If you’ve been reading our blog for any length of time, you’ll know that we recommend learning everything you can about vaccines, vaccine adverse reactions and their frequency, the means of transmission of each “vaccine-preventable” illness, and the actual likelihood of catching and/or dying from them long before you let anyone come near you or your child with a hypodermic needle.
Way back when TMR was just getting off the ground, I wrote a blog called Critical Thinking 101: The Vaccine Debate. It was about the necessity of assessing the source of the information you’re getting, whatever it is, and determining the likelihood that someone is telling you the truth, at least as they see it. It’s important to always remember that no one sees things as they are. We all have our own “spin,” whether we are aware of it or not.
I wrote that blog because I was once “the new guy” to the discussion, and I started out blind. Who truly has the welfare of you and your child in mind when writing or posting? Sometimes it is hard to tell, but people give themselves away eventually, don’t they? I mean how concerned is someone likely to be about your child’s welfare when he says to some other parent, whose child has clearly already been harmed by one or more vaccines, “I hope you and your kids die of vaccine-preventable diseases”?
When you encounter that attitude repeatedly as a response to people who are saying perfectly reasonable things, like “my child went into anaphylactic shock and nearly died from a vaccine reaction,” you start to wonder about those people who would deny your right to question the need for a chickenpox vaccine mandate.
Over and over again, I found that parents who stuck around and hung in there, despite being called names that would have made Hitler blush, were genuine and generous with their information when it would have been so much easier for them not to be.
Not everyone agrees, however. Many people view those same parents with a tremendous amount of suspicion. I read something recently that made the claim that people who post “anti-vaccine” information are paid by pharmaceutical companies to decrease vaccination rates so that people will be sicker and have to buy more pharmaceuticals! That one is so far out of left field it positively takes your breath away, doesn’t it? I admit I would have trouble saying it out loud with a straight face.
Go ahead. You can laugh. I’ll wait for the giggles to pass.
Yep, they got us. Vaccine manufacturers are paying us to cut into the $40-billion they plan to make on vaccines this year, because they could make oh-so-much more on their measles, mumps, and rubella drugs.
Oh, wait! There aren’t any – other than over-the-counter fever reducers that the average parent already has on their shelves. (Side note: please, please, please throw away the acetaminophen/paracetamol – Tylenol – and NEVER give it if vaccinating.)
I’m not going to say there are a lot of people who are as invested in denial as the person who made the above claim. But it has occurred to me that when people point to some godawful study as “proof” that vaccines don’t cause autism, or they tell me I am not qualified to read a scientific study and assess its quality, it’s because they don’t know how to assess the science themselves. They are relying on someone else to interpret it for them – perhaps someone who professes to love and/or know science – because they don’t understand why studies are designed the way they are.
There are a lot of people who appear to be missing a crucial piece of knowledge when it comes to understanding medical studies. A lot of smart people. A lot of genuine people. A lot of concerned, caring citizens. This blog is for those people.
When I first graduated from college I worked as an electrical engineer. The company I worked for made military communications devices, the kind of thing you might find on a fighter jet. There were two main goals to those devices: 1) get your signal through; and 2) keep the enemy’s signal from getting through.
The most important consideration in whether or not your signal gets through – clearly – to the person intended to receive it is the signal-to-noise ratio, or SNR. SNR is a measure of how strong your signal is compared to the background “noise.”
It should be intuitively obvious that for clear communications you want the highest SNR possible. With a lower SNR, for instance, instead of hearing Neil Armstrong’s “That’s one small step for a man, one giant leap for mankind,” we might have heard, “. . . small . . . giant . . . man . . . ” which, I’m sure you will agree, has a distinctly different ring.
Clear communications are crucial to the operation of rockets and airplanes. So signal processing is huge, and it’s all about boosting the power of the signal over the background noise to make the true signal easier to detect. Often, if you try to amplify a signal, you amplify the noise as well, which will make a signal louder but not clearer.
Amplification is not enough; in order to make the signal really stand out from the background noise, you need to understand both the signal and the noise. That way you can boost the signal and filter out the noise. That’s relatively straightforward for your car radio. A radio station broadcasts on a particular frequency. If you tune your radio to the frequency of the station you want, your radio can filter out radio waves at all other frequencies, and your signal comes through nice and clear.
