比特币涨势迅猛,7.5 万成攻坚点,突破契机在哪?

ambcryptoОпубликовано 2026-03-16Обновлено 2026-06-05

Введение

若能果断突破 7.5 万美元阻力位,则有望加速向8 万美元迈进。

比特币(BTC)周一飙升至74,000 美元,周涨幅扩大至12%;截至发稿,BTC 回吐部分涨幅,交易价为73,711 美元。

整体来看,比特币的投资者回报及相对黄金、传统金融市场的强势表现,进一步巩固了加密资产在地缘政治紧张局势下的避险对冲属性。

期权交易员瞄准 7.5 万美元关键关口

随着中东危机持续发酵,距离季度期权到期仅剩两周,期权市场仓位成为观察投资者短期风险偏好与预期的核心窗口。

据区块链分析公司 Glassnode 数据,7.5 万美元仍是关键价位,该区间聚集了大量看涨期权买盘(多头押注);若能有效突破,交易商对冲资金流或将进一步放大上涨动能。

与此同时,多数看跌期权(空头押注)与对冲活动集中在6 万美元,表明专业投资者仍在为潜在回调做准备。

这意味着,未来两周比特币大概率在6 万–7.5 万美元区间震荡;若能果断突破 7.5 万美元阻力位,则有望加速向8 万美元迈进。事实上,3 月 13 日比特币在 7.5 万美元附近已遭遇强劲抛压,该价位成为多头延续复苏行情的核心障碍。

突破瓶颈:为何迟迟未能向上破位?

比特币在当前区间震荡已久,核心原因之一是买盘动力不足。据加密研究公司 Swissblock 分析,2 月比特币跌破 6 万美元时,市场抄底需求旺盛,大量投资者低价入场;叠加网络增长激增(新参与者涌入),推动价格在过去一个月稳定在 6 万美元上方。

但 Swissblock 强调,要彻底突破当前区间,需满足两个条件之一:

网络增长再次大幅激增(证明新资金入场)

当前价位出现更密集的主动买盘

否则,比特币仍处于复苏阶段,尚未进入明确的扩张周期。

ETF 资金流入:多头突破的重要支撑

本周比特币的韧性表现,离不开现货比特币 ETF 的持续资金流入:本周净流入达7.67 亿美元。若下周这一积极趋势延续,多头或再次发起对 7.5 万美元关口的冲击。

最终总结

中东危机进入第二周,比特币表现显著优于黄金与美国股市,超额收益超18%;现货比特币 ETF 单周净流入7.67 亿美元,进一步推动价格向7.5 万美元关键阻力位发起冲击。

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