纤维化
病因学
数字图像分析
胃肠病学
医学
内科学
活检
病理
肝纤维化
肝活检
阶段(地层学)
疾病严重程度
生物
古生物学
计算机科学
计算机视觉
作者
Adam Watson,Louis Petitjean,Mathieu Petitjean,Michael Pavlides
摘要
Abstract Background & Aims Digital pathology image analysis can phenotype liver fibrosis using histological traits that reflect collagen content, morphometry and architecture. Here, we aimed to calculate fibrosis severity scores to quantify these traits. Methods Liver biopsy slides were categorised by Ishak stage and aetiology. We used a digital pathology technique to calculate four fibrosis severity scores: Architecture Composite Score (ACS), Collagen Composite Score (CCS), Morphometric Composite Score (MCS) and Phenotypic Fibrosis Composite Score (PH‐FCS). We compared how these scores varied according to disease stage and aetiology. Results We included 80 patients (40% female, mean age 59.0 years, mean collagen proportionate area 17.1%) with mild (F0‐2, n = 28), moderate (F3‐4, n = 17) or severe (F5‐6, n = 35) fibrosis. All four aetiology independent scores corelated with collagen proportionate area (ACS: r p = .512, CCS: r p = .727, MCS: r p = .777, PFCS: r = .772, p < .01 for all) with significant differences between moderate and severe fibrosis ( p < .05). ACS increased primarily between moderate and severe fibrosis (by 95% to 226% depending on underlying aetiology), whereas MCS and CCS accumulation was more varied. We used 28 qFTs that distinguished between autoimmune‐ and alcohol‐related liver disease to generate an MCS that significantly differed between mild and severe fibrosis for these aetiologies ( p < .05). Conclusions We describe four aetiology‐dependent and ‐independent severity scores that quantify fibrosis architecture, collagen content and fibre morphometry. This approach provides additional insight into how progression of architectural changes and accumulation of collagen may differ depending on underlying disease aetiology.
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