深度学习辅助定量分析特发性正常压力脑积水患者的 Aβ 和小胶质细胞与认知结果的关系。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Antti J Luikku, Ossi Nerg, Anne M Koivisto, Tuomo Hänninen, Antti Junkkari, Susanna Kemppainen, Sini-Pauliina Juopperi, Rosa Sinisalo, Alli Pesola, Hilkka Soininen, Mikko Hiltunen, Ville Leinonen, Tuomas Rauramaa, Henna Martiskainen
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引用次数: 0

摘要

在特发性正常压力脑积水(iNPH)患者的大脑皮层中经常观察到阿尔茨海默病(AD)的神经病理变化,包括Aβ积累和神经炎症。我们创建了一个自动分析平台,用于量化 Aβ 斑块附近的 Aβ 负荷和反应性小胶质细胞,并评估它们与分流时获得的 iNPH 患者皮质活检组织的认知结果之间的关联。Aiforia Create深度学习软件用于120名分流iNPH患者的Iba1/4G8双重免疫染色额叶皮质活检组织的全玻片图像,分别识别Iba1阳性小胶质细胞体和Aβ区域。在中位随访4.4年后,对痴呆、AD临床综合征(ACS)和临床痴呆评分总分(CDR-GS)进行了回顾性评估。深度学习人工智能对组织、Aβ和小胶质细胞体的精确度非常高(>95%)。通过年龄调整模型,较高的Aβ覆盖率可预测痴呆的发生、ACS的诊断以及CDR-GS更严重的记忆损伤,而测量的小胶质细胞密度和Aβ相关小胶质细胞与这些患者的认知结果并不相关。因此,分流的 iNPH 患者皮质活检中 Aβ 覆盖率较高似乎会影响认知结果,但与周围小胶质细胞的密度无关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning assisted quantitative analysis of Aβ and microglia in patients with idiopathic normal pressure hydrocephalus in relation to cognitive outcome.

Neuropathologic changes of Alzheimer disease (AD) including Aβ accumulation and neuroinflammation are frequently observed in the cerebral cortex of patients with idiopathic normal pressure hydrocephalus (iNPH). We created an automated analysis platform to quantify Aβ load and reactive microglia in the vicinity of Aβ plaques and to evaluate their association with cognitive outcome in cortical biopsies of patients with iNPH obtained at the time of shunting. Aiforia Create deep learning software was used on whole slide images of Iba1/4G8 double immunostained frontal cortical biopsies of 120 shunted iNPH patients to identify Iba1-positive microglia somas and Aβ areas, respectively. Dementia, AD clinical syndrome (ACS), and Clinical Dementia Rating Global score (CDR-GS) were evaluated retrospectively after a median follow-up of 4.4 years. Deep learning artificial intelligence yielded excellent (>95%) precision for tissue, Aβ, and microglia somas. Using an age-adjusted model, higher Aβ coverage predicted the development of dementia, the diagnosis of ACS, and more severe memory impairment by CDR-GS whereas measured microglial densities and Aβ-related microglia did not correlate with cognitive outcome in these patients. Therefore, cognitive outcome seems to be hampered by higher Aβ coverage in cortical biopsies in shunted iNPH patients but is not correlated with densities of surrounding microglia.

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CiteScore
7.20
自引率
4.30%
发文量
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