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基于 3D 体图像的军事基础训练伤机器学习预测。

Machine learning prediction of combat basic training injury from 3D body shape images.

机构信息

United States Military Academy, West Point, New York, United States of America.

Pennington Biomedical Research Center, Baton Rouge, Louisiana, United States of America.

出版信息

PLoS One. 2020 Jun 30;15(6):e0235017. doi: 10.1371/journal.pone.0235017. eCollection 2020.

Abstract

INTRODUCTION

Athletes and military personnel are both at risk of disabling injuries due to extreme physical activity. A method to predict which individuals might be more susceptible to injury would be valuable, especially in the military where basic recruits may be discharged from service due to injury. We postulate that certain body characteristics may be used to predict risk of injury with physical activity.

METHODS

US Army basic training recruits between the ages of 17 and 21 (N = 17,680, 28% female) were scanned for uniform fitting using the 3D body imaging scanner, Human Solutions of North America at Fort Jackson, SC. From the 3D body imaging scans, a database consisting of 161 anthropometric measurements per basic training recruit was used to predict the probability of discharge from the US Army due to injury. Predictions were made using logistic regression, random forest, and artificial neural network (ANN) models. Model comparison was done using the area under the curve (AUC) of a ROC curve.

RESULTS

The ANN model outperformed two other models, (ANN, AUC = 0.70, [0.68,0.72], logistic regression AUC = 0.67, [0.62,0.72], random forest AUC = 0.65, [0.61,0.70]).

CONCLUSIONS

Body shape profiles generated from a three-dimensional body scanning imaging in military personnel predicted dischargeable physical injury. The ANN model can be programmed into the scanner to deliver instantaneous predictions of risk, which may provide an opportunity to intervene to prevent injury.

摘要

简介

运动员和军人都面临因剧烈身体活动而导致残疾的风险。预测哪些个体更容易受伤的方法将是有价值的,尤其是在军队中,基本新兵可能会因受伤而被遣散。我们假设某些身体特征可用于预测与身体活动相关的受伤风险。

方法

美国陆军基本训练新兵年龄在 17 至 21 岁之间(N = 17680,28%为女性),在南卡罗来纳州杰克逊堡的北美人类解决方案公司使用 3D 人体成像扫描仪进行制服贴合度扫描。从 3D 人体成像扫描中,使用一个包含每个基本训练新兵 161 个体形测量值的数据库来预测因受伤而从美国陆军退役的概率。使用逻辑回归、随机森林和人工神经网络 (ANN) 模型进行预测。使用 ROC 曲线的曲线下面积 (AUC) 进行模型比较。

结果

ANN 模型优于另外两个模型,(ANN,AUC = 0.70,[0.68,0.72],逻辑回归 AUC = 0.67,[0.62,0.72],随机森林 AUC = 0.65,[0.61,0.70])。

结论

从军事人员的三维身体扫描成像中生成的身体形状轮廓预测了可退役的身体伤害。ANN 模型可以编程到扫描仪中,以提供即时的风险预测,这可能为预防受伤提供了干预机会。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6b5a/7326186/f6cb4c002bbb/pone.0235017.g001.jpg

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