Abstract
Particle fusion for single molecule localization microscopy improves signal-to-noise ratio and overcomes underlabeling, but ignores structural heterogeneity or conformational variability. We present a-priori knowledge-free unsupervised classification of structurally different particles employing the Bhattacharya cost function as dissimilarity metric. We achieve 96% classification accuracy on mixtures of up to four different DNA-origami structures, detect rare classes of origami occuring at 2% rate, and capture variation in ellipticity of nuclear pore complexes.
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CITATION STYLE
Huijben, T. A. P. M., Heydarian, H., Auer, A., Schueder, F., Jungmann, R., Stallinga, S., & Rieger, B. (2021). Detecting structural heterogeneity in single-molecule localization microscopy data. Nature Communications, 12(1). https://doi.org/10.1038/s41467-021-24106-8
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