Liquid staking has unlocked billions in productive collateral, but lending markets cannot treat every liquid staking token (LST) as interchangeable. Collateral needs to behave predictably in redemptions, liquidations, and oracle updates. Some LSTs meet that bar; others are better left outside money markets.
This editorial walks through how collateral quality is determined for LSTs and newer liquid restaking tokens (LRTs), why certain designs fare better in lending markets, and how to vet tokens before supplying them as collateral. The aim is practical: reduce the chance of depegs and forced liquidations, and improve capital efficiency without adding hidden risk.
We focus on Ethereum-based examples (stETH, rETH, cbETH, frxETH/sfrxETH, and LRTs), but the framework applies broadly. None of this is financial advice; treat it as a risk lens you can apply to your own analysis.
PointDetails Redemption mechanics shape peg stability Direct withdrawals, queues, or secondary swaps affect discounts during stress and liquidation outcomes. Liquidity and oracles drive liquidation quality Deep spot liquidity and robust oracle design reduce price gaps and failed liquidations. Validator and slashing risk varies by design Diversified operators, insurance buffers, and clear slashing rules improve collateral reliability. LRTs add a second risk layer Restaking introduces AVS-specific slashing and redemption complexity; many money markets treat them cautiously. Risk parameters matter as much as the token Supply/borrow caps, LTV, liquidation thresholds, and isolation modes determine real-world safety.
Not all LSTs expose the same economic rights or redemption paths. Three design choices dominate collateral behavior: reward delivery, redemption, and operator model.
Some tokens rebase (the balance increases) to distribute staking rewards on-chain. Others use a wrapped, non-rebasing token with an increasing exchange rate versus the underlying (e.g., wstETH over stETH). Lending protocols usually prefer non-rebasing, yield-bearing wrappers because rebases complicate accounting and liquidation math.
Examples and docs worth reviewing: Lido’s architecture for stETH and wstETH (docs.lido.fi), Rocket Pool’s rETH exchange-rate model (docs.rocketpool.net), and Frax’s dual-token frxETH/sfrxETH design (docs.frax.com).
After Ethereum’s withdrawals went live, redemption pathways still differ:
Friction in redemption (queues, fees, partial coverage) tends to widen discounts during stress. A lending market wants the collateral to be convertible quickly into the unit of account used to settle liquidations.
Who runs validators? Some protocols use permissionless node operators with distributed key management; others are centrally custodied. This affects slashing correlation, governance capture, and regulatory exposure.
Pro tip: Read the withdrawal, emergency, and upgrade sections of an LST’s docs before you supply it. Admin keys and upgrade powers can change redemption behavior at the worst moment.
Lending markets live or die on liquidation quality. Even a high-grade asset can be poor collateral if liquidations slip the price or if oracles lag reality.
Depth across concentrated liquidity DEXs and centralized venues determines slippage during forced sells. One-sided pools or shallow order books magnify discounts precisely when collateral gets liquidated. You can gauge depth via analytics sites and DEX pool explorers; for example, Curve’s resources page is a starting point for pool mechanics (resources.curve.fi). Cross-venue depth is more robust than a single dominant pool.
Price feeds can reference LST/ETH, LST/USD, or indirect pairs. Chainlink’s external feeds are common in large protocols (chain.link). Custom DEX-TWAP oracles are more sensitive to manipulation in thin markets. A good oracle design:
Why it matters: If an LST loses its peg to ETH but the oracle underestimates the discount, liquidations may be too small and the platform accrues bad debt. If the oracle overreacts, users can be liquidated at punitive prices.
Collateral should minimize the chance that stake principal is cut. Consider:
LRTs introduce another layer: assets are restaked to secure additional services (AVSs). This can increase yield but also extends slashing to new fault domains. See EigenLayer’s documentation for conceptual background (docs.eigenlayer.xyz).
Bottom line: Even if the spot price looks stable, the tail-risk profile differs markedly between a diversified LST and a new LRT with untested AVSs.
Major money markets employ formal risk frameworks and external risk providers. While criteria vary, common threads include:
Parameters then shape actual safety:
For background on how one large protocol frames these trade-offs, Aave’s public risk documentation is helpful (docs.aave.com).
Below is a qualitative comparison of common LST designs. It is not an endorsement and does not substitute for live liquidity and oracle checks.
