Using Supervised Learning Methods to Develop a List of Prescription Medications of Greatest Concern during Pregnancy

Matern Child Health J. 2020 Jul;24(7):901-910. doi: 10.1007/s10995-020-02942-2.

Abstract

Introduction: Women and healthcare providers lack adequate information on medication safety during pregnancy. While resources describing fetal risk are available, information is provided in multiple locations, often with subjective assessments of available data. We developed a list of medications of greatest concern during pregnancy to help healthcare providers counsel reproductive-aged and pregnant women.

Methods: Prescription drug labels submitted to the U.S. Food and Drug Administration with information in the Teratogen Information System (TERIS) and/or Drugs in Pregnancy and Lactation by Briggs & Freeman were included (N = 1,186 medications; 766 from three data sources, 420 from two). We used two supervised learning methods ('support vector machine' and 'sentiment analysis') to create prediction models based on narrative descriptions of fetal risk. Two models were created per data source. Our final list included medications categorized as 'high' risk in at least four of six models (if three data sources) or three of four models (if two data sources).

Results: We classified 80 prescription medications as being of greatest concern during pregnancy; over half were antineoplastic agents (n = 24), angiotensin converting enzyme inhibitors (n = 10), angiotensin II receptor antagonists (n = 8), and anticonvulsants (n = 7).

Discussion: This evidence-based list could be a useful tool for healthcare providers counseling reproductive-aged and pregnant women about medication use during pregnancy. However, providers and patients may find it helpful to weigh the risks and benefits of any pharmacologic treatment for both pregnant women and the fetus when managing medical conditions before and during pregnancy.

Keywords: Birth defects; Congenital malformations; Medication; Pregnancy; Teratogen; Teratology.

MeSH terms

  • Adult
  • Databases, Pharmaceutical / statistics & numerical data
  • Drug Labeling / methods
  • Female
  • Humans
  • Practice Patterns, Physicians' / standards
  • Practice Patterns, Physicians' / statistics & numerical data
  • Pregnancy
  • Pregnancy Complications / etiology*
  • Pregnancy Complications / prevention & control
  • Prescription Drugs / adverse effects*
  • Prescription Drugs / therapeutic use*
  • Supervised Machine Learning / trends*

Substances

  • Prescription Drugs