osi

Diatribe anatomico-physiologica de structura atque vita venarum a medicorum ordine Heidelbergensi praemio proposito ornata / autore Henrico Marx.

Carlsruhae : D.R. Marx, 1819.




osi

Die Altersdisposition. Ein Beitrag zur Physiologie und Pathologie der einzelnen Altersstufen des Menschen / von Dr F. W. Beneke.

Marburg : Elwert'sche, 1879.




osi

Die Behandlung der Lungenschwindsucht im Hochgebirge : und über das Zustandekommen von Ernährungsstörungen in den Lungenspitzen, welche die Disposition zur primären tuberkulösen Erkrankung derselben darstellen / von A. Volland.

Leipzig : F.C.W. Vogel, 1889.




osi

Die Menstruation in ihren physiologischen, pathologischen und therapeutischen Beziehung / von A. Brierre de Boismont ; aus dem Franzosischen von J.C. Krafft ; mit Zusatzen versehen von A. Moser.

Berlin : T. Trautwein, 1842.




osi

Differential diagnosis of syphilitic and non-syphilitic affections of the skin, including tropical diseases : a survey for medical practioners and students / by George Pernet.

London : Adlard, 1904.




osi

Diseases of the bladder, prostate gland, and urethra : including a practical view of urinary diseases deposits and calculi / by Frederick James Gant.

London : J. & A. Churchill, 1876.




osi

Diseases of the bladder, prostate gland, and urethra : including a practical view of urinary diseases deposits and calculi / by Frederick James Gant.

London : Bailliere, Tindall and Cox, 1884.




osi

Diseases of the skin : their description, pathology, diagnosis, and treatment / by H. Radcliffe Crocker.

London : H.K. Lewis, 1903.




osi

Diseases of the veins, more especially of venosity, varicocele, haemorrhoids, and varicose veins, and their treatment by medicines / by J. Compton Burnett.

London : James Epps & Co., Limited, 1894.




osi

Diseases of women : a clinical guide to their diagnosis and treatment / by George Ernest Herman.

London : Cassell, 1898.




osi

Diseases of women : a clinical guide to their diagnosis and treatment / by George Ernest Herman.

London : Cassell, 1902.




osi

Diseases of women, including their pathology, causation, symptoms, diagnosis and treatment : a manual for students and practitioners / by Arthur W. Edis.

London : Smith, Elder, 1881.




osi

Dissertatio solemnis medica exhibens brevem systematicam morborum in gravidis expositionem ... / auctor Franc. Adolphus Jacobi.

Bonnae : Typis Joan. Frid. Abshoven, 1790.




osi

Du ptosis et de son traitement chirurgical : examen critique d'un nouveau procédé opératoire de ptosis congénital / par Jean Brun.

Paris : G. Steinheil, 1892.




osi

Dystrophie papillaire et pigmentaire ou acanthosis nigricans : ses relations avec la carcinose abdominale / par Paul Couillaud.

Paris : Georges Carre, 1896.




osi

The early stages of tuberculosis / by G.A. Gibson.

Edinburgh : Oliver and Boyd, 1884.




osi

Ectopic pregnancy : its etiology, classification, embryology, diagnosis and treatment / by J. Clarence Webster.

Edinburgh : Young J. Pentland, 1895.




osi

The Edinburgh new dispensatory : Containing I. The elements of pharmaceutical chemistry. II. The materia medica; or, The natural, pharmaceutical and medical history, of the substances employed in medicine. III. The pharmaceutical preparations and composit

Edinburgh : Bell & Bradfute, 1813.




osi

Einfache Erzahlung der Veranlassung zu seiner Reise nach Leipzig im December 1819 : und der daselbst verrichteten chirurgischen Operationen / Friedrich Benjamin Osiander.

Tubingen : C.F. Osiander, 1820.




osi

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.




osi

Employers and employed : being (1) an exposition of the law of reparation for physical injury; (2) the Employers' Liability Act, 1880, annotated ... and (3) suggested amendment of the law as to the liability of employers. With appendices and indices /

Glasgow : J. Maclehose, 1887.




osi

Epidemic ophthalmia, its symptoms, diagnosis, and management : with papers upon allied subjects / by Sydney Stephenson.

Edinburgh : Young J. Pentland, 1895.




osi

Esperienze e riflessioni sopra la carie de'denti umani, coll'aggiunta di un nuovo saggio su la riproduzione dei denti negli animali rosicanti / di Francesco Lavagna.

Genova : G. Bonaudo, 1812.




osi

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.




osi

Despite Fierce Teacher Opposition, West Virginia House Votes to Allow Charter Schools

The West Virginia House of Delegates passed its version of a sweeping education omnibus bill, which would allow the state's first charter schools.




osi

A fight between two men is interrupted by a woman representing mercy, pleading on behalf of the losing party. Engraving by G.T. Doo, 1848, after W. Etty.

