Occasionally I’ll use this bully pulpit for a rant. The two top rantables on my agenda right now are statistics and silos. This time it’s statistics.
I’m irked because I keep seeing a mistake that blows the kneecaps off any well-intentioned effort to improve policy by looking at statistics. People need to be aware of it, spot it, and cry “BS!” when it rears its head.
Earlier this week, in Paul Levy’s blog I got into a discussion in the comments section of a post. Frequent and knowledgeable contributor Barry Carol had wondered if high health care spending around here might be caused in part by a large supply of hospital beds and specialists locally. I said, in part:
If motorists were spending lots of money on fixing flats, would we say the problem is that we have so many tire repair shops? It's not a perfect analogy, but it's worth looking at. Some cultures think women are the cause of rape, because if there weren't all those women, there wouldn't be all those rapes.
I feel strongly that any statistics about costs and outcomes in a system should have an accountant's note specifying what proportion of the population goes without coverage in that system, so they don’t even have an outcome. Until we get honest about that, all we're doing is chasing a bubble under the blanket.
There’s the rub, the itchy spot. In cases like this, the goal of statistical analysis is to better understand things, particularly to know what a batch of data does or doesn’t represent so we can predict the best way to approach future situations.
Increasingly, what might be getting omitted is you. Or someone you love.
As the boomers age, and their decades of productivity and home buying convert to decades of home selling and health costs (who, me?), this is gonna be a big skull-knocking issue. There will be claims about which system works better, with all kinds of statistics being flung around like monkey dung. (Sorry, but monkeys do fling dung when they’re fighting, and when policymakers start fighting, they fling statistics, claiming they're proving reality.)
For health policy, all kinds of claims can be made with good statistical support – but you damn well better ask who got left out, making the picture prettier, whether it was intentional or not.
Personal story: in
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Now here’s the killer: in NH the disenfranchised can find themselves in real trouble, as policies evolve and unattractive individuals are increasingly isolated. Next personal story: I know a healthy, athletic 20-something whose coverage was costing $2,300 per year (for one person) because she has a minor murmur that’s never caused a symptom, but she wasn’t in a big group. Now she works for a big company, so she’s swallowed up into a big group and gets group rates.
What is the justification for this???
I also know two young families who simply go without coverage because there’s no room for it in their budget. Statistically they are of course counted in the 46 million uninsured – but I say they should also be factored somehow into the total cost of health care, including what it WOULD cost to provide the care they don’t get but would if they could. (Which brings us back to Barry's point about how many hospital beds we have.)
Worse, while excluding those cases, you can bet that the insurance companies (all of them) talked about how good their rates are, and they mean it. (I would - I'm in marketing, and when I believe my company is doing a super job, you bet I say so.) But again, I say you can’t talk about costs and outcomes without specifying whom you’ve excluded.
Final first-hand story: some years ago, when self-employed in NH, I myself found that I couldn’t afford health insurance, because at the time things had evolved to where almost all the AIDS patients in the state were in the category “not a member of any group” – same as me. So any statistics about insurance prices in that state at that time would have been a fat load of crap – flingable crap.
Overlooking the inconvenient people isn’t limited to health care costs. Consider the following, from the US Dept of Labor’s Bureau of Labor Statistics (BLS):
- Unemployment statistics don’t include everyone who wants a job but can’t find one. Once your unemployment benefits run out, they simply stop counting you. You don’t even exist as a problem anymore, as far as the BLS is concerned. I cannot figure out a legitimate reason for this.
- There are no statistics for people who eventually gave up on their previous career and are now working for half their previous pay. People in that situation are, again, simply not counted as a concern.
- Nor are there statistics for the loss of benefits. Employers certainly pay less for no-benefit or feeble-benefit jobs, but if you or I change to a job with no benefits, it doesn’t even make a dent in the pretty statistics.
- Worst of all, the “jobs created” statistics are a cruel joke. When a full-time job with benefits is carved up into three part-time jobs with no benefits, the BLS counts it as job growth. (I called my Senator’s office and had them check it out; a senior BLS statistician got back to me and confirmed it.)
This is insane. It's as if King Solomon chopped up 1,000 babies and declared a population explosion.
What is wrong with these people?? In May of 2006 an erudite observer in the New York Times remarked with surprise about the 200,000 “new jobs” that had been created in April: “employment [is] doing well, yet core inflation has remained remarkably subdued." Remarkable indeed, until you know what they're calling “job creation."
As I say, until we get honest about this, all we’re doing is chasing a bubble around under the blanket. With the best intentions, we'll make misguided policy decisions. And believe you me, policy has impact at the personal level. The time will come when you (or a loved one) is the bubble everyone wants to chase away. Do whatever you can to stop this crap. Now. Wake up! And wake others up.
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