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首页> 外文期刊>BMC Neurology >Neuropathological findings processed by artificial neural networks (ANNs) can perfectly distinguish Alzheimer's patients from controls in the Nun Study
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Neuropathological findings processed by artificial neural networks (ANNs) can perfectly distinguish Alzheimer's patients from controls in the Nun Study

机译:人工神经网络(ANN)处理的神经病理学发现可以完美区分阿尔茨海默氏症患者和Nun研究中的对照

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Background Many reports have described that there are fewer differences in AD brain neuropathologic lesions between AD patients and control subjects aged 80 years and older, as compared with the considerable differences between younger persons with AD and controls. In fact some investigators have suggested that since neurofibrillary tangles (NFT) can be identified in the brains of non-demented elderly subjects they should be considered as a consequence of the aging process. At present, there are no universally accepted neuropathological criteria which can mathematically differentiate AD from healthy brain in the oldest old. The aim of this study is to discover the hidden and non-linear associations among AD pathognomonic brain lesions and the clinical diagnosis of AD in participants in the Nun Study through Artificial Neural Networks (ANNs) analysis Methods The analyses were based on 26 clinically- and pathologically-confirmed AD cases and 36 controls who had normal cognitive function. The inputs used for the analyses were just NFT and neuritic plaques counts in neocortex and hippocampus, for which, despite substantial differences in mean lesions counts between AD cases and controls, there was a substantial overlap in the range of lesion counts. Results By taking into account the above four neuropathological features, the overall predictive capability of ANNs in sorting out AD cases from normal controls reached 100%. The corresponding accuracy obtained with Linear Discriminant Analysis was 92.30%. These results were consistently obtained in ten independent experiments. The same experiments were carried out with ANNs on a subgroup of 13 non severe AD patients and on the same 36 controls. The results obtained in terms of prediction accuracy with ANNs were exactly the same. Input relevance analysis confirmed the relative dominance of NFT in neocortex in discriminating between AD patients and controls and indicated the lesser importance played by NP in the hippocampus. Conclusion The results of this study suggest that: a) cortical NFT represent the key variable in AD neuropathology; b) the neuropathologic profile of AD subjects is complex, however, c) ANNs can analyze neuropathologic features and differentiate AD cases from controls.
机译:背景许多报告已经描述,与80岁及80岁以上的AD患者和AD患者相比,AD患者与AD患者的AD脑神经病理病变之间的差异较小。实际上,一些研究人员建议,由于可以在非痴呆的老年受试者的大脑中发现神经原纤维缠结(NFT),因此应将其视为衰老过程的结果。目前,尚无普遍接受的神经病理学标准可数学上将AD与年龄最大的健康大脑区分开。这项研究的目的是通过人工神经网络(ANN)分析方法发现Nun研究参与者的AD病原性脑部病变与AD的临床诊断之间的隐藏和非线性关联。分析基于26种临床和经病理证实的AD患者和36名具有正常认知功能的对照。用于分析的输入仅是新皮层和海马中的NFT和神经噬菌斑计数,尽管AD病例和对照组之间的平均病灶计数存在显着差异,但病灶计数范围存在很大的重叠。结果考虑到上述四个神经病理学特征,人工神经网络从正常对照组中筛选出AD病例的总体预测能力达到了100%。通过线性判别分析获得的相应准确度为92.30%。这些结果是在十个独立的实验中一致获得的。对13名非严重AD患者的亚组和相同的36名对照进行了ANN的相同实验。在人工神经网络的预测准确性方面获得的结果完全相同。输入相关性分析证实了新皮层中NFT在区分AD患者和对照组中的相对优势,并表明NP在海马体中的重要性较低。结论这项研究结果表明:a)皮质NFT代表AD神经病理学的关键变量; b)AD受试者的神经病理学特征很复杂,但是,c)ANN可以分析神经病理学特征并将AD病例与对照区分开。

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