School of Computer Science and Engineering, Southeast University, Nanjing, China.
CAS Key Laboratory of Molecular Imaging, Institute of Automation, Beijing, China.
Ann Surg Oncol. 2020 Oct;27(11):4296-4306. doi: 10.1245/s10434-020-08659-4. Epub 2020 Jul 29.
The aim of this work is to combine radiological and pathological information of tumor to develop a signature for pretreatment prediction of discrepancies of pathological response at several centers and restage patients with locally advanced rectal cancer (LARC) for individualized treatment planning.
A total of 981 consecutive patients with evaluation of response according to tumor regression grade (TRG) who received nCRT were retrospectively recruited from four hospitals (primary cohort and external validation cohort 1-3); both pretreatment multiparametric MRI (mp-MRI) and whole slide image (WSI) of biopsy specimens were available for each patient. Quantitative image features were extracted from mp-MRI and WSI and used to construct a radiopathomics signature (RPS) powered by an artificial-intelligence model. Models based on mp-MRI or WSI alone were also constructed for comparison.
The RPS showed overall accuracy of 79.66-87.66% in validation cohorts. The areas under the curve of RPS at specific response grades were 0.98 (TRG0), 0.93 (≤ TRG1), and 0.84 (≤ TRG2). RPS at each grade of pathological response revealed significant improvement compared with both signatures constructed without combining multiscale tumor information (P < 0.01). Moreover, RPS showed relevance to distinct probabilities of overall survival and disease-free survival in patients with LARC who underwent nCRT (P < 0.05).
The results of this study suggest that radiopathomics, combining both radiological information of the whole tumor and pathological information of local lesions from biopsy, could potentially predict discrepancies of pathological response prior to nCRT for better treatment planning.
本研究旨在结合肿瘤的影像学和病理学信息,建立一个预测局部晚期直肠癌(LARC)患者新辅助放化疗(nCRT)前后病理反应差异的标志物,并对患者进行个体化治疗方案的再分期。
回顾性收集了 981 例接受 nCRT 并根据肿瘤消退分级(TRG)评估疗效的患者(来自 4 家医院的原始队列和外部验证队列 1-3),每个患者均有 nCRT 前多参数 MRI(mp-MRI)和活检标本的全切片图像(WSI)。从 mp-MRI 和 WSI 中提取定量图像特征,并使用人工智能模型构建放射病理组学特征(RPS)。还构建了仅基于 mp-MRI 或 WSI 的模型进行比较。
在验证队列中,RPS 的整体准确率为 79.66-87.66%。在特定反应等级的 RPS 曲线下面积为 0.98(TRG0)、0.93(≤TRG1)和 0.84(≤TRG2)。与不结合多尺度肿瘤信息构建的两个标志物相比,RPS 在每个病理反应等级上均显示出显著的改善(P<0.01)。此外,RPS 显示与接受 nCRT 的 LARC 患者的总生存和无病生存的不同概率显著相关(P<0.05)。
本研究结果表明,放射病理组学结合了整个肿瘤的影像学信息和活检局部病变的病理学信息,可能有助于预测 nCRT 前的病理反应差异,以更好地进行治疗计划。