The post Bitcoin price faces a crucial weekend test as US growth collapses to 0.7% while inflation stays stubborn appeared on BitcoinEthereumNews.com. On Mar. 13The post Bitcoin price faces a crucial weekend test as US growth collapses to 0.7% while inflation stays stubborn appeared on BitcoinEthereumNews.com. On Mar. 13

Bitcoin price faces a crucial weekend test as US growth collapses to 0.7% while inflation stays stubborn

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On Mar. 13, the US economy delivered a data dump that landed somewhere between uncomfortable and alarming.

The GDP for the 2025 fourth quarter was revised down to 0.7% from an initial estimate of 1.4%, following 4.4% growth in the third quarter.

January core PCE rose 3.1% year over year, with a 0.4% monthly increase. January durable-goods orders were virtually unchanged, while core capital goods orders came in flat, with shipments down 0.1%. Real consumer spending edged up just 0.1%.

These numbers were delayed by last year’s 43-day shutdown and hit the market after the Feb. 28 start of the US-Israeli war on Iran. Oil spiked to $119.50 this week before easing back to near $100. US gasoline prices are up 20% to $3.58 a gallon since the war began.

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The Fed meets Mar. 17-18, and futures markets have scaled back expected 2026 rate cuts to about a one-quarter-point move by December, down from two before the conflict.

Bitcoin, meanwhile, has been showing early signs of stabilization. Glassnode said on Mar. 11 that ETF inflows had returned, spot demand was beginning to recover, funding had turned negative, and options volatility had eased.

BTC traded around $70,600 as of press time after hitting $74,000 intraday on Mar. 13. US spot Bitcoin ETFs took in a net $583 million from Mar. 9 through Mar. 12, according to Farside Investors data, following a $348.9 million outflow on Mar. 6.

Bitcoin’s fragile rebound is running straight into the worst possible macro mix for risk assets: slower growth, sticky inflation, and a Federal Reserve with fewer clean options.

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The economy was already softening

The GDP revision tells a deeper story than the headline number suggests.

The downward adjustment came from weaker exports, consumer spending, government spending, and investment.

Real final sales to private domestic purchasers, a cleaner gauge of underlying domestic demand, slowed to 1.9% from an initial estimate of 2.4% and from 2.9% in the third quarter.

That means the economy entered the Iranian oil shock on a shakier footing than the original fourth quarter release implied. Nominal consumer spending rose 0.4% in January, but real spending barely budged.

Indicator Latest reading Prior / comparison Why it matters
Q4 2025 GDP 0.7% 1.4% initial estimate / 4.4% in Q3 Growth slowed sharply
Real final sales to private domestic purchasers 1.9% 2.4% initial / 2.9% in Q3 Cleaner read on domestic demand
Core PCE inflation 3.1% YoY Fed target: 2.0% Underlying inflation still sticky
Real consumer spending 0.1% MoM Nominal spending: 0.4% Consumers are spending, but barely in real terms
Core capital goods orders Flat Shipments: -0.1% Business investment lost momentum

Business equipment demand lost momentum, with core capital goods orders flat and shipments down.

The inflation side adds pressure. January headline PCE came in at 2.8% year over year, but core PCE rose to 3.1%, with a 0.4% monthly increase.

That puts the Fed’s most closely watched inflation measure well above the 2% target. The central bank’s current target range is 3.50% to 3.75%, unchanged since January.

The twist that makes this more urgent is that all of these numbers predate the energy shock.

Reuters noted that the February CPI and the delayed January PCE period came before the strikes at the end of February, while the war-driven oil spike only hit afterward.

The backward-looking data already looked uncomfortable before the energy shock fully feeds through.

Economists are now warning that higher energy costs could worsen the trade-off between growth and inflation.

Goldman Sachs said a temporary move to $100 oil could shave 0.4% off global growth and add 0.7% to global headline inflation in its upside scenario.

Reuters reported that economists see March consumer prices potentially rising as much as 1%.

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Bitcoin’s fragile internals face a real test

The Federal Reserve meets Mar. 17-18, and markets widely expect the central bank to hold rates steady.

