Cardano erases 100% of election rally gains – Can ADA hold top 10?

ambcryptoPublicado em 2025-12-20Última atualização em 2025-12-20

Resumo

Cardano (ADA) has erased all its gains from the election-driven bull run, falling back to the $0.30 support level. Its market cap has dropped 64% in 2025, a steeper decline than even Dogecoin. Weak fundamentals accompany this technical weakness: active addresses have plummeted, and its TVL is significantly overshadowed by smaller-cap competitors like Sui. Whale selling of 120 million ADA has added to the selling pressure. With its user engagement, TVL, and market performance all signaling overvaluation, ADA's position as the 10th-largest cryptocurrency is at serious risk of being overtaken by Bitcoin Cash (BCH).

It’s been over a year since the election cycle kicked off a bull run.

Even with all the FUD, macro uncertainty, and back-to-back flash crashes, most altcoins have managed to hold onto their election-rally gains, meaning long-term holders are still sitting on unrealized profits.

Cardano [ADA], though, hasn’t shared that resilience. After a red Q3 and Q4, ADA has slid back to its early election levels, wiping out 100% of its yearly gains and returning to a key technical area near the $0.30 support.

Notably, that weakness is clearly reflected in its market cap.

According to CoinMarketCap, ADA has shed $25 billion in 2025, translating to a 64% drop, pulling its valuation down to $14 billion.

For comparison, even Dogecoin [DOGE] has managed to cap its drawdown at 50%.

Simply put, ADA has underperformed even a memecoin.

Against this backdrop, and with the market-cap gap between Cardano and Bitcoin Cash [BCH] narrowing by the day, the question becomes: How long before ADA loses its 10th spot in the crypto rankings to BCH?

Weak fundamentals put ADA’s ranking at risk

ADA’s technical weakness is now spilling over into fundamentals.

Despite recent network upgrades, user engagement has been flat. According to DeFiLlama, active addresses on Cardano, which jumped to 93k during the election, have slid back below 25k, keeping FOMO muted.

At the same time, analysts are pointing to Sui [SUI], whose TVL is 4.5x Cardano’s despite having roughly one-third of ADA’s market cap. This discrepancy signals that Cardano may be overvalued relative to its peers.

Notably, smart money is starting to feel the squeeze too.

Analysts point out that whales have offloaded 120 million ADA in the past two months, coinciding with ADA’s roughly 50% drop from its $0.80 peak. This also highlights Cardano’s struggle to hold $0.80 as support.

Taken together, weak FOMO, falling TVL, technical weakness, and shaky fundamentals all indicate that Cardano overvalues itself. In this setup, it’s likely just a matter of time before ADA loses its 10th spot.


Final Thoughts

  • Cardano has underperformed most altcoins, losing all election-cycle gains, with weak user activity, stagnant TVL, and muted FOMO signaling technical and fundamental weakness.
  • Whale selling and overvaluation concerns suggest Cardano’s 10th spot in crypto rankings is increasingly at risk.

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Perguntas relacionadas

QWhat is the main reason Cardano (ADA) is at risk of losing its top 10 cryptocurrency ranking?

ACardano is at risk due to its significant underperformance, erasing all election-cycle gains, combined with weak user engagement, stagnant Total Value Locked (TVL), whale selling, and concerns that it is overvalued compared to peers like Sui (SUI).

QHow much has Cardano's market cap dropped in 2025, and what is its current valuation?

ACardano's market cap has shed $25 billion in 2025, which is a 64% drop, pulling its current valuation down to $14 billion.

QTo what key technical support level has ADA's price returned after its decline?

AADA's price has returned to a key technical area near the $0.30 support level.

QWhat metric is used to show that user engagement on the Cardano network has decreased significantly?

AActive addresses on Cardano, which jumped to 93k during the election rally, have slid back below 25k, indicating a significant decrease in user engagement.

QWhich cryptocurrency is mentioned as a direct competitor threatening to overtake Cardano's market cap ranking?

ABitcoin Cash (BCH) is the direct competitor, as the market-cap gap between Cardano and Bitcoin Cash is narrowing by the day, putting ADA's 10th spot at risk.

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