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Who is favored to win in Zena Esports vs Deacoy?

Zena Esports are slightly favored to win based on their stronger recent form in the Legends Italian Tournament Winter, showing more consistent early-game control and dragon objective rates than Deacoy. Esports books currently lean marginally toward Zena on the moneyline, with typical odds in the 1.75–1.85 range versus 1.90–2.05 for Deacoy on DexWin - Best Odds on Your Favourite Sports.

What time is Zena Esports vs Deacoy?

The match between Zena Esports and Deacoy in the Legends Italian Tournament Winter (LIT) is scheduled to start at 6:00 PM local tournament time on January 8, 2026. This corresponds approximately to 5:00 PM UTC, though viewers should confirm the exact time conversion for their region on match day.

Where is Zena Esports vs Deacoy being held?

As an online League of Legends fixture in the Legends Italian Tournament Winter, the series is played on the European tournament realm rather than a traditional physical stadium. Production and casting are typically run from a dedicated Italian esports studio environment, while players compete remotely from team facilities or approved LAN setups.

Zena Esports vs Deacoy prediction & odds - who wins?

Given Zena Esports’ stronger recent win rate in domestic Italian LoL play and better objective control stats, they are projected to take the series by a narrow margin, often priced around 1.80 on the moneyline. Deacoy offer underdog value in the 1.95–2.05 range, especially in maps where they can secure scaling compositions, creating opportunities for set-specific bets and handicap markets.

What is the head to head record between Zena Esports vs Deacoy?

Historical head-to-head data between Zena Esports and Deacoy in the Legends Italian Tournament Winter is very limited, with no long-standing rivalry or extensive match archive available. Early encounters in minor Italian circuits suggest a roughly balanced record with only a small edge to Zena, making current form more relevant than past meetings for predictive purposes.