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优化克隆酶供体免疫分析法在死后全血中滥用药物检测的截断值。

Optimization of cloned enzyme donor immunoassay cut-offs for drugs of abuse in post-mortem whole blood.

机构信息

Department of Medical and Surgical Sciences, Unit of Legal Medicine, University of Bologna, Via Irnerio 49, 40126, Bologna, Italy.

出版信息

Forensic Sci Int. 2020 Jul;312:110291. doi: 10.1016/j.forsciint.2020.110291. Epub 2020 Apr 18.

Abstract

INTRODUCTION

Immunoassay (IA) tests are not widely applied in post-mortem samples, since they are based on technologies requiring relatively non-viscous specimens, and compounds originating from the degradation of proteins and lipids during the post-mortem interval can alter the efficiency of the test. However, since the extraction techniques for IA tests are normally rapid and low-cost, IA could be used as near-body drug-screening for the classes of drugs most commonly found in Italy and Europe. In this study, semi-quantitative results on post-mortem whole blood samples obtained through CEDIA analysis (cannabinoids, cocaine, amphetamine compounds, opiates and methadone), were compared with results of confirmatory analysis obtained using GC-MS. Screening cut-offs for all drugs were retrospectively optimized.

METHODS

Post-mortem whole blood samples from autopsy cases of suspected fatal intoxication were collected over 3 years. Samples were initially analyzed through CEDIA (CEDIA, ILab 650, Werfen). Confirmatory analyses were then performed by GC-MS (QP 2010 Plus, Shimadzu). Screening cut-offs were retrospectively optimized using Receiver Operating Characteristic (ROC) analysis.

RESULTS

CEDIA results were available for 125 samples. Two-hundred-eighty-nine (289) positive screening results were found. Among these, 162 positive confirmation results were obtained. Optimized screening cut-offs were as follows: 6.5ng/ml for THC; 4.2ng/ml for THC-COOH; 12.0ng/ml for cocaine; 6.6ng/ml for benzoylecgonine; 6.4ng/ml for opiates; 2.0ng/ml for methadone. Analysis of ROC-curves showed a satisfying degree of separation in all tests except for amphetamine compounds, with areas under the curve (AUC) between 0.915 (THC) and 0.999 (for benzoylecgonine and methadone).

DISCUSSION

The results of the study showed that CEDIA screening at the optimized cut-offs exhibits a very high sensitivity and good specificity and positive predictive value (PPV) for cannabinoids, cocaine and metabolites, opiates and methadone. A high number of false positives (n=19) for amphetamine compounds was observed at the optimized cut-off, resulting in a very low PPV, which is also influenced by the very low number of TP (n=4).

CONCLUSION

The results of the study show that the CEDIA is a valuable screening test on post-mortem whole blood for cannabinoids, cocaine and metabolites, opiates and methadone, but it is not recommended for amphetamine compounds, due to the high number of false positives. The strengths of the study are the large sample size, the inclusion of post-mortem cases only and the high level of sensitivity and specificity obtained at the optimized cut-offs.

摘要

简介

免疫测定(IA)测试在死后样本中并未广泛应用,因为它们基于需要相对非粘性标本的技术,并且在死后间隔期间源自蛋白质和脂质降解的化合物可以改变测试的效率。然而,由于 IA 测试的提取技术通常快速且低成本,因此可以将其用作意大利和欧洲最常见药物类别的近体药物筛选。在这项研究中,通过 CEDIA 分析(大麻素,可卡因,苯丙胺类化合物,阿片类药物和美沙酮)对半定量的死后全血样本进行了分析,与使用 GC-MS 获得的确认分析结果进行了比较。所有药物的筛选截止值均采用回顾性优化。

方法

在 3 年的时间里,从疑似致命中毒的尸检案例中收集了死后全血样本。样品最初通过 CEDIA(CEDIA,ILab 650,Werfen)进行分析。然后通过 GC-MS(QP 2010 Plus,Shimadzu)进行确认分析。使用接收者操作特征(ROC)分析对筛选截止值进行了回顾性优化。

结果

CEDIA 结果可用于 125 个样本。发现 289 个(289)阳性筛选结果。其中,获得了 162 个阳性确认结果。优化的筛选截止值如下:THC 为 6.5ng/ml;THC-COOH 为 4.2ng/ml;可卡因 12.0ng/ml;苯甲酰可待因 6.6ng/ml;阿片类药物 6.4ng/ml;美沙酮 2.0ng/ml。ROC 曲线分析表明,除苯丙胺类化合物外,所有测试均具有较高的分离度,曲线下面积(AUC)在 0.915(THC)和 0.999(苯甲酰可待因和美沙酮)之间。

讨论

研究结果表明,CEDIA 筛选在优化的截止值下对大麻素,可卡因和代谢物,阿片类药物和美沙酮具有很高的灵敏度和特异性以及阳性预测值(PPV)。在优化的截止值下,观察到苯丙胺类化合物的假阳性(n = 19)数量很高,导致 PPV 非常低,这也受到 TP(n = 4)数量非常低的影响。

结论

研究结果表明,CEDIA 是一种有价值的死后全血筛选测试,可用于大麻素,可卡因和代谢物,阿片类药物和美沙酮,但不建议用于苯丙胺类化合物,因为假阳性的数量很多。该研究的优势在于样本量大,仅包括死后病例以及在优化截止值下获得的高灵敏度和特异性。

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