Zhang Mingyan, Sheng Junfa
Department of Obstetrics, Jinjiang Municipal Hospital, Quanzhou, 362201, Fujian, China.
Department of Ultrasound, Jinjiang Municipal Hospital, No.16 Luoshan Section, Jinguang Road, Jinjiang City, Quanzhou City, 362201, Fujian Province, China.
Reprod Biol Endocrinol. 2025 Jul 17;23(1):102. doi: 10.1186/s12958-025-01437-5.
Conservative treatment remains a viable option for selected patients with ectopic pregnancy (EP), but failure may lead to rupture and serious complications. Currently, serum β-hCG is the main predictor for treatment outcomes, yet its accuracy is limited. This study aimed to develop and validate a predictive model that integrates radiomic features derived from super-resolution (SR) ultrasound images with clinical biomarkers to improve risk stratification.
A total of 228 patients with EP receiving conservative treatment were retrospectively included, with 169 classified as treatment success and 59 as failure. SR images were generated using a deep learning-based generative adversarial network (GAN). Radiomic features were extracted from both normal-resolution (NR) and SR ultrasound images. Features with intraclass correlation coefficient (ICC) ≥ 0.75 were retained after intra- and inter-observer evaluation. Feature selection involved statistical testing and Least Absolute Shrinkage and Selection Operator (LASSO) regression. Random forest algorithms were used to construct NR and SR models. A clinical model based on serum β-hCG was also developed. The Clin-SR model was constructed by fusing SR radiomics with β-hCG values. Model performance was evaluated using area under the curve (AUC), calibration, and decision curve analysis (DCA). An independent temporal validation cohort (n = 40; 20 failures, 20 successes) was used to validation of the nomogram derived from the Clin-SR model.
The SR model significantly outperformed the NR model in the test cohort (AUC: 0.791 ± 0.015 vs. 0.629 ± 0.083). In a representative iteration, the Clin-SR fusion model achieved an AUC of 0.870 ± 0.015, with good calibration and net clinical benefit, suggesting reliable performance in predicting conservative treatment failure. In the independent validation cohort, the nomogram demonstrated good generalizability with an AUC of 0.808 and consistent calibration across risk thresholds. Key contributing radiomic features included Gray Level Variance and Voxel Volume, reflecting lesion heterogeneity and size.
The Clin-SR model, which integrates deep learning-enhanced SR ultrasound radiomics with serum β-hCG, offers a robust and non-invasive tool for predicting conservative treatment failure in ectopic pregnancy. This multimodal approach enhances early risk stratification and supports personalized clinical decision-making, potentially reducing overtreatment and emergency interventions.
对于部分异位妊娠(EP)患者,保守治疗仍是一种可行的选择,但治疗失败可能导致破裂及严重并发症。目前,血清β - hCG是治疗结局的主要预测指标,但其准确性有限。本研究旨在开发并验证一种预测模型,该模型将超分辨率(SR)超声图像衍生的放射组学特征与临床生物标志物相结合,以改善风险分层。
回顾性纳入228例接受保守治疗的EP患者,其中169例治疗成功,59例治疗失败。使用基于深度学习的生成对抗网络(GAN)生成SR图像。从正常分辨率(NR)和SR超声图像中提取放射组学特征。经过观察者内和观察者间评估后,保留类内相关系数(ICC)≥0.75的特征。特征选择包括统计检验和最小绝对收缩和选择算子(LASSO)回归。使用随机森林算法构建NR和SR模型。还开发了基于血清β - hCG的临床模型。通过将SR放射组学与β - hCG值融合构建Clin - SR模型。使用曲线下面积(AUC)、校准和决策曲线分析(DCA)评估模型性能。使用一个独立的时间验证队列(n = 40;20例失败,20例成功)对源自Clin - SR模型的列线图进行验证。
在测试队列中,SR模型显著优于NR模型(AUC:0.791±0.015对0.629±0.083)。在一次代表性迭代中,Clin - SR融合模型的AUC达到0.870±0.015,具有良好的校准和净临床效益,表明在预测保守治疗失败方面具有可靠的性能。在独立验证队列中,列线图显示出良好的可推广性,AUC为0.808,且在不同风险阈值下校准一致。关键的放射组学特征包括灰度方差和体素体积,反映了病变的异质性和大小。
将深度学习增强的SR超声放射组学与血清β - hCG相结合的Clin - SR模型,为预测异位妊娠保守治疗失败提供了一种强大的非侵入性工具。这种多模态方法增强了早期风险分层,并支持个性化临床决策,可能减少过度治疗和紧急干预。