Decoding Toncoin’s 10% rally and what Telegram’s U.S. wallet means next

ambcryptoPublished on 2026-01-01Last updated on 2026-01-01

Abstract

Toncoin (TON) has surged nearly 10% in the past week, rebounding from a mid-month dip and breaking above short-term resistance around $1.63. The rally coincides with Telegram’s rollout of its self-custodial wallet in the U.S., enabling American users to send, swap, and store cryptocurrencies like TON and USDT directly within the messaging app. This integration significantly reduces friction and could drive everyday usage. While technical indicators like RSI and MACD show bullish momentum, and volatility is rising, on-chain activity and DeFi metrics remain modest. Despite strong real-world developments, the network’s growth has yet to fully match its price action.

Toncoin [TON] is starting to pick up steam.

With Telegram rolling out the network’s self-custodial wallet in the U.S., the community is taking notice! DeFi numbers may be modest for now, but the price gains are nothing to scoff at.

A breakout after a slow start

TON has climbed over the past week, an almost 10% surge; buyers stepped back in after a mid-month dip.

The price bounced from the $1.45-$1.50 zone and pushed toward $1.63, breaking above short-term resistance. RSI has showed strength improving, while the MACD flipped bullish. Price also moved toward the upper Bollinger Band, so volatility is increasing too.

While it’s not an explosive rally, looks like there’s more to come.

Wallet push changes the game

The move up happened in tandem with Telegram’s move to launch its self-custodial wallet in the U.S. For the first time, American users can send, swap, and store crypto directly inside a mainstream messaging app!

Most blockchains haven’t managed to lower friction the way this has. With access to TON, Tether’s USDT [USDT], NFTs, and the wider TON ecosystem built directly into Telegram, usage will become part of everyday messaging.

It’s not quite there yet

While price went up, supported by strong developments in the real-world scene, the network itself looks a bit tame.

Related Questions

QWhat is the main reason behind Toncoin's recent 10% price rally?

AThe rally is attributed to Telegram's rollout of its self-custodial wallet in the U.S., which has increased community interest and buying activity.

QWhat key technical indicators showed strength during TON's price increase?

AThe RSI showed improving strength, the MACD flipped bullish, and the price moved toward the upper Bollinger Band, indicating increased volatility.

QWhat specific functionality does Telegram's new wallet offer to U.S. users?

AIt allows U.S. users to send, swap, and store cryptocurrency directly within the Telegram messaging app, including access to TON, USDT, NFTs, and the wider TON ecosystem.

QFrom which price zone did TON bounce before its recent surge?

ATON bounced from the $1.45-$1.50 price zone before pushing toward $1.63.

QDespite the positive price action, what aspect of the TON network is described as 'a bit tame'?

AThe network itself is described as looking a bit tame, suggesting that while the price went up due to real-world developments, the underlying network activity or DeFi numbers may still be modest.

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