Nalluri Hasita V, Graff Shantelle A, Maric Dragan, Heiss John D
Surgical Neurology Branch, Flow and Imaging Cytometry Core Facility, Bethesda, MD, USA.
Surgical Neurology Branch, Disorders and Stroke, National Institute of Neurological, National Institutes of Health, Bethesda, MD, USA.
Neuroinformatics. 2025 Mar 21;23(2):25. doi: 10.1007/s12021-025-09723-8.
Inflammation within the spinal subarachnoid space leads to arachnoid hypercellularity. Multiplex immunohistochemistry (MP-IHC) enables the quantification of immune cells to assess arachnoid inflammation, but manual counting is time-consuming, impractical for large datasets, and prone to operator bias. Although automated colocalization methods exist, many clinicians prefer manual counting due to challenges with diverse cell morphologies and imperfect colocalization. Object-based colocalization analysis (OBCA) tools address these issues, improving accuracy and efficiency. We evaluated semi-automated and automated OBCA techniques for quantifying colocalized immune cells in human arachnoid tissue sections. Both methods demonstrated sufficient reliability across morphologies (P < 0.0001). While automated counts differed significantly from manual counts, their strong correlation (R = 0.7764-0.9954) supports their reliability for applications where exact counts are less critical. Additionally, both techniques significantly reduced analysis time compared to manual counting. Our findings support the use of automated and semi-automated colocalization analysis methods in histological samples, particularly as sample size increases.
脊髓蛛网膜下腔的炎症会导致蛛网膜细胞增多。多重免疫组织化学(MP-IHC)能够对免疫细胞进行定量分析,以评估蛛网膜炎症,但手动计数耗时,对于大型数据集不切实际,且容易出现操作者偏差。尽管存在自动共定位方法,但由于细胞形态多样以及共定位不完善等问题,许多临床医生仍倾向于手动计数。基于对象的共定位分析(OBCA)工具解决了这些问题,提高了准确性和效率。我们评估了半自动和自动OBCA技术在定量人类蛛网膜组织切片中共定位免疫细胞方面的应用。两种方法在不同形态下均显示出足够的可靠性(P < 0.0001)。虽然自动计数与手动计数存在显著差异,但其强相关性(R = 0.7764 - 0.9954)支持在精确计数不太关键的应用中其可靠性。此外,与手动计数相比,两种技术均显著减少了分析时间。我们的研究结果支持在组织学样本中使用自动和半自动共定位分析方法,尤其是随着样本量增加时。