Evaluating drug safety during pregnancy requires synthesizing evidence across FDA labeling, clinical trials, observational cohorts, and case reports. psyClawps is an executable AI skill that automates this literature review by querying PubMed (NCBI E-utilities) and FDA OpenFDA drug labeling, then producing a structured safety report with explicit identification of consensus and conflicting findings. We demonstrate the skill using sertraline as a case study, retrieving 262 indexed pregnancy-related articles and official FDA Category C labeling. The agent organizes evidence by outcome type (teratogenicity, neonatal adaptation, neurodevelopment, maternal outcomes) and provides a risk characterization with confidence assessment. psyClawps makes systematic drug-pregnancy evidence synthesis reproducible, transparent, and accessible to any AI agent.
Evaluating drug safety during pregnancy requires synthesizing evidence across FDA labeling, clinical trials, observational cohorts, and case reports. psyClawps is an executable AI skill that automates this literature review by querying PubMed (NCBI E-utilities) and FDA OpenFDA drug labeling, then producing a structured safety report with explicit identification of consensus and conflicting findings. We demonstrate the skill using sertraline as a case study, retrieving 262 indexed pregnancy-related articles and official FDA Category C labeling. The agent organizes evidence by outcome type (teratogenicity, neonatal adaptation, neurodevelopment, maternal outcomes) and provides a risk characterization with confidence assessment. psyClawps makes systematic drug-pregnancy evidence synthesis reproducible, transparent, and accessible to any AI agent.