Post-marketing surveillance of anticancer drugs using natural language processing of electronic medical records

This study demonstrates that adverse events (AEs) extracted using natural language processing (NLP) from clinical texts reflect the known frequencies of AEs associated with anticancer drugs. Using data from 44,502 cancer patients at a single hospital, we identified cases prescribed anticancer drugs...

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Veröffentlicht in:NPJ digital medicine 2024-11, Vol.7 (1), p.315-19, Article 315
Hauptverfasser: Kawazoe, Yoshimasa, Shimamoto, Kiminori, Seki, Tomohisa, Tsuchiya, Masami, Shinohara, Emiko, Yada, Shuntaro, Wakamiya, Shoko, Imai, Shungo, Hori, Satoko, Aramaki, Eiji
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Sprache:eng
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Zusammenfassung:This study demonstrates that adverse events (AEs) extracted using natural language processing (NLP) from clinical texts reflect the known frequencies of AEs associated with anticancer drugs. Using data from 44,502 cancer patients at a single hospital, we identified cases prescribed anticancer drugs (platinum, PLT; taxane, TAX; pyrimidine, PYA) and compared them to non-treatment (NTx) group using propensity score matching. Over 365 days, AEs (peripheral neuropathy, PN; oral mucositis, OM; taste abnormality, TA; appetite loss, AL) were extracted from clinical text using an NLP tool. The hazard ratios (HRs) for the anticancer drugs were: PN, 1.15–1.95; OM, 3.11–3.85; TA, 3.48-4.71; and AL, 1.98–3.84; the HRs were significantly higher than that of the NTx group. Sensitivity analysis revealed that the HR for TA may have been underestimated; however, the remaining three types of AEs extracted from clinical text by NLP were consistently associated with the three anticancer drugs.
ISSN:2398-6352
2398-6352
DOI:10.1038/s41746-024-01323-1