School of Control and Computer Engineering, North China Electric Power University, Beijing, 102206, China.
Department of Anesthesiology Medicine, Beijing Chaoyang Hospital, Capital Medical University, Beijing, 100069, China.
Interdiscip Sci. 2024 Mar;16(1):123-140. doi: 10.1007/s12539-023-00588-6. Epub 2023 Oct 25.
Liver transplantation is one of the most effective treatments for acute liver failure, cirrhosis, and even liver cancer. The prediction of postoperative complications is of great significance for liver transplantation. However, the existing prediction methods based on traditional machine learning are often unavailable or unreliable due to the insufficient amount of real liver transplantation data. Therefore, we propose a new framework to increase the accuracy of computer-aided diagnosis of complications after liver transplantation with transfer learning, which can handle small-scale but high-dimensional data problems. Furthermore, since data samples are often high dimensional in the real world, capturing key features that influence postoperative complications can help make the correct diagnosis for patients. So, we also introduce the SHapley Additive exPlanation (SHAP) method into our framework for exploring the key features of postoperative complications. We used data obtained from 425 patients with 456 features in our experiments. Experimental results show that our approach outperforms all compared baseline methods in predicting postoperative complications. In our work, the average precision, the mean recall, and the mean F1 score reach 91.22%, 91.70%, and 91.18%, respectively.
肝移植是治疗急性肝功能衰竭、肝硬化甚至肝癌的最有效方法之一。预测术后并发症对于肝移植具有重要意义。然而,由于真实肝移植数据量不足,现有的基于传统机器学习的预测方法往往不可用或不可靠。因此,我们提出了一种新的框架,通过迁移学习提高计算机辅助诊断肝移植术后并发症的准确性,从而可以处理小规模但高维数据的问题。此外,由于现实世界中的数据样本通常是高维的,因此捕捉影响术后并发症的关键特征有助于为患者做出正确的诊断。因此,我们还将 SHapley Additive exPlanation (SHAP) 方法引入我们的框架中,以探索术后并发症的关键特征。我们在实验中使用了来自 425 名患者的 456 个特征的数据。实验结果表明,我们的方法在预测术后并发症方面优于所有比较基线方法。在我们的工作中,平均精度、平均召回率和平均 F1 分数分别达到 91.22%、91.70%和 91.18%。