PLoS ONE (Jan 2019)

Orbit image analysis machine learning software can be used for the histological quantification of acute ischemic stroke blood clots.

  • Seán Fitzgerald,
  • Shunli Wang,
  • Daying Dai,
  • Dennis H Murphree,
  • Abhay Pandit,
  • Andrew Douglas,
  • Asim Rizvi,
  • Ramanathan Kadirvel,
  • Michael Gilvarry,
  • Ray McCarthy,
  • Manuel Stritt,
  • Matthew J Gounis,
  • Waleed Brinjikji,
  • David F Kallmes,
  • Karen M Doyle

DOI
https://doi.org/10.1371/journal.pone.0225841
Journal volume & issue
Vol. 14, no. 12
p. e0225841

Abstract

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Our aim was to assess the utility of a novel machine learning software (Orbit Image Analysis) in the histological quantification of acute ischemic stroke (AIS) clots. We analyzed 50 AIS blood clots retrieved using mechanical thrombectomy procedures. Following H&E staining, quantification of clot components was performed by two different methods: a pathologist using a reference standard method (Adobe Photoshop CC) and an experienced researcher using Orbit Image Analysis. Following quantification, the clots were categorized into 3 types: RBC dominant (≥60% RBCs), Mixed and Fibrin dominant (≥60% Fibrin). Correlations between clot composition and Hounsfield Units density on Computed Tomography (CT) were assessed. There was a significant correlation between the components of clots as quantified by the Orbit Image Analysis algorithm and the reference standard approach (ρ = 0.944**, p < 0.001, n = 150). A significant relationship was found between clot composition (RBC-Rich, Mixed, Fibrin-Rich) and the presence of a Hyperdense artery sign using the algorithmic method (X2(2) = 6.712, p = 0.035*) but not using the reference standard method (X2(2) = 3.924, p = 0.141). Orbit Image Analysis machine learning software can be used for the histological quantification of AIS clots, reproducibly generating composition analyses similar to current reference standard methods.