Kong Weibo, Xu Junrui, Huang Yunlong, Zhu Kun, Yao Long, Wu Kaiming, Wang Hanlin, Ma Yuhang, Zhang Qi, Zhang Renquan
Department of Thoracic Surgery, First Affiliated Hospital of Anhui Medical University, Hefei, China.
Department of Gastrointestinal Surgery, The First Affiliated Hospital of Anhui Medical University, Hefei, China.
Front Oncol. 2024 Dec 3;14:1418252. doi: 10.3389/fonc.2024.1418252. eCollection 2024.
We used habitat radiomics as an innovative tumor biomarker to predict the outcome of neoadjuvant therapy for esophageal cancer.
This was a two-center retrospective clinical study in which pretreatment CT scans of 112 patients with esophageal cancer treated with neoadjuvant chemoimmunotherapy and surgery between November 2020 and July 2023 were retrospectively collected from two institutions. For training (n = 85) and external testing (n = 27), patients from both institutions were allocated. We employed unsupervised methods to delineate distinct heterogeneous regions within the tumor area.
To represent the prediction effect of different models, we plotted the AUC curves. The AUCs of the habitat models were 0.909 (0.8418-0.9758, 95% CI) and 0.829 (0.6423-1.0000, 95% CI) in the training and external test cohorts, respectively. The AUCs of the nomogram models were 0.914 (0.8483-0.9801, 95% CI) and 0.849 (0.6752-1.0000, 95% CI) in the training and external test cohorts, respectively.
The results revealed that the model based on habitat data outperforms traditional radiomic analysis models. In addition, when the model is combined with clinical features, it improves the predictive accuracy of pathological complete response in patients undergoing neoadjuvant chemoimmunotherapy.
我们将肿瘤微环境放射组学作为一种创新的肿瘤生物标志物,以预测食管癌新辅助治疗的结果。
这是一项两中心回顾性临床研究,于2020年11月至2023年7月期间,从两个机构回顾性收集了112例接受新辅助化疗免疫治疗和手术的食管癌患者的治疗前CT扫描图像。两个机构的患者被分配用于训练(n = 85)和外部测试(n = 27)。我们采用无监督方法在肿瘤区域内划定不同的异质性区域。
为了展示不同模型的预测效果,我们绘制了AUC曲线。在训练队列和外部测试队列中,肿瘤微环境模型的AUC分别为0.909(0.8418 - 0.9758,95%CI)和0.829(0.6423 - 1.0000,95%CI)。列线图模型在训练队列和外部测试队列中的AUC分别为0.914(0.8483 - 0.9801,95%CI)和0.849(0.6752 - 1.0000,95%CI)。
结果显示,基于肿瘤微环境数据的模型优于传统的放射组学分析模型。此外,当该模型与临床特征相结合时,可提高接受新辅助化疗免疫治疗患者病理完全缓解的预测准确性。