TLDR Strategy now holds 640,418 Bitcoin, valued at $47.4B, after recent purchase. Strategy achieved 26% YTD yield on Bitcoin holdings, continuing its strong growth. Strategy funded recent Bitcoin buy with $18.9M raised from stock sales. Bitcoin price surge coincides with Strategy’s consistent acquisition strategy. Strategy, the largest corporate holder of Bitcoin, has added 168 BTC [...] The post Strategy Buys 168 Bitcoin for $18.8M Increasing Total Holdings to 640,418 appeared first on CoinCentral.TLDR Strategy now holds 640,418 Bitcoin, valued at $47.4B, after recent purchase. Strategy achieved 26% YTD yield on Bitcoin holdings, continuing its strong growth. Strategy funded recent Bitcoin buy with $18.9M raised from stock sales. Bitcoin price surge coincides with Strategy’s consistent acquisition strategy. Strategy, the largest corporate holder of Bitcoin, has added 168 BTC [...] The post Strategy Buys 168 Bitcoin for $18.8M Increasing Total Holdings to 640,418 appeared first on CoinCentral.

Strategy Buys 168 Bitcoin for $18.8M Increasing Total Holdings to 640,418

2025/10/21 00:04
3 min read
For feedback or concerns regarding this content, please contact us at crypto.news@mexc.com

TLDR

  • Strategy now holds 640,418 Bitcoin, valued at $47.4B, after recent purchase.
  • Strategy achieved 26% YTD yield on Bitcoin holdings, continuing its strong growth.
  • Strategy funded recent Bitcoin buy with $18.9M raised from stock sales.
  • Bitcoin price surge coincides with Strategy’s consistent acquisition strategy.

Strategy, the largest corporate holder of Bitcoin, has added 168 BTC to its portfolio for approximately $18.8 million. This acquisition continues the company’s ongoing strategy to increase its Bitcoin holdings. The purchase further boosts its year-to-date (YTD) yield, which now stands at 26%. Strategy’s aggressive stance in the crypto market shows its commitment to holding significant Bitcoin reserves despite market fluctuations.

Strategy’s Continued Bitcoin Accumulation

Between October 13 and 19, Strategy acquired 168 Bitcoin at an average price of $112,051 per coin. This recent purchase follows a pattern of consistent acquisitions, reinforcing the company’s focus on expanding its Bitcoin treasury. With this latest addition, Strategy’s total Bitcoin holdings have now reached 640,418 BTC, valued at $47.40 billion, with an average acquisition price of $74,010 per Bitcoin.

This acquisition marks the second consecutive weekly Bitcoin purchase, signaling Strategy’s continued confidence in the long-term value of Bitcoin. The company has been acquiring Bitcoin regularly throughout 2025, even in the face of market volatility, showing its commitment to building a substantial crypto asset base.

Bitcoin Market Recovery Boosts Strategy’s Holdings

The purchase comes at a time when the Bitcoin market has experienced a rebound. After a period of market downturns, Bitcoin’s price has surged, briefly reaching $111,000. Strategy’s acquisition aligns with the upward trend in the market. The recovery is also reflected in the company’s stock performance, with the MSTR ticker rising by nearly 3%, trading at around $297 after a dip earlier in the year.

Despite the rebound, Strategy’s stock has not yet recovered its earlier 2025 gains. At its peak earlier this year, MSTR traded as high as $455, but it has since faced a decline. However, the company’s Bitcoin holdings remain a key factor in its long-term strategy, and its aggressive acquisitions show that it plans to hold its position as the largest corporate holder of Bitcoin.

Strategy’s Funding and Recent SEC Filing

To finance its latest Bitcoin purchase, Strategy raised funds by selling stocks from STRF, STRK, and STRD. The company raised a total of $18.9 million through these sales—$11.2 million from STRF, $5.1 million from STRK, and $2.6 million from STRD. This move highlights Strategy’s ability to generate capital through its stock sales to continue funding its Bitcoin acquisitions.

The company’s SEC filings reveal that the funds were directly allocated for the purchase of Bitcoin, further strengthening its position in the cryptocurrency space. These filings also provide transparency into the company’s ongoing investment strategy and long-term vision for its Bitcoin reserves.

Strategy’s Position in the Crypto Market

Strategy, formerly known as MicroStrategy, has positioned itself as a major player in the cryptocurrency sector, particularly with its focus on Bitcoin. The company has been vocal about its plans to build Bitcoin reserves, with its leadership engaging in discussions with key U.S. government figures, including those at the White House. This underscores Strategy’s belief in Bitcoin as a long-term asset class, both for corporate reserves and broader institutional adoption.

As of now, the company’s Bitcoin holdings have delivered a 26% yield year-to-date, reflecting the potential growth of its digital assets portfolio. Strategy’s continued commitment to Bitcoin acquisition underscores its role in shaping the future of corporate investments in crypto assets.

The post Strategy Buys 168 Bitcoin for $18.8M Increasing Total Holdings to 640,418 appeared first on CoinCentral.

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