Rymarczyk Dawid, Schultz Weiwei, Borowa Adriana, Friedman Joshua R, Danel Tomasz, Branigan Patrick, Chałupczak Michał, Bracha Anna, Krawiec Tomasz, Warchoł Michał, Li Katherine, De Hertogh Gert, Zieliński Bartosz, Ghanem Louis R, Stojmirovic Aleksandar
AI Lab, Ardigen SA, Kraków, Poland.
Faculty of Mathematics and Computer Science, Jagiellonian University, Kraków, Poland.
J Crohns Colitis. 2024 Apr 23;18(4):604-614. doi: 10.1093/ecco-jcc/jjad171.
Histological disease activity in inflammatory bowel disease [IBD] is associated with clinical outcomes and is an important endpoint in drug development. We developed deep learning models for automating histological assessments in IBD.
Histology images of intestinal mucosa from phase 2 and phase 3 clinical trials in Crohn's disease [CD] and ulcerative colitis [UC] were used to train artificial intelligence [AI] models to predict the Global Histology Activity Score [GHAS] for CD and Geboes histopathology score for UC. Three AI methods were compared. AI models were evaluated on held-back testing sets, and model predictions were compared against an expert central reader and five independent pathologists.
The model based on multiple instance learning and the attention mechanism [SA-AbMILP] demonstrated the best performance among competing models. AI-modelled GHAS and Geboes subgrades matched central readings with moderate to substantial agreement, with accuracies ranging from 65% to 89%. Furthermore, the model was able to distinguish the presence and absence of pathology across four selected histological features, with accuracies for colon in both CD and UC ranging from 87% to 94% and for CD ileum ranging from 76% to 83%. For both CD and UC and across anatomical compartments [ileum and colon] in CD, comparable accuracies against central readings were found between the model-assigned scores and scores by an independent set of pathologists.
Deep learning models based upon GHAS and Geboes scoring systems were effective at distinguishing between the presence and absence of IBD microscopic disease activity.
炎症性肠病(IBD)的组织学疾病活动与临床结局相关,并且是药物研发中的一个重要终点。我们开发了深度学习模型以实现IBD组织学评估的自动化。
使用来自克罗恩病(CD)和溃疡性结肠炎(UC)的2期和3期临床试验的肠黏膜组织学图像来训练人工智能(AI)模型,以预测CD的整体组织学活动评分(GHAS)和UC的 Geboes 组织病理学评分。比较了三种AI方法。在保留的测试集上对AI模型进行评估,并将模型预测结果与一位专家中央阅片者和五位独立病理学家的结果进行比较。
基于多实例学习和注意力机制的模型(SA-AbMILP)在竞争模型中表现最佳。AI 建模的 GHAS 和 Geboes 亚级与中央阅片结果具有中度到高度的一致性,准确率范围为65%至89%。此外,该模型能够通过四个选定的组织学特征区分病理状态的有无,CD和UC结肠的准确率范围为87%至94%,CD回肠的准确率范围为76%至83%。对于CD和UC以及CD中的各个解剖部位(回肠和结肠),模型给出的评分与一组独立病理学家给出的评分在与中央阅片结果的比较中具有相当的准确率。
基于GHAS和Geboes评分系统的深度学习模型在区分IBD微观疾病活动的有无方面是有效的。