Multi-channel MRI Embedding: An EffectiveStrategy for Enhancement of
Human Brain WholeTumor Segmentation
- URL: http://arxiv.org/abs/2009.06115v1
- Date: Sun, 13 Sep 2020 23:44:16 GMT
- Title: Multi-channel MRI Embedding: An EffectiveStrategy for Enhancement of
Human Brain WholeTumor Segmentation
- Authors: Apurva Pandya, Catherine Samuel, Nisargkumar Patel, Vaibhavkumar
Patel, Thangarajah Akilan
- Abstract summary: One of the most important tasks in medical image processing is the brain's whole tumor segmentation.
Brain tumors often can be malignant or benign, if they are detected at an early stage.
Our research introduces an efficient strategy called Multi-channel MRI embedding to improve the result of deep learning-based tumor segmentation.
- Score: 2.869946954477617
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: One of the most important tasks in medical image processing is the brain's
whole tumor segmentation. It assists in quicker clinical assessment and early
detection of brain tumors, which is crucial for lifesaving treatment procedures
of patients. Because, brain tumors often can be malignant or benign, if they
are detected at an early stage. A brain tumor is a collection or a mass of
abnormal cells in the brain. The human skull encloses the brain very rigidly
and any growth inside this restricted place can cause severe health issues. The
detection of brain tumors requires careful and intricate analysis for surgical
planning and treatment. Most physicians employ Magnetic Resonance Imaging (MRI)
to diagnose such tumors. A manual diagnosis of the tumors using MRI is known to
be time-consuming; approximately, it takes up to eighteen hours per sample.
Thus, the automatic segmentation of tumors has become an optimal solution for
this problem. Studies have shown that this technique provides better accuracy
and it is faster than manual analysis resulting in patients receiving the
treatment at the right time. Our research introduces an efficient strategy
called Multi-channel MRI embedding to improve the result of deep learning-based
tumor segmentation. The experimental analysis on the Brats-2019 dataset wrt the
U-Net encoder-decoder (EnDec) model shows significant improvement. The
embedding strategy surmounts the state-of-the-art approaches with an
improvement of 2% without any timing overheads.
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