It’s a little more complicated, though, when you don’t know the properties of the signal will you’re looking for or what kinds of noise will also be encountered.
In military electronics, at least back when we were still fighting the “Cold War,” we were all about trying to “jam” the enemy’s communications while not letting the enemy “jam” ours. The best way to jam someone else’s signal is to know how they are planning to send it and receive it. Much of Cold War spying was about getting inside information on the “other guy’s” communication systems. If you know what frequency they’re broadcasting on, for instance, you can send a strong noise signal at that frequency, and the communication is effectively jammed – with nothing but noise coming through the receiver. One way to keep your signal from being jammed is to “spread” it so that it already looks like noise, essentially hiding it from the enemy until it can be detected by a receiver that knows how to “unspread” the signal.
The idea was always to stay ahead of the “other guy’s” technology. I worked in the research department. The joke was that half the stuff we worked on would never be deployed because “the Russians” would figure out how to jam it before it ever got on board a plane.
Personally, I was much more interested in radio signals from “other guys” that were much less known and understood. Remember the film Contact with Jodie Foster? She played a radio astronomer looking for signals from extra-terrestrials. Since extra-terrestrial intelligence and technology are completely unknown quantities, we have no way of knowing what frequency a signal would come in on or how it would be “packaged,” making it necessary to make a lot of assumptions and guesses in order to even look for a signal. All of which makes the detection of an extra-terrestrial signal – even if it were being beamed straight at us – a pretty long shot. Which could be why, despite looking since 1961, the Search for Extra-Terrestrial Intelligence (SETI) has yet to report finding one.
What a lot of people don’t know is that statistics, the mathematical processes used to analyze data, work the same way as signal processing. Say you’re looking for an association – or link – between smoking and lung cancer, the link would be the signal you would be looking for. It may or may not exist, but you need to design your study so that if it does exist your study will show it. This is why experiments are designed with “controls” and only one variable at a time. If more than one thing is changed at a time, you won’t know if your results are due to the variable you’re interested in or something else altogether – and any signal can easily get lost in noise.
In epidemiological exposure studies, the best way to boost your SNR is to compare the highest exposure category to the lowest exposure. If you compare exposure categories that are quite close together, it will be much harder to detect the signal, no matter how strong that signal might be.
For our theoretical smoking study, we might first start with taking as random a population as possible and filtering out the people with the highest exposure, say those who smoke two packs a day or more of unfiltered cigarettes for more than 10 years, and compare them with the people who had the lowest exposure: people who have never even lived with a smoker much less smoked themselves, for instance. Now, some of that information may not be available. Maybe you have no data on whether people smoked filtered or unfiltered cigarettes, or whether people lived with smokers or not. In that case, you cannot use those parameters for your data selection, but you would do the best you could with the data you have at hand in order to yield the strongest possible signal.
And, voilà, you find that lung cancer is way more common in people who smoked two packs a day than in people who never smoked. It is, in actual fact, 23 times more common in men who smoke than men who have never smoked, and 13 times more common in women who smoke than women who have never smoked, which is such a strong correlation, that it is considered “proof” that smoking does indeed cause lung cancer. But wait . . . I thought, “correlation does not equal causation”? Yeah, it doesn’t – unless it’s a really strong correlation. You didn’t think they were running placebo-controlled double-blind experiments with real cigarettes and fake cigarettes, did you?
Now say you’re a CEO of a tobacco company, and you really, really don’t want people to know that cigarette smoking causes lung cancer, because you really, really want them to continue smoking. How would you analyze the same data, so instead of revealing any association that might exist, you hide it? Turns out it can be remarkably easy to hide a strong signal in noise.
You’ve probably already done a preliminary analysis just to get a sense of exactly how big a signal you’ll need to hide, and maybe you’ve found that the point where lung cancer risk really takes off is with the people who smoke one pack a day. Okay, good, you can start by throwing out all the people who smoked more than two packs a day and all the people who smoked less than one pack a day, calling them “outliers.” So now you’re left with just the people who smoked between one and two packs a day.
If you compare the people who smoked a pack and a half to two packs a day with the people who smoked one to one and a half packs a day (calling them your “control group”) – shockingly enough – the incidence of lung cancer in the higher exposure group is only slightly higher than in the “control group.” (If you’re really lucky, it might even be a little lower because of some weird statistical fluke like the folks who smoke one-and-a-half to two packs a day are at the highest risk of dying first from heart disease – which is just fine with you because this study isn’t about heart disease!)
