Nativ Nir I, Chen Alvin I, Yarmush Gabriel, Henry Scot D, Lefkowitch Jay H, Klein Kenneth M, Maguire Timothy J, Schloss Rene, Guarrera James V, Berthiaume Francois, Yarmush Martin L
Department of Biomedical Engineering, Rutgers University, Piscataway, NJ.
Liver Transpl. 2014 Feb;20(2):228-36. doi: 10.1002/lt.23782. Epub 2013 Dec 12.
Large-droplet macrovesicular steatosis (ld-MaS) in more than 30% of liver graft hepatocytes is a major risk factor for liver transplantation. An accurate assessment of the ld-MaS percentage is crucial for determining liver graft transplantability, which is currently based on pathologists' evaluations of hematoxylin and eosin (H&E)-stained liver histology specimens, with the predominant criteria being the relative size of the lipid droplets (LDs) and their propensity to displace a hepatocyte's nucleus to the cell periphery. Automated image analysis systems aimed at objectively and reproducibly quantifying ld-MaS do not accurately differentiate large LDs from small-droplet macrovesicular steatosis and do not take into account LD-mediated nuclear displacement; this leads to a poor correlation with pathologists' assessments. Here we present an improved image analysis method that incorporates nuclear displacement as a key image feature for segmenting and classifying ld-MaS from H&E-stained liver histology slides. 52,000 LDs in 54 digital images from 9 patients were analyzed, and the performance of the proposed method was compared against the performance of current image analysis methods and the ld-MaS percentage evaluations of 2 trained pathologists from different centers. We show that combining nuclear displacement and LD size information significantly improves the separation between large and small macrovesicular LDs (specificity = 93.7%, sensitivity = 99.3%) and the correlation with pathologists' ld-MaS percentage assessments (linear regression coefficient of determination = 0.97). This performance vastly exceeds that of other automated image analyzers, which typically underestimate or overestimate pathologists' ld-MaS scores. This work demonstrates the potential of automated ld-MaS analysis in monitoring the steatotic state of livers. The image analysis principles demonstrated here may help to standardize ld-MaS scores among centers and ultimately help in the process of determining liver graft transplantability.
超过30%的肝移植肝细胞出现大滴性大泡性脂肪变性(ld-MaS)是肝移植的主要危险因素。准确评估ld-MaS百分比对于确定肝移植的可移植性至关重要,目前这是基于病理学家对苏木精和伊红(H&E)染色的肝脏组织学标本的评估,主要标准是脂滴(LDs)的相对大小及其将肝细胞核挤向细胞周边的倾向。旨在客观且可重复地量化ld-MaS的自动图像分析系统无法准确区分大LDs和小滴性大泡性脂肪变性,也未考虑LD介导的核移位;这导致与病理学家的评估相关性较差。在此,我们提出一种改进的图像分析方法,该方法将核移位作为关键图像特征,用于从H&E染色的肝脏组织学切片中分割和分类ld-MaS。分析了来自9名患者的54幅数字图像中的52000个LDs,并将所提出方法的性能与当前图像分析方法的性能以及来自不同中心的2名训练有素的病理学家对ld-MaS百分比的评估进行了比较。我们表明,结合核移位和LD大小信息可显著改善大泡性大LDs和小LDs之间的区分(特异性 = 93.7%,敏感性 = 99.3%)以及与病理学家对ld-MaS百分比评估的相关性(线性回归决定系数 = 0.97)。这种性能大大超过了其他自动图像分析仪,后者通常低估或高估病理学家的ld-MaS评分。这项工作证明了自动ld-MaS分析在监测肝脏脂肪变性状态方面的潜力。这里展示的图像分析原理可能有助于使各中心之间的ld-MaS评分标准化,并最终有助于确定肝移植可移植性的过程。