Department of Medical Imaging, The First Hospital of Qinhuangdao, Qinhuangdao, China.
Radiologie (Heidelb). 2024 Nov;64(Suppl 1):166-176. doi: 10.1007/s00117-024-01393-y. Epub 2024 Nov 15.
The aim of this study was to develop and assess a radiomics model utilizing multiparametric magnetic resonance imaging (MRI) for the prediction of preoperative risk assessment in gastrointestinal stromal tumors (GISTs).
An analysis was performed retrospectively on a group of 121 patients who received a histological diagnosis of GIST. They were then divided into two sets, with 85 in the training set and 36 in the validation set through random partitioning. Radiomics features from five MRI sequences, totaling 600 per patient, were extracted and subjected to feature selection utilizing a random forest algorithm. The discriminatory efficacy of the models was evaluated through receiver operating characteristic (ROC) and precision-recall (P-R) curve analyses. Model calibration was assessed via calibration curves. Subgroup analysis was performed on GISTs with a pathological maximum diameter equal to or less than 5 cm. Furtherly, Kaplan-Meier (K-M) curves and log-rank tests were used to compare the differences in survival status among different groups. Cox regression analysis was employed to identify independent prognostic factors and to construct a prognostic prediction model.
The clinical model (Model) displayed limited predictive efficacy in the context of GIST. Conversely, a radiomics model (Model) incorporating five parameters exhibited robust discriminative capabilities across both the training and validation sets, yielding area under the ROC curve (AUC) values of 0.893 (95% confidence interval [CI]: 0.807-0.949) and 0.855 (95% CI: 0.732-0.978), respectively. The F1 scores derived from the P‑R curves were 0.741 and 0.842 for the training and validation sets, respectively. Noteworthy was the exclusion of the two-dimensional tumor diameter and tumor location when constructing a hybrid model (Model) that amalgamated radiomics and clinical features. Model demonstrated a substantially enhanced discriminative capacity in the training set compared with Model (p < 0.005). The net reclassification improvement (NRI) corroborated the superior performance of Model over Model, thereby enhancing diagnostic accuracy and clinical applicability. Patients in the high-risk group had significantly worse recurrence-free survival (RFS, p < 0.001) and overall survival (OS, p = 0.004), and the radiomics signature is an independent risk factor for RFS. The extended model incorporating the radiomics signature outperformed the baseline model in terms of risk assessment accuracy (p < 0.001).
Our investigation underscores the value of integrating radiomics analysis in conjunction with machine learning algorithms for prognostic risk stratification in GIST, presenting promising implications for informing clinical decision-making processes as well as optimizing management strategies.
本研究旨在开发和评估一种利用多参数磁共振成像(MRI)的放射组学模型,用于预测胃肠道间质瘤(GIST)的术前风险评估。
对 121 例经组织学诊断为 GIST 的患者进行回顾性分析,通过随机分割将其分为两组,训练集 85 例,验证集 36 例。从 5 个 MRI 序列中提取总计 600 个每个患者的放射组学特征,并利用随机森林算法进行特征选择。通过接收者操作特征(ROC)和精确召回(P-R)曲线分析评估模型的判别效能。通过校准曲线评估模型校准。对最大病理直径等于或小于 5cm 的 GIST 进行亚组分析。此外,采用 Kaplan-Meier(K-M)曲线和对数秩检验比较不同组之间的生存状态差异。采用 Cox 回归分析确定独立预后因素并构建预后预测模型。
临床模型(Model)在 GIST 中的预测效果有限。相比之下,纳入 5 个参数的放射组学模型(Model)在训练集和验证集均表现出较强的判别能力,ROC 曲线下面积(AUC)值分别为 0.893(95%置信区间[CI]:0.807-0.949)和 0.855(95% CI:0.732-0.978)。P-R 曲线得出的 F1 评分分别为训练集 0.741 和验证集 0.842。值得注意的是,在构建融合放射组学和临床特征的混合模型(Model)时,排除了二维肿瘤直径和肿瘤位置。与 Model 相比,Model 在训练集的判别能力有显著提高(p<0.005)。净重新分类改善(NRI)证实了 Model 优于 Model 的表现,从而提高了诊断准确性和临床适用性。高风险组患者的无复发生存率(RFS,p<0.001)和总生存率(OS,p=0.004)明显更差,放射组学特征是 RFS 的独立危险因素。纳入放射组学特征的扩展模型在风险评估准确性方面优于基线模型(p<0.001)。
本研究强调了将放射组学分析与机器学习算法相结合进行 GIST 预后风险分层的价值,为临床决策过程提供了有前景的信息,并优化了管理策略。