Since you’ve thrown out so much data, you can’t even say that the result you got is statistically significant. It could be just a “coincidence” and not a real correlation.
Eureka! You’re done! You have successfully produced a “neutral” study that doesn’t prove anything either way. You might even be able to make a case for cigarette smoking being protective against lung cancer. Time to issue a press release with the title New Study Shows No Link Between Cigarette Smoking and Lung Cancer! If your luck holds, no one in the press will actually read the study, they’ll just point to it and say it “proves” that cigarettes don’t cause lung cancer.
You, the reader, might be tempted to call that second study “fraud.” After all, the folks doing the study know damned well their study does the opposite of what scientific investigation is supposed to do: reveal the truth rather than hide it. It would certainly fall under the category of “tobacco science,” which Urban Dictionary defines as “‘Science’ done on behalf of an interest defending it’s (sic) cash cow from overwhelming credible science that shows it is harmful or detrimental to public benefit in some way.”
What might surprise you is that the study examples I gave are very close to two methodologies involved in a CDC study performed by Thomas Verstraeten (who currently works for GlaxoSmithKline, while Julie Gerberding who headed the CDC at the time works for Merck) done on the association between Thimerosal exposure from vaccines and rates of autism (and other neurological disorders). The first analysis of the data (nicknamed “Generation Zero”) was done in the way best suited to revealing a signal, and what a signal it revealed!
A number of neurodevelopmental conditions were anywhere from four to eight times more common in the population with the highest early exposures than in the population with no early exposure. The results were statistically significant, meaning they were unlikely to be due to a fluke. A little “noise suppression” tweaking boosted the autism prevalence to more than eleven times higher in the exposed population.
A United States Civil Court considers a relative risk (“RR”) of two to be evidence that the exposure is “more likely than not” to have caused the condition under consideration. Imagine what they could make of a relative risk of eleven! (This might be a good time to note that other highly touted “links” to autism have far lower relative risks: older dads, RR=1.4; proximity to highway, RR = 1.6; obese mothers, RR = 1.7; and ritual circumcision, RR = 2.0.)
Such a strong signal makes it very likely that the Thimerosal exposure caused autism in many of those children, which had to be terrifying news to the head honchos at the CDC. After all, how do you ensure your high-paying private sector job if you hang your future employer out to dry? They had Verstraeten reanalyze the numbers, adding more “noise,” and the data still implicated Thimerosal. That’s when they called a secret meeting at Simpsonwood Conference and Retreat Center in Norcross, Georgia, inviting reps from all the big vaccine manufacturers, to decide what to do about the “signal.”
The upshot? “Hide it.”
It took a few more revisions and a suggestion from Dr. Coleen Boyle (Director of the National Center on Birth Defects and Developmental Disabilities (NCBDDD) at the CDC) to include the kids who were probably too young yet to have an autism diagnosis to finally raise the noise level enough to get to statistical insignificance and a “neutral” study. At which point they finally let him publish it (four years after that secret meeting).
The CDC then disingenuously pointed to Verstraeten’s study, and continue to do so today, as “proof” that “vaccines don’t cause autism.” Frankly, the fact that anyone could say this with the online equivalent of a “straight face” means they don’t have even a shred of understanding how logic or science works or they’re lying – or both. Thank goodness for the Freedom of Information Act, or we might not know exactly why Verstraeten’s published analysis makes so little sense.
Moral of the story? There are lots of ways you can dampen a strong signal if that’s what you’re trying to do. And if you read the available vaccine science, you will get a crash course in them. When analyzing the science, you need to ask yourself the all-important question, “Is this study designed in the best possible way to reveal a ‘signal’ if there is one?” And if not, why not?
Often you will find when it comes to vaccine science, like its correlate “tobacco science,” that not only is the answer to the first question no, the study has actually been designed in the worst possible way to reveal a ‘signal.”
Why are these studies so badly designed? Can it be that no one at the CDC understands science or even logic?
Hardly. The real answer is painfully obvious: a study designed in the worst possible way to reveal a signal, is often the one designed in the best possible way to hide one.
And the folks at Merck, GlaxoSmithKline, and the CDC are really, really hoping you never figure that out.
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