Robel K Gebre, Alexis Moscoso Rial, Sheelakumari Raghavan, Heather J Wiste, Fiona Heeman, Alejandro Costoya-Sánchez, Christopher G Schwarz, Anthony J Spychalla, Val J Lowe, Jonathan Graff-Radford, David S Knopman, Ronald C Petersen, Michael Schöll, Melissa E Murray, Clifford R Jack, Prashanthi Vemuri
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引用次数: 0
Abstract
Alzheimer disease (AD) exhibits spatially heterogeneous 3- or 4-repeat tau deposition across participants. Our overall goal was to develop an automated method to quantify the heterogeneous burden of tau deposition into a single number that would be clinically useful. Methods: We used tau PET scans from 3 independent cohorts: the Mayo Clinic Study of Aging and Alzheimer's Disease Research Center (Mayo, n = 1,290), the Alzheimer's Disease Neuroimaging Initiative (ADNI, n = 831), and the Open Access Series of Imaging Studies (OASIS-3, n = 430). A machine learning binary classification model was trained on Mayo data and validated on ADNI and OASIS-3 with the goal of predicting visual tau positivity (as determined by 3 raters following Food and Drug Administration criteria for 18F-flortaucipir). The machine learning model used region-specific SUV ratios scaled to cerebellar crus uptake. We estimated feature contributions based on an artificial intelligence-explainable method (Shapley additive explanations) and formulated a global tau summary measure, Tau Heterogeneity Evaluation in Alzheimer's Disease (THETA) score, using SUV ratios and Shapley additive explanations for each participant. We compared the performance of THETA with that of commonly used meta-regions of interest (ROIs) using the Mini-Mental State Examination, the Clinical Dementia Rating-Sum of Boxes, clinical diagnosis, and histopathologic staging. Results: The model achieved a balanced accuracy of 95% on the Mayo test set and at least 87% on the validation sets. It classified tau-positive and -negative participants with an AUC of 1.00, 0.96, and 0.94 on the Mayo, ADNI, and OASIS-3 cohorts, respectively. Across all cohorts, THETA showed a better correlation with the Mini-Mental State Examination and the Clinical Dementia Rating-Sum of Boxes (ρ ≥ 0.45, P < 0.05) than did meta-ROIs (ρ < 0.44, P < 0.05) and discriminated between participants who were cognitively unimpaired and those who had mild cognitive impairment with an effect size of 10.09, compared with an effect size of 3.08 for meta-ROIs. Conclusion: Our proposed approach identifies positive tau PET scans and provides a quantitative summary measure, THETA, that effectively captures heterogeneous tau deposition observed in AD. The application of THETA for quantifying tau PET in AD exhibits great potential.
利用机器学习推进阿尔茨海默病的 Tau PET 定量:介绍 THETA--一种新型 Tau 概要测量方法。
阿尔茨海默病(AD)患者的 3 或 4 倍重复 tau 沉积在空间上具有异质性。我们的总体目标是开发一种自动方法,将 tau 沉积的异质性负担量化为对临床有用的单一数字。方法:我们使用了来自 3 个独立队列的 tau PET 扫描结果:梅奥诊所老龄化和阿尔茨海默病研究中心(Mayo,n = 1,290)、阿尔茨海默病神经影像学倡议(ADNI,n = 831)和影像学研究开放存取系列(OASIS-3,n = 430)。在梅奥数据上训练了一个机器学习二元分类模型,并在 ADNI 和 OASIS-3 上进行了验证,目的是预测视觉 tau 阳性(由 3 位评分员按照食品药品管理局的 18F-flortaucipir 标准确定)。机器学习模型使用特定区域的 SUV 比值与小脑嵴摄取量成比例。我们根据人工智能可解释方法(夏普利加法解释)估算了特征贡献,并使用 SUV 比值和每个参与者的夏普利加法解释制定了一个全局性的 Tau 总结测量方法,即阿尔茨海默病 Tau 异质性评估(THETA)评分。我们使用迷你精神状态检查(Mini-Mental State Examination)、临床痴呆评级-方框总和(Clinical Dementia Rating-Sum of Boxes)、临床诊断和组织病理学分期,比较了THETA与常用的元感兴趣区(ROIs)的性能。结果显示该模型在梅奥测试集上的均衡准确率为 95%,在验证集上的准确率至少为 87%。在梅奥、ADNI和OASIS-3队列中,该模型对tau阳性和阴性参与者的分类AUC分别为1.00、0.96和0.94。在所有队列中,THETA 与迷你精神状态检查和临床痴呆评级-方框总和的相关性(ρ ≥ 0.45,P < 0.05)优于元 ROIs(ρ < 0.44,P < 0.05),并且能区分认知功能未受损的参与者和轻度认知功能受损的参与者,其效应大小为 10.09,而元 ROIs 的效应大小为 3.08。结论我们提出的方法可识别阳性 tau PET 扫描,并提供一种定量总结测量方法 THETA,该方法可有效捕捉在 AD 中观察到的异质性 tau 沉积。应用 THETA 对 AD 中的 tau PET 进行量化具有很大的潜力。