Friday, October 16, 2009

Venha e Participe.

abre aspas terceira edição


Blogagem Coletiva “Abre Aspas Terceira Edição”
Um novo convite a poesia…

No dia 09 de novembro (uma segunda-feira – é claro) “abra aspas” no seu blog, escolhendo um poeta e uma poesia para deixar mais poética a blogosfera…


MAS UMA DE ELAINE E NADE

VEJA MAIS.
http://nadejane.blogspot.com/

PRMOÇÃO KRIATIVA

CONTADOR DE HISTÓRIAS
Concurso que funcionará
como uma blogagem coletiva.



::UMA NOITE DE ARREPIAR::
TEMA DE OUTUBRO:Halloween
TÍTULO:Uma noite de Arrepiar
QUANDO:31/10/2009
COMO PARTICIPAR:Deixar um comentário no mural com seu nome e endereço do blog.
SELO






VENHA CONHECER ESTES OUTROS BLOGS.


Poetas-Um Vôo Livre

Sinal de Liberdade-uma expressão de sentimento

Blog Coletivo-Uma Interação de Amigos

PARTICIPE DAS COLETIVAS. É MUITO LEGAL.

UMA INTERAÇÃO DE AMIGOS TE ESPERA. CONFIRA A OBRA DE ARTE DE Georgia O'Keefle.


HOJE FUI VIAJAR DE TREM. O PERCURSO FOI DE CURITIBA ATÉ MORRETES.

UMA VIAGEM FASCINANTE.

AMEI.

LOGO POSTAREI AS FOTOS.


TEM UM CANTINHO EM FESTA.

VENHA CONHECER: http://cantinhodeonchego.blogspot.com/


PARABÉNS AMIGA!

http://i520.photobucket.com/albums/w329/ssilva2007/Selo8000visitas.gifhttp://i520.photobucket.com/albums/w329/ssilva2007/Presente8000visitas.gif

Thursday, October 15, 2009

Minha Viagem para Curitiba.

http://2.bp.blogspot.com/_Uai_QiJ-88M/StlUKgsUJXI/AAAAAAAAESw/j3I_NQ-5Qnw/s400/DSC_0121.jpg

UMA GALERA MUITO ESPECIAL!!!! MEUS QUERIDOS PROFESSORES E COLEGAS DE TRABALHO-PARABÉNS PARA TODOS NÓS, NESTE DIA TÃO IMPORTANTE!







SHOPPING DA ESTAÇÃO



OPERA DE ARAME
MUSEU OSCAR NIEMEYER
ESTAVA EM REFORMA. NÃO PODEMOS VISITAR AS GALERIAS.

PARQUE TANGUÁ


UM LOCAL ONDE SE VENDE VINHOS E PRODUTOS COLONIAS/ARTESANAIS.
MUITO BOM E GOSTOSO OS PRODUTOS.
OLHA SÓ A FORMOSURA DO DIONISIO- DEUS DO VINHO



JARDIM BOTÂNICO



Foi uma Viagem maravilhosa. Conheci muitas coisas lindas.
Vou postar algumas fotos mais importantes.
A viagem aconteceu no dia 02 de Outubro, pela passagem do DIA DO PROFESSOR.
Um momento de Alegria e descontração entre amigos profissionais da Escola.

Nada mais justo que publicar hoje, um
momento tão especial na vida de todos Professores e profissionais da Educação.
PARABÉNS A TODOS NÓS.
PARABÉNS PELO DIA DO PROFESSOR-15 DE OUTUBRO.


PASSE NESTE BLOG E CONFIRA A MINHA COLETIVA PELO DIA DOS PROFESSORES.

Blog Coletivo-Uma Interação de Amigos

TE ESPERO AMIGO(A).



VENHA BUSCAR SUA IMAGINAÇÃO FÉRTIL.

Meus Mimos!

Wednesday, October 14, 2009

Who's the Greatest Sportsperson?

Who's the greatest sports person of all time?


Clearly, whoever it is has to also be the best in the history of their particular sport. But there are lots of sports, and equally many best players. Who's better - the greatest footballer, or the greatest golfer, or...?

You could just pick your personal favourite. If you like soccer, then Pelé is probably the greatest sportsman. Those who prefer baseball would most likely plump for Ty Cobb. But is there a way of objectively deciding who's the greatest of the great?

Yes, and the answer is Australian cricketer Sir Don Bradman (1908-2001). Why? It's all down to σ, the standard deviation - a fantastically useful, yet often misunderstood, mathematical technique. Time for a quick stats lesson.

