Point Spread Function calculations for fluorescence microscopy
Psf is a Python library to calculate Point Spread Functions (PSF) for
fluorescence microscopy.
The psf library is no longer actively developed.
:Author: Christoph Gohlke <https://www.cgohlke.com>_
:License: BSD-3-Clause
:Version: 2026.1.18
Quickstart
Install the psf package and all dependencies from the
Python Package Index <https://pypi.org/project/psf/>_::
python -m pip install -U "psf[all]"
See Examples_ for using the programming interface.
Source code and support are available on
GitHub <https://github.com/cgohlke/psf>_.
Requirements
This revision was tested with the following requirements and dependencies
(other versions may work):
CPython <https://www.python.org>_ 3.11.9, 3.12.10, 3.13.11, 3.14.2 64-bit
NumPy <https://pypi.org/project/numpy/>_ 2.4.1
Matplotlib <https://pypi.org/project/matplotlib/>_ 3.10.8
(optional for plotting)
Revisions
2026.1.18
- Use multi-phase initialization.
- Improve code quality.
2025.8.1
- Drop support for Python 3.10, support Python 3.14.
2025.1.1
- Improve type hints.
- Drop support for Python 3.9, support Python 3.13.
2024.5.24
- Fix docstring examples not correctly rendered on GitHub.
2024.4.24
2024.1.6
Refer to the CHANGES file for older revisions.
References
- Electromagnetic diffraction in optical systems. II. Structure of the
image field in an aplanatic system.
B Richards and E Wolf. Proc R Soc Lond A, 253 (1274), 358-379, 1959.
- Focal volume optics and experimental artifacts in confocal fluorescence
correlation spectroscopy.
S T Hess, W W Webb. Biophys J (83) 2300-17, 2002.
- Electromagnetic description of image formation in confocal fluorescence
microscopy.
T D Viser, S H Wiersma. J Opt Soc Am A (11) 599-608, 1994.
- Photon counting histogram: one-photon excitation.
B Huang, T D Perroud, R N Zare. Chem Phys Chem (5), 1523-31, 2004.
Supporting information: Calculation of the observation volume profile.
- Gaussian approximations of fluorescence microscope point-spread function
models.
B Zhang, J Zerubia, J C Olivo-Marin. Appl. Optics (46) 1819-29, 2007.
- The SVI-wiki on 3D microscopy, deconvolution, visualization and analysis.
https://svi.nl/NyquistRate
Examples
import psf
args = dict(
... shape=(32, 32),
... dims=(4, 4),
... ex_wavelen=488,
... em_wavelen=520,
... num_aperture=1.2,
... refr_index=1.333,
... pinhole_radius=0.55,
... pinhole_shape='round',
... )
obsvol = psf.PSF(psf.GAUSSIAN | psf.CONFOCAL, **args)
obsvol.sigma.ou
(2.588..., 1.370...)
obsvol = psf.PSF(psf.ISOTROPIC | psf.CONFOCAL, **args)
print(obsvol, end='')
PSF
ISOTROPIC|CONFOCAL
shape: (32, 32) pixel
dimensions: (4.00, 4.00) um, (55.64, 61.80) ou, (8.06, 8.06) au
excitation wavelength: 488.0 nm
emission wavelength: 520.0 nm
numeric aperture: 1.20
refractive index: 1.33
half cone angle: 64.19 deg
magnification: 1.00
underfilling: 1.00
pinhole radius: 0.550 um, 8.498 ou, 1.1086 au, 4.40 px
computing time: ... ms
obsvol[0, :3]
array([1. , 0.51071, 0.04397])
write the image plane to file
obsvol.slice(0).tofile('_test_slice.bin')
write a full 3D PSF volume to file
obsvol.volume().tofile('_test_volume.bin')
Refer to psf_example.py in the source distribution for more examples.