The post APT Price Prediction: Bearish Short-Term to $1.54, But $21.62 Long-Term Target by 2026 appeared on BitcoinEthereumNews.com. Zach Anderson Dec 15, 2025The post APT Price Prediction: Bearish Short-Term to $1.54, But $21.62 Long-Term Target by 2026 appeared on BitcoinEthereumNews.com. Zach Anderson Dec 15, 2025

APT Price Prediction: Bearish Short-Term to $1.54, But $21.62 Long-Term Target by 2026



Zach Anderson
Dec 15, 2025 10:27

APT price prediction shows bearish momentum targeting $1.54 in the next week, but long-term Aptos forecast suggests potential rally to $21.62 by 2026 based on technical analysis.

APT Price Prediction Summary

APT short-term target (1 week): $1.54 (-6.7% from current $1.65)
Aptos medium-term forecast (1 month): $1.50-$1.65 range with downside bias
Key level to break for bullish continuation: $2.35 (immediate resistance)
Critical support if bearish: $1.50 (lower Bollinger Band proximity)

Recent Aptos Price Predictions from Analysts

The latest APT price prediction from CoinLore presents a mixed outlook for Aptos. Short-term forecasts are decidedly bearish, with AI models and technical analysis pointing to a decline toward $1.54 within the next week. This represents a 6.7% drop from the current price of $1.65.

However, the Aptos forecast takes a dramatically different tone for long-term investors. The same analysts project an ambitious APT price target of $21.62 by 2026, suggesting potential upside of over 1,200% from current levels. This stark contrast between short and long-term predictions reflects the volatile nature of cryptocurrency markets and the importance of timeframe when making investment decisions.

The medium confidence level assigned to near-term predictions versus low confidence for long-term targets indicates uncertainty around Aptos’ immediate trajectory, while acknowledging the significant potential for appreciation over extended periods.

APT Technical Analysis: Setting Up for Near-Term Correction

The Aptos technical analysis reveals several concerning signals for immediate price action. With APT trading at $1.65, the token sits well below all major moving averages, including the 7-day SMA at $1.71, 20-day SMA at $1.88, and significantly distant from the 50-day SMA at $2.50.

The RSI reading of 31.95 places Aptos in neutral territory, though closer to oversold conditions. While this could suggest a potential bounce, the MACD tells a more complex story. The MACD line at -0.2551 remains deeply negative, though the positive MACD histogram of 0.0193 hints at emerging bullish momentum beneath the surface bearish trend.

Bollinger Bands analysis shows APT positioned at 0.22 within the bands, indicating the price is much closer to the lower band ($1.48) than the upper band ($2.27). This positioning often precedes either a reversal bounce or a breakdown below the lower band.

Volume analysis from Binance spot markets shows $7.25 million in 24-hour trading volume, which is moderate but not exceptional enough to confirm either bullish or bearish conviction.

Aptos Price Targets: Bull and Bear Scenarios

Bullish Case for APT

In the bullish scenario, APT would need to reclaim the immediate resistance at $2.35 to invalidate the bearish short-term outlook. A break above this level could trigger a rally toward the 20-day SMA at $1.88, followed by the stronger resistance at $2.60.

For the ambitious long-term APT price target of $21.62 to materialize, Aptos would need to demonstrate sustained adoption, technological improvements, and favorable market conditions. This would require breaking above the 52-week high of $6.14 and establishing new all-time highs.

Key bullish catalysts include ecosystem development, increased DeFi adoption on Aptos, and broader cryptocurrency market recovery. The positive MACD histogram suggests underlying momentum could support such a scenario if market sentiment shifts.

Bearish Risk for Aptos

The primary bearish scenario aligns with analyst predictions of a move toward $1.54. A break below the critical support at $1.60 (also the 52-week low at $1.61) could accelerate selling pressure toward the $1.50 level, which coincides with the lower Bollinger Band.

Further downside risks include continued pressure from moving averages acting as dynamic resistance, weak overall cryptocurrency market sentiment, and potential profit-taking from any relief bounces. The distance of -73.07% from the 52-week high demonstrates the significant technical damage already sustained.

Should You Buy APT Now? Entry Strategy

Based on the Aptos technical analysis, the current risk-reward profile suggests waiting for better entry opportunities rather than buying immediately. The buy or sell APT decision should consider the following levels:

Conservative Entry Strategy: Wait for a break and hold above $2.35 with confirmation volume before considering long positions. This would signal invalidation of the bearish short-term outlook.

Aggressive Entry Strategy: Consider scaling into positions near $1.54 if that level provides strong support with high volume, as this represents the analyst consensus target and could offer attractive risk-reward for longer-term holdings.

Risk Management: Any positions should use stop-losses below $1.50 to limit downside exposure. Position sizing should be conservative given the high volatility (ATR of $0.16) and uncertain near-term direction.

APT Price Prediction Conclusion

The APT price prediction presents a tale of two timeframes. Short-term technical indicators and analyst consensus point to continued weakness toward $1.54 over the next week, supported by bearish momentum and price action below key moving averages.

However, the Aptos forecast for 2026 suggests patient investors could be rewarded with significant gains if the $21.62 long-term target proves accurate. The positive MACD histogram provides some hope for emerging bullish momentum, though this has yet to translate into price action.

Confidence Level: Medium for short-term bearish target of $1.54 (1-week timeframe), Low for long-term bullish target of $21.62 (2026 timeframe).

Key Indicators to Watch: Monitor the $1.60 support level for potential breakdown, RSI for oversold bounces, and volume confirmation on any directional moves. A reclaim of $2.35 would shift the short-term outlook from bearish to neutral.

Timeline: Expect the $1.54 target to be tested within 7 days based on current momentum, while the long-term forecast would require 12-18 months to begin materializing.

Image source: Shutterstock

Source: https://blockchain.news/news/20251215-price-prediction-target-apt-bearish-short-term-to-154-but

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