The post BTC Holds $70K as $350M Crypto Wiped Out appeared on BitcoinEthereumNews.com. Bitcoin is trading around $70,500 today, with bulls once again defending The post BTC Holds $70K as $350M Crypto Wiped Out appeared on BitcoinEthereumNews.com. Bitcoin is trading around $70,500 today, with bulls once again defending

BTC Holds $70K as $350M Crypto Wiped Out

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Bitcoin is trading around $70,500 today, with bulls once again defending the psychologically important $70K level after several failed pushes above the mid‑$71K area. Recent daily data shows BTC ranging roughly between $69,300 and $70,300, underscoring how the market is consolidating in a tight band rather than trending strongly in either direction.

Bitcoin (BTC) Price Today. Source: CoinCodex

Despite being far off its October 2025 all‑time high above $120K, Bitcoin has now spent multiple sessions holding this high‑$60K to low‑$70K zone, suggesting that dip buyers are still willing to step in on tests of support.

Sentiment, however, remains fragile. Market snapshots over the last couple of days have described conditions as “extreme fear”, with traders scarred by earlier drawdowns and quick to de‑risk whenever BTC spikes toward resistance. That mix: solid spot support but cautious positioning, helps explain why Bitcoin keeps holding $70K but struggles to extend gains much beyond it.

Liquidations: Leverage Gets Punished Around $70K

Under the surface, derivatives data from this week show that over‑leveraged traders are still getting punished in both directions. A recent daily market overview highlighted that more than 80,000 traders were liquidated within 24 hours, with total forced closures in the $250M-$350M range across Bitcoin, Ethereum and major altcoins.

Longs have been particularly vulnerable: aggressive buyers chasing breakouts above $70K-$71K keep getting flushed out when BTC snaps back into the range.

At the same time, late shorts aren’t safe either. Sharp intraday bounces from the $69K area have triggered pain for bears who bet on a clean break lower, adding to the churn. This “ping‑pong” liquidation pattern is typical in a market where spot flows are relatively modest but leverage remains high: price doesn’t choose a clear direction, it simply moves far enough to trip stops and margin calls on both sides.

Ethereum and Altcoins: Following BTC’s Lead

Ethereum has been holding in the low‑$2,000s, generally tracking Bitcoin’s range‑bound behavior. While ETH’s on‑chain activity remains strong, network usage and smart‑contract interactions have been near cycle highs, its price continues to lag, with the asset still well below prior peaks even as BTC stabilizes near $70K.

Derivatives data show meaningful ETH liquidations alongside BTC whenever volatility picks up, although dollar totals are smaller given ETH’s lower market cap.

Altcoins have mostly traded as beta plays on Bitcoin: when BTC wicks below $70K, mid‑caps and small‑caps typically overshoot to the downside, and when BTC bounces back toward $71K, many alts see short‑lived relief rallies that quickly fade.

Recent flow analyses noted that capital remains selective, with only a few narratives (AI, L2s, and certain DeFi names) attracting sustained interest while the broader altcoin basket underperforms.

Source: https://coinpaper.com/15376/bitcoin-price-today-btc-holds-69-7-k-as-350-m-crypto-wiped-out

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