Pathology Department, 25913Charles River, Senneville, Quebec, Canada.
Aiforia Inc, Cambridge Innovation Center, Cambridge, MA, USA.
Toxicol Pathol. 2021 Jun;49(4):897-904. doi: 10.1177/0192623320987804. Epub 2021 Feb 12.
Inflammatory bowel disease (IBD) is a complex disease which leads to life-threatening complications and decreased quality of life. The dextran sulfate sodium (DSS) colitis model in mice is known for rapid screening of candidate compounds. Efficacy assessment in this model relies partly on microscopic semiquantitative scoring, which is time-consuming and subjective. We hypothesized that deep learning artificial intelligence (AI) could be used to identify acute inflammation in H&E-stained sections in a consistent and quantitative manner. Training sets were established using ×20 whole slide images of the entire colon. Supervised training of a Convolutional Neural Network (CNN) was performed using a commercial AI platform to detect the entire colon tissue, the muscle and mucosa layers, and 2 categories within the mucosa (normal and acute inflammation E1). The training sets included slides of naive, vehicle-DSS and cyclosporine A-DSS mice. The trained CNN was able to segment, with a high level of concordance, the different tissue compartments in the 3 groups of mice. The segmented areas were used to determine the ratio of E1-affected mucosa to total mucosa. This proof-of-concept work shows promise to increase efficiency and decrease variability of microscopic scoring of DSS colitis when screening candidate compounds for IBD.
炎症性肠病(IBD)是一种复杂的疾病,可导致危及生命的并发症和生活质量下降。葡聚糖硫酸钠(DSS)结肠炎模型在小鼠中被广泛用于候选化合物的快速筛选。该模型的疗效评估部分依赖于显微镜半定量评分,这种方法既耗时又主观。我们假设深度学习人工智能(AI)可用于以一致且定量的方式识别 H&E 染色切片中的急性炎症。使用整个结肠的 ×20 全幻灯片图像建立训练集。使用商业 AI 平台对卷积神经网络(CNN)进行有监督训练,以检测整个结肠组织、肌肉和黏膜层,以及黏膜内的 2 个类别(正常和急性炎症 E1)。训练集包括未处理、载体-DSS 和环孢菌素 A-DSS 小鼠的幻灯片。经过训练的 CNN 能够以高度一致性对 3 组小鼠的不同组织隔室进行分割。分割区域用于确定受 E1 影响的黏膜与总黏膜的比例。这项概念验证工作有望提高 IBD 候选化合物筛选中 DSS 结肠炎显微镜评分的效率并降低其变异性。