Token family Reward delivery Typical redemption path Oracle considerations Collateral notes wstETH (Lido) Wrapped, non-rebasing (exchange rate increases) Burn for stETH; exit via queue/validators or swap in deep pools Commonly has external LST/ETH feeds; deep historical liquidity Widely integrated in DeFi; wrappers avoid rebase issues; still correlated to ETH rETH (Rocket Pool) Non-rebasing, exchange-rate growth Protocol redemption subject to buffers; secondary markets External feeds exist; liquidity diversified across venues Distributed operator set; buffers help but are not unlimited cbETH (Coinbase) Non-rebasing wrapper Redemption via issuer processes; swaps on major venues Oracle coverage improving; centralized issuer risk Convenient for some users; custody/regulatory exposure to consider frxETH / sfrxETH (Frax) Dual-token: frxETH (pegged), sfrxETH accrues yield Swaps and protocol flows; design aims to stabilize frxETH Oracle paths more complex due to dual-token setup Collateral behavior depends on which side is listed and oracle choices wBETH and other centralized wrappers Non-rebasing; issuer-controlled parameters Issuer redemption policies; exchange-driven liquidity Oracle reliance on USD books or internal feeds varies Convenience vs. centralized counterparty trade-offs LRTs (e.g., wrapped eETH, ezETH, rsETH) Wrapped, often non-rebasing Restaking and AVS exits add complexity; maturing liquidity Feeds may rely on LST pairs plus spread assumptions Extra slashing domains and evolving redemption; generally treated more conservatively by lenders
Always verify live integration status, caps, and oracle types on the specific market you use.
Pro tip: Keep dashboards handy. Protocol docs and analytics sites like DeFiLlama for protocol/TVL views (defillama.com) plus official documentation (e.g., Lido, Rocket Pool, EigenLayer) reduce blind spots.
When redemptions are slow, arbitrage capital can’t close discounts quickly. In a selloff, discounts widen, liquidations sell into those discounts, and borrowers face outsized losses.
Thin pairs and aggressive TWAP settings let adversaries swing the oracle just long enough to trigger liquidations. Conversely, stale or bounded feeds may understate real losses, creating protocol bad debt.
In concentrated liquidity AMMs, if collateral is priced outside the active range during a spike, liquidators struggle to fill. Lending protocols try to offset this with bonuses, but severe gaps can still create losses.
Centralized or tightly coupled operator sets can suffer correlated failures. Coverage buffers help only up to their limits. Restaking adds new vectors via AVSs; a misconfigured service could hit many restakers simultaneously.
Emergency changes to fees, withdrawal queues, or oracle sources can ripple through money markets. Even if the change is rational, borrowers may face new parameters mid-position.
Pro tip: If you expect to move collateral soon, prefer LSTs with predictable withdrawal timelines or the deepest immediate swap liquidity. Time-to-cash matters in fast markets.
For ongoing market coverage and research explainers, Crypto Daily publishes regular analysis of staking, DeFi risk, and lending design. Visit CryptoDaily.co.uk for updates.
Reliable redemption, deep and diversified liquidity, robust oracles, diversified validators with clear slashing coverage, and mature smart-contract governance. On top of that, lending parameters like conservative LTVs and caps must align with those properties.
Non-rebasing wrappers like wstETH avoid accounting edge cases in interest accrual and liquidations. They also map cleanly to oracle feeds that use an exchange rate instead of changing balances.
They add a second slashing and redemption layer via restaking to AVSs. Some lenders may list them with strict caps or not at all until liquidity, oracle coverage, and AVS risk are better established. Treat them as higher complexity and size positions accordingly.
Queues slow down arbitrage that would normally close discounts. In stress, this can widen depegs and worsen liquidation prices. If you plan to exit quickly, long queues are a red flag.
Feeds that aggregate multiple venues, update promptly, and include sanity checks for correlated pairs (LST/ETH). External, battle-tested providers are generally preferred over bespoke TWAPs in thin markets.
It can amplify returns in stable markets but magnifies depeg and oracle risks. Small discounts can cascade into liquidations. Unless you model stress scenarios and maintain large buffers, looping is hazardous.
Your LST’s exchange rate could fall. Some protocols have coverage funds, but limits and governance apply. Restaked tokens may face additional penalties depending on AVS rules.
Disclaimer: This article is provided for informational purposes only. It is not offered or intended to be used as legal, tax, investment, financial, or other advice.


