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SEMORE: SEgmentation and MORphological fingErprinting by machine learning automates super-resolution data analysis

Chemistry

SEMORE: SEgmentation and MORphological fingErprinting by machine learning automates super-resolution data analysis

S. W. B. Bender, M. W. Dreisler, et al.

Discover how the groundbreaking SEMORE framework leverages machine learning for universal analysis of super-resolution data, unlocking new insights into protein assemblies and their morphology evolution. This innovative research was conducted by Steen W. B. Bender, Marcus W. Dreisler, Min Zhang, Jacob Kæstel-Hansen, and Nikos S. Hatzakis from the University of Copenhagen.

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~3 min • Beginner • English
Abstract
The morphology of protein assemblies impacts their behaviour and contributes to beneficial and aberrant cellular responses. While single-molecule localization microscopy provides the required spatial resolution to investigate these assemblies, the lack of universal robust analytical tools to extract and quantify underlying structures limits this powerful technique. Here we present SEMORE, a semi-automatic machine learning framework for universal, system- and input-dependent, analysis of super-resolution data. SEMORE implements a multi-layered density-based clustering module to dissect biological assemblies and a morphology fingerprinting module for quantification by multiple geometric and kinetics-based descriptors. We demonstrate SEMORE on simulations and diverse raw super-resolution data: time-resolved insulin aggregates, and published data of dSTORM imaging of nuclear pore complexes, fibroblast growth receptor 1, sptPALM of Syntaxin 1a and dynamic live-cell PALM of ryanodine receptors. SEMORE extracts and quantifies all protein assemblies, their temporal morphology evolution and provides quantitative insights, e.g. classification of heterogeneous insulin aggregation pathways and NPC geometry in minutes. SEMORE is a general analysis platform for super-resolution data, and being a time-aware framework can also support the rise of 4D super-resolution data.
Publisher
Nature Communications
Published On
Feb 26, 2024
Authors
Steen W. B. Bender, Marcus W. Dreisler, Min Zhang, Jacob Kæstel-Hansen, Nikos S. Hatzakis
Tags
protein assemblies
super-resolution data
machine learning
morphology fingerprinting
density-based clustering
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