For any collection of numbers, it's easy to calculate the mean - the sum of the numbers divided by how many there are. For example, the mean of 10, 20 and 30 is 20 : 10+20+30=60 / 3. This is what's commonly called the "average", although statisticians don't like that word.

The mean of 19,20, 21 is 20 as well. But there's obviously an important difference between these two sets of values. The first is more variable, or "spread out", than the second. How can we measure the "spread" of a set of numbers?

A convenient way would be to calculate the mean difference from the mean of the numbers. For 10,20, and 30, the differences from the mean are 10, 0, and 10, and the mean of the differences is 6.66 : 10+10=20 / 3. For 19,20,21, the differences are 1,0 and 1, and the mean difference is 0.66. The numbers are evil, but the principle is straightforward.

The standard deviation (aka the "s.d." or σ, "sigma") is similar to the mean difference, but it's calculated using a slightly more complicated method. First, work out the differences from the mean, then square them all, and calculate the mean of the squared values. This is called the variance. The square root of the variance is the standard deviation, σ.

For 10,20,30, the deviations are 10,0,10. Squared, that's 100,0,100, and the mean is 66.6, which is the variance. The square root of 66.6 = 8.16, so that's the standard deviation, σ. This is higher than the mean difference, but in most cases it's fairly close to it. σ turns out to be more useful in many ways, so it's generally what we use.

σ allows us to compare very different kinds of numbers in terms of how "unusually high" or "unusually low" they are. Imagine that the height of men has a mean of 180 cm, with a σ of 10 cm. In that case, a man who stands 200 cm tall would be 2 σ above the mean.

Now imagine that this man has an IQ of 145. IQ has a mean of 100 and a σ of 15, so this man's IQ is 3 σ above the mean. He is both tall and smart, but in an important way, he's smarter than he is tall, even though it obviously makes no sense to compare a height to an IQ score directly.

This brings us back to sports and Don Bradman. If you calculate the mean and the σ for some measure of sporting achievement, you can work out how many σ above (or below) the mean any given player is. In soccer, you might pick goals scored per match. In baseball, you might go with the batting average.

It turns out that if you do this, Don Bradman is the greatest sportsman of all time: his batting average was 4.4 σ above the mean for professional cricketers. Pelé comes second, as his goals-per-game was 3.7 σ above average, while Ty Cobb's batting average was 3.6 σ high. Bradman was the best cricketer ever, and Pelé was the best footballer ever, but Bradman was the best by a much larger margin than Pelé was.

Of course, we probably shouldn't take this too seriously. There are lots of assumptions here - it assumes that goals-per-match is the ultimate measure of a footballer's ability, which rules out defenders entirely, for example. And the statistician responsible for this work, Charles Davis, only looked at cricket, soccer, baseball, golf and basketball. And he was Australian, like Bradman, which may not be coincidence.

But still, it's an interesting result, and a good illustration of the power of σ. In science, σ has manifold uses. Whenever you see a picture of "brain activation" measured with fMRI, for example, those colourful patches actually represent areas where neural activation is unusually highly correlated with something.

For example, if you show people a picture, and activation in a certain area increases whenever you do, this is unusually highly correlated (relative to the rest of the brain where activation is random). The "hotter" colours correspond to higher σ values, specifically z scores. When you see "blobs on the brain", 9 times out of 10, you're literally looking at statistics.

Who's the Greatest Sportsperson?

Who's the greatest sports person of all time?


Clearly, whoever it is has to also be the best in the history of their particular sport. But there are lots of sports, and equally many best players. Who's better - the greatest footballer, or the greatest golfer, or...?

You could just pick your personal favourite. If you like soccer, then Pelé is probably the greatest sportsman. Those who prefer baseball would most likely plump for Ty Cobb. But is there a way of objectively deciding who's the greatest of the great?

Yes, and the answer is Australian cricketer Sir Don Bradman (1908-2001). Why? It's all down to σ, the standard deviation - a fantastically useful, yet often misunderstood, mathematical technique. Time for a quick stats lesson.

For any collection of numbers, it's easy to calculate the mean - the sum of the numbers divided by how many there are. For example, the mean of 10, 20 and 30 is 20 : 10+20+30=60 / 3. This is what's commonly called the "average", although statisticians don't like that word.

The mean of 19,20, 21 is 20 as well. But there's obviously an important difference between these two sets of values. The first is more variable, or "spread out", than the second. How can we measure the "spread" of a set of numbers?

