Mantra的OM代币2025年跌幅扩大至99%——团队为何归咎于OKX

ambcryptoPublished on 2025-12-15Last updated on 2025-12-15

Abstract

曼陀罗(Mantra)的OM代币在2025年价格暴跌99%,项目团队与OKX交易所相互推诿。OKX指控Mantra团队借入大量USDT并以OM作为抵押进行价格操纵,随后冻结其账户并强制平仓,引发市场恐慌性抛售。Mantra CEO否认与OKX存在法律纠纷,称问题源于OKX与其他大额投资者之间的矛盾。OM曾在2024年底至2025年初上涨600%,但受此事件影响价格大幅回落。目前OM交易价格约为0.07美元,市场情绪悲观。Mantra计划于2026年1月15日前完成从以太坊ERC-20代OM向Layer 1主网代币MANTRA的迁移,能否借此摆脱当前争议尚待观察。

自Mantra的OM代币在4月份暴跌超99%以来,项目团队与加密货币交易所OKX持续陷入一场以投资者利益为代价的相互指责中。

OKX在最新声明中声称,Mantra团队借入"大量USDT"并以OM作为抵押品来"人为抬高"代币价格。

在价格操纵行为发生后,交易所风控团队被迫冻结相关账户并在价格小幅下跌后清算部分Mantra(OM)持仓,从而引发其他平台的恐慌性抛售。

OKX补充道:

"对方既未解释异常大量的OM代币来源,也未说明为何特定群体能持有并控制如此巨量的代币供应。"

该交易所直指Mantra团队的指控是"误导性叙述"。

市场对OM暴跌反应两极

但以Park Yong为代表的其他用户质疑OKX的动机,提出:

"若OKX真认为$OM是骗局,处理方式很简单:下架代币、开放提现并终止合作"

他进一步追问:

"这真是为了保护用户,还是因为迁移时间表确定后,交易所内部与$OM相关的风险暴露令其不安?"

据悉,Mantra是一个专注于代币化的协议,即将从以太坊完全迁移至Layer 1(注:原文L2疑似笔误)。

因此其ERC-20治理代币OM将转换为MANTRA,迁移最终截止日为2026年1月15日。

基于迁移计划,OKX曾联系团队协助处理其OM持币的转换事宜。

尽管交易所声称已采取法律行动,但Mantra首席执行官JP Mullin否认了这一说法,明确表示:

"MANTRA及我本人与OKX之间不存在任何正在进行的诉讼或法律行动。这是他们与其他OM大额交易者/投资者之间的问题"

Mantra回吐600%涨幅

在延续至2025年2月的2024年底上涨行情中,OM曾创下600%的涨幅。

虽然在2025年初关税政策冲击下部分回撤,但在OKX以操纵市场为由冻结团队账户后暴跌超80%。

截至发稿,OM交易价格为0.07美元。据CoinGlass数据显示,其期货市场情绪呈压倒性看空。

除价格图表外,该链正在通过推出MantraUSD稳定币等新产品进行布局。

迁移前仍有超3.6万名持有者持有OM。此次迁移能否帮助该链走出OKX与项目团队的丑闻阴影仍有待观察。


事件要点

  • Mantra团队与OKX均否认导致OM在2025年暴跌超90%
  • 据Mantra链CEO透露,OM大额投资者正因损失对OKX提起诉讼

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Related Questions

QMantra的OM代币在2025年经历了怎样的价格变化?

AMantra的OM代币在2025年经历了灾难性的价格下跌。尽管它在2024年底至2025年2月的反弹中曾获得600%的惊人涨幅,但在2025年初因关税逆风部分回吐涨幅后,又因OKX交易所冻结团队账户并指控其操纵市场,导致价格暴跌超过80%。从4月的高点算起,其价格总共暴跌了99%。

QOKX交易所对OM代币价格暴跌给出了什么解释?

AOKX交易所声称,Mantra团队借入了‘大量USDT’并使用OM作为抵押品来‘抬高’代币价格。在价格出现轻微下跌后,触发了连锁反应,导致交易所的风险团队被迫冻结相关账户并清算部分OM持仓,从而引发了跨平台的抛售潮。OKX还质疑这些异常大量的OM代币来源不明,并称Mantra团队的指控是一个‘误导性的说法’。

QMantra首席执行官JP Mullin如何回应OKX的法律行动说法?

AMantra首席执行官JP Mullin明确否认了OKX关于有法律行动正在进行的说法。他 affirm(确认)道:‘MANTRA公司或我本人都没有与OKX存在任何正在进行的诉讼或法律行动。这是他们与其他OM大型交易者/投资者之间的事情。’

Q社区用户Park Yong对OKX的行为提出了哪些质疑?

A社区用户Park Yong对OKX的动机提出了质疑。他认为,如果OKX真的认为$OM是一个骗局,简单的做法应该是将其下架、允许用户提现并就此了结。他进一步追问,OKX的行为‘这真的是为了保护用户,还是因为迁移时间表启动后,其内部与$OM相关的风险暴露变得令人不安?’

QMantra链的未来计划是什么,当前持有者情况如何?

AMantra是一个专注于资产代币化的协议,计划从以太坊迁移成为一个完整的Layer 1(文中误写为L2)。因此,其ERC-20治理代币OM将转换为MANTRA代币,迁移最终完成日期定于2026年1月15日。除了迁移,该链还在布局新产品,包括稳定币MantraUSD。尽管发生丑闻,截至发稿时,仍有超过3.6万名OM持有者,迁移能否帮助该项目走出与OKX的纠纷阴霾还有待观察。

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