Literature DB >> 23020972

Automatic detection of lung nodules in CT datasets based on stable 3D mass-spring models.

D Cascio1, R Magro, F Fauci, M Iacomi, G Raso.   

Abstract

We propose a computer-aided detection (CAD) system which can detect small-sized (from 3mm) pulmonary nodules in spiral CT scans. A pulmonary nodule is a small lesion in the lungs, round-shaped (parenchymal nodule) or worm-shaped (juxtapleural nodule). Both kinds of lesions have a radio-density greater than lung parenchyma, thus appearing white on the images. Lung nodules might indicate a lung cancer and their early stage detection arguably improves the patient survival rate. CT is considered to be the most accurate imaging modality for nodule detection. However, the large amount of data per examination makes the full analysis difficult, leading to omission of nodules by the radiologist. We developed an advanced computerized method for the automatic detection of internal and juxtapleural nodules on low-dose and thin-slice lung CT scan. This method consists of an initial selection of nodule candidates list, the segmentation of each candidate nodule and the classification of the features computed for each segmented nodule candidate.The presented CAD system is aimed to reduce the number of omissions and to decrease the radiologist scan examination time. Our system locates with the same scheme both internal and juxtapleural nodules. For a correct volume segmentation of the lung parenchyma, the system uses a Region Growing (RG) algorithm and an opening process for including the juxtapleural nodules. The segmentation and the extraction of the suspected nodular lesions from CT images by a lung CAD system constitutes a hard task. In order to solve this key problem, we use a new Stable 3D Mass-Spring Model (MSM) combined with a spline curves reconstruction process. Our model represents concurrently the characteristic gray value range, the directed contour information as well as shape knowledge, which leads to a much more robust and efficient segmentation process. For distinguishing the real nodules among nodule candidates, an additional classification step is applied; furthermore, a neural network is applied to reduce the false positives (FPs) after a double-threshold cut. The system performance was tested on a set of 84 scans made available by the Lung Image Database Consortium (LIDC) annotated by four expert radiologists. The detection rate of the system is 97% with 6.1 FPs/CT. A reduction to 2.5 FPs/CT is achieved at 88% sensitivity. We presented a new 3D segmentation technique for lung nodules in CT datasets, using deformable MSMs. The result is a efficient segmentation process able to converge, identifying the shape of the generic ROI, after a few iterations. Our suitable results show that the use of the 3D AC model and the feature analysis based FPs reduction process constitutes an accurate approach to the segmentation and the classification of lung nodules.
Copyright © 2012 Elsevier Ltd. All rights reserved.

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Year:  2012        PMID: 23020972     DOI: 10.1016/j.compbiomed.2012.09.002

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  20 in total

1.  Clinical application of a novel computer-aided detection system based on three-dimensional CT images on pulmonary nodule.

Authors:  Jian-Ye Zeng; Hai-Hong Ye; Shi-Xiong Yang; Ren-Chao Jin; Qi-Liang Huang; Yong-Chu Wei; Si-Guang Huang; Bin-Qiang Wang; Jia-Zhou Ye; Jian-Ying Qin
Journal:  Int J Clin Exp Med       Date:  2015-09-15

2.  An Official American Thoracic Society Research Statement: A Research Framework for Pulmonary Nodule Evaluation and Management.

Authors:  Christopher G Slatore; Nanda Horeweg; James R Jett; David E Midthun; Charles A Powell; Renda Soylemez Wiener; Juan P Wisnivesky; Michael K Gould
Journal:  Am J Respir Crit Care Med       Date:  2015-08-15       Impact factor: 21.405

3.  HoTPiG: a novel graph-based 3-D image feature set and its applications to computer-assisted detection of cerebral aneurysms and lung nodules.

Authors:  Shouhei Hanaoka; Yukihiro Nomura; Tomomi Takenaga; Masaki Murata; Takahiro Nakao; Soichiro Miki; Takeharu Yoshikawa; Naoto Hayashi; Osamu Abe; Akinobu Shimizu
Journal:  Int J Comput Assist Radiol Surg       Date:  2019-03-11       Impact factor: 2.924

4.  3D Segmentation Algorithms for Computerized Tomographic Imaging: a Systematic Literature Review.

Authors:  L E Carvalho; A C Sobieranski; A von Wangenheim
Journal:  J Digit Imaging       Date:  2018-12       Impact factor: 4.056

5.  Multistage segmentation model and SVM-ensemble for precise lung nodule detection.

Authors:  Syed Muhammad Naqi; Muhammad Sharif; Mussarat Yasmin
Journal:  Int J Comput Assist Radiol Surg       Date:  2018-02-28       Impact factor: 2.924

6.  3D Convolutional Neural Network for Automatic Detection of Lung Nodules in Chest CT.

Authors:  Sardar Hamidian; Berkman Sahiner; Nicholas Petrick; Aria Pezeshk
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2017-03-03

Review 7.  Lung Nodule Detection from Feature Engineering to Deep Learning in Thoracic CT Images: a Comprehensive Review.

Authors:  Amitava Halder; Debangshu Dey; Anup K Sadhu
Journal:  J Digit Imaging       Date:  2020-06       Impact factor: 4.056

8.  Automatic detection of pulmonary nodules on CT images with YOLOv3: development and evaluation using simulated and patient data.

Authors:  Chenyang Liu; Shen-Chiang Hu; Chunhao Wang; Kyle Lafata; Fang-Fang Yin
Journal:  Quant Imaging Med Surg       Date:  2020-10

9.  Expert knowledge-infused deep learning for automatic lung nodule detection.

Authors:  Jiaxing Tan; Yumei Huo; Zhengrong Liang; Lihong Li
Journal:  J Xray Sci Technol       Date:  2019       Impact factor: 1.535

Review 10.  Radiomics and artificial intelligence in lung cancer screening.

Authors:  Franciszek Binczyk; Wojciech Prazuch; Paweł Bozek; Joanna Polanska
Journal:  Transl Lung Cancer Res       Date:  2021-02
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