Choi Sungwoo, Nah Sangun, Moon Ji Eun, Han Sangsoo
Department of Emergency Medicine, Soonchunhyang University Bucheon Hospital, Bucheon 14584, Republic of Korea.
Department of Biostatistics, Clinical Trial Center, Soonchunhyang University Bucheon Hospital, Bucheon 14584, Republic of Korea.
J Clin Med. 2025 Apr 22;14(9):2873. doi: 10.3390/jcm14092873.
: Pediatric drug dosages are typically weight-based. Length-based weight estimation tools used in emergency situations require full body extension, which may cause measurement errors in restricted positions. In this study, we developed and evaluated a weight prediction application using MoveNet's human pose estimation and a deep neural network (DNN) regression model. : This prospective cross-sectional study was conducted from June 2023 to May 2024 and included pediatric patients aged 1 month to 12 years. Weight estimation accuracy was compared between the Pediatric Artificial Intelligence weight-estimating Camera (PAICam) and the Broselow tape (BT) using mean percentage error (MPE), mean absolute percentage error (MAPE), and root mean square percentage error (RMSPE). The percentages of weight estimations within 10% (PW10) and 20% (PW20) of the actual weights were calculated. Intraclass correlation coefficients (ICCs) were used to evaluate agreement between predicted and actual weights. : In total, 1335 pediatric participants were analyzed (57.4% boys, 42.6% girls), with an average age of 4 years. The BT and PAICam showed comparable performance, with similar values for MPE (-1.44% vs. 5.29%), MAPE (11.28% vs. 12.41%), and RMSPE (3.09% vs. 3.42%). PW10 and PW20 for the BT and PAICam were also similar (52.6% vs. 51.2% and 79.1% vs. 77.7%). ICC values demonstrated strong agreement between actual and predicted weights for both methods (0.959 vs. 0.955). : PAICam, utilizing deep learning and human pose estimation technology, demonstrated performance and accuracy comparable to the BT. This suggests its potential as an alternative tool for pediatric weight estimation in emergency settings.
儿科药物剂量通常基于体重。在紧急情况下使用的基于身长的体重估计工具需要全身伸展,这可能在受限体位时导致测量误差。在本研究中,我们使用MoveNet人体姿态估计和深度神经网络(DNN)回归模型开发并评估了一个体重预测应用程序。
这项前瞻性横断面研究于2023年6月至2024年5月进行,纳入了1个月至12岁的儿科患者。使用平均百分比误差(MPE)、平均绝对百分比误差(MAPE)和均方根百分比误差(RMSPE)比较了儿科人工智能体重估计相机(PAICam)和布罗泽洛卷尺(BT)的体重估计准确性。计算了实际体重的10%(PW10)和20%(PW20)范围内的体重估计百分比。组内相关系数(ICC)用于评估预测体重与实际体重之间的一致性。
总共分析了1335名儿科参与者(57.4%为男孩,42.6%为女孩),平均年龄为4岁。BT和PAICam表现出可比的性能,MPE(-1.44%对5.29%)、MAPE(11.28%对12.41%)和RMSPE(3.09%对3.42%)的值相似。BT和PAICam的PW10和PW20也相似(52.6%对51.2%以及79.1%对77.7%)。ICC值表明两种方法的实际体重与预测体重之间均具有高度一致性(0.959对0.955)。
PAICam利用深度学习和人体姿态估计技术,表现出与BT相当的性能和准确性。这表明它在紧急情况下作为儿科体重估计替代工具的潜力。