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开发基于肺图的机器学习模型以识别纤维性间质性肺疾病。

Developing the Lung Graph-Based Machine Learning Model for Identification of Fibrotic Interstitial Lung Diseases.

机构信息

National Center for Respiratory Medicine, State Key Laboratory of Respiratory Health and Multimorbidity; National Clinical Research Center for Respiratory Diseases;Institute of Respiratory Medicine, Chinese Academy of Medical Sciences; Department of Pulmonary and Critical Care Medicine, China-Japan Friendship Hospital, Beijing, 100029, China.

Department of Medical Oncology, State Key Laboratory of Oncology in South China, Guangdong Key Laboratory of Nasopharyngeal Carcinoma Diagnosis and Therapy, Collaborative Innovation Center for Cancer Medicine, Sun Yat-Sen University Cancer Center, Guangzhou, Guangdong Province, 510060, China.

出版信息

J Imaging Inform Med. 2024 Feb;37(1):268-279. doi: 10.1007/s10278-023-00909-7. Epub 2024 Jan 16.

Abstract

Accurate detection of fibrotic interstitial lung disease (f-ILD) is conducive to early intervention. Our aim was to develop a lung graph-based machine learning model to identify f-ILD. A total of 417 HRCTs from 279 patients with confirmed ILD (156 f-ILD and 123 non-f-ILD) were included in this study. A lung graph-based machine learning model based on HRCT was developed for aiding clinician to diagnose f-ILD. In this approach, local radiomics features were extracted from an automatically generated geometric atlas of the lung and used to build a series of specific lung graph models. Encoding these lung graphs, a lung descriptor was gained and became as a characterization of global radiomics feature distribution to diagnose f-ILD. The Weighted Ensemble model showed the best predictive performance in cross-validation. The classification accuracy of the model was significantly higher than that of the three radiologists at both the CT sequence level and the patient level. At the patient level, the diagnostic accuracy of the model versus radiologists A, B, and C was 0.986 (95% CI 0.959 to 1.000), 0.918 (95% CI 0.849 to 0.973), 0.822 (95% CI 0.726 to 0.904), and 0.904 (95% CI 0.836 to 0.973), respectively. There was a statistically significant difference in AUC values between the model and 3 physicians (p < 0.05). The lung graph-based machine learning model could identify f-ILD, and the diagnostic performance exceeded radiologists which could aid clinicians to assess ILD objectively.

摘要

准确检测纤维化间质性肺疾病(f-ILD)有助于早期干预。我们的目的是开发一种基于肺部图形的机器学习模型来识别 f-ILD。本研究共纳入了 279 名确诊ILD 患者的 417 次 HRCT(156 例 f-ILD 和 123 例非 f-ILD)。本研究开发了一种基于 HRCT 的基于肺部图形的机器学习模型,以帮助临床医生诊断 f-ILD。在这种方法中,从自动生成的肺部几何图谱中提取局部放射组学特征,并用于构建一系列特定的肺部图形模型。对这些肺部图形进行编码,获得肺部描述符,作为全局放射组学特征分布的特征来诊断 f-ILD。加权集成模型在交叉验证中表现出最佳的预测性能。该模型在 CT 序列水平和患者水平的分类准确性均明显高于三位放射科医生。在患者水平上,模型与放射科医生 A、B 和 C 的诊断准确性分别为 0.986(95%CI 0.959 至 1.000)、0.918(95%CI 0.849 至 0.973)、0.822(95%CI 0.726 至 0.904)和 0.904(95%CI 0.836 至 0.973),差异有统计学意义(p<0.05)。模型与 3 位放射科医生的 AUC 值存在统计学差异(p<0.05)。基于肺部图形的机器学习模型可以识别 f-ILD,其诊断性能优于放射科医生,有助于临床医生客观地评估ILD。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9b07/10976920/050c43ed70c3/10278_2023_909_Fig1_HTML.jpg

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