Identifying Feature Pattern for Weighted Imbalance Data: A Feature Selection Study for Thoracolumbar Spine Fractures in Crash Injury Research

Paromita Nitu, P. Madiraju, F. Pintar
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引用次数: 1

Abstract

In motor vehicle crash study, spine injury investigation has a greater impact due to the serious physical, mental and financial consequences. Even though spine fracture deteriorates the quality of life significantly, to the best of our knowledge, there is no study that searched for the exhaustive thoracolumbar spine fracture(TL-fx) feature space to discover potential feature pattern in the motivation of illustrating the increasing risk phenomenon as a function of vehicle model year. This study investigates National Automotive Sampling System Crashworthiness (NASS-CDS) database, year 2000 to 2015. Each year, approximately 4000 to 6000(weighted) occupants are diagnosed with one or multiple TL-fx in road crashes. Even though the TL-fx data support is less than 1.6%, a two-fold feature selection model in a combination of random forest and lift measure based Apriori algorithm generates insightful association rules yielding prominent feature patterns and promotes further investigation to build causal model for the TL-fx study.
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确定加权不平衡数据的特征模式:碰撞损伤研究中胸腰椎骨折的特征选择研究
在机动车碰撞研究中,脊柱损伤的调查由于其严重的身体、精神和经济后果而具有较大的影响。尽管脊柱骨折会显著恶化生活质量,但据我们所知,目前还没有研究寻找穷举胸腰椎脊柱骨折(TL-fx)特征空间来发现潜在的特征模式,以说明风险增加现象作为汽车车型年的函数。本研究调查了2000年至2015年国家汽车抽样系统耐撞性(NASS-CDS)数据库。每年,约有4000至6000名(加权)乘员在道路交通事故中被诊断出患有一种或多种TL-fx。尽管TL-fx的数据支持度低于1.6%,但结合随机森林和基于提升测度的Apriori算法的双重特征选择模型产生了深刻的关联规则,产生了突出的特征模式,并促进了进一步的研究,为TL-fx的研究建立了因果模型。
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