Department of Biomedical Informatics, Stony Brook University, Stony Brook, NY, United States of America.
Department of Medicine, Renaissance School of Medicine at Stony Brook University, Stony Brook, NY, United States of America.
PLoS One. 2022 Aug 29;17(8):e0268954. doi: 10.1371/journal.pone.0268954. eCollection 2022.
Inflammatory bowel disease (IBD) is a chronic immune-mediated disease of the gastrointestinal tract. While therapies exist, response can be limited within the patient population. Researchers have thus studied mouse models of colitis to further understand pathogenesis and identify new treatment targets. Flow cytometry and RNA-sequencing can phenotype immune populations with single-cell resolution but provide no spatial context. Spatial context may be particularly important in colitis mouse models, due to the simultaneous presence of colonic regions that are involved or uninvolved with disease. These regions can be identified on hematoxylin and eosin (H&E)-stained colonic tissue slides based on the presence of abnormal or normal histology. However, detection of such regions requires expert interpretation by pathologists. This can be a tedious process that may be difficult to perform consistently across experiments. To this end, we trained a deep learning model to detect 'Involved' and 'Uninvolved' regions from H&E-stained colonic tissue slides. Our model was trained on specimens from controls and three mouse models of colitis-the dextran sodium sulfate (DSS) chemical induction model, the recently established intestinal epithelium-specific, inducible Klf5ΔIND (Villin-CreERT2;Klf5fl/fl) genetic model, and one that combines both induction methods. Image patches predicted to be 'Involved' and 'Uninvolved' were extracted across mice to cluster and identify histological classes. We quantified the proportion of 'Uninvolved' patches and 'Involved' patch classes in murine swiss-rolled colons. Furthermore, we trained linear determinant analysis classifiers on these patch proportions to predict mouse model and clinical score bins in a prospectively treated cohort of mice. Such a pipeline has the potential to reveal histological links and improve synergy between various colitis mouse model studies to identify new therapeutic targets and pathophysiological mechanisms.
炎症性肠病(IBD)是一种慢性免疫介导的胃肠道疾病。虽然有治疗方法,但在患者群体中的反应可能有限。因此,研究人员研究了结肠炎的小鼠模型,以进一步了解发病机制并确定新的治疗靶点。流式细胞术和 RNA 测序可以对免疫群体进行单细胞分辨率的表型分析,但无法提供空间背景。在结肠炎小鼠模型中,空间背景可能尤为重要,因为同时存在涉及或不涉及疾病的结肠区域。这些区域可以在苏木精和伊红(H&E)染色的结肠组织切片上根据异常或正常组织学的存在来识别。然而,这种区域的检测需要病理学家的专业解释。这可能是一个繁琐的过程,在不同的实验中可能难以一致地进行。为此,我们训练了一个深度学习模型,以从 H&E 染色的结肠组织切片中检测“涉及”和“不涉及”区域。我们的模型是在对照和三种结肠炎小鼠模型(葡聚糖硫酸钠(DSS)化学诱导模型、最近建立的肠上皮特异性、诱导型 Klf5ΔIND(Villin-CreERT2;Klf5fl/fl)遗传模型以及同时使用这两种诱导方法的模型)的标本上进行训练的。预测为“涉及”和“不涉及”的图像块被提取出来进行聚类和识别组织学类别。我们量化了小鼠瑞士卷结肠中“不涉及”块和“涉及”块类别的比例。此外,我们还在这些补丁比例上训练了线性判别分析分类器,以预测前瞻性治疗的小鼠队列中的小鼠模型和临床评分箱。这种流水线有可能揭示组织学联系,并提高各种结肠炎小鼠模型研究之间的协同作用,以确定新的治疗靶点和病理生理机制。