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Segmental hair testing to disclose chronic exposure to psychoactive drugs.

作者信息

Marchei Emilia, Palmi Ilaria, Pichini Simona, Pacifici Roberta, Anton Airaldi Ileana-Rita, Costa Orvay Juan Antonio, García Serra Joan, Bonet Serra Bartolomé, García-Algar Óscar

机构信息

Unidad de Abuso de Drogas y de Adicciones, Departamento de Investigación Terapéutica y Evaluación de Medicina, Instituto Superior de Sanidad, Roma.

出版信息

Adicciones. 2016 Jun 15;28(3):158-62. doi: 10.20882/adicciones.825.

Abstract

This study presents the case of a 4-year-old healthy child admitted to the paediatric ward for suspected accidental intoxication due to ingestion of narcoleptic drugs (methylphenidate, sertraline and quetiapine), taken on a regular basis by his 8-year-old brother affected by Asperger syndrome.Intoxication can be objectively assessed by measurements of drugs and metabolites in biological matrices with short-term (blood and urine) or long-term (hair) detection windows. At the hospital, the child's blood and urine were analysed by immunoassay (confirmed by liquid chromatography-mass spectrometry), and sertraline and quetiapine and their metabolites were identified. The suspicion that the mother administered drugs chronically prompted the analysis of six, consecutive 2-cm segments of the child's hair, using ultra-high performance liquid chromatography-tandem mass spectrometry, thereby accounting for ingestion over the previous 12 months. Quetiapine was found in the first four segments with a mean concentration of 1.00 ng/mg ± 0.94 ng/mg hair while sertraline and its metabolite, desmethyl-sertraline, were found in all segments with a mean concentration of 2.65 ± 0.94 ng/mg and 1.50 ± 0.94 ng/mg hair, respectively. Hair analyses were negative for methylphenidate and its metabolite (ritalinic acid). Biological matrices testing for psychoactive drugs disclosed both acute and chronic intoxication with quetiapine and sertraline administered by the mother.

摘要

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