recycling : environmental impact, societal issues, prevention, and solutions

9780128178812 (electronic bk.)




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Plant microRNAs : shaping development and environmental responses

9783030357726 (electronic bk.)




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Nanomaterials and environmental biotechnology

9783030345440 (electronic bk.)




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Mental Conditioning to Perform Common Operations in General Surgery Training

9783319911649 978-3-319-91164-9




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Evolutionary developmental biology : a reference guide

9783319330389 (electronic bk.)




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Current microbiological research in Africa : selected applications for sustainable environmental management

9783030352967 (electronic bk.)




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Aquatic biopolymers : understanding their industrial significance and environmental implications

Olatunji, Ololade.
9783030347093 (electronic bk.)




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Estimating the health effects of environmental mixtures using Bayesian semiparametric regression and sparsity inducing priors

Joseph Antonelli, Maitreyi Mazumdar, David Bellinger, David Christiani, Robert Wright, Brent Coull.

Source: The Annals of Applied Statistics, Volume 14, Number 1, 257--275.

Abstract:
Humans are routinely exposed to mixtures of chemical and other environmental factors, making the quantification of health effects associated with environmental mixtures a critical goal for establishing environmental policy sufficiently protective of human health. The quantification of the effects of exposure to an environmental mixture poses several statistical challenges. It is often the case that exposure to multiple pollutants interact with each other to affect an outcome. Further, the exposure-response relationship between an outcome and some exposures, such as some metals, can exhibit complex, nonlinear forms, since some exposures can be beneficial and detrimental at different ranges of exposure. To estimate the health effects of complex mixtures, we propose a flexible Bayesian approach that allows exposures to interact with each other and have nonlinear relationships with the outcome. We induce sparsity using multivariate spike and slab priors to determine which exposures are associated with the outcome and which exposures interact with each other. The proposed approach is interpretable, as we can use the posterior probabilities of inclusion into the model to identify pollutants that interact with each other. We utilize our approach to study the impact of exposure to metals on child neurodevelopment in Bangladesh and find a nonlinear, interactive relationship between arsenic and manganese.




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A general theory for preferential sampling in environmental networks

Joe Watson, James V. Zidek, Gavin Shaddick.

Source: The Annals of Applied Statistics, Volume 13, Number 4, 2662--2700.

Abstract:
This paper presents a general model framework for detecting the preferential sampling of environmental monitors recording an environmental process across space and/or time. This is achieved by considering the joint distribution of an environmental process with a site-selection process that considers where and when sites are placed to measure the process. The environmental process may be spatial, temporal or spatio-temporal in nature. By sharing random effects between the two processes, the joint model is able to establish whether site placement was stochastically dependent of the environmental process under study. Furthermore, if stochastic dependence is identified between the two processes, then inferences about the probability distribution of the spatio-temporal process will change, as will predictions made of the process across space and time. The embedding into a spatio-temporal framework also allows for the modelling of the dynamic site-selection process itself. Real-world factors affecting both the size and location of the network can be easily modelled and quantified. Depending upon the choice of the population of locations considered for selection across space and time under the site-selection process, different insights about the precise nature of preferential sampling can be obtained. The general framework developed in the paper is designed to be easily and quickly fit using the R-INLA package. We apply this framework to a case study involving particulate air pollution over the UK where a major reduction in the size of a monitoring network through time occurred. It is demonstrated that a significant response-biased reduction in the air quality monitoring network occurred, namely the relocation of monitoring sites to locations with the highest pollution levels, and the routine removal of sites at locations with the lowest. We also show that the network was consistently unrepresenting levels of particulate matter seen across much of GB throughout the operating life of the network. Finally we show that this may have led to a severe overreporting of the population-average exposure levels experienced across GB. This could have great impacts on estimates of the health effects of black smoke levels.




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Microsimulation model calibration using incremental mixture approximate Bayesian computation

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.




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Two-Sample Instrumental Variable Analyses Using Heterogeneous Samples

Qingyuan Zhao, Jingshu Wang, Wes Spiller, Jack Bowden, Dylan S. Small.

Source: Statistical Science, Volume 34, Number 2, 317--333.

