Metabolic (dysfunction) associated fatty liver disease (MAFLD) establishes new criteria for diagnosing fatty liver disease independent of alcohol consumption and concurrent viral hepatitis infection. However, the long-term outcome of MAFLD subjects is sparse. Few articles are focused on mortality in MAFLD subjects, and none investigate how to predict a fatal outcome. In this paper, we propose an artificial intelligence-based framework named MAFUS that physicians can use for predicting mortality in MAFLD subjects. The framework uses data from various anthropometric and biochemical sources based on Machine Learning (ML) algorithms. The framework has been tested on a state-of-the-art dataset on which five ML algorithms are trained. Support Vector Machines resulted in being the best model. Furthermore, an Explainable Artificial Intelligence (XAI) analysis has been performed to understand the SVM diagnostic reasoning and the contribution of each feature to the prediction. The MAFUS framework is easy to apply, and the required parameters are readily available in the dataset.
翻译:在本文中,我们提议了一个名为MAFUS的人工智能框架,医生可以使用这个框架来预测MAFLD主体的死亡率。框架使用各种人体测量和生物化学来源的数据,其依据是机器学习(ML)算法。这个框架已经在一个最先进的数据集上进行了测试,对五项MAFLD算法进行了培训。支持矢量机的结果是最佳模型。此外,还进行了可解释的人工智能分析,以了解SVM诊断推理和每个特征对预测的贡献。MAFUS框架很容易应用,并且可以在数据集中随时获得所需的参数。