Automatic bad-pixel mask maker for X-ray pixel detectors with application to serial crystallography

Author:

Sadri AlirezaORCID,Hadian-Jazi MarjanORCID,Yefanov OleksandrORCID,Galchenkova Marina,Kirkwood HenryORCID,Mills GrantORCID,Sikorski Marcin,Letrun RomainORCID,de Wijn RaphaelORCID,Vakili MohammadORCID,Oberthuer DominikORCID,Komadina Dana,Brehm Wolfgang,Mancuso Adrian P.ORCID,Carnis JeromeORCID,Gelisio LucaORCID,Chapman Henry N.ORCID

Abstract

X-ray crystallography has witnessed a massive development over the past decade, driven by large increases in the intensity and brightness of X-ray sources and enabled by employing high-frame-rate X-ray detectors. The analysis of large data sets is done via automatic algorithms that are vulnerable to imperfections in the detector and noise inherent with the detection process. By improving the model of the behaviour of the detector, data can be analysed more reliably and data storage costs can be significantly reduced. One major requirement is a software mask that identifies defective pixels in diffraction frames. This paper introduces a methodology and program based upon concepts of machine learning, called robust mask maker (RMM), for the generation of bad-pixel masks for large-area X-ray pixel detectors based on modern robust statistics. It is proposed to discriminate normally behaving pixels from abnormal pixels by analysing routine measurements made with and without X-ray illumination. Analysis software typically uses a Bragg peak finder to detect Bragg peaks and an indexing method to detect crystal lattices among those peaks. Without proper masking of the bad pixels, peak finding methods often confuse the abnormal values of bad pixels in a pattern with true Bragg peaks and flag such patterns as useful regardless, leading to storage of enormous uninformative data sets. Also, it is computationally very expensive for indexing methods to search for crystal lattices among false peaks and the solution may be biased. This paper shows how RMM vastly improves peak finders and prevents them from labelling bad pixels as Bragg peaks, by demonstrating its effectiveness on several serial crystallography data sets.

Funder

Deutsche Forschungsgemeinschaft

Publisher

International Union of Crystallography (IUCr)

Subject

General Biochemistry, Genetics and Molecular Biology

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Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. A Python package based on robust statistical analysis for serial crystallography data processing;Acta Crystallographica Section D Structural Biology;2023-08-16

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