pkrshiny: Streamlined Non-Compartmental Analysis

★ ★ ★ ★ ★ | 1 reviews | 9 users

Last accessed Nov 22, 2024
Author Kyun-Seop Bae University of Ulsan

About the app

pkrshiny is a specialized application designed for non-compartmental analysis in pharmacokinetics, built upon the robust R package known as pkr. Non-compartmental analysis in pharmacokinetics involves evaluating the behavior of drugs in the body without making assumptions about specific compartments. This application, pkrshiny, offers a comprehensive suite of functionalities, enabling users to preview initial data, conduct non-compartmental analysis, visualize results in plots, and generate reports. In addition to its user-friendly features, pkrshiny provides extensive help documentation to assist users in navigating and maximizing the application's capabilities. With built-in datasets and the flexibility to upload custom datasets, pkrshiny accommodates diverse analytical needs. Notably, the application delivers results with remarkable speed, ensuring efficiency in the pharmacokinetic analysis process.

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Safety starts with understanding how developers collect and share your data. Data privacy and security practices may vary based on your use, region, and age. The developer provided this information and may update it over time.

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