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1.
Acta Crystallogr F Struct Biol Commun ; 74(Pt 7): 410-418, 2018 Jul 01.
Article in English | MEDLINE | ID: mdl-29969104

ABSTRACT

The process of producing suitable crystals for X-ray diffraction analysis most often involves the setting up of hundreds (or thousands) of individual crystallization trials, each of which must be repeatedly examined for crystals or hints of crystallinity. Currently, the only real way to address this bottleneck is to use an automated imager to capture images of the trials. However, the images still need to be assessed for crystals or other outcomes. Ideally, there would exist some rapid and reliable machine-analysis tool to translate the images into a quantitative result. However, as yet no such tool exists in wide usage, despite this being a well recognized problem. One of the issues in creating robust automatic image-analysis software is the lack of reliable data for training machine-learning algorithms. Here, a mobile application, Cinder, has been developed which allows crystallization images to be scored quickly on a smartphone or tablet. The Cinder scores are inserted into the appropriate table in a crystallization database and are immediately available to the user through a more sophisticated web interface, allowing more detailed analyses. A sharp increase in the number of scored images was observed after Cinder was released, which in turn provides more data for training machine-learning tools.


Subject(s)
Crystallography, X-Ray/trends , Mobile Applications/trends , Crystallization/classification , Crystallization/trends , Crystallography, X-Ray/classification , Crystallography, X-Ray/methods
2.
Acta Crystallogr D Biol Crystallogr ; 64(Pt 11): 1123-30, 2008 Nov.
Article in English | MEDLINE | ID: mdl-19020350

ABSTRACT

Structural crystallography aims to provide a three-dimensional representation of macromolecules. Many parts of the multistep process to produce the three-dimensional structural model have been automated, especially through various structural genomics projects. A key step is the production of crystals for diffraction. The target macromolecule is combined with a large and chemically diverse set of cocktails with some leading ideally, but infrequently, to crystallization. A variety of outcomes will be observed during these screening experiments that typically require human interpretation for classification. Human interpretation is neither scalable nor objective, highlighting the need to develop an automatic computer-based image classification. As a first step towards automated image classification, 147,456 images representing crystallization experiments from 96 different macromolecular samples were manually classified. Each image was classified by three experts into seven predefined categories or their combinations. The resulting data where all three observers are in agreement provides one component of a truth set for the development and rigorous testing of automated image-classification systems and provides information about the chemical cocktails used for crystallization. In this paper, the details of this study are presented.


Subject(s)
Crystallography, X-Ray/methods , Image Processing, Computer-Assisted/methods , Macromolecular Substances/chemistry , Teaching/methods , Algorithms , Computer Graphics , Crystallization , Crystallography, X-Ray/classification , Electronic Data Processing , Humans , Image Processing, Computer-Assisted/classification , Models, Molecular , Teaching/trends
3.
Acta Crystallogr D Biol Crystallogr ; 64(Pt 11): 1131-7, 2008 Nov.
Article in English | MEDLINE | ID: mdl-19020351

ABSTRACT

In the automated image analysis of crystallization experiments, representative examples of outcomes can be obtained rapidly. However, while the outcomes appear to be diverse, the number of crystalline outcomes can be small. To complement a training set from the visual observation of 147 456 crystallization outcomes, a set of crystal images was produced from 106 and 163 macromolecules under study for the North East Structural Genomics Consortium (NESG) and Structural Genomics of Pathogenic Protozoa (SGPP) groups, respectively. These crystal images have been combined with the initial training set. A description of the crystal-enriched data set and a preliminary analysis of outcomes from the data are described.


Subject(s)
Crystallography, X-Ray/methods , Image Processing, Computer-Assisted/methods , Macromolecular Substances/chemistry , Teaching/methods , Computer Graphics , Crystallization , Crystallography, X-Ray/classification , Database Management Systems , Humans , Image Processing, Computer-Assisted/classification , Models, Molecular , Polyethylene Glycols/chemistry , Polyethylene Glycols/metabolism , Teaching/trends
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