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Tensor Methods in Biomedical Image Analysis.

Farnaz Sedighin1

  • 1Medical Image and Signal Processing Research Center, School of Advanced Technologies in Medicine, Isfahan University of Medical Sciences, Isfahan, Iran.

Journal of Medical Signals and Sensors
|August 5, 2024
PubMed
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This summary is machine-generated.

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Tensors are superior to matrices for analyzing complex biomedical data. This review highlights tensor-based methods for enhancing biomedical image analysis and future research directions.

Area of Science:

  • Multimodal data analysis
  • Biomedical signal and image processing

Background:

  • Matrices struggle with multidimensional and multimodal datasets, limiting analysis.
  • Tensors effectively capture higher-order correlations in complex data.
  • Biomedical data analysis requires accurate information extraction for patient health.

Purpose of the Study:

  • To comprehensively review tensor-based methods in biomedical image analysis.
  • To classify existing tensor methods and their applications.
  • To demonstrate the importance of tensors in biomedical image enhancement.

Main Methods:

  • Review of tensor-based approaches for signal and image processing.
  • Classification of tensor methods applied to biomedical datasets.
  • Analysis of simultaneous data exploitation using tensors (e.g., EEG and fMRI).
Keywords:
Biomedical image enhancementtensor decompositiontensor networks

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Main Results:

  • Tensor-based methods show promising performance in analyzing multidimensional biomedical data.
  • Tensors enable effective simultaneous analysis of multiple datasets from a single patient.
  • Identified the significance of tensors in improving biomedical image quality.

Conclusions:

  • Tensors offer a powerful framework for advanced biomedical image analysis.
  • This review provides a foundation for future research in tensor-based biomedical applications.
  • Tensor methods are crucial for extracting critical information from complex biomedical datasets.