Alan Aw
@alan-aw.bsky.social
5 followers 3 following 4 posts
Postdoc at Penn Genetics working in statistical genomics and computational biology.
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alan-aw.bsky.social
Thus with large n, we can hedge against the risk of model misspecification, while maintaining high statistical power if the model were actually a good fit to the data. This theoretical insight underpinning our methodology can be traced back to the works of L. Le Cam and E. Lehmann, among others.
alan-aw.bsky.social
Our tests are asymptotically as powerful as their parametric counterparts. The only difference is that our null is non-parametric, so it probably controls FDR. Even with large n, parametric tests can fail to control FDR when the model is misspecified.
alan-aw.bsky.social
Our method is especially well-suited for large-scale RNA-seq analysis. One might think that larger samples would allow the Central Limit Theorem to kick in, hence negating the advantage of non-parametric tests such as ours. Quite the opposite, in fact!
alan-aw.bsky.social
Hi Bluesky — Dedicating my first post to this work and software, led by the incredibly meticulous and capable @fandingzhou.bsky.social! An earlier version of this was shared at the 2022 Bioconductor Conference (bioc2022.bioconductor.org/schedule/).
fandingzhou.bsky.social
Gene expression changes aren’t just about mean shifts — variability shifts matter too, especially for aging. We're thrilled to introduce QRscore, a flexible non-parametric framework for detecting shifts in mean and variance across conditions. doi.org/10.1016/j.cr...