Automated Analysis of Microscopic Images of Isolated Pancreatic Islets

Clinical islet transplantation programs rely on the capacities of individual centers to quantify isolated islets. Current computer-assisted methods require input from human operators. Here we describe two machine learning algorithms for islet quantification: the trainable islet algorithm (TIA) and t...

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Main Authors: David Habart M.D., Ph.D., Jan Švihlík, Jan Schier, Monika Cahová, Peter Girman, Klára Zacharovová, Zuzana Berkov, Jan Kříž, Eva Fabryová, Lucie Kosinová, Zuzana Papáčková, Jan Kybic, František Saudek
Format: Article
Language:English
Published: SAGE Publishing 2016-12-01
Series:Cell Transplantation
Online Access:https://doi.org/10.3727/096368916X692005
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spelling doaj-f7467eeb55a44458a40029fa315381f62020-11-25T02:59:18ZengSAGE PublishingCell Transplantation0963-68971555-38922016-12-012510.3727/096368916X692005Automated Analysis of Microscopic Images of Isolated Pancreatic IsletsDavid Habart M.D., Ph.D.0Jan Švihlík1Jan Schier2Monika Cahová3Peter Girman4Klára Zacharovová5Zuzana Berkov6Jan Kříž7Eva Fabryová8Lucie Kosinová9Zuzana Papáčková10Jan Kybic11František Saudek12Diabetes Center, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicUniversity of Chemistry and Technology, Prague, Czech RepublicDepartment of Image Processing, Institute of Information Theory and Automation, The Czech Academy of Sciences, Prague, Czech RepublicCenter of Experimental Medicine, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicDiabetes Center, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicCenter of Experimental Medicine, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicCenter of Experimental Medicine, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicDiabetes Center, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicCenter of Experimental Medicine, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicCenter of Experimental Medicine, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicCenter of Experimental Medicine, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicBiomedical Imaging Algorithms Group, Department of Cybernetics, Faculty of Electrical Engineering, Czech Technical University in Prague, Prague, Czech RepublicDiabetes Center, Institute for Clinical and Experimental Medicine (IKEM), Prague, Czech RepublicClinical islet transplantation programs rely on the capacities of individual centers to quantify isolated islets. Current computer-assisted methods require input from human operators. Here we describe two machine learning algorithms for islet quantification: the trainable islet algorithm (TIA) and the nontrainable purity algorithm (NPA). These algorithms automatically segment pancreatic islets and exocrine tissue on microscopic images in order to count individual islets and calculate islet volume and purity. References for islet counts and volumes were generated by the fully manual segmentation (FMS) method, which was validated against the internal DNA standard. References for islet purity were generated via the expert visual assessment (EVA) method, which was validated against the FMS method. The TIA is intended to automatically evaluate micrographs of isolated islets from future donors after being trained on micrographs from a limited number of past donors. Its training ability was first evaluated on 46 images from four donors. The pixel-to-pixel comparison, binary statistics, and islet DNA concentration indicated that the TIA was successfully trained, regardless of the color differences of the original images. Next, the TIA trained on the four donors was validated on an additional 36 images from nine independent donors. The TIA was fast (67 s/image), correlated very well with the FMS method ( R 2 = 1.00 and 0.92 for islet volume and islet count, respectively), and had small REs (0.06 and 0.07 for islet volume and islet count, respectively). Validation of the NPA against the EVA method using 70 images from 12 donors revealed that the NPA had a reasonable speed (69 s/image), had an acceptable RE (0.14), and correlated well with the EVA method ( R 2 = 0.88). Our results demonstrate that a fully automated analysis of clinical-grade micrographs of isolated pancreatic islets is feasible. The algorithms described herein will be freely available as a Fiji platform plugin.https://doi.org/10.3727/096368916X692005
collection DOAJ
language English
format Article
sources DOAJ
author David Habart M.D., Ph.D.
Jan Švihlík
Jan Schier
Monika Cahová
Peter Girman
Klára Zacharovová
Zuzana Berkov
Jan Kříž
Eva Fabryová
Lucie Kosinová
Zuzana Papáčková
Jan Kybic
František Saudek
spellingShingle David Habart M.D., Ph.D.
Jan Švihlík
Jan Schier
Monika Cahová
Peter Girman
Klára Zacharovová
Zuzana Berkov
Jan Kříž
Eva Fabryová
Lucie Kosinová
Zuzana Papáčková
Jan Kybic
František Saudek
Automated Analysis of Microscopic Images of Isolated Pancreatic Islets
Cell Transplantation
author_facet David Habart M.D., Ph.D.
Jan Švihlík
Jan Schier
Monika Cahová
Peter Girman
Klára Zacharovová
Zuzana Berkov
Jan Kříž
Eva Fabryová
Lucie Kosinová
Zuzana Papáčková
Jan Kybic
František Saudek
author_sort David Habart M.D., Ph.D.
title Automated Analysis of Microscopic Images of Isolated Pancreatic Islets
title_short Automated Analysis of Microscopic Images of Isolated Pancreatic Islets
title_full Automated Analysis of Microscopic Images of Isolated Pancreatic Islets
title_fullStr Automated Analysis of Microscopic Images of Isolated Pancreatic Islets
title_full_unstemmed Automated Analysis of Microscopic Images of Isolated Pancreatic Islets
title_sort automated analysis of microscopic images of isolated pancreatic islets
publisher SAGE Publishing
series Cell Transplantation
issn 0963-6897
1555-3892
publishDate 2016-12-01
description Clinical islet transplantation programs rely on the capacities of individual centers to quantify isolated islets. Current computer-assisted methods require input from human operators. Here we describe two machine learning algorithms for islet quantification: the trainable islet algorithm (TIA) and the nontrainable purity algorithm (NPA). These algorithms automatically segment pancreatic islets and exocrine tissue on microscopic images in order to count individual islets and calculate islet volume and purity. References for islet counts and volumes were generated by the fully manual segmentation (FMS) method, which was validated against the internal DNA standard. References for islet purity were generated via the expert visual assessment (EVA) method, which was validated against the FMS method. The TIA is intended to automatically evaluate micrographs of isolated islets from future donors after being trained on micrographs from a limited number of past donors. Its training ability was first evaluated on 46 images from four donors. The pixel-to-pixel comparison, binary statistics, and islet DNA concentration indicated that the TIA was successfully trained, regardless of the color differences of the original images. Next, the TIA trained on the four donors was validated on an additional 36 images from nine independent donors. The TIA was fast (67 s/image), correlated very well with the FMS method ( R 2 = 1.00 and 0.92 for islet volume and islet count, respectively), and had small REs (0.06 and 0.07 for islet volume and islet count, respectively). Validation of the NPA against the EVA method using 70 images from 12 donors revealed that the NPA had a reasonable speed (69 s/image), had an acceptable RE (0.14), and correlated well with the EVA method ( R 2 = 0.88). Our results demonstrate that a fully automated analysis of clinical-grade micrographs of isolated pancreatic islets is feasible. The algorithms described herein will be freely available as a Fiji platform plugin.
url https://doi.org/10.3727/096368916X692005
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