Morgan Stanley files updated S-1 for spot Bitcoin ETF (MSBT) with $1M seed capital and Coinbase custody, aiming to be first major U.S. bank sponsor. The post MorganMorgan Stanley files updated S-1 for spot Bitcoin ETF (MSBT) with $1M seed capital and Coinbase custody, aiming to be first major U.S. bank sponsor. The post Morgan

Morgan Stanley (MS) Pushes Forward With Bitcoin ETF Plans in Amended SEC Filing

2026/03/20 15:31
3 min read
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Key Highlights

  • Morgan Stanley submitted an updated S-1 filing to the SEC for its spot Bitcoin ETF, designated to list as MSBT on NYSE Arca
  • Initial launch plans include a seed basket containing 50,000 shares, targeting roughly $1 million in capital
  • The financial institution acquired two shares on March 9 specifically for audit compliance requirements
  • BNY Mellon designated for cash custody and fund administration; Coinbase selected as prime brokerage partner
  • Approval would position Morgan Stanley as the first leading U.S. banking institution to directly launch and manage its own spot Bitcoin ETF

Morgan Stanley has delivered its second S-1 registration statement amendment to the U.S. Securities and Exchange Commission regarding a proposed spot Bitcoin exchange-traded fund. The investment vehicle is slated to list on NYSE Arca using the ticker MSBT.

https://twitter.com/CryptosR_Us/status/2034694397883793873?s=20

According to the regulatory document, the ETF structure includes a basket configuration of 10,000 shares with an opening seed basket totaling 50,000 shares. The banking giant anticipates this initial seed basket will generate approximately $1 million in capital upon commencement.

The institution purchased two ETF shares on March 9. This nominal acquisition was conducted exclusively to satisfy auditing requirements in preparation for a possible market debut.

BNY Mellon has been designated to manage the fund’s cash custody operations, administrative functions, and transfer agent responsibilities. Coinbase will function as the prime brokerage service and maintain custody of the fund’s Bitcoin holdings.

Morgan Stanley initially submitted its Bitcoin ETF application in January 2026. This latest S-1 amendment demonstrates ongoing advancement through the regulatory review pipeline, although the SEC has not yet issued final authorization.

Historic Potential as First Major Banking Institution to Launch Bitcoin ETF

Should regulatory authorities grant approval, Morgan Stanley would establish itself as the pioneer among major U.S. banking institutions to independently create and operate a spot Bitcoin ETF. This represents a significant departure from competitor banks that have merely enabled client access to existing cryptocurrency ETF products.

Morgan Stanley initiated client access to spot Bitcoin ETF investments through its brokerage platform in 2024. The firm has systematically broadened this accessibility in subsequent months.

Presently, 11 spot Bitcoin ETFs operate within U.S. markets, including BlackRock’s IBIT product. Collectively, these investment vehicles have accumulated over $56 billion in capital inflows since their January 2024 introduction.

Morgan Stanley simultaneously submitted an application for a spot Solana ETF in January along with its Bitcoin proposal. Nevertheless, no supplementary filings have emerged for the Solana vehicle, indicating the Bitcoin ETF is progressing more rapidly through regulatory channels.

Internal Platform Data Reveals Self-Directed Investor Dominance in Crypto ETF Usage

Amy Oldenburg, who leads Morgan Stanley’s digital asset strategy division, addressed attendees at this week’s DC Blockchain Summit. She revealed that approximately 80% of cryptocurrency ETF activity on Morgan Stanley’s investment platform originates from self-directed individual investors rather than advisor-guided portfolios.

Oldenburg characterized the cryptocurrency ETF marketplace as remaining in nascent development phases. Financial advisory professionals continue evaluating optimal strategies for incorporating digital assets within conventional investment allocation frameworks, she noted.

The SEC recently published regulatory guidance establishing that most cryptocurrencies should be classified as non-securities. BTC Markets analyst Rachael Lucas observed that this clarification eliminates a significant compliance obstacle that previously restricted institutional cryptocurrency participation.

Morgan Stanley awaits SEC authorization for its MSBT fund. The second S-1 amendment represents a procedural milestone in the ongoing regulatory examination process.

The post Morgan Stanley (MS) Pushes Forward With Bitcoin ETF Plans in Amended SEC Filing appeared first on Blockonomi.

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