Skip to main content

A toolkit for processing and analyzing physiological signals

Project description

FRENZ TOOLKIT

The Frenz Streaming Toolkit enables scientists to stream data from the Frenz Brainband to their laptop or PC, facilitating the development of custom applications. It provides access to distinct brain signals, offering a valuable alternative to PSG, the gold standard in brain signal recording. [1].

NOTE: you can see some example programs here: https://github.com/earable/frenz_toolkit_example

I. Getting started

You can install the Frenz Streaming Toolkit on your PC using pip:

pip install frenztoolkit

Alternatively, you can download the package and build it from source.

Product Key Requirement

A valid product key is required to use the toolkit. Please contact our sales department to obtain your product key.

System Requirements

Before using the toolkit, ensure you have the following:

  • A Frenz Brainband
  • A laptop/desktop (MacOS) with Bluetooth and internet connectivity
  • A product key (contact Earable’s sales department if you don’t have one)
  • Python 3.9 environment:

Check if Python 3.9 is installed

python3.9 --version

Create new virtual environment

python3.9 -m venv vir_name

Environment activation:

macOS

source vir_name/bin/activate  

II. Connecting to Your Device

To connect your Frenz Brainband, you first need to identify its Bluetooth ID. The toolkit provides a Scanner utility to help you retrieve this ID.

Scanning for Available Devices

from frenztoolkit import Scanner

scanner = Scanner()
print(scanner.scan())

Example Output:

["DEVICE_1", "DEVICE_2", "DEVICE_3"]

This function returns a list of available Frenz Brainbands that are not currently connected to any phone or laptop.

III. Start your session

Once you have the band’s Bluetooth ID, you can start your session.

Refer to the following code snippets for guidance on how to:

  • Connect to a Frenz Brainband
  • Start a session
  • Access real-time data
  • Stop a session
import time
from frenztoolkit import Streamer

PRODUCT_KEY = "YOUR_PRODUCT_KEY" 
DEVICE_ID = "YOUR_BRAIN_BAND_BLUETOOTH_ID" # ex: FRENZG15

# START A SESSION
# Config your streamer
streamer = Streamer(
		device_id = DEVICE_ID, 
    product_key = PRODUCT_KEY,
    data_folder = "./" # The folder stored your session data when it be completed
    turn_off_light = True # Turn off the light on Frenz Band, default is True
)

# Start a session
streamer.start()


# ACCESS DATA
# When the session successfully started, 
# you can access the raw brain signals.
# This is a array shape [N, 6] where stored 
# data of 6 channels from the band with ordered
# LF, OTEL, REF1, RF, OTER, REF2; and the data are continuously (REF1, REF2 not use)
# added to the END of the array.
streamer.DATA["RAW"]["EEG"]

# You also can access to the filtered signals, which have
# applied power-line noise, proprirate band-pass filter to 
# remove noises from the signals. 
# The filtered signals are much better for humans to read directly.
# This is a array shape [4, N] where stored 
# unit: uV (micro Volt)
# channel: LF, OTEL, RF, OTER
# The data are continuously added to the END of the array.
streamer.DATA["FILTERED"]["EEG"]
streamer.DATA["FILTERED"]["EOG"]
streamer.DATA["FILTERED"]["EMG"]

# Similarly, you can access to the IMU signals, 
# which is recorded from the IMU sensor.
# The data have a shape of [M, 3], stored 3 channels of
# data accordingly: x, y, z; 
# where x, y, z: accelerometers
# The data are continuously added to the END of the array.
streamer.DATA["RAW"]["IMU"]

# You can access to the PPG signals:
# which have shape [K, 3], stored data of 3 channel:
# GREEN, RED, INFRARED
# The data are continuously added to the END of the array.
streamer.DATA["RAW"]["PPG"]

# You also can access to the calculated scores
# from our machine learning models:

# CURRENT STATES: you can access to the latest scores by:

# Session Start time:
# Time stamp
streamer.SCORES.get("start_time")

# Sleep stage 
# Calculated for every 30 seconds
# The data are continuously added to the END of the array. 
# value < 0: undefined, value = 0: awake, value = 1: light, value = 2: deep, value = 3: REM
streamer.SCORES.get("sleep_stage")

# POAS: probability of falling asleep
# Calculated for every 30 seconds
# Value: from 0-1
# The data are continuously added to the END of the array.
streamer.SCORES.get("poas")

# Posture
# Calculated for every 5 seconds
# The data are continuously added to the END of the array.
streamer.SCORES.get("posture")

# FOCUS
# Calculated for every 2 seconds
# Value: from 1-100
# The data are continuously added to the END of the array.
streamer.SCORES.get("focus_score")

