比特币重返六万美元,主流机构的持仓和盈亏情况如何?

Odaily星球日报Publicado em 2024-02-29Última atualização em 2024-02-29

Resumo

平均浮盈超11.2亿美元,且平均回报率达134.8%。

原文作者:Nancy,PANews

时隔两年多时间,比特币首次重新站上六万美元关口,且兑多种法币价格已创下历史新高。随着比特币价格狂飙,重仓的“巨鲸们”也赚得盆满钵满。本文 PANews 盘点了 8 家主流机构和国家的持仓量和盈利情况,平均浮盈超 11.2 亿美元,且平均回报率达 134.8% 。其中,美国政府、MicroStrategy、Marathon Digital 和 Coinbase Global 持仓量最多。同时,相比其他机构,美图、萨尔瓦多和 Telsa 的购入成本最高。

美国政府

美国政府是世界上最大的比特币持有者之一,在各类持法行动中“ 0 元购”巨量比特币。Arkham Intelligence 数据显示,截至 2 月 29 日,美国政府持有超 20 万枚比特币(当前价值超 124.4 亿美元)。

MicroStrategy

“大多头”MicroStrategy 是全球持有比特币最多的上市公司。Saylortracker 数据显示,截至 2 月 29 日,MicroStrategy 共持有 19.3 万枚比特币(当前价值超 118.93 亿美元),每枚比特币的平均购入成本约为 31780 美元,已浮盈超 61.35 亿美元,投资回报率达 100.03% 。

Marathon Digital

Marathon Digital 是北美最大的比特币矿商之一,其股价也在近期受比特币行情影响一度触及两年新高。Bitcoin Treasuries 数据显示,截至 2 月 29 日,Marathon Digital 共持有 15, 741 枚比特币(当前价值 9.67 亿美元),平均购入成本价为 13, 785 美元,已浮盈超 7.77 亿美元,投资回报率超 411.4% 。

Coinbase Global

Coinbase Global 是美国首家上市的加密货币领域的公司。Bitcoin Treasuries 数据显示,截至 2 月 29 日, Coinbase Global 共持有 9480 枚比特币(当前价值 4.97 亿美元),平均购入成本价为 23, 294 美元,已浮盈近 3.62 亿美元,投资回报率超 163.8% 。

Telsa

Telsa 是个“钻石手”,从 2022 年第二季以来,已连续 6 个季度并未对比特币进行任何买卖操作。 Bitcoin Treasuries 数据显示,截至 2 月 29 日,Telsa 共持有 9, 720 枚比特币(当前价值 6.02 亿美元),平均购入成本价约为 34, 722 美元,已浮盈超 2.59 亿美元,投资回报率达 77% 。

Block Inc.

Block Inc.是由 Twitter 前首席执行官 Jack Dorsey 联合创立的金融科技公司,Jack Dorsey 是比特币的忠实拥护者。Bitcoin Treasuries 数据显示,截至 2 月 29 日,Block Inc.共持有 8, 027 枚比特币(当前价值 4.97 亿美元),平均购入成本价为 27, 407 美元,已浮盈约 2.73 亿美元,投资回报率超 124.2% 。

萨尔瓦多

作为全球首个采用比特币作为法定货币的国家,萨尔瓦多的比特币持仓在过去两年时间一路亏损。随着今年比特币涨势惊人,萨尔瓦多也扭亏为盈,总统 Nayib Bukele 最新还表示,该国无计划出售比特币。Nayibtracker 数据显示,截至 2 月 29 日,萨尔瓦多共持有 2849 枚比特币(当前价值超 1.75 亿美元),平均购入成本价为 42, 504 美元,已浮盈超 6009.9 万美元,投资回报率约为 49.63% 。

美图

作为首个港股上市公司公开持有比特币,美图曾斥巨资多次购入比特币和以太坊,但因行情暴跌亏损严重,自 2021 年后已基本未有再买入加密货币。美图曾在去年表示公司已不再重点关注及买入这类资产,或将在合适时间点卖出。CoinGecko 数据显示,截至 2 月 29 日,美图共持有 940 枚比特币(当前价值 5825.4 万美元),平均购入成本价为 52, 659 美元,已浮盈超 875.4 万美元,投资回报率超 17.7% 。

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