London (5 Haymarket) : Published ... by J. Hogarth, June 1 1849.




osi

Michigan State Superintendent Takes Sick Leave After Cancer Diagnosis

Brian Whiston since 2015 has led the state's education department while it put together its plan under the Every Student Succeeds Act and took control of the state's school takeover district.




osi

The Latest: 3 players on Brazilian soccer team test positive

British Columbia Premier John Horgan has offered the NHL a place to play if the league can find a way to resume the season. Speaking at a COVID-19 media briefing Wednesday, Horgan said he has written a letter to both NHL Commissioner Gary Bettman and NHL Players’ Association head Donald Fehr to let them know B.C. is “a place to potentially restart the NHL assuming the games would be played without audiences, but instead played for television.” The NHL suspended its season March 12 with 189 regular-season games left.




osi

Anything you can do I can do / by Stacey A. Bedwell ; illustrated by Rosie Glasse.

[United Kingdom] : Dame Vera Lynn Children's Charity, 2018.




osi

the little book of work affirmations - a mini zine of positive affirmations to help you survive capitalism

2019




osi

Anti-tuberculosis measures in England / F. J. H. Coutts.

England : Society of Medical Officers of Health, [192-?]




osi

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.




osi

Perspective maximum likelihood-type estimation via proximal decomposition

Patrick L. Combettes, Christian L. Müller.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 207--238.

Abstract:
We introduce a flexible optimization model for maximum likelihood-type estimation (M-estimation) that encompasses and generalizes a large class of existing statistical models, including Huber’s concomitant M-estimator, Owen’s Huber/Berhu concomitant estimator, the scaled lasso, support vector machine regression, and penalized estimation with structured sparsity. The model, termed perspective M-estimation, leverages the observation that convex M-estimators with concomitant scale as well as various regularizers are instances of perspective functions, a construction that extends a convex function to a jointly convex one in terms of an additional scale variable. These nonsmooth functions are shown to be amenable to proximal analysis, which leads to principled and provably convergent optimization algorithms via proximal splitting. We derive novel proximity operators for several perspective functions of interest via a geometrical approach based on duality. We then devise a new proximal splitting algorithm to solve the proposed M-estimation problem and establish the convergence of both the scale and regression iterates it produces to a solution. Numerical experiments on synthetic and real-world data illustrate the broad applicability of the proposed framework.




osi

Detection of sparse positive dependence

Ery Arias-Castro, Rong Huang, Nicolas Verzelen.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 702--730.

Abstract:
In a bivariate setting, we consider the problem of detecting a sparse contamination or mixture component, where the effect manifests itself as a positive dependence between the variables, which are otherwise independent in the main component. We first look at this problem in the context of a normal mixture model. In essence, the situation reduces to a univariate setting where the effect is a decrease in variance. In particular, a higher criticism test based on the pairwise differences is shown to achieve the detection boundary defined by the (oracle) likelihood ratio test. We then turn to a Gaussian copula model where the marginal distributions are unknown. Standard invariance considerations lead us to consider rank tests. In fact, a higher criticism test based on the pairwise rank differences achieves the detection boundary in the normal mixture model, although not in the very sparse regime. We do not know of any rank test that has any power in that regime.




osi

Tensor Train Decomposition on TensorFlow (T3F)

Tensor Train decomposition is used across many branches of machine learning. We present T3F—a library for Tensor Train decomposition based on TensorFlow. T3F supports GPU execution, batch processing, automatic differentiation, and versatile functionality for the Riemannian optimization framework, which takes into account the underlying manifold structure to construct efficient optimization methods. The library makes it easier to implement machine learning papers that rely on the Tensor Train decomposition. T3F includes documentation, examples and 94% test coverage.




osi

Latent Simplex Position Model: High Dimensional Multi-view Clustering with Uncertainty Quantification

High dimensional data often contain multiple facets, and several clustering patterns can co-exist under different variable subspaces, also known as the views. While multi-view clustering algorithms were proposed, the uncertainty quantification remains difficult --- a particular challenge is in the high complexity of estimating the cluster assignment probability under each view, and sharing information among views. In this article, we propose an approximate Bayes approach --- treating the similarity matrices generated over the views as rough first-stage estimates for the co-assignment probabilities; in its Kullback-Leibler neighborhood, we obtain a refined low-rank matrix, formed by the pairwise product of simplex coordinates. Interestingly, each simplex coordinate directly encodes the cluster assignment uncertainty. For multi-view clustering, we let each view draw a parameterization from a few candidates, leading to dimension reduction. With high model flexibility, the estimation can be efficiently carried out as a continuous optimization problem, hence enjoys gradient-based computation. The theory establishes the connection of this model to a random partition distribution under multiple views. Compared to single-view clustering approaches, substantially more interpretable results are obtained when clustering brains from a human traumatic brain injury study, using high-dimensional gene expression data.




osi

Capturing and Explaining Trajectory Singularities using Composite Signal Neural Networks. (arXiv:2003.10810v2 [cs.LG] UPDATED)