The bigger test is what the Fed Chair Jerome Powell says about the macro crosscurrents.

Rate-cut expectations have already been pushed back amid the war, which complicates the inflation outlook.

The classic bad menu is now in front of the Fed: slower growth, sticky prices, and an energy shock that could make both worse. If Powell leans more heavily on inflation patience than on downside-growth worries, risk assets face a tougher environment.

If he acknowledges greater energy-related uncertainty while maintaining a cautious tone, the market remains stuck in a holding pattern.

The problem for Bitcoin is that neither path offers much support. A hawkish hold reinforces “higher for longer” rates while also signaling slower growth. A dovish-but-cautious hold keeps the macro overhang in place without delivering relief.

Bitcoin has better near-term internals than the macro backdrop warrants, making the next few weeks more interesting. ETF flows turned positive again after a brief period of outflows.

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Funding has turned negative rather than euphoric, which removes some froth from the market.

Options volatility has eased, and Glassnode noted growing upside interest around $75,000 alongside a main demand zone at $60,000 to $69,000.

The market is stabilizing, though Glassnode described conditions as fragile, with spot demand beginning to recover rather than fully recovered. The question is whether that stabilization can hold together while the Fed and oil backdrop deteriorate.

Scenario Macro trigger Fed tone Likely BTC implication
Bull Oil retreats from spike Shock treated as temporary BTC can retest $75,000
Base / holding pattern Oil stays elevated but stable Cautious hold, uncertainty emphasized BTC stays range-bound
Bear Oil near $100, inflation fears harden “Higher for longer” reinforced BTC vulnerable to $60,000–$69,000 demand zone
Black swan Prolonged Hormuz disruption Policy trap narrative BTC trades like a stressed risk asset

If oil keeps retreating from this week’s spike and the Fed treats the energy shock as serious but temporary, Bitcoin’s next clean test is the $75,000 area.

Goldman still expects Brent to drift back toward the low $70s later this year in its central view. Continuing ETF inflows would support a move higher.

If oil stays near $100 and inflation fears harden, Bitcoin becomes vulnerable to a retest of the $60,000 to $69,000 demand zone.

The market would be pricing “higher for longer” rates and slower growth simultaneously, which is a difficult combination for any risk asset.

The black swan scenario is a prolonged disruption of the Hormuz disruption that shifts the narrative from “temporary energy hit” to “policy trap.” In that case, Bitcoin behaves as a stressed risk asset.

Why does this extend beyond crypto

This is the classic bad menu for anyone with stocks, retirement accounts, mortgages, or exposure to risk assets.

For mainstream investors For crypto investors
Slower growth threatens stocks and earnings expectations Bitcoin is being tested by worsening macro, not just crypto-specific sentiment
Sticky inflation keeps pressure on borrowing costs and mortgages “Higher for longer” rates are a tough backdrop for fragile rebounds
Higher gasoline and energy costs hit households directly ETF inflows and better internals help, but may not offset macro stress
The Fed has less room to cushion a slowdown BTC must prove stabilization can survive a macro shock

The economy looked softer than advertised even before the oil shock, and now the Fed has less room to help if growth worsens.

For crypto holders, what is worth watching is Bitcoin being asked to prove it can hold together while ETF demand improves, but the Fed and oil backdrop deteriorate.

The market is not entering this test in full-blown mania mode, which is actually the stronger setup. Funding is negative, volatility has eased, and flows have stabilized.

The challenge is that macro conditions are worsening faster than Bitcoin’s internal repair is progressing. The economy was already losing momentum before the oil shock arrived.

Business investment started the first quarter weakly. Consumer spending barely grew in real terms. Core inflation is sticky, and gasoline prices are moving higher in real time.

The Fed meets next week, and Powell will have to navigate a deteriorating growth-inflation mix with limited tools. Markets have already scaled back rate-cut expectations.

If the energy shock persists, the policy choices get harder.

Bitcoin’s stabilization is real, but the worst possible macro environment is testing it for a fragile rebound.

Source: https://cryptoslate.com/bitcoin-price-faces-a-crucial-weekend-test-as-us-growth-collapses-to-0-7-while-inflation-stays-stubborn/

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