• Medientyp: E-Artikel
  • Titel: Development and validation of an automatic segmentation algorithm for quantification of intracerebral hemorrhage
  • Beteiligte: Scherer, Moritz [VerfasserIn]; Younsi, Alexander [VerfasserIn]; Möhlenbruch, Markus Alfred [VerfasserIn]; Stock, Christian [VerfasserIn]; Bösel, Julian [VerfasserIn]; Unterberg, Andreas [VerfasserIn]; Orakcioglu, Berk [VerfasserIn]
  • Erschienen: August 29, 2016
  • Erschienen in: Stroke ; 47(2016), 11, Seite 2776-2782
  • Sprache: Englisch
  • DOI: 10.1161/STROKEAHA.116.013779
  • ISSN: 1524-4628
  • Identifikator:
  • Schlagwörter: computed tomography ; computer-assisted image analysis ; intracerebral hemorrhage ; machine learning ; volumetric analysis
  • Entstehung:
  • Anmerkungen:
  • Beschreibung: Background and Purpose—ABC/2 is still widely accepted for volume estimations in spontaneous intracerebral hemorrhage (ICH) despite known limitations, which potentially accounts for controversial outcome-study results. The aim of this study was to establish and validate an automatic segmentation algorithm, allowing for quick and accurate quantification of ICH. Methods—A segmentation algorithm implementing first- and second-order statistics, texture, and threshold features was trained on manual segmentations with a random-forest methodology. Quantitative data of the algorithm, manual segmentations, and ABC/2 were evaluated for agreement in a study sample (n=28) and validated in an independent sample not used for algorithm training (n=30). Results—ABC/2 volumes were significantly larger compared with either manual or algorithm values, whereas no significant differences were found between the latter (P<0.0001; Friedman+Dunn’s multiple comparison). Algorithm agreement with the manual reference was strong (concordance correlation coefficient 0.95 [lower 95% confidence interval 0.91]) and superior to ABC/2 (concordance correlation coefficient 0.77 [95% confidence interval 0.64]). Validation confirmed agreement in an independent sample (algorithm concordance correlation coefficient 0.99 [95% confidence interval 0.98], ABC/2 concordance correlation coefficient 0.82 [95% confidence interval 0.72]). The algorithm was closer to respective manual segmentations than ABC/2 in 52/58 cases (89.7%). Conclusions—An automatic segmentation algorithm for volumetric analysis of spontaneous ICH was developed and validated in this study. Algorithm measurements showed strong agreement with manual segmentations, whereas ABC/2 exhibited its limitations, yielding inaccurate overestimations of ICH volume. The refined, yet time-efficient, quantification of ICH by the algorithm may facilitate evaluation of clot volume as an outcome predictor and trigger for surgical interventions in the clinical setting.
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