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Semi-Automated Digital Image Analysis of Pick’s Disease and TDP-43 Proteinopathy

机译:匹克氏病和TDP-43蛋白病的半自动数字图像分析

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Digital image analysis of histology sections provides reliable, high-throughput methods for neuropathological studies but data is scant in frontotemporal lobar degeneration (FTLD), which has an added challenge of study due to morphologically diverse pathologies. Here, we describe a novel method of semi-automated digital image analysis in FTLD subtypes including: Pick’s disease (PiD, n=11) with tau-positive intracellular inclusions and neuropil threads, and TDP-43 pathology type C (FTLD-TDPC, n=10), defined by TDP-43-positive aggregates predominantly in large dystrophic neurites. To do this, we examined three FTLD-associated cortical regions: mid-frontal gyrus (MFG), superior temporal gyrus (STG) and anterior cingulate gyrus (ACG) by immunohistochemistry. We used a color deconvolution process to isolate signal from the chromogen and applied both object detection and intensity thresholding algorithms to quantify pathological burden. We found object-detection algorithms had good agreement with gold-standard manual quantification of tau- and TDP-43-positive inclusions. Our sampling method was reliable across three separate investigators and we obtained similar results in a pilot analysis using open-source software. Regional comparisons using these algorithms finds differences in regional anatomic disease burden between PiD and FTLD-TDP not detected using traditional ordinal scale data, suggesting digital image analysis is a powerful tool for clinicopathological studies in morphologically diverse FTLD syndromes.
机译:组织学切片的数字图像分析为神经病理学研究提供了可靠的高通量方法,但额颞叶变性(FTLD)的数据很少,由于形态学多样的病理学,研究难度更大。在这里,我们描述了FTLD亚型中半自动数字图像分析的一种新方法,其中包括:带有tau阳性细胞内包裹物和神经纤维的匹克氏病(PiD, n = 11),以及TDP-43病理学C型(FTLD-TDPC, n = 10),由TDP-43阳性聚集体定义,主要存在于营养不良的神经突中。为此,我们通过免疫组织化学检查了三个与FTLD相关的皮质区域:中额回(MFG),颞上回(STG)和扣带回(ACG)。我们使用了颜色反卷积过程从色原中分离出信号,并应用了对象检测和强度阈值算法来量化病理负担。我们发现对象检测算法与tau-和TDP-43阳性夹杂物的金标准手动定量方法具有很好的一致性。我们的抽样方法在三个独立的研究人员中都是可靠的,并且在使用开源软件进行的试点分析中,我们获得了相似的结果。使用这些算法进行的区域比较发现,PiD和FTLD-TDP在区域解剖学疾病负担上的差异无法使用传统的有序数据进行检测,这表明数字图像分析是形态多样的FTLD综合征临床病理研究的有力工具。

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