3,063 research outputs found
Game-Theoretic, Interposable Communication
Recent advances in distributed epistemologies and ubiquitous configurations have paved the way for superpages. Here, we show the explo- ration of thin clients. Here we disprove not only that superpages can be made “fuzzy”, “fuzzy”, and knowledge-based, but that the same is true for the UNIVAC computer
A review of IATTC research on the early life history and reproductive biology of scombrids conducted at the Achotines Laboratory from 1985 to 2005
English:
For nearly a century, fisheries scientists have studied marine fish stocks in an effort to understand how the
abundances of fish populations are determined. During the early lives of marine fishes, survival is
variable, and the numbers of individuals surviving to transitional stages or recruitment are difficult to
predict.
The egg, larval, and juvenile stages of marine fishes are characterized by high rates of mortality and
growth. Most marine fishes, particularly pelagic species, are highly fecund, produce small eggs and
larvae, and feed and grow in complex aquatic ecosystems. The identification of environmental or
biological factors that are most important in controlling survival during the early life stages of marine
fishes is a potentially powerful tool in stock assessment.
Because vital rates (mortality and growth) during the early life stages of marine fishes are high and
variable, small changes in those rates can have profound effects on the properties of survivors and
recruitment potential (Houde 1989). Understanding and predicting the factors that most strongly
influence pre-recruit survival are key goals of fisheries research programs.
Spanish:
Desde hace casi un siglo, los científicos pesqueros han estudiado las poblaciones de peces marinos en un
intento por entender cómo se determina la abundancia de las mismas. Durante la vida temprana de los
peces marinos, la supervivencia es variable, y el número de individuos que sobrevive hasta las etapas
transicionales o el reclutamiento es difícil de predecir.
Las etapas de huevo, larval, y juvenil de los peces marinos son caracterizadas por tasas altas de
mortalidad y crecimiento. La mayoría de los peces marinos, particularmente las especies pelágicas, son
muy fecundos, producen huevos y larvas pequeños, y se alimentan y crecen en ecosistemas acuáticos complejos. La identificación los factores ambientales o biológicos más importantes en el control de la
supervivencia durante las etapas tempranas de vida de los peces marinos es una herramienta
potencialmente potente en la evaluación de las poblaciones.
Ya que las tasas vitales (mortalidad y crecimiento) durante las etapas tempranas de vida de los peces
marinos son altas y variables, cambios pequeños en esas tasas pueden ejercer efectos importantes sobre
las propiedades de los supervivientes y el potencial de reclutamiento (Houde 1989). Comprender y
predecir los factores que más afectan la supervivencia antes del reclutamiento son objetivos clave de los
programas de investigación pesquera
Spawning and early development of captive yellowfin tuna (Thunnus albacares)
In this study we describe the courtship and spawning behaviors of captive yellowfin tuna (Thunnus albacares), their spawning periodicity, the influence of physical and biological factors on spawning and hatching, and egg and early-larval development of this species at the Achotines Laboratory, Republic of Panama, during October 1996 through March 2000. Spawning occurred almost daily over extended periods and at water temperatures from 23.3° to 29.7°C. Water temperature appeared to be the main exogenous factor controlling the occurrence and timing of spawning. Courtship and spawning behaviors were ritualized and consistent among three groups of broodstock over 3.5 years. For any date, the time of day of spawning (range: 1330 to 2130 h) was predictable from mean daily water temperature, and 95% of hatching occurred the next day between 1500 and 1900 h. We estimated that females at first spawning averaged 1.6−2.0 years of age. Over short time periods (<1 month), spawning females increased their egg production from 30% to 234% in response to shortterm increases in daily food ration of 9% to 33%. Egg diameter, notochord length (NL) at hatching, NL at first feeding, and dry weights of these stages were estimated. Water temperature was significantly, inversely related to egg size, egg-stage duration, larval size at hatching, and yolksac larval duration
