Addressing data scarcity in paediatric head and neck CT: Cross-age training enables reliable automated lymph node segmentation
Author Block: B. Wichtlhuber1, E. Frodl1, M. Sayed1, T. Persigehl2, M. Neitzel1, J. Dietz1, M. Eicke3, D. M. Renz3, A. M. Bucher1; 1Frankfurt/DE, 2Koeln/DE, 3Hannover/DE
Purpose: Paediatric lymph node segmentation faces critical data scarcity challenges. We hypothesised that incorporating adult CT data into deep learning training would overcome this limitation while maintaining clinical relevance for paediatric oncology applications, particularly for detecting pathologically enlarged nodes requiring follow-up.
Methods or Background: We analysed 418 head/neck CTs from University Hospital Frankfurt: 146 paediatric (<18 years) and 272 adult cases. A 3D full-resolution nnU-Net underwent five-fold cross-validation training (250 epochs) using three strategies: paediatric-only, adult-only, and combined training. Approximately 20% of cases were reserved for independent testing. Evaluation metrics included the Dice coefficient, Intersection over Union (IoU). Clinical relevance was assessed through volumetric coverage analysis, with particular focus on nodes >10mm short-axis diameter—the threshold for pathological enlargement requiring clinical action. Values are presented as median and standard deviation.
Results or Findings: Cross-age training outperformed paediatric-only approaches. The combined model achieved Dice=0.714 ±0.151 and IoU=0.575 ±0.176 on paediatric test data versus Dice=0.695 ±0.155 and IoU=0.553 ±0.179 for paediatric-only training, showing clear improvement. Interestingly, this benefit was unidirectional—paediatric patients gained from mixed training, whereas adult test performance remained unchanged (combined model Dice=0.643 ±0.125 vs. adult-only Dice=0.647 ±0.113). Clinical utility analysis showed strong performance: 88.97% of enlarged nodes (>10mm) achieved ≥10% volumetric coverage, ensuring reliable oncological detection. Moreover, 69.08% of all lymph nodes reached ≥50% coverage, supporting accurate volumetric measurements. These metrics translate into improved workflow efficiency, reducing missed findings while preserving precision for follow-up.
Conclusion: Cross-age training addresses the key challenge of paediatric data scarcity in medical imaging AI, improving technical metrics and enabling clinically meaningful detection of pathological lymphadenopathy. This approach supports robust AI use in paediatric radiology with limited annotated data, potentially accelerating adoption in oncology workflows.
Limitations: A limitation of the study is its single-center validation.
Funding for this study: Funding was provided by the German Federal Ministry of Education and Research through the RACOON project (reference number 01KX2021).
Has your study been approved by an ethics committee? Yes
Ethics committee - additional information: Ethics approval was obtained by University Medicine Frankfurt (Reference 2023-1459)