Applications of Advanced Natural Language Processing for Clinical Pharmacology.
Joy C HsuMichael WuChloe KimBianca VoraYi Ting Kayla LienAshutosh JindalKenta YoshidaSonoko KawakatsuJeremy GoreJin Yan JinChristina LuBingyuan ChenBenjamin WuPublished in: Clinical pharmacology and therapeutics (2024)
Natural language processing (NLP) is a branch of artificial intelligence, which combines computational linguistics, machine learning, and deep learning models to process human language. Although there is a surge in NLP usage across various industries in recent years, NLP has not been widely evaluated and utilized to support drug development. To demonstrate how advanced NLP can expedite the extraction and analyses of information to help address clinical pharmacology questions, inform clinical trial designs, and support drug development, three use cases are described in this article: (1) dose optimization strategy in oncology, (2) common covariates on pharmacokinetic (PK) parameters in oncology, and (3) physiologically-based PK (PBPK) analyses for regulatory review and product label. The NLP workflow includes (1) preparation of source files, (2) NLP model building, and (3) automation of data extraction. The Clinical Pharmacology and Biopharmaceutics Summary Basis of Approval (SBA) documents, US package inserts (USPI), and approval letters from the US Food and Drug Administration (FDA) were used as our source data. As demonstrated in the three example use cases, advanced NLP can expedite the extraction and analyses of large amounts of information from regulatory review documents to help address important clinical pharmacology questions. Although this has not been adopted widely, integrating advanced NLP into the clinical pharmacology workflow can increase efficiency in extracting impactful information to advance drug development.
Keyphrases
- artificial intelligence
- machine learning
- deep learning
- clinical trial
- big data
- autism spectrum disorder
- electronic health record
- drug administration
- transcription factor
- palliative care
- endothelial cells
- healthcare
- risk assessment
- placebo controlled
- human health
- induced pluripotent stem cells
- convolutional neural network