2023Reggiano MEDIC

From 3DEM-Methods
Revision as of 10:14, 30 August 2023 by WikiSysop (talk | contribs) (Created page with "== Citation == Reggiano, Gabriella / Lugmayr, Wolfgang / Farrell, Daniel / Marlovits, Thomas C. / DiMaio, Frank. Residue-level error detection in cryoelectron microscopy mode...")
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
Jump to navigation Jump to search

Citation

Reggiano, Gabriella / Lugmayr, Wolfgang / Farrell, Daniel / Marlovits, Thomas C. / DiMaio, Frank. Residue-level error detection in cryoelectron microscopy models. 2023. Structure, 31, 1-10

Abstract

Building accurate protein models into moderate resolution (3–5A) cryoelectron microscopy (cryo-EM) maps is challenging and error prone. We have developed MEDIC (Model Error Detection in Cryo-EM), a robust statistical model that identifies local backbone errors in protein structures built into cryo-EM maps by combining local fit-to-density with deep-learning-derived structural information. MEDIC is validated on a set of 28 structures that were subsequently solved to higher resolutions, where we identify the differences between lowand high-resolution structures with 68% precision and 60% recall. We additionally use this model to fix over 100 errors in 12 deposited structures and to identify errors in 4 refined AlphaFold predictions with 80% precision and 60% recall. Asmodelers more frequently use deep learning predictions as a starting point for refinement and rebuilding, MEDIC’s ability to handle errors in structures derived from hand-building and machine learning methods makes it a powerful tool for structural biologists.

Keywords

Links

https://www.cell.com/structure/pdf/S0969-2126(23)00158-2.pdf

Related software

Related methods

Comments