PathAI, Boston, MA.
Gilead Sciences, Inc., Foster City, CA.
Hepatology. 2021 Jul;74(1):133-147. doi: 10.1002/hep.31750. Epub 2021 Jun 24.
Manual histological assessment is currently the accepted standard for diagnosing and monitoring disease progression in NASH, but is limited by variability in interpretation and insensitivity to change. Thus, there is a critical need for improved tools to assess liver pathology in order to risk stratify NASH patients and monitor treatment response.
Here, we describe a machine learning (ML)-based approach to liver histology assessment, which accurately characterizes disease severity and heterogeneity, and sensitively quantifies treatment response in NASH. We use samples from three randomized controlled trials to build and then validate deep convolutional neural networks to measure key histological features in NASH, including steatosis, inflammation, hepatocellular ballooning, and fibrosis. The ML-based predictions showed strong correlations with expert pathologists and were prognostic of progression to cirrhosis and liver-related clinical events. We developed a heterogeneity-sensitive metric of fibrosis response, the Deep Learning Treatment Assessment Liver Fibrosis score, which measured antifibrotic treatment effects that went undetected by manual pathological staging and was concordant with histological disease progression.
Our ML method has shown reproducibility and sensitivity and was prognostic for disease progression, demonstrating the power of ML to advance our understanding of disease heterogeneity in NASH, risk stratify affected patients, and facilitate the development of therapies.
目前,手动组织学评估是诊断和监测 NASH 疾病进展的公认标准,但受到解释的可变性和对变化的不敏感性的限制。因此,迫切需要改进的工具来评估肝病理,以便对 NASH 患者进行风险分层和监测治疗反应。
在这里,我们描述了一种基于机器学习 (ML) 的肝组织学评估方法,该方法可以准确地描述疾病的严重程度和异质性,并敏感地定量评估 NASH 的治疗反应。我们使用来自三个随机对照试验的样本来构建和验证深度卷积神经网络,以测量 NASH 中的关键组织学特征,包括脂肪变性、炎症、肝细胞气球样变和纤维化。基于 ML 的预测与专家病理学家具有很强的相关性,并可预测进展为肝硬化和与肝脏相关的临床事件。我们开发了一种纤维化反应的异质性敏感指标,即深度学习治疗评估肝纤维化评分,该评分可测量抗纤维化治疗效果,这些效果在手动病理分期中未被检测到,与组织学疾病进展一致。
我们的 ML 方法具有可重复性和敏感性,并可预测疾病进展,这表明 ML 具有强大的功能,可以帮助我们更好地理解 NASH 中的疾病异质性,对受影响的患者进行风险分层,并促进治疗方法的发展。