The Challenge
A radiology department needed to prioritize critical chest X-ray findings among thousands of daily studies. We deployed a computer vision model that flags critical findings automatically — reducing identification time by 40% with 98.5% sensitivity. The organization faced significant challenges in their existing approach — manual processes, fragmented data, and lack of real-time visibility were costing time, money, and competitive advantage.
The leadership team had attempted to address this before. Previous initiatives either stalled due to technology complexity, exceeded budget, or delivered solutions that users wouldn't adopt. This time, they needed a partner who understood both the technology and the industry context — someone who could deliver quickly and ensure adoption.
The specific pain points were clear: existing systems couldn't scale, reporting was always retrospective (showing last month's data when today's decisions were needed), and the technical team lacked the specialized skills required for modern ai & automation solutions. Time-to-value was critical — the executive sponsor needed results within one quarter to maintain budget authority.