Growth assessment in achondroplasia requires disorder-specific growth charts incorporating sex- and age-specific values. Manual calculations are tedious and subject to error. We present an artificial intelligence (AI)-assisted tool that automates z-score calculations for pediatric patients with achondroplasia. The tool integrates European Lambda-Mu-Sigma (LMS) growth reference data for 9 anthropometric parameters: height, weight, body mass index, head circumference, sitting height, leg length, arm span, relative sitting height, and foot length. It inputs anthropometric measurements and transforms them into sex- and age-specific z-scores and percentiles in real time. Ten pediatric endocrinologists independently calculated anthropometric z-scores for 3 patients with achondroplasia using both the manual growth charts and the automated tool. Time-to-completion and accuracy were recorded and compared. The mean time required by the AI-assisted tool to calculate z-scores for all 9 parameters was significantly shorter than that required by manual calculation (23.4â±â5.8 vs. 10.1â±â2.8 min, pâ<â0.001). The tool demonstrated 100% agreement with manual LMS-based calculations and eliminated human errors to which manual calculations are subject, with significantly higher median absolute z-score deviation compared to the smart tool (0.17 [0.07-0.30] vs. 0 [0-0.01], pâ<â0.001). CONCLUSION: This AI-assisted tool provides a user-friendly, accessible, and highly accurate method for automated growth assessment in pediatric achondroplasia. It facilitates efficient clinical and research applications, with potential for future integration into electronic health records and web-based platforms. WHAT IS KNOWN: â¢Growth monitoring in achondroplasia requires syndrome-specific Lambda-Mu-Sigma based charts. â¢Manual z-score calculations are time-consuming and subject to error. WHAT IS NEW: â¢We present an AI-assisted Excel tool that automates z-scores and percentile calculations for 9 anthropometric parameters. â¢Performance and inter-user reliability testing by 10 pediatric endocrinologists showed significantly improved speed and accuracy over manual methods.
An AI-assisted tool for automated growth monitoring in pediatric achondroplasia.
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作者:Cohen-Sela Eyal, Lebenthal Yael, Brener Avivit, Regev Ravit, Hagenäs Lars
| 期刊: | European Journal of Pediatrics | 影响因子: | 2.600 |
| 时间: | 2025 | 起止号: | 2025 Jul 18; 184(8):490 |
| doi: | 10.1007/s00431-025-06321-3 | ||
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