Mexican Authorities Seize Tractor-Trailer Carrying More Than 13 Tons of Precursor Chemicals

International Business TimesWednesday, October 29, 2025 at 10:02:24 PM
Mexican authorities have made a significant drug-related seizure, confiscating over 13 tons of precursor chemicals linked to the Cabrera Sarabia family, who have longstanding ties to the Sinaloa Cartel. This operation highlights the ongoing efforts to disrupt drug trafficking networks, especially following the extradition of Joaquín 'El Chapo' Guzmán, which has intensified scrutiny on cartel operations. The seizure not only represents a blow to the cartel's capabilities but also underscores the importance of law enforcement's role in combating drug-related crime.
— Curated by the World Pulse Now AI Editorial System

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