TY - JOUR
T1 - Can Synthetic Data Allow for Smaller Sample Sizes in Chronic Urticaria Research?
AU - Gutsche, Annika
AU - Salameh, Pascale
AU - Jahandideh, Samad S.
AU - Roodsaz, Mehran
AU - Kutan, Serkan
AU - Salehzadeh-Yazdi, Ali
AU - Kocatürk, Emek
AU - Gregoriou, Stamatios
AU - Thomsen, Simon F.
AU - Kulthanan, Kanokvalai
AU - Tuchinda, Papapit
AU - Dissemond, Joachim
AU - Kasperska-Zajac, Alicja
AU - Zajac, Magdalena
AU - Zamłyński, Mateusz
AU - van Doorn, Martijn
AU - Parisi, Claudio A.S.
AU - Peter, Jonny G.
AU - Day, Cascia
AU - McDougall, Cathryn
AU - Makris, Michael
AU - Fomina, Daria
AU - Kovalkova, Elena
AU - Streliaev, Nikolai
AU - Andrenova, Gerelma
AU - Lebedkina, Marina
AU - Khoskhkui, Maryam
AU - Aliabadi, Mehraneh M.
AU - Bauer, Andrea
AU - Kiefer, Lea
AU - Muñoz, Melba
AU - Weller, Karsten
AU - Kolkhir, Pavel
AU - Metz, Martin
N1 - Publisher Copyright:
© 2025 The Author(s). Clinical and Translational Allergy published by John Wiley & Sons Ltd on behalf of European Academy of Allergy and Clinical Immunology.
PY - 2025/8
Y1 - 2025/8
N2 - Background: Robust data are essential for clinical and epidemiological research, yet in chronic spontaneous urticaria (CSU), certain patient groups, such as the elderly or comorbid patients, are often underrepresented. In clinical trials, strict inclusion and exclusion criteria frequently limit recruitment, making it difficult to achieve sufficient statistical power. Similarly, real-world observational studies may lack sufficient sample sizes for robust analysis. To address these limitations, we generated synthetic patient data that reflect these groups’ clinical characteristics and variability. This approach enables more comprehensive analyses, facilitates hypothesis testing in otherwise inaccessible populations, and supports the generation of evidence where traditional data sources are insufficient. Methods: A tree-based decision model was applied to generate synthetic data based on an existing set of real-world data (RWD) from the Chronic Urticaria Registry (CURE). Descriptive characteristics and association strength between relevant RWD variables and their synthetic counterparts were analyzed as indicators of replication accuracy, providing insight into how closely the synthetic data aligns with the RWD. Finally, we determined the minimum sample size required to generate high-quality synthetic data. Results: The algorithm produced extensive synthetic data records, closely mirroring patient demographics and disease clinical characteristics. Smaller subgroups of the data were equally replicated and followed the same distribution as RWD. Known associations and correlations between disease-specific factors (disease control) and risk factors (age) yielded similar results, with no significant difference (p > 0.05). The lowest threshold at which synthetic data could be generated while maintaining high accuracy in RWD was identified to be 25%, enabling a fourfold increase in the synthetic population. Conclusion: Synthetic data could replicate RWD with reasonable accuracy for patients with CSU down to 25% of the original population size. This method has the potential to extend small patient subgroups in clinical and epidemiological research.
AB - Background: Robust data are essential for clinical and epidemiological research, yet in chronic spontaneous urticaria (CSU), certain patient groups, such as the elderly or comorbid patients, are often underrepresented. In clinical trials, strict inclusion and exclusion criteria frequently limit recruitment, making it difficult to achieve sufficient statistical power. Similarly, real-world observational studies may lack sufficient sample sizes for robust analysis. To address these limitations, we generated synthetic patient data that reflect these groups’ clinical characteristics and variability. This approach enables more comprehensive analyses, facilitates hypothesis testing in otherwise inaccessible populations, and supports the generation of evidence where traditional data sources are insufficient. Methods: A tree-based decision model was applied to generate synthetic data based on an existing set of real-world data (RWD) from the Chronic Urticaria Registry (CURE). Descriptive characteristics and association strength between relevant RWD variables and their synthetic counterparts were analyzed as indicators of replication accuracy, providing insight into how closely the synthetic data aligns with the RWD. Finally, we determined the minimum sample size required to generate high-quality synthetic data. Results: The algorithm produced extensive synthetic data records, closely mirroring patient demographics and disease clinical characteristics. Smaller subgroups of the data were equally replicated and followed the same distribution as RWD. Known associations and correlations between disease-specific factors (disease control) and risk factors (age) yielded similar results, with no significant difference (p > 0.05). The lowest threshold at which synthetic data could be generated while maintaining high accuracy in RWD was identified to be 25%, enabling a fourfold increase in the synthetic population. Conclusion: Synthetic data could replicate RWD with reasonable accuracy for patients with CSU down to 25% of the original population size. This method has the potential to extend small patient subgroups in clinical and epidemiological research.
KW - chronic spontaneous urticaria (CSU)
KW - real-world data (RWD)
KW - sensitivity analysis
KW - subgroup analysis
KW - synthetic data generation
KW - tree-based decision model
UR - https://www.scopus.com/pages/publications/105012764165
U2 - 10.1002/clt2.70087
DO - 10.1002/clt2.70087
M3 - Article
AN - SCOPUS:105012764165
SN - 2045-7022
VL - 15
JO - Clinical and Translational Allergy
JF - Clinical and Translational Allergy
IS - 8
M1 - e70087
ER -