Development of an automated region-of-interest-setting method based on a deep neural network for brain perfusion single photon emission computed tomography quantification methods.

Q3 Medicine
Taeko Tomimatsu, Kosuke Yamashita, Takumi Sakata, Ryosuke Kamezaki, Ryuji Ikeda, Shinya Shiraishi, Yoshikazu Uchiyama, Shigeki Ito
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引用次数: 0

Abstract

Objectives: A simple noninvasive microsphere (SIMS) method using 123I-IMP and an improved brain uptake ratio (IBUR) method using 99mTc-ECD for the quantitative measurement of regional cerebral blood flow have been recently reported. The input functions of these methods were determined using the administered dose, which was obtained by analyzing the time activity curve of the pulmonary artery (PA) for SIMS and the ascending aorta (AAo) for the IBUR methods for dynamic chest images. If the PA and AAo regions of interest (ROIs) can be determined using deep convolutional neural networks (DCNN) for segmentation, the accuracy of these ROI-setting methods can be improved through simple analytical operations to ensure repeatability and reproducibility. The purpose of this study was to develop new PA and AAo-ROI setting methods using a DCNN (DCNN-ROI method).

Methods: A U-Net architecture based on convolutional neural networks was used to determine the PA and AAo candidate regions. Images of 290 patients who underwent 123I-IMP RI-angiography and 108 patients who underwent 99mTc-ECD RI-angiography were used. The PA and AAo-ROI results for the DCNN-ROI method were compared to those obtained using manual methods. The counts for the input function on the PA and AAo-ROI were determined by integrating the area under the curve (AUC) counts of the time-activity curve of PA and AAo-ROI, respectively. The effectiveness of the DCNN-ROI method was elucidated through a comparison with the integrated AUC counts of the DCNN-ROI and the manual ROI.

Results: The coincidence ratio for the locations of the PA and AAo-ROI obtained using the DCNN method and that for the manual method was 100%. Strong correlations were observed between the AUC counts using the DCNN and manual methods.

Conclusion: New ROI- setting programs were developed using a deep convolution neural network DCNN to determine the input functions for the SIMS and IBUR methods. The accuracy of these methods is comparable to that of the manual method.

为脑灌注单光子发射计算机断层扫描量化方法开发基于深度神经网络的兴趣区自动设定方法。
目的:最近报道了一种使用 123I-IMP 的简易无创微球体(SIMS)方法和一种使用 99mTc-ECD 的改进脑摄取比(IBUR)方法,用于定量测量区域脑血流。这些方法的输入函数是通过给药剂量确定的,而给药剂量是通过分析动态胸部图像中肺动脉(PA)(SIMS)和升主动脉(AAo)(IBUR)方法的时间活动曲线获得的。如果能使用深度卷积神经网络(DCNN)确定 PA 和 AAo 的感兴趣区(ROI)进行分割,就能通过简单的分析操作提高这些 ROI 设置方法的准确性,从而确保重复性和再现性。本研究的目的是利用 DCNN(DCNN-ROI 方法)开发新的 PA 和 AAo-ROI 设置方法:方法:使用基于卷积神经网络的 U-Net 架构来确定 PA 和 AAo 候选区域。使用了 290 名接受 123I-IMP RI-angiography 的患者和 108 名接受 99mTc-ECD RI-angiography 的患者的图像。将 DCNN-ROI 方法的 PA 和 AAo-ROI 结果与人工方法的结果进行了比较。PA和AAo-ROI的输入函数计数分别通过PA和AAo-ROI的时间-活动曲线的曲线下面积(AUC)计数积分确定。通过与 DCNN-ROI 和人工 ROI 的积分 AUC 计数进行比较,阐明了 DCNN-ROI 方法的有效性:结果:使用 DCNN 方法获得的 PA 和 AAo-ROI 位置与人工方法的重合率为 100%。使用 DCNN 方法和手动方法得出的 AUC 计数之间存在很强的相关性:使用深度卷积神经网络 DCNN 开发了新的 ROI 设置程序,以确定 SIMS 和 IBUR 方法的输入函数。这些方法的准确性与手动方法相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Asia Oceania Journal of Nuclear Medicine and Biology
Asia Oceania Journal of Nuclear Medicine and Biology Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
1.80
自引率
0.00%
发文量
28
审稿时长
12 weeks
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