Classifying the Risk of Relapse in Multiple Myeloma

Nimrita Koul, S. Manvi
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引用次数: 1

Abstract

Multiple myeloma is one of the blood malignancies characterized by neoplastic proliferation of blood plasma cells. It accounts for 10% of the hematologic cancers. There do exist targeted drugs for multiple myeloma and there has been a significant improvement in outcomes of the disease. However, it has been observed that the patients do experience a relapse to the disease within first couple of years of initial diagnosis. In this paper, we aim to identify the factors that are strong predictors of a relapse within a period of 18 months. We applied decision tree algorithm for classification of profiles into two groups – high risk and low risk. High risk group being the one where the patient experienced a relapse of the disease within 18 months of initial diagnosis. Low risk group is the patients which experienced a progression free survival beyond 18 months after initial diagnosis. The data for the model was taken from published clinical trials, relevant features were taken from the published clinical trials. From these features we considered the most influential features and applied decision tree classifier for classification of the profiles. The factors that have highest impact in increasing the risk of relapse are serum albumin level, response to initial therapy, increase in serum monoclonal component, serum calcium, international staging level at the time of first diagnosis, plasma cell levels in bone marrow and freely circulating plasma cells. We applied Kaplan Meier survival analysis to predict the probability of relapse and median time to relapse in both risk groups. These results can be used to provide customized drug combinations to enable better outcomes for the patients.
多发性骨髓瘤复发风险的分类
多发性骨髓瘤是一种以血浆细胞肿瘤增生为特征的血液恶性肿瘤。它占血液癌症的10%。确实存在针对多发性骨髓瘤的靶向药物,而且这种疾病的治疗效果也有了显著改善。然而,据观察,患者确实会在最初诊断的前几年复发。在本文中,我们的目标是确定在18个月内复发的强预测因素。我们采用决策树算法将剖面分为高风险和低风险两组。高风险组是指患者在初次诊断后18个月内疾病复发的人群。低危组是指初次诊断后无进展生存期超过18个月的患者。模型数据取自已发表的临床试验,相关特征取自已发表的临床试验。从这些特征中选取影响最大的特征,应用决策树分类器对轮廓进行分类。对增加复发风险影响最大的因素是血清白蛋白水平、对初始治疗的反应、血清单克隆成分的增加、血清钙、首次诊断时的国际分期水平、骨髓浆细胞水平和自由循环浆细胞水平。我们应用Kaplan Meier生存分析来预测两个危险组的复发概率和中位复发时间。这些结果可用于提供定制的药物组合,以使患者获得更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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