Validation of Convolutional Neural Networks for Fast Determination of Whole-Body Metabolic Tumor Burden in Pediatric Lymphoma

E. Etchebehere, Rebeca Andrade, Mariana R. Camacho, M. Lima, A. Brink, J. Cerci, H. Nadel, C. Bal, V. Rangarajan, T. Pfluger, O. Kagna, O. Alonso, F. Begum, Kahkashan Bashir Mir, V. P. Magboo, L. Menezes, D. Paez, T. Pascual
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引用次数: 3

Abstract

Visual Abstract 18F-FDG PET/CT quantification of whole-body tumor burden in lymphoma is not routinely performed because of the lack of fast methods. Although the semiautomatic method is fast, it is not fast enough to quantify tumor burden in daily clinical practice. Our purpose was to evaluate the performance of convolutional neural network (CNN) software in localizing neoplastic lesions in whole-body 18F-FDG PET/CT images of pediatric lymphoma patients. Methods: The retrospective image dataset, derived from the data pool of the International Atomic Energy Agency (coordinated research project E12017), included 102 baseline staging 18F-FDG PET/CT studies of pediatric lymphoma patients (mean age, 11 y). The images were quantified to determine the whole-body tumor burden (whole-body metabolic tumor volume [wbMTV] and whole-body total lesion glycolysis [wbTLG]) using semiautomatic software and CNN-based software. Both were displayed as semiautomatic wbMTV and wbTLG and as CNN wbMTV and wbTLG. The intraclass correlation coefficient (ICC) was applied to evaluate concordance between the CNN-based software and the semiautomatic software. Results: Twenty-six patients were excluded from the analysis because the software was unable to perform calculations for them. In the remaining 76 patients, CNN and semiautomatic wbMTV tumor burden metrics correlated strongly (ICC, 0.993; 95% CI, 0.989 − 0.996; P < 0.0001), as did CNN and semiautomatic wbTLG (ICC, 0.999; 95% CI, 0.998–0.999; P < 0.0001). However, the time spent calculating these metrics was significantly (<0.0001) less by CNN (mean, 19 s; range, 11–50 s) than by the semiautomatic method (mean, 21.6 min; range, 3.2–62.1 min), especially in patients with advanced disease. Conclusion: Determining whole-body tumor burden in pediatric lymphoma patients using CNN is fast and feasible in clinical practice.
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卷积神经网络快速测定儿童淋巴瘤全身代谢性肿瘤负荷的有效性验证
由于缺乏快速的方法,18F-FDG PET/CT对淋巴瘤患者全身肿瘤负荷的定量并不常用。半自动方法虽然速度快,但在日常临床实践中量化肿瘤负荷的速度还不够快。我们的目的是评估卷积神经网络(CNN)软件在儿童淋巴瘤患者全身18F-FDG PET/CT图像中定位肿瘤病灶的性能。方法:回顾性图像数据集来自国际原子能机构(协调研究项目E12017)的数据池,包括102例基线分期18F-FDG儿童淋巴瘤患者(平均年龄11岁)的PET/CT研究,使用半自动化软件和基于cnn的软件对图像进行量化,以确定全身肿瘤负荷(全身代谢肿瘤体积[wbMTV]和全身病变总糖解[wbTLG])。两者都显示为半自动wbMTV和wbTLG,以及CNN wbMTV和wbTLG。采用类内相关系数(ICC)评价基于cnn的软件与半自动软件之间的一致性。结果:26例患者被排除在分析之外,因为软件无法为他们进行计算。在其余76例患者中,CNN与半自动wbMTV肿瘤负荷指标相关性强(ICC, 0.993;95% ci, 0.989−0.996;P < 0.0001), CNN和半自动wbTLG (ICC, 0.999;95% ci, 0.998-0.999;P < 0.0001)。然而,CNN计算这些指标所花费的时间明显(<0.0001)少(平均19秒;范围,11-50秒)比半自动方法(平均21.6分钟;范围3.2-62.1 min),特别是在疾病晚期患者。结论:应用CNN检测小儿淋巴瘤患者全身肿瘤负荷在临床实践中快速可行。
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