Nyxus: A Next Generation Image Feature Extraction Library for the Big Data and AI Era
Nicholas Schaub, Andriy Kharchenko, Hamdah Abbasi, Sameeul Samee, Hythem Sidky, Nathan Hotaling

TL;DR
Nyxus is a scalable, versatile image feature extraction library designed for big data and AI applications, supporting 2D/3D images across various biomedical domains with multiple user interfaces.
Contribution
It introduces a comprehensive, out-of-core feature extraction library optimized for large datasets, with multi-platform support and flexible integration options.
Findings
Supports scalable processing of terabyte-scale image data
Offers a broad set of features for biomedical imaging
Enables efficient feature extraction for machine learning applications
Abstract
Modern imaging instruments can produce terabytes to petabytes of data for a single experiment. The biggest barrier to processing big image datasets has been computational, where image analysis algorithms often lack the efficiency needed to process such large datasets or make tradeoffs in robustness and accuracy. Deep learning algorithms have vastly improved the accuracy of the first step in an analysis workflow (region segmentation), but the expansion of domain specific feature extraction libraries across scientific disciplines has made it difficult to compare the performance and accuracy of extracted features. To address these needs, we developed a novel feature extraction library called Nyxus. Nyxus is designed from the ground up for scalable out-of-core feature extraction for 2D and 3D image data and rigorously tested against established standards. The comprehensive feature set of…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Cell Image Analysis Techniques · Single-cell and spatial transcriptomics
