| Literature DB >> 33953660 |
Ethan T Holleman1, Erica Duguid1,2, Lisa J Keefe1,2, Sarah E J Bowman1,3.
Abstract
Polo is a Python-based graphical user interface designed to streamline viewing and analysis of images to monitor crystal growth, with a specific target to enable users of the High-Throughput Crystallization Screening Center at Hauptman-Woodward Medical Research Institute (HWI) to efficiently inspect their crystallization experiments. Polo aims to increase efficiency, reducing time spent manually reviewing crystallization images, and to improve the potential of identifying positive crystallization conditions. Polo provides a streamlined one-click graphical interface for the Machine Recognition of Crystallization Outcomes (MARCO) convolutional neural network for automated image classification, as well as powerful tools to view and score crystallization images, to compare crystallization conditions, and to facilitate collaborative review of crystallization screening results. Crystallization images need not have been captured at HWI to utilize Polo's basic functionality. Polo is free to use and modify for both academic and commercial use under the terms of the copyleft GNU General Public License v3.0. © Ethan T. Holleman et al. 2021.Entities:
Keywords: crystal imaging; crystallization; machine learning; open-source graphical user interfaces
Year: 2021 PMID: 33953660 PMCID: PMC8056757 DOI: 10.1107/S1600576721000108
Source DB: PubMed Journal: J Appl Crystallogr ISSN: 0021-8898 Impact factor: 4.868
Figure 1Screenshot of the Slideshow Viewer interface displaying bright-field image of Well Num 400 of a lysozyme sample set up at the Crystallization Center. Crystals are clearly visible in this well, which contains Cocktail C0988. Image Details and Cocktail Details are shown in the inset to the right. Researchers can navigate between images within the currently selected run using the Next and Previous image buttons or directly to a specific well number by typing in the well number associated with the desired image into the By Well Number box. Images can be classified via mouse clicks or keyboard shortcuts using the buttons provided under the Classification section (Crystals = 1, Clear = 2, Precipitate = 3, Other = 4). Classifying an image will automatically advance the Slideshow Viewer to the next image. Particularly interesting images can be chosen as Favorites and selected later using Image Filtering. Using the Swap Spectrum button will show UV-TPEF and SHG imaging modalities if available (UV-TPEF shown in inset to the left). Show All Dates will generate a time course of images of this particular well (shown at the bottom). Any individual image displayed by the Slideshow Viewer can also be exported as a png file using the Save View button.
Figure 2Screenshot of the Plate Viewer interface. (Top) 96 of the 1536 wells in the microassay plate with MARCO classified wells for this subset colored in red. (Bottom) Left: Image Pop Out for one of the wells with crystals in this subset (hidden by precipitate but correctly classified by MARCO). Middle: the Swap Spectrum button changes the image to UV-TPEF, in which the crystals are more clearly apparent. Right: schematic of how the Plate Visualizer indicates where on the 1536 microassay plate the images are from. The 96 images shown are from the upper right 1/16th of the 32 × 48 grid microassay plate.
Figure 3Screenshot of Table View displaying data for all MARCO classified images of a lysozyme sample imaged on 8/22/2020. Similar to the Slideshow Viewer interface, data displayed can be filtered by either MARCO or human classification using the checkboxes located in the lower right under the Table Filters box. Additionally, the type of data that are displayed in the columns can be controlled by using the checkboxes in the upper right of the interface under the Table Settings box.
Figure 4PowerPoint slides generated using the Presentation Exporter interface. (a) Well 144 (Cocktail C0869) and (b) well 1508 (Cocktail C1529) of an HT 1536 experimental setup of lysozyme. Up to three slides are generated per well. (Top) Detail slide with bright-field image and all metadata. (Middle) Alternative image slide which shows the visible image alongside alterative spectra. Lysozyme crystallizes in a number of conditions; many of these crystal growth conditions yield very weak SHG signals that are typically not detected in the HT screening. Well 144 has no SHG signal but clear crystal growth with the UV-TPEF signal verifying protein-containing crystals. Well 1508 reveals positive lysozyme crystallization using all three modalities. (Bottom) A timeline slide which shows the bright-field image from the export run with all available visible images of the selected well.