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Proceedings ArticleDOI

A deep learning-based segmentation method for brain tumor in MR images

TLDR
A novel and new coarse-to-fine method is proposed to segment the brain tumor using a hierarchical framework that consists of preprocessing, deep learning network based classification and post-processing.
Abstract
Accurate tumor segmentation is an essential and crucial step for computer-aided brain tumor diagnosis and surgical planning. Subjective segmentations are widely adopted in clinical diagnosis and treating, but they are neither accurate nor reliable. An automatical and objective system for brain tumor segmentation is strongly expected. But they are still facing some challenges such as lower segmentation accuracy, demanding a priori knowledge or requiring the human intervention. In this paper, a novel and new coarse-to-fine method is proposed to segment the brain tumor. This hierarchical framework consists of preprocessing, deep learning network based classification and post-processing. The preprocessing is used to extract image patches for each MR image and obtains the gray level sequences of image patches as the input of the deep learning network. The deep learning network based classification is implemented by a stacked auto-encoder network to extract the high level abstract feature from the input, and utilizes the extracted feature to classify image patches. After mapping the classification result to a binary image, the post-processing is implemented by a morphological filter to get the final segmentation result. In order to evaluate the proposed method, the experiment was applied to segment the brain tumor for the real patient dataset. The final performance shows that the proposed brain tumor segmentation method is more accurate and efficient.

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Journal ArticleDOI

A Review on Brain Tumor Diagnosis from MRI Images : Practical Implications, Key Achievements, and Lessons Learned

TL;DR: This study presents a comprehensive review of traditional machine learning techniques and evolving deep learning techniques for brain tumor diagnosis and identifies the key achievements reflected in the performance measurement metrics of the applied algorithms in the three diagnosis processes.
Journal ArticleDOI

Brain Tumor Analysis Empowered with Deep Learning: A Review, Taxonomy, and Future Challenges.

TL;DR: A review conducted by summarizing a large number of scientific contributions to the field of deep learning in brain tumor analysis is presented, and a coherent taxonomy of research landscape from the literature has been mapped.
Journal ArticleDOI

Fully Automated Delineation of Gross Tumor Volume for Head and Neck Cancer on PET-CT Using Deep Learning: A Dual-Center Study

TL;DR: A fully automatic GTV contouring method for HNC based on DCNN and PET-CT from dual centers has been successfully proposed with high accuracy and efficiency and is of help to the clinicians in HNC management.
Journal ArticleDOI

Automatic modulation classification of digital modulation signals with stacked autoencoders

TL;DR: The results show that a very good classification rate is achieved at a low SNR of 0 dB, which shows the potential of the deep learning model for the application of modulation classification in AWGN and flat-fading channel.
Journal ArticleDOI

Computational biology: deep learning.

TL;DR: Advances in deep learning ideas for constructing and training networks and even off-the-shelf models have been adapted from the rapidly developing machine learning subfield to improve performance in a range of computational biology tasks.
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