Scientific Output – Lifespan AI

As of May 2026

Journal Articles

  1. Bang CW, Witte J, Foraita R, Didelez V. Improving finite sample performance of causal discovery by exploiting temporal structure. Stat Methods Med Res. 2026. → Link
  2. Langbein SH, Krzyziński M, Spytek M, Baniecki H, Biecek P, Wright MN. Interpretable Machine Learning for Survival Analysis. Biom J. 2025;67(6):e70089. → Link
  3. Iqbal K, Intemann T, Börnhorst C, Zhang J, Aleksandrova K. Approaches for harmonization of biomarker data from multiple studies: a narrative methodological review. AJE Adv Res Epidemiol. 2025;1(1):uuaf005. → Link
  4. Andrews RM, Bang CW, Didelez V, Witte J, Foraita R. Software application profile: tpc and micd – R packages for causal discovery with incomplete cohort data. Int J Epidemiol. 2024;53(5):dyae113. 2024 → Link
  5. Foraita R, Witte J, Börnhorst C, Gwozdz W, Pala V, Lissner L, et al. A longitudinal causal graph analysis investigating modifiable risk factors and obesity in a European cohort of children and adolescents. Sci Rep. 2024;14:6822. → Link
  6. Didelez V. Invited commentary: Where do the causal DAGs come from?. Am J Epidemiol. 2024;193(8):1075–1078. → Link
  7. Spytek M, Krzyziński M, Langbein SH, Baniecki H, Wright MN, Biecek P. survex: an R package for explaining machine learning survival models. 2023Bioinformatics. 2023;39(12):btad723. → Link

Preprints

  1. Carmo AS, Abrunhosa Rodrigues L, Peralta AR, Fred ALN, Bentes C, Plácido da Silva H. SeFEF: A Seizure Forecasting Evaluation Framework. [Preprint]. arXiv:2510.11275. 2025. → Link

Book Chapters

  1. Börnhorst C, Wright MN, Didelez V. New analytical approaches to life course epidemiology. In: Lawlor DA, editor. A Life Course Approach to the Epidemiology of Chronic Diseases and Ageing. Oxford: Oxford University Press; 2025. → Link

Conference Papers

  1. Langbein SH, Baniecki H, Fumagalli F, Koenen N, Wright MN, Herbinger J. Functional Decomposition and Shapley Interactions for Interpreting Survival Models. In: Proceedings of the 43rd International Conference on Machine Learning (ICML 2026); Vancouver. [accepted; preprint] → Link
  2. Blesch K, Koenen N, Kapar J, Golchian P, Burk L, Loecher M, Wright MN. Conditional Feature Importance with Generative Modeling Using Adversarial Random Forests. In: Proceedings of the 39th AAAI Conference on Artificial Intelligence; Philadelphia. 2025;39(15):15596–15604. → Link
  3. Bang CW, Didelez V. Constraint-based causal discovery with tiered background knowledge and latent variables in single or overlapping datasets. In: Proceedings of the 4th Conference on Causal Learning and Reasoning (CLeaR 2025); Lausanne. 2025;275:1116–1146. → Link
  4. Controlled Large Scale Synthetic Motion Dataset Generation Leveraging Text-to-Motion and Sample-wise Quality Assurance. [Submitted; awaiting review]
  5. Langbein SH, Koenen N, Wright MN. Gradient-based Explanations for Deep Learning Survival Models. In: Proceedings of the 42nd International Conference on Machine Learning (ICML 2025); Vancouver. → Link
  6. Richardson A, Putze F. Motion Diffusion Autoencoders: Enabling Attribute Manipulation in Human Motion Demonstrated on Karate Techniques. In: Proceedings of the 27th International Conference on Multimodal Interaction (ICMI ’25); Canberra. → Link
  7. Richardson A, Beetz M, Schultz T, Putze F. CogniFuse and Multimodal Deformers: A Unified Approach for Benchmarking and Modeling Biosignal Fusion. In: 47th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC 2025). → Link
  8. Splittgerber T. ExLipBaB: Exact Lipschitz Constant Computation for Piecewise Linear Neural Networks. In: Proceedings of the 34th International Joint Conference on Artificial Intelligence (IJCAI 2026). [accepted; preprint] → Link
  9. Bergen L, Sejdinovic D, Didelez V. The Generalised Kernel Covariance Measure. In: Proceedings of the 5th Conference on Causal Learning and Reasoning (CLeaR 2026); Boston. → Link
  10. Micek C, Warnke L, Abrunhosa Rodrigues L, Putze F, Solovey E. Capturing Team Cognition: A Multimodal Dataset for Adaptive Collaborative Interfaces. In: Proceedings of the 2026 CHI Conference on Human Factors in Computing Systems; Barcelona. → Link
  11. Brauße E, Koenen N, Wright MN, Schultz T. Explaining Multimodal Features for Screening of Cognitive Impairment Using Shapley Values. In: 47th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC 2025). → Link
  12. DeMention: A Modular System for Speech-Based Alzheimer’s Dementia Screening. In: Proceedings of the 8th ACM Conference on Conversational User Interfaces (CUI 2026). [conditionally accepted]

Invited & Public Talks

  1. Bang CW, Witte J, Foraita R, Didelez V. Improving causal discovery with temporal background knowledge. [Talk]. Seminar, Section of Biostatistics, University of Copenhagen; Copenhagen. 2023. → Link
  2. Bang CW, Witte J, Foraita R, Didelez V. Improving causal discovery for cohort data. [Talk]. Autumn Workshop on Causal Machine Learning; Mainz. 2023. → Link
  3. LifespanAI: Vitalwerte, Labor, Radiologie – KI zur Integration von Gesundheitsdaten und Biosignalen. [Talk]. Nacht der Biosignale; Bremen. 2024.
  4. Small Data: KI-Methoden für Health Data [Session]. AI in Health 2024 Symposium; Bremen.
  5. LifespanAI [Session]. AI in Health 2024 Symposium; Bremen.
  6. Bang CW, Witte J, Foraita R, Didelez V. Causal discovery with tiered background knowledge. [Talk]. Workshop on Causal Inference for Time Series (CI4TS) at UAI 2024; Barcelona. → Link
  7. Bergen L, Didelez V. Causal discovery methods for nonlinear mixed-type data: A simulation study. [Talk]. Applied Causal Graphs Workshop 2025; Berlin. 2025. → Link
  8. Bang CW, Witte J, Foraita R, Didelez V. Causal discovery with temporal background knowledge. [Talk]. Two-Day Meeting in Statistics; Copenhagen. 2025. → Link
  9. Bang CW, Witte J, Foraita R, Didelez V. Causal discovery with tiered background knowledge. [Talk]. Workshop on Causal Identification and Discovery, Isaac Newton Institute; Cambridge. → Link
  10. Bergen L, Didelez V. Causal Discovery on Cohort Data with Latent Confounding using Kernel-Based CI Tests [Talk]. Applied Causal Graphs Workshop 2026; Potsdam. 2026. → Link