Abstract:
Instrumental variable analysis is a widely used method to estimate causal effects in the presence of unmeasured confounding. When the instruments, exposure and outcome are not measured in the same sample, Angrist and Krueger ( J. Amer. Statist. Assoc. 87 (1992) 328–336) suggested to use two-sample instrumental variable (TSIV) estimators that use sample moments from an instrument-exposure sample and an instrument-outcome sample. However, this method is biased if the two samples are from heterogeneous populations so that the distributions of the instruments are different. In linear structural equation models, we derive a new class of TSIV estimators that are robust to heterogeneous samples under the key assumption that the structural relations in the two samples are the same. The widely used two-sample two-stage least squares estimator belongs to this class. It is generally not asymptotically efficient, although we find that it performs similarly to the optimal TSIV estimator in most practical situations. We then attempt to relax the linearity assumption. We find that, unlike one-sample analyses, the TSIV estimator is not robust to misspecified exposure model. Additionally, to nonparametrically identify the magnitude of the causal effect, the noise in the exposure must have the same distributions in the two samples. However, this assumption is in general untestable because the exposure is not observed in one sample. Nonetheless, we may still identify the sign of the causal effect in the absence of homogeneity of the noise.




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The Cognitive Thalamus as a Gateway to Mental Representations

Mathieu Wolff
Jan 2, 2019; 39:3-14
Viewpoints




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Deep-Sea Mining’s Environmental Toll Could Last Decades

A study of microbial communities at the site of a 1989 deep-sea mining test suggests the fragile ecosystem may take half a century to fully recover




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Monumental: In Search of America's National Treasure




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Mental Health in the Age of the Coronavirus

The struggle between fear and comfort.




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First Nations worried by suspension of oilsands environmental monitoring

The leader of a First Nation surrounded by oilsands development is frustrated by the Alberta Energy Regulator's decision to suspend a wide array of environmental reporting requirements for oilsands companies.



  • News/Canada/Edmonton

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Lecture to address mental health and the COVID-19 Pandemic

The College of Health and Human Development will host M. Daniele Fallin, Sylvia and Harold Halpert Professor in Mental Health and chair of the Department of Mental Health at the Johns Hopkins Bloomberg School of Public Health, at 4 p.m. via Zoom Webinar on Thursday, May 7, for the next presentation in its Dean’s Lecture Series: Perspectives on the Pandemic. This presentation, “Mental Health and the COVID Pandemic,” will summarize recent findings on the psychological effects of the pandemic, as well as offer some strategies for prevention and intervention as the pandemic, and its after-effects, continue.




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Understanding Gaps in Developmental Screening and Referral




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Letters: SPFL has thrown money at immediate issue without making any fundamental changes

LIKE many of your readers, I would imagine, I am a fairly enthusiastic armchair football supporter with no real club affiliation.




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A Bold Proposal for Taking Mental Health Seriously in Schools

Many schools treat students with mental-health issues reactively, rather than proactively, write Catherine A. Hogan & Laura F. Main.




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Educators Need Mindfulness. Their Mental Health May Depend On It.

The mental health of school counselors, nurses, school leaders, and teachers are at risk, and they may only need 10 minutes to help alleviate their stress.




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Student Mental Health

Services provided by teachers and school staff can significantly reduce mental health problems in elementary-age students, finds a study in the Journal of the American Academy of Child and Adolescent Psychiatry.




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Resolving Mental-Health Stigma in School

How classroom-counseling programs can help address the stigma of mental health in schools.




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Feds Show No Urgency for Mental-Health Resources




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Mental Health

Better access to mental health services could improve safety in Pennsylvania schools, according to a state task force report posted online last week.




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Now is the time to reinvent travel for our economic and environmental futures

MY after work walk on Wednesday was a zig zag, following the sun as she headed west.




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Genetic and Environmental Components of Neonatal Weight Gain in Preterm Infants

Several studies have focused on birth weight heritability, reporting results that range between 40% and 80%. Few studies have focused on the process of weight gain and were mainly based on heterogeneous samples of infants.

The present work looks at a uniform set of healthy preterm newborn twins. The resulting high heritability estimate could suggest using the inclusion criteria to identify genes that regulate postnatal weight gain or failure. (Read the full article)




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Discharged on Supplemental Oxygen From an Emergency Department in Patients With Bronchiolitis

Bronchiolitis is the most common cause for hospital admission in patients aged <1 year. Hypoxia is a common reason for admission. Despite a multitude of studies looking at various treatment strategies, no clear benefit has been found.

With oxygen therapy being the main therapeutic option, home oxygen offers a novel way to manage bronchiolitis. This study shows that home oxygen is a safe and effective way to decrease hospital admissions in a select group of patients. (Read the full article)




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Mental Health Difficulties in Children With Developmental Coordination Disorder

Cross-sectional studies have shown an increased risk of mental health difficulties in children with developmental coordination disorder. However, there has been limited longitudinal research in this area controlling for confounding factors and assessing the role of potential mediators.

Children with "probable" developmental coordination disorder at 7 years had a significantly increased risk mental health difficulties at 10 years. Protective factors for self-reported depression included high IQ, high self-esteem, good social communication skills, and the absence of bullying. (Read the full article)