首页> 外文会议>IASTED International Conference on Artificial Intelligence and Soft Computing >COMPARING STATISTICS WITH MACHINE LEARNING MODELS TO PREDICT DOSE INCREASE OF INFLIXIMAB FOR RHEUMATOID ARTHRITIS PATIENTS
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COMPARING STATISTICS WITH MACHINE LEARNING MODELS TO PREDICT DOSE INCREASE OF INFLIXIMAB FOR RHEUMATOID ARTHRITIS PATIENTS

机译:将统计数据与机器学习模型进行比较,以预测类风湿性关节炎患者英夫利昔单抗的剂量增加

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Rheumatoid arthritis (RA) is a chronic inflammatory joint disease that leads to irreversible joint destruction. To prevent this, new biological therapies, such as Infliximab, have been developed. The present analysis is based on an expanded access program in which 511 RA patients with chronic refractory disease were treated with Infliximab. They received a standard dose of 3 mg/kg on weeks 0, 6, 14 and 22. On week 22, the treating rheumatologist had to evaluate the progress of every patient and decide whether the current dose should be increased or not. This decision can be considered as a measure of insufficient response. In the present analysis, two machine learning classification techniques (support vector machines and multilayered perceptrons) are implemented to model the decision to give a dose increase. Their performance on increasingly multivariate real-life data will be studied and compared to classical statistics. Results show that both classical statistics, SVM and MLP - if configured well - show good classification performance. However, as the number of features increases, the performance decreases. SVMs suffer to a lesser degree from this curse of dimensionality.
机译:类风湿性关节炎(RA)是一种慢性炎症关节疾病,导致不可逆的关节破坏。为了防止这种情况,已经开发出新的生物疗法,例如英夫利昔单抗。本分析基于扩展的接入程序,其中511例慢性耐火疾病患者用英夫利昔单抗处理。它们在数周0,6,14和22周内获得了3毫克/千克的标准剂量。在第22周,治疗风湿病学必须评估每位患者的进展,并决定当前剂量是否应增加或不增加。该决定可以被视为响应不足的衡量标准。在本分析中,两种机器学习分类技术(支持向量机和多层的感知者)被实施以模拟决定给予剂量增加。他们对越来越多变量的现实生活数据的性能将被研究并与古典统计数据进行研究。结果表明,古典统计,SVM和MLP - 如果配置得很好 - 显示出良好的分类性能。但是,随着特征的数量增加,性能降低。 SVMS从这种诅咒的维度遭受较小程度。

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