Conformal Risk Control for Pulmonary Nodule Detection

01 Oct 2025·
Roel Hulsman
Roel Hulsman
,
Valentin Comte
,
Lorenzo Bertolini
,
Tobias Wiesenthal
,
Antonio Puertas Gallardo
,
Mario Ceresa
· 0 min read
Figure 2
Abstract
Quantitative tools are increasingly appealing for decision support in healthcare, driven by the growing capabilities of advanced AI systems. However, understanding the predictive uncertainties surrounding a tool’s output is crucial for decision-makers to ensure reliable and transparent decisions. In this paper, we present a case study on pulmonary nodule detection for lung cancer screening, enhancing an advanced detection model with an uncertainty quantification technique called conformal risk control (CRC). We demonstrate that prediction sets with conformal guarantees are attractive measures of predictive uncertainty in the safety-critical healthcare domain, allowing end-users to achieve arbitrary validity by trading off false positives and providing formal statistical guarantees on model performance. Among ground-truth nodules annotated by at least three radiologists, our model achieves a sensitivity that is competitive with that generally achieved by individual radiologists, with a slight increase in false positives. Furthermore, we illustrate the risks of using off-the-shelve prediction models when faced with ontological uncertainty, such as when radiologists disagree on what constitutes the ground truth on pulmonary nodules.
Type
Publication
In Proceedings of the 14th Symposium on Conformal and Probabilistic Prediction with Applications, volume 266, pp. 445-463. PMLR
publications
Roel Hulsman
Authors
PhD Candidate in Causal Machine Learning

I am a second-year PhD candidate in causal machine learning at the Amsterdam Machine Learning Lab (AMLab), supervised by Sara Magliacane and Herke van Hoof. My PhD is funded by Adyen, a global financial technology company, where I spent a minor portion of my time. My research primarily focuses on causal methods for (nonstationary) time series, although I find myself broadly interested in the intersection of machine learning, statistics and econometrics, with a hint of philosophy.

I graduated with distinction from the University of Oxford with a MSc in Statisticial Science. While at Oxford, I was fortunate to be supervised by Rob Cornish and Arnaud Doucet for my dissertation on the mathematical guarantees of conformal prediction. I also graduated from the University of Groningen with a BSc in Econometrics and Operations Research and a BA in Philosophy of a Specific Discipline (in my case the social sciences), both cum laude.

Before starting my PhD, I spent a short period at ASML as a data analyst for business intelligence, where I optimised business processes for the manufacturing of lithography systems. Afterwards, I moved to a role in AI for healthcare at the Joint Research Centre (JRC) in Italy, an independent research institute of the European Commission. There, I mainly worked on conformal risk control for pulmonary nodule detection and knowledge graph construction using Large Language Models (LLMs).