Characterization of clot composition in acute cerebral infarct using machine learning techniques

Ann Clin Transl Neurol. 2019 Mar 4;6(4):739-747. doi: 10.1002/acn3.751. eCollection 2019 Apr.

Abstract

Objective: Clot characteristics can provide information on the cause of cerebral artery occlusion and may guide acute revascularization and secondary prevention strategies. We developed a rapid automated clot analysis system using machine learning (ML) and validated its accuracy in patients undergoing endovascular treatment.

Methods: Pre-endovascular treatment gradient echo (GRE) images from consecutive patients with middle cerebral artery occlusion were utilized to develop and validate an ML system to predict whether atrial fibrillation (AF) was the underlying cause of ischemic stroke. The accuracy of the ML algorithm was compared with that of visual inspection by neuroimaging specialists for the presence of blooming artifact. Endovascular procedures and outcomes were compared in patients with and without AF.

Results: Of 67 patients, 29 (43.3%) had AF. Of these, 13 had known AF and 16 were newly diagnosed with cardiac monitoring. By visual inspection, interrater correlation for blooming artifact was 0.73 and sensitivity and specificity for AF were 0.79 and 0.63, respectively. For AF classification, the ML algorithms yielded an average accuracy of > 75.4% in fivefold cross-validation with clot signal profiles obtained from 52 patients and an area under the curve >0.87 for the average AF probability from five signal profiles in external validation (n = 15). Analysis with an in-house interface took approximately 3 min per patient. Absence of AF was associated with increased number of passes by stentriever, high reocclusion frequency, and additional use of rescue stenting and/or glycogen IIb/IIIa blocker for recanalization.

Interpretation: ML-based rapid clot analysis is feasible and can identify AF with high accuracy, enabling selection of endovascular treatment strategy.

MeSH terms

  • Acute Disease
  • Adult
  • Aged
  • Aged, 80 and over
  • Atrial Fibrillation / complications
  • Atrial Fibrillation / pathology
  • Brain Ischemia / complications
  • Brain Ischemia / pathology*
  • Endovascular Procedures
  • Female
  • Humans
  • Infarction, Middle Cerebral Artery / complications
  • Infarction, Middle Cerebral Artery / pathology*
  • Machine Learning*
  • Male
  • Middle Aged
  • Neuroimaging / methods
  • Stroke / complications
  • Stroke / pathology*
  • Thrombosis / complications
  • Thrombosis / pathology

Grants and funding

This work was funded by Korean Health Technology R&D Project grant ; Ministry of Health & Welfare grant HC15C1056; National Research Foundation of Korea grant 2018R1A2B2003489.