The last couple of weeks have been very full.
One event was the annual Welch Foundation conference (program here). The program chair for this one was W. E. Moerner, expert (and Nobel Laureate) on single-molecule spectroscopy, and it was really a great meeting. I'm not just saying that because it's the first one in several years that was well aligned to my own research.
The talks were all very good, and I was particularly impressed by the presentation by Yoav Shechtman, who spoke about the use of machine learning in super-resolution microscopy. It basically had me convinced that machine learning (ML) can, under the right circumstances, basically be magic. The key topic is discussed in this paper. The basic idea of some flavors of super-resolution microscopy is to rely on the idea that fluorescence is coming from individual, hopefully well-separated single emitters. Diffraction limits the size of a spot, but if you know that the light is coming from one emitter, you can use statistics to figure out the x-y centroid position of that spot to much higher precision. That can be improved by ML methods, but there's more. There are ways to get z information as well. Xiaowei Zhuang's group had this paper in 2008 that's been cited 2000+ times, using a clever idea: with a cylindrical lens in the beam path, a spot from an emitter above the focal plane is distorted along one axis, while a spot from an emitter below the focal plane is distorted along the orthogonal axis. In the new work, Shechtman's folks have gone further, putting a phase mask into the path that produces more interesting distortions along those lines. They use ML trained on a detailed simulation of their microscope data to get improved z precision. Moreover, they also can use ML to then design an optimal version of that phase mask, to get even better precision. Very impressive.
The other talk that really stuck out was the Welch award talk by Carolyn Bertozzi, one of this year's Nobel Laureates in Chemistry. She gave a great presentation about the history of bioorthogonal chemistry, and it was genuinely inspiring, especially given the clinical treatment possibilities it's opened up. Even though she must've given some version of that talk hundreds of times, her passion and excitement about the actual chemistry (e.g. see, these bonds here are really strained, so we know that the reaction has to happen here) was just palpable.