Imagine a world where drug safety isn’t just about responding to problems after they occur, but it’s about predicting and preventing them before patients are at risk. For decades, traditional pharmacovigilance (PV) has functioned like a fire alarm system: it activates only once the smoke appears. Adverse drug reactions (ADRs) are collected through Individual Case…
For years, the pharmaceutical industry has followed a familiar cycle: design a clinical trial, execute it, lock the database, analyze the results, and then wait for the next study to answer remaining questions. Wait for post-market surveillance to show real-world outcomes. Wait for regulators or payers to request more data before approving reimbursement. However, this…
The pharmaceutical industry is currently at a pivotal moment in the AI landscape. After years of cautious AI experimentation limited to isolated labs and pilot programs, something fundamentally different is unfolding in 2026. The central question has shifted from “Does AI work?” to “How do we deploy it safely and at scale?” especially in organizations…
If Prediction #1 marked AI’s move into the core of life sciences operations, Prediction #2 defines how that AI will operate: not as passive copilots, but as agentic systems that reason, plan, and execute work autonomously. In CapeStart & MadeAi’s 2026 Predictions for AI in Life Sciences webinar, Angeline Dhas, Head of Product Management for…

