Pathology, University of Washington School of Medicine, Seattle, WA, USA
Institute of Translational Medicine, University of Birmingham, Birmingham, UK.
Gut. 2022 May;71(5):889-898. doi: 10.1136/gutjnl-2021-326376. Epub 2022 Feb 16.
Histological remission is evolving as an important treatment target in UC. We aimed to develop a simple histological index, aligned to endoscopy, correlated with clinical outcomes, and suited to apply to an artificial intelligence (AI) system to evaluate inflammatory activity.
Using a set of 614 biopsies from 307 patients with UC enrolled into a prospective multicentre study, we developed the Paddington International virtual ChromoendoScopy ScOre (PICaSSO) Histologic Remission Index (PHRI). Agreement with multiple other histological indices and validation for inter-reader reproducibility were assessed. Finally, to implement PHRI into a computer-aided diagnosis system, we trained and tested a novel deep learning strategy based on a CNN architecture to detect neutrophils, calculate PHRI and identify active from quiescent UC using a subset of 138 biopsies.
PHRI is strongly correlated with endoscopic scores (Mayo Endoscopic Score and UC Endoscopic Index of Severity and PICaSSO) and with clinical outcomes (hospitalisation, colectomy and initiation or changes in medical therapy due to UC flare-up). A PHRI score of 1 could accurately stratify patients' risk of adverse outcomes (hospitalisation, colectomy and treatment optimisation due to flare-up) within 12 months. Our inter-reader agreement was high (intraclass correlation 0.84). Our preliminary AI algorithm differentiated active from quiescent UC with 78% sensitivity, 91.7% specificity and 86% accuracy.
PHRI is a simple histological index in UC, and it exhibits the highest correlation with endoscopic activity and clinical outcomes. A PHRI-based AI system was accurate in predicting histological remission.
组织学缓解正在成为 UC 的一个重要治疗目标。我们旨在开发一种简单的组织学指标,与内镜相吻合,与临床结果相关,并适用于人工智能(AI)系统来评估炎症活动。
使用来自 307 名 UC 患者的 614 个活检标本集,我们开发了 Paddington International virtual ChromoendoScopy ScOre (PICaSSO) 组织学缓解指数(PHRI)。评估了与其他多种组织学指标的一致性和读者间的可重复性验证。最后,为了将 PHRI 应用于计算机辅助诊断系统,我们基于 CNN 架构训练和测试了一种新的深度学习策略,以检测中性粒细胞,计算 PHRI,并使用 138 个活检标本子集识别活跃和静止的 UC。
PHRI 与内镜评分(Mayo 内镜评分和 UC 内镜严重程度指数和 PICaSSO)和临床结果(住院、结肠切除术以及因 UC 发作而开始或改变治疗)密切相关。PHRI 得分为 1 可准确分层患者在 12 个月内发生不良结局(住院、结肠切除术和因发作而优化治疗)的风险。我们的读者间一致性很高(组内相关系数为 0.84)。我们的初步 AI 算法以 78%的灵敏度、91.7%的特异性和 86%的准确率区分活跃和静止的 UC。
PHRI 是 UC 中的一种简单的组织学指标,与内镜活动和临床结果相关性最高。基于 PHRI 的 AI 系统在预测组织学缓解方面准确。