PKbioanalysis is a comprehensive R package designed
to streamline pharmacokinetic (PK) and bioanalytical workflows from
study design through data analysis and reporting. Built on regulatory
best practices and FAIR principles,
it provides an integrated solution for managing bioanalytical
experiments with persistent data storage, interactive visualizations,
and AI-assisted quality control.
โจ Key Features
๐ Study Management & Design
Comprehensive trial management system with
relational database architecture (DuckDB)
Study design tools for common PK studies such as
single-dose (SD), multiple-dose (MD), food-effect (FE), and
bioequivalence (BE) studies along with In Vitro studies support
Subject tracking with dosing schedules, sampling
timepoints, and metadata management
Sample log integration linking bioanalytical data
to study design
๐งช Bioanalytical Workflows
96-well plate design and visualization with
flexible filling schemes (horizontal/vertical)
Automated injection sequence generation compatible
with major LC-MS platforms
Vendor support: MassLynx, MassHunter, Analyst
Interactive chromatogram integration with manual
and automated peak detection
Quality control (QC) Assessment using
regulatory-compliant criteria
Suitability assessment for instrument equilibration
monitoring
Linearity evaluation with interactive visualization
and regulatory-compliant reporting
๐ Data Analysis & Export
Maximum likelihood estimation (MLE) of additive and
proportional errors
Interactive dilution scheme with automatic unit
conversion
PKmerge functionality to combine bioanalytical
results with study metadata
NONMEM-ready export with numeric recoding and
codebook generation
Precision and accuracy calculations per analytical
batch
๐ค AI Capabilities
AI-assisted chromatogram integration with automated
peak boundary detection
Intelligent quality assessment for linearity,
suitability, and study design
Conversational AI assistant for method
troubleshooting and data interpretation
Regulatory compliance checks with automated
flagging of potential issues
๐ฆ Installation
GUI-Only Installation
(No Coding Required)
PKbioanalysis provides modular Shiny applications for study
management (study_app()), chromatography processing
(chrom_app()), and quantification
(quant_app()). These run locally with persistent data
storage.
Windows Users
Download the installer and shortcuts from Google
Drive
Run install_PKbioanalysis.bat to install the
package
Use the desktop shortcuts:
study_app.bat - Study design and sample management
chrom_app.bat - Chromatogram integration
quant_app.bat - Quantification and linearity
R Package Installation
For users comfortable with R programming:
Stable Release (CRAN)
install.packages("PKbioanalysis")
Development Version (GitHub)
# Install remotes if neededinstall.packages("remotes")# Install PKbioanalysis from GitHubremotes::install_github("OmarAshkar/PKbioanalysis")
Optional: Python Dependencies
For advanced chromatography file parsing (Waters .raw
files):
PKbioanalysis::install_py_dep()
This creates a virtual environment with required Python packages
(pandas, rainbow-api, numpy,
scipy).
๐ Quick Start
library(PKbioanalysis)# Study design and managementstudy_app()# Chromatogram integrationchrom_app()# Quantification, linearity assessment, residual error estimation, and PK dataset generationquant_app()
๐ค AI Capabilities &
Configuration
PKbioanalysis integrates AI-powered quality assessment and decision
support throughout the bioanalytical workflow.
Supported AI Features
1. Automated
Chromatogram Integration
AI analyzes chromatographic traces to detect peak boundaries
Identifies retention time, peak start/end, and signal-to-noise
ratio
Flags problematic peaks with detailed comments
Validates peak shape and width according to analytical
standards
2. Linearity Assessment
Assistant
Reviews calibration curve statistics
Identifies outliers and recommends exclusions
Checks intercept significance and heteroscedasticity (recommends
weighting if needed)
Provides regulatory compliance feedback
3. Suitability
Evaluation
Analyzes instrument response stabilization across runs
Calculates equilibration time based on CV% trends
Flags experimental issues (insufficient replicates, high
variability)
4. Study Design
Review
Evaluates randomization, blocking, and control groups
Suggests improvements for sampling strategy
Assesses balance and potential confounding factors in the
design
5. Plate Design
Optimization
Reviews QC distribution and calibration curve coverage
Checks for appropriate controls (blanks, suitability samples)
Validates replicate strategy
6. Injection List
Quality Control
Analyzes run order and blank placement
Identifies potential carryover risks
Suggests optimization for batch structure
AI Configuration
PKbioanalysis uses OpenAI-compatible APIs (including
local models via Ollama or cloud providers).
Setup via GUI
Launch any app (study_app(), chrom_app(),
or quant_app())
Click the โ๏ธ Configure Settings button
Enter your configuration:
API Base URL:
https://api.openai.com/v1 or your local endpoint
API Key: Your OpenAI API key (or leave blank for
local models)
AI Model: Choose from supported models
Temperature: Control response randomness (0.0 =
deterministic, 1.0 = creative)
Setup Programmatically
# Update configurationPKbioanalysis::update_config(base_url ="https://api.openai.com/v1",api_key =Sys.getenv("OPENAI_API_KEY"), # Or set in .Renvironmodel ="gpt-4",temperature =0.5)# Refresh to apply changesPKbioanalysis::refresh_config()# Check current settingsPKbioanalysis::get_pkbioanalysis_option("ai_model")
Supported Models
The package supports any OpenAI-compatible model, including: -
OpenAI: gpt-4, gpt-3.5-turbo
- Open-source via Ollama/LM Studio:
llama-3.1-70b-instruct, mistral-7b-instruct,
codestral-22b - Cloud providers:
gemma-3-27b-it, granite-3.3-8b-instruct
Environment Variables
(Alternative Setup)
# In .Renviron fileOPENAI_API_KEY=your_api_key_here
Using Local Models
(Privacy-First)
For organizations requiring data privacy: 1. Install Ollama or LM
Studio 2. Download a model (e.g.,
ollama pull llama3.1:70b) 3. Configure PKbioanalysis:
update_config(base_url ="http://localhost:11434/v1", # Ollama defaultapi_key ="not-needed", # Local models don't need keysmodel ="llama3.1:70b")
AI Usage Tips
Higher temperature (0.7-1.0) for creative
suggestions and exploratory analysis
Lower temperature (0.0-0.3) for consistent,
deterministic quality checks
Larger models (70B parameters) for complex
regulatory assessments
Smaller models (7-8B parameters) for routine peak
integration and QC