The First Affiliated Hospital of Jinan University, 510632, Guangzhou, China.
Department of Oncology, Guangzhou Panyu Central Hospital, 511400, Guangzhou, China.
J Imaging Inform Med. 2024 Feb;37(1):230-246. doi: 10.1007/s10278-023-00906-w. Epub 2024 Jan 10.
Deep stromal invasion is an important pathological factor associated with the treatments and prognosis of cervical cancer patients. Accurate determination of deep stromal invasion before radical hysterectomy (RH) is of great value for early clinical treatment decision-making and improving the prognosis of these patients. Machine learning is gradually applied in the construction of clinical models to improve the accuracy of clinical diagnosis or prediction, but whether machine learning can improve the preoperative diagnosis accuracy of deep stromal invasion in patients with cervical cancer was still unclear. This cross-sectional study was to construct three preoperative diagnostic models for deep stromal invasion in patients with early cervical cancer based on clinical, radiomics, and clinical combined radiomics data using the machine learning method. We enrolled 229 patients with early cervical cancer receiving RH combined with pelvic lymph node dissection (PLND). The least absolute shrinkage and selection operator (LASSO) and the fivefold cross-validation were applied to screen out radiomics features. Univariate and multivariate logistic regression analyses were applied to identify clinical predictors. All subjects were divided into the training set (n = 160) and testing set (n = 69) at a ratio of 7:3. Three light gradient boosting machine (LightGBM) models were constructed in the training set and verified in the testing set. The radiomics features were statistically different between deep stromal invasion < 1/3 group and deep stromal invasion ≥ 1/3 group. In the training set, the area under the curve (AUC) of the prediction model based on radiomics features was 0.951 (95% confidence interval (CI) 0.922-0.980), the AUC of the prediction model based on clinical predictors was 0.769 (95% CI 0.703-0.835), and the AUC of the prediction model based on radiomics features and clinical predictors was 0.969 (95% CI 0.947-0.990). The AUC of the prediction model based on radiomics features and clinical predictors was 0.914 (95% CI 0.848-0.980) in the testing set. The prediction model for deep stromal invasion in patients with early cervical cancer based on clinical and radiomics data exhibited good predictive performance with an AUC of 0.969, which might help the clinicians early identify patients with high risk of deep stromal invasion and provide timely interventions.
深层间质浸润是与宫颈癌患者治疗和预后相关的重要病理因素。在根治性子宫切除术(RH)前准确判断深层间质浸润对早期临床治疗决策和改善这些患者的预后具有重要价值。机器学习逐渐应用于临床模型的构建,以提高临床诊断或预测的准确性,但机器学习是否能提高宫颈癌患者术前深层间质浸润的诊断准确性仍不清楚。本研究采用机器学习方法,基于临床、放射组学和临床联合放射组学数据,构建了三个早期宫颈癌患者深层间质浸润的术前诊断模型。共纳入 229 例接受 RH 联合盆腔淋巴结清扫术(PLND)的早期宫颈癌患者。应用最小绝对值收缩和选择算子(LASSO)和五重交叉验证筛选放射组学特征。应用单因素和多因素逻辑回归分析识别临床预测因素。所有受试者按 7:3 的比例分为训练集(n=160)和测试集(n=69)。在训练集中构建三个 LightGBM 模型,并在测试集中进行验证。深度间质浸润<1/3 组和深度间质浸润≥1/3 组之间的放射组学特征存在统计学差异。在训练集中,基于放射组学特征的预测模型的曲线下面积(AUC)为 0.951(95%置信区间(CI)0.922-0.980),基于临床预测因素的预测模型的 AUC 为 0.769(95% CI 0.703-0.835),基于放射组学特征和临床预测因素的预测模型的 AUC 为 0.969(95% CI 0.947-0.990)。在测试集中,基于放射组学特征和临床预测因素的预测模型的 AUC 为 0.914(95% CI 0.848-0.980)。基于临床和放射组学数据的早期宫颈癌患者深层间质浸润预测模型具有良好的预测性能,AUC 为 0.969,可能有助于临床医生早期识别深层间质浸润风险较高的患者,并提供及时干预。