The post LDO Price Prediction: Targeting $0.76-$0.85 Recovery as Technical Indicators Signal Bullish Reversal appeared on BitcoinEthereumNews.com. Rebeca Moen Dec 01, 2025 09:21 LDO price prediction shows potential 29-44% upside to $0.76-$0.85 range within 4-6 weeks as MACD histogram turns positive and oversold conditions persist near $0.59 support. Lido DAO (LDO) appears positioned for a technical bounce after testing critical support levels, with multiple analysts converging on similar price targets despite the current market weakness. Our comprehensive LDO price prediction analysis suggests a potential recovery is brewing as key momentum indicators begin showing early bullish divergence signals. LDO Price Prediction Summary • LDO short-term target (1 week): $0.67 (+13.6%) • Lido DAO medium-term forecast (1 month): $0.76-$0.85 range (+29-44%) • Key level to break for bullish continuation: $0.73 • Critical support if bearish: $0.58 Recent Lido DAO Price Predictions from Analysts The latest Lido DAO forecast from multiple sources shows remarkable consistency, with analysts from Blockchain.News and MEXC News both targeting the $0.76-$0.85 range for medium-term recovery. This consensus emerges despite current market fear, with the Fear & Greed Index sitting at just 22. Blockchain.News maintains medium confidence in their LDO price target, citing positive MACD histogram readings that support bullish momentum despite broader market pessimism. Meanwhile, MEXC News emphasizes oversold conditions and bullish divergence patterns, also pointing toward the same $0.76-$0.85 recovery zone. However, Hexn takes a more conservative approach with their LDO price prediction, targeting only $0.6715 in the short term with low confidence, reflecting the neutral market sentiment that continues to weigh on cryptocurrency assets. LDO Technical Analysis: Setting Up for Recovery The Lido DAO technical analysis reveals several compelling factors supporting a bullish reversal scenario. Most notably, the MACD histogram has turned positive at 0.0019, marking the first bullish momentum signal in weeks despite the broader downtrend. LDO’s current position at $0.59 places it near… The post LDO Price Prediction: Targeting $0.76-$0.85 Recovery as Technical Indicators Signal Bullish Reversal appeared on BitcoinEthereumNews.com. Rebeca Moen Dec 01, 2025 09:21 LDO price prediction shows potential 29-44% upside to $0.76-$0.85 range within 4-6 weeks as MACD histogram turns positive and oversold conditions persist near $0.59 support. Lido DAO (LDO) appears positioned for a technical bounce after testing critical support levels, with multiple analysts converging on similar price targets despite the current market weakness. Our comprehensive LDO price prediction analysis suggests a potential recovery is brewing as key momentum indicators begin showing early bullish divergence signals. LDO Price Prediction Summary • LDO short-term target (1 week): $0.67 (+13.6%) • Lido DAO medium-term forecast (1 month): $0.76-$0.85 range (+29-44%) • Key level to break for bullish continuation: $0.73 • Critical support if bearish: $0.58 Recent Lido DAO Price Predictions from Analysts The latest Lido DAO forecast from multiple sources shows remarkable consistency, with analysts from Blockchain.News and MEXC News both targeting the $0.76-$0.85 range for medium-term recovery. This consensus emerges despite current market fear, with the Fear & Greed Index sitting at just 22. Blockchain.News maintains medium confidence in their LDO price target, citing positive MACD histogram readings that support bullish momentum despite broader market pessimism. Meanwhile, MEXC News emphasizes oversold conditions and bullish divergence patterns, also pointing toward the same $0.76-$0.85 recovery zone. However, Hexn takes a more conservative approach with their LDO price prediction, targeting only $0.6715 in the short term with low confidence, reflecting the neutral market sentiment that continues to weigh on cryptocurrency assets. LDO Technical Analysis: Setting Up for Recovery The Lido DAO technical analysis reveals several compelling factors supporting a bullish reversal scenario. Most notably, the MACD histogram has turned positive at 0.0019, marking the first bullish momentum signal in weeks despite the broader downtrend. LDO’s current position at $0.59 places it near…

LDO Price Prediction: Targeting $0.76-$0.85 Recovery as Technical Indicators Signal Bullish Reversal



Rebeca Moen
Dec 01, 2025 09:21

LDO price prediction shows potential 29-44% upside to $0.76-$0.85 range within 4-6 weeks as MACD histogram turns positive and oversold conditions persist near $0.59 support.

Lido DAO (LDO) appears positioned for a technical bounce after testing critical support levels, with multiple analysts converging on similar price targets despite the current market weakness. Our comprehensive LDO price prediction analysis suggests a potential recovery is brewing as key momentum indicators begin showing early bullish divergence signals.

