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GT Gold Corp.

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Summary

Project:

Tatogga

Deposit:Saddle North
Location:Canada
Commodities:Gold-Silver-Copper
Date:12/13/2018
Report Code:NI43-101
Report Type:Exploration/Drilling Update
Project Stage:Pursuing Resources Definition
Report details:13-12-2018: GT Gold Corp. announces an Exploration/Drilling Update report for its Saddle North deposit at the Tatogga project. Drilling results incl. 545.550m @ 0.33g/t Au, 0.49g/t Ag, 0.20% Cu from 32.50m. VANCOUVER, British Columbia, Dec. 13, 2018 -- GT
Resources:x
CP/QP:[Overall Report]: Charles Greig (Internal)
ABSTRACT:VANCOUVER, British Columbia, Dec. 13, 2018 -- GT Gold Corp. (“GT Gold” or the “Company”) (TSX.V: GTT) is pleased to announce positive assay results for four additional holes from its Saddle North porphyry Au-Cu-Ag discovery on its whollyowned Tatogga property in British Columbia’s Golden Triangle. The latest holes, coupled with previously-released results, demonstrate that a 300 to 500 metre thick (true width) high-grade mineralized zone is continuous along a dip extent from surface to more than 1,000 metres depth. The high-grade core zone has a strike extent of a minimum of 500 metres (for details on past results refer to press releases of September 10, October 10 and November 19, 2018). This high-grade core zone sits within a much broader mineralized envelope which has a drilled strike length now in excess of 650 metres, a true width of approximately 700 metres, and a down-dip extent of more than 1,200 metres. Given the extent of mineralization within the southeasternmost holes (TTD107 and 098), the Saddle North system remains open for expansion both along strike and down-dip, with results still pending for the final hole drilled (TTD109) in the 2018 program.

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