Uncertainty is Dominating Global Trade and Crypto Market is Feeling the Heat

TheNewsCryptoPubblicato 2026-02-24Pubblicato ultima volta 2026-02-24

Introduzione

The US Supreme Court's decision to strike down tariffs imposed by former President Donald Trump has heightened uncertainty in global trade, with experts noting a lack of clarity in future trade dynamics. This uncertainty is mirrored in the crypto market, where bearish sentiment prevails. The Crypto Fear & Greed Index has dropped to 11, and the total market capitalization fell 3.37% to $2.18 trillion, with significant liquidations recorded. Bitcoin and Ethereum have both declined over the past week, trading at $63,187.61 and $1,828.01, respectively. Additionally, both Spot Bitcoin and Ethereum ETFs experienced outflows, reflecting broader market caution. The overall sentiment remains tense as traders monitor ongoing developments.

The US Supreme Court striking down tariffs imposed by President Donald Trump has brought many sentiments, uncertainty is one of them, especially for global trade. Experts believe that there is still no clarity about what will happen in the future across the global trade spectrum. Meanwhile, the crypto market is on the edge, feeling the heat in the form of a lower FGI and higher volatility.

Uncertainty Across the Trading Sphere

The Federal Reserve has reportedly expressed concerns about elevated inflation, but that’s only one part of it. Ray Attrill, Head of Currency Strategy at National Australia Bank, appeared on a NAB podcast and stated that they were back in a very uncertain environment with little to no idea about the future trade landscape.

Donald Trump has, for now, raised the tariff from 10% to 15%. His administration is looking into national security tariffs on select industries. This includes plastic piping, industrial chemicals, and large-scale batteries, among many others.

Uncertainty looms over countries irrespective of a deal they reached and/or signed with the US earlier. For instance, the European Parliament has postponed its voting session on the trade deal with the US.

Bears in Crypto Market

Bearish sentiment is more than evident in the crypto market, with the FGI slipping down to 11 points. There is also a notable drop of 3.37% in the collective market cap, which now stands at $2.18 trillion. Almost $375.45 million worth of liquidations have been executed in a single day to this moment.

A lot of attention is on BTC, the flagship cryptocurrency. It has shed 3.95% over the last 24 hours and 7.37% in the last 7 days. Bitcoin tokens are being traded at $63,187.61 when the article is being drafted. Even ETH has lost 7.51% of its value in the last 7 days to drop to $1,828.01.

ETF Flows

Uncertainty has possibly also spread across both ETFs – Spot Bitcoin ETF and Spot Ethereum ETF. The former noted an outward movement of $203.8 million on February 23, 2026 while the latter recorded an outflow of $49.5 million on the same day.

It is a potential streak of outflows for BTC ETF and an extension for Ether ETF. Simply put, global trade and every possible aspect of the crypto market are watching what happens next as uncertainty persists.

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Domande pertinenti

QWhat is the main theme of the article regarding global trade and the crypto market?

AThe main theme is that uncertainty is impacting global trade, and this uncertainty is also affecting the crypto market, leading to bearish sentiment, lower Fear and Greed Index (FGI) scores, and increased volatility.

QAccording to the article, what action did the US Supreme Court take regarding tariffs, and what was one significant consequence?

AThe US Supreme Court struck down tariffs imposed by President Donald Trump, which has contributed to increased uncertainty in global trade.

QHow has the bearish sentiment in the crypto market been quantified in the article?

AThe bearish sentiment is evidenced by the FGI dropping to 11 points, a 3.37% decrease in the total market cap to $2.18 trillion, and $375.45 million in liquidations in a single day.

QWhat were the specific outflows for Spot Bitcoin ETF and Spot Ethereum ETF on February 23, 2026, as mentioned in the article?

AThe Spot Bitcoin ETF had an outflow of $203.8 million, and the Spot Ethereum ETF had an outflow of $49.5 million on that day.

QWhich specific industries is the Trump administration reportedly looking into for national security tariffs?

AThe administration is looking into national security tariffs on industries including plastic piping, industrial chemicals, and large-scale batteries, among others.

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