J48和套袋法在脊柱病理分类中的应用

Indriana Hidayah, Erna P. Adhistya, Monica Agustami Kristy
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引用次数: 7

摘要

椎间盘突出和脊柱滑脱是脊柱病变的例子。脊柱上的这些创伤会影响脊髓向控制传感器和运动的身体系统发送和接收来自大脑的信息的能力。因此,诊断这些病理的准确性和及时性是至关重要的。因此,分类系统可以帮助放射科医生提高工作效率和诊断质量。总的来说,印度尼西亚的公立医院病人很多,因此,这样的分类系统将是一个很大的好处。然而,由于无法获得定量代表该疾病的数字数据库,印度尼西亚对骨骼系统分类的病理学研究很少。本研究利用UCI Machine Learning提供的脊柱数据集建立了一个最优分类模型。我们将决策树(J48)和bagging集成为分类模型。基于决策树的简单性和可解释性,选择决策树作为基础学习器。此外,套袋法还用于稳定新测试实例的预测。通过10倍交叉验证,我们计算了真阳性率(TP率)、假阳性率(FP率)、准确度参数和ROC AUC。结果表明,J48和Bagging复合处理比单独使用J48处理效果更好。定量评价表明,J48和Bagging的准确度为85.1613%,而J48的准确度为81.6129%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of J48 and bagging for classification of vertebral column pathologies
Disk hernia and spondylolisthesis are examples of pathologies on vertebral column. These traumas on vertebral column can affect spinal cord capability to send and receive messages from brain to the body systems that control sensor and motor. Therefore, accuracy and timeliness of diagnosis for these pathologies are critical. Hence, a classification system can assist radiologists to improve productivity and the quality of diagnosis. In general, Indonesia's public hospitals have many patients, thus, such classification system will be a great benefit. However, research about pathology of skeletal system classification in Indonesia is rare due to the unavailability of numerical database which quantitatively represents the disease. In this research, dataset of vertebral column from UCI Machine Learning was used to develop an optimum classification model. We ensemble decision tree (J48) and bagging as the classification model. Decision tree was chosen as the base learner due to its simplicity and interpretability. In addition, bagging was used to stable the prediction of new test instances. By applying 10-fold cross-validation we calculated true-positive rate (TP rate), false-positive (FP rate), accuracy parameters, and ROC AUC. The results showed that J48 and Bagging has better performance than J48 alone. The quantitative evaluation showed accuracy of J48 and Bagging is 85.1613%, whereas accuracy of J48 was 81.6129%.
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