Abstract

Brain tumor image classification is an important part of medical image processing. It assists doctors to make accurate diagnosis and treatment plans. Magnetic resonance (MR) imaging is one of the main imaging tools to study brain tissue. In this article, we propose a brain tumor MR image classification method using convolutional dictionary learning with local constraint (CDLLC). Our method integrates the multi-layer dictionary learning into a convolutional neural network (CNN) structure to explore the discriminative information. Encoding a vector on a dictionary can be considered as multiple projections into new spaces, and the obtained coding vector is sparse. Meanwhile, in order to preserve the geometric structure of data and utilize the supervised information, we construct the local constraint of atoms through a supervised k-nearest neighbor graph, so that the discrimination of the obtained dictionary is strong. To solve the proposed problem, an efficient iterative optimization scheme is designed. In the experiment, two clinically relevant multi-class classification tasks on the Cheng and REMBRANDT datasets are designed. The evaluation results demonstrate that our method is effective for brain tumor MR image classification, and it could outperform other comparisons.

Highlights

  • Brain tumors are abnormal cell aggregations that grow inside the brain tissues

  • We propose a brain tumor Magnetic resonance (MR) image classification method using convolutional dictionary learning with local constraint (CDLLC)

  • In order to capture the better discriminative feature representations of brain tumor MR images, we propose convolutional dictionary learning with local constraint (CDLLC) method to seek sparse feature representation and dictionary simultaneously by using a convolutional neural network (CNN) framework

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Summary

Introduction

Brain tumors can be divided into benign tumors and malignant tumors. Brain benign tumors can be cured by surgery, while malignant brain tumors are one of the most deadly types of cancer and can lead directly to death (Yang et al, 2018; Sun et al, 2019; Ge et al, 2020). Brain tumors can be divided into primary tumors formed in the brain or derived from the brain nerves and metastatic brain tumors metastasized from other parts of the body to the brain. The most common primary brain tumors in adults are primary central nervous system lymphoma and gliomas, of which gliomas originate from the periglial tissue and account for more than 80% of malignant brain tumors. According to the Global cancer statistics 2020 (Sung et al, 2021), there are about 308,000 new cases of brain cancers in 2020, accounting for about 1.6%

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