Bassi Massimiliano, Russomando Andrea, Vannucci Jacopo, Ciardiello Andrea, Dolciami Miriam, Ricci Paolo, Pernazza Angelina, D'Amati Giulia, Mancini Terracciano Carlo, Faccini Riccardo, Mantovani Sara, Venuta Federico, Voena Cecilia, Anile Marco
Thoracic Surgery Unit, Policlinico Umberto I, Sapienza University of Rome, Rome, Italy.
Pontificia Universidad Catolica de Chile, Santiago, Chile.
Transl Lung Cancer Res. 2022 Apr;11(4):560-571. doi: 10.21037/tlcr-21-895.
Spread through air spaces (STAS) has been reported as a negative prognostic factor in patients with lung cancer undergoing sublobar resection. Radiomics has been recently proposed to predict STAS using preoperative computed tomography (CT). However, limitations of previous studies included the strict selection of imaging acquisition protocols, leading to results hardly applicable to daily clinical practice. The aim of this study is to test a radiomics-based prediction model of STAS in a practice-based dataset.
A training cohort of 99 consecutive patients (65 STAS+ and 34 STAS-) with resected lung adenocarcinoma (ADC) was retrospectively collected. Preoperative CT images were collected from different centers regardless model and scanner manufacture, acquisition and reconstruction protocol, contrast phase and pixel size. Radiomics features were selected according to separation power and P value stability within different preprocessing setups and bootstrapping resampling. A prospective cohort of 50 patients (33 STAS+ and 17 STAS-) was enrolled for the external validation.
Only the five features with the highest stability were considered for the prediction model building. Radiomics, radiological and mixed radiomics-radiological prediction models were created, showing an accuracy of 0.66±0.02 after internal validation and reaching an accuracy of 0.78 in the external validation.
Radiomics-based prediction models of STAS may be useful to properly plan surgical treatment and avoid oncological ineffective sublobar resections. This study supports a possible application of radiomics-based models on data with high variance in acquisition, reconstruction and preprocessing, opening a new chance for the use of radiomics in the prediction of STAS.
ClinicalTrials.gov identifier: NCT04893200.
据报道,气腔播散(STAS)是接受亚肺叶切除的肺癌患者的不良预后因素。最近有人提出利用术前计算机断层扫描(CT)通过放射组学预测STAS。然而,以往研究的局限性包括对成像采集方案的严格选择,导致结果难以应用于日常临床实践。本研究的目的是在一个基于实践的数据集上测试基于放射组学的STAS预测模型。
回顾性收集了99例连续接受肺腺癌(ADC)切除术的患者(65例STAS阳性和34例STAS阴性)的训练队列。术前CT图像来自不同中心,不考虑模型和扫描仪制造商、采集和重建协议、对比期和像素大小。根据不同预处理设置和自举重采样中的分离能力和P值稳定性选择放射组学特征。纳入50例患者(33例STAS阳性和17例STAS阴性)的前瞻性队列进行外部验证。
预测模型构建仅考虑稳定性最高的五个特征。创建了放射组学、放射学和放射组学-放射学混合预测模型,内部验证后准确率为0.66±0.02,外部验证中准确率达到0.78。
基于放射组学的STAS预测模型可能有助于合理规划手术治疗,避免肿瘤学上无效的亚肺叶切除。本研究支持基于放射组学的模型在采集、重建和预处理具有高方差的数据上的可能应用,为放射组学在STAS预测中的应用开辟了新机会。
ClinicalTrials.gov标识符:NCT04893200。