AlphaFold-Era Structure Prediction
Deep-learning-based structure prediction at proteome scale and its downstream applications.
AlphaFold-Era Structure Prediction sits within protein structure prediction and addresses deep-learning-based structure prediction at proteome scale and its downstream applications. The page below sketches the conceptual scope of the area, the methodological tools it relies on, and the recent literature anchoring its current frontier.
The area organises around a small number of recurring axes: scope (what biological scales the work spans), method (the dominant experimental or computational tools), data regime (what kinds of measurements are now routine vs. still frontier), and open questions (what the field cannot yet do reliably). The sources below cover different combinations of these axes.
Frontier results
A primary recent reference for this area is Highly accurate protein structure prediction with AlphaFold (Jumper et al., 2021), which contributes to the methodological or empirical conversation that defines the current frontier of alphafold-era structure prediction. It illustrates the kind of question the field is actively pursuing — the specific technical claim, the dataset or system on which it was validated, and the way subsequent work builds on it.
A primary recent reference for this area is Accurate prediction of protein structures and interactions using a three-track neural network (Baek et al., 2021), which contributes to the methodological or empirical conversation that defines the current frontier of alphafold-era structure prediction. It illustrates the kind of question the field is actively pursuing — the specific technical claim, the dataset or system on which it was validated, and the way subsequent work builds on it.
A primary recent reference for this area is Evolutionary-scale prediction of atomic-level protein structure (Lin et al., 2023), which contributes to the methodological or empirical conversation that defines the current frontier of alphafold-era structure prediction. It illustrates the kind of question the field is actively pursuing — the specific technical claim, the dataset or system on which it was validated, and the way subsequent work builds on it.
Open questions
Open questions in alphafold-era structure prediction cluster around scaling current methods to larger systems, integrating measurements across modalities, and producing predictive rather than descriptive models. The references above mark the work that the next iteration of this page should engage with in more specific detail.
Prerequisites
Sources
- paper · primary · 2021jumper-2021, evans-richard-2021, hassabis-2021
- paper · primary · 2021baek-2021, baker-david-2023
- paper · primary · 2023lin-zeming-2023, rives-2023
In context
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