Trump crypto ecosystem in crisis: ‘New age mafia,’ claims trader

ambcryptoPublicado em 2025-09-06Última atualização em 2025-09-07

Key Takeaways

Altcoins linked to President Trump are under pressure. The TRUMP token flashed red on risk metrics, while WLFI faced backlash after freezing funds without warning. 


Altcoins tied to President Trump are back in the spotlight… and not for the right reasons.

The Official Trump [TRUMP] token is flashing red as extreme leverage and mounting liquidation risks threaten traders.

Meanwhile, World Liberty Financial [WLFI] is under fire, facing serious allegations from the community.

On top of this, one developer claimed his tokens were frozen without explanation, going so far as to brand the project “the new age mafia.”

TRUMP token tops risk charts

Alphractal recently revealed that the TRUMP token was among the riskiest altcoins in the market, with traders piling into highly leveraged bets.

Alongside Ethena [ENA], TRUMP ranked near the top by Open Interest/Market Cap. Elevated leverage suggested heavy speculation and thin error margins.

trump cryptotrump crypto

Source: Alphractal

High leverage often leaves traders exposed to sharp liquidations when prices move against them.

By contrast, the 24h Liquidations/Open Interest ratio was most elevated for ENA, OKB [OKB], Arbitrum [ARB], and Maker [MKR], highlighting where forced sell-offs were already concentrated.

Leverage fueled by hype is driving risk higher than ever.

WLFI faces theft allegations

It’s not just the TRUMP token under fire. WLFI has also been under scrutiny lately.

Over the weekend, Polygon’s Developer Relations Bruno Skvorc accused WLFI of effectively stealing his funds after the project refused to unlock his tokens.

In an email, WLFI’s compliance team flagged his wallet as “high risk” due to past exposure to blockchain, blocking any release of assets.

TRUMP CRYPTOTRUMP CRYPTO

Source: X

Skvorc, who helped build Ethereum 2.0, called the move “the new age mafia,” claiming he and other investors were trapped by 100% token lockups.

He also said investors had no recourse since members of the first family ran the project.

That claim reignited debate about compliance tools.

ZachXBT responded that most “high risk” labels are often false positives, since automated systems frequently misclassify wallets. He warned that unchecked reliance on such tools could trap legitimate users.

WLFI explains the 272 blacklists

This wasn’t an isolated case.

TRON [TRX] Founder Justin Sun (one of WLFI’s biggest backers) recently revealed his own account had been frozen. He also urged the project to restore his tokens.

His public complaint came as WLFI faced mounting criticism over its use of blacklists.

In a detailed post on X, the team said it froze 272 wallets in recent days, linking most to phishing attacks or reported compromises. The team flagged only a handful for high-risk exposure.

TRUMP CRYPTOTRUMP CRYPTO

Source: X

WLFI stressed that the moves were meant to protect users, not punish them, and promised more transparency going forward.

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