Sunday, February 21, 2010

Academic work hours

It is pretty true that academics is not a Monday to Friday job. However, there is actually a nice compensation that can often happen. When I was at McGill I made some very good friends just by being in the lab at odd hours (especially late at night). There can be a sense of shared struggle that is an overlooked bonus. Of course, it'd have been even nicer if there was a late night office shop to take breaks in but you cannot have everything!

Friday, February 19, 2010

Multiple Testing

Interesting. False positives in popular fields appear to be much more strongly driven by the number of groups testing these hypotheses rather than by fiddling with data. A very comforting result, insofar as it is true.

More troublesome, is that it is unclear what we can do about it. Being better about publishing negative results helps but is never going to be a perfect solution; especially when reviewers may be more skeptical about results that do not match their intuition.

The difficulty of Soft Outcomes

There is currently a movement to ban combination medications with acetaminophen as an ingredient. The reasoning behind this appears to be due to the potential for liver damage caused by excessive doses of the medication. The estimate of 458 deaths per year seems like a lot, until you realize the denominator is not specified (it won't be the entire US population but it might be 10's of millions).

The other issue, and the one that is interesting to an epidemiologist, is the soft nature of the competing risk. The alternatives to acetaminophen is either a narcotic or a non-steroidal anti-inflammatory drug like ibuprofen. Both of these drugs have downsides (addiction, gastrointestinal bleeding) as well.

But the real alternative is less pain control. And that is hard to judge because it is a soft outcome. How much suffering is worth a life? Lives are easy to count but massively reduced quality of life is much, much trickier. But I think it is important to realize that a hard to measure outcome can still have a known and measurable effect on real people.

So I guess what I want to see a clear articulation of what are the alternatives to the current approach to publishing in hot fields.

Wednesday, February 17, 2010

Post-Doctoral Fellowships

Am I really atypical in having had a decent post-doctoral fellowship? Is it a feature of the University of Washington or of my PI?

But when I read bitter stories about bad experiences then I wonder if this is a "there but for the grace of some powerful entity I go".

I think one issue is that people expect a lot at the end of the PhD (and not without justification -- the PhD is a long and difficult process). But the reality is that the PhD is the license to do research -- meaning you get to start at the beginning all over again. After 12 years of schooling (and an outside career in the financial services industry) that can be rough.

I'm lucky to have found a supportive place and I am pleased that I am moving forward to a good position (although quite sad to be leaving the state of Washington). Here is hoping that academic work is as unexpected pleasant as post-doccing turned out to be!

Thursday, May 14, 2009

Cheerios vs the FDA

Via Tyler Cowen, there is this new article.

So, because health research is being cited, Cheerios are a drug? So what is the rationale for regulation of this product? Patient safety? I fear that denying patients food because clinical research has not been done would seem to be an unwise idea.

I do think that poor regulation of products can lead to harm but there does seem to be a difference of kind here. Nor do I think that merely citing research should be an issue: there should be more careful research into diet and not less.

Wednesday, May 6, 2009

What should your final model be?

In the decision to present the best possible model based on the weight of evidence, should you present the results of Bayesian Model Averaging or of a single selected model based on variables that had strong posterior probabilities in the BMA analysis?

I think you have to present the posterior probabilities. They actually contain MORE information than the selected model. More importantly, the p-values in a selected model don't seem to give a good sense of model uncertainty. This feature is something that I dislike about all automated model selection approaches in that they don't represent competing models that were close to the final model in likelihood but just happened not to be selected.

But it looks like almost no substantive papers use BMA. Why is this?

Tuesday, May 5, 2009

Measuring changes

Is there anything trickier than measuring changes? Probably, yes, but this has got to be competitive for the difficulty in translating clear concepts into analysis. We can all describe, using ordinary language, the idea that a person may become more physically active with time.

But how do we operationalize this using the tools available in the standard cohort study. Do we look at change? What about change conditional on baseline? But the second quantity is going to have issues with measurement error.

What about categorizing things? Sadly, this creates the annoying problem of regression to the mean and ignores the bigger question of how do we define a meaningful threshold. Let alone the issue of reducing the information content of a continuous variable by breaking it into two categories. This reduction might be defensible if these categories align with clear clinical guidelines and so make results easier to operationalize. But many variables don't have this lucky property.

The more I look at this, the trickier the whole thing becomes.

