Advancing ethical AI in healthcare through interpretability
Yilin Ning, Mingxuan Liu, Nan Liu
Patterns (N Y). 2025 Jun 13;6(6):101290. doi: 10.1016/j.patter.2025.101290.
Abstract
Interpretability is essential for building trust in health artificial intelligence (AI), but ensuring trustworthiness requires addressing broader ethical concerns, such as fairness, privacy, and reliability. This opinion article discusses the multilayered role of interpretability and transparency in addressing these concerns by highlighting their fundamental contribution to the responsible adoption and regulation of health AI.