Kang Seung Kwan, Heo Mina, Chung Ji Yeon, Kim Daewoon, Shin Seong A, Choi Hongyoon, Chung Ari, Ha Jung-Min, Kim Hoowon, Lee Jae Sung
Brightonix Imaging Inc., Seoul, Korea.
Institute of Radiation Medicine, Medical Research Center, Seoul National University College of Medicine, Seoul, Korea.
Nucl Med Mol Imaging. 2024 Jun;58(4):246-254. doi: 10.1007/s13139-024-00861-6. Epub 2024 May 2.
This study assesses the clinical performance of BTXBrain-Amyloid, an artificial intelligence-powered software for quantifying amyloid uptake in brain PET images.
150 amyloid brain PET images were visually assessed by experts and categorized as negative and positive. Standardized uptake value ratio (SUVR) was calculated with cerebellum grey matter as the reference region, and receiver operating characteristic (ROC) and precision-recall (PR) analysis for BTXBrain-Amyloid were conducted. For comparison, same image processing and analysis was performed using Statistical Parametric Mapping (SPM) program. In addition, to evaluate the spatial normalization (SN) performance, mutual information (MI) between MRI template and spatially normalized PET images was calculated and SPM group analysis was conducted.
Both BTXBrain and SPM methods discriminated between negative and positive groups. However, BTXBrain exhibited lower SUVR standard deviation (0.06 and 0.21 for negative and positive, respectively) than SPM method (0.11 and 0.25). In ROC analysis, BTXBrain had an AUC of 0.979, compared to 0.959 for SPM, while PR curves showed an AUC of 0.983 for BTXBrain and 0.949 for SPM. At the optimal cut-off, the sensitivity and specificity were 0.983 and 0.921 for BTXBrain and 0.917 and 0.921 for SPM12, respectively. MI evaluation also favored BTXBrain (0.848 vs. 0.823), indicating improved SN. In SPM group analysis, BTXBrain exhibited higher sensitivity in detecting basal ganglia differences between negative and positive groups.
BTXBrain-Amyloid outperformed SPM in clinical performance evaluation, also demonstrating superior SN and improved detection of deep brain differences. These results suggest the potential of BTXBrain-Amyloid as a valuable tool for clinical amyloid PET image evaluation.
本研究评估BTXBrain-Amyloid的临床性能,这是一款用于量化脑PET图像中淀粉样蛋白摄取的人工智能软件。
150张淀粉样蛋白脑PET图像由专家进行视觉评估,并分为阴性和阳性。以小脑灰质为参考区域计算标准化摄取值比率(SUVR),并对BTXBrain-Amyloid进行受试者操作特征(ROC)和精确召回率(PR)分析。为作比较,使用统计参数映射(SPM)程序进行相同的图像处理和分析。此外,为评估空间归一化(SN)性能,计算MRI模板与空间归一化PET图像之间的互信息(MI)并进行SPM组分析。
BTXBrain和SPM方法均能区分阴性和阳性组。然而,BTXBrain的SUVR标准差低于SPM方法(阴性组和阳性组分别为0.06和0.21,而SPM方法为0.11和0.25)。在ROC分析中,BTXBrain的曲线下面积(AUC)为0.979,而SPM为0.959,而PR曲线显示BTXBrain的AUC为0.983,SPM为0.949。在最佳截断值时,BTXBrain的敏感性和特异性分别为0.983和0.921,而SPM分别为0.917和0.921。MI评估也有利于BTXBrain(0.848对0.823),表明SN有所改善。在SPM组分析中,BTXBrain在检测阴性和阳性组之间基底节差异方面表现出更高的敏感性。
在临床性能评估中,BTXBrain-Amyloid优于SPM,还显示出卓越的SN以及对深部脑差异检测的改善。这些结果表明BTXBrain-Amyloid作为临床淀粉样蛋白PET图像评估的有价值工具的潜力。