Monday, May 4, 2009

Mission Creep

Professor in Training has a post on the amazing amount of time that it takes to certify a lab and/or a researcher. I find it very interesting how there has been a slow increase in the amount of overhead to do research. Each step may be both reasonable and justified. But the total effect can be quite counter-productive.

And, I must admit, that I am not altogether clear that it is a better world when the key skill for a junior professor is negotiating bureaucracy and/or finding ways around regulation. I know why making these rules apply to everyone is useful (as people avoid these things if they have any chance at all -- or at least I do). But maybe we should learn to balance total impact on research with protection of lab-workers and research subjects?

Friday, May 1, 2009

Sick Days part 2

A nice follow-up to my post yesterday about the public health issues of poor sick leave policy. This area is a place where there is a bad tendency to spout what good practice is and then put incentives in place that make following such practices highly problematic at best.

Thursday, April 30, 2009

Sick Days

Do we get enough here in the United States? I wonder what the contribution to public health would look like if we made it unacceptable to show up to work or school ill. In the beginning this approach would increase absenteeism but, in the long run, it might reduce the spread of diseases across the population very effectively.

The issue is more that we have no mechanisms for verifying that people are actually ill (and herding them into an MDs office isn't an ideal solution as it pools all of the ill people together to infect older and sicker patients there for other health concerns). Add in a cultural dislike of reasonable accommodation and it is not surprising that people comply with the incentives to show up to work or school ill.

Don;t you wish that there was a better way?

Wednesday, April 29, 2009

Academic Reform

Any attack on an entrenched institution seems to draw strong feelings as to whether the critique is justified. However, this one seems to be flawed even by the standards of people with serious concerns about the current model for scientific research.

In general, I think questioning a model is good and necessarily to ensure strong future research. But there are several things that I think need to be kept in mind.

1) If it is obvious, has universal agreement and yet is not being done then there might be a reason for that. The idea that science and liberal arts degrees should better prepare students for work in the real world is an old idea; that it isn't being done is both because it is hard and because it diverts students from research productivity.

Incentives matters and so does viability.

2) Reforming tenure is an old canard. Let me make one point. At best speed, to become a tenured professor, one needs to spend 4 years as an undergraduate, 6 years as a graduate student and possibly as many as 5 years as a post-doctoral fellow (where salaries are typically well below what could be obtained elsewhere). After this 15 year preparation, professors then have 5 years to win grants and prove themselves worthy of tenure. This is a 20 year preparatory program, much of it at very low wages.

It is true that the reward system is loaded at the back end but reforming tenure to make being a senior professor less rewarding should ideally also consider the poor working conditions, long hours and low pay of the multi-decade training program!

Just a thought.


I really liked MsPhD's concern about what happens in a world of pure "soft money" positions. I am starting to suspect that the downsides of this paradigm (at least as currently implemented) outweigh the upsides.

Tuesday, April 28, 2009

Bayesian Priors

I know that it is difficult to actually create a prior that substantively influences a point estimate (except by design). But I always find it hard to justify a default prior. Is it merely that Ihave not spent enough time thinking about my data? Or am I missing some sort of trick to this process?

Aetiology

This epidemiology site has an excellent coverage of the current swine flu outbreak. It is nice to see some smart commenting on the progress of this disease and the Battlestar Galatica quotes are an added bonus.

Monday, April 27, 2009

Swine Flu

Well, it looks like there is a case in Northern California now. Joy!

It is unclear, when the numbers are so low, what will be the size of the epidemic and what will be the mortality rate. The rate of 173 death out of 1,995 infections would be alarming if we really knew that 1,995 was the correct denominator. However, there is likely to be considerable under-ascertainment in a country like Mexico among the survivors (especially those who did not seek medical care). This factor is likely to be especially important if reports of patients being turned away from medical care turn out to be widely true.

On the flip side, with only 40 cases in the US, many of which may be at the beginning of the course of the disease, we have no idea what the mortality rate is likely to be. It is still possible for it to be 0%; at which point we'll look like we over-reacted.

I think that this is a good example of the challenges of problems with lagged information (incubation times) and geometric growth rates. The point at which intervention can be effective seems to also be the point at which there is not enough data to distinguish a serious public health issue from a decidedly mild outbreak.

Thursday, April 23, 2009

OT: Truly bad ideas

Mark has a nice question about a suggestion from the Ohio militia to have 1,000,000 armed people march on Washington as a demonstration.

What could go wrong?

Somehow the mind boggles . . .