Meeting Report: Tissue-based Image Analysis

Toxicol Pathol. 2017 Oct;45(7):983-1003. doi: 10.1177/0192623317737468.

Abstract

Quantitative image analysis (IA) is a rapidly evolving area of digital pathology. Although not a new concept, the quantification of histological features on photomicrographs used to be cumbersome, resource-intensive, and limited to specialists and specialized laboratories. Recent technological advances like highly efficient automated whole slide digitizer (scanner) systems, innovative IA platforms, and the emergence of pathologist-friendly image annotation and analysis systems mean that quantification of features on histological digital images will become increasingly prominent in pathologists' daily professional lives. The added value of quantitative IA in pathology includes confirmation of equivocal findings noted by a pathologist, increasing the sensitivity of feature detection, quantification of signal intensity, and improving efficiency. There is no denying that quantitative IA is part of the future of pathology; however, there are also several potential pitfalls when trying to estimate volumetric features from limited 2-dimensional sections. This continuing education session on quantitative IA offered a broad overview of the field; a hands-on toxicologic pathologist experience with IA principles, tools, and workflows; a discussion on how to apply basic stereology principles in order to minimize bias in IA; and finally, a reflection on the future of IA in the toxicologic pathology field.

Keywords: discovery pathology; drug development; histopathology; immunohistochemistry; molecular pathology; morphometry; preclinical research & development.

MeSH terms

  • Algorithms
  • Animals
  • Evaluation Studies as Topic
  • Humans
  • Image Processing, Computer-Assisted*
  • Machine Learning
  • Pathology / methods*
  • Rats