4.7 Article

Lesion segmentation from multimodal MRI using random forest following ischemic stroke

Journal

NEUROIMAGE
Volume 98, Issue -, Pages 324-335

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2014.04.056

Keywords

Chronic stroke; Ischemic infarct; White matter lesions; Secondary lesions; FLAIR MRI; Lesion likelihood; Markov random field; Random forest

Funding

  1. CSIRO of Australia through the Preventative Health Flagship Cluster
  2. National Health and Medical Research Council of Australia
  3. Victorian Government Operational Infrastructure Support Grant
  4. Australian Research Council Future Fellowship [FT0992299]

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Understanding structure-function relationships in the brain after stroke is reliant not only on the accurate anatomical delineation of the focal ischemic lesion, but also on previous infarcts, remote changes and the presence or white matter hyperintensities. The robust definition of primary stroke boundaries and secondary brain lesion: will have significant impact on investigation of brain-behavior relationships and lesion volume correlation: with clinical measures after stroke. Here we present an automated approach to identify chronic ischemic infarctr in addition to other white matter pathologies, that may be used to aid the development of post-stroke management strategies. Our approach uses Bayesian-Markov Random Field (MRF) classification to segment probable lesion volumes present on fluid attenuated inversion recovery (FLAIR) MRI. Thereafter, a random forest classification of the information from multimodal (TI-weighted, 12-weighted, FLAIR, and apparent diffusion coefficient (ADC)) MRI images and other context-aware features (within the probable lesion areas) was used to extract areas with high likelihood of being classified as lesions. The final segmentation of the lesion was obtained by ffiresholding the random forest probabilistic maps. The accuracy of the automated lesion delineation method was assessed in a total of 36 patients (24 male, 12 female, mean age: 64.57 +/- 14.23 yrs) at 3 months after stroke onset and compared with manually segmented lesion volumes by an expert Accuracy assessment of the automated lesion identification method was performed using the commonly used evaluation metrics. The mean sensitivity of segmentation was measured to be 0.53 +/- 0.13 with a mean positive predictive value of 0.75 +/- 0.18. The mean lesion volume difference was observed to be 3232% 21.643% with a high Pearson's correlation o r = 0.76 (p < 0.0001). The lesion overlap accuracy was measured in terms of Dice similarity coefficient with mean of 0.60 +/- 0.12, while the contour accuracy was observed with a mean surface distance of 3.06 mm 3.17 mm. The results signify that our method was successful in identifying most of the lesion areas in FLAIR with a low false positive rate. (C) 2014 Elsevier Inc All rights reserved.

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