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首页> 外文期刊>Neurology: Official Journal of the American Academy of Neurology >Brain amyloidosis ascertainment from cognitive, imaging, and peripheral blood protein measures
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Brain amyloidosis ascertainment from cognitive, imaging, and peripheral blood protein measures

机译:从认知脑淀粉样变确定,成像,周边血液蛋白质的措施

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Background:The goal of this study was to identify a clinical biomarker signature of brain amyloidosis in the Alzheimer's Disease Neuroimaging Initiative 1 (ADNI1) mild cognitive impairment (MCI) cohort.Methods:We developed a multimodal biomarker classifier for predicting brain amyloidosis using cognitive, imaging, and peripheral blood protein ADNI1 MCI data. We used CSF -amyloid 1-42 (A(42)) 192 pg/mL as proxy measure for Pittsburgh compound B (PiB)-PET standard uptake value ratio 1.5. We trained our classifier in the subcohort with CSF A(42) but no PiB-PET data and tested its performance in the subcohort with PiB-PET but no CSF A(42) data. We also examined the utility of our biomarker signature for predicting disease progression from MCI to Alzheimer dementia.Results:The CSF training classifier selected Mini-Mental State Examination, Trails B, Auditory Verbal Learning Test delayed recall, education, APOE genotype, interleukin 6 receptor, clusterin, and ApoE protein, and achieved leave-one-out accuracy of 85% (area under the curve [AUC] = 0.8). The PiB testing classifier achieved an AUC of 0.72, and when classifier self-tuning was allowed, AUC = 0.74. The 36-month disease-progression classifier achieved AUC = 0.75 and accuracy = 71%.Conclusions:Automated classifiers based on cognitive and peripheral blood protein variables can identify the presence of brain amyloidosis with a modest level of accuracy. Such methods could have implications for clinical trial design and enrollment in the near future.Classification of evidence:This study provides Class II evidence that a classification algorithm based on cognitive, imaging, and peripheral blood protein measures identifies patients with brain amyloid on PiB-PET with moderate accuracy (sensitivity 68%, specificity 78%).
机译:背景:本研究的目的是识别临床生物标志物签名的大脑在阿尔茨海默病淀粉样变神经影像倡议1 (ADNI1)轻度认知障碍(MCI)队列。多通道生物标志物预测的分类器使用认知脑淀粉样变、成像和外周血蛋白质ADNI1 MCI数据。CSF淀粉样1-42 ((42))192 pg / mL代理测量匹兹堡化合物B(加以宠物1.5标准摄入值比率。分类器在subcohort CSF(42),但没有PiB-PET数据和测试其性能subcohort PiB-PET但没有CSF(42)的数据。还研究了生物标志物的效用签名预测疾病进展MCI老年痴呆。训练分类器选择的心理状况考试,小径B,听觉言语学习测试延迟回忆,教育,APOE基因型,白介素6受体,凝聚素和载脂蛋白e蛋白质,达到分析的准确性85%(曲线下的面积(AUC) = 0.8)。测试分类器实现了AUC是0.72,分类器自调优被允许时,AUC =0.74. 实现了AUC = 0.75和准确性=71%。认知和外周血蛋白质变量可以识别大脑淀粉样变的存在吗适度的准确性。可能会对临床试验设计并登记在不久的将来。的证据:这项研究提供了二类证据一个基于分类算法认知、成像和外周血蛋白质措施识别患者大脑淀粉样蛋白与中等精度(PiB-PET敏感度68%,特异性78%)。

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