人体骨盆侧向碰撞贝叶斯损伤概率曲线

N. Yoganandan, N. Devogel, F. Pintar, A. Banerjee
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引用次数: 0

摘要

伤害标准用于军事、汽车和航空环境,以提高人体安全。虽然已经发表了人体骨盆在垂直载荷下的损伤风险曲线(IRCs),但缺乏描述侧向冲击下的损伤风险曲线的分析。本研究的目的是在这种模式下推导出IRCs。已发表的数据来自60个采用重复测试方案的全身尸检人体替代品(PMHS)测试。在第一个分析中,来自单一冲击试验的所有损伤数据点被视为左截尾,非损伤数据点被视为右截尾,而重复测试结果被视为间隔截尾数据。在第二个分析中,损伤数据未经审查处理。采用峰值力作为响应变量。使用年龄、总体重、性别和身体质量指数(BMI)作为不同组合的协变量。采用贝叶斯生存分析模型推导出IRCs。获得正负95%可信区间(CI)及其归一化CI大小(NCIS)。这是第一个在全身PMHS试验中开发IRCs的研究,使用贝叶斯模型来描述人体骨盆在侧向冲击下的耐受性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Pelvis Bayesian Injury Probability Curves From Whole Body Lateral Impact
Injury criteria are used in military, automotive, and aviation environments to advance human safety. While Injury Risk Curves (IRCs) for the human pelvis are published under vertical loading, there is a paucity of analysis that describe IRCs under lateral impact. The objective of the present study is to derive IRCs under this mode. Published data were used from 60 whole-body Post Mortem Human Surrogate (PMHS) tests that used repeated testing protocols. In the first analysis, from single impact tests, all injury data points were considered as left censored and noninjury points were considered as right censored, while repeated testing results were treated as interval censored data. In the second analysis, injury data were treated uncensored. Peak force was used as the response variable. Age, total body mass, gender, and Body Mass Index (BMI) were used as covariates in different combinations. Bayesian survival analysis model was used to derive the IRCs. Plus-minus 95% credible intervals (CI) and their Normalized CI Sizes (NCIS) were obtained. This is the first study to develop IRCs in whole body PMHS tests to describe the human pelvic tolerance under lateral impact using Bayesian models.
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