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Developed and validated a prognostic nomogram for recurrence-free survival after complete surgical resection of local primary gastrointestinal stromal tumors based on deep learning

机译:基于深度学习,开发并验证了完全手术切除局部原发性胃肠道间质瘤后无复发生存的预后诺模图

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This study aimed to develop and validate a prognostic nomogram for recurrence-free survival (RFS) after surgery in the absence of adjuvant therapy to guide the selection for adjuvant imatinib therapy based on Residual Neural Network (ResNet). The ResNet model was developed based on contrast-enhanced computed tomography (CE-CT) in a training cohort consisted of 80 patients pathologically diagnosed gastrointestinal sromal tumors (GISTs) and validated in internal and external validation cohort respectively. Independent clinicopathologic factors were integrated with the ResNet model to construct the individualized nomogram. The performance of the nomogram was evaluated in regard to discrimination, calibration, and clinical usefulness. The ResNet model was significantly associated with RFS. Integrable predictors in the individualized ResNet nomogram included the tumor site, size, and mitotic count. Compared with modified NIH, AFIP, and clinicopathologic nomogram, both ResNet nomogram and ResNet model showed a better discrimination capability with AUCs of 0·947(95%CI, 0·910–0·984) for 3-year-RFS, 0·918(0·852–0·984) for 5-year-RFS, and AUCs of 0·912 (0·851–0·973) for 3-year-RFS, 0·887(0·816–0·960) for 5-year-RFS, respectively. Calibration curve shows the good calibration of the nomogram in terms of the agreement between the estimated and the observed 3- and 5- year outcomes. Decision curve analysis showed that the ResNet nomogram had a higher overall net benefit. In conclusion, we presented a deep learning-based prognostic nomogram to predict RFS after resection of localized primary GISTs with excellent performance and could be a potential tool to select patients for adjuvant imatinib therapy.
机译:这项研究旨在开发和验证无辅助治疗后手术后无复发生存(RFS)的预后诺模图,以指导基于残差神经网络(ResNet)的伊马替尼辅助治疗的选择。 ResNet模型是在一个由80名经过病理诊断的胃肠道口鼻部肿瘤(GIST)患者组成的训练队列中,基于对比增强计算机断层扫描(CE-CT)开发的,并分别在内部和外部验证队列中进行了验证。将独立的临床病理因素与ResNet模型集成,以构建个性化的列线图。在鉴别,校准和临床实用性方面评估了列线图的性能。 ResNet模型与RFS显着相关。个性化ResNet诺模图中的可预测变量包括肿瘤部位,大小和有丝分裂计数。与改良的NIH,AFIP和临床病理列线图相比,ResNet列线图和ResNet模型均显示出更好的判别能力,其3年RFS,0·的AUC为0·947(95%CI,0·910-0·984)。五年期RFS为918(0·852-0·984),三年期RFS为0·912(0·851-0·973)的AUC,0·887(0·816-0·960) )分别用于5年的RFS。校准曲线根据估计的和观察到的3年和5年结果之间的一致性显示了列线图的良好校准。决策曲线分析表明,ResNet列线图具有更高的总体净收益。总之,我们提出了一种基于深度学习的预后诺模图,以预测局部原发性GIST切除后的RFS,具有出色的性能,并且可能是选择患者接受伊马替尼辅助治疗的潜在工具。

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