Grayscale Points to Zcash Among Six Privacy Coins to Watch

TheNewsCryptoPubblicato 2025-12-30Pubblicato ultima volta 2025-12-30

Introduzione

Grayscale's Q4 2025 report highlights six top-performing privacy-focused cryptocurrencies: Zcash, Monero, Dash, Decred, Basic Attention Token, and Beldex. Zcash led not only the privacy segment but the entire Top 20 assets tracked. The Shield Pool, a core privacy feature of Zcash, reached a record high with over 5 million ZEC (30% of supply) locked, indicating strong holder confidence despite price volatility. ZEC’s price rebounded over 70% in December, reinforcing its privacy value proposition. Institutional interest is shifting toward privacy assets amid growing data breach scandals. Grayscale forecasts continued growth in 2026, driven by integration with DeFi and Web3 applications.

Grayscale has identified six privacy-focused cryptocurrencies as standout performers in its Q4 2025 report. The investment firm, one of the largest cryptocurrency asset managers globally, highlighted Zcash, Monero, Dash, Decred, Basic Attention Token, and Beldex as leading assets during the quarter.

Zcash led not only the privacy segment but the entire Top 20 universe tracked by Grayscale. The quarter was characterized as a consolidation phase following strong growth periods, yet privacy coins outperformed most other categories during this timeframe.

Zcash Shield Pool activity reaches record levels

Data from zkp.baby shows the amount of ZEC locked in the Shield Pool surpassed 5 million tokens, accounting for approximately 30% of circulating supply. This marks a new all-time high for the privacy feature.

The Shield Pool functions as a core component of Zcash’s architecture. Users convert ZEC from transparent addresses to shielded addresses through this mechanism, providing enhanced privacy for transactions.

The amount of ZEC in Shield Pools remained around 4.8 million throughout November. This stability persisted while ZEC’s price declined by nearly 60% at one point. The data suggests holders maintained positions through volatility rather than selling during downturns.

December brought a price rebound exceeding 70% for Zcash. Shield Pools simultaneously set new all-time highs. These developments appear to have reinforced investor confidence in the asset’s privacy value proposition.

Arthur Hayes, former CEO of BitMEX and prominent cryptocurrency investor, issued a bullish outlook on ZEC. “The tears of the bears shall be my sustenance. ZEC first stop $1,000,” Hayes stated.

Institutional focus shifts toward privacy assets

Grayscale’s Q4 report emphasized that institutional interest is shifting toward assets offering stronger privacy features. This trend intensifies as data breach scandals continue surfacing across technology platforms and traditional finance systems.

The investment firm reported that privacy-related tokens dominated the Top 20 performer list during Q4 2025. The six highlighted coins each delivered returns that exceeded most other cryptocurrency categories during the consolidation period.

Grayscale forecasts continued growth for the privacy coin segment throughout 2026. Integration with decentralized finance protocols and Web3 applications is expected to drive this expansion as developers build privacy features into mainstream blockchain applications.

Domande pertinenti

QWhich six privacy-focused cryptocurrencies did Grayscale highlight in its Q4 2025 report?

AGrayscale highlighted Zcash, Monero, Dash, Decred, Basic Attention Token, and Beldex.

QWhat was the new all-time high for the Zcash Shield Pool, as mentioned in the article?

AThe amount of ZEC locked in the Shield Pool surpassed 5 million tokens, accounting for approximately 30% of the circulating supply.

QHow did Zcash's price perform in December, according to the report?

AZcash's price rebounded by over 70% in December.

QWhat reason does Grayscale give for the growing institutional interest in privacy assets?

AInstitutional interest is shifting toward privacy assets due to intensifying data breach scandals across technology platforms and traditional finance systems.

QWhat is Arthur Hayes' bullish price prediction for ZEC, as quoted in the article?

AArthur Hayes stated, 'ZEC first stop $1,000.'

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