Classification of Acute Liver Failure using Machine Learning Algorithms

Diganta Sengupta, Subhash Mondal, Sanway Basu, Anish Kumar De, Shaumik Nath, Amartya Pandey
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Abstract

With changing lifestyles, Acute Liver Failure (ALF) has been witnessed in masses lately. In order to properly diagnose and probable arrest of the ailment, this study classifies ALF using ten standard machine learning (ML) on a publicly available dataset containing 8785 data points. The dataset was divided into two sets – DF1 (containing 90% of the data), and DF2 (containing 10% of the data). DF1 was used for training and validation using a data share of 80:20 for train:validate. DF2 was used for testing. The models were further tuned which reflected a train accuracy, and F1-Score of 99.6%, and 0.996 respectively for random forest algorithm. The tenfold cross-validation accuracy was 99.3%. The test accuracy, and F1-Score using DF2 reflected a value of 99.8%, and 0.998 respectively using LGBM classifier. To the best of our knowledge, this is the first attempt to classify acute liver failure ailment.
使用机器学习算法对急性肝衰竭进行分类
近年来,随着生活方式的改变,急性肝衰竭(Acute Liver Failure, ALF)的发病率越来越高。为了正确诊断和预防这种疾病,本研究在包含8785个数据点的公开数据集上使用10个标准机器学习(ML)对ALF进行分类。将数据集分为DF1(包含90%的数据)和DF2(包含10%的数据)两组。DF1用于训练和验证,train:validate的数据共享为80:20。采用DF2进行检测。对模型进行进一步调优,结果表明随机森林算法的训练准确率达到99.6%,F1-Score达到0.996。交叉验证准确率为99.3%。LGBM分类器的检验准确率为99.8%,DF2分类器的F1-Score为0.998。据我们所知,这是第一次尝试对急性肝衰竭疾病进行分类。
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