加密货币市场周度赢家与输家 – KAS、DEXE、UNI、TRUMP

ambcryptoPublicado em 2026-03-22Última atualização em 2026-03-23

Resumo

过去一周,比特币(BTC)下跌3.88%,受西亚局势紧张引发的全球经济担忧影响,周末出现快速抛售。尽管整体加密货币表现疲软,部分山寨币仍实现显著上涨,另一些则大幅下跌。 **本周涨幅领先的代币:** - **Kaspa(KAS)** 上涨19.5%,突破50日和100日移动平均线,但需克服0.042-0.047美元阻力区。 - **DeXe(DEXE)** 上涨18.62%,延续AI板块强势表现,但面临7.4美元供应区压力。 - **Fetch.ai(FET)** 和 **Quant(QNT)** 分别上涨16.55%和12.6%,表现突出。 **本周跌幅较大的代币:** - **Uniswap(UNI)** 下跌12.4%,DeFi板块整体市值下滑4.5%,3.6美元支撑位失守。 - **TRUMP** memecoin 下跌20.51%,会议利好消退后重回下跌趋势。 - **OKB** 下跌12.57%,较月内高点回落31.9%,未能维持涨势。 - **Midnight(NIGHT)**、**Render(RNDR)** 和 **Internet Computer(ICP)** 分别下跌16.6%、10.37%和9.66%。 **展望:** 若比特币能守住6.56万美元支撑位,可能反弹至7万美元以上,为近期相对强势的山寨币提供上涨机会。地缘政治紧张局势仍是市场主要风险因素。

过去一周,比特币(BTC)价格下跌3.88%。西亚局势升级的威胁及其对全球经济的影响导致周末出现快速抛售。

自周六71.1万美元的高点以来,比特币在24小时内下跌了3.5%。同期山寨币总市值缩水1.94%。尽管加密货币市场普遍存在担忧情绪,部分山寨币仍实现了显著的周度涨幅,而另一些则表现出明显的疲软态势。

现在来梳理本周最大赢家与输家。

周度赢家

Kaspa突破100日移动平均线吸引山寨币投资者关注

来源:TradingView KAS/USDT

日线图显示Kaspa近期存在看涨动力。3月16日周一交易量飙升至20日均线上方,并持续保持高位。

能量潮指标(OBV)持续走高,定向运动指数(DMI)显示强劲上涨趋势,KAS本周涨幅达19.5%。

然而价格走势呈现看跌摆动结构,0.042-0.047美元区间是多头需要攻克的关键阻力带。

价格已突破50日与100日移动平均线,但这些均线尚未形成金叉,表明该时间框架内尚未形成持续上行动能。

DeXe暴涨凸显加密AI板块相对强势

AMBCrypto在先前周报中指出AI板块市值呈现爆发式增长,热门AI代币单周涨幅超30%。

DeXe(DEXE)延续此趋势,本周上涨18.62%。

其他头部AI代币未能保持涨势,使得DeXe的相对强势更为突出。7.4美元区域是上方关键供给区。

River逼近突破局部高点

AMBCrypto最新报告显示River已重新确立看涨结构。若比特币出现抛售,预期可能回调至18美元。近期BTC抛压并未击退RIVER多头。

预计未来一周有望突破28.7美元局部高点并延续上涨动能。

其他值得关注的赢家

人工超级智能联盟(FET)是另一表现亮眼的AI代币,周涨幅16.55%。只要价格维持在0.2美元上方,FET多头将继续保持强势。

Quant(QNT)周涨幅12.6%,曾挑战80美元阻力位但首次尝试未果。

周度输家

Uniswap周跌12.4% DeFi板块整体疲软

来源:TradingView UNI/USDT

Glassnode数据显示DeFi板块市值周跌4.5%。其龙头代币中UNI表现最弱,一周前其价格正逼近4.29美元局部高点。

多头原本稳步推进,但涨幅迅速回吐。一周内3.6美元支撑位失守,RSI回落至中性值50下方,OBV上升动能亦显不足。

TRUMP大会热度消退后持续承压

官方特朗普代币(TRUMP)是上周交易中另一显著输家,24小时跌幅近5%,周跌幅达20.51%。此前因海湖庄园加密会议公告,该迷因币价格飙升至4美元。

此后长期看跌趋势再度占据主导。

OKB未能维持早期上涨动能

OKX交易所平台币OKB持续走低。本月早些时候,洲际交易所在宣布战略投资时对OKX给出250亿美元估值。

该消息推动OKB价格突破120美元,但涨势未能延续。较124.2美元高点回落31.9%,仅过去一周就下跌12.57%。

其他值得关注的输家

部分熟悉面孔再度出现在周度表现突出的山寨币列表中。Midnight(NIGHT)延续跌势,周跌幅16.6%。

Render(RENDER)和Internet Computer(ICP)是另外两个表现低迷的热门加密AI代币,分别录得10.37%和9.66%的周跌幅。

地缘政治紧张局势或导致未来一周低迷

比特币目前处于价值区间并呈现短期买入机会。若价格能维持在65.6万美元局部支撑上方,有望回升至70万美元以上。

这可能为部分山寨币提供上涨机会,尤其是近期对比特币展现出相对强势的币种。

最终总结

  • 周六的比特币抛售对部分山寨币的影响尤为严重
  • Kaspa和DeXe是本周领涨标的,而Midnight、TRUMP和OKB代币则延续近期跌势

Perguntas relacionadas

Q比特币(BTC)在过去一周的价格下跌了多少百分比?

A比特币(BTC)在过去一周下跌了3.88%。

QKaspa(KAS)和DeXe(DEXE)在过去一周的涨幅分别是多少?

AKaspa(KAS)上涨了19.5%,DeXe(DEXE)上涨了18.62%。

QUniswap(UNI)和TRUMP代币在过去一周的跌幅分别是多少?

AUniswap(UNI)下跌了12.4%,TRUMP代币下跌了20.51%。

Q文章中提到的人工智能(AI)板块代币有哪些?列举出至少两个赢家和两个输家。

AAI板块的赢家包括DeXe(DEXE)和Artificial Superintelligence Alliance(FET);输家包括Render(RENDER)和Internet Computer(ICP)。

Q根据文章,比特币如果保持在哪个价格水平以上,有可能反弹至7万美元以上?

A如果比特币价格能保持在6.56万美元的局部支撑位以上,则有可能反弹至7万美元以上。

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