Unit of Advanced Clinical and Translational Imaging, Department of Medicine - DIMED, University of Padova, Padua, Italy.
Thoracic Surgery Unit, Department of Cardiac, Thoracic, Vascular Sciences and Public Health, University of Padova, Padua, Italy.
Radiol Med. 2023 Sep;128(9):1070-1078. doi: 10.1007/s11547-023-01674-x. Epub 2023 Jul 17.
To assess the role of muscle composition and radiomics in predicting allograft rejection in lung transplant.
The last available HRCT before surgery of lung transplant candidates referring to our tertiary center from January 2010 to February 2020 was retrospectively examined. Only scans with B30 kernel reconstructions and 1 mm slice thickness were included. One radiologist segmented the spinal muscles of each patient at the level of the 11th dorsal vertebra by an open-source software. The same software was used to extract Hu values and 72 radiomic features of first and second order. Factor analysis was applied to select highly correlating features and then their prognostic value for allograft rejection was investigated by logistic regression analysis (level of significance p < 0.05). In case of significant results, the diagnostic value of the model was computed by ROC curves.
Overall 200 patients had a HRCT prior to the transplant but only 97 matched the inclusion criteria (29 women; mean age 50.4 ± 13 years old). Twenty-one patients showed allograft rejection. The following features were selected by the factor analysis: cluster prominence, Imc2, gray level non-uniformity normalized, median, kurtosis, gray level non-uniformity, and inverse variance. The radiomic-based model including also Hu demonstrated that only the feature Imc2 acts as a predictor of allograft rejection (p = 0.021). The model showed 76.6% accuracy and the Imc2 value of 0.19 demonstrated 81% sensitivity and 64.5% specificity in predicting lung transplant rejection.
The radiomic feature Imc2 demonstrated to be a predictor of allograft rejection in lung transplant.
评估肌肉成分和放射组学在预测肺移植中移植物排斥反应的作用。
回顾性分析 2010 年 1 月至 2020 年 2 月期间我院收治的肺移植患者术前最后一次可获得的高分辨率 CT(HRCT)检查。仅纳入采用 B30 核重建和 1mm 层厚的 HRCT 扫描。一位放射科医生使用开源软件在第 11 胸椎水平对每位患者的脊柱肌肉进行分割。同一软件用于提取 Hu 值和一阶、二阶 72 个放射组学特征。应用因子分析选择高度相关的特征,然后通过逻辑回归分析(显著性水平 p < 0.05)研究其对移植物排斥的预测价值。若结果具有统计学意义,则通过 ROC 曲线计算模型的诊断价值。
共有 200 例患者在移植前进行了 HRCT 检查,但只有 97 例符合纳入标准(29 例女性;平均年龄 50.4±13 岁)。21 例患者发生移植物排斥反应。通过因子分析选择了以下特征:聚类突出度、Imc2、归一化灰度非均匀性、中位数、峰度、灰度非均匀性和倒数方差。包括 Hu 的放射组学模型表明,只有特征 Imc2 可作为移植物排斥反应的预测因子(p=0.021)。该模型的准确率为 76.6%,Imc2 值为 0.19 时,预测肺移植排斥的敏感度为 81%,特异度为 64.5%。
放射组学特征 Imc2 被证明是肺移植中移植物排斥反应的预测因子。