Automated Brain Tumor Detection and Segmentation for Treatment Response Assessment Using Amino Acid PET.

IF 9.1 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Nuclear Medicine Pub Date : 2023-10-01 Epub Date: 2023-08-10 DOI:10.2967/jnumed.123.265725
Robin Gutsche, Carsten Lowis, Karl Ziemons, Martin Kocher, Garry Ceccon, Cláudia Régio Brambilla, Nadim J Shah, Karl-Josef Langen, Norbert Galldiks, Fabian Isensee, Philipp Lohmann
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引用次数: 2

Abstract

Evaluation of metabolic tumor volume (MTV) changes using amino acid PET has become an important tool for response assessment in brain tumor patients. MTV is usually determined by manual or semiautomatic delineation, which is laborious and may be prone to intra- and interobserver variability. The goal of our study was to develop a method for automated MTV segmentation and to evaluate its performance for response assessment in patients with gliomas. Methods: In total, 699 amino acid PET scans using the tracer O-(2-[18F]fluoroethyl)-l-tyrosine (18F-FET) from 555 brain tumor patients at initial diagnosis or during follow-up were retrospectively evaluated (mainly glioma patients, 76%). 18F-FET PET MTVs were segmented semiautomatically by experienced readers. An artificial neural network (no new U-Net) was configured on 476 scans from 399 patients, and the network performance was evaluated on a test dataset including 223 scans from 156 patients. Surface and volumetric Dice similarity coefficients (DSCs) were used to evaluate segmentation quality. Finally, the network was applied to a recently published 18F-FET PET study on response assessment in glioblastoma patients treated with adjuvant temozolomide chemotherapy for a fully automated response assessment in comparison to an experienced physician. Results: In the test dataset, 92% of lesions with increased uptake (n = 189) and 85% of lesions with iso- or hypometabolic uptake (n = 33) were correctly identified (F1 score, 92%). Single lesions with a contiguous uptake had the highest DSC, followed by lesions with heterogeneous, noncontiguous uptake and multifocal lesions (surface DSC: 0.96, 0.93, and 0.81 respectively; volume DSC: 0.83, 0.77, and 0.67, respectively). Change in MTV, as detected by the automated segmentation, was a significant determinant of disease-free and overall survival, in agreement with the physician's assessment. Conclusion: Our deep learning-based 18F-FET PET segmentation allows reliable, robust, and fully automated evaluation of MTV in brain tumor patients and demonstrates clinical value for automated response assessment.

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使用氨基酸PET进行治疗反应评估的脑肿瘤自动检测和分割。
使用氨基酸PET评估代谢肿瘤体积(MTV)变化已成为评估脑肿瘤患者反应的重要工具。MTV通常通过手动或半自动描绘来确定,这是费力的,并且可能容易出现观察者内和观察者间的变异。我们研究的目的是开发一种自动MTV分割的方法,并评估其在胶质瘤患者反应评估中的性能。方法:回顾性评估555例脑肿瘤患者(主要是神经胶质瘤患者,76%)在初次诊断或随访期间使用示踪剂O-(2-[18F]氟乙基)-l-酪氨酸(18F-FET)进行的699次氨基酸PET扫描。18F-FET PET MTV由经验丰富的读者半自动分割。在399名患者的476次扫描中配置了人工神经网络(没有新的U-Net),并在包括156名患者的223次扫描的测试数据集上评估了网络性能。表面和体积骰子相似系数(DSCs)用于评估分割质量。最后,该网络应用于最近发表的一项18F-FET PET研究,该研究对接受替莫唑胺辅助化疗的胶质母细胞瘤患者进行了反应评估,与经验丰富的医生相比,进行了全自动反应评估。结果:在测试数据集中,92%的摄取增加的病变(n=189)和85%的等代谢或低代谢摄取的病变(n=33)被正确识别(F1评分,92%)。连续摄取的单个病变具有最高的DSC,其次是异质性、非连续摄取的病变和多灶性病变(表面DSC分别为0.96、0.93和0.81;体积DSC分别为0.83、0.77和0.67)。根据医生的评估,通过自动分割检测到的MTV变化是无病和总生存率的重要决定因素。结论:我们基于深度学习的18F-FET PET分割允许对脑肿瘤患者的MTV进行可靠、稳健和完全自动化的评估,并证明了自动化反应评估的临床价值。
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来源期刊
Journal of Nuclear Medicine
Journal of Nuclear Medicine 医学-核医学
CiteScore
13.00
自引率
8.60%
发文量
340
审稿时长
1 months
期刊介绍: The Journal of Nuclear Medicine (JNM), self-published by the Society of Nuclear Medicine and Molecular Imaging (SNMMI), provides readers worldwide with clinical and basic science investigations, continuing education articles, reviews, employment opportunities, and updates on practice and research. In the 2022 Journal Citation Reports (released in June 2023), JNM ranked sixth in impact among 203 medical journals worldwide in the radiology, nuclear medicine, and medical imaging category.
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