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基于生物力学和自我报告测试区分 WAD 患者和疼痛行为异常者的模型。

A model to differentiate WAD patients and people with abnormal pain behaviour based on biomechanical and self-reported tests.

机构信息

Department of General Psychology, University of Padova, via Venezia 8, 35131, Padova, Italy.

Instituto de Biomecánica de Valencia, Universitat Politècnica de Valencia, Ed. 9C. Camino de Vera s/n, 46022, Valencia, Spain.

出版信息

Int J Legal Med. 2021 Jul;135(4):1637-1646. doi: 10.1007/s00414-021-02572-5. Epub 2021 Mar 27.

Abstract

The prevalence of malingering among individuals presenting whiplash-related symptoms is significant and leads to a huge economic loss due to fraudulent injury claims. Various strategies have been proposed to detect malingering and symptoms exaggeration. However, most of them have been not consistently validated and tested to determine their accuracy in detecting feigned whiplash. This study merges two different approaches to detect whiplash malingering (the mechanical approach and the qualitative analysis of the symptomatology) to obtain a malingering detection model based on a wider range of indices, both biomechanical and self-reported. A sample of 46 malingerers and 59 genuine clinical patients was tested using a kinematic test and a self-report questionnaire asking about the presence of rare and impossible symptoms. The collected measures were used to train and validate a linear discriminant analysis (LDA) classification model. Results showed that malingerers were discriminated from genuine clinical patients based on a greater proportion of rare symptoms vs. possible self-reported symptoms and slower but more repeatable neck motions in the biomechanical test. The fivefold cross-validation of the LDA model yielded an area under the curve (AUC) of 0.84, with a sensitivity of 77.8% and a specificity of 84.7%.

摘要

诈病者在出现与挥鞭伤相关症状的人群中较为常见,这会导致大量因欺诈性伤害索赔而产生的经济损失。人们提出了各种策略来检测诈病和症状夸大,但其中大多数策略尚未经过一致性验证和测试,以确定其在检测伪装挥鞭伤方面的准确性。本研究融合了两种不同的诈病检测方法(力学方法和症状学的定性分析),以获得一种基于更广泛的生物力学和自我报告指标的诈病检测模型。使用运动学测试和自我报告问卷对 46 名诈病者和 59 名真正的临床患者进行了测试,问卷询问了罕见和不可能出现的症状。收集的测量结果用于训练和验证线性判别分析(LDA)分类模型。结果表明,诈病者与真正的临床患者的区别在于,他们更可能报告罕见症状而不是可能出现的症状,并且在生物力学测试中颈部运动速度较慢但更可重复。LDA 模型的五重交叉验证得到了 0.84 的曲线下面积(AUC),灵敏度为 77.8%,特异性为 84.7%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3c35/8205908/ee8c5a99790c/414_2021_2572_Fig1_HTML.jpg

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