A convenient way would be to calculate the mean difference from the mean of the numbers. For 10,20, and 30, the differences from the mean are 10, 0, and 10, and the mean of the differences is 6.66 : 10+10=20 / 3. For 19,20,21, the differences are 1,0 and 1, and the mean difference is 0.66. The numbers are evil, but the principle is straightforward.

The standard deviation (aka the "s.d." or σ, "sigma") is similar to the mean difference, but it's calculated using a slightly more complicated method. First, work out the differences from the mean, then square them all, and calculate the mean of the squared values. This is called the variance. The square root of the variance is the standard deviation, σ.

For 10,20,30, the deviations are 10,0,10. Squared, that's 100,0,100, and the mean is 66.6, which is the variance. The square root of 66.6 = 8.16, so that's the standard deviation, σ. This is higher than the mean difference, but in most cases it's fairly close to it. σ turns out to be more useful in many ways, so it's generally what we use.

σ allows us to compare very different kinds of numbers in terms of how "unusually high" or "unusually low" they are. Imagine that the height of men has a mean of 180 cm, with a σ of 10 cm. In that case, a man who stands 200 cm tall would be 2 σ above the mean.

Now imagine that this man has an IQ of 145. IQ has a mean of 100 and a σ of 15, so this man's IQ is 3 σ above the mean. He is both tall and smart, but in an important way, he's smarter than he is tall, even though it obviously makes no sense to compare a height to an IQ score directly.

This brings us back to sports and Don Bradman. If you calculate the mean and the σ for some measure of sporting achievement, you can work out how many σ above (or below) the mean any given player is. In soccer, you might pick goals scored per match. In baseball, you might go with the batting average.

It turns out that if you do this, Don Bradman is the greatest sportsman of all time: his batting average was 4.4 σ above the mean for professional cricketers. Pelé comes second, as his goals-per-game was 3.7 σ above average, while Ty Cobb's batting average was 3.6 σ high. Bradman was the best cricketer ever, and Pelé was the best footballer ever, but Bradman was the best by a much larger margin than Pelé was.

Of course, we probably shouldn't take this too seriously. There are lots of assumptions here - it assumes that goals-per-match is the ultimate measure of a footballer's ability, which rules out defenders entirely, for example. And the statistician responsible for this work, Charles Davis, only looked at cricket, soccer, baseball, golf and basketball. And he was Australian, like Bradman, which may not be coincidence.

But still, it's an interesting result, and a good illustration of the power of σ. In science, σ has manifold uses. Whenever you see a picture of "brain activation" measured with fMRI, for example, those colourful patches actually represent areas where neural activation is unusually highly correlated with something.

For example, if you show people a picture, and activation in a certain area increases whenever you do, this is unusually highly correlated (relative to the rest of the brain where activation is random). The "hotter" colours correspond to higher σ values, specifically z scores. When you see "blobs on the brain", 9 times out of 10, you're literally looking at statistics.

Monday, October 12, 2009

Image and video hosting by TinyPicFui Indicada para um "Meme"Image and video hosting by TinyPic

Fui indicada para um "Meme" no Blog da Anna
Tem regrinhas e dessa vez não tenho como
ESCAPAR DESSA.ENTÃO VAMOS LÁ.!

1*Escrever 8 caracteristica suas:
1)sincera
2)Amorosa
3)Amante da VIDA.
4)Romantica
5)Inteligente
6)carinhosa
7)Caprichosa
8)Amiga

2* Convidar 8 Blogueiras para receber o Selo!
Minhas indicadas ehehehe são elas...
Marcia ,blog da Gi , Serena , Ritinha , Ana , Mylla ,Fernanda, Andreia
Quando se tem amigos, não é fácil escolher, somente 08.

3* Comentar no Blog de quem lhe Premiou
4* Comentar no Blog das escolhidas para
que saibam das Indicação.

Consegui. Maravilha...Tarefa cumprida...

Minha Madrinha MARCIA, comemorando 14.000mil visitas.
Parabéns Amiga.
http://3.bp.blogspot.com/_g_pvncFgfNo/StUU5wt8-VI/AAAAAAAAC38/Pfu_eW9ZNFc/s400/vinho2.jpg

NÃO DEIXE DE PASSAR EM Meus Mimos!

TEM UM LINDO RECADINHO QUE GANHEI!
VENHA CONFERI DE QUEM. É PARA VOCÊ TAMBÉM, ESTE RECADINHO...

CONFIRA AS ÚLTIMAS DO COLETIVO
Blog Coletivo-Uma Interação de Amigos

VOLTEI!!!!

