CPT: Pharmacometrics & Systems Pharmacology (May 2024)

Deep‐NCA: A deep learning methodology for performing noncompartmental analysis of pharmacokinetic data

  • Gengbo Liu,
  • Logan Brooks,
  • John Canty,
  • Dan Lu,
  • Jin Y. Jin,
  • James Lu

DOI
https://doi.org/10.1002/psp4.13124
Journal volume & issue
Vol. 13, no. 5
pp. 870 – 879

Abstract

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Abstract Noncompartmental analysis (NCA) is a model‐independent approach for assessing pharmacokinetics (PKs). Although the existing NCA algorithms are very well‐established and widely utilized, they suffer from low accuracies in the setting of sparse PK samples. In response, we developed Deep‐NCA, a deep learning (DL) model to improve the prediction of key noncompartmental PK parameters. Our methodology utilizes synthetic PK data for model training and uses an innovative patient‐specific normalization method for data preprocessing. Deep‐NCA demonstrated adequate performance across six previously unseen simulated drugs under multiple dosing, showcasing effective generalization. Compared to traditional NCA, Deep‐NCA exhibited superior performance for sparse PK data. This study advances the application of DL to PK studies and introduces an effective method for handling sparse PK data. With further validation and refinement, Deep‐NCA could significantly enhance the efficiency of drug development by providing more accurate NCA estimates while requiring fewer PK samples.