Sun Kui, Wang Ying, Shi Rongchao, Wu Siyu, Wang Ximing
Department of General Surgery, Peking University Third Hospital, 49 North Garden Road, Haidian District, Beijing, 100191, China.
Department of Radiology, Shandong Provincial Hospital Affiliated to Shandong First Medical University, Jing Wu Road, No. 324, Jinan, 250021, China.
Insights Imaging. 2024 Sep 19;15(1):225. doi: 10.1186/s13244-024-01809-2.
To develop an ensemble machine learning (eML) model using multiphase computed tomography (MPCT) for distinguishing between gastric ectopic pancreas (GEP) and gastric stromal tumors (GIST) in lesions < 3 cm.
In this study, we retrospectively collected MPCT images from 138 patients between April 2017 and June 2023 across two centers. Cohort 1 comprised 94 patients divided into a training cohort and an internal validation cohort, while the 44 patients from Cohort 2 constituted the external validation cohort. Deep learning (DL) models were constructed based on the lesion region, and radiomics features were extracted to develop radiomics models, which were later integrated into the fusion model. Model performance was assessed through the analysis of the area under the receiver operating characteristic curve (AUROC). The diagnostic efficacy of the optimal model was compared with that of a radiologist. Additionally, the radiologist with the assistance of the eML model provides a secondary diagnosis, to assess the potential clinical value of the model.
After evaluation using an external validation cohort, the radiomics model demonstrated the highest performance in the venous phase, achieving AUROC of 0.87. The DL model showed optimal performance in the non-contrast phase, with AUROC of 0.81. The eML achieved the best performance across all models, with AUROC of 0.90. The use of eML-assisted analysis resulted in a significant improvement in the junior radiologist's accuracy, rising from 0.77 to 0.93 (p < 0.05). However, the senior radiologist's accuracy, while improving from 0.86 to 0.95, did not exhibit a statistically significant difference.
eML model based on MPCT can effectively distinguish between GEPs and GISTs < 3 cm.
The multiphase CT-based fusion model, incorporating radiomics and DL technology, proves effective in distinguishing between GEP and gastric stromal tumors, serving as a valuable tool to enhance diagnoses and offering references for clinical decision-making.
No studies yet differentiated these tumors via radiomics or DL. Radiomics and DL methodologies unveil potentially distinct phenotypes within lesions. Quantitative analysis on CT for GIST and ectopic pancreas. Ensemble learning aids accurate diagnoses, assisting treatment decisions.
开发一种基于多期计算机断层扫描(MPCT)的集成机器学习(eML)模型,用于区分直径<3 cm的胃异位胰腺(GEP)和胃间质瘤(GIST)。
在本研究中,我们回顾性收集了2017年4月至2023年6月期间两个中心138例患者的MPCT图像。队列1包括94例患者,分为训练队列和内部验证队列,而队列2的44例患者构成外部验证队列。基于病变区域构建深度学习(DL)模型,并提取放射组学特征以开发放射组学模型,随后将其整合到融合模型中。通过分析受试者操作特征曲线下面积(AUROC)评估模型性能。将最佳模型的诊断效能与放射科医生的诊断效能进行比较。此外,在eML模型的辅助下,放射科医生进行二次诊断,以评估该模型的潜在临床价值。
使用外部验证队列评估后,放射组学模型在静脉期表现出最高性能,AUROC为0.87。DL模型在平扫期表现最佳,AUROC为0.81。eML在所有模型中表现最佳,AUROC为0.90。使用eML辅助分析使初级放射科医生的准确率显著提高,从0.77提高到0.93(p<0.05)。然而,高级放射科医生的准确率虽然从0.86提高到0.95,但差异无统计学意义。
基于MPCT的eML模型可以有效区分直径<3 cm的GEP和GIST。
基于多期CT的融合模型,结合放射组学和DL技术,在区分GEP和胃间质瘤方面被证明是有效的,是增强诊断的有价值工具,并为临床决策提供参考。
尚无研究通过放射组学或DL区分这些肿瘤。放射组学和DL方法揭示了病变内潜在的不同表型。对GIST和异位胰腺进行CT定量分析。集成学习有助于准确诊断,辅助治疗决策。