77 research outputs found
Competition and Post-Transplant Outcomes in Cadaveric Liver Transplantation under the MELD Scoring System
Previous researchers have modelled the decision to accept a donor organ for transplantation as a Markov decision problem, the solution to which is often a control-limit optimal policy: accept any organ whose match quality exceeds some health-dependent threshold; otherwise, wait for another. When competing transplant centers vie for the same organs, the decision rule changes relative to no competition; the relative size of competing centers affects the decision rules as well. Using center-specific graft and patient survival-rate data for cadaveric adult livers in the United States, we have found empirical evidence supporting these predictions.liver transplantation, competition, optimal stopping
Competition and Post-Transplant Outcomes in Cadaveric Liver Transplantation under the MELD Scoring System
Previous researchers have modelled the decision to accept a donor organ for transplantation as a Markov decision problem, the solution to which is often a control-limit optimal policy: accept any organ whose match quality exceeds some health-dependent threshold; otherwise, wait for another. When competing transplant centers vie for the same organs, the decision rule changes relative to no competition; the relative size of competing centers affects the decision rules as well. Using center-specific graft and patient survival-rate data for cadaveric adult livers in the United States, we have found empirical evidence supporting these predictions.liver transplantation; competition; optimal stopping
MLIP: using multiple processors to compute the posterior probability of linkage
<p>Abstract</p> <p>Background</p> <p>Localization of complex traits by genetic linkage analysis may involve exploration of a vast multidimensional parameter space. The posterior probability of linkage (PPL), a class of statistics for complex trait genetic mapping in humans, is designed to model the trait model complexity represented by the multidimensional parameter space in a mathematically rigorous fashion. However, the method requires the evaluation of integrals with no functional form, making it difficult to compute, and thus further test, develop and apply. This paper describes MLIP, a multiprocessor two-point genetic linkage analysis system that supports statistical calculations, such as the PPL, based on the full parameter space implicit in the linkage likelihood.</p> <p>Results</p> <p>The fundamental question we address here is whether the use of additional processors effectively reduces total computation time for a PPL calculation. We use a variety of data – both simulated and real – to explore the question "how close can we get?" to linear speedup. Empirical results of our study show that MLIP does significantly speed up two-point log-likelihood ratio calculations over a grid space of model parameters.</p> <p>Conclusion</p> <p>Observed performance of the program is dependent on characteristics of the data including granularity of the parameter grid space being explored and pedigree size and structure. While work continues to further optimize performance, the current version of the program can already be used to efficiently compute the PPL. Thanks to MLIP, full multidimensional genome scans are now routinely being completed at our centers with runtimes on the order of days, not months or years.</p
The Use of Twitter to Track Levels of Disease Activity and Public Concern in the U.S. during the Influenza A H1N1 Pandemic
Twitter is a free social networking and micro-blogging service that enables its
millions of users to send and read each other's “tweets,” or
short, 140-character messages. The service has more than 190 million registered
users and processes about 55 million tweets per day. Useful information about
news and geopolitical events lies embedded in the Twitter stream, which
embodies, in the aggregate, Twitter users' perspectives and reactions to
current events. By virtue of sheer volume, content embedded in the Twitter
stream may be useful for tracking or even forecasting behavior if it can be
extracted in an efficient manner. In this study, we examine the use of
information embedded in the Twitter stream to (1) track rapidly-evolving public
sentiment with respect to H1N1 or swine flu, and (2) track and measure actual
disease activity. We also show that Twitter can be used as a measure of public
interest or concern about health-related events. Our results show that estimates
of influenza-like illness derived from Twitter chatter accurately track reported
disease levels
On the Operationality/Generality Trade-Off in Explanation-Based Learning
In this paper we examine the operationality/generality trade-off and how it affects performance of explanation-based learning systems. Experience with the ARMS learning apprentice system, presented in the form of an empirical performance analysis, illustrates both sides of the trade-off
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