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Automatic Detection and Quantification of Acute Cerebral Infarct by Fuzzy Clustering and Histographic Characterization on Diffusion Weighted MR Imaging and Apparent Diffusion Coefficient Map

  • Jang-Zern Tsai
  • , Syu-Jyun Peng
  • , Yu-Wei Chen
  • , Kuo-Wei Wang
  • , Hsiao-Kuang Wu
  • , Yun-Yu Lin
  • , Ying-Ying Lee
  • , Chi-Jen Chen
  • , Huey-Juan Lin
  • , Eric Edward Smith
  • , Poh-Shiow Yeh
  • , Yue-Loong Hsin
  • , TestFaculty1 TestFaculty1

Research output: Contribution to journalArticlepeer-review

Abstract

Determination of the volumes of acute cerebral infarct in the magnetic resonance imaging harbors prognostic values. However, semiautomatic method of segmentation is time-consuming and with high interrater variability. Using diffusion weighted imaging and apparent diffusion coefficient map from patients with acute infarction in 10 days, we aimed to develop a fully automatic algorithm to measure infarct volume. It includes an unsupervised classification with fuzzy C-means clustering determination of the histographic distribution, defining self-adjusted intensity thresholds. The proposed method attained high agreement with the semiautomatic method, with similarity index 89.9 ± 6.5%, in detecting cerebral infarct lesions from 22 acute stroke patients. We demonstrated the accuracy of the proposed computer-assisted prompt segmentation method, which appeared promising to replace the laborious, time-consuming, and operator-dependent semiautomatic segmentation.
Original languageEnglish
Number of pages963032
JournalBioMed Research International
Volume2014
StatePublished - 2014

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