Single-view 2D CNNs with Fully Automatic Non-nodule Categorization for False Positive Reduction in Pulmonary Nodule Detection

03/09/2020
by   Hyunjun Eun, et al.
9

Background and Objective: In pulmonary nodule detection, the first stage, candidate detection, aims to detect suspicious pulmonary nodules. However, detected candidates include many false positives and thus in the following stage, false positive reduction, such false positives are reliably reduced. Note that this task is challenging due to 1) the imbalance between the numbers of nodules and non-nodules and 2) the intra-class diversity of non-nodules. Although techniques using 3D convolutional neural networks (CNNs) have shown promising performance, they suffer from high computational complexity which hinders constructing deep networks. To efficiently address these problems, we propose a novel framework using the ensemble of 2D CNNs using single views, which outperforms existing 3D CNN-based methods. Methods: Our ensemble of 2D CNNs utilizes single-view 2D patches to improve both computational and memory efficiency compared to previous techniques exploiting 3D CNNs. We first categorize non-nodules on the basis of features encoded by an autoencoder. Then, all 2D CNNs are trained by using the same nodule samples, but with different types of non-nodules. By extending the learning capability, this training scheme resolves difficulties of extracting representative features from non-nodules with large appearance variations. Note that, instead of manual categorization requiring the heavy workload of radiologists, we propose to automatically categorize non-nodules based on the autoencoder and k-means clustering.

READ FULL TEXT

page 2

page 4

page 5

page 7

page 8

research
01/13/2020

Efficient convolutional neural networks for multi-planar lung nodule detection: improvement on small nodule identification

We propose a multi-planar pulmonary nodule detection system using convol...
research
11/04/2018

False Positive Reduction in Lung Computed Tomography Images using Convolutional Neural Networks

Recent studies have shown that lung cancer screening using annual low-do...
research
04/12/2018

3D G-CNNs for Pulmonary Nodule Detection

Convolutional Neural Networks (CNNs) require a large amount of annotated...
research
07/16/2018

Towards Single-phase Single-stage Detection of Pulmonary Nodules in Chest CT Imaging

Detection of pulmonary nodules in chest CT imaging plays a crucial role ...
research
10/07/2016

Automated Detection of Individual Micro-calcifications from Mammograms using a Multi-stage Cascade Approach

In mammography, the efficacy of computer-aided detection methods depends...
research
03/01/2017

Multi-stage Neural Networks with Single-sided Classifiers for False Positive Reduction and its Evaluation using Lung X-ray CT Images

Lung nodule classification is a class imbalanced problem because nodules...
research
06/10/2015

BoWFire: Detection of Fire in Still Images by Integrating Pixel Color and Texture Analysis

Emergency events involving fire are potentially harmful, demanding a fas...

Please sign up or login with your details

Forgot password? Click here to reset