Yoo Jang, Lee Jaeho, Cheon Miju, Woo Sang-Keun, Ahn Myung-Ju, Pyo Hong Ryull, Choi Yong Soo, Han Joung Ho, Choi Joon Young
Department of Nuclear Medicine, Veterans Health Service Medical Center, Seoul 05368, Korea.
Department of Preventive Medicine, Seoul National University College of Medicine, Seoul 03080, Korea.
Cancers (Basel). 2022 Apr 14;14(8):1987. doi: 10.3390/cancers14081987.
We investigated predictions from 18F-FDG PET/CT using machine learning (ML) to assess the neoadjuvant CCRT response of patients with stage III non-small cell lung cancer (NSCLC) and compared them with predictions from conventional PET parameters and from physicians. A retrospective study was conducted of 430 patients. They underwent 18F-FDG PET/CT before initial treatment and after neoadjuvant CCRT followed by curative surgery. We analyzed texture features from segmented tumors and reviewed the pathologic response. The ML model employed a random forest and was used to classify the binary outcome of the pathological complete response (pCR). The predictive accuracy of the ML model for the pCR was 93.4%. The accuracy of predicting pCR using the conventional PET parameters was up to 70.9%, and the accuracy of the physicians’ assessment was 80.5%. The accuracy of the prediction from the ML model was significantly higher than those derived from conventional PET parameters and provided by physicians (p < 0.05). The ML model is useful for predicting pCR after neoadjuvant CCRT, which showed a higher predictive accuracy than those achieved from conventional PET parameters and from physicians.
我们使用机器学习(ML)研究了18F-FDG PET/CT的预测结果,以评估III期非小细胞肺癌(NSCLC)患者的新辅助同步放化疗(CCRT)反应,并将其与传统PET参数及医生的预测结果进行比较。对430例患者进行了一项回顾性研究。他们在初始治疗前、新辅助CCRT后及根治性手术后接受了18F-FDG PET/CT检查。我们分析了分割肿瘤的纹理特征并评估了病理反应。ML模型采用随机森林,用于对病理完全缓解(pCR)的二元结果进行分类。ML模型对pCR的预测准确率为93.4%。使用传统PET参数预测pCR的准确率高达70.9%,医生评估的准确率为80.5%。ML模型的预测准确率显著高于传统PET参数及医生的预测结果(p<0.05)。ML模型有助于预测新辅助CCRT后的pCR,其预测准确率高于传统PET参数及医生的预测结果。