학술논문

Hidden Markov Model-based Extraction of Target Objects in X-ray Image Sequence for Lung Radiation Therapy / 肺がん放射線治療のための隠れマルコフモデルを用いたX線動画像中の物体輝度抽出
Document Type
Journal Article
Source
電気学会論文誌C(電子・情報・システム部門誌) / IEEJ Transactions on Electronics, Information and Systems. 2020, 140(1):49
Subject
Radiation therapy
X-ray fluoroscopy
X線透視
hidden Markov model
superimposition of image intensity
target image extraction
tumor tracking
ターゲット抽出
放射線治療
腫瘍追跡
重畳輝度成分
隠れマルコフモデル
Language
Japanese
ISSN
0385-4221
1348-8155
Abstract
It is an important task to accurately track the target tumor with respiratory movement during radiation therapy. X-ray imaging technique is capable of observing the internal organ motion. However, superimposed tissues and structures in X-ray images decrease tumor localization accuracy. This paper presents a target extraction method based on hidden Markov model (HMM) to enhance the target tumor in X-ray images for improving the tumor tracking accuracy. We first simulate possible combinations of image intensities of target objects as hidden states and observable X-ray image intensities as output symbol in HMM by using digitally reconstructed radiographs generated from four-dimensional X-ray computed tomography. Subsequently, the transition dynamics of the hidden states and output symbols is estimated by applying Baum-Welch algorithm to a training dataset. The transition sequence of the hidden states is inversely estimated from the observed X-ray image sequence by using Viterbi algorithm, and then the transition sequence is finally decomposed into the subset image sequences. Experimental results demonstrated that tracking performance of the proposed method is superior to that of conventional tumor enhancement method and raw images. Therefore, the proposed method has potential for contributing to effectively observe internal organ motion.