psfmodels
Python bindings for scalar and vectorial models of the point spread function.
Original C++ code and MATLAB MEX bindings Copyright © 2006-2013, Francois
Aguet, distributed under GPL-3.0
license. Python bindings by Talley Lambert
This package contains three models:
- The vectorial model is described in Auget et al 20091. For more
information and implementation details, see Francois' Thesis2.
- A scalar model, based on Gibson & Lanni3.
- A gaussian approximation (both paraxial and non-paraxial), using paramters from Zhang et al (2007)4.
1 F. Aguet et al., (2009) Opt. Express 17(8), pp.
6829-6848
2 F. Aguet. (2009) Super-Resolution Fluorescence Microscopy Based on
Physical Models. Swiss Federal Institute of Technology Lausanne, EPFL Thesis no.
4418
3 F. Gibson and F. Lanni (1992) J. Opt. Soc. Am. A, vol. 9, no. 1, pp. 154-166
4 Zhang et al (2007). Appl Opt
. 2007 Apr 1;46(10):1819-29.
see also:
For a different (faster) scalar-based Gibson–Lanni PSF model, see the
MicroscPSF project, based on Li et al
(2017) which has been implemented in
Python,
MATLAB, and
ImageJ/Java
Install
pip install psfmodels
from source
git clone https://github.com/tlambert03/PSFmodels.git
cd PSFmodels
pip install -e ".[dev]"
Usage
There are two main functions in psfmodels
: vectorial_psf
and scalar_psf
.
Additionally, each version has a helper function called vectorial_psf_centered
and scalar_psf_centered
respectively. The main difference is that the _psf
functions accept a vector of Z positions zv
(relative to coverslip) at which
PSF is calculated. As such, the point source may or may not actually be in the
center of the rendered volume. The _psf_centered
variants, by contrast, do
not accecpt zv
, but rather accept nz
(the number of z planes) and dz
(the z step size in microns), and always generates an output volume in which the
point source is positioned in the middle of the Z range, with planes equidistant
from each other. All functions accept an argument pz
, specifying the position
of the point source relative to the coverslip. See additional keyword arguments
below
Note, all output dimensions (nx
and nz
) should be odd.
import psfmodels as psfm
import matplotlib.pyplot as plt
from matplotlib.colors import PowerNorm
psf = psfm.make_psf(127, 127, dxy=0.05, dz=0.05, pz=0)
fig, (ax1, ax2) = plt.subplots(1, 2)
ax1.imshow(psf[nz//2], norm=PowerNorm(gamma=0.4))
ax2.imshow(psf[:, nx//2], norm=PowerNorm(gamma=0.4))
plt.show()
import numpy as np
psf = psfm.make_psf(np.linspace(-3, 3, 31), nx=127)
psf.shape
all PSF functions accept the following parameters. Units should be provided
in microns unless otherwise stated. Python API may change slightly in the
future. See function docstrings as well.
nx (int): XY size of output PSF in pixels, must be odd.
dxy (float): pixel size in sample space (microns) [default: 0.05]
pz (float): depth of point source relative to coverslip (in microns) [default: 0]
ti0 (float): working distance of the objective (microns) [default: 150.0]
ni0 (float): immersion medium refractive index, design value [default: 1.515]
ni (float): immersion medium refractive index, experimental value [default: 1.515]
tg0 (float): coverslip thickness, design value (microns) [default: 170.0]
tg (float): coverslip thickness, experimental value (microns) [default: 170.0]
ng0 (float): coverslip refractive index, design value [default: 1.515]
ng (float): coverslip refractive index, experimental value [default: 1.515]
ns (float): sample refractive index [default: 1.47]
wvl (float): emission wavelength (microns) [default: 0.6]
NA (float): numerical aperture [default: 1.4]
Comparison with other models
While these models are definitely slower than the one implemented in Li et al
(2017) and
MicroscPSF, there are some interesting
differences between the scalar and vectorial approximations, particularly with
higher NA lenses, non-ideal sample refractive index, and increasing spherical
aberration with depth from the coverslip.
For an interactive comparison, see the examples.ipynb Jupyter
notebook.
Lightsheet PSF utility function
The psfmodels.tot_psf()
function provides a quick way to simulate the total
system PSF (excitation x detection) as might be observed on a light sheet
microscope (currently, only strictly orthogonal illumination and detection are
supported). See the lightsheet.ipynb Jupyter notebook for
examples.