The Pixel Anomaly Detection Tool: a user-friendly GUI for classifying detector frames using machine-learning approaches

By Gihan Kaushylal Ketawala1, Caitlin M. Reiter, Petra Fromme1, Sabine Botha1

1. Arizona State University

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Type

journal-article

Author

Gihan Ketawala and Caitlin M. Reiter and Petra Fromme and Sabine Botha

Citation

Ketawala, G., Reiter, C. M., Fromme, P., & Botha, S. (2024). The Pixel Anomaly Detection Tool: a user-friendly GUI for classifying detector frames using machine-learning approaches. Journal of Applied Crystallography, 57(2). https://doi.org/10.1107/s1600576724000116

Abstract

Data collection at X-ray free electron lasers has particular experimental challenges, such as continuous sample delivery or the use of novel ultrafast high-dynamic-range gain-switching X-ray detectors. This can result in a multitude of data artefacts, which can be detrimental to accurately determining structure-factor amplitudes for serial crystallography or single-particle imaging experiments. Here, a new data-classification tool is reported that offers a variety of machine-learning algorithms to sort data trained either on manual data sorting by the user or by profile fitting the intensity distribution on the detector based on the experiment. This is integrated into an easy-to-use graphical user interface, specifically designed to support the detectors, file formats and software available at most X-ray free electron laser facilities. The highly modular design makes the tool easily expandable to comply with other X-ray sources and detectors, and the supervised learning approach enables even the novice user to sort data containing unwanted artefacts or perform routine data-analysis tasks such as hit finding during an experiment, without needing to write code.

DOI

Funding

NSF-STC Biology with X-ray Lasers (NSF-1231306)