ESTOU MAIS EM PAZ HOJE.
FOI MUITO BOM TER SAIDO E TER DADO UM TEMPO...
ESTAVA MUITO TRISTE. MAS DEUS ESTÁ COMIGO.
E VOCÊ TAMBÉM.
AGRADEÇO TODO OS CARINHOS AQUI DEIXADOS.
FICO MUITO FELIZ COM A PRESENÇA DE TODOS.

GANHEI UM CORAÇÃO AMIGO.
LINDO...
OBRIGADA ALVARO.

CORAÇÃO LUSITANO

CORAÇÃO LUSITANO


UM PRESENTE PARA RITINHA, PELO DIA DA CRIANÇA. OBRIGADA AMIGA.




PARABÉNS PARA TODOS NÓS, QUE TEMOS DENTRO NÓS A CRIANÇA ETERNA.



VENHA CONFERIR A BLOGAGEM COLETIVA. VIDA DE ESCRITOR.
Blog Coletivo-Uma Interação de Amigos

Blog Amigo Verdadeiro

Placebos Have Side Effects Too

The placebo is the most talked-about treatment in medicine.

Everyone's heard of the "placebo effect", by which pills containing no drugs at all, just chalk and sugar, often seem to make people feel better. But if the mere expectation of improvement can produce improvement, then the expectation of unpleasant consequences, such as side effects, should make people feel worse. This is sometimes called the "nocebo" effect.

Two recently published papers tried to measure it. They looked at people who took part in randomized controlled trials of various drugs, and who were given placebos. Because different drugs have different known side effects, if the nocebo effect is real, the side effects reported by the placebo group should depend on the drug they think they might be taking. As the authors of one of the papers put it:
In a typical clinical trial, the subjects know they can receive either the active medication or the placebo and, accordingly, they are informed about the possible adverse events they may experience during the trial. ... Therefore, informing subjects about the possible adverse events they may experience, may have a significant impact on their expectations and experiences of negative effects.
Accordingly, Rief et al compared the side effects reported in the placebo groups of a large number of antidepressant drug trials. At the same time a separate group of researchers, Amanzio et al, did the same thing for trials of migraine drugs, which is a nice coincidence.

Both papers found that reported side effects do indeed depend on the drug being studied. In the antidepressant paper, people who believed they might be on tricyclic antidepressants (TCAs) reported many more "side effects" than those in trials of SSRIs. These included dry mouth, drowsiness, constipation, and sexual problems. This makes sense, because TCAs do have worse side effects than SSRIs.

Likewise, for the migraine trials, the placebo groups in trials of anticonvulsants reported more symptoms associated with those drugs, such as dizziness and sleepiness. Placebo groups in trials of NSAIDs (like aspirin) were more likely to report upset stomachs and so forth. Finally, in trials of triptans, which have very mild side effects, the placebo group reported few problems.

It's also interesting to compare the two papers. None of the migraine trial placebo patients reported experiencing sexual problems, while many of the antidepressant placebo patients did. Some antidepressants can cause sexual problems, while migraine drugs generally don't.

So, was the "nocebo effect" really making people feel worse? It could well have been, although there are other interpretations. People might just be more willing to report symptoms that they believe are drug side effects. Researchers might be more likely to write them down. And different kinds of people end up in trials of different drugs: some people might be more likely to report certain symptoms. Just as with placebos, we shouldn't rush to ascribe incredible mind-over-matter powers to the "force of suggestion" when there are more prosaic explanations.

Nevertheless, there's an important lesson here. Anecdotal evidence about drug's side effects shouldn't be accepted at face value, any more than anecdotes about their benefits. Drugs do, of course, cause adverse effects. But some drugs have worse reputations than they deserve in this regard. In such cases, nocebo effects might account for some of the reported problems...


ResearchBlogging.orgRief W, Nestoriuc Y, von Lilienfeld-Toal A, Dogan I, Schreiber F, Hofmann SG, Barsky AJ, & Avorn J (2009). Differences in Adverse Effect Reporting in Placebo Groups in SSRI and Tricyclic Antidepressant Trials: A Systematic Review and Meta-Analysis. Drug safety : an international journal of medical toxicology and drug experience, 32 (11), 1041-56 PMID: 19810776


ResearchBlogging.orgAmanzio M, Corazzini LL, Vase L, & Benedetti F (2009). A systematic review of adverse events in placebo groups of anti-migraine clinical trials. Pain PMID: 19781854