Literature DB >> 20164018

AI (artificial intelligence) in histopathology--from image analysis to automated diagnosis.

Klaus Kayser1, Jürgen Görtler, Milica Bogovac, Aleksandar Bogovac, Torsten Goldmann, Ekkehard Vollmer, Gian Kayser.   

Abstract

The technological progress in digitalization of complete histological glass slides has opened a new door in tissue--based diagnosis. The presentation of microscopic images as a whole in a digital matrix is called virtual slide. A virtual slide allows calculation and related presentation of image information that otherwise can only be seen by individual human performance. The digital world permits attachments of several (if not all) fields of view and the contemporary visualization on a screen. The presentation of all microscopic magnifications is possible if the basic pixel resolution is less than 0.25 microns. To introduce digital tissue--based diagnosis into the daily routine work of a surgical pathologist requires a new setup of workflow arrangement and procedures. The quality of digitized images is sufficient for diagnostic purposes; however, the time needed for viewing virtual slides exceeds that of viewing original glass slides by far. The reason lies in a slower and more difficult sampling procedure, which is the selection of information containing fields of view. By application of artificial intelligence, tissue--based diagnosis in routine work can be managed automatically in steps as follows: 1. The individual image quality has to be measured, and corrected, if necessary. 2. A diagnostic algorithm has to be applied. An algorithm has be developed, that includes both object based (object features, structures) and pixel based (texture) measures. 3. These measures serve for diagnosis classification and feedback to order additional information, for example in virtual immunohistochemical slides. 4. The measures can serve for automated image classification and detection of relevant image information by themselves without any labeling. 5. The pathologists' duty will not be released by such a system; to the contrary, it will manage and supervise the system, i.e., just working at a "higher level". Virtual slides are already in use for teaching and continuous education in anatomy and pathology. First attempts to introduce them into routine work have been reported. Application of AI has been established by automated immunohistochemical measurement systems (EAMUS, www.diagnomX.eu). The performance of automated diagnosis has been reported for a broad variety of organs at sensitivity and specificity levels >85%). The implementation of a complete connected AI supported system is in its childhood. Application of AI in digital tissue--based diagnosis will allow the pathologists to work as supervisors and no longer as primary "water carriers". Its accurate use will give them the time needed to concentrating on difficult cases for the benefit of their patients.

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Mesh:

Year:  2009        PMID: 20164018     DOI: 10.2478/v10042-009-0087-y

Source DB:  PubMed          Journal:  Folia Histochem Cytobiol        ISSN: 0239-8508            Impact factor:   1.698


  20 in total

1.  Image analysis of immunohistochemistry is superior to visual scoring as shown for patient outcome of esophageal adenocarcinoma.

Authors:  Annette Feuchtinger; Tabitha Stiehler; Uta Jütting; Goran Marjanovic; Birgit Luber; Rupert Langer; Axel Walch
Journal:  Histochem Cell Biol       Date:  2014-08-26       Impact factor: 4.304

2.  Impact of pre-analytical variables on deep learning accuracy in histopathology.

Authors:  Andrew D Jones; John Paul Graff; Morgan Darrow; Alexander Borowsky; Kristin A Olson; Regina Gandour-Edwards; Ananya Datta Mitra; Dongguang Wei; Guofeng Gao; Blythe Durbin-Johnson; Hooman H Rashidi
Journal:  Histopathology       Date:  2019-05-16       Impact factor: 5.087

3.  Machine learning-based image analysis for accelerating the diagnosis of complicated preneoplastic and neoplastic ductal lesions in breast biopsy tissues.

Authors:  Shinya Sato; Satoshi Maki; Takashi Yamanaka; Daisuke Hoshino; Yukihide Ota; Emi Yoshioka; Kae Kawachi; Kota Washimi; Masaki Suzuki; Yoichiro Ohkubo; Tomoyuki Yokose; Toshinari Yamashita; Seiji Ohtori; Yohei Miyagi
Journal:  Breast Cancer Res Treat       Date:  2021-05-01       Impact factor: 4.872

4.  Introduction of virtual microscopy in routine surgical pathology--a hypothesis and personal view from Europe.

Authors:  Klaus Kayser
Journal:  Diagn Pathol       Date:  2012-04-30       Impact factor: 2.644

5.  Grid computing in image analysis.

Authors:  Klaus Kayser; Jürgen Görtler; Stephan Borkenfeld; Gian Kayser
Journal:  Diagn Pathol       Date:  2011       Impact factor: 2.644

6.  How to measure diagnosis-associated information in virtual slides.

Authors:  Klaus Kayser; Jürgen Görtler; Stephan Borkenfeld; Gian Kayser
Journal:  Diagn Pathol       Date:  2011-03-30       Impact factor: 2.644

7.  Interactive and automated application of virtual microscopy.

Authors:  Klaus Kayser; Jürgen Görtler; Stephan Borkenfeld; Gian Kayser
Journal:  Diagn Pathol       Date:  2011-03-30       Impact factor: 2.644

8.  Quantification of virtual slides: Approaches to analysis of content-based image information.

Authors:  Klaus Kayser
Journal:  J Pathol Inform       Date:  2011-01-07

9.  Virtual slides in peer reviewed, open access medical publication.

Authors:  Klaus Kayser; Stephan Borkenfeld; Torsten Goldmann; Gian Kayser
Journal:  Diagn Pathol       Date:  2011-12-19       Impact factor: 2.644

10.  A texture based pattern recognition approach to distinguish melanoma from non-melanoma cells in histopathological tissue microarray sections.

Authors:  Elton Rexhepaj; Margrét Agnarsdóttir; Julia Bergman; Per-Henrik Edqvist; Michael Bergqvist; Mathias Uhlén; William M Gallagher; Emma Lundberg; Fredrik Ponten
Journal:  PLoS One       Date:  2013-05-17       Impact factor: 3.240

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