Department of Computed Tomography and Magnetic Resonance, Xing Tai People's Hospital, Xing Tai, He Bei, China.
Department of Thoracic Surgery, Xing Tai People's Hospital, Xing Tai, He Bei, China.
Technol Cancer Res Treat. 2024 Jan-Dec;23:15330338241258415. doi: 10.1177/15330338241258415.
To develop and validate predictive models based on clinical parameters, and radiomic features to distinguish pulmonary pure invasive mucinous adenocarcinoma (pIMA) from mixed mucinous adenocarcinoma (mIMA) before surgery. From January 2017 to December 2022, 193 pIMA and 111 mIMA were retrospectively analyzed at our hospital in this retrospective study. From contrast-enhanced computed tomography, 1037 radiomic features were extracted. The patients were randomly divided into a training group and a test group (n = 213 and 91, respectively) in a 7:3 ratio. The least absolute shrinkage and selection operator algorithm was used to select radiomic features. In this study, 9 machine learning radiomics prediction models were applied. The radiomics score was then calculated based on the best-performing machine learning model adopted. The clinical model was developed using the same machine learning model of radiomics. In the end, a combined model based on clinical factors and radiomics features was developed. The area under the receiver operating characteristic curve (AUC) value and decision curve analysis (DCA) were used to evaluate the clinical usefulness of the prediction model. The combined model established by the Gaussian Naive Bayes machine learning method exhibited the best performance. The AUC of the combined model, clinical model, and radiomics model were 0.81, 0.80, and 0.68 in the training group and 0.91, 0.80, and 0.81 in the test group, respectively. The Brier scores of the combined model were 0.171 and 0.112. The DCA curve also showed that the combined model was beneficial to clinical settings. The combined model integration of radiomics features and clinical parameters may have potential value for the preoperative differentiation of pIMA from mIMA.
为了在术前建立并验证基于临床参数和放射组学特征的预测模型,以区分肺单纯浸润型黏液腺癌(pIMA)和混合黏液腺癌(mIMA)。本回顾性研究回顾性分析了我院 2017 年 1 月至 2022 年 12 月期间 193 例 pIMA 和 111 例 mIMA。从增强 CT 中提取了 1037 个放射组学特征。患者按 7:3 的比例随机分为训练组和测试组(n=213 和 91)。采用最小绝对收缩和选择算子算法选择放射组学特征。本研究应用了 9 种机器学习放射组学预测模型。然后根据采用的表现最佳的机器学习模型计算放射组学评分。采用相同的机器学习模型建立临床模型。最后,建立基于临床因素和放射组学特征的联合模型。采用受试者工作特征曲线(ROC)下面积(AUC)和决策曲线分析(DCA)评估预测模型的临床实用性。基于高斯朴素贝叶斯机器学习方法建立的联合模型表现最佳。在训练组中,联合模型、临床模型和放射组学模型的 AUC 分别为 0.81、0.80 和 0.68,在测试组中分别为 0.91、0.80 和 0.81。联合模型的 Brier 评分分别为 0.171 和 0.112。DCA 曲线也表明联合模型对临床设置有益。放射组学特征和临床参数的联合模型整合可能对术前区分 pIMA 和 mIMA 具有潜在价值。