# Signal quality
# Shape: (LF, OTEL, RF, OTER), calculated for every 5 seconds
# The data are continuously added to the END of the array.
# value 0 - not good; value 1 - good
streamer.SCORES.get("sqc_scores")

# Alpha Power
# Shape: (LF, OTEL, RF, OTER, AVG), calculated for every 2 seconds
# The data are continuously added to the END of the array.
# unit: dB (Decibel)
streamer.SCORES.get("alpha")
# Beta Power
# Shape: (LF, OTEL, RF, OTER, AVG), calculated for every 2 seconds
# The data are continuously added to the END of the array.
# unit: dB (Decibel)
streamer.SCORES.get("beta")

# Gamma Power
# Shape: (LF, OTEL, RF, OTER, AVG), calculated for every 2 seconds
# The data are continuously added to the END of the array.
# unit: dB (Decibel)
streamer.SCORES.get("gamma")

# Theta Power
# Shape: (LF, OTEL, RF, OTER, AVG), calculated for every 2 seconds
# The data are continuously added to the END of the array.
# unit: dB (Decibel)
streamer.SCORES.get("theta")

# Delta Power
# Shape: (LF, OTEL, RF, OTER, AVG), calculated for every 2 seconds
# The data are continuously added to the END of the array.
# unit: dB (Decibel)
streamer.SCORES.get("delta")

# HISTORICAL STATES: you also can access to the historical scores
# by adding `array__` to the scores 

# POAS: probability of falling asleep
# List of POAS
# Value: from 0-1
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__poas")

# Posture:
# List of posture
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__posture")

# Sleep stage
# List of Sleep Stage
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__sleep_stage")


# Signal quality
# List of Signal Quality
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__sqc_scores")

# FOCUS
# List of focus score
# Value: from 1-100
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__focus_score")

# Alpha Power
# List of alpha power
# unit: dB
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__alpha")

# beta Power
# List of beta power
# unit: dB
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__beta")

# Gamma Power
# List of gamma power
# unit: dB
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__gamma")

# Delta Power
# List of delta power
# unit: dB
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__delta")

# Theta Power
# List of theta power
# unit: dB
# The data are continuously added to the END of the array.
streamer.SCORES.get("array__theta")

# To be updated: We still have many more scores.

# STOP YOUR SESSION
# Limit your session by duration
try:
    while True:
       if streamer.session_dur > 10000:
        	streamer.stop()
        	break 
    	# YOUR CAN DO SOMETHING WITH THE REAL TIME STREAMING DATA HERE
       time.sleep(5)

except KeyboardInterrupt:
    print("Keyboard interrupt")
    streamer.stop()
except Exception as e:
    print(f"Error: {e}")
    streamer.stop()

# Or press [Ctrl+C] For Mac to quit the session.
# When the session stopped, raw signals and scores will be stored in the 
# data_folder folder.

RELEASE NOTES

Ver 0.2.6
Date: 06-02-25
Notes:

  • Improve Sleep Scoring

Reference

[1] Nguyen, A., Pogoncheff, G., Dong, B.X. et al. A comprehensive study on the efficacy of a wearable sleep aid device featuring closed-loop real-time acoustic stimulation. Sci Rep 13, 17515 (2023). https://doi.org/10.1038/s41598-023-43975-1

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distributions

If you're not sure about the file name format, learn more about wheel file names.

frenztoolkit-0.2.6-py3-none-macosx_11_0_arm64.whl (5.5 MB view details)

Uploaded Python 3macOS 11.0+ ARM64

frenztoolkit-0.2.6-py3-none-macosx_10_9_x86_64.whl (8.2 MB view details)

Uploaded Python 3macOS 10.9+ x86-64

File details

Details for the file frenztoolkit-0.2.6-py3-none-macosx_11_0_arm64.whl.

File metadata

File hashes

Hashes for frenztoolkit-0.2.6-py3-none-macosx_11_0_arm64.whl
Algorithm Hash digest
SHA256 105cdf153e2d93ff278ce831f1799ed2b8ea93f1fe00cb87a4e8322f39e6376d
MD5 13fe1fa1e112cb766bbe673b196a422c
BLAKE2b-256 29384a08c73341258a3e4cb3a95d11134fe0114e80735264ca22344d21c79dd8

See more details on using hashes here.

File details

Details for the file frenztoolkit-0.2.6-py3-none-macosx_10_9_x86_64.whl.

File metadata

File hashes

Hashes for frenztoolkit-0.2.6-py3-none-macosx_10_9_x86_64.whl
Algorithm Hash digest
SHA256 a22bd621fda138e7751cc6f3acd58e006bcaecfd4e15d48f03ca8b0b1d1880c1
MD5 e1dce286275e6bef9d42c135afe5a3b2
BLAKE2b-256 c439e0d1f98beedf506288042c9ffdb5be48f326c8b6e11152272ed8d0a0c096

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page