Abstract
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 (rho = 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 (X-2 (2) = 6.712, p = 0.035*) but not using the reference standard method (X-2 (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.
| Original language | English (Ireland) |
|---|---|
| Number of pages | 0 |
| Journal | Plos One |
| Volume | 14 |
| DOIs | |
| Publication status | Published - 1 Dec 2019 |
Authors (Note for portal: view the doc link for the full list of authors)
- Authors
- Fitzgerald, S;Wang, SL;Dai, DY;Murphree, DH;Pandit, A;Douglas, A;Rizvi, A;Kadirvel, R;Gilvarry, M;McCarthy, R;Stritt, M;Gounis, MJ;Brinjikji, W;Kallmes, DF;Doyle, KM