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Improved automated spot counting and modeling with bias correction.

Chun Pang LinYajie DuanDavit SargsyanHelena GeysJocelyn SendeckiKanaka TatikolaSurya MohantyGe ChengMahan DastgiriJavier Cabrera
Published in: Journal of biopharmaceutical statistics (2024)
A complete workflow was presented for estimating the concentration of microorganisms in biological samples by automatically counting spots that represent viral plaque forming units (PFU) bacterial colony forming units (CFU), or spot forming units (SFU) in images, and modeling the counts. The workflow was designed for processing images from dilution series but can also be applied to stand-alone images. The accuracy of the methods was greatly improved by adding a newly developed bias correction method. When the spots in images are densely populated, the probability of spot overlapping increases, leading to systematic undercounting. In this paper, this undercount issue was addressed in an empirical way. The proposed empirical bias correction method utilized synthetic images with known spot sizes and counts as a training set, enabling the development of an effective bias correction function using a thin-plate spline model. Its application focused on the bias correction for the automated spot counting algorithm LoST proposed by Lin et al. Simulation results demonstrated that the empirical bias correction significantly improved spot counts, reducing bias for both fixed and random spot sizes and counts.
Keyphrases
  • deep learning
  • convolutional neural network
  • optical coherence tomography
  • machine learning
  • peripheral blood
  • high throughput
  • sars cov
  • high resolution
  • single cell
  • virtual reality
  • gas chromatography