Controlled release delivery of penciclovir via a silicone (MED-4750) polymer: kinetics of drug delivery and efficacy in preventing primary feline herpesvirus infection in culture
Peripheral T-cell lymphoma (PTCL) represents a relatively rare group of heterogeneous non-Hodgkin lymphomas, with generally poor prognosis. Historically, there has been a lack of consensus regarding appropriate therapeutic measures for the disease, with conventional frontline chemotherapies being utilized in most cases. Following promising results obtained in 2009, the methotrexate analogue, pralatrexate, became the first drug to gain US FDA approval for the treatment of refractory PTCL. This antimetabolite was designed to have a higher affinity for reduced folate carrier (RFC) and folylpolyglutamate synthetase (FPGS). RFC is the principal transporter for cell entrance of folates and antifolates. Once inside the cell, pralatrexate is efficiently polyglutamated by FPGS. Pralatrexate has demonstrated varying degrees of efficacy in peripheral T-cell lymphoma, with response rates differing between the multiple subtypes of the disease. While phase III studies are still to be completed, early clinical trials indicate that pralatrexate is promising new therapeutic for PTCL
Stereoscopic three-dimensional visualization applied to multimodal brain images: Clinical applications and a functional connectivity atlas
Effective visualization is central to the exploration and comprehension of brain imaging data. While MRI data are acquired in three-dimensional space, the methods for visualizing such data have rarely taken advantage of three-dimensional stereoscopic technologies. We present here results of stereoscopic visualization of clinical data, as well as an atlas of whole-brain functional connectivity. In comparison with traditional 3D rendering techniques, we demonstrate the utility of stereoscopic visualizations to provide an intuitive description of the exact location and the relative sizes of various brain landmarks, structures and lesions. In the case of resting state fMRI, stereoscopic 3D visualization facilitated comprehension of the anatomical position of complex large-scale functional connectivity patterns. Overall, stereoscopic visualization improves the intuitive visual comprehension of image contents, and brings increased dimensionality to visualization of traditional MRI data, as well as patterns of functional connectivity
miRNA detection methods and clinical implications in lung cancer
[EN] Lung cancer is the leading cause of cancer death worldwide. Therefore, advances in the diagnosis and treatment of the disease are urgently needed. miRNAs are a family of small, noncoding RNAs that regulate gene expression at the transcriptional level. miRNAs have been reported to be deregulated and to play a critical role in different types of cancer, including lung cancer. Thus, miRNA profiling in lung cancer patients has become the core of several investigations. To this end, the development of a multitude of platforms for miRNA profiling analysis has been essential. This article focuses on the different technologies available for assessing miRNAs and the most important results obtained to date in lung cancer.This study was partially supported by a grant from the Ministerio de Ciencia e Inovacion de Espana (TRA09-0132), Beca Roche en Onco-Hematologia 2009 and Red Tematica de Investigacion Cooperativa en Cancer (RD12/0036/0025). The authors have no other relevant affiliations or financial involvement with any organization or entity with a financial interest in or financial conflict with the subject matter or materials discussed in the manuscript apart from those disclosed.Usó, M.; Jantus Lewintre, E.; Sirera Pérez, R.; Bremnes, RM.; Camps, C. (2014). miRNA detection methods and clinical implications in lung cancer. Future Oncology. 10(14):2279-2292. https://doi.org/10.2217/FON.14.93S227922921014Jemal, A., Bray, F., Center, M. M., Ferlay, J., Ward, E., & Forman, D. (2011). Global cancer statistics. CA: A Cancer Journal for Clinicians, 61(2), 69-90. doi:10.3322/caac.20107Herbst, R. S., Heymach, J. V., & Lippman, S. M. (2008). Lung Cancer. New England Journal of Medicine, 359(13), 1367-1380. doi:10.1056/nejmra0802714Ferlay, J., Parkin, D. M., & Steliarova-Foucher, E. (2010). Estimates of cancer incidence and mortality in Europe in 2008. 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