Exploring the Use of a Length AI Algorithm to Estimate Children's Length from Smartphone Images in a Real-World Setting: Algorithm Development and Usability Study.

IF 2.1 Q2 PEDIATRICS
Mei Chien Chua, Matthew Hadimaja, Jill Wong, Sankha Subhra Mukherjee, Agathe Foussat, Daniel Chan, Umesh Nandal, Fabian Yap
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引用次数: 0

Abstract

Background: Length measurement in young children younger than 18 months is important for monitoring growth and development. Accurate length measurement requires proper equipment, standardized methods, and trained personnel. In addition, length measurement requires young children's cooperation, making it particularly challenging during infancy and toddlerhood.

Objective: This study aimed to develop a length artificial intelligence (LAI) algorithm to aid users in determining recumbent length conveniently from smartphone images and explore its performance and suitability for personal and clinical use.

Methods: This proof-of-concept study in healthy children (aged 0-18 months) was performed at KK Women's and Children's Hospital, Singapore, from November 2021 to March 2022. Smartphone images were taken by parents and investigators. Standardized length-board measurements were taken by trained investigators. Performance was evaluated by comparing the tool's image-based length estimations with length-board measurements (bias [mean error, mean difference between measured and predicted length]; absolute error [magnitude of error]). Prediction performance was evaluated on an individual-image basis and participant-averaged basis. User experience was collected through questionnaires.

Results: A total of 215 participants (median age 4.4, IQR 1.9-9.7 months) were included. The tool produced a length prediction for 99.4% (2211/2224) of photos analyzed. The mean absolute error was 2.47 cm for individual image predictions and 1.77 cm for participant-averaged predictions. Investigators and parents reported no difficulties in capturing the required photos for most participants (182/215, 84.7% participants and 144/200, 72% participants, respectively).

Conclusions: The LAI algorithm is an accessible and novel way of estimating children's length from smartphone images without the need for specialized equipment or trained personnel. The LAI algorithm's current performance and ease of use suggest its potential for use by parents or caregivers with an accuracy approaching what is typically achieved in general clinics or community health settings. The results show that the algorithm is acceptable for use in a personal setting, serving as a proof of concept for use in clinical settings.

Trial registration: ClinicalTrials.gov NCT05079776; https://clinicaltrials.gov/ct2/show/NCT05079776.

探索在真实世界环境中使用长度人工智能算法从智能手机图像中估算儿童的长度:算法开发和可用性研究。
背景:对 18 个月以下的幼儿进行身长测量对于监测其生长发育非常重要。准确的身长测量需要合适的设备、标准化的方法和训练有素的人员。此外,身长测量还需要幼儿的配合,因此在婴幼儿时期尤其具有挑战性:本研究旨在开发一种长度人工智能(LAI)算法,帮助用户从智能手机图像中方便地确定腰围长度,并探索其性能以及是否适合个人和临床使用:这项概念验证研究于 2021 年 11 月至 2022 年 3 月在新加坡 KK 妇女儿童医院对健康儿童(0-18 个月)进行。家长和研究人员使用智能手机拍摄图像。由经过培训的研究人员进行标准化长度板测量。通过比较该工具基于图像的长度估计值与长度板测量值(偏差[平均误差,测量长度与预测长度之间的平均差];绝对误差[误差大小])来评估其性能。预测性能以单个图像和参与者平均值为基础进行评估。通过问卷调查收集用户体验:共纳入 215 名参与者(中位年龄为 4.4 岁,IQR 为 1.9-9.7 个月)。该工具对99.4%(2211/2224)的照片进行了长度预测。单张照片预测的平均绝对误差为 2.47 厘米,参与者平均预测的平均绝对误差为 1.77 厘米。调查人员和家长表示,大多数参与者(分别为182/215,84.7%的参与者和144/200,72%的参与者)在拍摄所需照片时没有遇到困难:LAI算法是一种从智能手机图像估算儿童身长的便捷而新颖的方法,无需专业设备或训练有素的人员。LAI 算法目前的性能和易用性表明,家长或看护人可以使用该算法,其准确性接近普通诊所或社区卫生机构通常达到的水平。结果表明,该算法可在个人环境中使用,为在临床环境中使用该算法提供了概念验证:试验注册:ClinicalTrials.gov NCT05079776;https://clinicaltrials.gov/ct2/show/NCT05079776。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Pediatrics and Parenting
JMIR Pediatrics and Parenting Medicine-Pediatrics, Perinatology and Child Health
CiteScore
5.00
自引率
5.40%
发文量
62
审稿时长
12 weeks
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