Arquivos de Medicina

  • ISSN: 1989-5216
  • Índice h do diário: 22
  • Pontuação de citação de diário: 4.96
  • Fator de impacto do periódico: 4.44
Indexado em
  • Genamics JournalSeek
  • Infraestrutura Nacional de Conhecimento da China (CNKI)
  • Diretório de Indexação de Periódicos de Pesquisa (DRJI)
  • OCLC- WorldCat
  • Invocação Proquest
  • publons
  • Fundação de Genebra para Educação e Pesquisa Médica
  • Euro Pub
  • Google Scholar
  • Laboratórios secretos do mecanismo de pesquisa
Compartilhe esta página

Abstrato

Performance Evaluation of MRI Tumor Segmentation Using Clustering Algorithms

Siyah Mansoory M, Allahverdy A, Behboudi M and Refahi S

Background: Magnetic resonance imaging (MRI) segmentation assumes great importance in research and clinical applications. The brain segmentation using MRI is challenging due to a significant amount of noise caused by operator performance, scanner, and the environment, which can lead to serious inaccuracies with segmentation. Evaluations of segmentation results in medical imaging are caused by the absence of a gold standard. So, the performance evaluation of these methods would be necessary.

Methods: In this paper, the performance of clustering algorithms such as Fuzzy C-Means (FCM), Hard C-Means (HCM), and Neural Gas (NG) for tumor detection is evaluated on 100 downloaded images. For this purpose, we evaluated these 3 algorithms under noise condition, convergence speed. Compared with manual segmentation by an expert radiologist, sensitivity, specificity, and accuracy are calculated for each segmentation methods.

Results: It can be stated, based on the results, that among the HCM and NG algorithms, the highest degree of accuracy and robustness to noise belongs to FCM. Moreover, optimum convergence rate and iteration need to gain final result using FCM algorithm.

Conclusion: All the quantitative performance analysis and visual comparisons clearly demonstrated the superiority of FCM algorithm for MRI-based tumor detection.