This interview explores the real-world challenges and opportunities surrounding the use of artificial intelligence in healthcare, particularly in rare disease detection and clinical decision-making.
Christopher Rudolf, founder and CEO of Volv Global, discusses why expectations around AI need to be grounded in the realities of poor-quality healthcare data, regulatory hurdles, and the complexity of diagnosing under-recognized conditions.
A central theme of the conversation is the gap between the promise of AI and what current datasets can realistically support. Rudolf highlights that rare diseases often take seven to ten years to diagnose, leaving large portions of patient journeys undocumented or incorrectly labelled. Feeding this flawed data into large language models leads to inaccurate outputs magnifying existing clinical errors rather than solving them.
Rudolf explains that meaningful progress is possible only when systems generate new and clean knowledge rather than relying on historical records. Volv Global’s work focuses on identifying undiagnosed patients earlier, analysing differences between diagnosed and undiagnosed groups, and improving model reliability using population-scale data across multiple countries.
The interview also examines digital twins, synthetic control arms, and the limitations of using virtual patient records for conditions with small or highly diverse populations. Regulatory pressures especially the upcoming European AI Act pose another major challenge, potentially slowing innovation due to increased compliance requirements and limited regulatory capacity.
Overall, the discussion emphasizes cautious optimism. AI has the potential to significantly benefit healthcare, but its impact will unfold gradually. System-level constraints, data quality issues, and infrastructure challenges must be addressed before AI can deliver its full value.
Interview: AI in Healthcare – Expectations vs Reality
Why did you choose to work in the areas of AI and rare diseases?
I saw a need to help clinicians with the care gaps that occur because of rare diseases. On average, it takes seven years to diagnose a rare disease. I’ve even met people who’ve been undiagnosed for 28 years. So that’s a massive care gap that means people become very ill before getting treatment, or else they’re misdiagnosed. Either way, it costs our healthcare systems a lot of time and money.
So, I saw a big opportunity to do something with AI that addresses a gap that humans are not solving very well – as opposed to trying to improve what people do well already.
I started Volv Global to use machine learning to generate new knowledge that can help us bridge these gaps by leveraging population-scale data. But at Volv Global, we also look at more common diseases with care gaps. For instance, a conservative estimate is that 10% of all women have endometriosis and it’s typically diagnosed seven to ten years too late.
How much change will AI bring to healthcare in the coming years?
There’s a lot of hype around AI and large language models (LLMs) such as ChatGPT. And this is a problem because people have unrealistic expectations. There are a lot of ideas and promises about integrating data and healthcare systems, for example. But that’s not going to happen for another 10 to 20 years. So, I don’t think it’s going to be as game-changing as people are promising, at least not in the immediate future.