# digiBONE: an automated tool for segmental Greulich-Pyle bone age assessment of Indian children and adolescents

**Authors:** Shreya Chakladar, Chirantap Oza, Shruti Mondkar, Tim R. J. Aeppli, Lars Sävendahl, Anuradha Khadilkar, Vaman Khadilkar, Pranay Goel

PMC · DOI: 10.3389/fendo.2026.1757571 · Frontiers in Endocrinology · 2026-03-11

## TL;DR

digiBONE is a new automated tool that improves bone age assessment in Indian children by analyzing different hand regions separately, leading to more accurate and personalized results.

## Contribution

digiBONE introduces a deep learning framework that models segment-specific skeletal maturation for more accurate bone age assessment.

## Key findings

- Segmental analysis improved performance with MAD of 4.75 months for boys and 4.93 months for girls.
- The method revealed asynchrony between hand regions, offering complementary maturity information.
- The tool provides better interpretability and personalization compared to global estimates.

## Abstract

Accurate bone age assessment (BAA) is essential for diagnosing and managing pediatric endocrine and growth disorders, as it reflects biological maturity beyond chronological age. The widely used Greulich–Pyle (GP) method estimates bone age by visually comparing full-hand radiographs with standardised reference images. Although widely used, this technique—and most automated systems based on it—assumes uniform skeletal maturation across the hand. In practice, however, skeletal maturation progresses at different rates in the anatomical segments of the hand under varied hormonal influences. This segmental variability may contribute to inter-observer inconsistency and diagnostic uncertainty. We developed digiBONE, a deep learning framework that models segment-specific skeletal maturation.

Hand radiographs were segmented into anatomically coherent regions—short bones, carpals, and wrist—representing synchronously maturing bones. Separate convolutional neural networks (CNNs) were trained for each segment and for the full hand. Segmental predictions were combined with the full-hand model to generate a composite bone age prediction.

Integration of segmental maturity improved performance over full-hand-only models, achieving mean absolute differences (MAD) of 4.75 months for boys and 4.93 months for girls. In addition to improved accuracy, it revealed asynchrony between hand regions providing complementary maturity information beyond global estimates.

The full-hand model captures how a child’s overall maturity aligns with population norms, while, the segmental models explain how individuals of the same GP age differ biologically, improving interpretability and personalisation. digiBONE demonstrates that integrating biologically relevant segmental information into deep learning pipelines offers a scalable, automated bone age assessment solution applicable to Indian populations.

## Full-text entities

- **Diseases:** endocrine and growth disorders (MESH:D006130)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

6 figures with captions in the complete paper: https://tomesphere.com/paper/PMC13012973/full.md

## References

35 references — full list in the complete paper: https://tomesphere.com/paper/PMC13012973/full.md

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Source: https://tomesphere.com/paper/PMC13012973