Spatial trajectories are ubiquitous and complex signals. Their analysis is crucial in many research fields, from urban planning to neuroscience. Several approaches have been proposed to cluster trajectories. They rely on hand-crafted features, which struggle to capture the spatio-temporal complexity of the signal, or on Artificial Neural Networks (ANNs) which can be more efficient but less interpretable. In this paper we present a novel ANN architecture designed to capture the spatio-temporal patterns characteristic of a set of trajectories, while taking into account the demographics of the navigators. Hence, our model extracts markers linked to both behaviour and demographics. We propose a composite signal analyser (CompSNN) combining three simple ANN modules. Each of these modules uses different signal representations of the trajectory while remaining interpretable. Our CompSNN performs significantly better than its modules taken in isolation and allows to visualise which parts of the signal were most useful to discriminate the trajectories.




osi

Deep Learning on Point Clouds for False Positive Reduction at Nodule Detection in Chest CT Scans. (arXiv:2005.03654v1 [eess.IV])

The paper focuses on a novel approach for false-positive reduction (FPR) of nodule candidates in Computer-aided detection (CADe) system after suspicious lesions proposing stage. Unlike common decisions in medical image analysis, the proposed approach considers input data not as 2d or 3d image, but as a point cloud and uses deep learning models for point clouds. We found out that models for point clouds require less memory and are faster on both training and inference than traditional CNN 3D, achieves better performance and does not impose restrictions on the size of the input image, thereby the size of the nodule candidate. We propose an algorithm for transforming 3d CT scan data to point cloud. In some cases, the volume of the nodule candidate can be much smaller than the surrounding context, for example, in the case of subpleural localization of the nodule. Therefore, we developed an algorithm for sampling points from a point cloud constructed from a 3D image of the candidate region. The algorithm guarantees to capture both context and candidate information as part of the point cloud of the nodule candidate. An experiment with creating a dataset from an open LIDC-IDRI database for a feature of the FPR task was accurately designed, set up and described in detail. The data augmentation technique was applied to avoid overfitting and as an upsampling method. Experiments are conducted with PointNet, PointNet++ and DGCNN. We show that the proposed approach outperforms baseline CNN 3D models and demonstrates 85.98 FROC versus 77.26 FROC for baseline models.




osi

Collective Loss Function for Positive and Unlabeled Learning. (arXiv:2005.03228v1 [cs.LG])

People learn to discriminate between classes without explicit exposure to negative examples. On the contrary, traditional machine learning algorithms often rely on negative examples, otherwise the model would be prone to collapse and always-true predictions. Therefore, it is crucial to design the learning objective which leads the model to converge and to perform predictions unbiasedly without explicit negative signals. In this paper, we propose a Collectively loss function to learn from only Positive and Unlabeled data (cPU). We theoretically elicit the loss function from the setting of PU learning. We perform intensive experiments on the benchmark and real-world datasets. The results show that cPU consistently outperforms the current state-of-the-art PU learning methods.




osi

Efficient Characterization of Dynamic Response Variation Using Multi-Fidelity Data Fusion through Composite Neural Network. (arXiv:2005.03213v1 [stat.ML])

Uncertainties in a structure is inevitable, which generally lead to variation in dynamic response predictions. For a complex structure, brute force Monte Carlo simulation for response variation analysis is infeasible since one single run may already be computationally costly. Data driven meta-modeling approaches have thus been explored to facilitate efficient emulation and statistical inference. The performance of a meta-model hinges upon both the quality and quantity of training dataset. In actual practice, however, high-fidelity data acquired from high-dimensional finite element simulation or experiment are generally scarce, which poses significant challenge to meta-model establishment. In this research, we take advantage of the multi-level response prediction opportunity in structural dynamic analysis, i.e., acquiring rapidly a large amount of low-fidelity data from reduced-order modeling, and acquiring accurately a small amount of high-fidelity data from full-scale finite element analysis. Specifically, we formulate a composite neural network fusion approach that can fully utilize the multi-level, heterogeneous datasets obtained. It implicitly identifies the correlation of the low- and high-fidelity datasets, which yields improved accuracy when compared with the state-of-the-art. Comprehensive investigations using frequency response variation characterization as case example are carried out to demonstrate the performance.




osi

Water hyacinth : a potential lignocellulosic biomass for bioethanol

Sharma, Anuja, author
9783030356323 (electronic bk.)




osi

Plant microbe symbiosis

9783030362485 (electronic bk.)




osi

Insect metamorphosis : from natural history to regulation of development and evolution

Bellés, X., author
9780128130216




osi

Genetic and metabolic engineering for improved biofuel production from lignocellulosic biomass

9780128179543 (electronic bk.)




osi

Early onset scoliosis : a clinical casebook

9783319715803 (electronic bk.)




osi

Crafting qualitative research : beyond positivist traditions

Prasad, Pushkala, author.
9781315715070 (e-book)




osi

Corrosion atlas case studies

9780128187616 electronic publication




osi

Atlas of ulcers in systemic sclerosis : diagnosis and management

9783319984773 (electronic bk.)




osi

Atlas of sexually transmitted diseases : clinical aspects and differential diagnosis

9783319574707 (electronic bk.)




osi

Anomalies of the Developing Dentition : a Clinical Guide to Diagnosis and Management

Soxman, Jane A., author.
9783030031640 (electronic bk.)