NeuroKit2
Overview
NeuroKit2 is a comprehensive Python toolkit for processing and analyzing physiological signals (biosignals). Use this skill to process cardiovascular, neural, autonomic, respiratory, and muscular signals for psychophysiology research, clinical applications, and human-computer interaction studies.
When to Use This Skill
Apply this skill when working with:
- Cardiac signals: ECG, PPG, heart rate variability (HRV), pulse analysis
- Brain signals: EEG frequency bands, microstates, complexity, source localization
- Autonomic signals: Electrodermal activity (EDA/GSR), skin conductance responses (SCR)
- Respiratory signals: Breathing rate, respiratory variability (RRV), volume per time
- Muscular signals: EMG amplitude, muscle activation detection
- Eye tracking: EOG, blink detection and analysis
- Multi-modal integration: Processing multiple physiological signals simultaneously
- Complexity analysis: Entropy measures, fractal dimensions, nonlinear dynamics
Core Capabilities
1. Cardiac Signal Processing (ECG/PPG)
Process electrocardiogram and photoplethysmography signals for cardiovascular analysis. See references/ecg_cardiac.md for detailed workflows.
Primary workflows:
- ECG processing pipeline: cleaning → R-peak detection → delineation → quality assessment
- HRV analysis across time, frequency, and nonlinear domains
- PPG pulse analysis and quality assessment
- ECG-derived respiration extraction
Key functions:
import neurokit2 as nk # Complete ECG processing pipeline signals, info = nk.ecg_process(ecg_signal, sampling_rate=1000) # Analyze ECG data (event-related or interval-related) analysis = nk.ecg_analyze(signals, sampling_rate=1000) # Comprehensive HRV analysis hrv = nk.hrv(peaks, sampling_rate=1000) # Time, frequency, nonlinear domains
2. Heart Rate Variability Analysis
Compute comprehensive HRV metrics from cardiac signals. See references/hrv.md for all indices and domain-specific analysis.
Supported domains:
- Time domain: SDNN, RMSSD, pNN50, SDSD, and derived metrics
- Frequency domain: ULF, VLF, LF, HF, VHF power and ratios
- Nonlinear domain: Poincaré plot (SD1/SD2), entropy measures, fractal dimensions
- Specialized: Respiratory sinus arrhythmia (RSA), recurrence quantification analysis (RQA)
Key functions:
# All HRV indices at once hrv_indices = nk.hrv(peaks, sampling_rate=1000) # Domain-specific analysis hrv_time = nk.hrv_time(peaks) hrv_freq = nk.hrv_frequency(peaks, sampling_rate=1000) hrv_nonlinear = nk.hrv_nonlinear(peaks, sampling_rate=1000) hrv_rsa = nk.hrv_rsa(peaks, rsp_signal, sampling_rate=1000)
3. Brain Signal Analysis (EEG)
Analyze electroencephalography signals for frequency power, complexity, and microstate patterns. See references/eeg.md for detailed workflows and MNE integration.
Primary capabilities:
- Frequency band power analysis (Delta, Theta, Alpha, Beta, Gamma)
- Channel quality assessment and re-referencing
- Source localization (sLORETA, MNE)
- Microstate segmentation and transition dynamics
- Global field power and dissimilarity measures
Key functions:
# Power analysis across frequency bands power = nk.eeg_power(eeg_data, sampling_rate=250, channels=['Fz', 'Cz', 'Pz']) # Microstate analysis microstates = nk.microstates_segment(eeg_data, n_microstates=4, method='kmod') static = nk.microstates_static(microstates) dynamic = nk.microstates_dynamic(microstates)
4. Electrodermal Activity (EDA)
Process skin conductance signals for autonomic nervous system assessment. See references/eda.md for detailed workflows.
Primary workflows:
- Signal decomposition into tonic and phasic components
- Skin conductance response (SCR) detection and analysis
- Sympathetic nervous system index calculation
- Autocorrelation and changepoint detection
Key functions:
# Complete EDA processing signals, info = nk.eda_process(eda_signal, sampling_rate=100) # Analyze EDA data analysis = nk.eda_analyze(signals, sampling_rate=100) # Sympathetic nervous system activity sympathetic = nk.eda_sympathetic(signals, sampling_rate=100)
5. Respiratory Signal Processing (RSP)
Analyze breathing patterns and respiratory variability. See references/rsp.md for detailed workflows.
Primary capabilities:
- Respiratory rate calculation and variability analysis
- Breathing amplitude and symmetry assessment
- Respiratory volume per time (fMRI applications)
- Respiratory amplitude variability (RAV)
Key functions:
# Complete RSP processing signals, info = nk.rsp_process(rsp_signal, sampling_rate=100) # Respiratory rate variability rrv = nk.rsp_rrv(signals, sampling_rate=100) # Respiratory volume per time rvt = nk.rsp_rvt(signals, sampling_rate=100)
6. Electromyography (EMG)
Process muscle activity signals for activation detection and amplitude analysis. See references/emg.md for workflows.
Key functions:
# Complete EMG processing signals, info = nk.emg_process(emg_signal, sampling_rate=1000) # Muscle activation detection activation = nk.emg_activation(signals, sampling_rate=1000, method='threshold')
7. Electrooculography (EOG)
Analyze eye movement and blink patterns. See references/eog.md for workflows.
Key functions:
# Complete EOG processing signals, info = nk.eog_process(eog_signal, sampling_rate=500) # Extract blink features features = nk.eog_features(signals, sampling_rate=500)
8. General Signal Processing
Apply filtering, decomposition, and transformation operations to any signal. See references/signal_processing.md for comprehensive utilities.
