Abstract

The fast and accurate segmentation of lung nodule image sequences is the basis of subsequent processing and diagnostic analyses. However, previous research investigating nodule segmentation algorithms cannot entirely segment cavitary nodules, and the segmentation of juxta-vascular nodules is inaccurate and inefficient. To solve these problems, we propose a new method for the segmentation of lung nodule image sequences based on superpixels and density-based spatial clustering of applications with noise (DBSCAN). First, our method uses three-dimensional computed tomography image features of the average intensity projection combined with multi-scale dot enhancement for preprocessing. Hexagonal clustering and morphological optimized sequential linear iterative clustering (HMSLIC) for sequence image oversegmentation is then proposed to obtain superpixel blocks. The adaptive weight coefficient is then constructed to calculate the distance required between superpixels to achieve precise lung nodules positioning and to obtain the subsequent clustering starting block. Moreover, by fitting the distance and detecting the change in slope, an accurate clustering threshold is obtained. Thereafter, a fast DBSCAN superpixel sequence clustering algorithm, which is optimized by the strategy of only clustering the lung nodules and adaptive threshold, is then used to obtain lung nodule mask sequences. Finally, the lung nodule image sequences are obtained. The experimental results show that our method rapidly, completely and accurately segments various types of lung nodule image sequences.

Highlights

  • We propose a segmentation method for lung nodule image sequences based on superpixels and density-based spatial clustering of applications with noise (DBSCAN)

  • The mapping relationship between the lung computed tomography (CT) sequence images and Average intensity projection (AIP) sequence images is shown in Fig 2, and Nr is the total number of AIP reconstruction image sequences

  • To demonstrate the validity of the sequence segmentation algorithm, 1458 CT sequence images were selected for three types of nodules to perform a qualitative evaluation and quantitative comparison of all the segmentation results

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Summary

Introduction

Lung cancer is one of the most malignant tumors with the highest morbidity and mortality [1, 2]; it is very important to detect lung nodules as early as possible and make an early. Compared with NLFS, MRF, ITS, DNN, SCFDNN and SFDNN, the joint learning network framework produces the best segmentation results for IBSR and BrainWeb brain datasets These algorithms for the segmentation of solid nodules are very effective, the following issues are raised. We propose a segmentation method for lung nodule image sequences based on superpixels and density-based spatial clustering of applications with noise (DBSCAN). This method significantly reduces the effects of noise and completely incorporates the features of color, spatial location, blood vessels and nodule type in the CT images. Compared with other existing methods mentioned in the literature, our method is more efficient and accurate for segmented cavitary nodules and juxta-vascular nodules

Materials and methods
Lung parenchyma image sequence segmentation
Multi-scale dot enhancement
DBSCAN
Adaptive clustering initiating the block and clustering threshold setting
Improved DBSCAN algorithm for superpixel sequence image clustering
Results and discussion
Conclusions
Full Text
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