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QN-S3VM Method for Evaluation of Liver Functional Reserve

机译:QN-S3VM评估肝功能储备的方法

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When doctors assess the liver reserve function of patients with liver cancer before hepatectomy, if the assessment is not appropriate, patients are prone to postoperative liver failure(POLF). Child-Pugh is the most commonly used method for clinical evaluation, but this method only relies on biochemical indicators, which may lead to poor prediction. This paper aims to evaluate the liver reserve function of patients with imaging omics information using an effective machine learning scheme. The performance of models including support vector machine (SVM), COP-Kmeans, MLP, SGD-S3VM, QN-S3VM are predicted by comparing accuracy and F1 Score. In particular, the QN-S3VM model with the best performance can achieve an accuracy of 0.91, which is higher than the Child-Pugh method. As such, the proposed intelligent diagnostic algorithm can provide routine diagnostic assistance and consultation for doctors to achieve the purpose of reducing the workload.
机译:当医生评估肝切除术前肝癌患者的肝脏储备功能时,如果评估是不合适的,患者易于术后肝衰竭(POLF)。 Child-Pugh是最常用的临床评价方法,但这种方法只依赖于生化指标,这可能导致预测差。本文旨在使用有效的机器学习方案评估成像信息患者患者的肝脏储备功能。通过比较精度和F1分数,预测包括支持向量机(SVM),COP-km -VM,QN-S3VM的模型的性能,包括支持向量机(SVM),COP-KM-S3VM,QN-S3VM。特别是,具有最佳性能的QN-S3VM模型可以实现0.91的精度,其高于Child-PUGH方法。因此,所提出的智能诊断算法可以为医生提供常规诊断辅助和咨询,以达到减少工作量的目的。

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