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使用动态双增量混合机器学习模型改善原发性肺癌气腔播散(STAS)的预测:一项多中心队列研究

Improving the prediction of Spreading Through Air Spaces (STAS) in primary lung cancer with a dynamic dual-delta hybrid machine learning model: a multicenter cohort study.

作者信息

Jin Weiqiu, Shen Leilei, Tian Yu, Zhu Hongda, Zou Ningyuan, Zhang Mengwei, Chen Qian, Dong Changzi, Yang Qisheng, Jiang Long, Huang Jia, Yuan Zheng, Ye Xiaodan, Luo Qingquan

机构信息

Shanghai Lung Cancer Center, Shanghai Chest Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, 200030, China.

Department of Radiology, Zhongshan Hospital, Fudan University, Shanghai, 200032, China.

出版信息

Biomark Res. 2023 Nov 23;11(1):102. doi: 10.1186/s40364-023-00539-9.

Abstract

BACKGROUND

Reliable pre-surgical prediction of spreading through air spaces (STAS) in primary lung cancer is essential for precision treatment and surgical decision-making. We aimed to develop and validate a dual-delta deep-learning and radiomics model based on pretreatment computed tomography (CT) image series to predict the STAS in patients with lung cancer.

METHOD

Six hundred seventy-four patients with pre-surgery CT follow-up scans (with a minimum interval of two weeks) and primary lung cancer diagnosed by surgery were retrospectively recruited from three Chinese hospitals. The training cohort and internal validation cohort, comprising 509 and 76 patients respectively, were selected from Shanghai Chest Hospital; the external validation cohorts comprised 36 and 53 patients from two other centers, respectively. Four imaging signatures (classic radiomics features and deep learning [DL] features, delta-radiomics and delta-DL features) reflecting the STAS status were constructed from the pretreatment CT images by comprehensive methods including handcrafting, 3D views extraction, image registration and subtraction. A stepwise optimized three-step procedure, including feature extraction (by DL and time-base radiomics slope), feature selection (by reproducibility check and 45 selection algorithms), and classification (32 classifiers considered), was applied for signature building and methodology optimization. The interpretability of the proposed model was further assessed with Grad-CAM for DL-features and feature ranking for radiomics features.

RESULTS

The dual-delta model showed satisfactory discrimination between STAS and non-STAS and yielded the areas under the receiver operating curve (AUCs) of 0.94 (95% CI, 0.92-0.96), 0.84 (95% CI, 0.82-0.86), and 0.84 (95% CI, 0.83-0.85) in the internal and two external validation cohorts, respectively, with interpretable core feature sets and feature maps.

CONCLUSION

The coupling of delta-DL model with delta-radiomics features enriches information such as anisotropy of tumor growth and heterogeneous changes within the tumor during the radiological follow-up, which could provide valuable information for STAS prediction in primary lung cancer.

摘要

背景

对原发性肺癌气腔播散(STAS)进行可靠的术前预测对于精准治疗和手术决策至关重要。我们旨在开发并验证一种基于术前计算机断层扫描(CT)图像序列的双增量深度学习和放射组学模型,以预测肺癌患者的STAS。

方法

从三家中国医院回顾性招募了674例接受术前CT随访扫描(最短间隔两周)且经手术确诊为原发性肺癌的患者。训练队列和内部验证队列分别由509例和76例患者组成,均选自上海胸科医院;外部验证队列分别由来自另外两个中心的36例和53例患者组成。通过包括手工制作、三维视图提取、图像配准和相减在内的综合方法,从术前CT图像中构建反映STAS状态的四个影像特征(经典放射组学特征和深度学习[DL]特征、增量放射组学和增量DL特征)。采用逐步优化的三步程序,包括特征提取(通过DL和基于时间的放射组学斜率)、特征选择(通过重复性检查和45种选择算法)以及分类(考虑32种分类器)来构建特征并优化方法。使用Grad-CAM对DL特征进行进一步评估,并对放射组学特征进行特征排序,以评估所提出模型的可解释性。

结果

双增量模型在STAS和非STAS之间显示出令人满意的区分能力,在内部验证队列和两个外部验证队列中,受试者操作曲线下面积(AUC)分别为0.94(95%CI,0.92 - 0.96)、0.84(95%CI,0.82 - 0.86)和0.84(95%CI,0.83 - 0.85),具有可解释的核心特征集和特征图。

结论

增量DL模型与增量放射组学特征的结合丰富了诸如肿瘤生长各向异性和放射学随访期间肿瘤内异质性变化等信息,可为原发性肺癌的STAS预测提供有价值的信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6cb6/10668492/ce94514b400f/40364_2023_539_Fig1_HTML.jpg

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