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首页> 外文期刊>Liver international >Prediction of microvascular invasion in hepatocellular carcinoma with expert-inspiration and skeleton sharing deep learning
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Prediction of microvascular invasion in hepatocellular carcinoma with expert-inspiration and skeleton sharing deep learning

机译:基于专家启发和骨骼共享深度学习的肝细胞癌微血管浸润预测

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Background and Aims Radiological prediction of microvascular invasion (MVI) of hepatocellular carcinoma (HCC) is essential but few models were clinically implemented because of limited interpretability and generalizability. Methods Based on 2096 patients in three independent HCC cohorts, we established and validated an MVI predicting model. First, we used data from the primary cohort to train a 3D-ResNet network for MVI prediction and then optimised the model with "expert-inspired training" for model construction. Second, we implemented the model to the other two cohorts using three implementation strategies, the original model implementation, data sharing model implementation and skeleton sharing model implementation, the latter two of which used part of the cohorts' data for fine-tuning. The areas under the receiver operating characteristic curve (AUCs) were calculated to compare the performances of different models. Results For the MVI predicting model, the AUC of the expert-inspired model was 0.83 (95 CI: 0.77-0.88) compared to 0.54 (95 CI: 0.46-0.62) of model before expert-inspiring. Taking this model as an original model, AUC on the second cohort was 0.76 (95 CI: 0.67-0.84). The AUC was improved to 0.83 (95 CI: 0.77-0.90) with the data-sharing model, and further improved to 0.85 (95 CI: 0.79-0.92) with the skeleton sharing model. The trend that the skeleton sharing model had an advantage in performance was similar in the third cohort. Conclusions We established an expert-inspired model with better predictive performance and interpretability than the traditional constructed model. Skeleton sharing process is superior to data sharing and direct model implementation in model implementation.
机译:背景和目的 肝细胞癌 (HCC) 微血管浸润 (MVI) 的放射学预测至关重要,但由于可解释性和普遍性有限,很少有模型在临床上实施。方法 基于3个独立HCC队列的2096例患者,建立并验证了MVI预测模型。首先,我们使用来自主要队列的数据来训练用于 MVI 预测的 3D-ResNet 网络,然后通过“专家启发的训练”优化模型以构建模型。其次,我们使用三种实现策略将模型实现到其他两个队列,即原始模型实现、数据共享模型实现和骨架共享模型实现,后两者使用部分队列数据进行微调。计算受试者工作特征曲线下面积(AUCs),比较不同模型的性能。结果 对于MVI预测模型,专家启发模型的AUC为0.83(95%CI:0.77-0.88),而专家启发模型的AUC为0.54(95%CI:0.46-0.62)。以该模型为原始模型,第二组的AUC为0.76(95%CI:0.67-0.84)。数据共享模型的AUC提高到0.83(95%CI:0.77-0.90),骨架共享模型的AUC进一步提高到0.85(95%CI:0.79-0.92)。骨架共享模型在性能上具有优势的趋势在第三组中类似。结论 我们建立了一个受专家启发的模型,与传统的构建模型相比,该模型具有更好的预测性能和可解释性。在模型实现中,骨架共享过程优于数据共享和直接模型实现。

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