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一种基于CT的深度神经网络可预测晚期肺腺癌中程序性死亡配体-1的表达状态。

A CT-derived deep neural network predicts for programmed death ligand-1 expression status in advanced lung adenocarcinomas.

作者信息

Zhu Ying, Liu Yang-Li, Feng Yu, Yang Xiao-Yu, Zhang Jing, Chang Dan-Dan, Wu Xi, Tian Xi, Tang Ke-Jing, Xie Can-Mao, Guo Yu-Biao, Feng Shi-Ting, Ke Zun-Fu

机构信息

Department of Radiology, The First Affiliated Hospital of Sun Yat-sen University, Guangzhou, China.

Institution of Precision Medicine, The First Affiliated Hospital of Sun Yat-sen University, Guangzhou, China.

出版信息

Ann Transl Med. 2020 Aug;8(15):930. doi: 10.21037/atm-19-4690.

Abstract

BACKGROUND

Programmed death ligand-1 (PD-L1) expression remains a crucial predictor in selecting patients for immunotherapy. The current study aimed to non-invasively predict PD-L1 expression based on chest computed tomography (CT) images in advanced lung adenocarcinomas (LUAD), thus help select optimal patients who can potentially benefit from immunotherapy.

METHODS

A total of 127 patients with stage III and IV LUAD were enrolled into this study. Pretreatment enhanced thin-section CT images were available for all patients and were analyzed in terms of both morphologic characteristics by radiologists and deep learning (DL), so to further determine the association between CT features and PD-L1 expression status. Univariate analysis and multivariate logical regression analysis were applied to evaluate significant variables. For DL, the 3D DenseNet model was built and validated. The study cohort were grouped by PD-L1 Tumor Proportion Scores (TPS) cutoff value of 1% (positive/negative expression) and 50% respectively.

RESULTS

Among 127 LUAD patients, 46 (36.2%) patients were PD-L1-positive and 38 (29.9%) patients expressed PD-L1-TPS ≥50%. For morphologic characteristics, univariate and multivariate analysis revealed that only lung metastasis was significantly associated with PD-L1 expression status despite of different PD-L1 TPS cutoff values, and its Area under the receiver operating characteristic curve (AUC) for predicting PD-L1 expression were less than 0.700. On the other hand, the predictive value of DL-3D DenseNet model was higher than that of the morphologic characteristics, with AUC more than 0.750.

CONCLUSIONS

The traditional morphologic CT characteristics analyzed by radiologists show limited prediction efficacy for PD-L1 expression. By contrast, CT-derived deep neural network improves the prediction efficacy, it may serve as an important alternative marker for clinical PD-L1 detection.

摘要

背景

程序性死亡配体1(PD-L1)表达仍然是选择免疫治疗患者的关键预测指标。本研究旨在基于胸部计算机断层扫描(CT)图像对晚期肺腺癌(LUAD)患者的PD-L1表达进行无创预测,从而帮助选择可能从免疫治疗中获益的最佳患者。

方法

本研究共纳入127例III期和IV期LUAD患者。所有患者均有治疗前增强薄层CT图像,由放射科医生和深度学习(DL)对其形态学特征进行分析,以进一步确定CT特征与PD-L1表达状态之间的关联。采用单因素分析和多因素逻辑回归分析评估显著变量。对于DL,构建并验证了3D DenseNet模型。研究队列分别按PD-L1肿瘤比例评分(TPS)临界值1%(阳性/阴性表达)和50%进行分组。

结果

在127例LUAD患者中,46例(36.2%)患者PD-L1呈阳性,38例(29.9%)患者PD-L1-TPS≥50%。对于形态学特征,单因素和多因素分析显示,尽管PD-L1 TPS临界值不同,但只有肺转移与PD-L1表达状态显著相关,其预测PD-L1表达的受试者操作特征曲线下面积(AUC)小于0.700。另一方面,DL-3D DenseNet模型的预测价值高于形态学特征,AUC大于0.750。

结论

放射科医生分析的传统形态学CT特征对PD-L1表达的预测效果有限。相比之下,基于CT的深度神经网络提高了预测效果,它可能成为临床检测PD-L1的重要替代标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fd4a/7475404/333a934d5260/atm-08-15-930-f1.jpg

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