Streamlining segmentation of cryo-electron tomography datasets with Ais

Elife. 2024 Dec 20:13:RP98552. doi: 10.7554/eLife.98552.

Abstract

Segmentation is a critical data processing step in many applications of cryo-electron tomography. Downstream analyses, such as subtomogram averaging, are often based on segmentation results, and are thus critically dependent on the availability of open-source software for accurate as well as high-throughput tomogram segmentation. There is a need for more user-friendly, flexible, and comprehensive segmentation software that offers an insightful overview of all steps involved in preparing automated segmentations. Here, we present Ais: a dedicated tomogram segmentation package that is geared towards both high performance and accessibility, available on GitHub. In this report, we demonstrate two common processing steps that can be greatly accelerated with Ais: particle picking for subtomogram averaging, and generating many-feature segmentations of cellular architecture based on in situ tomography data. Featuring comprehensive annotation, segmentation, and rendering functionality, as well as an open repository for trained models at aiscryoet.org, we hope that Ais will help accelerate research and dissemination of data involving cryoET.

Keywords: cryo-electron tomography; cryoET; machine learning; molecular biophysics; none; segmentation; software; structural biology.

MeSH terms

  • Cryoelectron Microscopy* / methods
  • Electron Microscope Tomography* / methods
  • Image Processing, Computer-Assisted* / methods
  • Software*