Crypto Market Could Bear the Brunt of Oil Price Rise

TheNewsCryptoPubblicato 2026-03-03Pubblicato ultima volta 2026-03-03

Introduzione

The crypto market is showing signs of recovery with rising prices for major cryptocurrencies like BTC and ETH, alongside a 2.72% increase in total market capitalization. However, this recovery faces a potential setback due to rising oil prices, driven by ongoing Middle East tensions. Higher oil costs could fuel inflation, prompting investors to seek safer assets and negatively impacting crypto. Brent crude futures have already increased, and supply risks persist. Additionally, PMI data for the US and India showed mixed results in February 2026, with expectations of further impact in March. Analysts note a high chance of Bitcoin falling to $60,000 this year due to these macroeconomic pressures.

The crypto market is recovering after recent losses; however, the rising oil price could mark a pullback moment. This stems from the ongoing conflict in the Middle East, which has affected global oil prices and gas shipping cost. March 2026 PMI data for critical nations is likely to be impacted.

First, the Crypto Market

The crypto market is attempting a recovery – evident from increases for BTC, ETH, BNB, and other cryptocurrencies. Also, the collective market cap has jumped by 2.72%, and the FGI has shifted more towards the green section with 20 points.

Kalshi Trader earlier forecasted a 85% chance for the flagship token to go as low as $60,000 this year. The sustained Middle East conflict could make it happen. Alternatively, Kalshi Traders have estimated bitcoins to hit $75k in March 2026. It had earlier projected a 30% chance for the token to reach $80k this month.

A higher oil price could eventually affect cryptocurrencies if it massively triggers inflation and forces investors to side with safer alternatives. That said, it is important to note that the content of this article is neither a recommendation nor advice. It is important to do thorough research and risk assessment before crypto investments..

Oil Prices

There is enough risk to the oil supply as the State of Hormuz could be choked practically. Thereby disrupting oil prices worldwide. Brent crude futures have already surged by 2.2% to $79.44 per barrel. It earlier booked a spot at $82.37.

Analysts have noted that nations are reviewing the risk of elevated conflict in the region, even though Israeli Prime Minister ​Benjamin Netanyahu said that the war may only take some time and not years.

Meanwhile, daily freight rates for LNG tankers soared by 40% on the first day of the week, which is Monday. Market experts have hinted at a weak availability throughout March 2026.

PMI of the US and India

The PMI data for the US and India went up for February 2026. India’s number jumped from 55.4 to 56.9 while the number for the US dipped slightly. America saw a drop from 52.6 to 52.4, a soft stand possibly due to trade uncertainty, high prices, and a decline in export orders.

These numbers are under the light because they are estimated to be impacted in the next month – March 2026. Cryptocurrencies continue to keep investors on the edge despite a decline in volatility for top digital assets.

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Domande pertinenti

QWhat is the main factor that could cause a pullback in the crypto market according to the article?

AThe rising oil price, stemming from the ongoing conflict in the Middle East.

QWhat are the two specific price predictions for Bitcoin mentioned by Kalshi Trader?

AAn 85% chance of Bitcoin falling to $60,000 this year and an estimate for it to hit $75,000 in March 2026.

QHow did the daily freight rates for LNG tankers change at the start of the week?

AThey soared by 40% on Monday.

QWhat was the trend in the PMI data for the US and India in February 2026?

AIndia's PMI jumped from 55.4 to 56.9, while the US PMI dipped slightly from 52.6 to 52.4.

QWhat was the immediate market reaction to the Middle East conflict on Brent crude futures?

ABrent crude futures surged by 2.2% to $79.44 per barrel.

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