| Literature DB >> 34526588 |
Duncan P Ryan1, Megan K Dunlap2, Martin P Gelfand3, James H Werner4, Alan K Van Orden2, Peter M Goodwin4.
Abstract
Calibration of the gain and digital conversion factor of an EMCCD is necessary for accurate photon counting. We present a new method to quickly calibrate multiple gain settings of an EMCCD camera. Acquiring gain-series calibration data and analyzing the resulting images with the EMCCD noise model more accurately estimates the gain response of the camera. Furthermore, we develop a method to compare the results from different calibration approaches. Gain-series calibration outperforms all other methods in this self-consistency test.Entities:
Year: 2021 PMID: 34526588 PMCID: PMC8443689 DOI: 10.1038/s41598-021-97759-6
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.996
Variable definitions.
| Pixel value [counts] | |
| Offset [counts] | |
| Photoelectrons | |
| Gain | |
| ADU conversion factor [photoelectrons/count] | |
| Standard deviation of readout noise [counts] |
Figure 1Series concept for parameter estimation. (a) An IS calibration collects samples from multiple intensity levels sharing a common gain value. Histograms of simulated samples at 25× gain (colored markers) and their corresponding PDFs (dashed lines) for four intensity levels are depicted. For larger photoelectron values, the Poisson distribution of the PGN model more closely resembles a normal distribution and the skewness, always positive for in the PGN model, decreases while the variance increases. (b) A GS calibration applies the same concept of grouping multiple measurements, but assumes independent gain parameters sharing a common photoelectron value. Depicted are the simulated histograms and PDFs for four gain levels representing a common intensity of 10 photoelectrons. For a constant intensity level, as gain increases, the skewness and variance both increase. The IS and GS depicted were simulations of 5000 samples, with , , and , representing similar parameter spaces and sample sizes as the cameras experimentally tested.
Parameter sets for MLE. Shared and unique parameters for the multiple dataset likelihood-based calculations. IS and GS MLE methods use different combinations of shared parameters to group datasets.
| IS MLE for | |
| IS MLE for gain calibration | |
| GS MLE for gain calibration | |
| hierarchical GS for gain calibration |
Figure 2ADU calibration. (a) The photon transfer function for ADU calibration. Readout noise (blue) is independent of signal intensity while Poisson noise (orange) is linearly proportional to the signal intensity. The manufacturer calibration range encompassed a small range of the signal intensity and was linearly spaced, which weighs the data from high signal intensities more heavily. Calibration measurements for this work (green) spanned a broader range and were logarithmically distributed. (b) Distributions of ADU estimates determined using the MLE method on each pixel (orange), the MV test on each pixel (green), and the manufacturer calibration data (blue). MCMC inference on a single pixel (red), shows the uncertainty associated with an individual measurement. The inset MLE map emphasizes the calibrated ADU values are uniform across the sensor area despite pixel-wise variations in the photon flux (image patterns due to the source).
Figure 3Results from gain calibration methods. Distributions of the gain parameters for (a) 5×, (b) 25×, (c) 100×, and (d) 300× set-points are shown for the MV test (blue), intensity series MLE (orange), gain series MLE (green), and MAP of the gain series using a hierarchical model (red). Each method produced differing estimates of the gain parameters. Estimates from each method were significantly smaller than the software set-points (dotted black).
Figure 4Consistency results from bead localization. Intensity estimations from fitting a single fluorescent bead imaged at a fixed excitation intensity at different gain set-points. Distributions are composed of fitting the same bead over multiple frames. For an ideal calibration, the distributions should overlap completely, regardless of the gain set-point. Only the gain-series methods demonstrate this consistency. The standard deviations of the distribution means, , are indicated for each method (including and excluding the 1× distribution) as a metric for the performance of the various methods.
Figure 5Summary of consistency results for a collection of beads. Plots show the results of localization fitting for ten beads imaged together in the same field of view, scaled to the mean intensity from the 1× measurements. Intensity values from the 5× dataset are outliers for all calibration methods except the two gain-series. The gain-series methods show consistency across gain set-points for all beads examined.