Department of Emergency, Wenzhou Hospital of Integrated Traditional Chinese and Western Medicine, Wenzhou, 325000, China.
Department of Gastroenterology and Hepatology, The First Affiliated Hospital of Wenzhou Medical University, Wenzhou, 325000, China.
Cancer Immunol Immunother. 2024 Jun 4;73(8):153. doi: 10.1007/s00262-024-03724-3.
The non-invasive biomarkers for predicting immunotherapy response are urgently needed to prevent both premature cessation of treatment and ineffective extension. This study aimed to construct a non-invasive model for predicting immunotherapy response, based on the integration of deep learning and habitat radiomics in patients with advanced non-small cell lung cancer (NSCLC).
Independent patient cohorts from three medical centers were enrolled for training (n = 164) and test (n = 82). Habitat imaging radiomics features were derived from sub-regions clustered from individual's tumor by K-means method. The deep learning features were extracted based on 3D ResNet algorithm. Pearson correlation coefficient, T test and least absolute shrinkage and selection operator regression were used to select features. Support vector machine was applied to implement deep learning and habitat radiomics, respectively. Then, a combination model was developed integrating both sources of data.
The combination model obtained a strong well-performance, achieving area under receiver operating characteristics curve of 0.865 (95% CI 0.772-0.931). The model significantly discerned high and low-risk patients, and exhibited a significant benefit in the clinical use.
The integration of deep-leaning and habitat radiomics contributed to predicting response to immunotherapy in patients with NSCLC. The developed integration model may be used as potential tool for individual immunotherapy management.
迫切需要非侵入性生物标志物来预测免疫治疗反应,以防止过早停止治疗和无效的延长。本研究旨在构建一种基于深度学习和栖息地放射组学的预测晚期非小细胞肺癌(NSCLC)患者免疫治疗反应的非侵入性模型。
从三个医疗中心独立招募患者队列进行训练(n=164)和测试(n=82)。通过 K-means 方法从个体肿瘤中聚类的子区域中提取栖息地成像放射组学特征。基于 3D ResNet 算法提取深度学习特征。采用 Pearson 相关系数、T 检验和最小绝对收缩和选择算子回归选择特征。支持向量机用于实现深度学习和栖息地放射组学。然后,开发了一种整合两种数据来源的组合模型。
组合模型获得了很强的性能,获得了 0.865 的接收器操作特征曲线下面积(95%CI 0.772-0.931)。该模型能够显著区分高风险和低风险患者,并且在临床应用中具有显著的益处。
深度学习和栖息地放射组学的融合有助于预测 NSCLC 患者对免疫治疗的反应。开发的集成模型可能被用作个体免疫治疗管理的潜在工具。