LDO Price Prediction Summary

LDO short-term target (1 week): $0.67 (+13.6%)
Lido DAO medium-term forecast (1 month): $0.76-$0.85 range (+29-44%)
Key level to break for bullish continuation: $0.73
Critical support if bearish: $0.58

Recent Lido DAO Price Predictions from Analysts

The latest Lido DAO forecast from multiple sources shows remarkable consistency, with analysts from Blockchain.News and MEXC News both targeting the $0.76-$0.85 range for medium-term recovery. This consensus emerges despite current market fear, with the Fear & Greed Index sitting at just 22.

Blockchain.News maintains medium confidence in their LDO price target, citing positive MACD histogram readings that support bullish momentum despite broader market pessimism. Meanwhile, MEXC News emphasizes oversold conditions and bullish divergence patterns, also pointing toward the same $0.76-$0.85 recovery zone.

However, Hexn takes a more conservative approach with their LDO price prediction, targeting only $0.6715 in the short term with low confidence, reflecting the neutral market sentiment that continues to weigh on cryptocurrency assets.

LDO Technical Analysis: Setting Up for Recovery

The Lido DAO technical analysis reveals several compelling factors supporting a bullish reversal scenario. Most notably, the MACD histogram has turned positive at 0.0019, marking the first bullish momentum signal in weeks despite the broader downtrend.

LDO’s current position at $0.59 places it near the lower Bollinger Band at $0.57, with a %B position of 0.0711 indicating extreme oversold conditions. Historically, such positioning often precedes bounce attempts, particularly when combined with improving momentum indicators.

The RSI reading of 32.52 sits in neutral territory, providing room for upward movement without immediately hitting overbought levels. This technical setup suggests that any positive catalyst could drive significant percentage gains from these depressed levels.

Trading volume of $5.2 million on Binance spot markets remains relatively healthy, indicating continued institutional and retail interest despite the recent -10.05% daily decline.

Lido DAO Price Targets: Bull and Bear Scenarios

Bullish Case for LDO

Our primary LDO price target focuses on the $0.76-$0.85 range, representing a 29-44% upside potential from current levels. This target aligns with the SMA 20 at $0.68 and approaches the SMA 50 at $0.80, making it technically significant.

For this bullish scenario to unfold, LDO needs to reclaim the $0.73 pivot point, which would signal that the recent selling pressure has exhausted itself. A break above this level could trigger algorithmic buying and short covering, accelerating the move toward our medium-term targets.

The ultimate bullish target remains the immediate resistance at $0.86, which coincides with previous support levels and represents a 45.8% gain from current prices.

Bearish Risk for Lido DAO

The primary risk to our Lido DAO forecast involves a breakdown below the critical $0.58 support level, which represents both immediate support and the 52-week low. A decisive break below this level could trigger additional selling toward the $0.50-$0.55 range.

Given LDO’s position 61.85% below its 52-week high of $1.54, further downside could accelerate if broader crypto market sentiment deteriorates or if specific concerns about liquid staking protocols emerge.

Should You Buy LDO Now? Entry Strategy

Based on our LDO price prediction, the current level around $0.59 offers an attractive risk-reward setup for patient investors. However, we recommend a staged entry approach rather than deploying full capital immediately.

Consider initial positions at current levels with stop-loss orders placed below $0.57 to limit downside exposure. Additional accumulation opportunities may present themselves if LDO retests the $0.58 support level, provided it holds on meaningful volume.

For those questioning buy or sell LDO decisions, the technical evidence supports a measured bullish stance with proper risk management. Position sizing should remain conservative given the overall crypto market uncertainty.

LDO Price Prediction Conclusion

Our comprehensive analysis supports a LDO price prediction targeting $0.76-$0.85 within the next 4-6 weeks, representing significant upside potential from current oversold levels. The convergence of positive MACD histogram readings, extreme oversold conditions, and analyst consensus provides medium confidence in this forecast.

Key indicators to monitor include the ability to reclaim the $0.73 pivot point and maintain support above $0.58. Volume expansion on any upward moves would provide additional confirmation of our bullish Lido DAO forecast.

The timeline for this prediction centers on the next 4-6 weeks, during which improving technical conditions should drive LDO toward our target range, assuming broader crypto market stability persists.

Confidence Level: Medium – Technical indicators support upside, but broader market conditions remain a wildcard factor.

Image source: Shutterstock

Source: https://blockchain.news/news/20251201-price-prediction-ldo-targeting-076-085-recovery-as-technical

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Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

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