肺CT图像自动分割技术综述

Humera Shaziya, K. Shyamala, Raniah Zaheer
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引用次数: 3

摘要

分割是将图像划分为具有相似特征的不同子集的过程。分割是语义图像分析的重要前提。一般来说,分割在许多不同的应用中都很有用,比如物体和人脸的检测和识别。特别是在医学图像分析中,分割对图像的高效处理起着至关重要的作用。分割用于确定肿块的体积,放疗计划和检测各种器官的伪影。在肺癌诊断中,肺的分割是至关重要的一步。从附近的肺组织中分割肺可显著减少结节检测的执行时间,并有助于提高其效率。考虑到肺场的异质性、不同软组织灰度的接近性、解剖变异性以及扫描仪、扫描方案和辐射剂量的差异,肺分割是一项具有挑战性和困难的任务。各种自动和半自动的方法被提出用于肺或结节分割。本研究是对众多肺分割技术的综述。本文研究了肺分割方法,从传统方法到机器学习技术,最后是最引人注目的深度学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comprehensive Review of Automatic Lung Segmentation Techniques on Pulmonary CT Images
Segmentation is the process of partitioning an image into distinctive subsets that share similar characteristics. Segmentation is an important prerequisite to semantic image analysis. Segmentation in general is useful in many different applications such as object and face detection and recognition. Particularly in medical image analysis segmentation plays a vital role in efficient processing of images. Segmentation is used to determine the volume of mass, planning of radiotherapy, and detection of artifacts in various organs. In lung cancer diagnosis, segmentation of lungs is the crucial step. Segmenting lungs from nearby structures significantly reduce the execution time of nodule detection and helps improve its efficiency. Lung segmentation is challenging and difficult task considering the heterogeneous nature of lung fields, closeness in gray level of different soft tissues, anatomical variability, and differences in scanners and scanning protocols and dose of radiation. Various automatic and semi-automatic approaches are presented for lung or nodule segmentation. The proposed study is a review of numerous techniques for lung segmentation. The present work investigated lung segmentation methods starting with conventional methods to machine learning techniques and finally the most remarkable methods of deep learning.
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