Department of Pharmacology, Medical School of Athens, National and Kapodistrian University of Athens, Athens, Greece.
Department of Electrical and Computer Engineering, University of Patras, Patras, Greece.
J Cereb Blood Flow Metab. 2022 Aug;42(8):1463-1477. doi: 10.1177/0271678X221083387. Epub 2022 Feb 25.
An unbiased, automated and reliable method for analysis of brain lesions in tissue after ischemic stroke is missing. Manual infarct volumetry or by threshold-based semi-automated approaches is laborious, and biased to human error or biased by many false -positive and -negative data, respectively. Thereby, we developed a novel machine learning, atlas-based method for fully automated stroke analysis in mouse brain slices stained with 2% Triphenyltetrazolium-chloride (2% TTC), named "StrokeAnalyst", which runs on a user-friendly graphical interface. StrokeAnalyst registers subject images on a common spatial domain (a novel mouse TTC- brain atlas of 80 average mathematical images), calculates pixel-based, tissue-intensity statistics (z-scores), applies outlier-detection and machine learning (Random-Forest) models to increase accuracy of lesion detection, and produces volumetry data and detailed neuroanatomical information per lesion. We validated StrokeAnalyst in two separate experimental sets using the filament stroke model. StrokeAnalyst detects stroke lesions in a rater-independent and reproducible way, correctly detects hemispheric volumes even in presence of post-stroke edema and significantly minimizes false-positive errors compared to threshold-based approaches (false-positive rate 1.2-2.3%, p < 0.05). It can process scanner-acquired, and even smartphone-captured or pdf-retrieved images. Overall, StrokeAnalyst surpasses all previous TTC-volumetry approaches and increases quality, reproducibility and reliability of stroke detection in relevant preclinical models.
目前缺乏一种用于分析缺血性脑卒中后组织中脑损伤的无偏、自动和可靠的方法。手动梗死体积测量或基于阈值的半自动方法既繁琐,又容易受到人为错误的影响,或者分别受到许多假阳性和假阴性数据的影响。因此,我们开发了一种新的基于机器学习和图谱的方法,用于对用 2%三苯基四唑氯(2%TTC)染色的小鼠脑切片进行全自动脑卒中分析,命名为“StrokeAnalyst”,它运行在一个用户友好的图形界面上。StrokeAnalyst 在一个共同的空间域(一个新的 80 个平均数学图像的小鼠 TTC-脑图谱)上对目标图像进行配准,计算基于像素的组织强度统计量(Z 分数),应用异常值检测和机器学习(随机森林)模型来提高病变检测的准确性,并为每个病变生成体积数据和详细的神经解剖学信息。我们在使用线栓模型的两个独立实验中验证了 StrokeAnalyst。StrokeAnalyst 以一种独立于评分者且可重复的方式检测脑卒中损伤,即使在脑卒中后水肿的情况下也能正确检测半球体积,并且与基于阈值的方法相比,大大减少了假阳性错误(假阳性率为 1.2-2.3%,p<0.05)。它可以处理扫描仪获取的图像,甚至是智能手机拍摄或 PDF 检索的图像。总的来说,StrokeAnalyst 超越了以前所有的 TTC 体积测量方法,提高了相关临床前模型中脑卒中检测的质量、可重复性和可靠性。