概要
This skill equips Claude with deep methodological knowledge for performing Matching-Adjusted Indirect Comparisons (MAIC) according to the NICE DSU TSD 18 framework. It helps researchers and data scientists navigate the complexities of adjusting for population differences when comparing treatment effects across trials with disparate data types, such as Individual Patient Data (IPD) and Aggregate Data (AgD). The skill covers critical aspects including covariate selection, interpreting Effective Sample Size (ESS), diagnosing weight distributions, and deciding between anchored and unanchored approaches, ensuring rigorous and statistically sound indirect treatment comparisons.