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Anterior Cingulate Cortex: Monitoring The Outcomes Of Others' Decisions
Good decision-making helps us to achieve our goals in a complicated world. Understanding which decisions are successful and which ones fail is important, and learning how other people make decisions is an important way of refining this ability. What happens in the brain when this useful information is withheld? Brain imaging researchers from Royal Holloway University of London (UK) investigated activity in the human brain at the time that volunteers interpreted the successes and failures of their own decisions, or the successes and failures of others" decisions. Crucially, when this important information was withheld, a region of the brain called the Anterior Cingulate Cortex became active in different ways depending on whether the information withheld related to decisions of the person in the scanner, or whether it related to the person that they were monitoring during the experiment. This tells us that this area works in different ways depending on whether gaps in important information relate to ourselves, or whether they relate to others".
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The Ozone Man Treats Xaverian High School To Prevent Spread Of Contaminated Swine Flu Within Its Indoor Environments
The Ozone Man, Inc. (OTCBB: OZOM), dba TOMI Environmental Solutions, or TOMIES, announced today the completion of a deep cleaning treatment of Xaverian High School with a student body of 1400 located in Brooklyn, New York. The Ozone Man"s treatment eliminated contaminants including Swine Flu "H1N1" along with inactivating viruses. The Ozone Man"s treatment also eliminates odor, mold spores and kills bacteria in the treated areas. Its proprietary Ultraviolet Ozone Generators produce the cleanest ozone south of the stratosphere, helping to ensure the health, safety and well being of the building and its inhabitants.
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Seasonal Flu Vaccine Unlikely To Protect Against New H1N1 Says CDC
According to the US Centers for Disease Control and Prevention (CDC), vaccination with seasonal flu vaccines made for the 2005 to 2009
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Optimizing Molecular Signatures For Predicting Prostate Cancer Recurrence

UroToday.com - The mortality rate for prostate cancer is declining due to improvements in earlier detection and in local therapy strategies, however, the ability to predict the metastatic behavior of a patient"s cancer, as well as to detect and eradicate disease recurrence remains some of the greatest clinical challenges in oncology. It is estimated that 25-40% of men undergoing radical prostatectomy will have disease relapse, often termed a biochemical recurrence as the first clinical indication a rising serum level of prostate specific antigen (PSA). The accurate identification of patients at risk for relapse would greatly facilitate the rational application of adjuvant treatment strategies. The advent of microarray gene expression technology has greatly enabled the search for predictive disease biomarkers. Numerous exploratory studies have demonstrated the potential value of gene expression signatures in assessing the risk of post-surgical disease recurrence beyond the current clinical systems. However, existing molecular predictive models were derived using relatively simple computational algorithms, and the critical issue of whether proposed gene signatures are ready for randomized, prospective clinical validation trials is still under debate in the oncology community. Key to resolving this issue is the development of advanced algorithms that are capable of identifying relevant genes (features in bioinformatic terms) in a background of tens of thousands of genes, and on the basis of a limited number of patient tissue samples. This process is known as feature selection, and achieving this in high-dimensional data remains a major challenge in bioinformatics and machine learning. In order to overcome current restraints, we have derived a feature selection algorithm that addresses several major issues with prior work including computational efficiency and solution accuracy. We have experimentally demonstrated that our algorithm is capable of handling problems with extremely large input data dimensionality, to a point far beyond that needed for gene expression data analysis of genetically complex organisms. In the study published in The Prostate journal, we conducted a computational analysis to investigate whether the application of our computational algorithm can lead to the derivation of more accurate prognostic molecular signatures for predicting prostate cancer recurrence. To this end, we used a rigorous experimental protocol to compare the prognostic performance of newly identified genetic signatures with those previously derived. Receiver operator characteristic (ROC) curves and survival data analyses demonstrate the superior performance of the new gene signature over previous work. We further derived a hybrid prognostic signature, obtained by integrating gene expression data and clinical variables, that significantly outperformed both the gene signature and the predictive nomogram. Our results demonstrate that advanced computational modeling can significantly improve the accuracy of molecular prognostic signatures for prostate cancer. Written by Steve Goodison, MD as part of Beyond the Abstract on UroToday.com UroToday - the only urology website with original content written by global urology key opinion leaders actively engaged in clinical practice. To access the latest urology news releases from UroToday, go to: www.urotoday.com Copyright © 2009 - UroToday Copyright: Medical News Today Not to be reproduced without permission of Medical News Today


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