Yang Cheng-Chun, Chen Chin-Yu, Kuo Yu-Ting, Ko Ching-Chung, Wu Wen-Jui, Liang Chia-Hao, Yun Chun-Ho, Huang Wei-Ming
Department of Medical Imaging, Chi Mei Hospital, Tainan 710, Taiwan.
Department of Radiology, Faculty of Medicine, College of Medicine, Kaohsiung Medical University, Kaohsiung 807, Taiwan.
Diagnostics (Basel). 2022 Apr 15;12(4):1002. doi: 10.3390/diagnostics12041002.
Antifibrotic therapy has changed the treatment paradigm for idiopathic pulmonary fibrosis (IPF); however, a subset of patients still experienced rapid disease progression despite treatment. This study aimed to determine whether CT-based radiomic features can predict therapeutic response to antifibrotic agents. In this retrospective study, 35 patients with IPF on antifibrotic treatment enrolled from two centers were divided into training ( = 26) and external validation ( = 9) sets. Clinical and pulmonary function data were collected. The patients were categorized into stable disease (SD) and progressive disease (PD) groups based on functional or radiologic criteria. From pretreatment non-enhanced high-resolution CT (HRCT) images, twenty-six radiomic features were extracted through whole-lung texture analysis, and six parenchymal patterns were quantified using dedicated imaging platforms. The predictive factors for PD were determined via univariate and multivariate logistic regression analyses. In the training set (SD/PD: 12/14), univariate analysis identified eight radiomic features and ground-glass opacity percentage (GGO%) as potential predicators of PD. However, multivariate analysis found that the single independent predictor was the sum entropy (accuracy, 80.77%; AUC, 0.75). The combined sum entropy-GGO% model improved the predictive performance in the training set (accuracy, 88.46%; AUC, 0.77). The overall accuracy of the combined model in the validation set (SD/PD: 7/2) was 66.67%. Our preliminary results demonstrated that radiomic features based on pretreatment HRCT could predict the response of patients with IPF to antifibrotic treatment.
抗纤维化治疗改变了特发性肺纤维化(IPF)的治疗模式;然而,尽管接受了治疗,仍有一部分患者疾病进展迅速。本研究旨在确定基于CT的放射组学特征是否能预测对抗纤维化药物的治疗反应。在这项回顾性研究中,从两个中心招募的35例接受抗纤维化治疗的IPF患者被分为训练组(n = 26)和外部验证组(n = 9)。收集了临床和肺功能数据。根据功能或影像学标准将患者分为疾病稳定(SD)组和疾病进展(PD)组。通过全肺纹理分析从治疗前的非增强高分辨率CT(HRCT)图像中提取了26个放射组学特征,并使用专用成像平台对六种实质模式进行了量化。通过单因素和多因素逻辑回归分析确定PD的预测因素。在训练组(SD/PD:12/14)中,单因素分析确定了八个放射组学特征和磨玻璃密度百分比(GGO%)作为PD的潜在预测指标。然而,多因素分析发现唯一的独立预测指标是总和熵(准确率80.77%;AUC,0.75)。总和熵-GGO%联合模型提高了训练组的预测性能(准确率88.46%;AUC,0.77)。联合模型在验证组(SD/PD:7/2)中的总体准确率为66.67%。我们的初步结果表明,基于治疗前HRCT的放射组学特征可以预测IPF患者对抗纤维化治疗的反应。