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Journal ArticleDOI

Deep Feature Learning for Medical Image Analysis with Convolutional Autoencoder Neural Network

TLDR
A convolutional autoencoder deep learning framework to support unsupervised image features learning for lung nodule through unlabeled data, which only needs a small amount of labeled data for efficient feature learning.
Abstract
At present, computed tomography (CT) is widely used to assist disease diagnosis. Especially, computer aided diagnosis (CAD) based on artificial intelligence (AI) recently exhibits its importance in intelligent healthcare. However, it is a great challenge to establish an adequate labeled dataset for CT analysis assistance, due to the privacy and security issues. Therefore, this paper proposes a convolutional autoencoder deep learning framework to support unsupervised image features learning for lung nodule through unlabeled data, which only needs a small amount of labeled data for efficient feature learning. Through comprehensive experiments, it shows that the proposed scheme is superior to other approaches, which effectively solves the intrinsic labor-intensive problem during artificial image labeling. Moreover, it verifies that the proposed convolutional autoencoder approach can be extended for similarity measurement of lung nodules images. Especially, the features extracted through unsupervised learning are also applicable in other related scenarios.

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Citations
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Journal ArticleDOI

Medical Image Analysis using Convolutional Neural Networks: A Review

TL;DR: A comprehensive review of the current state-of-the-art in medical image analysis using deep convolutional networks is presented in this paper, where the challenges and potential of these techniques are also highlighted.
Journal ArticleDOI

Deep learning in medical image registration: a survey

TL;DR: This survey outlines the evolution of deep learning-based medical image registration in the context of both research challenges and relevant innovations in the past few years and highlights future research directions to show how this field may be possibly moved forward to the next level.
Journal ArticleDOI

Deep learning in medical image registration: a review.

TL;DR: A comprehensive comparison among DL-based methods for lung and brain registration using benchmark datasets is provided and the statistics of all the cited works from various aspects are analyzed, revealing the popularity and future trend ofDL-based medical image registration.
Journal ArticleDOI

NAS-Unet: Neural Architecture Search for Medical Image Segmentation

TL;DR: Inspired by the U-net architecture and its variants successfully applied to various medical image segmentation, this paper proposes NAS-Unet which is stacked by the same number of DownSC and UpSC on a U-like backbone network.
Journal ArticleDOI

Medical Image Analysis using Convolutional Neural Networks: A Review

TL;DR: A comprehensive review of the current state-of-the-art in medical image analysis using deep convolutional networks is presented and the challenges and potential of these techniques are also highlighted.
References
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