Key operations:
- Filtering (lowpass, highpass, bandpass, bandstop)
- Decomposition (EMD, SSA, wavelet)
- Peak detection and correction
- Power spectral density estimation
- Signal interpolation and resampling
- Autocorrelation and synchrony analysis
Key functions:
# Filtering filtered = nk.signal_filter(signal, sampling_rate=1000, lowcut=0.5, highcut=40) # Peak detection peaks = nk.signal_findpeaks(signal) # Power spectral density psd = nk.signal_psd(signal, sampling_rate=1000)
9. Complexity and Entropy Analysis
Compute nonlinear dynamics, fractal dimensions, and information-theoretic measures. See references/complexity.md for all available metrics.
Available measures:
- Entropy: Shannon, approximate, sample, permutation, spectral, fuzzy, multiscale
- Fractal dimensions: Katz, Higuchi, Petrosian, Sevcik, correlation dimension
- Nonlinear dynamics: Lyapunov exponents, Lempel-Ziv complexity, recurrence quantification
- DFA: Detrended fluctuation analysis, multifractal DFA
- Information theory: Fisher information, mutual information
Key functions:
# Multiple complexity metrics at once complexity_indices = nk.complexity(signal, sampling_rate=1000) # Specific measures apen = nk.entropy_approximate(signal) dfa = nk.fractal_dfa(signal) lyap = nk.complexity_lyapunov(signal, sampling_rate=1000)
10. Event-Related Analysis
Create epochs around stimulus events and analyze physiological responses. See references/epochs_events.md for workflows.
Primary capabilities:
- Epoch creation from event markers
- Event-related averaging and visualization
- Baseline correction options
- Grand average computation with confidence intervals
Key functions:
# Find events in signal events = nk.events_find(trigger_signal, threshold=0.5) # Create epochs around events epochs = nk.epochs_create(signals, events, sampling_rate=1000, epochs_start=-0.5, epochs_end=2.0) # Average across epochs grand_average = nk.epochs_average(epochs)
11. Multi-Signal Integration
Process multiple physiological signals simultaneously with unified output. See references/bio_module.md for integration workflows.
Key functions:
# Process multiple signals at once bio_signals, bio_info = nk.bio_process( ecg=ecg_signal, rsp=rsp_signal, eda=eda_signal, emg=emg_signal, sampling_rate=1000 ) # Analyze all processed signals bio_analysis = nk.bio_analyze(bio_signals, sampling_rate=1000)
Analysis Modes
NeuroKit2 automatically selects between two analysis modes based on data duration:
Event-related analysis (< 10 seconds):
- Analyzes stimulus-locked responses
- Epoch-based segmentation
- Suitable for experimental paradigms with discrete trials
Interval-related analysis (≥ 10 seconds):
- Characterizes physiological patterns over extended periods
- Resting state or continuous activities
- Suitable for baseline measurements and long-term monitoring
Most *_analyze() functions automatically choose the appropriate mode.
Installation
uv pip install neurokit2
For development version:
uv pip install https://github.com/neuropsychology/NeuroKit/zipball/dev
Common Workflows
Quick Start: ECG Analysis
import neurokit2 as nk # Load example data ecg = nk.ecg_simulate(duration=60, sampling_rate=1000) # Process ECG signals, info = nk.ecg_process(ecg, sampling_rate=1000) # Analyze HRV hrv = nk.hrv(info['ECG_R_Peaks'], sampling_rate=1000) # Visualize nk.ecg_plot(signals, info)
Multi-Modal Analysis
# Process multiple signals bio_signals, bio_info = nk.bio_process( ecg=ecg_signal, rsp=rsp_signal, eda=eda_signal, sampling_rate=1000 ) # Analyze all signals results = nk.bio_analyze(bio_signals, sampling_rate=1000)
Event-Related Potential
# Find events events = nk.events_find(trigger_channel, threshold=0.5) # Create epochs epochs = nk.epochs_create(processed_signals, events, sampling_rate=1000, epochs_start=-0.5, epochs_end=2.0) # Event-related analysis for each signal type ecg_epochs = nk.ecg_eventrelated(epochs) eda_epochs = nk.eda_eventrelated(epochs)
References
This skill includes comprehensive reference documentation organized by signal type and analysis method:
- ecg_cardiac.md: ECG/PPG processing, R-peak detection, delineation, quality assessment
- hrv.md: Heart rate variability indices across all domains
- eeg.md: EEG analysis, frequency bands, microstates, source localization
- eda.md: Electrodermal activity processing and SCR analysis
- rsp.md: Respiratory signal processing and variability
- ppg.md: Photoplethysmography signal analysis
- emg.md: Electromyography processing and activation detection
- eog.md: Electrooculography and blink analysis
- signal_processing.md: General signal utilities and transformations
- complexity.md: Entropy, fractal, and nonlinear measures
- epochs_events.md: Event-related analysis and epoch creation
- bio_module.md: Multi-signal integration workflows
Load specific reference files as needed using the Read tool to access detailed function documentation and parameters.
Additional Resources
- Official Documentation: https://neuropsychology.github.io/NeuroKit/
- GitHub Repository: https://github.com/neuropsychology/NeuroKit
- Publication: Makowski et al. (2021). NeuroKit2: A Python toolbox for neurophysiological signal processing. Behavior Research Methods. https://doi.org/10.3758/s13428-020-01516-y