PyDapsys is a package to read neurography recordings made with DAPSYS (Data Acquisition Processor System). It is based on a reverse-engineered specification of the binary data format used by the latest DAPSYS version.
Optionally, the library provides functionality to store loaded data into Neo datastructures, from where they can be exported into various other formats.
Either download the wheel file for offline installation or use pypi.
Will only offer the data representation of PyDapsys, without ability to convert to Neo. Has only numpy as sole dependency.
pip install pydapsys
pip install {name_of_downloaded_wheel}.whl
Install base library with additional dependencies required to load data into Neo datastructures. Writing Neo datastructures to some formats may require additional dependencies. Please see the Neo documentation for further information.
pip install pydapsys[neo]
pip install {name_of_downloaded_wheel}.whl[neo]
A DAPSYS file is made up of two parts: A sequential list of blocks or pages, which store either a text with a timestamp or a waveform with associated timestamps, and a table of contents (toc). The toc consists of folders and streams. Each page has an id unique in the context of the file. Streams in the toc have an array of ids of the pages belonging to the stream. A stream is either a text stream (referring only to text pages) or a data stream (referring only to recording pages).
Use File.from_binary
to read from a BinaryIO object.
from pydapsys import read_file
from pathlib import Path
MY_DAPSYS_FILE = Path(".")/"to"/"my"/"dapsys_file.dps"
with open(MY_DAPSYS_FILE, 'rb') as file:
file = read_file(file)
The File
object has two fields, the root of the table of contents and a dictionary mapping the page ids to their respective pages.
To inspect the ToC structure of a loaded file, use the structure
property of the toc Root
, preferable together with pprint
:
import pprint
pprint.PrettyPrinter(indent=4).pprint(file.toc.structure)
This will print the structure, names and types of all elements in the table of contents. For Streams, the number of associated pages it also printed after their type.
To access data, use the File.get_data
method. The method takes a path from the toc structure (WITHOUT THE NAME OF THE ROOT!) and will return all associated pages.
Please note, that the path is case insensitive
from pydapsys.toc import StreamType
my_texts = list(file.get_data("myrecording/my text stream", stype=StreamType.Text))
my_waveforms = list(file.get_data("myrecording/somewhere else/ my waveform stream", stype=StreamType.Waveform))
A text page consists of three fields:
-
text
: The text stored in the page, string -
timestamp_a
: The first timestamp of the page, float64 (seconds) -
timestamp_b
: The second timestamp of the page (float64, seconds), which sometimes is not presented and is thus set to None
Waveform pages consist of three fields:
-
values
: Values of the waveform, float32 (volt) -
timestamps
: Timestamps corresponding tovalues
, float64 (seconds) -
interval
: Interval between values, float64 (seconds)
In continuously sampled waveforms, only the timestamp of the first value will be present, in addition to the sampling interval
. The timestamps of the other values can be calculated by this two values.
Irregularly sampled waveforms will have one timestamp for each value, but no interval
.
The module pydapsys.neo_convert
contains classes to convert a Dapsys recording to the Neo format. IMPORTANT: importing the module without installing neo first will raise an exception
As Dapsys files may have different structures, depending on how it was configured and what hardware is used, different converters are required for each file structure.
Currently there is only one converter available, for recordings made using a NI Pulse stimulator.
Converter class for Dapsys recording created using an NI Pulse stimulator. Puts everything into one neo sequence.
Waveform pages of the continuous recording are merged if the difference between a pair of consecutive pages is less than a specified threshold (grouping_tolerance
).
from pydapsys.neo_converters import NIPulseStimRecordingConverter
# convert a recording to a neo block
neo_block = NIPulseStimRecordingConverter(file, grouping_tolerance=1e-9).to_neo()
{stim_folder} must be one of "NI Puls Stimulator", "pulse stimulator", "NI Pulse stimulator", but can be changed by adding entries to NIPulseStimulatorToNeo.stim_foler_names
-
Root
-
[Text] Comments -> Converted into a single event called "comments"
-
{stim_folder}
-
[Text] Pulses -> Converted into one neo event streams, one per unique text
-
[Waveform] Continuous recording -> Converted into multiple AnalogSignals
-
Responses
-
Tracks for All Responses -> Optional. Will silently ignore spike trains if this folder does not exist
- ... [Text] tracks... -> Converted into spike trains
-
-
-
(for details see the CITATION.cff) If you refer to this project in an article, we would appreciate it if you cited the publication "PyDapsys: an open-source library for accessing electrophysiology data recorded with DAPSYS" (doi:10.3389/fninf.2023.1250260) published in Frontiers in Neuroinformatics Vol. 17.
If you actively used the library to gain results in your publication, it might also make sense for you to cite the specific release via the Zenodo archive. On the right side, you will see an individual DOI listed for each version released since v0.2.1. Just pick the DOI matching your version. Alternatively, you can also cite all versions of this library.